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Flexible maximum likelihood methods for bivariate proportional hazards models
Authors:He Wenqing  Lawless Jerald F
Affiliation:Samuel Lunenfeld Research Institute, Mt. Sinai Hospital, 600 University Avenue, Toronto, Ontario M5G 1X5, Canada. he@mshri.on.ca
Abstract:This article presents methodology for multivariate proportional hazards (PH) regression models. The methods employ flexible piecewise constant or spline specifications for baseline hazard functions in either marginal or conditional PH models, along with assumptions about the association among lifetimes. Because the models are parametric, ordinary maximum likelihood can be applied; it is able to deal easily with such data features as interval censoring or sequentially observed lifetimes, unlike existing semiparametric methods. A bivariate Clayton model (1978, Biometrika 65, 141-151) is used to illustrate the approach taken. Because a parametric assumption about association is made, efficiency and robustness comparisons are made between estimation based on the bivariate Clayton model and "working independence" methods that specify only marginal distributions for each lifetime variable.
Keywords:Clayton model    Copula    Cox model    Efficiency    Multivariate lifetimes    Piecewise constant hazards    Robustness    Spline functions
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