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A Bayesian method for the joint estimation of outcrossing rate and inbreedingdepression

机译:贝叶斯方法用于异交率和近交的联合估计萧条

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摘要

The population outcrossing rate (t) and adult inbreeding coefficient (F) are key parameters in mating system evolution. The magnitude of inbreeding depression as expressed in the field can be estimated given t and F via the method of . For a given total sample size, the optimal design for the joint estimation of t and F requires sampling large numbers of families (100–400) with fewer offspring (1–4) per family. Unfortunately, the standard inference procedure (MLTR) yields significantly biased estimates for t and F when family sizes are small and maternal genotypes are unknown (a common occurrence when sampling natural populations). Here, we present a Bayesian method implemented in the program BORICE (Bayesian Outcrossing Rate and Inbreeding Coefficient Estimation) that effectively estimates t and F when family sizes are small and maternal genotype information is lacking. BORICE should enable wider use of the Ritland approach for field-based estimates of inbreeding depression. As proof of concept, we estimate t and F in a natural population of Mimulus guttatus. In addition, we describe how individual maternal inbreeding histories inferred by BORICE may prove useful in studies of inbreeding and its consequences.
机译:种群异交率(t)和成年近交系数(F)是交配系统进化的关键参数。给定t和F的情况下,野外近亲抑郁的程度可以通过的方法来估计。对于给定的总样本量,对t和F进行联合估计的最佳设计需要对大量家庭(100-400)进行抽样,每个家庭的后代(1-4)较少。不幸的是,当家庭规模较小且孕产妇基因型未知时(当对自然种群进行抽样时,这种情况很常见),标准推论程序(MLTR)得出的t和F估计值有明显偏差。在这里,我们提出一种在程序BORICE(贝叶斯异种交配率和近交系数估计)中实现的贝叶斯方法,当家庭规模较小且缺少母本基因型信息时,该方法可以有效地估计t和F。 BORICE应该使Ritland方法能够更广泛地用于基于野外的近交抑郁评估。作为概念的证明,我们估计自然产的Mimulus guttatus中的t和F。此外,我们描述了由BORICE推断出的单个母亲近交史在证明近交及其后果方面如何有用。

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