Publication | Open Access
Efficient Learning of Continuous-Time Hidden Markov Models for Disease Progression.
74
Citations
20
References
2015
Year
EngineeringMachine LearningSequential LearningEfficient LearningDisease ClassificationData SciencePattern RecognitionHidden Markov ModelBiomedical Data SciencePosterior State ProbabilitiesBayesian MethodsPublic HealthStatisticsPredictive AnalyticsTemporal Pattern RecognitionComputer ScienceStatistical Learning TheoryMedical Image ComputingDeep LearningCt-hmm DomainCt-hmm ModelsData-driven PredictionHealth Informatics
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.
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