Marginal proportional hazards models for clustered interval-censored data with time-dependent covariates.
Kaitlyn A CookWenbin LuRui WangPublished in: Biometrics (2022)
The Botswana Combination Prevention Project was a cluster-randomized HIV prevention trial whose follow-up period coincided with Botswana's national adoption of a universal test and treat strategy for HIV management. Of interest is whether, and to what extent, this change in policy modified the preventative effects of the study intervention. To address such questions, we adopt a stratified proportional hazards model for clustered interval-censored data with time-dependent covariates and develop a composite expectation maximization algorithm that facilitates estimation of model parameters without placing parametric assumptions on either the baseline hazard functions or the within-cluster dependence structure. We show that the resulting estimators for the regression parameters are consistent and asymptotically normal. We also propose and provide theoretical justification for the use of the profile composite likelihood function to construct a robust sandwich estimator for the variance. We characterize the finite-sample performance and robustness of these estimators through extensive simulation studies. Finally, we conclude by applying this stratified proportional hazards model to a re-analysis of the Botswana Combination Prevention Project, with the national adoption of a universal test and treat strategy now modeled as a time-dependent covariate.
Keyphrases
- quality improvement
- electronic health record
- randomized controlled trial
- phase iii
- public health
- healthcare
- clinical trial
- phase ii
- machine learning
- hiv infected
- human immunodeficiency virus
- hepatitis c virus
- double blind
- hiv positive
- antiretroviral therapy
- big data
- hiv testing
- hiv aids
- artificial intelligence
- case control