期刊
BIOMETRICS
卷 79, 期 3, 页码 1646-1656出版社
WILEY
DOI: 10.1111/biom.13764
关键词
additive hazards; constrained optimization; maximum likelihood
The paper discusses the additive hazards model and its application in modeling time-varying covariate effects. It derives the maximum likelihood estimator under the constraint of non-negative hazard and shows that it can be obtained by maximizing the log-likelihood contribution of each event time point. The paper also compares the maximum likelihood estimator with the ordinary least-squares estimator and demonstrates that the former has smaller mean squared error.
The additive hazards model specifies the effect of covariates on the hazard in an additive way, in contrast to the popular Cox model, in which it is multiplicative. As the non-parametric model, additive hazards offer a very flexible way of modeling time-varying covariate effects. It is most commonly estimated by ordinary least squares. In this paper, we consider the case where covariates are bounded, and derive the maximum likelihood estimator under the constraint that the hazard is non-negative for all covariate values in their domain. We show that the maximum likelihood estimator may be obtained by separately maximizing the log-likelihood contribution of each event time point, and we show that the maximizing problem is equivalent to fitting a series of Poisson regression models with an identity link under non-negativity constraints. We derive an analytic solution to the maximum likelihood estimator. We contrast the maximum likelihood estimator with the ordinary least-squares estimator in a simulation study and show that the maximum likelihood estimator has smaller mean squared error than the ordinary least-squares estimator. An illustration with data on patients with carcinoma of the oropharynx is provided.
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