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Prioritizing Individual Genetic Variants After Kernel Machine Testing Using Variable Selection

机译:使用变量选择对​​内核机器测试后的单个遗传变异进行优先排序

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摘要

Kernel machine learning methods, such as the SNP-set kernel association test (SKAT), have been widely used to test associations between traits and genetic polymorphisms. In contrast to traditional single-SNP analysis methods, these methods are designed to examine the joint effect of a set of related SNPs (such as a group of SNPs within a gene or a pathway) and are able to identify sets of SNPs that are associated with the trait of interest. However, as with many multi-SNP testing approaches, kernel machine testing can draw conclusion only at the SNP-set level, and do not directly inform on which one(s) of the identified SNP set is actually driving the associations. A recently proposed procedure, KerNel Iterative Feature Extraction (KNIFE), provides a general framework for incorporating variable selection into kernel machine methods. In this article, we focus on quantitative traits and relatively common SNPs, and adapt the KNIFE procedure to genetic association studies and propose an approach to identify driver SNPs after the application of SKAT to gene set analysis. Our approach accommodates several kernels that are widely used in SNP analysis, such as the linear kernel and the Identity By State (IBS) kernel. The proposed approach provides practically useful utilities to prioritize SNPs, and fills the gap between SNP set analysis and biological functional studies. Both simulation studies and real data application are used to demonstrate the proposed approach.
机译:诸如SNP-set内核关联测试(SKAT)之类的内核机器学习方法已被广泛用于测试性状与遗传多态性之间的关联。与传统的单SNP分析方法相比,这些方法旨在检查一组相关SNP(例如基因或途径中的一组SNP)的联合效应,并能够识别出相关的SNP组具有兴趣的特征。但是,与许多多SNP测试方法一样,内核机器测试只能在SNP集级别上得出结论,而不能直接告知所标识的SNP集中的哪一个实际上在驱动关联。最近提出的过程KerNel迭代特征提取(KNIFE)提供了将变量选择合并到内核机器方法中的通用框架。在本文中,我们将重点放在数量性状和相对常见的SNP上,并将KNIFE程序应用于遗传关联研究,并提出一种在将SKAT应用于基因集分析后识别驱动程序SNP的方法。我们的方法适用于在SNP分析中广泛使用的几个内核,例如线性内核和状态标识(IBS)内核。所提出的方法提供了对SNP进行优先级排序的实用工具,并填补了SNP集分析与生物学功能研究之间的空白。仿真研究和实际数据应用都用于证明所提出的方法。

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