Fitting and interpreting continuous-time latent Markov models for panel data (original) (raw)

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Three-step estimation of latent Markov models with covariates

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Non-Markov Multistate Modeling Using Time-Varying Covariates, with Application to Progression of Liver Fibrosis due to Hepatitis C Following Liver Transplant

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The International Journal of Biostatistics, 2000

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Non-homogeneous Markov Processes for Biomedical Data Analysis

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Journal of the American Statistical Association, 2008

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Juergen Jung

Indiana University, 2006

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p3state.msm: Analyzing Survival Data from an Illness-Death Model

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