首页> 外文期刊>American Journal of Epidemiology >Discovery properties of genome-wide association signals from cumulatively combined data sets.
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Discovery properties of genome-wide association signals from cumulatively combined data sets.

机译:来自累积组合数据集的全基因组关联信号的发现特性。

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摘要

Genetic effects for common variants affecting complex disease risk are subtle. Single genome-wide association (GWA) studies are typically underpowered to detect these effects, and combination of several GWA data sets is needed to enhance discovery. The authors investigated the properties of the discovery process in simulated cumulative meta-analyses of GWA study-derived signals allowing for potential genetic model misspecification and between-study heterogeneity. Variants with null effects on average (but also between-data set heterogeneity) could yield false-positive associations with seemingly homogeneous effects. Random effects had higher than appropriate false-positive rates when there were few data sets. The log-additive model had the lowest false-positive rate. Under heterogeneity, random-effects meta-analyses of 2-10 data sets averaging 1,000 cases/1,000 controls each did not increase power, or the meta-analysis was even less powerful than a single study (power desert). Upward bias in effect estimates and underestimation of between-study heterogeneity were common. Fixed-effects calculations avoided power deserts and maximized discovery of association signals at the expense of much higher false-positive rates. Therefore, random- and fixed-effects models are preferable for different purposes (fixed effects for initial screenings, random effects for generalizability applications). These results may have broader implications for the design and interpretation of large-scale multiteam collaborative studies discovering common gene variants.
机译:影响复杂疾病风险的常见变异的遗传效应微妙。单基因组范围的关联(GWA)研究通常不足以检测这些影响,并且需要几个GWA数据集的组合来增强发现。作者在GWA研究得出的信号的模拟累积荟萃分析中研究了发现过程的特性,从而对潜在的遗传模型错误指定和研究之间的异质性进行了研究。平均而言具有无效影响的变异(以及数据集之间的异质性)可能会产生假阳性关联,并具有看似均质的效应。当数据集很少时,随机效应的发生率高于适当的假阳性率。对数加法模型的假阳性率最低。在异质性下,对2-10个数据集(平均1,000个病例/ 1,000个对照)的随机效果荟萃分析并没有增加功效,或者荟萃分析的功能甚至比一项研究(功效沙漠)还差。效应估计​​中的向上偏差和研究间异质性的低估是常见的。固定效应计算避免了功率损耗,并以高得多的假阳性率为代价,最大程度地发现了关联信号。因此,随机效果模型和固定效果模型对于不同目的是更可取的(用于初始筛选的固定效果,用于通用性应用的随机效果)。这些结果可能对发现常见基因变异的大规模多团队合作研究的设计和解释具有更广泛的意义。

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