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首页> 外文期刊>European journal of human genetics: EJHG >Bivariate association analysis in selected samples: application to a GWAS of two bone mineral density phenotypes in males with high or low BMD.
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Bivariate association analysis in selected samples: application to a GWAS of two bone mineral density phenotypes in males with high or low BMD.

机译:选定样本中的双变量关联分析:应用于BMD高或低的男性中两种骨矿物质密度表型的GWAS。

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Our specific aims were to evaluate the power of bivariate analysis and to compare its performance with traditional univariate analysis in samples of unrelated subjects under varying sampling selection designs. Bivariate association analysis was based on the seemingly unrelated regression (SUR) model that allows different genetic models for different traits. We conducted extensive simulations for the case of two correlated quantitative phenotypes, with the quantitative trait locus making equal or unequal contributions to each phenotype. Our simulation results confirmed that the power of bivariate analysis is affected by the size, direction and source of the phenotypic correlations between traits. They also showed that the optimal sampling scheme depends on the size and direction of the induced genetic correlation. In addition, we demonstrated the efficacy of SUR-based bivariate test by applying it to a real Genome-Wide Association Study (GWAS) of Bone Mineral Density (BMD) values measured at the lumbar spine (LS) and at the femoral neck (FN) in a sample of unrelated males with low BMD (LS Z-scores 0.5). A substantial amount of top hits in bivariate analysis did not reach nominal significance in any of the two single-trait analyses. Altogether, our studies suggest that bivariate analysis is of practical significance for GWAS of correlated phenotypes.
机译:我们的具体目标是评估在不同样本选择设计下无关对象的样本中双变量分析的功能并将其性能与传统单变量分析进行比较。双变量关联分析基于看似无关的回归(SUR)模型,该模型允许针对不同性状使用不同的遗传模型。我们对两种相关定量表型的情况进行了广泛的模拟,其中定量性状位点对每种表型的贡献相等或不相等。我们的模拟结果证实了双变量分析的能力受性状之间表型相关性的大小,方向和来源的影响。他们还表明,最佳采样方案取决于诱导的遗传相关性的大小和方向。此外,我们将其应用于腰椎(LS)和股骨颈(FN)的骨密度(BMD)值的真正全基因组关联研究(GWAS),证明了基于SUR的二元检验的功效)的BMD低(LS Z分数 0.5)的无关男性样本中。在两个单性状分析中的任何一个中,双变量分析中大量的最高命中都未达到标称意义。总之,我们的研究表明,双变量分析对于相关表型的GWAS具有实际意义。

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