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Information-theoretic metrics for visualizing gene-environment interactions

机译:可视化基因与环境相互作用的信息理论指标

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The purpose of our work was to develop heuristics for visualizing and interpreting gene-environment interactions (GEIs) and to assess the dependence of candidate visualization metrics on biological and study-design factors. Two information-theoretic metrics, the k-way interaction information (KWII) and the total correlation information (TCI), were investigated. The effectiveness of the KWII and TCI to detect GEIs in a diverse range of simulated data sets and a Crohn disease data set was assessed. The sensitivity of the KWII and TCI spectra to biological and study-design variables was determined. Head-to-head comparisons with the relevance-chain, multifactor dimensionality reduction, and the pedigree disequilibrium test (PDT) methods were obtained. The KWII and TCI spectra, which are graphical summaries of the KWII and TCI for each subset of environmental and genotype variables, were found to detect each known GEI in the simulated data sets. The patterns in the KWII and TCI spectra were informative for factors such as case-control misassignment, locus heterogeneity, allele frequencies, and linkage disequilibrium. The KWII and TCI spectra were found to have excellent sensitivity for identifying the key disease-associated genetic variations in the Crohn disease data set. In head-to-head comparisons with the relevance-chain, multifactor dimensionality reduction, and PDT methods, the results from visual interpretation of the KWII and TCI spectra performed satisfactorily. The KWII and TCI are promising metrics for visualizing GEIs. They are capable of detecting interactions among numerous single-nucleotide polymorphisms and environmental variables for a diverse range of GEI models.
机译:我们的工作目的是开发启发式方法,以可视化和解释基因与环境的相互作用(GEI),并评估候选可视化指标对生物学和研究设计因素的依赖性。研究了两种信息理论指标,即k双向相互作用信息(KWII)和总相关信息(TCI)。评估了KWII和TCI在各种模拟数据集和克罗恩病数据集中检测GEI的有效性。确定了KWII和TCI光谱对生物学和研究设计变量的敏感性。获得了与相关链,多因素维数减少和谱系不平衡检验(PDT)方法的直接对比。发现KWII和TCI谱是环境和基因型变量的每个子集的KWII和TCI的图形摘要,可以检测模拟数据集中的每个已知GEI。 KWII和TCI光谱中的模式可提供多种信息,例如病例控制失误,基因座异质性,等位基因频率和连锁不平衡。发现KWII和TCI光谱对于识别克罗恩病数据集中与疾病相关的关键遗传变异具有极好的敏感性。在与相关链,多因素降维和PDT方法进行的正面对比中,通过KWII和TCI光谱的视觉解释得出的结果令人满意。 KWII和TCI是用于可视化GEI的有希望的指标。它们能够检测多种GEI模型的众多单核苷酸多态性与环境变量之间的相互作用。

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