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Random forest fishing: A novel approach to identifying organic group of risk factors in genome-wide association studies

机译:随机森林捕鱼:一种在全基因组关联研究中识别危险因素有机组的新颖方法

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摘要

Genome-wide association studies (GWAS) has brought methodological challenges in handling massive high-dimensional data and also real opportunities for studying the joint effect of many risk factors acting in concert as an organic group. The random forest (RF) methodology is recognized by many for its potential in examining interaction effects in large data sets. However, RF is not designed to directly handle GWAS data, which typically have hundreds of thousands of single-nucleotide polymorphisms as predictor variables. We propose and evaluate a novel extension of RF, called random forest fishing (RFF), for GWAS analysis. RFF repeatedly updates a relatively small set of predictors obtained by RF tests to find globally important groups predictive of the disease phenotype, using a novel search algorithm based on genetic programming and simulated annealing. A key improvement of RFF results from the use of guidance incorporating empirical test results of genome-wide pairwise interactions. Evaluated using simulated and real GWAS data sets, RFF is shown to be effective in identifying important predictors, particularly when both marginal effects and interactions exist, and is applicable to very large GWAS data sets.
机译:全基因组关联研究(GWAS)给处理大量高维数据带来了方法上的挑战,也为研究作为一个有机团体共同发挥作用的许多风险因素的联合效应带来了真正的机遇。许多人都认可随机森林(RF)方法在检查大型数据集中的交互作用方面的潜力。但是,RF并非旨在直接处理GWAS数据,而GWAS数据通常具有成千上万的单核苷酸多态性作为预测变量。我们提出并评估了RF的一种新型扩展,称为GWAS分析,用于随机森林捕捞(RFF)。 RFF使用基于基因编程和模拟退火的新颖搜索算法,反复更新通过RF测试获得的相对较小的一组预测因子,以找到可预测该疾病表型的全球重要人群。 RFF的关键改进来自使用指南,该指南结合了全基因组成对相互作用的经验测试结果。使用模拟的和实际的GWAS数据集进行评估,RFF被证明可以有效地识别重要的预测因素,尤其是当边际效应和相互作用同时存在时,并且适用于非常大的GWAS数据集。

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