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An Analytic Approach Using Candidate Gene Selection and Logic Forest to Identify Gene by Environment Interactions (G × E) for Systemic Lupus Erythematosus in African Americans

机译:利用候选基因选择和逻辑森林鉴定基因的分析方法鉴定基因的环境相互作用(G×e)非洲裔美国人类红斑狼疮

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Development and progression of many human diseases, such as systemic lupus erythematosus (SLE), are hypothesized to result from interactions between genetic and environmental factors. Current approaches to identify and evaluate interactions are limited, most often focusing on main effects and two-way interactions. While higher order interactions associated with disease are documented, they are difficult to detect since expanding the search space to all possible interactions of p predictors means evaluating 2 p ? 1 terms. For example, data with 150 candidate predictors requires considering over 10 45 main effects and interactions. In this study, we present an analytical approach involving selection of candidate single nucleotide polymorphisms (SNPs) and environmental and/or clinical factors and use of Logic Forest to identify predictors of disease, including higher order interactions, followed by confirmation of the association between those predictors and interactions identified with disease outcome using logistic regression. We applied this approach to a study investigating whether smoking and/or secondhand smoke exposure interacts with candidate SNPs resulting in elevated risk of SLE. The approach identified both genetic and environmental risk factors, with evidence suggesting potential interactions between exposure to secondhand smoke as a child and genetic variation in the ITGAM gene associated with increased risk of SLE.
机译:许多人类疾病的开发和进展,如全身狼疮红斑(SLE),被假设是由遗传和环境因素之间的相互作用导致。目前识别和评估交互的方法是有限的,最常关注主要效果和双向相互作用。虽然记录了与疾病相关的更高阶相互作用,但由于将搜索空间扩展到P预测器的所有可能的相互作用,因此难以检测它们,而是评估2 p的所有可能的相互作用。 1术语。例如,具有150个候选预测器的数据需要考虑超过10 45个主要效果和交互。在这项研究中,我们提出了一种涉及选择候选单一核苷酸多态性(SNP)和环境和/或临床因素以及逻辑森林的分析方法,以确定疾病预测因子,包括更高的秩序相互作用,然后确认这些之间的疾病利用逻辑回归用疾病结果鉴定的预测因子和相互作用。我们将这种方法应用于调查吸烟和/或二手烟暴露的研究与候选SNP相互作用,导致SLE的升高。该方法确定了遗传和环境风险因素,有证据表明在与流苏风险增加相关的ITGAM基因的儿童和遗传变异时,有证据表明暴露于二手烟雾之间的潜在相互作用。

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