Hostname: page-component-848d4c4894-wg55d Total loading time: 0 Render date: 2024-05-13T10:00:53.081Z Has data issue: false hasContentIssue false

Translational challenges for the developmental origins of health and disease: time to fulfill the promises for innovative prevention strategies

Published online by Cambridge University Press:  03 June 2019

Vincent W.V. Jaddoe*
Affiliation:
Department of Pediatrics, Erasmus University Medical Center, Rotterdam, The Netherlands The Generation R Study Group, Erasmus University Medical Center, Rotterdam, The Netherlands
Rights & Permissions [Opens in a new window]

Abstract

Type
Editorial
Copyright
© Cambridge University Press and the International Society for Developmental Origins of Health and Disease 2019 

Introduction

An overwhelming body of evidence has shown that various adverse exposures during the fetal and postnatal period may have persistent influences on growth, development and health and the subsequent risk of chronic diseases throughout the life course.Reference Gluckman, Hanson, Cooper and Thornburg 1 The important landmark studies by David Barker et al. were primarily based on observations linking low birth weight or preterm birth with non-communicable diseases, such as cardio-metabolic diseases, type 2 diabetes and chronic obstructive respiratory diseases in adulthood.Reference Gluckman, Hanson, Cooper and Thornburg 1 , Reference Barker 2 Birth weight and preterm birth are unlikely to be the causal factors per se leading to non-communicable diseases in later life. Birth weight and gestational age at birth are merely proxies of different fetal exposures and growth patterns and the starting point of childhood growth.Reference Jaddoe 3 Results from observational prospective cohort studies have identified various lifestyle and nutrition-related adverse exposures during the fetal and postnatal period, which are independent of size at birth, associated with development of risk factors for non-communicable diseases. These findings are supported by experimental animal studies.Reference Gluckman, Hanson, Cooper and Thornburg 1 Currently, the concept has widely been accepted that the first 1000 days of life, including oocyte and sperm cell development in the preconception period, embryonic and fetal growth in pregnancy and the postnatal development up to infancy, are critical for health outcomes throughout the life course.

The theme of the 10th World Congress on Developmental Origins of Health and Disease (DOHaD) in Rotterdam, the Netherlands (DOHaD 2017), was “Life course Health and Disease: Observations, experiments and interventions”. The meeting was a great success with over 1000 participants from different countries and a wide variety of plenary, parallel, poster and workshop sessions. As organizers, we aimed to organize a meeting that would bring the exciting field of DOHaD an important step forward and link observational and experimental studies closer to new strategies for interventions in early life.

This supplemental issue of Journal of Developmental Origins of Health and Disease provides excellent examples of sessions, discussions and presentations at DOHaD 2017.Reference Hanson, Poston and Gluckman 4 Reference Tong and Giussani 11 In this Editorial, I will discuss some issues of major interest for translation of DOHaD. After almost three decades of DOHaD research, it is time to fulfill the expectations for prevention of non-communicable diseases by improving growth and development during the first 1000 days. Clearly, there is an important role for translating research findings into policy. Hanson et al. and Penkler et al. addressed some major conceptual and contextual challenges to translate research findings into policy.Reference Hanson, Poston and Gluckman 4 , Reference Penkler, Hanson, Biesma and Müller 5 Based on some exciting sessions at DOHaD 2017 and the contents of this supplementary volume, I will focus on optimal use of life course observational studies, combining environmental exposures with various “omics” approaches, and the potential for intervention studies.

Optimal use of life course observational studies

Life course observational studies are still the cornerstone for research on the DOHaD. The retrospective cohort studies during the early 1990s led to exciting results on size at birth and later life diseases, but had some major methodological limitations.Reference Barker 2 In the 1990s and 2000s, many new prospective cohort studies from pregnancy or early childhood were initiated.Reference Larsen, Kamper-Jørgensen and Adamson 12 These studies have been very successful in identification of various sociodemographic, environmental lifestyle and nutrition-related factors in pregnancy or early childhood in relation to development of risk factors for diseases in later life.Reference Larsen, Kamper-Jørgensen and Adamson 12 As example, Vehmeijer et al. and van Elten et al. gave an overview of evidence on maternal stress and physical activity in pregnancy on offspring outcomes.Reference Vehmeijer, Guxens, Duijts and El Marroun 6 , Reference van Elten, Karsten and van Poppel 7 Tong and Giussani discuss a gestational hypoxia model for assessing the long-term maternal and offspring outcomes.Reference Tong and Giussani 11

Life course observational studies assess the associations of exposures across the life course on later-life disease risk.Reference Kuh, Ben-Shlomo, Lynch, Hallqvist and Power 13 Large-scale birth cohort studies provide a unique opportunity to model early life exposures in relation to later life outcomes. However, due to their nature, life course observational studies are not able to provide conclusions regarding causal relationships between exposure and outcomes.Reference Santos, Zugna, Pizzi and Richiardi 8 Bias due to confounding is a crucial limitation of observational studies. Next to general confounding, some types of confounding, such as confounding by indication, confounding by baseline selection, time-varying confounding and mediator–outcome confounding, are relevant for life course observational studies.Reference Santos, Zugna, Pizzi and Richiardi 8 The paper by Santos et al. describes various approaches to address these types of confounding.Reference Santos, Zugna, Pizzi and Richiardi 8

Recent studies used different types of approaches in observational cohort studies to address confounding. These approaches include sibling comparison studies, maternal and paternal offspring comparisons analyses, Mendelian randomization studies and randomized controlled trial analyses.Reference Gaillard, Felix, Duijts and Jaddoe 14 Sibling comparison studies enable better control for potential confounding factors shared within families,Reference Frisell, Oberg, Kuja-Halkola and Sjolander 15 but are limited because next to the major exposure of interest, other related characteristics (confounders) may also change over time. Maternal and paternal offspring comparison analyses explore the differences in strength of associations of maternal and paternal exposures with offspring outcomes.Reference Brion 16 Stronger associations for maternal exposures suggest an important role for direct intrauterine mechanisms, whereas similar or stronger associations for paternal exposures suggest a role for shared family-based, lifestyle-related characteristics or genetic factors.Reference Brion 16 Mendelian randomization approaches use genetic variants, known to be robustly associated with the exposure of interest and not affected by confounding, as an instrumental variable for a specific exposure.Reference Smith and Ebrahim 17 Associations of these genetic variants with the outcomes of interest support causality for these associations. Randomized controlled trials are considered as the gold standard for causality studies. Because randomized studies are difficult to perform when maternal lifestyle factors, such as dietary patterns, smoking and obesity, are the major exposures of interest, previous studies focused on influencing for example obesity, such as dietary factors and physical activity levels.Reference Thangaratinam, Rogozinska and Jolly 18 , Reference Santos, Eekhout and Voerman 19

Finally, the enormous wealth of high-quality prospective cohort studies enable collaboration on original data level.Reference Larsen, Kamper-Jørgensen and Adamson 12 The individual participant data meta-analyses have the advantages to examine smaller effect estimates, specific subgroups and mediator effects and maybe most importantly capitalize the available published and unpublished data. Individual participant data meta-analyses on environmental exposures and genetic associations have already been published as part of birth cohort collaborations, such as LifeCycle (www.lifecycle-project.eu) and EGG (http://egg-consortium.org/).Reference Santos, Eekhout and Voerman 19 Reference Horikoshi, Beaumont and Day 28

Altogether, life course observational studies remain extremely important for research on DOHaD. The major issue of confounding can be addressed by analytical and design strategies. Collaboration between different cohorts leads to unique opportunities for better use of existing cohort data.

Combining environmental exposures with various omics approaches

Recent studies suggest that the associations of size at birth with diseases in later life is at least partly genetically determined. A multi-ancestry genome-wide association study (GWAS), meta-analysis of birth weight in more than 150,000 individuals identified 60 loci.Reference Horikoshi, Beaumont and Day 28 Approximately 15% of the variance in birth weight was captured by fetal genetic variation. Importantly, this study reported strong inverse genetic correlations between birth weight and cardiovascular and metabolic phenotypes, suggesting that the associations of early life growth with adult cardio-metabolic disease are in part the result of shared genetic effects.

Thus far, the number of studies using both variants for genetic predisposition and environmental factors for the additional risk are scarce. Future studies should combine genetic data from cohort studies with the detailed information about adverse exposures for identification of groups at risk and potential for more personalized prevention strategies.

Recent developments have enabled epigenome-wide studies in large cohorts, next to genome-wide studies.Reference Felix, Joubert and Baccarelli 29 , Reference Joubert, Felix and Yousefi 30 Epigenetic modifications may be involved in mechanisms underlying associations of early life exposures with later life health outcomes. Life course studies starting in early life are excellent for studying the role of such modifications.Reference Felix and Cecil 9 Thus far, DNA methylation is the most studied epigenetic mechanism in population research. Key challenges for genome-wide methylation studies include tissue specificity, cell type adjustment, issues of power and comparability of findings, genetic influences and exploring causality and functional consequences. In this issue, Felix and Cecil discussed these challenges in detail.Reference Felix and Cecil 9

Similar to epigenome studies, recent developments enable hypothesis-free approaches for metabolomics, proteomics and microbiome studies. These studies may lead to exciting new insights in yet unknown developmental adaptations in the earliest phases of life. Good collaboration between cohorts is a paramount for successful studies on these new areas.

Potential for intervention studies

Despite the limitations from observational studies, results from these studies strongly suggest that adverse maternal lifestyle factors during fetal life and infancy lead to increased risks of adverse health outcomes for mother and child throughout the life course.Reference Gluckman, Hanson, Cooper and Thornburg 1 These findings would suggest an enormous potential for translating findings into new preventive strategies. However, thus far, results from randomized controlled intervention trials targeting these lifestyle factors are inconsistent, and overall do not show a strong effect of lifestyle interventions on birth outcomes or maternal and offspring health outcomes. Currently, the lack of successful evidence-based interventions seems to be due to the periods for lifestyle interventions, the type of lifestyle interventions, the targeted populations, the collection of outcome data and the low power of the randomized controlled intervention trials. Gaillard et al. discussed these challenges in more detail.Reference Gaillard, Wright and Jaddoe 10 Most importantly, it may be that previous intervention studies missed the most critical period.

Findings from observational and animal studies strongly suggest that the preconception period and early pregnancy appear to be major critical periods related to pregnancy complications and long-term adverse maternal and offspring health outcomes.Reference Jaddoe, de Jonge, Hofman, Franco, Steegers and Gaillard 31 This period involves the embryonic phase and is essential for development of the placenta and fetal organs. Future randomized controlled intervention trials need to start lifestyle interventions from preconception onwards and assess the influence of these interventions on the course of maternal and offspring outcomes. These trials should also take father into account. Remarkably, the role of father in developmental programming is largely ignored in recent intervention studies.

Conclusions

The overwhelming amount of evidence that early life is important for health and disease in life course gives researchers on DOHaD the important responsibility to translate their findings into innovative population health strategies by several approaches: First, high-quality life course observations are crucial for exploring associations. There seems to be a yet unused potential for causal inference and multicenter collaboration in these studies. Second, the advances in genomic, epigenomic and other “omic” approaches are not only exciting from a biological perspective but should also be integrated with research on environmental exposures to identify groups at risk and develop prediction models. Finally, current evidence suggests that the preconception period or early pregnancy is the window of opportunity for new intervention strategies to improve health of parents and their offspring.

Acknowledgments

The author received grants from the Netherlands Organization for Health Research and Development (VIDI 016.136.361) and the European Research Council (Consolidator Grant, ERC-2014-CoG-648916). Research leading to these results has received funding from the European Union’s Horizon 2020 research and innovation programme under grant agreement 733206 (LifeCycle Project).

References

Gluckman, PD, Hanson, MA, Cooper, C, Thornburg, KL. Effect of in utero and early-life conditions on adult health and disease. N Engl J Med. 2008; 359, 6173.CrossRefGoogle ScholarPubMed
Barker, DJ. Fetal origins of coronary heart disease. BMJ. 1995; 311, 171174.CrossRefGoogle ScholarPubMed
Jaddoe, VW. Fetal nutritional origins of adult diseases: challenges for epidemiological research. Eur J Epidemiol. 2008; 23, 767771.CrossRefGoogle ScholarPubMed
Hanson, M, Poston, L, Gluckman, P. DOHaD – the challenge of translating the science to policy. JDOHaD. 2019; 10, 3, 263–267 (this issue).Google Scholar
Penkler, M, Hanson, M, Biesma, R, Müller, R. DOHaD in science and society: emergent opportunities and novel responsibilities. JDOHaD. 2018; 10, 3, 268–273 (this issue). doi: 10.1017/S2040174418000892 Google Scholar
Vehmeijer, FOL, Guxens, M, Duijts, L, El Marroun, H. Maternal psychological distress during pregnancy and childhood health outcomes: a narrative review. JDOHaD. 2018; 10, 3, 274–285 (this issue). doi: 10.1017/S2040174418000557 Google Scholar
van Elten, TM, Karsten, MDA, van Poppel, MNM, et al. Diet and physical activity in pregnancy and offspring’s cardiovascular health: a systematic review. JDOHaD. 2018; 10, 3, 286–298 (this issue). doi: 10.1017/S204017441800082X Google Scholar
Santos, S, Zugna, D, Pizzi, C, Richiardi, L. Sources of confounding in life course epidemiology. JDOHaD. 2018; 10, 3, 299–305 (this issue). doi: 10.1017/S2040174418000582 Google Scholar
Felix, JF, Cecil, CAM. Population DNA methylation studies in the Developmental Origins of Health and Disease (DOHaD) framework. JDOHaD. 2018; 10, 3, 306–313 (this issue). doi: 10.1017/S2040174418000442 Google Scholar
Gaillard, R, Wright, J, Jaddoe, VWV. Lifestyle intervention strategies in early life to improve pregnancy outcomes and long-term health of offspring: a narrative review. JDOHaD. 2018; 10, 3, 314–321 (this issue). doi: 10.1017/S2040174418000855 Google Scholar
Tong, W, Giussani, DA. Preeclampsia link to gestational hypoxia. JDOHaD. 2019; 10, 3, 322–333 (this issue). doi: 10.1017/S204017441900014X Google Scholar
Larsen, PS, Kamper-Jørgensen, M, Adamson, A, et al. Pregnancy and birth cohort resources in europe: a large opportunity for aetiological child health research. Paediatr Perinat Epidemiol. 2013; 27, 393414. doi: 10.1111/ppe.12060 CrossRefGoogle ScholarPubMed
Kuh, D, Ben-Shlomo, Y, Lynch, J, Hallqvist, J, Power, C. Life course epidemiology. J Epidemiol Community Health. 2003; 57, 778783.CrossRefGoogle ScholarPubMed
Gaillard, R, Felix, JF, Duijts, L, Jaddoe, VW. Childhood consequences of maternal obesity and excessive weight gain during pregnancy. Acta Obstet Gynecol Scand. 2014; 93, 10851089. doi: 10.1111/aogs.12506 CrossRefGoogle ScholarPubMed
Frisell, T, Oberg, S, Kuja-Halkola, R, Sjolander, A. Sibling comparison designs: bias from non-shared confounders and measurement error. Epidemiology. 2012; 23, 713720. doi: 10.1097/EDE.0b013e31825fa230 CrossRefGoogle ScholarPubMed
Brion, MJ. Commentary: can maternal-paternal comparisons contribute to our understanding of maternal pre-pregnancy obesity and its association with offspring cognitive outcomes? Int J Epidemiol. 2013; 42, 518519. doi: 10.1093/ije/dyt041 CrossRefGoogle ScholarPubMed
Smith, GD, Ebrahim, S. Mendelian randomization: prospects, potentials, and limitations. Int J Epidemiol. 2004; 33, 3042. doi: 10.1093/ije/dyh132 CrossRefGoogle ScholarPubMed
Thangaratinam, S, Rogozinska, E, Jolly, K, et al. Effects of interventions in pregnancy on maternal weight and obstetric outcomes: meta-analysis of randomised evidence. BMJ. 2012; 344, e2088. doi: 10.1136/bmj.e2088 CrossRefGoogle ScholarPubMed
Santos, S, Eekhout, I, Voerman, E, et al. Gestational weight gain charts for different body mass index groups for women in Europe, North America, and Oceania. BMC Med. 2018; 16, 201. doi: 10.1186/s12916-018-1189-1 CrossRefGoogle ScholarPubMed
Patro Golab, B, Santos, S, Voerman, E, et al. Influence of maternal obesity on the association between common pregnancy complications and risk of childhood obesity: an individual participant data meta-analysis. Lancet Child Adolesc Health. 2018; 2, 812821. doi: 10.1016/S2352-4642(18)30273-6 CrossRefGoogle ScholarPubMed
Santos, S, Voerman, E, Amiano, P, et al. Impact of maternal body mass index and gestational weight gain on pregnancy complications: an individual participant data meta-analysis of European, North American, and Australian cohorts. BJOG. 2019. doi: 10.1111/1471-0528.15661 CrossRefGoogle ScholarPubMed
Voerman, E, Santos, S, Patro Golab, B, et al. Maternal body mass index, gestational weight gain, and the risk of overweight and obesity across childhood: an individual participant data meta-analysis. PLoS Med. 2019; 16, e1002744. doi: 10.1371/journal.pmed.1002744 CrossRefGoogle ScholarPubMed
Strandberg-Larsen, K, Poulsen, G, Bech, BH, et al. Association of light-to-moderate alcohol drinking in pregnancy with preterm birth and birth weight: elucidating bias by pooling data from nine European cohorts. Eur J Epidemiol. 2017; 32, 751764. doi: 10.1007/s10654-017-0323-2 CrossRefGoogle ScholarPubMed
Stratakis, N, Roumeliotaki, T, Oken, E, et al. Fish intake in pregnancy and child growth: a pooled analysis of 15 European and US birth cohorts. JAMA Pediatr. 2016; 170, 381390. doi: 10.1001/jamapediatrics.2015.4430 CrossRefGoogle ScholarPubMed
Sonnenschein-van der Voort, AM, Arends, LR, de Jongste, JC, et al. Preterm birth, infant weight gain, and childhood asthma risk: a meta-analysis of 147, 000 European children. J Allergy Clin Immunol. 2014; 133, 13171329. doi: 10.1016/j.jaci.2013.12.1082 CrossRefGoogle ScholarPubMed
Leventakou, V, Roumeliotaki, T, Martinez, D, et al. Fish intake during pregnancy, fetal growth, and gestational length in 19 European birth cohort studies. Am J Clin Nutr. 2014; 99, 506516. doi: 10.3945/ajcn.113.067421 CrossRefGoogle Scholar
LifeCycle Project-Maternal Obesity and Childhood Outcomes Study Group, Voerman, E, Santos, S, et al. Association of gestational weight gain with adverse maternal and infant outcomes. JAMA. 2019; 321(17), 17021715. doi: 10.1001/jama.2019.3820 Google ScholarPubMed
Horikoshi, M, Beaumont, RN, Day, FR, et al. Genome-wide associations for birth weight and correlations with adult disease. Nature. 2016; 538, 248252. doi: 10.1038/nature19806 CrossRefGoogle ScholarPubMed
Felix, JF, Joubert, BR, Baccarelli, AA, et al. Cohort profile: pregnancy and childhood epigenetics (PACE) consortium. Int J Epidemiol. 2018; 47, 2223u. doi: 10.1093/ije/dyx190 CrossRefGoogle ScholarPubMed
Joubert, BR, Felix, JF, Yousefi, P, et al. DNA methylation in newborns and maternal smoking in pregnancy: genome-wide consortium meta-analysis. Am J Hum Genet. 2016; 98, 680696. doi: 10.1016/j.ajhg.2016.02.019 CrossRefGoogle ScholarPubMed
Jaddoe, VW, de Jonge, LL, Hofman, A, Franco, OH, Steegers, EA, Gaillard, R. First trimester fetal growth restriction and cardiovascular risk factors in school age children: population based cohort study. BMJ. 2014; 348, g14. doi: 10.1136/bmj.g14 CrossRefGoogle ScholarPubMed