Efficient Learning of Continuous-Time Hidden Markov Models for Disease Progression
Abstract
The Continuous-Time Hidden Markov Model (CT-HMM) is an attractive approach to modeling disease progression due to its ability to describe noisy observations arriving irregularly in time. However, the lack of an efficient parameter learning algorithm for CT-HMM restricts its use to very small models or requires unrealistic constraints on the state transitions. In this paper, we present the first complete characterization of efficient EM-based learning methods for CT-HMM models. We demonstrate that the learning problem consists of two challenges: the estimation of posterior state probabilities and the computation of end-state conditioned statistics. We solve the first challenge by reformulating the estimation problem in terms of an equivalent discrete time-inhomogeneous hidden Markov model. The second challenge is addressed by adapting three approaches from the continuous time Markov chain literature to the CT-HMM domain. We demonstrate the use of CT-HMMs with more than 100 states to visualize and predict disease progression using a glaucoma dataset and an Alzheimer's disease dataset.
Cite
Text
Liu et al. "Efficient Learning of Continuous-Time Hidden Markov Models for Disease Progression." Neural Information Processing Systems, 2015.Markdown
[Liu et al. "Efficient Learning of Continuous-Time Hidden Markov Models for Disease Progression." Neural Information Processing Systems, 2015.](https://mlanthology.org/neurips/2015/liu2015neurips-efficient/)BibTeX
@inproceedings{liu2015neurips-efficient,
title = {{Efficient Learning of Continuous-Time Hidden Markov Models for Disease Progression}},
author = {Liu, Yu-Ying and Li, Shuang and Li, Fuxin and Song, Le and Rehg, James M.},
booktitle = {Neural Information Processing Systems},
year = {2015},
pages = {3600-3608},
url = {https://mlanthology.org/neurips/2015/liu2015neurips-efficient/}
}