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Comparison of methods for multivariate gene-based association tests for complex diseases using common variants

机译:使用普通变体对复杂疾病的多变量基因关联试验方法的比较

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Complex diseases are usually associated with multiple correlated phenotypes, and the analysis of composite scores or disease status may not fully capture the complexity (or multidimensionality). Joint analysis of multiple disease-related phenotypes in genetic tests could potentially increase power to detect association of a disease with common SNPs (or genes). Gene-based tests are designed to identify genes containing multiple risk variants that individually are weakly associated with a univariate trait. We combined three multivariate association tests (O'Brien method, TATES, and MultiPhen) with two gene-based association tests (GATES and VEGAS) and compared performance (type I error and power) of six multivariate gene-based methods using simulated data. Data (n = 2000) for genetic sequence and correlated phenotypes were simulated by varying causal variant proportions and phenotype correlations for various scenarios. These simulations showed that two multivariate association tests (TATES and MultiPhen, but not O'Brien) paired with VEGAS have inflated type I error in all scenarios, while the three multivariate association tests paired with GATES have correct type I error. MultiPhen paired with GATES has higher power than competing methods if the correlations among phenotypes are low (r < 0.57). We applied these genebased association methods to a GWAS dataset from the Alzheimer's Disease Genetics Consortium containing three neuropathological traits related to Alzheimer disease (neuritic plaque, neurofibrillary tangles, and cerebral amyloid angiopathy) measured in 3500 autopsied brains. Gene-level significant evidence (P < 2.7 x 10(-6)) was identified in a region containing three contiguous genes (TRAPPC12, TRAPPC12-ASJ, ADI1) using O'Brien and VEGAS. Gene-wide significant associations were not observed in univariate gene-based tests.
机译:复杂疾病通常与多种相关表型相关,复合分数或疾病状态的分析可能无法完全捕获复杂性(或多型)。对遗传检测中多种疾病相关表型的联合分析可能会增加用常见的SNP(或基因)检测疾病关联的能力。基于基因的测试旨在鉴定含有多种风险变体的基因,其单独地与单变量特征弱相关。我们将三种多变量关联试验(o'brien方法,tates和multiphen)与基于两个基于基因的关联试验(栅极和拉斯维加斯)组合,并使用模拟数据比较了六种基于多变量基因的方法的性能(I型误差和功率)。通过不同的因果变形比例和各种场景的表型相关性来模拟遗传序列和相关表型的数据(n = 2000)。这些模拟表明,与拉斯维加斯配对的两个多变量关联测试(Tates和Multiphen,但不是o'brien)在所有场景中都会膨胀I型错误,而三个与门配对的多变量关联测试具有正确的I型错误。如果表型之间的相关性低(R <0.57),则用栅极配对具有比竞争方法更高的功率。我们将这些基因关联方法应用于来自阿尔茨海默病遗传学联盟的GWAS数据集,其中包含与3500次尸体血管大大测量的阿尔茨海默病(神经斑块,神经纤维缠结和脑淀粉样血管病)相关的三种神经病理学性状。基因级显着证据(P <2.7×10(-6))在包含三种连续基因(Trappc12,Trappc12-ASJ,ADI1)的区域中鉴定出使用o'brien和拉斯卡斯的区域。在单变量基因的试验中未观察到基因范围的显着关联。

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