Cox regression can be collapsible and Aalen regression can be non-collapsible

Lifetime Data Anal. 2023 Apr;29(2):403-419. doi: 10.1007/s10985-022-09578-0. Epub 2022 Oct 21.

Abstract

It is well-known that the additive hazards model is collapsible, in the sense that when omitting one covariate from a model with two independent covariates, the marginal model is still an additive hazards model with the same regression coefficient or function for the remaining covariate. In contrast, for the proportional hazards model under the same covariate assumption, the marginal model is no longer a proportional hazards model and is not collapsible. These results, however, relate to the model specification and not to the regression parameter estimators. We point out that if covariates in risk sets at all event times are independent then both Cox and Aalen regression estimators are collapsible, in the sense that the parameter estimators in the full and marginal models are consistent for the same value. Vice-versa, if this assumption fails, then the estimates will change systematically both for Cox and Aalen regression. In particular, if the data are generated by an Aalen model with censoring independent of covariates both Cox and Aalen regression is collapsible, but if generated by a proportional hazards model neither estimators are. We will also discuss settings where survival times are generated by proportional hazards models with censoring patterns providing uncorrelated covariates and hence collapsible Cox and Aalen regression estimates. Furthermore, possible consequences for instrumental variable analyses are discussed.

Keywords: Additive hazards models; Instrumental variables; Linear hazards models; Matched cohort study; Proportional hazards models; Randomized clinical study.

MeSH terms

  • Humans
  • Proportional Hazards Models*
  • Survival Analysis