Literature DB >> 32162300

Bayesian latent multi-state modeling for nonequidistant longitudinal electronic health records.

Yu Luo1, David A Stephens1, Aman Verma2, David L Buckeridge2.   

Abstract

Large amounts of longitudinal health records are now available for dynamic monitoring of the underlying processes governing the observations. However, the health status progression across time is not typically observed directly: records are observed only when a subject interacts with the system, yielding irregular and often sparse observations. This suggests that the observed trajectories should be modeled via a latent continuous-time process potentially as a function of time-varying covariates. We develop a continuous-time hidden Markov model to analyze longitudinal data accounting for irregular visits and different types of observations. By employing a specific missing data likelihood formulation, we can construct an efficient computational algorithm. We focus on Bayesian inference for the model: this is facilitated by an expectation-maximization algorithm and Markov chain Monte Carlo methods. Simulation studies demonstrate that these approaches can be implemented efficiently for large data sets in a fully Bayesian setting. We apply this model to a real cohort where patients suffer from chronic obstructive pulmonary disease with the outcome being the number of drugs taken, using health care utilization indicators and patient characteristics as covariates.
© 2020 The International Biometric Society.

Entities:  

Keywords:  Bayesian inference; COPD; MCMC; continuous-time hidden Markov models; health trajectories; nonequidistant longitudinal data analysis

Year:  2020        PMID: 32162300     DOI: 10.1111/biom.13261

Source DB:  PubMed          Journal:  Biometrics        ISSN: 0006-341X            Impact factor:   2.571


  2 in total

1.  Bayesian inference for continuous-time hidden Markov models with an unknown number of states.

Authors:  Yu Luo; David A Stephens
Journal:  Stat Comput       Date:  2021-08-10       Impact factor: 2.559

2.  Learning and visualizing chronic latent representations using electronic health records.

Authors:  David Chushig-Muzo; Cristina Soguero-Ruiz; Pablo de Miguel Bohoyo; Inmaculada Mora-Jiménez
Journal:  BioData Min       Date:  2022-09-05       Impact factor: 4.079

  2 in total

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