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首页> 外文期刊>Genetics: A Periodical Record of Investigations Bearing on Heredity and Variation >Selecting Informative Traits for Multivariate Quantitative Trait Locus Mapping Helps to Gain Optimal Power
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Selecting Informative Traits for Multivariate Quantitative Trait Locus Mapping Helps to Gain Optimal Power

机译:为多元定量性状基因座图谱选择信息性状有助于获得最佳功效

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摘要

A major consideration in multitrait analysis is which traits should be jointly analyzed. As a common strategy, multitrait analysis is performed either on pairs of traits or on all of traits. To fully exploit the power of multitrait analysis, we propose variable selection to choose a subset of informative traits for multitrait quantitative trait locus (QTL) mapping. The proposed method is very useful for achieving optimal statistical power for QTL identification and for disclosing the most relevant traits. It is also a practical strategy to effectively take advantage of multitrait analysis when the number of traits under consideration is too large, making the usual multivariate analysis of all traits challenging. We study the impact of selection bias and the usage of permutation tests in the context of variable selection and develop a powerful implementation procedure of variable selection for genome scanning. We demonstrate the proposed method and selection procedure in a backcross population, using both simulated and real data. The extension to other experimental mapping populations is straightforward.
机译:多性状分析的主要考虑因素是应该共同分析哪些性状。作为一种常见策略,可以对成对的特征或所有特征进行多特征分析。为了充分利用多性状分析的功能,我们提出了变量选择方法,以选择信息性状的子集,以进行多性状定量性状基因座(QTL)定位。所提出的方法对于获得用于QTL鉴定和揭示最相关特征的最佳统计能力非常有用。当所考虑的性状数量过多时,有效利用多性状分析也是一种实用的策略,这使得通常对所有性状进行多变量分析具有挑战性。我们研究了变量选择的背景下选择偏见和置换测试的使用的影响,并开发了一个强大的实现基因组扫描的变量选择程序。我们使用模拟数据和实际数据演示了回交种群中的拟议方法和选择程序。扩展到其他实验制图种群很简单。

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