[Functional linear models for region-based association analysis].

Genetika Pub Date : 2016-10-01
G R Svishcheva, N M Belonogova, T I Axenovich
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引用次数: 0

Abstract

Regional association analysis is one of the most powerful tools for gene mapping because instead analysis of individual variants it simultaneously considers all variants in the region. Recent development of the models for regional association analysis involves functional data analysis approach. In the framework of this approach, genotypes of variants within region as well as their effects are described by continuous functions. Such approach allows us to use information about both linkage and linkage disequilibrium and reduce the influence of noise and/or observation errors. Here we define a functional linear mixed model to test association on independent and structured samples. We demonstrate how to test fixed and random effects of a set of genetic variants in the region on quantitative trait. Estimation of statistical properties of new methods shows that type I errors are in accordance with declared values and power is high especially for models with fixed effects of genotypes. We suppose that new functional regression linear models facilitate identification of rare genetic variants controlling complex human and animal traits. New methods are implemented in computer software FREGAT which is available for free download at http://mga.bionet.nsc.ru/soft/FREGAT/.

[基于区域关联分析的功能线性模型]。
区域关联分析是基因定位最强大的工具之一,因为它同时考虑了该区域的所有变异,而不是单个变异的分析。区域关联分析模型的最新发展涉及功能数据分析方法。在该方法的框架内,变异的基因型及其影响用连续函数来描述。这种方法允许我们同时使用有关联动和联动不平衡的信息,并减少噪声和/或观测误差的影响。在这里,我们定义了一个功能线性混合模型来测试独立和结构化样本的关联。我们演示了如何测试区域内一组遗传变异对数量性状的固定和随机效应。对新方法统计特性的估计表明,I型误差与声明值一致,特别是对于具有固定基因型效应的模型,功率很高。我们认为新的功能回归线性模型有助于识别控制复杂人类和动物特征的罕见遗传变异。新的方法是在计算机软件FREGAT中实现的,该软件可在http://mga.bionet.nsc.ru/soft/FREGAT/上免费下载。
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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