Ling Wodan, Cheng Bin, Wei Ying, Willey Joshua Z, Cheung Ying Kuen
Fred Hutchinson Cancer Research Center.
Columbia University.
Stat Sin. 2022 Jul;32(3):1411-1433. doi: 10.5705/ss.202020.0368.
An extension of quantile regression is proposed to model zero-inflated outcomes, which have become increasingly common in biomedical studies. The method is flexible enough to depict complex and nonlinear associations between the covariates and the quantiles of the outcome. We establish the theoretical properties of the estimated quantiles, and develop inference tools to assess the quantile effects. Extensive simulation studies indicate that the novel method generally outperforms existing zero-inflated approaches and the direct quantile regression in terms of the estimation and inference of the heterogeneous effect of the covariates. The approach is applied to data from the Northern Manhattan Study to identify risk factors for carotid atherosclerosis, measured by the ultrasound carotid plaque burden.
本文提出了一种分位数回归的扩展方法,用于对零膨胀结果进行建模,这种结果在生物医学研究中越来越常见。该方法足够灵活,能够刻画协变量与结果分位数之间复杂的非线性关联。我们建立了估计分位数的理论性质,并开发了用于评估分位数效应的推断工具。大量的模拟研究表明,在协变量的异质性效应估计和推断方面,新方法通常优于现有的零膨胀方法和直接分位数回归。该方法应用于北曼哈顿研究的数据,以确定通过超声颈动脉斑块负担测量的颈动脉粥样硬化的风险因素。