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Multifactor Dimensionality Reduction as a Filter-Based Approach for Genome Wide Association Studies

机译:多因素降维作为基于过滤器的全基因组关联研究方法

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摘要

Advances in genotyping technology and the multitude of genetic data available now provide a vast amount of data that is proving to be useful in the quest for a better understanding of human genetic diseases through the study of genetic variation. This has led to the development of approaches such as genome wide association studies (GWAS) designed specifically for interrogating variants across the genome for association with disease, typically by testing single locus, univariate associations. More recently it has been accepted that epistatic (interaction) effects may also be great contributors to these genetic effects, and GWAS methods are now being applied to find epistatic effects. The challenge for these methods still remain in prioritization and interpretation of results, as it has also become standard for initial findings to be independently investigated in replication cohorts or functional studies. This is motivating the development and implementation of filter-based approaches to prioritize variants found to be significant in a discovery stage for follow-up for replication. Such filters must be able to detect both univariate and interactive effects. In the current study we present and evaluate the use of multifactor dimensionality reduction (MDR) as such a filter, with simulated data and a wide range of effect sizes. Additionally, we compare the performance of the MDR filter to a similar filter approach using logistic regression (LR), the more traditional approach used in GWAS analysis, as well as evaporative cooling (EC)-another prominent machine learning filtering method. The results of our simulation study show that MDR is an effective method for such prioritization, and that it can detect main effects, and interactions with or without marginal effects. Importantly, it performed as well as EC and LR for main effect models. It also significantly outperforms LR for various two-locus epistatic models, while it has equivalent results as EC for the epistatic models. The results of this study demonstrate the potential of MDR as a filter to detect gene–gene interactions in GWAS studies.
机译:基因分型技术的进步和可用的大量遗传数据现在提供了大量数据,这些数据被证明有助于通过研究遗传变异来更好地了解人类遗传疾病。这导致了诸如基因组范围关联研究(GWAS)之类的方法的发展,该方法专门设计用于通过检查单个基因座,单变量关联来询问整个基因组中的变异与疾病的关联。最近,人们已经认识到上位性(相互作用)效应也可能是这些遗传效应的重要贡献者,而GWAS方法现在正被用于寻找上位性效应。这些方法所面临的挑战仍然在于确定结果的优先级和解释,因为它已成为在复制队列或功能研究中独立调查初始发现的标准。这激励了基于过滤器的方法的开发和实施,以对在发现阶段进行复制的重要发现的变体进行优先级排序。这样的过滤器必须能够检测单变量和交互效应。在当前的研究中,我们提出并评估了多因素降维(MDR)作为这种滤波器的使用,它具有模拟数据和多种效果大小。此外,我们将MDR过滤器的性能与使用Logistic回归(LR)(GWAS分析中使用的更传统方法)以及蒸发冷却(EC)(另一种著名的机器学习过滤方法)的类似过滤器方法进行了比较。我们的模拟研究结果表明,MDR是进行此类优先级排序的有效方法,并且可以检测主要影响以及存在或不存在边际影响的相互作用。重要的是,它在主要效果模型上的表现与EC和LR一样。对于各种两基因座上位模型,它也明显优于LR,而上位模型的结果与EC相当。这项研究的结果证明了MDR作为GWAS研究中检测基因与基因相互作用的过滤器的潜力。

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