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Empirical Bayesian elastic net for multiple quantitative trait locus mapping

机译:多重数量性状基因座定位的经验贝叶斯弹性网

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摘要

In multiple quantitative trait locus (QTL) mapping, a high-dimensional sparse regression model is usually employed to account for possible multiple linked QTLs. The QTL model may include closely linked and thus highly correlated genetic markers, especially when high-density marker maps are used in QTL mapping because of the advancement in sequencing technology. Although existing algorithms, such as Lasso, empirical Bayesian Lasso (EBlasso) and elastic net (EN) are available to infer such QTL models, more powerful methods are highly desirable to detect more QTLs in the presence of correlated QTLs. We developed a novel empirical Bayesian EN (EBEN) algorithm for multiple QTL mapping that inherits the efficiency of our previously developed EBlasso algorithm. Simulation results demonstrated that EBEN provided higher power of detection and almost the same false discovery rate compared with EN and EBlasso. Particularly, EBEN can identify correlated QTLs that the other two algorithms may fail to identify. When analyzing a real dataset, EBEN detected more effects than EN and EBlasso. EBEN provides a useful tool for inferring high-dimensional sparse model in multiple QTL mapping and other applications. An R software package ‘EBEN' implementing the EBEN algorithm is available on the Comprehensive R Archive Network (CRAN).
机译:在多个数量性状基因座(QTL)映射中,通常使用高维稀疏回归模型来说明可能存在的多个链接的QTL。 QTL模型可能包含紧密链接的遗传标记,因此具有高度相关性,尤其是由于测序技术的进步,在QTL映射中使用高密度标记图时。尽管现有的算法(例如套索,经验贝叶斯套索(EBlasso)和弹性网(EN))可用于推断此类QTL模型,但在存在相关QTL的情况下,更需要更强大的方法来检测更多QTL。我们针对多个QTL映射开发了一种新颖的经验贝叶斯EN(EBEN)算法,该算法继承了我们先前开发的EBlasso算法的效率。仿真结果表明,与EN和EBlasso相比,EBEN具有更高的检测能力和几乎相同的错误发现率。特别是,EBEN可以识别其他两种算法可能无法识别的相关QTL。在分析真实数据集时,EBEN比EN和EBlasso检测到更多的影响。 EBEN提供了一个有用的工具,可以在多个QTL映射和其他应用程序中推断高维稀疏模型。在综合R归档网络(CRAN)上提供了实现EBEN算法的R软件包“ EBEN”。

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