학술논문

Examining evidence of time-dependent treatment effects: an illustration using regression methods.
Document Type
Journal Article
Source
Trials. 10/6/2022, Vol. 23 Issue 1, p1-14. 14p. 1 Chart, 5 Graphs.
Subject
*COMMUNITY-based clinical trials
*TREATMENT effectiveness
*MAJOR adverse cardiovascular events
*LOG-rank test
*OLDER people
Language
ISSN
1745-6215
Abstract
Background: For the design and analysis of clinical trials with time-to-event outcomes, the Cox proportional hazards model and the logrank test have been the cornerstone methods for many decades. Increasingly, the key assumption of proportionality-or time-fixed effects-that underpins these methods has been called into question. The availability of novel therapies with new mechanisms of action and clinical trials of longer duration mean that non-proportional hazards are now more frequently encountered.Methods: We compared several regression-based methods to model time-dependent treatment effects. For illustration purposes, we used selected endpoints from a large, community-based clinical trial of low dose daily aspirin in older persons. Relative and absolute estimands were defined, and analyses were conducted in all participants. Additional exploratory analyses were undertaken by selected subgroups of interest using interaction terms in the regression models.Discussion: In the trial with median 4.7 years follow-up, we found evidence for non-proportionality and a time-dependent treatment effect of aspirin on cancer mortality not previously reported in trial findings. We also found some evidence of time-dependence to an aspirin by age interaction for major adverse cardiovascular events. For other endpoints, time-fixed treatment effect estimates were confirmed as appropriate.Conclusions: The consideration of treatment effects using both absolute and relative estimands enhanced clinical insights into potential dynamic treatment effects. We recommend these analytical approaches as an adjunct to primary analyses to fully explore findings from clinical trials. [ABSTRACT FROM AUTHOR]