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Power and false-positive rates for the restricted partition method (RPM) in a large candidate gene data set

机译:大型候选基因数据集中的受限分配方法(RPM)的功效和假阳性率

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摘要

Many phenotypes of public health importance (e.g., diabetes, coronary artery disease, major depression, obesity, and addictions to alcohol and nicotine) involve complex pathways of action. Interactions between genetic variants or between genetic variants and environmental factors likely play important roles in the functioning of these pathways. Unfortunately, complex interacting systems are likely to have important interacting factors that may not readily reveal themselves to univariate analyses. Instead, detecting the role of some of these factors may require analyses that are sensitive to interaction effects.In this study, we evaluate the sensitivity and specificity of the restricted partition method (RPM) to detect signals related to coronary artery disease in the Genetic Analysis Workshop 16 Problem 3 data using the 50,000 k candidate gene single-nucleotide polymorphism set. Power and false-positive rates were evaluated using the first 100 replicate datasets. This included an exploration of the utility of using of all genotyped family members compared with selecting one member per family.
机译:许多对公共卫生具有重要意义的表型(例如,糖尿病,冠状动脉疾病,严重抑郁,肥胖以及对酒精和尼古丁成瘾)涉及复杂的作用途径。遗传变异之间或遗传变异与环境因素之间的相互作用可能在这些途径的功能中起重要作用。不幸的是,复杂的交互系统可能具有重要的交互因素,这些因素可能无法轻易通过单变量分析揭示出来。相反,要检测其中一些因素的作用可能需要对相互作用的影响敏感的分析。在本研究中,我们评估了遗传分析中限制性分区法(RPM)在检测与冠心病相关的信号时的敏感性和特异性。讲习班16使用50,000 k候选基因单核苷酸多态性集的问题3数据。使用前100个重复数据集评估功效和假阳性率。这包括探索与使用每个基因型家庭成员相比每个家庭选择一个成员的效用。

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