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全基因组关联研究中的下一代建模:比较不同的遗传结构

Next generation modeling in GWAS: comparing different genetic architectures.

作者信息

López de Maturana Evangelina, Ibáñez-Escriche Noelia, González-Recio Óscar, Marenne Gaëlle, Mehrban Hossein, Chanock Stephen J, Goddard Michael E, Malats Núria

机构信息

Genetic and Molecular Epidemiology Group, Spanish National Cancer Research Centre (CNIO), C/MelchorFernándezAlmagro, 3, 28029, Madrid, Spain,

出版信息

Hum Genet. 2014 Oct;133(10):1235-53. doi: 10.1007/s00439-014-1461-1. Epub 2014 Jun 17.

Abstract

The continuous advancement in genotyping technology has not been accompanied by the application of innovative statistical methods, such as multi-marker methods (MMM), to unravel genetic associations with complex traits. Although the performance of MMM has been widely explored in a prediction context, little is known on their behavior in the quantitative trait loci (QTL) detection under complex genetic architectures. We shed light on this still open question by applying Bayes A (BA) and Bayesian LASSO (BL) to simulated and real data. Both methods were compared to the single marker regression (SMR). Simulated data were generated in the context of six scenarios differing on effect size, minor allele frequency (MAF) and linkage disequilibrium (LD) between QTLs. These were based on real SNP genotypes in chromosome 21 from the Spanish Bladder Cancer Study. We show how the genetic architecture dramatically affects the behavior of the methods in terms of power, type I error and accuracy of estimates. Markers with high MAF are easier to detect by all methods, especially if they have a large effect on the phenotypic trait. A high LD between QTLs with either large or small effects differently affects the power of the methods: it impairs QTL detection with BA, irrespectively of the effect size, although boosts that of small effects with BL and SMR. We demonstrate the convenience of applying MMM rather than SMR because of their larger power and smaller type I error. Results from real data when applying MMM suggest novel associations not detected by SMR.

摘要

基因分型技术的不断进步并未伴随着创新统计方法(如多标记方法(MMM))的应用,以揭示与复杂性状的遗传关联。尽管MMM的性能已在预测背景下得到广泛探索,但对于它们在复杂遗传结构下的数量性状位点(QTL)检测中的表现却知之甚少。我们通过将贝叶斯A(BA)和贝叶斯套索(BL)应用于模拟数据和真实数据,阐明了这个仍然悬而未决的问题。将这两种方法与单标记回归(SMR)进行了比较。模拟数据是在六种情景下生成的,这些情景在效应大小、次要等位基因频率(MAF)和QTL之间的连锁不平衡(LD)方面存在差异。这些情景基于西班牙膀胱癌研究中21号染色体的真实SNP基因型。我们展示了遗传结构如何在检测功效、I型错误和估计准确性方面显著影响这些方法的表现。所有方法都更容易检测到具有高MAF的标记,特别是如果它们对表型性状有很大影响。具有大或小效应的QTL之间的高LD对这些方法的功效有不同影响:它会损害BA的QTL检测,无论效应大小如何,尽管它会提高BL和SMR对小效应的检测功效。我们证明了应用MMM而非SMR的便利性,因为它们具有更大的功效和更小的I型错误。应用MMM时的真实数据结果表明存在SMR未检测到的新关联。

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