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Grid-based stochastic search for hierarchical gene-gene interactions in population-based genetic studies of common human diseases

机译:基于网格的随机搜索用于基于种群的常见人类疾病遗传研究中的分层基因-基因相互作用

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摘要

BackgroundLarge-scale genetic studies of common human diseases have focused almost exclusively on the independent main effects of single-nucleotide polymorphisms (SNPs) on disease susceptibility. These studies have had some success, but much of the genetic architecture of common disease remains unexplained. Attention is now turning to detecting SNPs that impact disease susceptibility in the context of other genetic factors and environmental exposures. These context-dependent genetic effects can manifest themselves as non-additive interactions, which are more challenging to model using parametric statistical approaches. The dimensionality that results from a multitude of genotype combinations, which results from considering many SNPs simultaneously, renders these approaches underpowered. We previously developed the multifactor dimensionality reduction (MDR) approach as a nonparametric and genetic model-free machine learning alternative. Approaches such as MDR can improve the power to detect gene-gene interactions but are limited in their ability to exhaustively consider SNP combinations in genome-wide association studies (GWAS), due to the combinatorial explosion of the search space. We introduce here a stochastic search algorithm called Crush for the application of MDR to modeling high-order gene-gene interactions in genome-wide data. The Crush-MDR approach uses expert knowledge to guide probabilistic searches within a framework that capitalizes on the use of biological knowledge to filter gene sets prior to analysis. Here we evaluated the ability of Crush-MDR to detect hierarchical sets of interacting SNPs using a biology-based simulation strategy that assumes non-additive interactions within genes and additivity in genetic effects between sets of genes within a biochemical pathway.
机译:背景常见人类疾病的大规模遗传研究几乎完全集中在单核苷酸多态性(SNP)对疾病易感性的独立主要作用上。这些研究已经取得了一些成功,但是许多常见疾病的遗传结构仍无法解释。现在,注意力转向在其他遗传因素和环境暴露的情况下检测影响疾病易感性的SNP。这些依赖于上下文的遗传效应可以表现为非加性相互作用,这对于使用参数统计方法进行建模更具挑战性。由于同时考虑多个SNP而导致的多种基因型组合所产生的维数,使这些方法的功能不足。我们之前开发了多因素降维(MDR)方法,将其作为一种非参数且无遗传模型的机器学习替代方法。诸如MDR之类的方法可以提高检测基因与基因相互作用的能力,但是由于搜索空间的组合爆炸,它们无法在全基因组关联研究(GWAS)中详尽地考虑SNP组合的能力。我们在这里介绍一种称为Crush的随机搜索算法,用于将MDR应用到全基因组数据中的高阶基因-基因相互作用建模。 Crush-MDR方法使用专家知识来指导框架内的概率搜索,该框架利用生物学知识的利用来在分析之前过滤基因集。在这里,我们评估了Crush-MDR使用基于生物学的模拟策略检测相互作用SNP的层次集的能力,该策略假定基因内的非累加相互作用以及生化途径中各组基因之间遗传效应的可加性。

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