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A random subset implementation of weighted quantile sum (WQS_(RS)) regression for analysis of high-dimensional mixtures

机译:加权量子总和的随机子集实现(WQS_(RS))回归用于分析高维混合物的回归

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摘要

Here we introduce a novel implementation of weighted quantile sum (WQS) regression, a modeling strategy for mixtures analyses, which integrates a random subset algorithm in the estimation of mixture effects. We demonstrate the application of this method (WQS(RS)) in three case examples, with mixtures varying in size from 34 to 472 variables. In evaluating each case, we provide detailed simulation studies to characterize the sensitivity and specificity of WQS(RS) in varying contexts. Our results emphasize that WQS(RS) is robustly effective in evaluating mixture effects in diverse high-dimensional contexts, yielding sensitivity and specificity in empirical contexts of approximately 73-75% and 73-89%, respectively.
机译:在这里,我们介绍了加权量子(WQS)回归的新颖实现,混合分析的建模策略,其集成了混合效应的估计中的随机子集算法。 我们展示了在三种情况下的这种方法(WQS(RS))的应用,其中混合物的大小从34到472变量变化。 在评估每种情况时,我们提供详细的仿真研究,以表征WQS(RS)的敏感性和特异性在不同的上下文中。 我们的结果强调WQS(RS)在评估各种高尺寸上下文中的混合物效应,分别在约73-75%和73-89%的经验上下文中产生敏感性和特异性。

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