A mixed model approach for structured hazard regression
نویسندگان
چکیده
The classical Cox proportional hazards model is a benchmark approach to analyze continuous survival times in the presence of covariate information. In a number of applications, there is a need to relax one or more of its inherent assumptions, such as linearity of the predictor or the proportional hazards property. Also, one is often interested in jointly estimating the baseline hazard together with covariate effects or one may wish to add a spatial component for spatially correlated survival data. We propose an extended Cox model, where the (log-)baseline hazard is weakly parameterized using penalized splines and the usual linear predictor is replaced by a structured additive predictor incorporating nonlinear effects of continuous covariates and further time scales, spatial effects, frailty components, and more complex interactions. Inclusion of time-varying coefficients leads to models that relax the proportional hazards assumption. Nonlinear and time-varying effects are modelled through penalized splines, and spatial components are treated as correlated random effects following either a Markov random field or a stationary Gaussian random field. All model components, including smoothing parameters, are specified within a unified framework and are estimated simultaneously based on mixed model methodology. The estimation procedure for such general mixed hazard regression models is derived using penalized likelihood for regression coefficients and (approximate) marginal likelihood for smoothing parameters. Performance of the proposed method is studied through simulation and an application to leukemia survival data in Northwest England.
منابع مشابه
A Mixed Integer Programming Approach to Optimal Feeder Routing for Tree-Based Distribution System: A Case Study
A genetic algorithm is proposed to optimize a tree-structured power distribution network considering optimal cable sizing. For minimizing the total cost of the network, a mixed-integer programming model is presented determining the optimal sizes of cables with minimized location-allocation cost. For designing the distribution lines in a power network, the primary factors must be considered as m...
متن کاملInvestigating the Factors Affecting Multidimensional Poverty Using Linear Mixed Beta Regression Model
Multidimensional poverty is a complex issue that is affected by various factors. Therefore, accurate knowledge and its comprehensive definition are great important. The aim of this study was to investigate the effect of economic, social and institutional factors on multidimensional poverty based on a comprehensive measurement framework and using the beta linear mixed regression model, which is ...
متن کاملDesigning an Optimal Pattern of General Medical Course Curriculum: an Effective Step in Enhancing How to Learn
Introduction: In today's world with a vast amount of information and knowledge, medical students should learn how to become effective physicians. Therefore, the competencies required for lifelong learning in the curriculum must be considered. The purpose of this study was to present a desirable general medical curriculum with emphasis on lifelong learning. Methods: The present study was Mixe...
متن کاملA Stochastic Model for Indirect Condition Monitoring Using Proportional Covariate Model
This paper introduces a model to make decision on the maintenance of a mechanical component subject to condition monitoring. A stochastic model is used to determine what maintenance action should be taken at a monitoring check and the follow up inspection times. The condition of component has a stochastic relation with measurements. A new state space model is developed and used, to predict the ...
متن کاملPenalized spline smoothing in multivariable survival models with varying coefficients
The paper discusses penalised spline (P -spline) smoothing for hazard regression of multivariable survival data. Non-proportional hazard functions are fitted in a numerically handy manner by employing Poisson regression which results from numerical integration of the cumulative hazard function. Multivariate smoothing parameters are selected by utilizing the connection between P -spline smoothin...
متن کامل