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首页> 外文期刊>Journal of Computational Biology >Inference of Population Structure Using Genetic Markers and a Bayesian Model Averaging Approach for Clustering
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Inference of Population Structure Using Genetic Markers and a Bayesian Model Averaging Approach for Clustering

机译:利用遗传标记和贝叶斯模型平均法进行人口结构推断

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摘要

The analysis of the structure of populations on the basis of genetic data is essential in population genetics. It is used, for instance, to study the evolution of species or to correct for population stratification in association studies. These genetic data, normally based on DNA polymorphisms, may contain irrelevant information that biases the inference of population structure. In this paper we adapt a recently proposed algorithm, named multistart EMA, to be used in the inference of population structure. This algorithm is able to deal with irrelevant information when obtaining the (probabilistic) population partition. Additionally, we present a maker selection test able to obtain the most relevant markers to retrieve that population partition. The proposed algorithm is compared with the widely used STRUCTURE software on the basis of the FST metric and the log-likelihood score. It is shown that the proposed algorithm improves the obtention of the population structure. Moreover, information about relevant markers obtained by the multi-start EMA can be used to improve the results obtained by other methods, correct for population stratification or even also reduce the economical cost of sequencing new samples. The software presented in this paper is available online at http://www.sc.ehu.es/ccwbayes/members/guzman.
机译:在遗传数据的基础上对种群结构进行分析对种群遗传学至关重要。例如,它用于研究物种的进化或校正关联研究中的种群分层。这些通常基于DNA多态性的遗传数据可能包含不相关的信息,这些信息会影响种群结构的推断。在本文中,我们采用了最近提出的算法,即多启动EMA,用于推断总体结构。当获得(概率)总体划分时,该算法能够处理不相关的信息。此外,我们提出了一种制造商选择测试,该测试能够获得最相关的标记来检索该人群划分。在FST度量和对数似然分数的基础上,将所提出的算法与广泛使用的STRUCTURE软件进行比较。结果表明,该算法提高了人口结构的获得性。此外,有关通过多次启动EMA获得的相关标志物的信息可用于改善通过其他方法获得的结果,校正群体分层,甚至还可以减少测序新样品的经济成本。本文介绍的软件可从http://www.sc.ehu.es/ccwbayes/members/guzman在线获得。

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