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Approximate score-based testing with application to multivariate trait association analysis

机译:基于近似得分的测试及其在多元性状关联分析中的应用

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摘要

For genome-wide association studies and DNA sequencing studies, several powerful score-based tests, such as kernel machine regression and sum of powered score tests, have been proposed in the last few years. However, extensions of these score-based tests to more complex models, such as mixed-effects models for analysis of multiple and correlated traits, have been hindered by the unavailability of the score vector, due to either no output from statistical software or no closed-form solution at all. We propose a simple and general method to asymptotically approximate the score vector based on an asymptotically normal and consistent estimate of a parameter vector to be tested and its (consistent) covariance matrix. The proposed method is applicable to both maximum-likelihood estimation and estimating function-based approaches. We use the derived approximate score vector to extend several score-based tests to mixed-effects models. We demonstrate the feasibility and possible power gains of these tests in association analysis of multiple and correlated quantitative or binary traits with both real and simulated data. The proposed method is easy to implement with a wide applicability.
机译:对于全基因组关联研究和DNA测序研究,最近几年已经提出了几种基于分数的强大测试,例如核机回归和幂分数测试总和。但是,由于没有统计软件的输出或没有关闭,无法将这些基于分数的测试扩展到更复杂的模型(例如用于分析多个和相关性状的混合效应模型)的原因在于分数矢量不可用形式的解决方案。我们提出了一种简单而通用的方法,根据待测参数向量及其(一致)协方差矩阵的渐近正态和一致估计,渐近逼近得分向量。所提出的方法适用于最大似然估计和基于函数的估计方法。我们使用派生的近似分数矢量将基于分数的测试扩展到混合效果模型。我们在对具有真实数据和模拟数据的多个及相关定量或二进制特征进行关联分析时,证明了这些测试的可行性和可能的​​功率增益。该方法易于实现,具有广泛的适用性。

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