A shared-parameter continuous-time hidden Markov and survival model for longitudinal data with informative dropout
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Publication:6625720
DOI10.1002/sim.7994zbMATH Open1545.62231MaRDI QIDQ6625720
Francesco Bartolucci, Alessio Farcomeni
Publication date: 28 October 2024
Published in: Statistics in Medicine (Search for Journal in Brave)
expectation-maximization algorithmlatent class modelBaum-Welch recursionsmildly dilated cardiomyopathy
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Related Items (4)
A hidden Markov model for continuous longitudinal data with missing responses and dropout ⋮ Combining mixed effects hidden Markov models with latent alternating recurrent event processes to model diurnal active-rest cycles ⋮ Multilevel joint frailty model for hierarchically clustered binary and survival data ⋮ Dynamic latent variable models for the analysis of cognitive abilities in the elderly population
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