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Model-Based Multifactor Dimensionality Reduction to detect epistasis for quantitative traits in the presence of error-free and noisy data

机译:基于模型的多因素降维可在无误差和高噪声数据的情况下检测定量特征的上位性

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摘要

Detecting gene-gene interactions or epistasis in studies of human complex diseases is a big challenge in the area of epidemiology. To address this problem, several methods have been developed, mainly in the context of data dimensionality reduction. One of these methods, Model-Based Multifactor Dimensionality Reduction, has so far mainly been applied to case-control studies. In this study, we evaluate the power of Model-Based Multifactor Dimensionality Reduction for quantitative traits to detect gene-gene interactions (epistasis) in the presence of error-free and noisy data. Considered sources of error are genotyping errors, missing genotypes, phenotypic mixtures and genetic heterogeneity. Our simulation study encompasses a variety of settings with varying minor allele frequencies and genetic variance for different epistasis models. On each simulated data, we have performed Model-Based Multifactor Dimensionality Reduction in two ways: with and without adjustment for main effects of (known) functional SNPs. In line with binary trait counterparts, our simulations show that the power is lowest in the presence of phenotypic mixtures or genetic heterogeneity compared to scenarios with missing genotypes or genotyping errors. In addition, empirical power estimates reduce even further with main effects corrections, but at the same time, false-positive percentages are reduced as well. In conclusion, phenotypic mixtures and genetic heterogeneity remain challenging for epistasis detection, and careful thought must be given to the way important lower-order effects are accounted for in the analysis.
机译:在人类复杂疾病的研究中,检测基因与基因的相互作用或上位性是流行病学领域的一大挑战。为了解决这个问题,已经开发了几种方法,主要是在降低数据维数的背景下。到目前为止,这些方法之一是基于模型的多维度降维,主要应用于案例对照研究。在这项研究中,我们评估了基于模型的多因素降维对定量性状在无错误和嘈杂数据存在下检测基因-基因相互作用(表位)的能力。认为错误的来源是基因分型错误,基因型缺失,表型混合和遗传异质性。我们的模拟研究包含各种设置,这些设置具有不同的等位基因频率和不同上位性模型的遗传变异。在每个模拟数据上,我们以两种方式执行了基于模型的多维度降维:(针对和不针对(已知)功能性SNP的主要影响进行调整)。与二元性状对应物一致,我们的模拟表明,与缺少基因型或基因分型错误的情况相比,在存在表型混合物或遗传异质性的情况下,功效最低。此外,通过校正主效应,经验功效估计值会进一步降低,但同时,假阳性率也会降低。总之,表型混合物和遗传异质性仍然对上位性检测具有挑战性,必须认真考虑在分析中考虑到重要的低阶效应的方式。

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