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EFFICIENT COMPUTATION WITH A LINEAR MIXED MODEL ON LARGE-SCALE DATA SETS WITH APPLICATIONS TO GENETIC STUDIES

机译:大型数据集上线性混合模型的有效计算及其在遗传研究中的应用

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摘要

Motivated by genome-wide association studies, we consider a standard linear model with one additional random effect in situations where many predictors have been collected on the same subjects and each predictor is analyzed separately. Three novel contributions are (1) a transformation between the linear and log-odds scales which is accurate for the important genetic case of small effect sizes; (2) a likelihood-maximization algorithm that is an order of magnitude faster than the previously published approaches; and (3) efficient methods for computing marginal likelihoods which allow Bayesian model comparison. The methodology has been successfully applied to a large-scale association study of multiple sclerosis including over 20,000 individuals and 500,000 genetic variants.
机译:根据全基因组关联研究的动机,我们考虑了一种标准线性模型,该模型具有在同一对象上收集了许多预测变量并且分别分析每个预测变量的情况下的一种附加随机效应。三个新颖的贡献是:(1)线性和对数奇数标度之间的转换,对于小效应量的重要遗传情况是准确的; (2)似然性最大化算法,其速度比以前发布的方法快一个数量级; (3)计算边际可能性的有效方法,允许贝叶斯模型比较。该方法已成功应用于多发性硬化症的大规模关联研究,包括超过20,000个个体和500,000个遗传变异。

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