Hostname: page-component-8448b6f56d-jr42d Total loading time: 0 Render date: 2024-04-19T21:11:33.054Z Has data issue: false hasContentIssue false

Benefits of genetic data for spatial conservation planning in coastal habitats

Published online by Cambridge University Press:  11 May 2023

Marco Andrello*
Affiliation:
Institute for the Study of Anthropic Impacts and Sustainability in the Marine Environment, National Research Council, CNR-IAS, Rome, Italy
Stéphanie Manel
Affiliation:
CEFE, University of Montpellier, CNRS, EPHE-PSL University, IRD, Montpellier, France Institut Universitaire de France, Paris, France
Maurine Vilcot
Affiliation:
CEFE, University of Montpellier, CNRS, EPHE-PSL University, IRD, Montpellier, France
Amanda Xuereb
Affiliation:
Département de Biologie, Institut de Biologie Intégrative et des Systèmes (IBIS), Université Laval, Québec, QC, Canada
Cassidy C. D’Aloia
Affiliation:
Department of Biology, University of Toronto Mississauga, Mississauga, ON, Canada
*
Corresponding author: Marco Andrello; Email: marco.andrello@ias.cnr.it
Rights & Permissions [Opens in a new window]

Abstract

Coastal marine environments are subject to a variety of anthropogenic pressures that can negatively impact habitats and the biodiversity they harbor. Conservation actions such as marine protected areas, marine reserves, and other effective area-based conservation measures, are pivotal tools for protecting coastal biodiversity. However, to be effective, conservation area networks must be planned through a systematic conservation planning (SCP) approach. Recently, such approaches have begun to orient their goals toward the conservation of different biodiversity facets and to integrate different types of data. In this review, we illustrate how genetic data and molecular techniques can bring useful knowledge for SCP approaches that are both more comprehensive (sampling the full range of biodiversity) and more adequate (ensuring the long-term persistence of biodiversity). With an emphasis on coastal organisms and habitats, we focus on phylogenetic analysis, the estimation of neutral and adaptive intraspecific genetic diversity at different spatial levels (alpha, beta, and gamma), the study of connectivity and dispersal, and the information obtainable from environmental DNA techniques. For each of these applications, we discuss the benefits of its integration into SCP for coastal systems, its strengths and weaknesses, and the aspects yet to be developed.

Type
Review
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0), which permits unrestricted re-use, distribution and reproduction, provided the original article is properly cited.
Copyright
© The Author(s), 2023. Published by Cambridge University Press

Impact statement

Genetic data provide useful information to guide the siting and design of conservation areas in coastal systems, such as marine protected areas. For example, reconstructing the evolutionary relationships between species through a genetic-based phylogenetic tree can inform on the presence of evolutionarily distinct species and orient the creation of marine protected areas toward sites where these species are present. Another useful application of genetic data is parentage analysis, where juveniles can be assigned to their parents and the distance between them can be used to infer the dispersal capacities of these individuals in the larval stage. These data, in turn, can be used to define the spacing between different marine protected areas, so that larvae can disperse between them while minimizing the risk of being transported to areas open to fishing. We review how applications of genetic data (including phylogenetic inference, study of intraspecific genetic variation, estimation of dispersal, and sequencing of environmental DNA) can be fruitfully used to plan networks of marine conservation areas that are more effective, meaning that they protect all facets of biodiversity in the long term. The integration of genetic data into marine spatial conservation planning can thus help reach global goals of biodiversity conservation.

Introduction

The biodiversity of coastal ecosystems is subject to a variety of human pressures, such as water pollution, overfishing, and coastal development (Andrello et al., Reference Andrello, Darling, Wenger, Suárez-Castro, Gelfand and Ahmadia2022b; Herbert-Read et al., Reference Herbert-Read, Thornton, Amon, Birchenough, Côté, Dias, Godley, Keith, McKinley, Peck, Calado, Defeo, Degraer, Johnston, Kaartokallio, Macreadie, Metaxas, Muthumbi, Obura, Paterson, Piola, Richardson, Schloss, Snelgrove, Stewart, Thompson, Watson, Worthington, Yasuhara and Sutherland2022). Marine conservation areas (MCAs), which include marine protected areas (MPAs), marine reserves, and other effective area-based conservation measures (OECMs), can partially mitigate the impacts of these pressures (Maxwell et al., Reference Maxwell, Cazalis, Dudley, Hoffmann, Rodrigues, Stolton, Visconti, Woodley, Kingston, Lewis, Maron, Strassburg, Wenger, Jonas, Venter and Watson2020; Grorud-Colvert et al., Reference Grorud-Colvert, Sullivan-Stack, Roberts, Constant, Horta e Costa, Pike, Kingston, Laffoley, Sala, Claudet, Friedlander, Gill, Lester, Day, Gonçalves, Ahmadia, Rand, Villagomez, Ban, Gurney, Spalding, Bennett, Briggs, Morgan, Moffitt, Deguignet, Pikitch, Darling, Jessen, Hameed, di Carlo, Guidetti, Harris, Torre, Kizilkaya, Agardy, Cury, Shah, Sack, Cao, Fernandez and Lubchenco2021; Gurney et al., Reference Gurney, Darling, Ahmadia, Agostini, Ban, Blythe, Claudet, Epstein, Estradivari, Himes-Cornell, Jonas, Armitage, Campbell, Cox, Friedman, Gill, Lestari, Mangubhai, McLeod, Muthiga, Naggea, Ranaivoson, Wenger, Yulianto and Jupiter2021). The Kunming–Montreal Global Biodiversity Framework of the Convention on Biological Diversity recognizes that conservation areas are pivotal for biodiversity conservation; specifically, the framework prescribes all member states to effectively conserve and manage at least 30% of coastal and marine areas “through ecologically representative, well-connected and equitably governed systems of protected areas and other effective area-based conservation measures” (CBD, 2022).

To positively impact coastal biodiversity and ecosystems, MCAs should be placed and designed following clear conservation objectives, ideally within a systematic spatial conservation planning framework (Alvarez-Romero et al., Reference Álvarez-Romero, Mills, Adams, Gurney, Pressey, Weeks, Ban, Cheok, Davies, Day, Hamel, Leslie, Magris and Storlie2018; Balbar and Metaxas, Reference Balbar and Metaxas2019). Systematic conservation planning (SCP; here used as a synonym of spatial conservation planning and spatial conservation prioritization) is a process whereby limited resources are allocated to conservation actions (such as the creation of protected areas or ecosystem restoration) that are distributed on the seascape following a criterion of optimality (Margules and Pressey, Reference Margules and Pressey2000; Margules and Sarkar, Reference Margules and Sarkar2007; Moilanen et al., Reference Moilanen, Wilson and Possingham2009b). The seascape under consideration is subdivided into planning units (PUs) of adequate size, usually dictated by the spatial scale at which the study is conducted. Each PU can be assigned to one or more conservation actions and each conservation action has a cost of implementation. In the case of MCA planning, the conservation actions are the creation of a MCA, or the zoning of a MCA into different statuses (e.g., fully protected or partially protected; Zupan et al., Reference Zupan, Fragkopoulou, Claudet, Erzini, Horta e Costa and Gonçalves2018). Costs can be quantified in monetary terms (e.g., direct costs to create and manage a marine reserve or opportunity costs representing loss of previous seascape use) or set proportional to PU size.

The criteria guiding the selection of PUs for protection are usually those of comprehensiveness, adequacy, and efficiency (Kukkala and Moilanen, Reference Kukkala and Moilanen2013). Comprehensiveness is the degree to which a set of MCAs samples the full range of biodiversity taking into account different biodiversity facets (e.g., species diversity, phylogenetic diversity, and intraspecific diversity), structure (e.g., habitat types), and functions (e.g., dispersal processes) (Wilson et al., Reference Wilson, Cabeza, Klein, Moilanen, Wilson and Possingham2009; Pollock et al., Reference Pollock, O’Connor, Mokany, Rosauer, Talluto and Thuiller2020). Adequacy means ensuring the long-term preservation of biodiversity: a common approach to address adequacy is to set conservation goals in the form of a minimum portion of species ranges covered by protected areas, but should also consider connectivity and evolutionary processes (Wilson et al., Reference Wilson, Cabeza, Klein, Moilanen, Wilson and Possingham2009; Andrello et al., Reference Andrello, D’Aloia, Dalongeville, Escalante, Guerrero, Perrier, Torres-Florez, Xuereb and Manel2022a). Efficiency means that comprehensiveness and adequacy should be fulfilled at the minimum possible cost or within a predefined budget. These criteria can be expressed in mathematical terms and formulated as a problem with explicit objectives and constraints, which can be solved using different approaches (Moilanen et al., Reference Moilanen, Possingham, Polasky, Moilanen, Wilson and Possingham2009a). The solution of the SCP problem is a list of PUs chosen for protection, which constitutes the network of MCAs for the region under study.

Molecular ecology techniques provide different types of genetic data that can inform the process of SCP in coastal marine systems (Andrello et al., Reference Andrello, D’Aloia, Dalongeville, Escalante, Guerrero, Perrier, Torres-Florez, Xuereb and Manel2022a; Jeffery et al., Reference Jeffery, Lehnert, Kess, Layton, Wringe and Stanley2022; Nielsen et al., Reference Nielsen, Hanson, Carvalho, Beger, Henriques, Kershaw and von der Heyden2022; Riginos and Beger, Reference Rabosky, Chang, Title, Cowman, Sallan, Friedman, Kaschner, Garilao, Near, Coll and Alfaro2022). First, many marine ecosystems are highly biodiverse, making it important, but challenging, to detect and map the distribution of all facets of biodiversity and resolve the evolutionary history of species. Genetic data can help resolve the phylogenetic relationships between marine species and elucidate genetic diversity within species. Second, marine environments are often challenging to sample in, leaving much biodiversity unknown. Sequencing of marine environmental DNA (eDNA; terms in italic are defined in the glossary in Table 1) is increasingly employed to complement data on the spatial distribution of species, and has the potential to lead to more comprehensive SCP solutions. Third, genetic data can inform on the existence and distribution of locally adapted populations that can be more resistant to some anthropogenic selective pressures, for example, warming waters created by climate change. Finally, planning well-connected systems of MCAs requires knowledge of dispersal of marine organisms. Genetic data can play an important role in estimating dispersal, where other approaches (such as biophysical models of larval dispersal) may fail, even if their applications to marine organisms must address the additional difficulties posed by high gene flow and large effective population sizes. With a focus on the properties of coastal marine systems, we review how four major genetic techniques (phylogenetic inference, estimation of intraspecific genetic diversity, estimation of dispersal, and environmental DNA sequencing) can be fruitfully used in SCP.

Table 1. Glossary of terms used in the text

Leveraging genetic data for marine spatial conservation planning

Phylogenetic inference

A comprehensive view of biodiversity includes multiple facets (Mace et al., Reference Mace, Gittleman and Purvis2003; Purvis et al., Reference Purvis, Gittleman and Brooks2005), one of which is the evolutionary history or evolutionary change represented by a set of taxa, usually quantified using metrics of phylogenetic diversity. Several reasons justify the consideration of evolutionary history in conservation decisions. First, conservation actions that preserve a greater amount of evolutionary history are to be favored because evolutionary history has intrinsic value like all other aspects of biodiversity. In addition, more evolutionary information is lost when a highly differentiated species from an old, species-poor clade becomes extinct than when a weakly differentiated species from a young, species-rich clade becomes extinct: this is often considered a sufficiently strong argument to prioritize phylogenetically distinct or unique species for conservation (Winter et al., Reference Winter, Devictor and Schweiger2013). Phylogenetic relationships inferred from genetic data also can help conserve biodiversity when taxonomic status is uncertain (Rosauer et al., Reference Rosauer, Byrne, Blom, Coates, Donnellan, Doughty, Keogh, Kinloch, Laver, Myers, Oliver, Potter, Rabosky, Afonso Silva, Smith and Moritz2018). From an anthropocentric point of view, conserving more evolutionary history means conserving more phenotypic diversity, which in turn can translate into enhanced benefits from ecosystem processes and potential future use of biodiversity, increased evolutionary potential, decreased extinction rates, and enhanced human experience due to a preference for nature’s variety or novelty (Tucker et al., Reference Tucker, Aze, Cadotte, Cantalapiedra, Chisholm, Díaz, Grenyer, Huang, Mazel, Pearse, Pennell, Winter and Mooers2019). A fundamental assumption underlying this point of view is that phylogenetic diversity can be a proxy for functional diversity, and is therefore linked to ecosystem functioning and services. However, the strength of the relationship between phylogenetic diversity and functional diversity varies greatly (Mazel et al., Reference Mazel, Pennell, Cadotte, Diaz, Dalla Riva, Grenyer, Leprieur, Mooers, Mouillot, Tucker and Pearse2018, Reference Mazel, Pennell, Cadotte, Diaz, Riva, Grenyer, Leprieur, Mooers, Mouillot, Tucker and Pearse2019; Owen et al., Reference Owen, Gumbs, Gray and Faith2019) and stronger evidence is needed to use phylogenetic diversity as a surrogate for functional diversity in making conservation decisions (Tucker et al., Reference Tucker, Aze, Cadotte, Cantalapiedra, Chisholm, Díaz, Grenyer, Huang, Mazel, Pearse, Pennell, Winter and Mooers2019).

High quality species-level phylogenetic trees are available for major groups of coastal organisms, including reef corals (Huang and Roy, Reference Huang and Roy2015), cartilaginous fishes (Stein et al., Reference Stein, Mull, Kuhn, Aschliman, Davidson, Joy, Smith, Dulvy and Mooers2018), ray-finned fishes (Rabosky et al., Reference Riginos, Beger, van Oppen and Aranda Lastra2018), and marine mammals (Faurby et al., Reference Faurby, Davis, Pedersen, Schowanek, Antonelli and Svenning2018; Upham et al., Reference Upham, Esselstyn and Jetz2019), while the phylogenies of other marine taxa remain less known. These unresolved phylogenies will likely benefit from the development of new sequencing technologies that have enabled “phylogenomic” approaches, in which large numbers of sequenced genes in many taxa can be used to infer phylogenetic trees (Kapli et al., Reference Kapli, Yang and Telford2020). Eventually, data from the EarthBiogenome project will allow estimating the phylogenetic tree of all eukaryotic species (Lewin et al., Reference Lewin, Richards, Lieberman Aiden, Allende, Archibald, Bálint, Barker, Baumgartner, Belov, Bertorelle, Blaxter, Cai, Caperello, Carlson, Castilla-Rubio, Chaw, Chen, Childers, Coddington, Conde, Corominas, Crandall, Crawford, DiPalma, Durbin, Ebenezer, Edwards, Fedrigo, Flicek, Formenti, Gibbs, Gilbert, Goldstein, Graves, Greely, Grigoriev, Hackett, Hall, Haussler, Helgen, Hogg, Isobe, Jakobsen, Janke, Jarvis, Johnson, Jones, Karlsson, Kersey, Kim, Kress, Kuraku, Lawniczak, Leebens-Mack, Li, Lindblad-Toh, Liu, Lopez, Marques-Bonet, Mazard, Mazet, Mazzoni, Myers, O’Neill, Paez, Park, Robinson, Roquet, Ryder, Sabir, Shaffer, Shank, Sherkow, Soltis, Tang, Tedersoo, Uliano-Silva, Wang, Wei, Wetzer, Wilson, Xu, Yang, Yoder and Zhang2022).

Gap analyses have shown that many existing systems of MCAs do not cover phylogenetic diversity adequately (Mouillot et al., Reference Mouillot, Albouy, Guilhaumon, Ben Rais Lasram, Coll, Devictor, Meynard, Pauly, Tomasini, Troussellier, Velez, Watson, Douzery and Mouquet2011; Guilhaumon et al., Reference Guilhaumon, Albouy, Claudet, Velez, Ben Rais Lasram, Tomasini, Douzery, Meynard, Mouquet, Troussellier, Araújo and Mouillot2015; May-Collado et al., Reference May-Collado, Zambrana-Torrelio, Agnarsson, Pellens and Grandcolas2016; Robuchon et al., Reference Riginos, Beger, van Oppen and Aranda Lastra2021; Mouton et al., Reference Mouton, Stephenson, Torres, Rayment, Brough, McLean, Tonkin, Albouy and Leprieur2022). For example, Mouillot et al. (Reference Mouillot, Parravicini, Bellwood, Leprieur, Huang, Cowman, Albouy, Hughes, Thuiller and Guilhaumon2016) found that the global MPA system secured only 1.7% of the tree of life for corals, and 17.6% for fishes. Moreover, spatial analyses have shown that areas with high phylogenetic diversity are also those with high taxonomic richness (Mouillot et al., Reference Mouillot, Albouy, Guilhaumon, Ben Rais Lasram, Coll, Devictor, Meynard, Pauly, Tomasini, Troussellier, Velez, Watson, Douzery and Mouquet2011; Albouy et al., Reference Albouy, Delattre, Mérigot, Meynard and Leprieur2017), but do not always overlap with areas with high functional diversity (Mouillot et al., Reference Mouillot, Albouy, Guilhaumon, Ben Rais Lasram, Coll, Devictor, Meynard, Pauly, Tomasini, Troussellier, Velez, Watson, Douzery and Mouquet2011; Mazel et al., Reference Mazel, Pennell, Cadotte, Diaz, Dalla Riva, Grenyer, Leprieur, Mooers, Mouillot, Tucker and Pearse2018; Ng et al., Reference Ng, Chisholm, Carrasco, Darling, Guilhaumon, Mooers, Tucker, Winter and Huang2022), highlighting the need to consider these biodiversity facets explicitly in SCP (Pollock et al., Reference Pollock, O’Connor, Mokany, Rosauer, Talluto and Thuiller2020). A common method to maximize phylogenetic diversity in SCP is to use the branches of the phylogenetic tree as biodiversity features (Rodrigues and Gaston, Reference Rodrigues and Gaston2002).

Finally, although we have emphasized species-level phylogenies, we note that considerable genealogical variation exists within species, so the phylogenetic approach can also be applied to integrate within-species genetic diversity into SCP (Carvalho et al., Reference Carvalho, Velo-Antón, Tarroso, Portela, Barata, Carranza, Moritz and Possingham2017).

Estimation of intraspecific genetic diversity

Intraspecific phenotypic diversity, in the form of phenotypic differentiation between individuals and populations, can be an asset allowing species to adapt to novel environmental conditions (Donelson et al., Reference Donelson, Sunday, Figueira, Gaitán-Espitia, Hobday, Johnson, Leis, Ling, Marshall, Pandolfi, Pecl, Rodgers, Booth and Munday2019). Such intraspecific phenotypic diversity emerges from the interaction between environmental variability and genetic diversity. The importance of genetic diversity has now been recognized in applied conservation (Hoban et al., Reference Hoban, Bruford, D’Urban Jackson, Lopes-Fernandes, Heuertz, Hohenlohe, Paz-Vinas, Sjögren-Gulve, Segelbacher, Vernesi, Aitken, Bertola, Bloomer, Breed, Rodríguez-Correa, Funk, Grueber, Hunter, Jaffe, Liggins, Mergeay, Moharrek, O’Brien, Ogden, Palma-Silva, Pierson, Ramakrishnan, Simo-Droissart, Tani, Waits and Laikre2020, Reference Hoban, Archer, Bertola, Bragg, Breed, Bruford, Coleman, Ekblom, Funk, Grueber, Hand, Jaffé, Jensen, Johnson, Kershaw, Liggins, MacDonald, Mergeay, Miller, Muller-Karger, O–Brien, Paz-Vinas, Potter, Razgour, Vernesi and Hunter2022). For example, the Kunming–Montreal Global Biodiversity Framework commits parties to preserve the genetic diversity of all species (CBD, 2022), including all wild species and not only crops or domestic animals as was prescribed by the Aichi targets (CBD, 2010). This objective is also motivated by mounting evidence of large declines in intraspecific genetic diversity in wild species (Leigh et al., Reference Leigh, Hendry, Vázquez-Domínguez and Friesen2019; Exposito-Alonso et al., Reference Exposito-Alonso, Booker, Czech, Gillespie, Hateley, Kyriazis, Lang, Leventhal, Nogues-Bravo, Pagowski, Ruffley, Spence, Toro Arana, Weiß and Zess2022).

In the context of SCP, intraspecific genetic diversity can be partitioned into an alpha component, measuring genetic diversity within PUs, and a beta component, measuring genetic differentiation between different PUs (Gaggiotti et al., Reference Gaggiotti, Chao, Peres-Neto, Chiu, Edwards, Fortin, Jost, Richards and Selkoe2018; Jost et al., Reference Jost, Archer, Flanagan, Gaggiotti, Hoban and Latch2018). This partitioning is relevant to understanding how different populations contribute to the genetic diversity of the species at the seascape scale, the so-called gamma diversity (Donati et al., Reference Donati, Zemp, Manel, Poirier, Claverie, Ferraton, Gaboriau, Govinden, Hagen, Ibrahim, Mouillot, Leblond, Julius, Velez, Zareer, Ziyad, Leprieur, Albouy and Pellissier2021). When gene flow is sufficiently high and effective population sizes are large, as in most marine species, PUs will be weakly differentiated and beta diversity will be close to zero, while alpha and gamma diversity will be similar (Donati et al., Reference Donati, Zemp, Manel, Poirier, Claverie, Ferraton, Gaboriau, Govinden, Hagen, Ibrahim, Mouillot, Leblond, Julius, Velez, Zareer, Ziyad, Leprieur, Albouy and Pellissier2021). In such cases, protecting a relatively small number of PUs could be sufficient for protecting a high level of gamma diversity. In some cases, though, stronger levels of genetic differentiation can persist when oceanographic features act as barriers to gene flow (Pascual et al., Reference Pascual, Rives, Schunter and Macpherson2017; Vilcot et al., Reference Vilcot, Albouy, Donati, Claverie, Julius, Manel, Pellissier and Leprieur2023), or when life history traits (e.g., lack of a pelagic larval stage) limit species’ dispersal capacity (Puritz et al., Reference Puritz, Keever, Addison, Barbosa, Byrne, Hart, Grosberg and Toonen2017). In these cases, the beta component of genetic diversity will be of significant consideration in SCP.

Different metrics and approaches can be used to measure the alpha, beta and gamma components of genetic diversity and to prioritize sites for protection. For example, Nielsen et al. (Reference Nielsen, Beger, Henriques, Selkoe and von der Heyden2017) used haplotype diversity and nucleotide diversity as metrics of alpha diversity in five coastal marine species to build an MCA system encompassing PUs with different levels of local genetic diversity. An alternative approach is to use the spatial distribution of alleles as biodiversity features and to define conservation objectives for the gamma level of genetic diversity. For example, Paz-Vinas et al. (Reference Paz-Vinas, Loot, Hermoso, Veyssière, Poulet, Grenouillet and Blanchet2018) used SCP to reach regional-level targets of representation for different alleles at microsatellite loci in six species of freshwater fishes.

A further distinction can be made between neutral genetic diversity and adaptive genetic diversity according to the effects of genetic variation on individual and population fitness (Holderegger et al., Reference Holderegger, Kamm and Gugerli2006). Partitioning of genetic diversity into neutral and adaptive components is commonly achieved using outlier tests and environmental association analyses (Hoban et al., Reference Hoban, Kelley, Lotterhos, Antolin, Bradburd, Lowry, Poss, Reed, Storfer and Whitlock2016; Manel et al., Reference Manel, Perrier, Pratlong, Abi-Rached, Paganini, Pontarotti and Aurelle2016). These techniques have suggested the existence of genetically based local adaptations to environmental conditions (e.g., water temperature, salinity, and oxygen concentration) despite extensive gene flow and lack of neutral genetic structure (e.g., Sandoval-Castillo et al., Reference Sandoval-Castillo, Robinson, Hart, Strain and Beheregaray2018; Xuereb et al., Reference Xuereb, Kimber, Curtis, Bernatchez and Fortin2018; Boulanger et al., Reference Boulanger, Benestan, Guerin, Dalongeville, Mouillot and Manel2022; Dorant et al., Reference Dorant, Laporte, Rougemont, Cayuela, Rochette and Bernatchez2022). Indeed, coastal environmental conditions are expected to change in the future and in many cases have already seen dramatic shifts, including temperature, salinity, and pH, in conjunction with local anthropogenic stressors (He and Silliman, Reference He and Silliman2019). Consequently, characterizing genetic adaptation is likely to be important for conservation in a climate change context by identifying populations that may harbor pre-adapted genetic variants and that may be able to contribute to the genetic rescue of other vulnerable populations (Bay and Palumbi, Reference Bay and Palumbi2014; Bay et al., Reference Bay, Rose, Logan and Palumbi2017; Matz et al., Reference Matz, Treml and Haller2020).

Neutral and adaptive loci, and sets of loci associated with different environmental variables, can have markedly different spatial distributions (Barbosa et al., Reference Barbosa, Mestre, White, Paupério, Alves and Searle2018; Sandoval-Castillo et al., Reference Sandoval-Castillo, Robinson, Hart, Strain and Beheregaray2018); therefore, spatial protection priorities identified through SCP can vary (Hanson et al., Reference Hanson, Marques, Veríssimo, Camacho-Sanchez, Velo-Antón, Martínez-Solano and Carvalho2020). For example, Xuereb et al. (Reference Xuereb, D’Aloia, Andrello, Bernatchez and Fortin2021a) identified different sets of priority PUs for protection of genetic diversity for the sea cucumber Parastichopus californicus in coastal British Columbia (Canada) depending on whether they considered neutral or putatively adaptive loci. The choice of metrics to measure adaptive genetic diversity also led to different spatial conservation priorities (Xuereb et al., Reference Xuereb, D’Aloia, Andrello, Bernatchez and Fortin2021a).

Estimation of dispersal

The importance of connectivity for the conservation and management of marine species has long been recognized and prescribed as an important criterion for siting, sizing, and designing MCAs (Palumbi, Reference Palumbi2003; Alvarez-Romero et al., Reference Álvarez-Romero, Mills, Adams, Gurney, Pressey, Weeks, Ban, Cheok, Davies, Day, Hamel, Leslie, Magris and Storlie2018; Balbar and Metaxas, Reference Balbar and Metaxas2019). Indeed, determining whether the set of prioritized MCAs truly represents a connected “network” depends on the strength of connectivity between them. This criterion is emphasized in both the Aichi targets and the Kunming–Montreal Global Biodiversity Framework of the Convention on Biological Diversity, which requires that MCAs form a “well-connected” system (CBD, 2010, 2022).

Networks of MCAs should satisfy different connectivity-related objectives (Beger et al., Reference Beger, Metaxas, Balbar, McGowan, Daigle, Kuempel, Treml and Possingham2022; Riginos and Beger, Reference Rabosky, Chang, Title, Cowman, Sallan, Friedman, Kaschner, Garilao, Near, Coll and Alfaro2022). In particular, MCAs should be strategically designed, placed and spaced to protect foraging movements in the home range of species and ontogenetic migrations between habitats for different life cycle stages (Grüss et al., Reference Grüss, Kaplan, Guenette, Roberts and Botsford2011; D’Aloia et al., Reference D’Aloia, Daigle, Côté, Curtis, Guichard and Fortin2017). Furthermore, MCA networks should ensure demographic connectivity, including replenishment of “sink” populations and recolonization of empty habitat patches (Almany et al., Reference Almany, Berumen, Thorrold, Planes and Jones2007; Saenz-Agudelo et al., Reference Saenz-Agudelo, Jones, Thorrold and Planes2011; Harrison et al., Reference Harrison, Bode, Williamson, Berumen and Jones2020), and genetic connectivity, particularly the spread of advantageous genetic variants allowing for genetic rescue of imperiled populations (Webster et al., Reference Webster, Colton, Darling, Armstrong, Pinsky, Knowlton and Schindler2017; Bell et al., Reference Bell, Robinson, Funk, Fitzpatrick, Allendorf, Tallmon and Whiteley2019). Finally, connectivity allows marine reserves to support fisheries outside their borders through adult spillover and larval export (Andrello et al., Reference Andrello, Guilhaumon, Albouy, Parravicini, Scholtens, Verley, Barange, Sumaila, Manel and Mouillot2017; Di Lorenzo et al., Reference Di Lorenzo, Guidetti, Di Franco, Calò and Claudet2020; Medoff et al., Reference Medoff, Lynham and Raynor2022). Various operational approaches have been developed to integrate these aspects of connectivity into SCP (Daigle et al., Reference Daigle, Metaxas, Balbar, McGowan, Treml, Kuempel, Possingham and Beger2020; Beger et al., Reference Beger, Metaxas, Balbar, McGowan, Daigle, Kuempel, Treml and Possingham2022). These methods use node-based or link-based connectivity metrics (Table 2): PUs are represented as nodes (vertices) of a network, and connections (in the form of larval dispersal probabilities, gene flow or spatial distances between pairs of PUs) are the links (edges) between the nodes (Xuereb et al., Reference Xuereb, D’Aloia, Daigle, Andrello, Dalongeville, Manel, Mouillot, Guichard, Côté, Curtis, Bernatchez, Fortin, Oleksiak and Rajora2020).

Table 2. Methods to integrate connectivity into spatial conservation planning (SCP)

Genetic data can be used to estimate aspects of connectivity through the effects of dispersal (an individual-level process linked to connectivity; Baguette et al., Reference Baguette, Blanchet, Legrand, Stevens and Turlure2013) on population genetics. More precisely, genetic data are used to estimate both noneffective dispersal (where the dispersing agent moves into another habitat regardless of whether it successfully reproduces and transmits its genes) and effective dispersal (when the disperser successfully transmits its genes) (Cayuela et al., Reference Cayuela, Rougemont, Prunier, Moore, Clobert, Besnard and Bernatchez2018).

Noneffective dispersal can be estimated by individual-level genetic approaches such as population assignment tests and parentage analysis (Broquet and Petit, Reference Broquet and Petit2009; Cayuela et al., Reference Cayuela, Rougemont, Prunier, Moore, Clobert, Besnard and Bernatchez2018). Assignment tests can inform on dispersal when individuals are confidently assigned to genetically differentiated groups or populations (Manel et al., Reference Manel, Gaggiotti and Waples2005; Christie et al., Reference Christie, Meirmans, Gaggiotti, Toonen and White2017). Given these requirements, assignment tests are impractical for many marine species with large population sizes, high mobility, and weak population structure; however, they have been successfully applied to detect long-distance dispersal in a coral reef fish (D’Aloia et al., Reference D’Aloia, Bogdanowicz, Andrés and Buston2022). In contrast, parentage analysis has been repeatedly used to estimate dispersal in coastal fishes, including studies on dispersal between MPAs and larval supply from marine reserves to fished areas (e.g., Harrison et al., Reference Harrison, Williamson, Evans, Almany, Thorrold, Russ, Feldheim, van Herwerden, Planes, Srinivasan, Berumen and Jones2012; Almany et al., Reference Almany, Hamilton, Bode, Matawai, Potuku, Saenz-Agudelo, Planes, Berumen, Rhodes, Thorrold, Russ and Jones2013; Baetscher et al., Reference Baetscher, Anderson, Gilbert-Horvath, Malone, Saarman, Carr and Garza2019). With appropriate marker panels, these methods are highly accurate, but usually only assign a small percentage of sampled individuals (Christie et al., Reference Christie, Meirmans, Gaggiotti, Toonen and White2017): therefore, they require extensive sampling of possible offspring and parents, which can limit their applications to relatively small populations and/or study areas. To date, parentage studies have also been taxonomically biased toward fishes, but there is promise in their application to invertebrates, such as corals (Dubé et al., Reference Dubé, Boissin, Mercière and Planes2020).

Effective dispersal can be estimated through simple relationships between migration rates and indices of genetic differentiation between populations (e.g., F ST), but the assumptions of these relationships (such as equal size across populations; Whitlock and McCauley, Reference Whitlock and McCauley1999) are rarely met in natural populations, making this approach unreliable. Patterns of isolation-by-distance (IBD), where genetic similarity between individuals or populations decreases with spatial distance, can be used to estimate dispersal distances under the assumption of migration–drift equilibrium and knowledge of effective population density (e.g., Puebla et al., Reference Puebla, Bermingham and McMillan2012; Benestan et al., Reference Benestan, Fietz, Loiseau, Guerin, Trofimenko, Rühs, Schmidt, Rath, Biastoch, Pérez-Ruzafa, Baixauli, Forcada, Arcas, Lenfant, Mallol, Goñi, Velez, Höppner, Kininmonth, Mouillot, Puebla and Manel2021). When applied to two coral reef fishes with limited dispersal potential, IBD approaches provided estimates of effective dispersal distances that were very similar to estimates of noneffective dispersal obtained through parentage analysis (Pinsky et al., Reference Pinsky, Saenz-Agudelo, Salles, Almany, Bode, Berumen, Andréfouët, Thorrold, Jones and Planes2017; Naaykens and D’Aloia, Reference Naaykens and D’Aloia2022). Future work on other taxa will reveal whether these relationships hold for more dispersive species.

To date, only one marine SCP study has incorporated genetically derived estimates of dispersal rates (Beger et al., Reference Beger, Selkoe, Treml, Barber, von der Heyden, Crandall, Toonen and Riginos2014). However, in recent years, genetic studies of marine dispersal have increased in number (Xuereb et al., Reference Xuereb, D’Aloia, Daigle, Andrello, Dalongeville, Manel, Mouillot, Guichard, Côté, Curtis, Bernatchez, Fortin, Oleksiak and Rajora2020), widened in scope (from single species to multi species (Benestan et al., Reference Benestan, Fietz, Loiseau, Guerin, Trofimenko, Rühs, Schmidt, Rath, Biastoch, Pérez-Ruzafa, Baixauli, Forcada, Arcas, Lenfant, Mallol, Goñi, Velez, Höppner, Kininmonth, Mouillot, Puebla and Manel2021); from a single year to multiple years (Catalano et al., Reference Catalano, Dedrick, Stuart, Puritz, Montes and Pinsky2021); and from the detection of few dispersal events to the estimation of full connectivity matrices (Dedrick et al., Reference Dedrick, Catalano, Stuart, White, Montes and Pinsky2021)), and seemingly improved in accuracy, as demonstrated by the concordance of dispersal estimates obtained with different approaches (D’Aloia et al., Reference D’Aloia, Bogdanowicz, Francis, Majoris, Harrison and Buston2015, Reference D’Aloia, Xuereb, Fortin, Bogdanowicz and Buston2018, Reference D’Aloia, Bogdanowicz, Andrés and Buston2022; Pinsky et al., Reference Pinsky, Saenz-Agudelo, Salles, Almany, Bode, Berumen, Andréfouët, Thorrold, Jones and Planes2017; Bode et al., Reference Bode, Leis, Mason, Williamson, Harrison, Choukroun and Jones2019). Moreover, there is potential to gain additional dispersal data from other genetic approaches such as clinal analyses (Gagnaire et al., Reference Gagnaire, Broquet, Aurelle, Viard, Souissi, Bonhomme, Arnaud-Haond and Bierne2015; Van Wyngaarden et al., Reference van Wyngaarden, Snelgrove, DiBacco, Hamilton, Rodríguez-Ezpeleta, Jeffery, Stanley and Bradbury2017), spatial analyses of close kin (Rueger et al., Reference Rueger, Harrison, Buston, Gardiner, Berumen and Jones2020; Benestan et al., Reference Benestan, Fietz, Loiseau, Guerin, Trofimenko, Rühs, Schmidt, Rath, Biastoch, Pérez-Ruzafa, Baixauli, Forcada, Arcas, Lenfant, Mallol, Goñi, Velez, Höppner, Kininmonth, Mouillot, Puebla and Manel2021; Jasper et al., Reference Jasper, Hoffmann and Schmidt2022), and machine learning (e.g., Smith et al., Reference Smith, Tittes, Ralph and Kern2023). If these trends continue, more datasets on marine dispersal rates and distances will become available for SCP applications.

Environmental DNA sequencing

Environmental DNA metabarcoding is a recently developed method to detect the presence of species and/or molecular operational taxonomic units (MOTUs) from DNA fragments released by organisms into their environment (Taberlet et al., Reference Taberlet, Bonin, Zinger and Coissac2018). A genetic marker (metabarcode) is chosen to target a taxonomic group (e.g., eukaryotes and teleosts), identify MOTUs, and assign MOTUs to known species if the species’ metabarcode is sequenced (Miya, Reference Miya2022). eDNA metabarcoding is recognized to outperform traditional techniques for detecting elusive species such as cryptobenthic fishes (Boulanger et al., Reference Boulanger, Loiseau, Valentini, Arnal, Boissery, Dejean, Deter, Guellati, Holon, Juhel, Lenfant, Manel and Mouillot2021; Mathon et al., Reference Mathon, Marques, Mouillot, Albouy, Andrello, Baletaud, Borrero-Pérez, Dejean, Edgar, Grondin, Guerin, Hocdé, Juhel, Kadarusman, Maire, Mariani, McLean, Polanco F., Pouyaud, Stuart-Smith, Sugeha, Valentini, Vigliola, Vimono, Pellissier and Manel2022) and rare species such as nonindigenous (Comtet et al., Reference Comtet, Sandionigi, Viard and Casiraghi2015; Duarte et al., Reference Duarte, Vieira, Lavrador and Costa2021) or threatened species (Weltz et al., Reference Weltz, Lyle, Ovenden, Morgan, Moreno and Semmens2017; Juhel et al., Reference Juhel, Marques, Utama, Vimono, Sugeha, Kadarusman, Cochet, Dejean, Hoey, Mouillot, Hocdé and Pouyaud2022). For example, eDNA metabarcoding was able to detect 44% more shark species than underwater visual censuses and baited remote underwater video station survey methods, even with a much lower sampling effort (Boussarie et al., Reference Boussarie, Bakker, Wangensteen, Mariani, Bonnin, Juhel, Kiszka, Kulbicki, Manel, Robbins, Vigliola and Mouillot2018).

As SCP requires extensive spatial occurrence data, eDNA is emerging as the method of choice to complete existing occurrence data at large spatial scales (Bani et al., Reference Bani, de Brauwer, Creer, Dumbrell, Limmon, Jompa, von der Heyden, Beger, Dumbrell, Turner and Fayle2020; Table 3). To this end, eDNA metabarcoding has recently been used to improve species distribution models of lake fishes (Pukk et al., Reference Pukk, Kanefsky, Heathman, Weise, Nathan, Herbst, Sard, Scribner and Robinson2021), deep sea fishes (McClenaghan et al., Reference McClenaghan, Compson and Hajibabaei2020), and tropical coral reefs (Jaquier et al., Reference Jaquier, Albouy, Bach, Waldock, Marques, Maire, Juhel, Andrello, Valentini, Manel, Dejean, Mouillot and Pellissierunder review). eDNA metabarcoding is also a good method to complement distributional data for multiple biodiversity facets, as shown by the similarities of phylogenetic and functional diversity measurements obtained through eDNA metabarcoding to those obtained through underwater videos (Marques et al., Reference Marques, Castagné, Polanco Fernández, Borrero-Pérez, Hocdé, Guérin, Juhel, Velez, Loiseau, Letessier, Bessudo, Valentini, Dejean, Mouillot, Pellissier and Villéger2021).

Table 3. Potential use of information gained from eDNA in spatial conservation planning (SCP), and future developments

eDNA has also started to be used to study intraspecific genetic diversity (Sigsgaard et al., Reference Sigsgaard, Jensen, Winkelmann, Møller, Hansen and Thomsen2020; Table 3). While intraspecific applications of eDNA are currently limited by the nature, number, and length of markers used (see Table S1 in the Supplementary Material), they open important perspectives to the use of eDNA for estimating intraspecific genetic diversity and connectivity when tissue sampling is problematic, as for mobile, cryptobenthic or threatened species (Dugal et al., Reference Dugal, Thomas, Jensen, Sigsgaard, Simpson, Jarman, Thomsen and Meekan2022). The first intraspecific applications of eDNA were based on the metabarcoding of a single mitochondrial sequence (Sigsgaard et al., Reference Sigsgaard, Nielsen, Bach, Lorenzen, Robinson, Knudsen, Pedersen, Jaidah, Orlando, Willerslev, Møller and Thomsen2016; Macé et al., Reference Macé, Hocdé, Marques, Guerin, Valentini, Arnal, Pellissier and Manel2022). The challenge is now to extend the use of eDNA to multiple markers, including nuclear markers, to obtain more accurate estimates of intraspecific genetic diversity than with one single longer sequence. Andres et al. (Reference Andres, Sethi, Lodge and Andrés2021) developed nuclear microsatellites from eDNA and applied it to the estimation of unique genetic contributors in an experimental mesocosm of Neogobius melanostomus, showing the potential of this technique to estimate population size. The next step toward obtaining finer spatial genetic structure estimates with eDNA is to get nuclear SNP data. Target capture is thus starting to be developed on eDNA for this purpose. In one recent example, Jensen et al. (Reference Jensen, Sigsgaard, Liu, Manica, Bach, Hansen, Møller and Thomsen2021) applied target capture of nuclear markers for whale sharks Rhincodon typus on eDNA samples, but they obtained low read coverage of the targeted nuclear regions, and sequences were confounded by the highly abundant mackerel tuna Euthynnus affinis.

Successful applications to study interspecific and intraspecific diversity show that analysis of eDNA provides a potentially powerful tool to overcome the lack of spatial biodiversity data for marine SCP (Bani et al., Reference Bani, de Brauwer, Creer, Dumbrell, Limmon, Jompa, von der Heyden, Beger, Dumbrell, Turner and Fayle2020). To the best of our knowledge, only one study has used eDNA metabarcoding in a SCP framework (Mathon et al., Reference Mathon, Baletaud, Lebourges-Dhaussy, Lecellier, Menkes, Bachelier, Bonneville, Dejean, Dumas, Fiat, Grelet, Habasque, Manel, Mannocci, Mouillot, Peran, Roudaut, Sidobre, Varillon and Vigliolaunpublished results): the authors combined marine fish occurrence data from acoustic, video and eDNA metabarcoding to prioritize conservation units in a three-dimensional space across 15 seamounts and deep island slopes in the Coral Sea. eDNA metabarcoding identified almost twice as many families as baited remote underwater video stations, and 596 MOTUs versus 190 species (Mathon et al., Reference Mathon, Baletaud, Lebourges-Dhaussy, Lecellier, Menkes, Bachelier, Bonneville, Dejean, Dumas, Fiat, Grelet, Habasque, Manel, Mannocci, Mouillot, Peran, Roudaut, Sidobre, Varillon and Vigliolaunpublished results).

Conclusions and future perspectives

The studies reviewed here show that genetic data can help meet the overarching goals of comprehensiveness, adequacy, and efficiency that inspire SCP (Nielsen et al., Reference Nielsen, Hanson, Carvalho, Beger, Henriques, Kershaw and von der Heyden2022). Inclusion of phylogenetic diversity and intraspecific genetic diversity in addition to taxonomic diversity can increase the comprehensiveness of systems of MCAs, while the characterization of taxonomic diversity, itself, will benefit from the rapid generation of complementary information from eDNA techniques. The integration of connectivity and adaptive genetic diversity can help create networks of MCAs that better satisfy the adequacy criterion, because they ensure greater long-term persistence of biodiversity. In terms of economic efficiency, genetic data has the potential to both generate benefits and incur additional costs. For example, using genetic data to promote connectivity between MCAs and fished areas can increase the economic efficiency of MCAs thanks to the economic benefits that fisheries derive from increased catches. More generally, however, the integration of new facets and processes may increase the total area required to satisfy additional conservation targets and thus total conservation costs.

There are still few examples of the integration of genetic data in marine SCP, especially with regards to intraspecific genetic data (Table 4). This is mainly due to the low number of species for which spatial genetic data are available. While molecular ecology studies are being carried out on an increasing set of species, it will be important to assess whether environmental variables that are easier to obtain can be used as proxies for intraspecific genetic diversity. The few studies testing such hypotheses have yielded mixed results (Hanson et al., Reference Hanson, Rhodes, Riginos and Fuller2017, Reference Hanson, Veríssimo, Velo-Antón, Marques, Camacho-Sanchez, Martínez-Solano, Gonçalves, Sequeira, Possingham and Carvalho2021; Manel et al., Reference Manel, Guerin, Mouillot, Blanchet, Velez, Albouy and Pellissier2020) and predictive models relating environmental variables to genetic distance using isolation-by-resistance models (e.g., Boussarie et al., Reference Boussarie, Momigliano, Robbins, Bonnin, Cornu, Fauvelot, Kiszka, Manel, Mouillot and Vigliola2022) remain rare in seascape genetics and seldom tested in an SCP setting (Hanson et al., Reference Hanson, Fuller and Rhodes2019a). eDNA represents a promising alternative, as readily available material could be used to obtain information on intraspecific genetic diversity and connectivity for multiple species from a single sample.

Table 4. List of published spatial conservation planning (SCP) studies for marine and coastal habitats integrating genetic data

a This column indicates which of the four applications of genetic data presented in the main text (phylogenetic inference, intraspecific genetic diversity, dispersal, or eDNA) was used in the study. In the case of intraspecific genetic diversity, the genetic metrics are indicated. Note that there is no published SCP study integrating eDNA data.

In cases where species-level genetic data already exist, it is important to account for uncertainty when integrating these data into SCP. In particular, uncertainty can arise from (i) genotyping errors (Pompanon et al., Reference Pompanon, Bonin, Bellemain and Taberlet2005), (ii) information content of different molecular markers (D’Aloia et al., Reference D’Aloia, Andrés, Bogdanowicz, McCune, Harrison and Buston2020), (iii) identification of putatively adaptive and neutral loci (de Mita et al., Reference de Mita, Thuillet, Gay, Ahmadi, Manel, Ronfort and Vigouroux2013; Dalongeville et al., Reference Dalongeville, Benestan, Mouillot, Lobreaux and Manel2018), (iv) estimation of seascape genetic parameters from samples of finite size, obtained from a portion of a species’ range (parameter uncertainty; Balkenhol and Fortin, Reference Balkenhol, Fortin, Balkenhol, Cushman, Storfer and Waits2015; Foster et al., Reference Foster, Feutry, Grewe and Davies2021), (v) differences between statistical approaches used to infer seascape genetic parameters and spatial planning algorithms (model uncertainty; Hanson et al., Reference Hanson, Schuster, Strimas-Mackey and Bennett2019b), (vi) prediction of seascape genetic parameters in unsampled sites (Manel and Holderegger, Reference Manel and Holderegger2013), and (vii) availability of only a small number of species with genetic data that are used as a representative surrogate for the genetic biodiversity of all the species present in a region (Nielsen et al., Reference Nielsen, Beger, Henriques and von der Heyden2020). Recent studies have begun to integrate some of these aspects of uncertainty into genetically informed SCP (Nielsen et al., Reference Nielsen, Beger, Henriques and von der Heyden2020, Reference Nielsen, Hanson, Carvalho, Beger, Henriques, Kershaw and von der Heyden2022; Xuereb et al., Reference Xuereb, D’Aloia, Andrello, Bernatchez and Fortin2021a). Moreover, forward-in-time simulations are promising approaches for predicting spatial genetic patterns relevant for SCP and could be used to test the potential impact of conservation actions under complex eco-evolutionary scenarios (Xuereb et al., Reference Xuereb, Rougemont, Tiffin, Xue and Phifer-Rixey2021b), although there remains considerable uncertainty in the estimation of genetic and demographic parameters required for such simulations for the majority of marine species.

In spite of their low number, the published SCP studies in marine and coastal systems show that genetic data provide information that cannot be gained without them. For example, in some taxonomic groups, phylogenetic distances between species are only partially congruent with distances in functional traits, showing that genetic data are necessary to capture and prioritize the evolutionary relationships between species (Mazel et al., Reference Mazel, Pennell, Cadotte, Diaz, Dalla Riva, Grenyer, Leprieur, Mooers, Mouillot, Tucker and Pearse2018). Another important review of marine species showed that genetic-based estimates of larval dispersal can be an order of magnitude smaller than those obtained using biophysical models (Manel et al., Reference Manel, Loiseau, Andrello, Fietz, Goñi, Forcada, Lenfant, Kininmonth, Marcos, Marques, Mallol, Pérez-Ruzafa, Breusing, Puebla and Mouillot2019). Such discrepancies have direct consequences for setting optimal distances between MCAs. More generally, expanding the taxonomic, phylogenetic, geographical, and temporal scope of seascape genetic studies will confirm or refute the generality of these patterns and their consequences on the optimal design of effective MCA networks to protect coastal biodiversity. Given the ongoing increases in molecular data collection across diverse marine taxa and habitats, we anticipate that genetic and genomic data will play an increasingly prominent role in coastal SCP.

Open peer review

To view the open peer review materials for this article, please visit http://doi.org/10.1017/cft.2023.16.

Supplementary material

The supplementary material for this article can be found at http://doi.org/10.1017/cft.2023.16.

Data availability statement

Data availability is not applicable to this article as no new data were created or analyzed in this study.

Acknowledgments

We thank Richard Schuster, two other anonymous reviewers, and the senior editor Martin Le Tissier for their helpful comments. We also thank the editor Alicia Acosta and the publisher and senior scientific editor Jessica Jones for encouraging us to write this review.

Author contribution

Conceptualization: M.A.; Writing – original draft, and review and editing: M.A., S.M., M.V., A.X., and C.D.

Financial support

This work was supported by Agence Nationale de la Recherche (Grant No. ANR-18-CE02–0016 SEAMOUNTS).

Competing interest

The authors declare no competing interest.

References

Albouy, C, Delattre, VL, Mérigot, B, Meynard, CN and Leprieur, F (2017) Multifaceted biodiversity hotspots of marine mammals for conservation priorities. Diversity and Distributions 23(6), 615626. https://doi.org/10.1111/ddi.12556CrossRefGoogle Scholar
Almany, GR, Berumen, ML, Thorrold, SR, Planes, S and Jones, GP (2007) Local replenishment of coral reef fish populations in a marine reserve. Science 316(5825), 742744. https://doi.org/10.1126/science.1140597CrossRefGoogle Scholar
Almany, GR, Hamilton, RJ, Bode, M, Matawai, M, Potuku, T, Saenz-Agudelo, P, Planes, S, Berumen, ML, Rhodes, KL, Thorrold, SR, Russ, GR and Jones, GP (2013) Dispersal of grouper larvae drives local resource sharing in a coral reef fishery. Current Biology 23(7), 626630. https://doi.org/10.1016/j.cub.2013.03.006CrossRefGoogle Scholar
Álvarez-Romero, JG, Mills, M, Adams, VM, Gurney, GG, Pressey, RL, Weeks, R, Ban, NC, Cheok, J, Davies, TE, Day, JC, Hamel, MA, Leslie, HM, Magris, RA and Storlie, CJ (2018) Research advances and gaps in marine planning: Towards a global database in systematic conservation planning. Biological Conservation 227, 369382. https://doi.org/10.1016/j.biocon.2018.06.027CrossRefGoogle Scholar
Andrello, M, D’Aloia, C, Dalongeville, A, Escalante, MA, Guerrero, J, Perrier, C, Torres-Florez, JP, Xuereb, A and Manel, S (2022a) Evolving spatial conservation prioritization with intraspecific genetic data. Trends in Ecology & Evolution 37(6), 553564. https://doi.org/10.1016/j.tree.2022.03.003CrossRefGoogle ScholarPubMed
Andrello, M, Darling, ES, Wenger, A, Suárez-Castro, AF, Gelfand, S and Ahmadia, GN (2022b) A global map of human pressures on tropical coral reefs. Conservation Letters 15(1), e12858. https://doi.org/10.1111/conl.12858CrossRefGoogle Scholar
Andrello, M, Guilhaumon, F, Albouy, C, Parravicini, V, Scholtens, J, Verley, P, Barange, M, Sumaila, UR, Manel, S and Mouillot, D (2017) Global mismatch between fishing dependency and larval supply from marine reserves. Nature Communications 8, 16039. https://doi.org/10.1038/ncomms16039CrossRefGoogle ScholarPubMed
Andres, KJ, Sethi, SA, Lodge, DM and Andrés, J (2021) Nuclear eDNA estimates population allele frequencies and abundance in experimental mesocosms and field samples. Molecular Ecology 30(3), 685697. https://doi.org/10.1111/mec.15765CrossRefGoogle ScholarPubMed
Baetscher, DS, Anderson, EC, Gilbert-Horvath, EA, Malone, DP, Saarman, ET, Carr, MH and Garza, JC (2019) Dispersal of a nearshore marine fish connects marine reserves and adjacent fished areas along an open coast. Molecular Ecology 28(7), 16111623. https://doi.org/10.1111/mec.15044CrossRefGoogle ScholarPubMed
Baguette, M, Blanchet, S, Legrand, D, Stevens, VM and Turlure, C (2013) Individual dispersal, landscape connectivity and ecological networks. Biological Reviews 88(2), 310326. https://doi.org/10.1111/brv.12000CrossRefGoogle ScholarPubMed
Baker, CS, Steel, D, Nieukirk, S and Klinck, H (2018) Environmental DNA (eDNA) from the wake of the whales: Droplet digital PCR for detection and species identification. Frontiers in Marine Science 5, 133. https://doi.org/10.3389/fmars.2018.00133CrossRefGoogle Scholar
Balbar, AC and Metaxas, A (2019) The current application of ecological connectivity in the design of marine protected areas. Global Ecology and Conservation 17, e00569. https://doi.org/10.1016/j.gecco.2019.e00569CrossRefGoogle Scholar
Balkenhol, N and Fortin, M-J (2015) Basics of study design: Sampling landscape heterogeneity and genetic variation for landscape genetic studies. In Balkenhol, N, Cushman, SA, Storfer, AT and Waits, LP (eds.), Landscape Genetics, Chichester: John Wiley & Sons, Ltd., pp. 5876. https://doi.org/10.1002/9781118525258.ch04CrossRefGoogle Scholar
Ball, IR, Possingham, HP and Watts, M (2009) Marxan and relatives: Software for spatial conservation prioritisation. In Moilanen, A, Wilson, KA and Possingham, HP (eds.), Spatial Conservation Prioritization: Quantitative Methods and Computational Tools. Oxford: Oxford University Press, pp. 185195.Google Scholar
Bani, A, de Brauwer, M, Creer, S, Dumbrell, AJ, Limmon, G, Jompa, J, von der Heyden, S and Beger, M (2020) Chapter ten – Informing marine spatial planning decisions with environmental DNA. In Dumbrell, AJ, Turner, EC and Fayle, TM (eds.), Advances in Ecological Research, Vol. 62. Cambridge, MA: Academic Press, pp. 375407. https://doi.org/10.1016/bs.aecr.2020.01.011Google Scholar
Barbosa, S, Mestre, F, White, TA, Paupério, J, Alves, PC and Searle, JB (2018) Integrative approaches to guide conservation decisions: Using genomics to define conservation units and functional corridors. Molecular Ecology 27(17), 34523465. https://doi.org/10.1111/mec.14806CrossRefGoogle ScholarPubMed
Bay, RA and Palumbi, SR (2014) Multilocus adaptation associated with heat resistance in reef-building corals. Current Biology 24(24), 29522956. https://doi.org/10.1016/j.cub.2014.10.044CrossRefGoogle ScholarPubMed
Bay, RA, Rose, NH, Logan, CA and Palumbi, SR (2017) Genomic models predict successful coral adaptation if future ocean warming rates are reduced. Science Advances 3(11), e1701413. https://doi.org/10.1126/sciadv.1701413CrossRefGoogle ScholarPubMed
Beger, M, Linke, S, Watts, M, Game, E, Treml, E, Ball, I and Possingham, HP (2010) Incorporating asymmetric connectivity into spatial decision making for conservation. Conservation Letters 3(5), 359368. https://doi.org/10.1111/j.1755-263X.2010.00123.xCrossRefGoogle Scholar
Beger, M, Metaxas, A, Balbar, AC, McGowan, JA, Daigle, R, Kuempel, CD, Treml, EA and Possingham, HP (2022) Demystifying ecological connectivity for actionable spatial conservation planning. Trends in Ecology & Evolution 37(12), 10791091. https://doi.org/10.1016/j.tree.2022.09.002CrossRefGoogle ScholarPubMed
Beger, M, Selkoe, KA, Treml, E, Barber, PH, von der Heyden, S, Crandall, ED, Toonen, RJ and Riginos, C (2014) Evolving coral reef conservation with genetic information. Bulletin of Marine Science 90(1), 159185. https://doi.org/10.5343/bms.2012.1106CrossRefGoogle Scholar
Bell, DA, Robinson, ZL, Funk, WC, Fitzpatrick, SW, Allendorf, FW, Tallmon, DA and Whiteley, AR (2019) The exciting potential and remaining uncertainties of genetic rescue. Trends in Ecology & Evolution 34(12), 10701079. https://doi.org/10.1016/j.tree.2019.06.006CrossRefGoogle ScholarPubMed
Benestan, L, Fietz, K, Loiseau, N, Guerin, PE, Trofimenko, E, Rühs, S, Schmidt, C, Rath, W, Biastoch, A, Pérez-Ruzafa, A, Baixauli, P, Forcada, A, Arcas, E, Lenfant, P, Mallol, S, Goñi, R, Velez, L, Höppner, M, Kininmonth, S, Mouillot, D, Puebla, O and Manel, S (2021) Restricted dispersal in a sea of gene flow. Proceedings of the Royal Society B: Biological Sciences 288(1951), 20210458. https://doi.org/10.1098/rspb.2021.0458CrossRefGoogle Scholar
Billionnet, A (2013) Mathematical optimization ideas for biodiversity conservation. European Journal of Operational Research 231(3), 514534. https://doi.org/10.1016/j.ejor.2013.03.025CrossRefGoogle Scholar
Blaxter, M, Mann, J, Chapman, T, Thomas, F, Whitton, C, Floyd, R and Abebe, E (2005) Defining operational taxonomic units using DNA barcode data. Philosophical Transactions of the Royal Society B: Biological Sciences 360(1462), 19351943. https://doi.org/10.1098/rstb.2005.1725CrossRefGoogle ScholarPubMed
Bode, M, Leis, JM, Mason, LB, Williamson, DH, Harrison, HB, Choukroun, S and Jones, GP (2019) Successful validation of a larval dispersal model using genetic parentage data. PLoS Biology 17(7), e3000380. https://doi.org/10.1371/journal.pbio.3000380CrossRefGoogle ScholarPubMed
Bonin, A and Bernatchez, L (2009) Challenges in assessing adaptive genetic diversity: Overview of methods and empirical illustrations. In Bertorelle, G, Bruford, MW, Hauffe, HC, Rizzoli, A and Vernesi, C (eds.), Population Genetics for Animal Conservation. Cambridge: Cambridge University Press, pp. 123147. https://doi.org/10.1017/CBO9780511626920.007Google Scholar
Boulanger, E, Benestan, L, Guerin, P-E, Dalongeville, A, Mouillot, D and Manel, S (2022) Climate differently influences the genomic patterns of two sympatric marine fish species. Journal of Animal Ecology 91(6), 11801195. https://doi.org/10.1111/1365-2656.13623CrossRefGoogle ScholarPubMed
Boulanger, E, Loiseau, N, Valentini, A, Arnal, V, Boissery, P, Dejean, T, Deter, J, Guellati, N, Holon, F, Juhel, JB, Lenfant, P, Manel, S and Mouillot, D (2021) Environmental DNA metabarcoding reveals and unpacks a biodiversity conservation paradox in Mediterranean marine reserves. Proceedings of the Royal Society B: Biological Sciences 288(1949), 20210112. https://doi.org/10.1098/rspb.2021.0112CrossRefGoogle ScholarPubMed
Boussarie, G, Bakker, J, Wangensteen, OS, Mariani, S, Bonnin, L, Juhel, JB, Kiszka, JJ, Kulbicki, M, Manel, S, Robbins, WD, Vigliola, L and Mouillot, D (2018) Environmental DNA illuminates the dark diversity of sharks. Science Advances 4(5), eaap9661. https://doi.org/10.1126/sciadv.aap9661CrossRefGoogle ScholarPubMed
Boussarie, G, Momigliano, P, Robbins, WD, Bonnin, L, Cornu, JF, Fauvelot, C, Kiszka, JJ, Manel, S, Mouillot, D and Vigliola, L (2022) Identifying barriers to gene flow and hierarchical conservation units from seascape genomics: A modelling framework applied to a marine predator. Ecography 2022(7), e06158. https://doi.org/10.1111/ecog.06158CrossRefGoogle Scholar
Broquet, T and Petit, EJ (2009) Molecular estimation of dispersal for ecology and population genetics. Annual Review of Ecology, Evolution, and Systematics 40(1), 193216. https://doi.org/10.1146/annurev.ecolsys.110308.120324CrossRefGoogle Scholar
Carvalho, SB, Velo-Antón, G, Tarroso, P, Portela, AP, Barata, M, Carranza, S, Moritz, C and Possingham, HP (2017) Spatial conservation prioritization of biodiversity spanning the evolutionary continuum. Nature Ecology & Evolution 1(6), 0151. https://doi.org/10.1038/s41559-017-0151CrossRefGoogle ScholarPubMed
Catalano, KA, Dedrick, AG, Stuart, MR, Puritz, JB, Montes, HR and Pinsky, ML (2021) Quantifying dispersal variability among nearshore marine populations. Molecular Ecology 30(10), 23662377. https://doi.org/10.1111/mec.15732CrossRefGoogle ScholarPubMed
Cayuela, H, Rougemont, Q, Prunier, JG, Moore, JS, Clobert, J, Besnard, A and Bernatchez, L (2018) Demographic and genetic approaches to study dispersal in wild animal populations: A methodological review. Molecular Ecology 27(20), 39764010. https://doi.org/10.1111/mec.14848CrossRefGoogle ScholarPubMed
CBD (2010) The strategic plan for biodiversity 2011–2020 and the Aichi biodiversity targets. COP 10 decision X/2. Available at https://www.cbd.int/decision/cop/?id=12268 Accessed on 24th May 2023.Google Scholar
CBD (2022) Kunming–Montreal Global Biodiversity Framework. CBD/COP/15/L.25. Available at https://www.cbd.int/doc/decisions/cop-15/cop-15-dec-04-en.pdf Accessed on 24th May 2023.Google Scholar
Charlesworth, B (2009) Fundamental concepts in genetics: Effective population size and patterns of molecular evolution and variation. Nature Reviews. Genetics 10(3), 195205. https://doi.org/10.1038/nrg2526CrossRefGoogle ScholarPubMed
Christie, MR, Meirmans, PG, Gaggiotti, OE, Toonen, RJ and White, C (2017) Disentangling the relative merits and disadvantages of parentage analysis and assignment tests for inferring population connectivity. ICES Journal of Marine Science 74(6), 17491762. https://doi.org/10.1093/icesjms/fsx044CrossRefGoogle Scholar
Comtet, T, Sandionigi, A, Viard, F and Casiraghi, M (2015) DNA (meta)barcoding of biological invasions: A powerful tool to elucidate invasion processes and help managing aliens. Biological Invasions 17(3), 905922. https://doi.org/10.1007/s10530-015-0854-yCrossRefGoogle Scholar
Daigle, RM, Metaxas, A, Balbar, AC, McGowan, J, Treml, EA, Kuempel, CD, Possingham, HP and Beger, M (2020) Operationalizing ecological connectivity in spatial conservation planning with Marxan connect. Methods in Ecology and Evolution 11(4), 570579. https://doi.org/10.1111/2041-210X.13349CrossRefGoogle Scholar
D’Aloia, CC, Andrés, JA, Bogdanowicz, SM, McCune, AR, Harrison, RG and Buston, PM (2020) Unraveling hierarchical genetic structure in a marine metapopulation: A comparison of three high-throughput genotyping approaches. Molecular Ecology 29(12), 21892203. https://doi.org/10.1111/mec.15405CrossRefGoogle Scholar
D’Aloia, CC, Bogdanowicz, SM, Andrés, JA and Buston, PM (2022) Population assignment tests uncover rare long-distance marine larval dispersal events. Ecology 103(1), e03559. https://doi.org/10.1002/ecy.3559CrossRefGoogle ScholarPubMed
D’Aloia, CC, Bogdanowicz, SM, Francis, RK, Majoris, JE, Harrison, RG and Buston, PM (2015) Patterns, causes, and consequences of marine larval dispersal. Proceedings of the National Academy of Sciences of the United States of America 112(45), 1394013945. https://doi.org/10.1073/pnas.1513754112CrossRefGoogle ScholarPubMed
D’Aloia, CC, Daigle, RM, Côté, IM, Curtis, JMR, Guichard, F and Fortin, M-J (2017) A multiple-species framework for integrating movement processes across life stages into the design of marine protected areas. Biological Conservation 216, 93100. https://doi.org/10.1016/j.biocon.2017.10.012CrossRefGoogle Scholar
D’Aloia, CC, Xuereb, A, Fortin, M-J, Bogdanowicz, SM and Buston, PM (2018) Limited dispersal explains the spatial distribution of siblings in a reef fish population. Marine Ecology Progress Series 607, 143154. https://doi.org/10.3354/meps12792CrossRefGoogle Scholar
Dalongeville, A, Benestan, L, Mouillot, D, Lobreaux, S and Manel, S (2018) Combining six genome scan methods to detect candidate genes to salinity in the Mediterranean striped red mullet (Mullus surmuletus). BMC Genomics 19(1), 217. https://doi.org/10.1186/s12864-018-4579-zCrossRefGoogle ScholarPubMed
de Mita, S, Thuillet, A-C, Gay, L, Ahmadi, N, Manel, S, Ronfort, J and Vigouroux, Y (2013) Detecting selection along environmental gradients: Analysis of eight methods and their effectiveness for outbreeding and selfing populations. Molecular Ecology 22(5), 13831399. https://doi.org/10.1111/mec.12182CrossRefGoogle ScholarPubMed
Dedrick, AG, Catalano, KA, Stuart, MR, White, JW, Montes, HR Jr. and Pinsky, ML (2021) Persistence of a reef fish metapopulation via network connectivity: Theory and data. Ecology Letters 24(6), 11211132. https://doi.org/10.1111/ele.13721CrossRefGoogle ScholarPubMed
Deiner, K, Bik, HM, Mächler, E, Seymour, M, Lacoursière-Roussel, A, Altermatt, F, Creer, S, Bista, I, Lodge, DM, Vere, N, Pfrender, ME and Bernatchez, L (2017) Environmental DNA metabarcoding: Transforming how we survey animal and plant communities. Molecular Ecology 26(21), 58725895. https://doi.org/10.1111/mec.14350CrossRefGoogle ScholarPubMed
Depczynski, M and Bellwood, DR (2003) The role of cryptobenthic reef fishes in coral reef trophodynamics. Marine Ecology Progress Series 256, 183191. https://doi.org/10.3354/meps256183CrossRefGoogle Scholar
Di Lorenzo, M, Guidetti, P, Di Franco, A, Calò, A and Claudet, J (2020) Assessing spillover from marine protected areas and its drivers: A meta-analytical approach. Fish and Fisheries 21(5), 906915. https://doi.org/10.1111/faf.12469CrossRefGoogle Scholar
Donati, GFA, Zemp, N, Manel, S, Poirier, M, Claverie, T, Ferraton, F, Gaboriau, T, Govinden, R, Hagen, O, Ibrahim, S, Mouillot, D, Leblond, J, Julius, P, Velez, L, Zareer, I, Ziyad, A, Leprieur, F, Albouy, C and Pellissier, L (2021) Species ecology explains the spatial components of genetic diversity in tropical reef fishes. Proceedings of the Royal Society B: Biological Sciences 288(1959), 20211574. https://doi.org/10.1098/rspb.2021.1574CrossRefGoogle ScholarPubMed
Donelson, JM, Sunday, JM, Figueira, WF, Gaitán-Espitia, JD, Hobday, AJ, Johnson, CR, Leis, JM, Ling, SD, Marshall, D, Pandolfi, JM, Pecl, G, Rodgers, GG, Booth, DJ and Munday, PL (2019) Understanding interactions between plasticity, adaptation and range shifts in response to marine environmental change. Philosophical Transactions of the Royal Society B: Biological Sciences 374(1768), 20180186. https://doi.org/10.1098/rstb.2018.0186CrossRefGoogle ScholarPubMed
Dorant, Y, Laporte, M, Rougemont, Q, Cayuela, H, Rochette, R and Bernatchez, L (2022) Landscape genomics of the American lobster (Homarus americanus). Molecular Ecology 31(20), 51825200. https://doi.org/10.1111/mec.16653CrossRefGoogle ScholarPubMed
Duarte, S, Vieira, PE, Lavrador, AS and Costa, FO (2021) Status and prospects of marine NIS detection and monitoring through (e)DNA metabarcoding. Science of the Total Environment 751, 141729. https://doi.org/10.1016/j.scitotenv.2020.141729CrossRefGoogle ScholarPubMed
Dubé, CE, Boissin, E, Mercière, A and Planes, S (2020) Parentage analyses identify local dispersal events and sibling aggregations in a natural population of millepora hydrocorals, a free-spawning marine invertebrate. Molecular Ecology 29(8), 15081522. https://doi.org/10.1111/mec.15418CrossRefGoogle Scholar
Dugal, L, Thomas, L, Jensen, MR, Sigsgaard, EE, Simpson, T, Jarman, S, Thomsen, PF and Meekan, M (2022) Individual haplotyping of whale sharks from seawater environmental DNA. Molecular Ecology Resources 22(1), 5665. https://doi.org/10.1111/1755-0998.13451CrossRefGoogle ScholarPubMed
Exposito-Alonso, M, Booker, TR, Czech, L, Gillespie, L, Hateley, S, Kyriazis, CC, Lang, PLM, Leventhal, L, Nogues-Bravo, D, Pagowski, V, Ruffley, M, Spence, JP, Toro Arana, SE, Weiß, CL and Zess, E (2022) Genetic diversity loss in the Anthropocene. Science 377(6613), 14311435. https://doi.org/10.1126/science.abn5642CrossRefGoogle ScholarPubMed
Faurby, S, Davis, M, Pedersen, , Schowanek, SD, Antonelli, A and Svenning, J-C (2018) PHYLACINE 1.2: The phylogenetic atlas of mammal macroecology. Ecology 99(11), 26262626. https://doi.org/10.1002/ecy.2443CrossRefGoogle ScholarPubMed
Foster, SD, Feutry, P, Grewe, P and Davies, C (2021) Sample size requirements for genetic studies on yellowfin tuna. PLoS One 16(11), e0259113. https://doi.org/10.1371/journal.pone.0259113CrossRefGoogle ScholarPubMed
Gaggiotti, OE, Chao, A, Peres-Neto, P, Chiu, CH, Edwards, C, Fortin, MJ, Jost, L, Richards, CM and Selkoe, KA (2018) Diversity from genes to ecosystems: A unifying framework to study variation across biological metrics and scales. Evolutionary Applications 11(7), 11761193. https://doi.org/10.1111/eva.12593CrossRefGoogle ScholarPubMed
Gagnaire, P, Broquet, T, Aurelle, D, Viard, F, Souissi, A, Bonhomme, F, Arnaud-Haond, S and Bierne, N (2015) Using neutral, selected, and hitchhiker loci to assess connectivity of marine populations in the genomic era. Evolutionary Applications 8(8), 769786. https://doi.org/10.1111/eva.12288CrossRefGoogle ScholarPubMed
Grorud-Colvert, K, Sullivan-Stack, J, Roberts, C, Constant, V, Horta e Costa, B, Pike, EP, Kingston, N, Laffoley, D, Sala, E, Claudet, J, Friedlander, AM, Gill, DA, Lester, SE, Day, JC, Gonçalves, EJ, Ahmadia, GN, Rand, M, Villagomez, A, Ban, NC, Gurney, GG, Spalding, AK, Bennett, NJ, Briggs, J, Morgan, LE, Moffitt, R, Deguignet, M, Pikitch, EK, Darling, ES, Jessen, S, Hameed, SO, di Carlo, G, Guidetti, P, Harris, JM, Torre, J, Kizilkaya, Z, Agardy, T, Cury, P, Shah, NJ, Sack, K, Cao, L, Fernandez, M and Lubchenco, J (2021) The MPA guide: A framework to achieve global goals for the ocean. Science 373(6560), eabf0861. https://doi.org/10.1126/science.abf0861CrossRefGoogle Scholar
Grüss, A, Kaplan, DM, Guenette, S, Roberts, CM and Botsford, LW (2011) Consequences of adult and juvenile movement for marine protected areas. Biological Conservation 144(2), 692702. https://doi.org/10.1016/j.biocon.2010.12.015CrossRefGoogle Scholar
Guilhaumon, F, Albouy, C, Claudet, J, Velez, L, Ben Rais Lasram, F, Tomasini, JA, Douzery, EJP, Meynard, CN, Mouquet, N, Troussellier, M, Araújo, MB and Mouillot, D (2015) Representing taxonomic, phylogenetic and functional diversity: New challenges for Mediterranean marine-protected areas. Diversity and Distributions 21(2), 175187. https://doi.org/10.1111/ddi.12280CrossRefGoogle Scholar
Gurney, GG, Darling, ES, Ahmadia, GN, Agostini, VN, Ban, NC, Blythe, J, Claudet, J, Epstein, G, Estradivari, , Himes-Cornell, A, Jonas, HD, Armitage, D, Campbell, SJ, Cox, C, Friedman, WR, Gill, D, Lestari, P, Mangubhai, S, McLeod, E, Muthiga, NA, Naggea, J, Ranaivoson, R, Wenger, A, Yulianto, I and Jupiter, SD (2021) Biodiversity needs every tool in the box: Use OECMs. Nature 595(7869), 646649. https://doi.org/10.1038/d41586-021-02041-4CrossRefGoogle ScholarPubMed
Hanson, JO, Fuller, RA and Rhodes, JR (2019a) Conventional methods for enhancing connectivity in conservation planning do not always maintain gene flow. Journal of Applied Ecology 56(4), 913922. https://doi.org/10.1111/1365-2664.13315CrossRefGoogle Scholar
Hanson, JO, Marques, A, Veríssimo, A, Camacho-Sanchez, M, Velo-Antón, G, Martínez-Solano, Í and Carvalho, SB (2020) Conservation planning for adaptive and neutral evolutionary processes. Journal of Applied Ecology 57(11), 21592169. https://doi.org/10.1111/1365-2664.13718CrossRefGoogle Scholar
Hanson, JO, Rhodes, JR, Riginos, C and Fuller, RA (2017) Environmental and geographic variables are effective surrogates for genetic variation in conservation planning. Proceedings of the National Academy of Sciences of the United States of America 114(48), 1275512760. https://doi.org/10.1073/pnas.1711009114CrossRefGoogle ScholarPubMed
Hanson, JO, Schuster, R, Strimas-Mackey, M and Bennett, JR (2019b) Optimality in prioritizing conservation projects. Methods in Ecology and Evolution 10(10), 16551663. https://doi.org/10.1111/2041-210X.13264CrossRefGoogle Scholar
Hanson, JO, Veríssimo, A, Velo-Antón, G, Marques, A, Camacho-Sanchez, M, Martínez-Solano, Í, Gonçalves, H, Sequeira, F, Possingham, HP and Carvalho, SB (2021) Evaluating surrogates of genetic diversity for conservation planning. Conservation Biology 35(2), 634642. https://doi.org/10.1111/cobi.13602CrossRefGoogle ScholarPubMed
Harrison, HB, Bode, M, Williamson, DH, Berumen, ML and Jones, GP (2020) A connectivity portfolio effect stabilizes marine reserve performance. Proceedings of the National Academy of Sciences 117(41), 2559525600. https://doi.org/10.1073/pnas.1920580117CrossRefGoogle ScholarPubMed
Harrison, HB, Williamson, DH, Evans, RD, Almany, GR, Thorrold, SR, Russ, GR, Feldheim, KA, van Herwerden, L, Planes, S, Srinivasan, M, Berumen, ML and Jones, GP (2012) Larval export from marine reserves and the recruitment benefit for fish and fisheries. Current Biology 22(11), 10231028.CrossRefGoogle ScholarPubMed
He, Q and Silliman, BR (2019) Climate change, human impacts, and coastal ecosystems in the Anthropocene. Current Biology 29(19), R1021R1035. https://doi.org/10.1016/j.cub.2019.08.042CrossRefGoogle ScholarPubMed
Herbert-Read, JE, Thornton, A, Amon, DJ, Birchenough, SNR, Côté, IM, Dias, MP, Godley, BJ, Keith, SA, McKinley, E, Peck, LS, Calado, R, Defeo, O, Degraer, S, Johnston, EL, Kaartokallio, H, Macreadie, PI, Metaxas, A, Muthumbi, AWN, Obura, DO, Paterson, DM, Piola, AR, Richardson, AJ, Schloss, IR, Snelgrove, PVR, Stewart, BD, Thompson, PM, Watson, GJ, Worthington, TA, Yasuhara, M and Sutherland, WJ (2022) A global horizon scan of issues impacting marine and coastal biodiversity conservation. Nature Ecology & Evolution 6(9), 12621270. https://doi.org/10.1038/s41559-022-01812-0CrossRefGoogle ScholarPubMed
Hoban, S, Archer, FI, Bertola, LD, Bragg, JG, Breed, MF, Bruford, MW, Coleman, MA, Ekblom, R, Funk, WC, Grueber, CE, Hand, BK, Jaffé, R, Jensen, E, Johnson, JS, Kershaw, F, Liggins, L, MacDonald, AJ, Mergeay, J, Miller, JM, Muller-Karger, F, O–Brien, D, Paz-Vinas, I, Potter, KM, Razgour, O, Vernesi, C and Hunter, ME (2022) Global genetic diversity status and trends: Towards a suite of essential biodiversity variables (EBVs) for genetic composition. Biological Reviews 97(4), 15111538. https://doi.org/10.1111/brv.12852CrossRefGoogle ScholarPubMed
Hoban, S, Bruford, M, D’Urban Jackson, J, Lopes-Fernandes, M, Heuertz, M, Hohenlohe, PA, Paz-Vinas, I, Sjögren-Gulve, P, Segelbacher, G, Vernesi, C, Aitken, S, Bertola, LD, Bloomer, P, Breed, M, Rodríguez-Correa, H, Funk, WC, Grueber, CE, Hunter, ME, Jaffe, R, Liggins, L, Mergeay, J, Moharrek, F, O’Brien, D, Ogden, R, Palma-Silva, C, Pierson, J, Ramakrishnan, U, Simo-Droissart, M, Tani, N, Waits, L and Laikre, L (2020) Genetic diversity targets and indicators in the CBD post-2020 global biodiversity framework must be improved. Biological Conservation 248, 108654. https://doi.org/10.1016/j.biocon.2020.108654CrossRefGoogle Scholar
Hoban, S, Kelley, JL, Lotterhos, KE, Antolin, MF, Bradburd, G, Lowry, DB, Poss, ML, Reed, LK, Storfer, A and Whitlock, MC (2016) Finding the genomic basis of local adaptation: Pitfalls, practical solutions, and future directions. American Naturalist 188(4), 379397. https://doi.org/10.1086/688018CrossRefGoogle ScholarPubMed
Holderegger, R, Kamm, U and Gugerli, F (2006) Adaptive vs. neutral genetic diversity: Implications for landscape genetics. Landscape Ecology 21(6), 797807. https://doi.org/10.1007/s10980-005-5245-9CrossRefGoogle Scholar
Huang, D and Roy, K (2015) The future of evolutionary diversity in reef corals. Philosophical Transactions of the Royal Society B: Biological Sciences 370(1662), 20140010. https://doi.org/10.1098/rstb.2014.0010CrossRefGoogle ScholarPubMed
Jaquier, M, Albouy, C, Bach, W, Waldock, C, Marques, V, Maire, E, Juhel, J-B, Andrello, M, Valentini, A, Manel, S, Dejean, T, Mouillot, D, Pellissier, L (under review) eDNA recovers fish composition turnover of the coral reefs of West Indian Ocean Islands. Environmental DNA.Google Scholar
Jasper, ME, Hoffmann, AA and Schmidt, TL (2022) Estimating dispersal using close kin dyads: The kindisperse R package. Molecular Ecology Resources 22(3), 12001212. https://doi.org/10.1111/1755-0998.13520CrossRefGoogle ScholarPubMed
Jeffery, NW, Lehnert, SJ, Kess, T, Layton, KKS, Wringe, BF and Stanley, RRE (2022) Application of omics tools in designing and monitoring marine protected areas for a sustainable blue economy. Frontiers in Genetics 13, 886494. https://doi.org/10.3389/fgene.2022.886494CrossRefGoogle ScholarPubMed
Jensen, MR, Sigsgaard, EE, Liu, S, Manica, A, Bach, SS, Hansen, MM, Møller, PR and Thomsen, PF (2021) Genome-scale target capture of mitochondrial and nuclear environmental DNA from water samples. Molecular Ecology Resources 21(3), 690702. https://doi.org/10.1111/1755-0998.13293CrossRefGoogle ScholarPubMed
Jones, MR and Good, JM (2016) Targeted capture in evolutionary and ecological genomics. Molecular Ecology 25(1), 185202. https://doi.org/10.1111/mec.13304CrossRefGoogle ScholarPubMed
Jost, L, Archer, F, Flanagan, S, Gaggiotti, O, Hoban, S and Latch, E (2018) Differentiation measures for conservation genetics. Evolutionary Applications 11(7), 11391148. https://doi.org/10.1111/eva.12590CrossRefGoogle ScholarPubMed
Juhel, J-B, Marques, V, Utama, RS, Vimono, IB, Sugeha, HY, Kadarusman, K, Cochet, C, Dejean, T, Hoey, A, Mouillot, D, Hocdé, R and Pouyaud, L (2022) Estimating the extended and hidden species diversity from environmental DNA in hyper-diverse regions. Ecography 2022(10), e06299. https://doi.org/10.1111/ecog.06299CrossRefGoogle Scholar
Kapli, P, Yang, Z and Telford, MJ (2020) Phylogenetic tree building in the genomic age. Nature Reviews Genetics 21(7), 428444. https://doi.org/10.1038/s41576-020-0233-0CrossRefGoogle ScholarPubMed
Kukkala, AS and Moilanen, A (2013) Core concepts of spatial prioritisation in systematic conservation planning. Biological Reviews 88(2), 443464. https://doi.org/10.1111/brv.12008CrossRefGoogle ScholarPubMed
Leigh, DM, Hendry, AP, Vázquez-Domínguez, E and Friesen, VL (2019) Estimated six per cent loss of genetic variation in wild populations since the industrial revolution. Evolutionary Applications 12(8), 15051512. https://doi.org/10.1111/eva.12810CrossRefGoogle ScholarPubMed
Lewin, HA, Richards, S, Lieberman Aiden, E, Allende, ML, Archibald, JM, Bálint, M, Barker, KB, Baumgartner, B, Belov, K, Bertorelle, G, Blaxter, ML, Cai, J, Caperello, ND, Carlson, K, Castilla-Rubio, JC, Chaw, SM, Chen, L, Childers, AK, Coddington, JA, Conde, DA, Corominas, M, Crandall, KA, Crawford, AJ, DiPalma, F, Durbin, R, Ebenezer, TGE, Edwards, SV, Fedrigo, O, Flicek, P, Formenti, G, Gibbs, RA, Gilbert, MTP, Goldstein, MM, Graves, JM, Greely, HT, Grigoriev, IV, Hackett, KJ, Hall, N, Haussler, D, Helgen, KM, Hogg, CJ, Isobe, S, Jakobsen, KS, Janke, A, Jarvis, ED, Johnson, WE, Jones, SJM, Karlsson, EK, Kersey, PJ, Kim, JH, Kress, WJ, Kuraku, S, Lawniczak, MKN, Leebens-Mack, JH, Li, X, Lindblad-Toh, K, Liu, X, Lopez, JV, Marques-Bonet, T, Mazard, S, Mazet, JAK, Mazzoni, CJ, Myers, EW, O’Neill, RJ, Paez, S, Park, H, Robinson, GE, Roquet, C, Ryder, OA, Sabir, JSM, Shaffer, HB, Shank, TM, Sherkow, JS, Soltis, PS, Tang, B, Tedersoo, L, Uliano-Silva, M, Wang, K, Wei, X, Wetzer, R, Wilson, JL, Xu, X, Yang, H, Yoder, AD and Zhang, G (2022) The earth BioGenome project 2020: Starting the clock. Proceedings of the National Academy of Sciences of the United States of America 119(4), e2115635118. https://doi.org/10.1073/pnas.2115635118CrossRefGoogle ScholarPubMed
Lowe, WH and Allendorf, FW (2010) What can genetics tell us about population connectivity? Molecular Ecology 19(15), 30383051. https://doi.org/10.1111/j.1365-294X.2010.04688.xCrossRefGoogle ScholarPubMed
Macé, B, Hocdé, R, Marques, V, Guerin, PE, Valentini, A, Arnal, V, Pellissier, L and Manel, S (2022) Evaluating bioinformatics pipelines for population-level inference using environmental DNA. Environmental DNA 4(3), 674686. https://doi.org/10.1002/edn3.269CrossRefGoogle Scholar
Mace, GM, Gittleman, JL and Purvis, A (2003) Preserving the tree of life. Science 300(5626), 17071709. https://doi.org/10.1126/science.1085510CrossRefGoogle ScholarPubMed
Magris, RA, Andrello, M, Pressey, RL, Mouillot, D, Dalongeville, A, Jacobi, MN and Manel, S (2018) Biologically representative and well-connected marine reserves enhance biodiversity persistence in conservation planning. Conservation Letters 11(4), e12439. https://doi.org/10.1111/conl.12439CrossRefGoogle Scholar
Manel, S, Andrello, M, Henry, K, Verdelet, D, Darracq, A, Guerin, PE, Desprez, B and Devaux, P (2018) Predicting genotype environmental range from genome-environment associations. Molecular Ecology 27(13), 28232833. https://doi.org/10.1111/mec.14723CrossRefGoogle ScholarPubMed
Manel, S, Gaggiotti, O and Waples, R (2005) Assignment methods: Matching biological questions with appropriate techniques. Trends in Ecology & Evolution 20(3), 136142. https://doi.org/10.1016/j.tree.2004.12.004CrossRefGoogle ScholarPubMed
Manel, S, Guerin, P-E, Mouillot, D, Blanchet, S, Velez, L, Albouy, C and Pellissier, L (2020) Global determinants of freshwater and marine fish genetic diversity. Nature Communications 11(1), 19. https://doi.org/10.1038/s41467-020-14409-7CrossRefGoogle ScholarPubMed
Manel, S and Holderegger, R (2013) Ten years of landscape genetics. Trends in Ecology & Evolution 28(10), 614621. https://doi.org/10.1016/j.tree.2013.05.012CrossRefGoogle ScholarPubMed
Manel, S, Loiseau, N, Andrello, M, Fietz, K, Goñi, R, Forcada, A, Lenfant, P, Kininmonth, S, Marcos, C, Marques, V, Mallol, S, Pérez-Ruzafa, A, Breusing, C, Puebla, O and Mouillot, D (2019) Long-distance benefits of marine reserves: Myth or reality? Trends in Ecology & Evolution 34(4), 342354. https://doi.org/10.1016/j.tree.2019.01.002CrossRefGoogle ScholarPubMed
Manel, S, Perrier, C, Pratlong, M, Abi-Rached, L, Paganini, J, Pontarotti, P and Aurelle, D (2016) Genomic resources and their influence on the detection of the signal of positive selection in genome scans. Molecular Ecology 25(1), 170184. https://doi.org/10.1111/mec.13468CrossRefGoogle ScholarPubMed
Margules, C and Sarkar, S (2007) Systematic Conservation Planning, Cambridge: Cambridge University Press.Google Scholar
Margules, CR and Pressey, RL (2000) Systematic conservation planning. Nature 405(6783), 243. https://doi.org/10.1038/35012251CrossRefGoogle ScholarPubMed
Marques, V, Castagné, P, Polanco Fernández, A, Borrero-Pérez, GH, Hocdé, R, Guérin, , Juhel, JB, Velez, L, Loiseau, N, Letessier, TB, Bessudo, S, Valentini, A, Dejean, T, Mouillot, D, Pellissier, L and Villéger, S (2021) Use of environmental DNA in assessment of fish functional and phylogenetic diversity. Conservation Biology 35(6), 19441956. https://doi.org/10.1111/cobi.13802CrossRefGoogle ScholarPubMed
Mathon, L, Baletaud, F, Lebourges-Dhaussy, A, Lecellier, G, Menkes, C, Bachelier, C, Bonneville, C, Dejean, T, Dumas, M, Fiat, S, Grelet, J, Habasque, J, Manel, S, Mannocci, L, Mouillot, D, Peran, M, Roudaut, G, Sidobre, C, Varillon, D, Vigliola, L (unpublished results) 3D conservation planning of multiple biodiversity metrics reveals deep-sea 30x30 CBD target. Unpublished results.Google Scholar
Mathon, L, Marques, V, Mouillot, D, Albouy, C, Andrello, M, Baletaud, F, Borrero-Pérez, GH, Dejean, T, Edgar, GJ, Grondin, J, Guerin, PE, Hocdé, R, Juhel, JB, Kadarusman, , Maire, E, Mariani, G, McLean, M, Polanco F., A, Pouyaud, L, Stuart-Smith, RD, Sugeha, HY, Valentini, A, Vigliola, L, Vimono, IB, Pellissier, L and Manel, S (2022) Cross-ocean patterns and processes in fish biodiversity on coral reefs through the lens of eDNA metabarcoding. Proceedings of the Royal Society B: Biological Sciences 289(1973), 20220162. https://doi.org/10.1098/rspb.2022.0162CrossRefGoogle ScholarPubMed
Matz, MV, Treml, EA and Haller, BC (2020) Estimating the potential for coral adaptation to global warming across the indo-West Pacific. Global Change Biology 26(6), 34733481. https://doi.org/10.1111/gcb.15060CrossRefGoogle ScholarPubMed
Maxwell, SL, Cazalis, V, Dudley, N, Hoffmann, M, Rodrigues, ASL, Stolton, S, Visconti, P, Woodley, S, Kingston, N, Lewis, E, Maron, M, Strassburg, BBN, Wenger, A, Jonas, HD, Venter, O and Watson, JEM (2020) Area-based conservation in the twenty-first century. Nature 586(7828), 217227. https://doi.org/10.1038/s41586-020-2773-zCrossRefGoogle ScholarPubMed
May-Collado, LJ, Zambrana-Torrelio, C and Agnarsson, I (2016) Global spatial analyses of phylogenetic conservation priorities for aquatic mammals. In Pellens, R and Grandcolas, P (eds.), Biodiversity Conservation and Phylogenetic Systematics. Cham: Springer, pp. 305318.CrossRefGoogle Scholar
Mazel, F, Pennell, MW, Cadotte, MW, Diaz, S, Dalla Riva, GV, Grenyer, R, Leprieur, F, Mooers, AO, Mouillot, D, Tucker, CM and Pearse, WD (2018) Prioritizing phylogenetic diversity captures functional diversity unreliably. Nature Communications 9(1), 2888. https://doi.org/10.1038/s41467-018-05126-3CrossRefGoogle ScholarPubMed
Mazel, F, Pennell, MW, Cadotte, MW, Diaz, S, Riva, GVD, Grenyer, R, Leprieur, F, Mooers, AO, Mouillot, D, Tucker, CM and Pearse, WD (2019) Reply to: “Global conservation of phylogenetic diversity captures more than just functional diversity.” Nature Communications 10(1), 858. https://doi.org/10.1038/s41467-019-08603-5CrossRefGoogle ScholarPubMed
McClenaghan, B, Compson, ZG and Hajibabaei, M (2020) Validating metabarcoding-based biodiversity assessments with multi-species occupancy models: A case study using coastal marine eDNA. PLoS One 15(3), e0224119. https://doi.org/10.1371/journal.pone.0224119CrossRefGoogle ScholarPubMed
Medoff, S, Lynham, J and Raynor, J (2022) Spillover benefits from the world’s largest fully protected MPA. Science 378(6617), 313316. https://doi.org/10.1126/science.abn0098CrossRefGoogle ScholarPubMed
Miya, M (2022) Environmental DNA metabarcoding: A novel method for biodiversity monitoring of marine fish communities. Annual Review of Marine Science 14(1), 161185. https://doi.org/10.1146/annurev-marine-041421-082251CrossRefGoogle ScholarPubMed
Moilanen, A, Possingham, HP and Polasky, S (2009a) A mathematical classification of conservation prioritization problems. In Moilanen, A, Wilson, KA and Possingham, HP (eds.), Spatial Conservation Prioritization: Quantitative Methods and Computational Tools. Oxford: Oxford University Press, pp. 2842.Google Scholar
Moilanen, A, Wilson, KA and Possingham, H (eds.) (2009b) Spatial Conservation Prioritization: Quantitative Methods and Computational Tools, Oxford: Oxford University Press.Google Scholar
Mouillot, D, Albouy, C, Guilhaumon, F, Ben Rais Lasram, F, Coll, M, Devictor, V, Meynard, CN, Pauly, D, Tomasini, JA, Troussellier, M, Velez, L, Watson, R, Douzery, EJP and Mouquet, N (2011) Protected and threatened components of fish biodiversity in the Mediterranean Sea. Current Biology 21(12), 10441050. https://doi.org/10.1016/j.cub.2011.05.005CrossRefGoogle ScholarPubMed
Mouillot, D, Parravicini, V, Bellwood, DR, Leprieur, F, Huang, D, Cowman, PF, Albouy, C, Hughes, TP, Thuiller, W and Guilhaumon, F (2016) Global marine protected areas do not secure the evolutionary history of tropical corals and fishes. Nature Communications 7, 10359. https://doi.org/10.1038/ncomms10359CrossRefGoogle Scholar
Mouton, TL, Stephenson, F, Torres, LG, Rayment, W, Brough, T, McLean, M, Tonkin, JD, Albouy, C and Leprieur, F (2022) Spatial mismatch in diversity facets reveals contrasting protection for New Zealand’s cetacean biodiversity. Biological Conservation 267, 109484. https://doi.org/10.1016/j.biocon.2022.109484CrossRefGoogle Scholar
Naaykens, T and D’Aloia, CC (2022) Isolation-by-distance and genetic parentage analysis provide similar larval dispersal estimates. Molecular Ecology 31(11), 30723082. https://doi.org/10.1111/mec.16465CrossRefGoogle ScholarPubMed
Ng, LWK, Chisholm, C, Carrasco, LR, Darling, ES, Guilhaumon, F, Mooers, , Tucker, CM, Winter, M and Huang, D (2022) Prioritizing phylogenetic diversity to protect functional diversity of reef corals. Diversity and Distributions 28(8), 17211734. https://doi.org/10.1111/ddi.13526CrossRefGoogle Scholar
Nielsen, ES, Beger, M, Henriques, R, Selkoe, KA and von der Heyden, S (2017) Multispecies genetic objectives in spatial conservation planning. Conservation Biology 31(4), 872882. https://doi.org/10.1111/cobi.12875CrossRefGoogle ScholarPubMed
Nielsen, ES, Beger, M, Henriques, R and von der Heyden, S (2020) A comparison of genetic and genomic approaches to represent evolutionary potential in conservation planning. Biological Conservation 251, 108770. https://doi.org/10.1016/j.biocon.2020.108770CrossRefGoogle Scholar
Nielsen, ES, Hanson, JO, Carvalho, SB, Beger, M, Henriques, R, Kershaw, F and von der Heyden, S (2023) Molecular ecology meets systematic conservation planning. Trends in Ecology & Evolution 38(2), 143155. https://doi.org/10.1016/j.tree.2022.09.006CrossRefGoogle ScholarPubMed
Önal, H and Briers, RA (2006) Optimal selection of a connected reserve network. Operations Research 54(2), 379388. https://doi.org/10.1287/opre.1060.0272CrossRefGoogle Scholar
Owen, NR, Gumbs, R, Gray, CL and Faith, DP (2019) Global conservation of phylogenetic diversity captures more than just functional diversity. Nature Communications 10(1), 859. https://doi.org/10.1038/s41467-019-08600-8CrossRefGoogle ScholarPubMed
Palumbi, SR (2003) Population genetics, demographic connectivity, and the design of marine reserves. Ecological Applications 13(sp1), 146158. https://doi.org/10.1890/1051-0761(2003)013(0146:pgdcat)2.0.co;2CrossRefGoogle Scholar
Parsons, KM, Everett, M, Dahlheim, M and Park, L (2018) Water, water everywhere: Environmental DNA can unlock population structure in elusive marine species. Royal Society Open Science 5(8), 180537. https://doi.org/10.1098/rsos.180537CrossRefGoogle ScholarPubMed
Pascual, M, Rives, B, Schunter, C and Macpherson, E (2017) Impact of life history traits on gene flow: A multispecies systematic review across oceanographic barriers in the Mediterranean Sea. PLoS One 12(5), e0176419. https://doi.org/10.1371/journal.pone.0176419CrossRefGoogle ScholarPubMed
Paz-Vinas, I, Loot, G, Hermoso, V, Veyssière, C, Poulet, N, Grenouillet, G and Blanchet, S (2018) Systematic conservation planning for intraspecific genetic diversity. Proceedings of the Royal Society B: Biological Sciences 285(1877), 20172746. https://doi.org/10.1098/rspb.2017.2746CrossRefGoogle ScholarPubMed
Phair, NL, Nielsen, ES and von der Heyden, S (2021) Applying genomic data to seagrass conservation. Biodiversity and Conservation 30(7), 20792096. https://doi.org/10.1007/s10531-021-02184-wCrossRefGoogle Scholar
Pinsky, ML, Saenz-Agudelo, P, Salles, OC, Almany, GR, Bode, M, Berumen, ML, Andréfouët, S, Thorrold, SR, Jones, GP and Planes, S (2017) Marine dispersal scales are congruent over evolutionary and ecological time. Current Biology 27(1), 149154. https://doi.org/10.1016/j.cub.2016.10.053CrossRefGoogle ScholarPubMed
Pollock, LJ, O’Connor, LMJ, Mokany, K, Rosauer, DF, Talluto, MV and Thuiller, W (2020) Protecting biodiversity (in all its complexity): New models and methods. Trends in Ecology & Evolution 35(12), 11191128. https://doi.org/10.1016/j.tree.2020.08.015CrossRefGoogle ScholarPubMed
Pompanon, F, Bonin, A, Bellemain, E and Taberlet, P (2005) Genotyping errors: Causes, consequences and solutions. Nature Reviews Genetics 6(11), 847859. https://doi.org/10.1038/nrg1707CrossRefGoogle ScholarPubMed
Puebla, O, Bermingham, E and McMillan, WO (2012) On the spatial scale of dispersal in coral reef fishes. Molecular Ecology 21(23), 56755688. https://doi.org/10.1111/j.1365-294X.2012.05734.xCrossRefGoogle ScholarPubMed
Pukk, L, Kanefsky, J, Heathman, AL, Weise, EM, Nathan, LR, Herbst, SJ, Sard, NM, Scribner, KT and Robinson, JD (2021) eDNA metabarcoding in lakes to quantify influences of landscape features and human activity on aquatic invasive species prevalence and fish community diversity. Diversity and Distributions 27(10), 20162031. https://doi.org/10.1111/ddi.13370CrossRefGoogle Scholar
Puritz, JB, Keever, CC, Addison, JA, Barbosa, SS, Byrne, M, Hart, MW, Grosberg, RK and Toonen, RJ (2017) Life-history predicts past and present population connectivity in two sympatric sea stars. Ecology and Evolution 7(11), 39163930. https://doi.org/10.1002/ece3.2938CrossRefGoogle ScholarPubMed
Purvis, A, Gittleman, JL and Brooks, T (2005) Phylogeny and Conservation. Oxford: Blackwell Pub. Ltd. https://doi.org/10.1017/CBO9780511614927Google Scholar
Rabosky, DL, Chang, J, Title, PO, Cowman, PF, Sallan, L, Friedman, M, Kaschner, K, Garilao, C, Near, TJ, Coll, M and Alfaro, ME (2018) An inverse latitudinal gradient in speciation rate for marine fishes. Nature 559(7714), 392395. https://doi.org/10.1038/s41586-018-0273-1CrossRefGoogle ScholarPubMed
Riginos, C and Beger, M (2022) Incorporating genetic measures of connectivity and adaptation in marine spatial planning for corals. In van Oppen, MJH and Aranda Lastra, M (eds.), Coral Reef Conservation and Restoration in the Omics Age. Cham: Springer International Publishing, pp. 733. https://doi.org/10.1007/978-3-031-07055-6_2CrossRefGoogle Scholar
Robuchon, M, Pavoine, S, Véron, S, Delli, G, Faith, DP, Mandrici, A, Pellens, R, Dubois, G and Leroy, B (2021) Revisiting species and areas of interest for conserving global mammalian phylogenetic diversity. Nature Communications 12(1), 111. https://doi.org/10.1038/s41467-021-23861-yCrossRefGoogle ScholarPubMed
Rodrigues, ASL and Gaston, KJ (2002) Maximising phylogenetic diversity in the selection of networks of conservation areas. Biological Conservation 105(1), 103111. https://doi.org/10.1016/S0006-3207(01)00208-7CrossRefGoogle Scholar
Rosauer, DF, Byrne, M, Blom, MPK, Coates, DJ, Donnellan, S, Doughty, P, Keogh, JS, Kinloch, J, Laver, RJ, Myers, C, Oliver, PM, Potter, S, Rabosky, DL, Afonso Silva, AC, Smith, J and Moritz, C (2018) Real‐world conservation planning for evolutionary diversity in the Kimberley, Australia, sidesteps uncertain taxonomy. Conservation Letters 11(4), e12438. https://doi.org/10.1111/conl.12438CrossRefGoogle Scholar
Rourke, ML, Fowler, AM, Hughes, JM, Broadhurst, MK, DiBattista, JD, Fielder, S, Wilkes Walburn, J and Furlan, EM (2022) Environmental DNA (eDNA) as a tool for assessing fish biomass: A review of approaches and future considerations for resource surveys. Environmental DNA 4(1), 933. https://doi.org/10.1002/edn3.185CrossRefGoogle Scholar
Rueger, T, Harrison, HB, Buston, PM, Gardiner, NM, Berumen, ML and Jones, GP (2020) Natal philopatry increases relatedness within groups of coral reef cardinalfish. Proceedings of the Royal Society B: Biological Sciences 287(1930), 20201133. https://doi.org/10.1098/rspb.2020.1133CrossRefGoogle ScholarPubMed
Saenz-Agudelo, P, Jones, GP, Thorrold, SR and Planes, S (2011) Connectivity dominates larval replenishment in a coastal reef fish metapopulation. Proceedings of the Royal Society B-Biological Sciences 278(1720), 29542961. https://doi.org/10.1098/rspb.2010.2780CrossRefGoogle Scholar
Sala, E, Mayorga, J, Bradley, D, Cabral, RB, Atwood, TB, Auber, A, Cheung, W, Costello, C, Ferretti, F, Friedlander, AM, Gaines, SD, Garilao, C, Goodell, W, Halpern, BS, Hinson, A, Kaschner, K, Kesner-Reyes, K, Leprieur, F, McGowan, J, Morgan, LE, Mouillot, D, Palacios-Abrantes, J, Possingham, HP, Rechberger, KD, Worm, B and Lubchenco, J (2021) Protecting the global ocean for biodiversity, food and climate. Nature 592(7854), 397402. https://doi.org/10.1038/s41586-021-03371-zCrossRefGoogle ScholarPubMed
Sandoval-Castillo, J, Robinson, NA, Hart, AM, Strain, LWS and Beheregaray, LB (2018) Seascape genomics reveals adaptive divergence in a connected and commercially important mollusc, the greenlip abalone (Haliotis laevigata), along a longitudinal environmental gradient. Molecular Ecology 27(7), 16031620. https://doi.org/10.1111/mec.14526CrossRefGoogle Scholar
Sigsgaard, EE, Jensen, MR, Winkelmann, IE, Møller, PR, Hansen, MM and Thomsen, PF (2020) Population-level inferences from environmental DNA—Current status and future perspectives. Evolutionary Applications 13(2), 245262. https://doi.org/10.1111/eva.12882CrossRefGoogle ScholarPubMed
Sigsgaard, EE, Nielsen, IB, Bach, SS, Lorenzen, ED, Robinson, DP, Knudsen, SW, Pedersen, MW, Jaidah, MA, Orlando, L, Willerslev, E, Møller, PR and Thomsen, PF (2016) Population characteristics of a large whale shark aggregation inferred from seawater environmental DNA. Nature Ecology & Evolution 1(1), 15. https://doi.org/10.1038/s41559-016-0004CrossRefGoogle ScholarPubMed
Smith, CCR, Tittes, S, Ralph, PL and Kern, AD (2023) Dispersal inference from population genetic variation using a convolutional neural network. Genetics 224(2), iyad068. https://doi.org/10.1093/genetics/iyad068.CrossRefGoogle ScholarPubMed
Stein, RW, Mull, CG, Kuhn, TS, Aschliman, NC, Davidson, LNK, Joy, JB, Smith, GJ, Dulvy, NK and Mooers, AO (2018) Global priorities for conserving the evolutionary history of sharks, rays and chimaeras. Nature Ecology & Evolution 2(2), 288298. https://doi.org/10.1038/s41559-017-0448-4CrossRefGoogle ScholarPubMed
Székely, D, Corfixen, NL, Mørch, LL, Knudsen, SW, McCarthy, ML, Teilmann, J, Heide-Jørgensen, MP and Olsen, MT (2021) Environmental DNA captures the genetic diversity of bowhead whales (Balaena mysticetus) in West Greenland. Environmental DNA 3(1), 248260. https://doi.org/10.1002/edn3.176CrossRefGoogle Scholar
Taberlet, P, Bonin, A, Zinger, L and Coissac, E (2018) Environmental DNA: For Biodiversity Research and Monitoring. Oxford: Oxford University Press.CrossRefGoogle Scholar
Taberlet, P, Coissac, E, Hajibabaei, M and Rieseberg, LH (2012) Environmental DNA. Molecular Ecology 21(8), 17891793. https://doi.org/10.1111/j.1365-294X.2012.05542.xCrossRefGoogle ScholarPubMed
Tucker, CM, Aze, T, Cadotte, MW, Cantalapiedra, JL, Chisholm, C, Díaz, S, Grenyer, R, Huang, D, Mazel, F, Pearse, WD, Pennell, MW, Winter, M and Mooers, AO (2019) Assessing the utility of conserving evolutionary history. Biological Reviews 94(5), 17401760. https://doi.org/10.1111/brv.12526CrossRefGoogle ScholarPubMed
Upham, NS, Esselstyn, JA and Jetz, W (2019) Inferring the mammal tree: Species-level sets of phylogenies for questions in ecology, evolution, and conservation. PLoS Biology 17(12), e3000494. https://doi.org/10.1371/journal.pbio.3000494CrossRefGoogle ScholarPubMed
van Wyngaarden, M, Snelgrove, PVR, DiBacco, C, Hamilton, LC, Rodríguez-Ezpeleta, N, Jeffery, NW, Stanley, RRE and Bradbury, IR (2017) Identifying patterns of dispersal, connectivity and selection in the sea scallop, Placopecten magellanicus, using RADseq-derived SNPs. Evolutionary Applications 10(1), 102117. https://doi.org/10.1111/eva.12432CrossRefGoogle ScholarPubMed
Vilcot, M, Albouy, C, Donati, GFA, Claverie, T, Julius, P, Manel, S, Pellissier, L and Leprieur, F (2023) Spatial genetic differentiation correlates with species assemblage turnover across tropical reef fish lineages. Global Ecology and Biogeography 32(4), 535547. https://doi.org/10.1111/geb.13637CrossRefGoogle Scholar
Webster, MS, Colton, MA, Darling, ES, Armstrong, J, Pinsky, ML, Knowlton, N, Schindler, DE (2017) Who should pick the winners of climate change? Trends in Ecology & Evolution 32(3), 167173. https://doi.org/10.1016/j.tree.2016.12.007CrossRefGoogle ScholarPubMed
Weeks, R (2017) Incorporating seascape connectivity in conservation prioritisation. PLoS One 12(7), e0182396. https://doi.org/10.1371/journal.pone.0182396CrossRefGoogle ScholarPubMed
Weltz, K, Lyle, JM, Ovenden, J, Morgan, JAT, Moreno, DA and Semmens, JM (2017) Application of environmental DNA to detect an endangered marine skate species in the wild. PLoS One 12(6), e0178124. https://doi.org/10.1371/journal.pone.0178124CrossRefGoogle ScholarPubMed
Whitlock, MC and McCauley, DE (1999) Indirect measures of gene flow and migration: FST≠1/(4Nm+1). Heredity 82(2), 117125. https://doi.org/10.1038/sj.hdy.6884960CrossRefGoogle Scholar
Wilson, KA, Cabeza, M and Klein, CJ (2009) Fundamental concepts of spatial conservation prioritization. In Moilanen, A, Wilson, KA and Possingham, HP (eds.), Spatial Conservation Prioritization: Quantitative Methods and Computational Tools. Oxford: Oxford University Press, pp. 1627.Google Scholar
Winter, M, Devictor, V and Schweiger, O (2013) Phylogenetic diversity and nature conservation: Where are we? Trends in Ecology & Evolution 28(4), 199204. https://doi.org/10.1016/j.tree.2012.10.015CrossRefGoogle ScholarPubMed
Xuereb, A, D’Aloia, CC, Andrello, M, Bernatchez, L and Fortin, M (2021a) Incorporating putatively neutral and adaptive genomic data into marine conservation planning. Conservation Biology 35(3), 909920. https://doi.org/10.1111/cobi.13609CrossRefGoogle ScholarPubMed
Xuereb, A, D’Aloia, CC, Daigle, RM, Andrello, M, Dalongeville, A, Manel, S, Mouillot, D, Guichard, F, Côté, IM, Curtis, JMR, Bernatchez, L and Fortin, M-J (2020) Marine conservation and marine protected areas. In Oleksiak, MF and Rajora, OP (eds.), Population Genomics: Marine Organisms. Cham: Springer International Publishing, pp. 423446. https://doi.org/10.1007/13836_2018_63Google Scholar
Xuereb, A, Kimber, CM, Curtis, JMR, Bernatchez, L and Fortin, M-J (2018) Putatively adaptive genetic variation in the giant California Sea cucumber (Parastichopus californicus) as revealed by environmental association analysis of restriction-site associated DNA sequencing data. Molecular Ecology 27(24), 50355048. https://doi.org/10.1111/mec.14942CrossRefGoogle ScholarPubMed
Xuereb, A, Rougemont, Q, Tiffin, P, Xue, H and Phifer-Rixey, M (2021b) Individual-based eco-evolutionary models for understanding adaptation in changing seas. Proceedings of the Royal Society B: Biological Sciences 288(1962), 20212006. https://doi.org/10.1098/rspb.2021.2006CrossRefGoogle ScholarPubMed
Yoshitake, K, Fujiwara, A, Matsuura, A, Sekino, M, Yasuike, M, Nakamura, Y, Nakamichi, R, Kodama, M, Takahama, Y, Takasuka, A, Asakawa, S, Nishikiori, K, Kobayashi, T and Watabe, S (2021) Estimation of tuna population by the improved analytical pipeline of unique molecular identifier-assisted HaCeD-Seq (haplotype count from eDNA). Scientific Reports 11(1), 7031. https://doi.org/10.1038/s41598-021-86190-6CrossRefGoogle ScholarPubMed
Zupan, M, Fragkopoulou, E, Claudet, J, Erzini, K, Horta e Costa, B and Gonçalves, EJ (2018) Marine partially protected areas: Drivers of ecological effectiveness. Frontiers in Ecology and the Environment 16(7), 381387. https://doi.org/10.1002/fee.1934CrossRefGoogle Scholar
Figure 0

Table 1. Glossary of terms used in the text

Figure 1

Table 2. Methods to integrate connectivity into spatial conservation planning (SCP)

Figure 2

Table 3. Potential use of information gained from eDNA in spatial conservation planning (SCP), and future developments

Figure 3

Table 4. List of published spatial conservation planning (SCP) studies for marine and coastal habitats integrating genetic data

Supplementary material: File

Andrello et al. supplementary material

Andrello et al. supplementary material

Download Andrello et al. supplementary material(File)
File 17.6 KB

Author comment: Benefits of genetic data for spatial conservation planning in coastal habitats — R0/PR1

Comments

Dear Editor,

Thanks for your invitation to write a review on the “Benefits of genetic data for spatial conservation planning in coastal habitats” for Coastal futures. Please find the manuscript attached.

In this manuscript, we illustrate how genetic data can be fruitfully used to inform spatial planning of conservation actions for coastal systems. We focused our attention on four applications: phylogenetic inference, estimation of intraspecific genetic diversity, estimation of connectivity and dispersal, and sequencing of environmental DNA. The content of our manuscript offers an original, up-to-date and detailed vision relative to three recent reviews on similar subject: namely those written by our group (Andrello et al 2022; DOI: 10.1016/j.tree.2022.03.003), by Nielsen et al 2022 (DOI: 10.1016/j.tree.2022.09.006) and by Jeffery et al 2022 (DOI: 10.3389/fgene.2022.886494). Relative to the first two papers, we explore in deeper details the challenges posed by marine systems to spatial conservation planning and use of genetic data to obtain relevant information. Relative to the third paper, we explore in more detail the use of genetic data to infer connectivity, dispersal and phylogenies. Finally, our manuscript provides a systematic review on the use of eDNA in spatial conservation planning and an updated review on the use of eDNA to study intraspecific genetic diversity.

To review this topic, I put together an international team of scientists with complementary expertise on the subject. Namely, Prof. Stéphanie Manel has a long standing expertise on seascape genetics, Ms Maurine Vilcot applies of environmental DNA for studying marine biodiversity, Dr. Amanda Xuereb has expertise on the use of genetic data to identify genetic adaptation in marine organisms and prof. Cassidy D’Aloia is an expert on the use of genetic data to infer dispersal of marine organisms.

We hope that the editorial team will like our manuscript, and look forward to your decision.

Yours faithfully,

Marco Andrello, on behalf of all authors

Review: Benefits of genetic data for spatial conservation planning in coastal habitats — R0/PR2

Conflict of interest statement

Reviewer declares none.

Comments

Comments to Author: Thank you very much for the opportunity to review manuscript CFT-22-0042, “Benefits of genetic data for spatial conservation planning in coastal habitats”. This is a very timely topic and I very much appreciate the effort you have put into this review. I think your scope and materials covered are outstanding and the manuscript is really well developed.

I personally don’t work on coastal or marine habitats so might not be aware of other references that would be good to include, but from an SCP and a broader conservation perspective, I do believe that this review covers the topic very well.

The manuscript is well written and I don’t have any comments on either the writing or the structure that I think would improve the manuscript.

I am happy to recommend that this manuscript be accepted without revisions.

Best regards,

Richard Schuster, PhD

Director of Spatial Planning and Innovation, Nature Conservancy of Canada

Email: richard.schuster@natureconservancy.ca

Review: Benefits of genetic data for spatial conservation planning in coastal habitats — R0/PR3

Conflict of interest statement

Reviewer declares none.

Comments

Comments to Author: I have now red the manuscript entitled “Benefits of genetic data for spatial conservation planning in coastal habitats” and I have to say it was a very pleasant read. It is very well written and explains with an interesting level of detail the advantages, or benefits, that the application of genetic tools bring to marine spatial conservation strategy. I have two main comments to this version of the manuscript, which I hope to aid the authors in improving their excellent work.

1 - My first concern relates to the chapter dedicated to highlight the importance of inferring phylogenetic relationships. There seems to be a unbalance in respect to the other sections, which in a way renders this section substantially weaker in comparison. The issue is apparently linked to inconclusive evidence supporting phylogeny to be a proxy for functional diversity, and thus I feel it would be better to expand on what is exactly missing for that connection become more robust evidence-wise. Although I understand it seems outside the scope of the manuscript, it would be important for the readers to fully understand why this topic is even mentioned in a review dedicated to the benefits of already established links, i.e., it is safe to conclusively argue that genetics can inform about populations´ health, adaptive potential and spatial connectivity, and therefore it is only natural these topics to be present here. Overall, the section about phylogenetic relationships gives the feeling of “it had to be added to the manuscript” somehow, which I believe it is not the intention of the authors.

2 - I feel a broader and more applied-oriented wrapping up is missing. I was expecting, after reading lines 58-70, for the authors to summarize their conclusions namely by re-capturing the terms “comprehensiveness”, “adequacy” and “efficiency” – and enumerating how genetics effectively improves each of those concepts in spatial conservation planning. Note that those terms only appear in that specific paragraph and nowhere else, so, as it is, it is difficult to understand why even bring them up.

Recommendation: Benefits of genetic data for spatial conservation planning in coastal habitats — R0/PR4

Comments

Comments to Author: I agree with all the reviewers that this is a well written and comprehensive review. I would like the Authors to consider the 2 comments presented by one of the reviewers concerning one section of the text and the final conclusions.

Decision: Benefits of genetic data for spatial conservation planning in coastal habitats — R0/PR5

Comments

No accompanying comment.

Author comment: Benefits of genetic data for spatial conservation planning in coastal habitats — R1/PR6

Comments

No accompanying comment.

Review: Benefits of genetic data for spatial conservation planning in coastal habitats — R1/PR7

Conflict of interest statement

Reviewer declares none.

Comments

Comments to Author: I thank the authors for taken the comments into consideration and worked towards a revised version of manuscript. I have nothing else to add but congratulate for this excellent document.

Recommendation: Benefits of genetic data for spatial conservation planning in coastal habitats — R1/PR8

Comments

Comments to Author: I agree that the authors have fully addressed the comments made by the reviewers and have edited the text accordingly.

Decision: Benefits of genetic data for spatial conservation planning in coastal habitats — R1/PR9

Comments

No accompanying comment.