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Does narrow row spacing suppress weeds and increase yields in corn and soybean? A meta-analysis

Published online by Cambridge University Press:  20 September 2023

Mandeep Singh
Affiliation:
Graduate Research Assistant, Department of Agronomy and Horticulture, University of Nebraska–Lincoln, Lincoln, NE, USA
Resham Thapa
Affiliation:
Assistant Research Professor, Department of Agricultural and Environmental Sciences, Tennessee State University, Nashville, TN, USA
Navdeep Singh
Affiliation:
PhD Candidate, Department of Vegetable Crops, Punjab Agricultural University, Ludhiana, Punjab, India
Steven B. Mirsky
Affiliation:
Research Ecologist, Sustainable Agricultural Systems Laboratory, USDA-ARS Beltsville Agricultural Research Center, Beltsville, MD, USA
Bharat S. Acharya
Affiliation:
Research Director, Southeast Organic Center, Rodale Institute, Chattahoochee Hills, GA, USA
Amit J. Jhala*
Affiliation:
Professor and Associate Department Head, Department of Agronomy and Horticulture, University of Nebraska–Lincoln, Lincoln, NE, USA
*
Corresponding author: Amit J. Jhala; Email: Amit.Jhala@unl.edu
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Abstract

Narrow row spacing (<76 cm) could improve crop competitiveness, suppress weeds and might provide yield advantage. Many studies have been conducted to evaluate the impact of narrow row spacing; however, no quantitative synthesis of these studies exists. The objectives of this meta-analysis were to (1) quantify the overall effect of narrow row spacing (<76 cm) on weed density, biomass, control, weed seed production, and yield in corn (Zea mays L.) and soybean [Glycine max (L.) Merr.] compared with 76-cm row spacing, and (2) assess the influence of agronomic management decisions (tillage type, weed management, herbicide application frequency and time) on effect of narrow row spacing on weed suppression and corn and soybean yield. We compiled 1,904 pair-wise observations from 35 studies conducted in 12 states in the United States during 1961 to 2018. Averaged across individual observations, narrow row spacing suppressed weed density by 34%, weed biomass by 55%, and weed seed production by 45%, while it improved weed control by 32% and crop yield by 11% compared with 76-cm row spacing. Narrow row spacing in soybean suppressed weed density by 42%, weed biomass by 71%, and increased crop yield by 12% compared with 76-cm row spacing. Although narrow row spacing had a nonsignificant effect on response variables in corn, the number of studies (n = 1 to 6) and observations (n = 1 to 59) addressing each response variable were limited. Tillage type (conventional and reduced) did not influence the response of weed density, control, and seed production in narrow row spacing; however, weed biomass and weed seed production were more greatly reduced with the sequential application of herbicides compared with a single application. Thus, narrow row spacing in soybean can be integrated with other options for management of herbicide-resistant weeds.

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 on behalf of the Weed Science Society of America

Introduction

Row spacing is an important crop management tool to suppress weeds, optimize yields, and increase on-farm income. Corn (Zea mays L.) and soybean [Glycine max (L.) Merr.] are the most important row crops grown in the United States. Before the 1940s, row spacing in corn and soybean was wider (≥102 cm), as horses or other animals were frequently used for cultivation, limiting the feasibility of narrow row spacing (Olson and Sander Reference Olson, Sander, Sprague and Dudley1988; Strand Reference Strand1948). Narrow row spacing became popular with the advent of tractors replacing horses; the increasing availability of and advancements in machinery, irrigation technology, and hybrids that are lodging resistant and tolerant of dense stands; and the discovery of herbicides for selective weed management (Barr et al. Reference Barr, Mason, Novacek, Wortmann and Rees2013; Lehmann and Bateman Reference Lehmann and Bateman1944). Growers have adopted narrow row spacing (<102 cm) for better yield and resource-use efficiency. For example, 25 yr of field experiments in Illinois, Indiana, Iowa, Minnesota, and Ohio concluded that 53- to 71-cm row spacing in soybean increases yield by 15% compared with the 102- to 107-cm row spacing that was most common in the Corn Belt during the 1960s (ASA 1966). Likewise, in Minnesota, row spacing in corn decreased from 107 cm in the 1930s to 90 cm in 1979, contributing to a 4% increase in yields (Cardwell Reference Cardwell1982).

In the past several decades, researchers and growers have begun showing interest in row spacing less than 76 cm, particularly for soybean, because the yield advantages are more consistent for soybean than corn (Lauer Reference Lauer1996; Licht Reference Licht2018). In Iowa, the average row spacing in soybean decreased from 84 cm in 1980 to 56 cm in 2000 and 60 cm in 2020, whereas the average row spacing in corn decreased from 90 cm in 1980 to 81 cm in 2000 and 76 cm in 2020 (USDA 1981; USDA-NASS 2001, 2021). In narrow row spacing, plants have more equidistant distribution, which reduces intra-plant competition for light, water, and nutrients, leading to higher yields than in wider row spacing. Although yield advantages are the primary driving force for growers, narrow row spacing provides additional advantages, such as reducing soil erosion (Mannering and Johnson Reference Mannering and Johnson1969) and evaporative water loss (Sharratt and McWilliams Reference Sharratt and McWilliams2005) and suppressing weeds (Bradley Reference Bradley2006). The crop canopy closes earlier in narrow row spacing. For instance, Esbenshade et al. (Reference Esbenshade, Curran, Roth, Hartwig and Orzolek2001b) reported that soybean in Pennsylvania with 38-cm row spacing closed its canopy 19 d before soybean with 76-cm row spacing. Similarly, in Nebraska, soybean with 25-cm row spacing reached full canopy closure 22 d before 76-cm row spacing (Burnside and Colville Reference Burnside and Colville1964). Likewise, soybean with 19-cm row spacing closed its canopy 20 d earlier than soybean with 76-cm row spacing in Nebraska (Hock et al. Reference Hock, Knezevic, Martin and Lindquist2006) and Missouri (Carey and Defelice Reference Carey and Defelice1991), 30 d earlier in Illinois (Wax and Pendleton Reference Wax and Pendleton1968), and 35 to 45 d earlier in Michigan (Mickelson and Renner Reference Mickelson and Renner1997; Nelson and Renner Reference Nelson and Renner1998). Early crop-canopy closure increases light interception (Steckel and Sprague Reference Steckel and Sprague2004; Taylor et al. Reference Taylor, Mason, Bennie and Rowse1982; Tharp and Kells Reference Tharp and Kells2001), crop growth, and competitiveness (Hock et al. Reference Hock, Knezevic, Martin and Lindquist2006; Murphy et al. Reference Murphy, Yakubu, Weise and Swanton1996; Rich and Renner Reference Rich and Renner2007) and thus suppresses weeds due to shading effects (Buehring et al. Reference Buehring, Nice and Shaw2002; Nice et al. Reference Nice, Buehring and Shaw2001). In contrast, in wider row spacing, more light reaches the soil surface, permitting weeds to emerge or regrow later in the season (Datta et al. Reference Datta, Ullah, Tursun, Pornprom, Knezevic and Chauhan2017; Yelverton and Coble Reference Yelverton and Coble1991). Therefore, soybean and corn planted in ≥76-cm row spacing often require weed control for longer periods to avoid yield loss compared with soybean and corn planted in narrow row spacing (Knezevic et al. Reference Knezevic, Evans and Mainz2003; Mulugeta and Boerboom Reference Mulugeta and Boerboom2000; Nedeljković et al. Reference Nedeljković, Knežević, Božić and Vrbničanin2021; Rosset and Gulden Reference Rosset and Gulden2020).

Weed suppression with narrow row spacing in corn and soybean has been studied and well documented (Bradley Reference Bradley2006; Datta et al. Reference Datta, Ullah, Tursun, Pornprom, Knezevic and Chauhan2017; Mhlanga et al. Reference Mhlanga, Chauhan and Thierfelder2016). As with the yield benefit, the weed suppression provided by narrow row spacing has been found more frequently in soybean than in corn. Bradley (Reference Bradley2006) reported improved late-season weed control (density and/or biomass) in 64% of case studies (72 out of 113 site-years) in soybean and 24% of case studies (12 out of 50 site-years) in corn. Although Bradley (Reference Bradley2006) summarized the results of independent studies, there is no systematic and quantitative synthesis of the literature existing on this topic in corn and soybean. Therefore, the objectives of this meta-analysis were to (1) quantify the overall effect of narrow row spacing (<76 cm) on weed density, biomass, control, weed seed production, and yield in corn and soybean compared with 76-cm row spacing, and (2) assess the influence of agronomic management decisions (tillage type, weed management, and herbicide application frequency and time) and narrow row spacing on weed suppression and crop yield.

Materials and Methods

Literature Search, Selection Criteria, and Data Extraction

An extensive literature search was performed during January to June 2022 using predetermined key words in the Google Scholar and Scopus databases as well as two weed science journals: Weed Science and Weed Technology. The key words “row spacing” AND “corn” OR “maize” OR “soybean” were searched in Google Scholar, “row spacing” AND “weed control” OR “corn” OR “maize” OR “soybean” were searched in Scopus, and “row spacing” OR “row width” were searched in the Weed Science and Weed Technology journals. The search queries were targeted at article titles and resulted in 2,013 total hits, from which 35 relevant articles were identified following a multistep protocol (Figure 1). The relevant articles were selected based on predetermined inclusion criteria: (1) field study from the United States, (2) corn and/or soybean row-spacing treatments of 76 cm and under (even row-spacing treatments >76 cm were included for the meta-regression analysis), and (3) reported treatment and control means for at least one response variable (i.e., weed density, weed biomass, weed control, weed seed production, and corn/soybean yield). From the selected 35 relevant articles, the following information was extracted:

  • weed-related information (common name, scientific name, and weed type);

  • crop or crop management–related information (cash crop, plant population, tillage type, weed management, and frequency and time of herbicide applications);

  • soil-related information (soil series, soil texture, soil pH, and organic matter);

  • experiment-related information (study location, experimental year, number of replications, row-spacing treatments, and days after planting for recorded observations); and

  • weed or crop response–related information (observation means for treatment and control groups for each response variable: weed density, weed biomass, weed control, weed seed production, and crop yield), with a row spacing of 76 cm considered to be the control group and all other row spacing to be the treatment group.

Figure 1. PRISMA (Preferred Reporting Items for Systematic Reviews and Meta-Analyses; Page et al. Reference Page, McKenzie, Bossuyt, Boutron, Hoffmann, Mulrow, Shamseer, Tetzlaff, Akl and Brennan2021) flow diagram showing the stepwise procedure used for selecting 35 studies for meta-analysis.

Finally, we extracted a total of 1,904 observations across all response variables from the 35 published papers.

Meta-analysis: Overall Effect of Narrow Row Spacing on Weed Suppression and Crop Yield

The overall effect of narrow row spacing (< 76 cm) on weed suppression and crop yield was calculated using the natural logarithm of response ratios (Hedges et al. Reference Hedges, Gurevitch and Curtis1999) (Equation 1):

([1]) $$\overline {{\rm{ln}}\left( {RR} \right)} = \ln ({\bar X_{{\rm{RS}}}}/{\bar X_{\rm{C}}}) = {\rm{ln}}\left( {{{\bar X}_{{\rm{RS}}}}} \right) - {\rm{\;ln}}\left( {{{\bar X}_{\rm{C}}}} \right)$$

where $$\overline {{\rm{ln}}\left( {RR} \right)} $$ is the natural logarithm of response ratios and refers to the individual effect sizes, $${{{\bar X}_{{\rm{RS}}}}}$$ and $${{{\bar X}_{{\rm{C}}}}}$$ are mean values for specific response variables (i.e., weed density, weed biomass, weed control, weed seed production, and crop yield) for the treatment (i.e., narrow row spacing < 76 cm) and control (i.e., 76 cm) groups, respectively. Observations with zero values for response variables were replaced with the minimum possible values (e.g., 0.1% for 0% weed control, 0.1 g for 0 g weed biomass). This is because response ratios cannot be calculated if the treatment value is zero (Singh et al. Reference Singh, Thapa, Kukal, Irmak, Mirsky and Jhala2022; Thapa et al. Reference Thapa, Mirsky and Tully2018a).

Most of the studies included in meta-analysis did not report measures of within-study variability such as standard error (SE), standard deviation (SD), or the coefficient of variation (CV). This limits the weighting of individual effect size using the standard variance approach of Hedges and Olkin (Reference Hedges and Olkin2014). Therefore, the individual effect sizes were weighted using experimental replications as proposed by Adams et al. (Reference Adams, Gurevitch and Rosenberg1997) (Equation 2):

([2]) $${w_i} = \left( {{N_{{\rm{RS}}}} \cdot {N_{\rm{C}}}} \right)/\left( {{N_{{\rm{RS}}}} + {N_{\rm{C}}}} \right)$$

where w i denotes the weight of individual effect size, N RS is the number of replications for the treatment group, and N C is the number of replications for the control group.

If the published research article reported data from experiments conducted over multiple site-years or included multiple row-spacing treatments that shared the common control group, more than one effect size was calculated. However, this may result in non-independent effect sizes within and among the studies. To account for non-independence among individual effect sizes, a multilevel mixed-effects meta-analysis model was created using the nlme package in R (see Supplementary Materials for the R code) (Pinheiro et al. Reference Pinheiro, Bates, DebRoy, Sarkar, Heisterkamp, Willigen and Ranke2023; Singh et al. Reference Singh, Thapa, Kukal, Irmak, Mirsky and Jhala2022; Thapa et al. Reference Thapa, Poffenbarger, Tully, Ackroyd, Kramer and Mirsky2018b; Van den Noortgate et al. Reference Van den Noortgate, López-López, Marín-Martínez and Sánchez-Meca2013). In this model, effect sizes were included as a fixed effect, site-year/common control treatments were included as nested random effects, and w i values acted as weighting factors. Furthermore, robust SEs for the weighted mean effect sizes were calculated using a cluster-based robust variance estimator with the clubSandwich package in R (Pustejovsky Reference Pustejovsky2022). These robust SEs were used to calculate 95% confidence intervals (CIs) of weighted mean effect sizes, that is, $$\overline {{\rm{ln}}\left( {RR} \right)} $$ . Whenever 95% CIs of the weighted mean effect sizes did not include zero (P < 0.05), the treatment effect on a particular response variable was considered significantly different from that of the control group. To interpret results simply, $$\overline {{\rm{ln}}\left( {RR} \right)} $$ values and their corresponding 95% CIs were exponentially back-transformed to percent change in response variables (Equation 3):

([3]) ${\rm{\% \;change\;in\;response}} = \left[ {{e^{{\rm{\;}}\overline {{\rm{ln}}\left( {RR} \right)} {\rm{\;}}}} - 1} \right] \times 100$

where $$\overline {{\rm{ln}}\left( {RR} \right)} $$ is the weighted mean effect size for each response variable.

Moderator Analysis: Effects of Cash Crop, Tillage, Weed Type, Weed Management, and Herbicide Application Frequency and Time on Overall Narrow Row Spacing Effects

A moderator analysis was conducted to test how overall effect sizes were affected by potential covariates such as type of cash crop, tillage, weed type, method of weed management, and the frequency and time of herbicide applications. Each covariate was differentiated into two or more subgroups:

  • cash crop: ‘corn’ or ‘soybean’;

  • tillage: ‘conventional’ or ‘reduced’;

  • weed types: ‘grasses’, ‘broadleaves’, or ‘mixed’ (both grasses and broadleaves);

  • methods for weed management: ‘herbicide’ treatment plots, ‘untreated or weedy’ plots with no use of herbicides, or ‘weed-free’ control plots;

  • frequency of herbicide applications: ‘single’ or ‘sequential’; and

  • herbicide application time: ‘PRE’, ‘POST’, ‘PRE fb POST’, or ‘POST fb POST’.

Individual effect sizes were calculated with robust SEs for each subgroup. Each moderator variable was used as a sole covariate in the primary multilevel mixed-effects meta-analytic model explained earlier. The 99% CIs were calculated to lower the chances of experiment-wise type I errors. The mean effect of narrow row spacing was considered significant (P < 0.01) when 99% CIs of each subgroup did not contain zero; they were considered significantly different from one another when there was no overlap of their 99% CIs (Singh et al. Reference Singh, Thapa, Kukal, Irmak, Mirsky and Jhala2022; Thapa et al. Reference Thapa, Mirsky and Tully2018a).

A meta-regression analysis was performed for each response variable to determine the relationship between individual effect size and row spacing of treatment groups. For this analysis, treatment groups with row spacing greater than the standard row spacing of 76 cm were also included for control groups.

Publication Bias and Sensitivity Analysis

As previously noted, most of the studies did not report sampling variances. This prevented the creation of meaningful funnel plots to test publication bias. Therefore, an alternative, indirect, and visual approach was used in which density plots were used to assess the distribution of individual effect sizes for each response variable (Basche and DeLonge Reference Basche and DeLonge2017; Singh et al. Reference Singh, Thapa, Kukal, Irmak, Mirsky and Jhala2022; Thapa et al. Reference Thapa, Mirsky and Tully2018a). When creating density plots, imputed effect sizes (i.e., effect sizes where observed zero values were replaced with minimum possible values) were excluded. Overall effect sizes were tested for robustness. The jackknife procedure was used for sensitivity analysis to identify studies that might have influenced the overall effect sizes (Philibert et al. Reference Philibert, Loyce and Makowski2012). This involved a stepwise exclusion of one study at a time from the database, followed by rerunning the primary multilevel mixed-effects meta-analysis model each time to recalculate individual effect sizes.

Results and Discussion

Database Description

A total of 1,904 pair-wise observations (1,696 pairs of narrow row spacing (< 76 cm) and 208 pairs of wider than 76 cm row spacing; 91 and 102 cm) were extracted from 35 studies that were conducted during 1961 to 2018 in the United States (Table 1). These studies were conducted in 12 states, with more than one-fourth (n = 29 out of 35) of studies conducted in the nine midwestern states (Figure 2), including nine studies in Michigan, seven in Nebraska, four in Illinois, three in Missouri, and two in Wisconsin (Table 2). Among other midwestern states, one study each was conducted in Iowa, Indiana, Kansas, and Minnesota. Outside the Midwest, three studies were conducted in Mississippi, two in Pennsylvania, and one in Delaware. Out of 35 studies, 6 studies included corn, 27 included soybean, and 2 studies included both corn and soybean.

Table 1. List of 35 published articles included in the meta-analysis, along with information on location, year, weed, crops, agronomic management, and row-spacing treatments included in each study.

a B, broadleaf weed; G, grass weed; M, mixed weed species.

b C, corn; Soy, soybean.

c CT, conventional tillage; RT, reduced tillage.

d H, herbicide; NH, no-herbicide (untreated/weedy).

e S, single application; Seq, Sequential application.

Figure 2. A map of the states in the midwestern and eastern United States showing experimental sites for the 35 corn and soybean narrow row spacing studies included in the meta-analysis.

Table 2. List of the states in the United States, crops, and broadleaf and grass weeds, along with specific references from the 35 articles included in the meta-analysis.

The data were collected either on individual broadleaf (n = 22) or grass (n = 7) weed species or a mixture of both (n = 16) (Table 1). These weed species belonged to 12 families: Amaranthaceae, Asteraceae, Brassicaceae, Chenopodiaceae, Convolvulaceae, Cucurbitaceae, Fabaceae, Malvaceae, Poaceae, Polygonaceae, Portulaceae, and Solanaceae. Among broadleaf weed species, the most evaluated species was waterhemp [Amaranthus tuberculatus (Moq.) Sauer], which was evaluated in six studies; followed by velvetleaf (Abutilon theophrasti Medik.) in five studies; common lambsquarters (Chenopodium album L.) and redroot pigweed (Amaranthus retroflexus L.) in four studies each; common ragweed (Ambrosia artemisiifolia L.) and sicklepod [Senna obtusifolia (L.) Irwin & Barneby] in three studies each; and burcucumber (Sicyos angulatus L.), common cocklebur (Xanthium strumarium L.), eastern black nightshade (Solanum ptychanthum Dunal), and Palmer amaranth (Amaranthus palmeri S. Watson) in two studies each. Canada thistle [Cirsium arvense (L.) Scop.], common sunflower (Helianthus annuus L.), giant ragweed (Ambrosia trifida L.), hemp sesbania [Sesbania herbacea (Mill.) McVaugh], horsenettle (Solanum carolinense L.), ivyleaf morningglory (Ipomoea hederacea Jacq.), and pitted morningglory (Ipomoea lacunosa L.) were each evaluated only once (Table 2). Among grass weed species, giant foxtail (Setaria faberi Herrm.) was evaluated most often (in five studies) followed by barnyardgrass [Echinochloa crus-galli (L.) P. Beauv.] in two studies. Fall panicum (Panicum dichotomiflorum Michx.), large crabgrass [Digitaria sanguinalis (L.) Scop.], and yellow foxtail [Setaria pumila (Poir.) Roem. & Schult.] were studied only one time each.

In terms of tillage, 11 studies employed conventional tillage, 13 employed reduced tillage (Table 1), 6 employed both conventional and reduced tillage (Bowman et al. Reference Bowman, Hartman, McClary, Sinclair, Hummel and Wax1986; Burnside and Colville Reference Burnside and Colville1964; Mickelson and Renner Reference Mickelson and Renner1997; Nelson and Renner Reference Nelson and Renner1999; Wax and Pendleton Reference Wax and Pendleton1968; Young et al. Reference Young, Young, Gonzini, Hart, Wax and Kapusta2001), and 5 studies did not use or provide any information on tillage (Bailey et al. Reference Bailey, Butts, Lauer, Laboski, Kucharik and Davis2015; Harder et al. Reference Harder, Sprague and Renner2007; Hay et al. Reference Hay, Dille and Peterson2019; Knezevic et al. Reference Knezevic, Evans and Mainz2003; Moomaw and Martin Reference Moomaw and Martin1984). The data-fitting inclusion criteria were extracted irrespective of whether those observations were from untreated/weedy treatments or with the use of herbicides. In this data set, 11 studies used herbicides, 9 did not, and 15 studies used both herbicide and untreated/weedy treatments. The studies that used herbicides had either single (n = 12), sequential (n = 2; Schultz et al. Reference Schultz, Myers and Bradley2015; VanGessel et al. Reference VanGessel, Whaley and Johnson2003), or both single and sequential herbicide applications (n = 10). These applications were either PRE (n = 3; Burnside and Colville Reference Burnside and Colville1964; Moomaw and Martin Reference Moomaw and Martin1984; Wax and Pendleton Reference Wax and Pendleton1968), POST (n = 9), PRE fb POST (n = 1, VanGessel et al. Reference VanGessel, Whaley and Johnson2003), POST fb POST, or combinations of these three (n = 10).

Effects of Narrow Row Spacing on Weed Density

Averaged across 107 pair-wise comparisons from 11 studies, narrow row spacing (<76 cm) reduced overall weed density by 34% (Figure 3; 95% CI = −54% to −5%), with only a significant reduction of 42% in soybean (99% CI = −63% to −9%) but not in corn (Figure 4A). This is consistent with the review from Bradley (Reference Bradley2006), who reported the late-season benefits (i.e., reduced weed density, and/or biomass or improved weed control) of narrow row spacing (<76 cm), often in soybean (64% instances; n = 72 out of 113 site-years) but occasionally in corn (24% instances; n = 12 out of 50 site-years). Meta-regression analysis further indicates that the overall effect sizes of weed density were positively correlated with crop row spacing, with a low degree (R = 0.38) of high statistical significance (P < 0.001) (Figure 5A). This suggests that weed density was reduced to a lower degree with increasing row spacing: for example, Harder et al. (Reference Harder, Sprague and Renner2007) observed that weed emergence decreased significantly 3 wk after glyphosate application (on 10-cm weeds) in 19-cm (5 plants m−2) soybean row spacing, but not in 38-cm (8 plants m−2) compared with 76-cm row spacing (12 plants m−2). A notable point from Figure 5A is that observations for soybean had only 19-cm (n = 34) and 38-cm (n = 60) row-spacing treatments, while corn had mostly 51-cm (n = 11) and 91-cm (n = 36) row-spacing treatments, except for two observations for 38-cm row spacing. This explains in part the nonsignificant effect of narrow row spacing (<76 cm) on weed density in corn, as more than one-fourth of observations (n = 11 out of 13) came from relatively wider row spacing (51 cm) compared with 38 cm, where weed density was not affected. In contrast, soybean row spacing was narrower (19 and 38 cm), and a higher reduction in weed density was evident with narrower row spacing (i.e., 19-cm row spacing compared with 38-cm row spacing). Reduced weed densities, especially of species that emerge later in the season, are primarily attributed to increased light interception (Hay et al. Reference Hay, Dille and Peterson2019; Puricelli et al. Reference Puricelli, Faccini, Orioli and Sabbatini2003; Steckel and Sprague Reference Steckel and Sprague2004) and earlier crop-canopy closure (Burnside and Colville Reference Burnside and Colville1964; Hock et al. Reference Hock, Knezevic, Martin and Lindquist2006; Légère and Schreiber Reference Légère and Schreiber1989; Mickelson and Renner Reference Mickelson and Renner1997; Nelson and Renner Reference Nelson and Renner1998; Peters et al. Reference Peters, Gebhardt and Stritzke1965; Rich and Renner Reference Rich and Renner2007; Wax and Pendleton Reference Wax and Pendleton1968) found in narrower row spacing (Bradley Reference Bradley2006).

Figure 3. The overall effect of narrow row spacing (<76 cm) on weed density, weed biomass, weed control, weed seed production, and crop yield. The vertical black dashed line indicates zero effect. The black dots represent mean effect sizes (log of response ratios [ $$\overline {{\rm{ln}}\left( {RR} \right)} $$ ]), and the black lines represent their respective 95% confidence intervals (CIs). The numbers in parentheses indicate the number of observations followed by the number of studies for each effect size. The effect sizes were considered significantly different when their 95% CIs did not overlap or contain zero.

Figure 4. The effect of narrow row spacing (<76 cm) on (A) weed density, (B) weed biomass, (C) weed control, and (D) weed seed production as explained by the subgroups of crop, tillage, weed type, weed management method, herbicide application frequency, and time. The vertical black dashed line indicates zero effect. The black dots represent mean effect sizes (log of response ratios [ $$\overline {{\rm{ln}}\left( {RR} \right)} $$ ]) for each subgroup, and the black lines represent their respective 99% confidence intervals (CIs). The numbers in parentheses indicate the number of observations followed by the number of studies for each effect size. The effect sizes were considered significantly different when their 99% CIs did not overlap or contain zero.

Figure 5. The individual effect sizes (natural log of response ratios [ $$\overline {{\rm{ln}}\left( {RR} \right)} $$ ]) of (A) weed density, (B) weed biomass, (C) weed control, (D) weed seed production, and (E) crop yield as a function of crop row spacing. The green and red dots represent individual effect sizes for corn and soybean, respectively. The horizontal black dashed line represents zero effect, while the vertical black line represents 76-cm row spacing (control). The black bold line shows the relationship between individual effect sizes and crop row spacing, which is given as R (Pearson’s correlation) with a P-value. The gray-shaded area represents 95% confidence intervals (CIs) of the linear relationship.

Although narrow row spacing reduced weed density, effects were not significant for tillage (conventional and reduced), weed type (grass and mixed), weed management (herbicide and no-herbicide), herbicide application frequency (single and sequential), and time (PRE, POST, and POST fb POST) (Figure 4A). Narrow row spacing was effective in reducing weed density by 38% (99% CI = −61% to −0.4%) for broadleaf weeds and by 49% (99% CI = −67% to −22%) for PRE fb POST herbicide application. The reduction in broadleaf weeds is marginally significant (the lower CI is close to 0%); therefore, it cannot be concluded with a high level of confidence that densities of certain weed types (i.e., broadleaves) are more likely to be affected than others (Bradley Reference Bradley2006). Results of the meta-analysis indicate that the benefits of narrow row spacing may likely be achieved with PRE fb POST herbicide application compared with PRE or POST-only or POST fb POST herbicide application, as weed densities may be high due to emergence during the early season (in the case of POST-only, and POST fb POST) or resurgence (in the case of PRE-only) during the late season. For example, McDonald et al. (Reference McDonald, Striegel, Chahal, Jha, Rees, Proctor and Jhala2021) reported 3 to 32 versus 123 to 497 plants m−2 of A. palmeri with PRE fb POST versus POST-only herbicide programs in a soybean row-spacing study conducted in Nebraska. However, the weed density data set had only one study each for PRE (Johnson and Hoverstad Reference Johnson and Hoverstad2002) and POST fb POST herbicide application (McDonald et al. Reference McDonald, Striegel, Chahal, Jha, Rees, Proctor and Jhala2021); therefore, no definitive conclusion could be drawn.

Effects of Narrow Row Spacing on Weed Biomass

Averaged across 283 pair-wise comparisons from 20 studies, narrow row spacing (<76 cm) reduced overall weed biomass by 55% (Figure 3; 95% CI = −68% to −36%). Meta-regression further suggests that individual effect sizes of weed biomass had a very low degree of positive correlation (R = 0.13; P = 0.024) with row spacing (Figure 5B). Similarly, Hay et al. (Reference Hay, Dille and Peterson2019) observed a weak positive correlation between weed biomass and soybean row spacing in Kansas. The researchers combined 118 observations from 6 site-years and found that pigweed (Amaranthus spp.) biomass at 8 wk after planting was reduced by 23% when row spacing was decreased from 76 to 38 cm and by 15% when row spacing was further decreased from 38 to 19 cm. Most of the individual observations for soybean had narrow row spacing ≤ 51 cm (n = 224 out of 260), and 82% of these observations (n = 184 out of 224) were concentrated below the zero-effect size (i.e., black dashed line; Figure 5B). Out of these 184 observations, about one-fifth of the observations (n = 32) had high negative effect sizes of < −2.3, because reported biomass was negligible (0 g; replaced with 0.1 g to calculate effect sizes) for thenarrow row spacing treatments. As a result, an overall estimate of 71% (99% CI = −85% to −44%) suppression in weed biomass due to narrow row spacing was observed in soybean (Figure 4B). This is likely because narrow row spacing closes the canopy earlier and provides greater competitiveness against weeds than wide row spacing. For example, researchers observed that soybean with 19-cm row spacing closed its canopy 20 to 45 d earlier than soybean with 76-cm row spacing (20 d [Carey and Defelice Reference Carey and Defelice1991; Hock et al. Reference Hock, Knezevic, Martin and Lindquist2006]; 35 d [Nelson and Renner Reference Nelson and Renner1998; Rich and Renner Reference Rich and Renner2007]; 45 d [Mickelson and Renner Reference Mickelson and Renner1997]). Moderator analysis revealed that narrow row spacing suppressed weed biomass in all cases, except for corn, conventional tillage, grass weed species, and untreated/weedy plots (Figure 4B). The weed biomass was likely not reduced in corn because, unlike in soybean, any significant season-long increase in light interception was essentially not observed with narrow compared with wider row spacing in corn (Bradley Reference Bradley2006). Tharp and Kells (Reference Tharp and Kells2001) reported that corn row spacing narrower than 76 cm intercepted a greater quantity of light (not more than 10%) than 76-cm row spacing in just the early season, with no differences later in the season. Likewise, other researchers reported that narrow row spacing did not increase interception efficiency (35 vs. 66 cm; Flénet et al. Reference Flénet, Kiniry, Board, Westgate and Reicosky1996) or maximum interception of photosynthetic active radiation (38 vs. 76 cm; Ottman and Welch Reference Ottman and Welch1989; Westgate et al. Reference Westgate, Forcella, Reicosky and Somsen1997) in corn. Moreover, any increase in light interception or crop competitiveness with narrow row spacing in corn might not translate into early-season reduction in weed density or biomass (Johnson et al. Reference Johnson, Hoverstad and Greenwald1998; Johnson and Hoverstad Reference Johnson and Hoverstad2002).

Weed biomass was suppressed by 64% (99% CI = −81% to −33%) for reduced tillage, 56% (99% CI = −78% to −11%) for broadleaf weeds, and 61% (99% CI = −80% to −26%) for mixed weeds (Figure 4B). The effect of reduced tillage is possibly due to more observations with a high negative effect size of < −3.0 compared with conventional tillage (n = 35 vs. 2 for conventional tillage). For most of these observations, biomass in narrow row spacing was almost zero and was compared with higher biomass (3 to 919 kg ha−1) from 76-cm row spacing. The reason for negligible biomass was that it was initially suppressed by glyphosate applied POST (Dalley et al. Reference Dalley, Kells and Renner2004b; Mulugeta and Boerboom Reference Mulugeta and Boerboom2000) or by PRE application of 3-amino-2,5-dichlorobenzoic acid with or without in-season rotary till hoe treatments (Burnside and Colville Reference Burnside and Colville1964), and thereafter, weeds may not have emerged in narrow row spacing due to early canopy shading, unlike in 76 cm rows with wide open spaces to let weeds emerge and thrive. Similarly, a significant effect for broadleaf and mixed weed species was observed, but not for grass weed species, as more than one-third of the observations (n = 9 out of 23) for grasses had a positive effect size (0.12 to 1.04; Hock et al. Reference Hock, Knezevic, Martin and Lindquist2006; Johnson and Hoverstad Reference Johnson and Hoverstad2002; Schmidt and Johnson Reference Schmidt and Johnson2004). However, this data set for grasses was relatively small (n = 23 compared with 68 for broadleaf and 192 for mixed weed species) to firmly conclude that the biomass of grass weed species is more likely to be affected than other weed types. When herbicides were used, weed biomass suppression was 69% (99% CI = −81% to −48%), with slightly lower suppression of 67% (99% CI = −84% to −33%) with single use compared with 79% (99% CI = −87% to −68%) with sequential application of herbicides. This was expected, as a follow-up application of herbicide helps control weed escapes from the first application and late-emerging weeds (Norris et al. Reference Norris, Shaw and Snipes2002; Young et al. Reference Young, Young, Gonzini, Hart, Wax and Kapusta2001). Among herbicide application timings, PRE (mean = −46%, 99% CI = −52% to −39%) had approximately half the suppression of POST (mean = −79%, 99% CI = −88% to −64%), PRE fb POST (mean = −83%, 99% CI = −86% to −78%), and POST fb POST (mean = −84%, 99% CI = −84% to −84%) herbicide programs. Therefore, results indicate that cultural practices such as narrow row spacing, and reduced tillage should be combined with chemical options such as sequential (PRE fb POST) herbicide applications to effectively suppress weeds in production fields.

Effects of Narrow Row Spacing on Weed Control

Averaged across 792 pair-wise comparisons from 13 studies, overall weed control improved by 32% (95% CI = 1 to 74%) with crop row spacing narrower than 76 cm (Figure 3). Almost all the observations for weed control were recorded in soybean (n = 791/792) and reported a 32% (99% CI = −9 to −91%) increase in weed control with no significant difference (Figure 4C). Among other moderate variables, the improvement in weed control was observed with no-herbicide plots (mean effect size of 3.3), a single application of herbicide (mean = 11%, 99% CI = 3 to 19%), and POST-only (mean = 14%, 99% CI = 1 to 29%) herbicide application. Only 15% of the observations (n = 63) of the extensive POST data set (n = 428) had a negative effect size (−0.01 to −0.55), which led to the overall effect of 14% weed control with smaller CIs (1% to 29%). Weed control and row spacing had negligible negative correlation (R = −0.023) with no significance (Figure 5C; P = 0.52). Because all of the narrow row spacing observations belonged to ≤51-cm row spacing, this implies that weed control might be almost similar with 19-, 25-, or 38-cm row spacings. For example, Young et al. (Reference Young, Young, Gonzini, Hart, Wax and Kapusta2001) observed that 19- versus 38-cm soybean row spacing had no differences in control of S. faberi, A. tuberculatus, and A. theophrasti in 6 out of 8 site-years, 4 out of 5 site-years, and 5 out of 8 site-years, respectively.

Effects of Narrow Row Spacing on Weed Seed Production

Averaged across 36 pair-wise comparisons from five studies, weed seed production was reduced by 45% (95% CI = −66% to −9%; Figure 3). The effects of narrow row spacing were only significant for plots with herbicide use (mean = −61%, 99% CI = −81% to −18%) of single (mean = −36%, 99% CI = −53% to −14%) and sequential (mean = −49%, 99% CI = −62% to −31%) applications and POST fb POST (mean = −61%, 99% CI = −78% to −29%) herbicide application timing (Figure 4D). Nice et al. (Reference Nice, Buehring and Shaw2001) observed that a sequential POST glyphosate program was quite effective in reducing S. obtusifolia seed production in 19- and 38-cm compared with 76-cm row spacing (50 to 150 seeds m−2 vs. 260 seeds m−2). Weed seed production had a moderate degree of positive association (R = 0.46) of high significance (P < 0.001) with row spacing (Figure 5D). Weed seed production decreased with a decrease in row spacing, although a significant decrease was only reported with 19-cm row spacing (95% CIs shaded in Figure 5D, as the gray area did not overlap with zero effect size or the black dashed line). The findings from Steckel and Sprague (Reference Steckel and Sprague2004) correspond with this observation: in their study, seed production of A. tuberculatus, which emerged at the V2-V3 soybean stage, decreased from 20,000 to 14,000 seeds plant−1 in 19-cm compared with 76-cm row spacing, and likewise decreased from 4,300 to 500 seeds plant−1 for those that emerged at the V4-V5 growth stage of soybean.

Effects of Narrow Row Spacing on Crop Yield

Averaged across 478 pair-wise comparisons from 20 studies, overall crop yield increased by 11% (95% CI = 6% to 16%) with row spacing narrower than 76 cm (Figure 3). However, this increase was only evident in soybean (mean = 12%, 99% CI = 6% to 18%), not in corn (Figure 5; mean = 4%, 99% CI = −8% to 17%). This is likely because the number of studies that evaluated the effect of narrow row spacing on corn yield was small (n = 4), and the results were mixed; Esbenshade et al. (Reference Esbenshade, Curran, Roth, Hartwig and Orzolek2001a) and Tharp and Kells (Reference Tharp and Kells2001) reported no effect of narrow row spacing on corn yield, Johnson and Hoverstad (Reference Johnson and Hoverstad2002) reported a mostly positive effect, and Dalley et al. (Reference Dalley, Kells and Renner2004a) reported both a negative and a positive effect. The mixed response of corn yield to narrow row spacing was attributed to variable levels of weed suppression, environmental conditions, and other factors, such as the timing of herbicide application (Dalley et al. Reference Dalley, Kells and Renner2004a; Esbenshade et al. Reference Esbenshade, Curran, Roth, Hartwig and Orzolek2001a; Johnson and Hoverstad Reference Johnson and Hoverstad2002; Tharp and Kells Reference Tharp and Kells2001). In future, more studies evaluating narrow row spacing effects in corn systems are required.

In soybean, about one-fourth (21%) of the observations (n = 96 out of 458) noted lower yield with narrow row spacing; however, 59% of these observations (n = 57 out of 96) came from a single study, in which the authors reported poor crop establishment in 19-cm row spacing in at least 1 site-year (Young et al. Reference Young, Young, Gonzini, Hart, Wax and Kapusta2001). Similarly, Norris et al. (Reference Norris, Shaw and Snipes2002) observed no yield advantage of narrow row spacing due to dry weather conditions or lower population in narrow row spacing and accounted for 15 observations with zero and negative yield effects. However, soybean yield increased in narrow row spacing due to positive effect size in 77% of total observations (n = 354 out of 458). The positive effect of narrow row spacing on soybean yield is usually attributed to the more equidistant distribution of plants, improved crop competitiveness, decreased intraspecific competition for resources such as light, and early canopy closure (Bradley Reference Bradley2006; Harder et al. Reference Harder, Sprague and Renner2007; Norris et al. Reference Norris, Shaw and Snipes2002). Furthermore, individual effect sizes for crop yields and row spacing had a low degree of negative association (R = −0.26) with high significance (P < 0.001; Figure 5E). As crop row spacing became wider from 19 cm to 76 cm (control), or beyond this to 102 cm, the general trend of progressive decrease in crop yield was observed. This suggests that crops in narrow row spacing are more competitive with weeds and have higher resource use efficiency than those in wider row spacing (Knezevic et al. Reference Knezevic, Evans and Mainz2003).

Crop yield increased by 8% (99% CI = 0.2% to 16%) due to narrow row spacing under conventional tillage compared with 11% (99% CI = 3% to 19%) under reduced tillage (Figure 6). Further, crop yield increased due to narrow row spacing when weeds were either partially/fully controlled via herbicide application (mean = 9%, 99% CI = 3% to 15%) or not controlled, as in the case of untreated/weedy plots (mean = 27%, 99% CI = 17% to 38%). However, there was no increase in crop yield in weed-free plots (mean = 6%, 99% CI = −4% to 17%). These results suggest that the positive effect of narrow row spacing on crop yield is partially related to its weed-suppression effects, among other factors. Interestingly, crop yield was increased with a single application of herbicide (mean = 9%, 99% CI = 3% to 17%); for example, a crop yield increase of 19% (99% CI = 5% to 34%) was observed with PRE herbicide and 8% (99% CI = 1% to 16%) with POST herbicide.

Figure 6. The effect of narrow row spacing (<76 cm) on crop yield as explained by subgroups of the crop, tillage, weed type, weed management method, herbicide application frequency, and time. The vertical black dashed line indicates zero effect. The black dots represent mean effect sizes (log of response ratios [ $$\overline {{\rm{ln}}\left( {RR} \right)} $$ ]) for each subgroup, and the black lines represent their respective 99% confidence intervals (CIs). The numbers in parentheses indicate the number of observations followed by the number of studies for each effect size. The effect sizes were considered significantly different when their 99% CIs did not overlap or contain zero.

Publication Bias and Sensitivity Analysis

The distribution of individual effect sizes for weed density, weed biomass, weed control, weed seed production, and crop yield is plotted as a density plot in Figure 7. The individual effect sizes for weed control and crop yield were distributed in a narrow range compared with other response variables and had peaks indicating a slightly positive effect of narrow row spacing (<76 cm). In contrast, weed density, weed biomass, and weed seed production had comparatively wide distributions, with peaks indicating a slightly negative effect. The response variables had a fairly symmetrical distribution with an inverted funnel shape, which is indicative of no publication bias (Light et al. Reference Light, Richard, Pillemer and Light1984; Sterne and Harbord Reference Sterne and Harbord2004).

Figure 7. Density plots show the distribution of individual effect sizes (log of response ratios [ln(RR)]) of weed density, biomass, control, weed seed production, and crop yield.

Sensitivity analysis did not find any influential study for the weed density, weed biomass, weed seed production, and crop yield data set (Figure 8). One study was found to be influential for weed control; with the exclusion of Buehring et al. (Reference Buehring, Nice and Shaw2002), weed control decreased by more than half from 32% (95% CI = 1 to 74%) to 15% (95% CI = 6% to 24%). This occurred because 22 individual observations from this study reported 3% to 52% weed control ratings for narrow row-spacing treatments of 19 and 38 cm compared with a 0% control (imputed control of 0.1%) for the untreated control of standard 76-cm row spacing. This led to seemingly high effect sizes of 3.4 to 6.3, which more than doubled (15% vs. 32%) the overall effect size for weed control. Overall, the results of this meta-analysis are robust, as no other single study had any significant influence on the mean effect sizes.

Figure 8. Sensitivity analysis showing the variation in overall effect sizes (log of response ratios [ln(RR)]) (mean ± 95% confidence intervals [CIs]) of narrow row spacing effects on (A) weed density, (B) weed biomass, (C) weed control, (D) weed seed production, and (E) crop yield when any specific study was excluded from the analysis. The vertical red solid and dashed lines represent the mean ± 95% CIs, respectively, of overall effect sizes with all the studies included in the analysis.

Limitations and Factors to Consider for Interpreting Results

Practical Implications

This is the first meta-analysis to quantify the effect of narrow row spacing (<76 cm) on weed density, weed biomass, weed control, weed seed production, and yield of corn and soybean in the United States. A synthesis of relevant studies suggests that narrow row spacing could reduce weed density by 34%, weed biomass by 55%, and weed seed production by 45% and could increase weed control by 32% and crop yield by 11% compared with 76-cm row spacing; however, weed suppression and yield improvement were discovered in soybean, not in corn. Narrow row spacing in soybean reduced weed density by 42% and weed biomass by 71% and improved crop yield by 12%. Results of this study substantiate literature that narrow row spacing can suppress (late-season) weeds mostly in soybean and rarely in corn (Bradley Reference Bradley2006). Moreover, narrow row spacing may delay the critical time for weed removal in soybean; for example, the critical time for weed removal occurred at the V1 soybean growth stage in 76-cm row spacing and at the V2 and V3 stages for 38- and 19-cm row spacing, respectively (Knezevic et al. Reference Knezevic, Evans and Mainz2003). This indicates that weed management programs are required earlier in wide row spacing (76 cm) compared with narrow row spacing. The potential advantages of narrow row spacing, such as higher weed suppression due to early canopy closure and improved crop yield, may not be achieved if soybean growth and yield potential are limited by moisture or other critical factors (Harder et al. Reference Harder, Sprague and Renner2007). Overall, results suggest that narrow row spacing can potentially be used as an integrated weed management tool in combination with herbicides in soybean for the management of herbicide-resistant weeds.

Supplementary material

To view supplementary material for this article, please visit https://doi.org/10.1017/wsc.2023.50

Data Availability Statement

The raw data will be available upon request from the corresponding author.

Acknowledgments

We are very grateful to the authors involved in conducting research for the 35 studies included in this meta-analysis. This research received no specific grant from any funding agency or the commercial or not-for-profit sectors. No competing interests have been declared.

Footnotes

*

These authors contributed equally to this work.

Associate Editor: William Vencill, University of Georgia

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Figure 0

Figure 1. PRISMA (Preferred Reporting Items for Systematic Reviews and Meta-Analyses; Page et al. 2021) flow diagram showing the stepwise procedure used for selecting 35 studies for meta-analysis.

Figure 1

Table 1. List of 35 published articles included in the meta-analysis, along with information on location, year, weed, crops, agronomic management, and row-spacing treatments included in each study.

Figure 2

Figure 2. A map of the states in the midwestern and eastern United States showing experimental sites for the 35 corn and soybean narrow row spacing studies included in the meta-analysis.

Figure 3

Table 2. List of the states in the United States, crops, and broadleaf and grass weeds, along with specific references from the 35 articles included in the meta-analysis.

Figure 4

Figure 3. The overall effect of narrow row spacing (<76 cm) on weed density, weed biomass, weed control, weed seed production, and crop yield. The vertical black dashed line indicates zero effect. The black dots represent mean effect sizes (log of response ratios [$$\overline {{\rm{ln}}\left( {RR} \right)} $$]), and the black lines represent their respective 95% confidence intervals (CIs). The numbers in parentheses indicate the number of observations followed by the number of studies for each effect size. The effect sizes were considered significantly different when their 95% CIs did not overlap or contain zero.

Figure 5

Figure 4. The effect of narrow row spacing (<76 cm) on (A) weed density, (B) weed biomass, (C) weed control, and (D) weed seed production as explained by the subgroups of crop, tillage, weed type, weed management method, herbicide application frequency, and time. The vertical black dashed line indicates zero effect. The black dots represent mean effect sizes (log of response ratios [$$\overline {{\rm{ln}}\left( {RR} \right)} $$]) for each subgroup, and the black lines represent their respective 99% confidence intervals (CIs). The numbers in parentheses indicate the number of observations followed by the number of studies for each effect size. The effect sizes were considered significantly different when their 99% CIs did not overlap or contain zero.

Figure 6

Figure 5. The individual effect sizes (natural log of response ratios [$$\overline {{\rm{ln}}\left( {RR} \right)} $$]) of (A) weed density, (B) weed biomass, (C) weed control, (D) weed seed production, and (E) crop yield as a function of crop row spacing. The green and red dots represent individual effect sizes for corn and soybean, respectively. The horizontal black dashed line represents zero effect, while the vertical black line represents 76-cm row spacing (control). The black bold line shows the relationship between individual effect sizes and crop row spacing, which is given as R (Pearson’s correlation) with a P-value. The gray-shaded area represents 95% confidence intervals (CIs) of the linear relationship.

Figure 7

Figure 6. The effect of narrow row spacing (<76 cm) on crop yield as explained by subgroups of the crop, tillage, weed type, weed management method, herbicide application frequency, and time. The vertical black dashed line indicates zero effect. The black dots represent mean effect sizes (log of response ratios [$$\overline {{\rm{ln}}\left( {RR} \right)} $$]) for each subgroup, and the black lines represent their respective 99% confidence intervals (CIs). The numbers in parentheses indicate the number of observations followed by the number of studies for each effect size. The effect sizes were considered significantly different when their 99% CIs did not overlap or contain zero.

Figure 8

Figure 7. Density plots show the distribution of individual effect sizes (log of response ratios [ln(RR)]) of weed density, biomass, control, weed seed production, and crop yield.

Figure 9

Figure 8. Sensitivity analysis showing the variation in overall effect sizes (log of response ratios [ln(RR)]) (mean ± 95% confidence intervals [CIs]) of narrow row spacing effects on (A) weed density, (B) weed biomass, (C) weed control, (D) weed seed production, and (E) crop yield when any specific study was excluded from the analysis. The vertical red solid and dashed lines represent the mean ± 95% CIs, respectively, of overall effect sizes with all the studies included in the analysis.

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