A joint model for longitudinal continuous and time‐to‐event outcomes with direct marginal interpretation
暂无分享,去创建一个
Geert Molenberghs | Paul Dendale | Achmad Efendi | Edmund Njeru Njagi | G. Molenberghs | P. Dendale | A. Efendi | E. Njagi | Achmad Efendi
[1] Geert Molenberghs,et al. A Family of Generalized Linear Models for Repeated Measures With Normal and Conjugate Random Effects (pp.188) , 2010, 1101.0990.
[2] Geert Molenberghs,et al. On the Weibull-Gamma frailty model, its infinite moments, and its connection to generalized log-logistic, logistic, Cauchy, and extreme-value distributions , 2011 .
[3] Dimitris Rizopoulos,et al. JM: An R package for the joint modelling of longitudinal and time-to-event data , 2010 .
[4] Scott L. Zeger,et al. Marginalized Multilevel Models and Likelihood Inference , 2000 .
[5] Dominique Hansen,et al. Effect of a telemonitoring‐facilitated collaboration between general practitioner and heart failure clinic on mortality and rehospitalization rates in severe heart failure: the TEMA‐HF 1 (TElemonitoring in the MAnagement of Heart Failure) study , 2012, European journal of heart failure.
[6] J. Ware,et al. Random-effects models for longitudinal data. , 1982, Biometrics.
[7] Geert Molenberghs,et al. Joint modeling of hierarchically clustered and overdispersed non‐gaussian continuous outcomes for comet assay data , 2012, Pharmaceutical statistics.
[8] P. Heagerty. Marginally Specified Logistic‐Normal Models for Longitudinal Binary Data , 1999, Biometrics.
[9] Geert Molenberghs,et al. A combined overdispersed and marginalized multilevel model , 2012, Comput. Stat. Data Anal..