| Literature DB >> 29534304 |
Shuang Huang1, Chengcheng Hu1, Melanie L Bell1, Dean Billheimer1, Stefano Guerra2, Denise Roe1, Monica M Vasquez1, Edward J Bedrick1.
Abstract
Continuous-time Markov models are commonly used to analyze longitudinal transitions between multiple disease states in panel data, where participants' disease states are only observed at multiple time points, and the exact state paths between observations are unknown. However, when covariate effects are incorporated and allowed to vary for different transitions, the number of potential parameters to estimate can become large even when the number of covariates is moderate, and traditional maximum likelihood estimation and subset model selection procedures can easily become unstable due to overfitting. We propose a novel regularized continuous-time Markov model with the elastic net penalty, which is capable of simultaneous variable selection and estimation for large number of parameters. We derive an efficient coordinate descent algorithm to solve the penalized optimization problem, which is fully automatic and data driven. We further consider an extension where one of the states is death, and time of death is exactly known but the state path leading to death is unknown. The proposed method is extensively evaluated in a simulation study, and demonstrated in an application to real-world data on airflow limitation state transitions.Entities:
Keywords: Continuous-time Markov model; Elastic net penalty; Panel data; Regularization
Mesh:
Year: 2018 PMID: 29534304 DOI: 10.1111/biom.12868
Source DB: PubMed Journal: Biometrics ISSN: 0006-341X Impact factor: 2.571