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Optimal two-stage strategy for detecting interacting genes in complex diseases

机译:检测复杂疾病中相互作用基因的最佳两阶段策略

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Background The mapping of complex diseases is one of the most important problems in human genetics today. The rapid development of technology for genetic research has led to the discovery of millions of polymorphisms across the human genome, making it possible to conduct genome-wide association studies with hundreds of thousands of markers. Given the large number of markers to be tested in such studies, a two-stage strategy may be a reasonable and powerful approach: in the first stage, a small subset of promising loci is identified using single-locus testing, and, in the second stage, multi-locus methods are used while taking into account the loci selected in the first stage. In this report, we investigate and compare two possible two-stage strategies for genome-wide association studies: a conditional approach and a simultaneous approach. Results We investigate the power of both the conditional and the simultaneous approach to detect the disease loci for a range of two-locus disease models in a case-control study design. Our results suggest that, overall, the conditional approach is more robust and more powerful than the simultaneous approach; the conditional approach can greatly outperform the simultaneous approach when one of the two disease loci has weak marginal effect, but interacts strongly with the other, stronger locus (easily detectable using single-locus methods in the first stage). Conclusion Genome-wide association studies hold the promise of finding new genes implicated in complex diseases. Two-stage strategies are likely to be employed in these large-scale studies. Therefore we compared two natural two-stage approaches: the conditional approach and the simultaneous approach. Our power studies suggest that, when doing genome-wide association studies, a two-stage conditional approach is likely to be more powerful than a two-stage simultaneous approach.
机译:背景技术复杂疾病的定位是当今人类遗传学中最重要的问题之一。遗传研究技术的飞速发展导致在人类基因组中发现了数百万种多态性,从而使利用数十万个标记进行全基因组关联研究成为可能。鉴于在此类研究中要测试的标记物数量众多,因此采用两阶段策略可能是一种合理而有效的方法:在第一阶段,使用单基因座测试确定一小部分有前途的基因座,然后在第二阶段阶段,在考虑第一阶段中选择的基因座的同时使用多基因座方法。在本报告中,我们调查并比较了两种可能的全基因组关联研究的两阶段策略:条件方法和同时方法。结果我们研究了病例对照研究设计中针对一系列两地点疾病模型的疾病位点检测的条件和同时方法的功效。我们的结果表明,总的来说,条件方法比同步方法更健壮,更强大。当两个疾病位点之一的边缘效应较弱,但与另一个较强位点(在第一阶段使用单位点方法即可轻易检测到)相互作用时,条件方法可以大大优于同时方法。结论全基因组关联研究有望找到与复杂疾病有关的新基因。在这些大规模研究中可能采用两阶段策略。因此,我们比较了两种自然的两阶段方法:条件方法和同时方法。我们的能力研究表明,在进行全基因组关联研究时,两阶段条件方法可能比两阶段同时方法更强大。

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