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逐步上位遗传模型选择的真阳性和假阳性检测率评估,作为样本量和标记数量的函数。

An assessment of true and false positive detection rates of stepwise epistatic model selection as a function of sample size and number of markers.

机构信息

Department of Statistics, University of Illinois at Urbana-Champaign, Urbana, IL, 61801, USA.

Beckman Institute for Advanced Science and Technology, University of Illinois at Urbana-Champaign, Urbana, IL, 61801, USA.

出版信息

Heredity (Edinb). 2019 May;122(5):660-671. doi: 10.1038/s41437-018-0162-2. Epub 2018 Nov 15.

Abstract

Association studies have been successful at identifying genomic regions associated with important traits, but routinely employ models that only consider the additive contribution of an individual marker. Because quantitative trait variability typically arises from multiple additive and non-additive sources, utilization of statistical approaches that include main and two-way interaction marker effects of several loci in one model could lead to unprecedented characterization of these sources. Here we examine the ability of one such approach, called the Stepwise Procedure for constructing an Additive and Epistatic Multi-Locus model (SPAEML), to detect additive and epistatic signals simulated using maize and human marker data. Our results revealed that SPAEML was capable of detecting quantitative trait nucleotides (QTNs) at sample sizes as low as n = 300 and consistently specifying signals as additive and epistatic for larger sizes. Sample size and minor allele frequency had a major influence on SPAEML's ability to distinguish between additive and epistatic signals, while the number of markers tested did not. We conclude that SPAEML is a useful approach for providing further elucidation of the additive and epistatic sources contributing to trait variability when applied to a small subset of genome-wide markers located within specific genomic regions identified using a priori analyses.

摘要

关联研究成功地确定了与重要特征相关的基因组区域,但通常采用的模型只考虑单个标记的加性贡献。由于数量性状的变异性通常来自多个加性和非加性来源,因此利用包括多个位点的主效和双向互作标记效应的统计方法,在一个模型中进行统计分析,可以前所未有地对这些来源进行描述。在这里,我们检验了一种称为逐步构建加性和上位性多基因座模型(SPAEML)的方法的能力,该方法可用于检测使用玉米和人类标记数据模拟的加性和上位性信号。我们的结果表明,SPAEML 能够在样本量低至 n = 300 的情况下检测到数量性状核苷酸(QTN),并且对于较大的样本量,始终能够将信号指定为加性和上位性。样本量和次要等位基因频率对 SPAEML 区分加性和上位性信号的能力有很大影响,而测试的标记数量没有影响。我们得出结论,当应用于使用先验分析确定的特定基因组区域内的一小部分全基因组标记时,SPAEML 是一种有用的方法,可以进一步阐明导致性状变异性的加性和上位性来源。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a863/6462028/479db6cfa613/41437_2018_162_Fig1_HTML.jpg

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