具有双变量变系数的竞争风险模型:理解COVID-19的动态影响

Competing Risk Modeling with Bivariate Varying Coefficients to Understand the Dynamic Impact of COVID-19

Journal of Computational and Graphical Statistics · 2024
被引 1
ABS 3

中文导读

针对COVID-19对透析患者出院后再入院和死亡风险的动态影响,提出双变量变系数竞争风险模型,用张量积B样条估计效应曲面,并开发高效算法和假设检验方法。

Abstract

The coronavirus disease 2019 (COVID-19) pandemic has exerted a profound impact on patients with end-stage renal disease relying on kidney dialysis to sustain their lives. A preliminary analysis of dialysis patient postdischarge hospital readmissions and deaths in 2020 revealed that the COVID-19 effect has varied significantly with postdischarge time and time since the pandemic onset. However, the complex dynamics cannot be characterized by existing varying coefficient models. To address this issue, we propose a bivariate varying coefficient model for competing risks, where tensor-product B-splines are used to estimate the surface of the COVID-19 effect. An efficient proximal Newton algorithm is developed to facilitate the fitting of the new model to the massive data for Medicare beneficiaries on dialysis. Difference-based anisotropic penalization is introduced to mitigate model overfitting and effect wiggliness; a cross-validation method is derived to determine optimal tuning parameters. Hypothesis testing procedures are designed to examine whether the COVID-19 effect varies significantly with postdischarge time and the time since the pandemic onset, either jointly or separately. Applications to Medicare dialysis patients demonstrate the real-world performance of the proposed methods. Simulation experiments are conducted to evaluate the estimation accuracy, type I error rate, statistical power, and model selection procedures. Supplementary materials for this article are available online.

计量经济学生物统计医学统计COVID-19竞争风险模型