| Literature DB >> 26752800 |
Iyad Batal1, Gregory Cooper2, Dmitriy Fradkin3, James Harrison4, Fabian Moerchen5, Milos Hauskrecht6.
Abstract
This work proposes a pattern mining approach to learn event detection models from complex multivariate temporal data, such as electronic health records. We present Recent Temporal Pattern mining, a novel approach for efficiently finding predictive patterns for event detection problems. This approach first converts the time series data into time-interval sequences of temporal abstractions. It then constructs more complex time-interval patterns backward in time using temporal operators. We also present the Minimal Predictive Recent Temporal Patterns framework for selecting a small set of predictive and non-spurious patterns. We apply our methods for predicting adverse medical events in real-world clinical data. The results demonstrate the benefits of our methods in learning accurate event detection models, which is a key step for developing intelligent patient monitoring and decision support systems.Entities:
Year: 2015 PMID: 26752800 PMCID: PMC4704806 DOI: 10.1007/s10115-015-0819-6
Source DB: PubMed Journal: Knowl Inf Syst ISSN: 0219-3116 Impact factor: 2.822