D. Rizopoulos
2012-Sep-18 13:39 UTC
[R] [R-pkgs] New Package 'JMbayes' for the Joint Modeling of Longitudinal and Survival Data under a Bayesian approach
Dear R-users, I would like to announce the release of the new package JMbayes available from CRAN (http://CRAN.R-project.org/package=JMbayes). This package fits shared parameter models for the joint modeling of normal longitudinal responses and event times under a Bayesian approach using JAGS, WinBUGS or OpenBUGS. The package has a single model-fitting function called jointModelBayes(), which accepts as main arguments a linear mixed effects object fit returned by function lme() of package nlme, and a Cox model object fit returned by function coxph() of package survival. * jointModelBayes() allows for joint models with relative risk survival submodels with Weibull or B-spline approximated baseline hazard functions (controlled by argument 'survMod'). * In addition, argument 'param' of jointModelBayes() specifies the association structure between the longitudinal and survival processes; available options are: - "td-value" which is the classic joint model formulation used in Wulfsohn and Tsiatis (1997); - "td-extra" which is a user-defined, possibly time-dependent, term based on the specification of the 'extraForm' argument of jointModelBayes(). This could be used to include terms, such as the time-dependent slope (i.e., the derivative of the subject-specific linear predictor of the linear mixed model), and the time-dependent cumulative effect (i.e., the integral of the subject-specific linear predictor of the linear mixed model); - "td-both" which is the combination of the previous two parameterizations, i.e., the current value and the user-specified terms are included in the linear predictor of the relative risk model; and - "shared-RE" where only the random effects of the linear mixed model are included in the linear predictor of the survival submodel. The package also provides functionality for computing dynamic predictions for the longitudinal and time-to-event outcomes using functions predict() and survfitJM(), respectively. As always, any kind of feedback (questions, suggestions, bug-reports, etc.) is more than welcome. Best, Dimitris -- Dimitris Rizopoulos Assistant Professor Department of Biostatistics Erasmus University Medical Center Address: PO Box 2040, 3000 CA Rotterdam, the Netherlands Tel: +31/(0)10/7043478 Fax: +31/(0)10/7043014 Web: http://www.erasmusmc.nl/biostatistiek/ _______________________________________________ R-packages mailing list R-packages at r-project.org https://stat.ethz.ch/mailman/listinfo/r-packages
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