检测生活史权衡表达中的环境依赖性。

IF 3.5 1区 环境科学与生态学 Q1 ECOLOGY
Louis Bliard, Jordan S Martin, Maria Paniw, Daniel T Blumstein, Julien G A Martin, Josephine M Pemberton, Daniel H Nussey, Dylan Z Childs, Arpat Ozgul
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引用次数: 0

摘要

生命史权衡是进化人口学的核心原理之一。权衡描述了个体生命史特征之间的负协方差,它可能源于遗传限制,也可能源于每个个体在躯体功能和生殖功能之间的零和博弈中必须分配的有限资源。虽然理论预测权衡无处不在,但实证研究往往无法在野生种群中检测到这种负共变。改善权衡检测的一种方法是考虑环境背景,因为权衡的表达可能取决于环境条件。然而,目前的方法通常是寻找性状之间的固定协方差,从而忽略了它们的环境依赖性。在此,我们提出了一种改编自 Martin(2023 年)的分层多元 "协方差反应规范 "模型,以帮助利用人口学数据检测生命史权衡表达的环境依赖性。该方法允许性状间表型相关性的连续变化。我们在模拟数据中验证了个体内部和代际权衡的模型。然后,我们将其应用于黄腹旱獭(Marmota flaviventer)和索伊羊(Ovis aries)的经验数据集,作为概念验证,表明应用我们的方法可以获得新的见解,例如仅在特定环境中检测权衡。我们讨论了该方法在许多现有长期人口数据集上的应用潜力,以及它如何能提高我们对权衡表达的理解,特别是对一般生命史理论的理解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detecting context dependence in the expression of life history trade-offs.

Life history trade-offs are one of the central tenets of evolutionary demography. Trade-offs, depicting negative covariances between individuals' life history traits, can arise from genetic constraints, or from a finite amount of resources that each individual has to allocate in a zero-sum game between somatic and reproductive functions. While theory predicts that trade-offs are ubiquitous, empirical studies have often failed to detect such negative covariances in wild populations. One way to improve the detection of trade-offs is by accounting for the environmental context, as trade-off expression may depend on environmental conditions. However, current methodologies usually search for fixed covariances between traits, thereby ignoring their context dependence. Here, we present a hierarchical multivariate 'covariance reaction norm' model, adapted from Martin (2023), to help detect context dependence in the expression of life-history trade-offs using demographic data. The method allows continuous variation in the phenotypic correlation between traits. We validate the model on simulated data for both intraindividual and intergenerational trade-offs. We then apply it to empirical datasets of yellow-bellied marmots (Marmota flaviventer) and Soay sheep (Ovis aries) as a proof-of-concept showing that new insights can be gained by applying our methodology, such as detecting trade-offs only in specific environments. We discuss its potential for application to many of the existing long-term demographic datasets and how it could improve our understanding of trade-off expression in particular, and life history theory in general.

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来源期刊
Journal of Animal Ecology
Journal of Animal Ecology 环境科学-动物学
CiteScore
9.10
自引率
4.20%
发文量
188
审稿时长
3 months
期刊介绍: Journal of Animal Ecology publishes the best original research on all aspects of animal ecology, ranging from the molecular to the ecosystem level. These may be field, laboratory and theoretical studies utilising terrestrial, freshwater or marine systems.
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