Title :
Factorial Switching Linear Dynamical Systems Applied to Physiological Condition Monitoring
Author :
Quinn, John A. ; Williams, Christopher K I ; McIntosh, Neil
Author_Institution :
Dept. of Comput. Sci., Makerere Univ., Kampala, Uganda
Abstract :
Condition monitoring often involves the analysis of systems with hidden factors that switch between different modes of operation in some way. Given a sequence of observations, the task is to infer the filtering distribution of the switch setting at each time step. In this paper, we present factorial switching linear dynamical systems as a general framework for handling such problems. We show how domain knowledge and learning can be successfully combined in this framework, and introduce a new factor (the ldquoX-factorrdquo) for dealing with unmodeled variation. We demonstrate the flexibility of this type of model by applying it to the problem of monitoring the condition of a premature baby receiving intensive care. The state of health of a baby cannot be observed directly, but different underlying factors are associated with particular patterns of physiological measurements and artifacts. We have explicit knowledge of common factors and use the X-factor to model novel patterns which are clinically significant but have unknown cause. Experimental results are given which show the developed methods to be effective on typical intensive care unit monitoring data.
Keywords :
biology computing; computerised monitoring; condition monitoring; patient treatment; physiology; time-varying systems; X-factor; factorial switching linear dynamical systems; filtering distribution; intensive care unit monitoring data; physiological condition monitoring; premature baby; switch setting; unmodeled variation; Condition monitoring; Medicine and science; Novelty detection; Switching linear dynamical system; Time series analysis; intensive care.; novelty detection; switching Kalman filter; switching linear dynamical system; Algorithms; Artificial Intelligence; Decision Support Systems, Clinical; Diagnosis, Computer-Assisted; Factor Analysis, Statistical; Humans; Infant, Newborn; Intensive Care, Neonatal; Linear Models; Monitoring, Physiologic; Pattern Recognition, Automated;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on
DOI :
10.1109/TPAMI.2008.191