Semiparametric Copula-based Regression Modeling of Semi-competing Risks Data
Overview
Affiliations
Semi-competing risks data often arise in medical studies where the terminal event (e.g., death) censors the non-terminal event (e.g., cancer recurrence), but the non-terminal event does not prevent the subsequent occurrence of the terminal event. This article considers regression modeling of semi-competing risks data to assess the covariate effects on the respective non-terminal and terminal event times. We propose a copula-based framework for semi-competing risks regression with time-varying coefficients, where the dependence between the non-terminal and terminal event times is characterized by a copula and the time-varying covariate effects are imposed on two marginal regression models. We develop a two-stage inferential procedure for estimating the association parameter in the copula model and time-varying regression parameters. We evaluate the finite sample performance of the proposed method through simulation studies and illustrate the method through an application to Surveillance, Epidemiology, and End Results-Medicare data for elderly women diagnosed with early-stage breast cancer and initially treated with breast-conserving surgery.
Bivariate copula regression models for semi-competing risks.
Wei Y, Wojtys M, Sorrell L, Rowe P Stat Methods Med Res. 2023; 32(10):1902-1918.
PMID: 37559476 PMC: 10563377. DOI: 10.1177/09622802231188516.
Pate A, Sperrin M, Riley R, Sergeant J, van Staa T, Peek N Stat Med. 2023; 42(18):3184-3207.
PMID: 37218664 PMC: 11155421. DOI: 10.1002/sim.9771.