2016
DOI: 10.1111/jeb.12990
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Accounting for female space sharing in St. Kilda Soay sheep (Ovis aries) results in little change in heritability estimates

Abstract: When estimating heritability in free-living populations, it is common practice to account for common environment effects, because of their potential to generate phenotypic covariance among relatives thereby biasing heritability estimates. In quantitative genetic studies of natural populations, however, philopatry, which results in relatives being clustered in space, is rarely accounted for. The two studies that have been carried out so far suggest absolute declines in heritability estimates of up to 43% when a… Show more

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Cited by 22 publications
(40 citation statements)
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“…There are a number of ways this can be approached, each of which will be best suited to particular study systems, data structures, and research questions. In our case, we progressed from a typical approach to quantifying spatial heterogeneity (partitioning the study site into discrete areas that demarcate relatively homogeneous areas) to one that explicitly estimates variance attributable to spatial autocorrelation and has recently been applied in quantitative genetic studies of freeliving animal populations (Stopher et al 2012;Regan et al 2017). This latter approach relies on aggregating spatial locations of nestboxes within a grid, mimicking the 'block' design typically applied to agricultural and forest genetics trials (Dutkowski et al 2002).…”
Section: Discussionmentioning
confidence: 99%
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“…There are a number of ways this can be approached, each of which will be best suited to particular study systems, data structures, and research questions. In our case, we progressed from a typical approach to quantifying spatial heterogeneity (partitioning the study site into discrete areas that demarcate relatively homogeneous areas) to one that explicitly estimates variance attributable to spatial autocorrelation and has recently been applied in quantitative genetic studies of freeliving animal populations (Stopher et al 2012;Regan et al 2017). This latter approach relies on aggregating spatial locations of nestboxes within a grid, mimicking the 'block' design typically applied to agricultural and forest genetics trials (Dutkowski et al 2002).…”
Section: Discussionmentioning
confidence: 99%
“…For example, the shared natal environment of siblings contributes to the phenotypic resemblance of relatives and can upwardly bias additive genetic (co)variance estimates (Kruuk and Hadfield 2007;Hadfield et al 2013). Yet relatives can continue to share environments beyond independence through a combination of natal philopatry (Regan et al 2017) and local-scale environmental variation (Wilkin et al 2007a). If dispersal distances differ between the sexes, as is typical of the mammalian and avian populations used in quantitative genetic research of wild populations (Greenwood 1980), then joint consideration of male and female contributions to heritable variation may be subject to sex-dependent environmental bias.…”
mentioning
confidence: 99%
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“…Additionally, while we predicted a negative covariance between neighbours due to competition for resources (especially during high-density conditions), this could be masked by positive spatial autocorrelation in resource availability within a study-area. This would generate a net signal of positive phenotypic covariance among-neighbours (Stopher et al 2012; Regan et al 2016; Thomson et al 2018). To control for this we fitted a term accounting for (non-socially determined) environmental heterogeneity in resource abundance.…”
Section: Methodsmentioning
confidence: 99%
“…At a WAMBAM meeting in 2011 (see Table ), Katie Stopher (see Stopher et al., ) presented an analysis to disentangle common environment effects using spatial data, by including matrices describing common use of space in animal models, in an analogous way to how a matrix describing expected identity by decent is fundamental to the estimation of the additive genetic variance in these models. This approach has greatly taken hold, with, for instance, a detailed investigation of the potential for common environments to bias quantitative genetic inferences in Soay sheep by Charlotte Regan (see Regan et al., ), and with Isabel Winney and Caroline Thomson leading a round‐table discussion on the approach, and describing a forthcoming “how to…” paper to further facilitate use of the approach.…”
Section: Locations Organizers and Number Of Attendees Of Past Wambamsmentioning
confidence: 99%