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首页> 外文期刊>European journal of human genetics: EJHG >A pure likelihood approach to the analysis of genetic association data: an alternative to Bayesian and frequentist analysis.
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A pure likelihood approach to the analysis of genetic association data: an alternative to Bayesian and frequentist analysis.

机译:遗传关联数据分析的纯粹可能性方法:贝叶斯和频率分析的替代品。

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Investigators performing genetic association studies grapple with how to measure strength of association evidence, choose sample size, and adjust for multiple testing. We apply the evidential paradigm (EP) to genetic association studies, highlighting its strengths. The EP uses likelihood ratios (LRs), as opposed to P-values or Bayes' factors, to measure strength of association evidence. We derive EP methodology to estimate sample size, adjust for multiple testing, and provide informative graphics for drawing inferences, as illustrated with a Rolandic Epilepsy (RE) fine-mapping study. We focus on controlling the probability of observing weak evidence for or against association (W) rather than type I errors (M). For example, for LR> or =32 representing strong evidence, at one locus with n=200 cases, n=200 controls, W=0.134, whereas M=0.005. For n=300 cases and controls, W=0.039 and M=0.004. These calculations are based on detecting an OR=1.5. Despite the common misconception, one is not tied to this planning value for analysis; rather one calculates the likelihood at all possible values to assess evidence for association. We provide methodology to adjust for multiple tests across m loci, which adjusts M and W for m. We do so for (a) single-stage designs, (b) two-stage designs, and (c) simultaneously controlling family-wise error rate (FWER) and W. Method (c) chooses larger sample sizes than (a) or (b), whereas (b) has smaller bounds on the FWER than (a). The EP, using our innovative graphical display, identifies important SNPs in elongator protein complex 4 (ELP4) associated with RE that may not have been identified using standard approaches.
机译:调查人员表演遗传关联研究掌握如何测量关联证据的强度,选择样品大小,并调整多次测试。我们将证据范例(EP)应用于遗传关联研究,突出了其优势。 EP使用似然比(LRS),而不是P值或贝叶斯因素,以衡量关联证据的实力。我们派生EP方法来估算样品大小,调整多次测试,并提供用于绘制推断的信息性图形,如罗兰·癫痫(RE)的细映射研究所示。我们专注于控制观察或反对关联(W)而不是类型错误(M)的概率。例如,对于表示强的证据,在一个具有n = 200例的一个基因座,n = 200个控制,w = 0.134,而m = 0.005。对于n = 300例和对照,w = 0.039和m = 0.004。这些计算基于检测或= 1.5。尽管存在普遍的误解,但是一个没有与该计划的分析价值联系;相反,一个可以计算所有可能值的可能性,以评估关联的证据。我们提供方法来调整跨M个LOCI的多个测试,它调整m和w for m。我们这样做(a)单级设计,(b)两阶段设计,(c)同​​时控制家庭明智的错误率(fwer)和w。方法(c)选择比(a)或的更大的样本尺寸(b),而(b)在FWER上具有比(a)更小的界限。使用我们的创新图形显示器,EP使用我们不使用标准方法识别的延长蛋白复合物4(ELP4)中的重要SNP。

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