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Learning Outcome-Discriminative Dynamics in Multivariate Physiological Cohort Time Series

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2013

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Institute of Electrical and Electronics Engineers
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Nemati, Shamim, Li-wei H. Lehman, and Ryan P. Adams. 2013. Learning outcome-discriminative dynamics in multivariate physiological cohort time series. In Proceedings of the Annual International Conference of the IEEE Engineering in Medicine and Biology Society, 7104-7107. New York: Institute of Electrical and Electronics Engineers.

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Abstract

Model identification for physiological systems is complicated by changes between operating regimes and measurement artifacts. We present a solution to these problems by assuming that a cohort of physiological time series is generated by switching among a finite collection of physiologically-constrained dynamical models and artifactual segments. We model the resulting time series using the switching linear dynamical systems (SLDS) framework, and present a novel learning algorithm for the class of SLDS, with the objective of identifying time series dynamics that are predictive of physiological regimes or outcomes of interest. We present exploratory results based on a simulation study and a physiological classification example of decoding postural changes from heart rate and blood pressure. We demonstrate a significant improvement in classification over methods based on feature learning via expectation maximization. The proposed learning algorithm is general, and can be extended to other applications involving state-space formulations.

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biomedical monitoring, heart rate, heuristic algorithms, prediction algorithms, switches, time series analysis, SLDS, artifactual segment, blood pressure, classification over method, expectation maximization, feature learning, learning algorithm, learning outcome-discriminative dynamics, measurement artifact, model identification, multivariate physiological cohort time series, physiologically-constrained dynamical model, postural change decoding, state-space formulation, switching linear dynamical system framework, time series dynamics, cardiology, expectation-maximisation algorithm, learning systems, medical signal processing, multivariable systems, physiology, signal classification, time series

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