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GLOGS: a fast and powerful method for GWAS of binary traits with risk covariates in related populations

机译:GLOGS:一种快速有效的二元性状GWAS方法,在相关人群中具有风险协变量

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摘要

Mixed model-based approaches to genome-wide association studies (GWAS) of binary traits in related individuals can account for non-genetic risk factors in an integrated manner. However, they are technically challenging. GLOGS (Genome-wide LOGistic mixed model/Score test) addresses such challenges with efficient statistical procedures and a parallel implementation. GLOGS has high power relative to alternative approaches as risk covariate effects increase, and can complete a GWAS in minutes.
机译:基于混合模型的相关个体二元性状全基因组关联研究(GWAS)的方法可以综合地解释非遗传风险因素。但是,它们在技术上具有挑战性。 GLOGS(全基因组LOGistic混合模型/分数测试)通过高效的统计程序和并行实施来应对此类挑战。随着风险协变量效应的增加,相对于其他方法,GLOGS具有强大的功能,并且可以在数分钟内完成GWAS。

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