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A multimetric approach to analysis of genome-wide association by single markers and composite likelihood

机译:一种通过单一标记和复合可能性分析全基因组关联的多度量方法

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摘要

Two case/control studies with different phenotypes, marker densities, and microarrays were examined for the most significant single markers in defined regions. They show a pronounced bias toward exaggerated significance that increases with the number of observed markers and would increase further with imputed markers. This bias is eliminated by Bonferroni adjustment, thereby allowing combination by principal component analysis with a Malecot model composite likelihood evaluated by a permutation procedure to allow for multiple dependent markers. This intermediate value identifies the only demonstrated causal locus as most significant even in the preliminary analysis and clearly recognizes the strongest candidate in the other sample. Because the three metrics (most significant single marker, composite likelihood, and their principal component) are correlated, choice of the n smallest P values by each test gives <3n regions for follow-up in the next stage. In this way, methods with different response to marker selection and density are given approximately equal weight and economically compared, without expressing an untested prejudice or sacrificing the most significant results for any of them. Large numbers of cases, controls, and markers are by themselves insufficient to control type 1 and 2 errors, and so efficient use of multiple metrics with Bonferroni adjustment promises to be valuable in identifying causal variants and optimal design simultaneously.
机译:检查了两个具有不同表型,标记物密度和微阵列的病例/对照研究,以确定区域中最重要的单个标记物。他们显示出明显的偏向夸大的意义,随着观察到的标记物数量的增加而增加,而归因标记物的增加则进一步增加。通过Bonferroni调整消除了这种偏差,从而允许通过主成分分析与通过置换程序评估的Malecot模型复合可能性进行组合,以允许多个相关标记。即使在初步分析中,该中间值也将唯一显示的因果位点识别为最重要的因果位点,并清楚地识别其他样本中最强的候选位点。因为这三个指标(最高有效的单个标记,合成似然及其主要成分)是相关的,所以每个测试选择的n个最小的P值给出了<3n个区域,可用于下一阶段的随访。这样,对标记选择和密度具有不同响应的方法将被赋予近似相等的权重,并在经济上进行比较,而不会表现出未经测试的偏见或牺牲任何方法的最重要结果。大量的案例,控件和标记本身不足以控制1型和2型错误,因此,通过Bonferroni调整有效使用多个度量标准,对于同时确定因果变量和最佳设计很有用。

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