A PCA-based method for ancestral informative markers selection in structured populations.

Feng Zhang, Lei Zhang, Hong-Wen Deng
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引用次数: 5

Abstract

Identification of population structure can help trace population histories and identify disease genes. Structured association (SA) is a commonly used approach for population structure identification and association mapping. A major issue with SA is that its performance greatly depends on the informativeness and the numbers of ancestral informative markers (AIMs). Present major AIM selection methods mostly require prior individual ancestry information, which is usually not available or uncertain in practice. To address this potential weakness, we herein develop a novel approach for AIM selection based on principle component analysis (PCA), which does not require prior ancestry information of study subjects. Our simulation and real genetic data analysis results suggest that, with equivalent AIMs, PCA-based selected AIMs can significantly increase the accuracy of inferred individual ancestries compared with traditionally randomly selected AIMs. Our method can easily be applied to whole genome data to select a set of highly informative AIMs in population structure, which can then be used to identify potential population structure and correct possible statistical biases caused by population stratification.

Abstract Image

Abstract Image

基于pca的结构化群体祖先信息标记选择方法。
种群结构的鉴定有助于追溯种群历史和鉴定疾病基因。结构化关联(SA)是种群结构识别和关联映射的常用方法。SA的一个主要问题是其性能在很大程度上取决于祖先信息标记(AIMs)的信息量和数量。目前主要的AIM选择方法大多需要先前的个体祖先信息,这些信息在实践中通常是不可获得或不确定的。为了解决这一潜在的弱点,我们在此开发了一种基于主成分分析(PCA)的AIM选择新方法,该方法不需要研究对象的先前祖先信息。我们的模拟和真实遗传数据分析结果表明,与传统随机选择的目标相比,在等效目标下,基于pca的选择目标可以显著提高推断个体祖先的准确性。我们的方法可以很容易地应用于全基因组数据,以选择一组高信息量的群体结构目标,然后用于识别潜在的群体结构并纠正可能由群体分层引起的统计偏差。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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