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A novel survival multifactor dimensionality reduction method for detecting gene–gene interactions with application to bladder cancer prognosis

机译:一种新颖的生存多因素降维方法,用于检测基因与基因的相互作用并应用于膀胱癌的预后

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The widespread use of high-throughput methods of single nucleotide polymorphism (SNP) genotyping has created a number of computational and statistical challenges. The problem of identifying SNP–SNP interactions in case–control studies has been studied extensively, and a number of new techniques have been developed. Little progress has been made, however, in the analysis of SNP–SNP interactions in relation to time-to-event data, such as patient survival time or time to cancer relapse. We present an extension of the two class multifactor dimensionality reduction (MDR) algorithm that enables detection and characterization of epistatic SNP–SNP interactions in the context of survival analysis. The proposed Survival MDR (Surv-MDR) method handles survival data by modifying MDR’s constructive induction algorithm to use the log-rank test. Surv-MDR replaces balanced accuracy with log-rank test statistics as the score to determine the best models. We simulated datasets with a survival outcome related to two loci in the absence of any marginal effects. We compared Surv-MDR with Cox-regression for their ability to identify the true predictive loci in these simulated data. We also used this simulation to construct the empirical distribution of Surv-MDR’s testing score. We then applied Surv-MDR to genetic data from a population-based epidemiologic study to find prognostic markers of survival time following a bladder cancer diagnosis. We identified several two-loci SNP combinations that have strong associations with patients’ survival outcome. Surv-MDR is capable of detecting interaction models with weak main effects. These epistatic models tend to be dropped by traditional Cox regression approaches to evaluating interactions. With improved efficiency to handle genome wide datasets, Surv-MDR will play an important role in a research strategy that embraces the complexity of the genotype–phenotype mapping relationship since epistatic interactions are an important component of the genetic basis of disease.
机译:高通量单核苷酸多态性(SNP)基因分型方法的广泛使用已经带来了许多计算和统计挑战。在病例对照研究中识别SNP–SNP相互作用的问题已得到广泛研究,并且已经开发了许多新技术。然而,在与事件数据相关的SNP-SNP相互作用的分析方面,进展甚微,例如患者生存时间或癌症复发时间。我们提出了两类多因素降维(MDR)算法的扩展,该算法可以在生存分析的背景下检测和表征上位SNP–SNP相互作用。拟议的生存MDR(Surv-MDR)方法通过修改MDR的构造归纳算法以使用对数秩检验来处理生存数据。 Surv-MDR用对数秩检验统计量作为得分来确定最佳模型,从而取代了平衡的准确性。我们在没有任何边际效应的情况下模拟了具有与两个基因座相关的生存结果的数据集。我们比较了Surv-MDR和Cox回归在这些模拟数据中识别真实预测基因座的能力。我们还使用此模拟来构建Surv-MDR的测试成绩的经验分布。然后,我们将Surv-MDR应用于基于人群的流行病学研究的遗传数据,以发现膀胱癌诊断后生存时间的预后指标。我们确定了几种两位SNP组合,这些组合与患者的生存结局密切相关。 Surv-MDR能够检测主要影响较弱的交互模型。这些上位的模型往往会被传统的Cox回归方法用来评估交互作用而放弃。由于提高了处理全基因组数据集的效率,Surv-MDR将在涵盖基因型-表型作图关系的复杂性的研究策略中扮演重要角色,因为上位相互作用是疾病遗传基础的重要组成部分。

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