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Robust linear regression methods in association studies.

机译:关联研究中的稳健线性回归方法。

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MOTIVATION: It is well known that data deficiencies, such as coding/rounding errors, outliers or missing values, may lead to misleading results for many statistical methods. Robust statistical methods are designed to accommodate certain types of those deficiencies, allowing for reliable results under various conditions. We analyze the case of statistical tests to detect associations between genomic individual variations (SNP) and quantitative traits when deviations from the normality assumption are observed. We consider the classical analysis of variance tests for the parameters of the appropriate linear model and a robust version of those tests based on M-regression. We then compare their empirical power and level using simulated data with several degrees of contamination. RESULTS: Data normality is nothing but a mathematical convenience. In practice, experiments usually yield data with non-conforming observations. In the presence of this type of data, classical least squares statistical methods perform poorly, giving biased estimates, raising the number of spurious associations and often failing to detect true ones. We show through a simulation study and a real data example, that the robust methodology can be more powerful and thus more adequate for association studies than the classical approach. AVAILABILITY: The code of the robustified version of function lmekin() from the R package kinship is provided as Supplementary Material.
机译:动机:众所周知,编码/舍入错误,离群值或缺失值等数据缺陷可能导致许多统计方法产生误导性结果。可靠的统计方法旨在解决某些类型的缺陷,从而在各种条件下提供可靠的结果。我们分析了统计测试的情况,以检测到观察到与正常性假设的偏差时基因组个体变异(SNP)与定量性状之间的关联。我们考虑对适当线性模型的参数进行方差检验的经典分析,以及基于M回归的那些检验的可靠版本。然后,我们使用带有几种污染程度的模拟数据比较它们的经验能力和水平。结果:数据正态性只是数学上的便利。在实践中,实验通常会产生观测值不一致的数据。在存在此类数据的情况下,传统的最小二乘统计方法的效果较差,估计值有偏差,导致虚假关联的数量增加,并且常常无法检测出真实的关联。我们通过仿真研究和真实数据示例表明,健壮的方法可以比传统方法更强大,因此更适合关联研究。可用性:来自R包家族的lmekin()函数的增强版本的代码作为补充材料提供。

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