首页> 外文期刊>Heredity: An International Journal of Genetics >Indirect genetic effects and kin recognition: Estimating IGEs when interactions differ between kin and strangers
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Indirect genetic effects and kin recognition: Estimating IGEs when interactions differ between kin and strangers

机译:间接遗传效应和亲属识别:亲属和陌生人之间的相互作用不同时估算IGE

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Social interactions among individuals are widespread, both in natural and domestic populations. As a result, trait values of individuals may be affected by genes in other individuals, a phenomenon known as indirect genetic effects (IGEs). IGEs can be estimated using linear mixed models. The traditional IGE model assumes that an individual interacts equally with all its partners, whether kin or strangers. There is abundant evidence, however, that individuals behave differently towards kin as compared with strangers, which agrees with predictions from kin-selection theory. With a mix of kin and strangers, therefore, IGEs estimated from a traditional model may be incorrect, and selection based on those estimates will be suboptimal. Here we investigate whether genetic parameters for IGEs are statistically identifiable in group-structured populations when IGEs differ between kin and strangers, and develop models to estimate such parameters. First, we extend the definition of total breeding value and total heritable variance to cases where IGEs depend on relatedness. Next, we show that the full set of genetic parameters is not identifiable when IGEs differ between kin and strangers. Subsequently, we present a reduced model that yields estimates of the total heritable effects on kin, on non-kin and on all social partners of an individual, as well as the total heritable variance for response to selection. Finally we discuss the consequences of analysing data in which IGEs depend on relatedness using a traditional IGE model, and investigate group structures that may allow estimation of the full set of genetic parameters when IGEs depend on kin.
机译:在自然和家庭人口中,个人之间的社会互动是广泛的。结果,个体的特征值可能会受到其他个体中基因的影响,这种现象称为间接遗传效应(IGE)。可以使用线性混合模型来估计IGE。传统的IGE模型假设一个人与其所有伙伴(无论是亲戚还是陌生人)均等地互动。但是,有大量证据表明,与陌生人相比,个人对亲属的行为有所不同,这与亲属选择理论的预测相符。因此,在混合了亲戚和陌生人的情况下,根据传统模型估算的IGE可能是不正确的,并且基于这些估算的选择将是次优的。在这里,我们调查当亲戚和陌生人之间的IGE有所不同时,IGE的遗传参数在群体结构人群中是否在统计上可识别,并建立模型来估计这些参数。首先,我们将总育种值和总遗传变异的定义扩展到IGE依赖于相关性的情况。接下来,我们证明当亲属和陌生人之间的IGE不同时,无法确定完整的遗传参数。随后,我们提出了一个简化的模型,该模型可以估算出对家族的总遗传影响,对非家族和个人的所有社会伙伴的遗传影响,以及对选择反应的总体遗传方差。最后,我们讨论了使用传统IGE模型分析其中IGE依赖相关性的数据的后果,并研究了当IGE依赖亲属时可能允许估算全套遗传参数的群体结构。

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