DocumentCode :
992
Title :
Predictive Monitoring of Mobile Patients by Combining Clinical Observations With Data From Wearable Sensors
Author :
Clifton, L. ; Clifton, D.A. ; Pimentel, Marco A. F. ; Watkinson, Peter J. ; Tarassenko, Lionel
Author_Institution :
Dept. of Eng. Sci., Univ. of Oxford, Oxford, UK
Volume :
18
Issue :
3
fYear :
2014
fDate :
May-14
Firstpage :
722
Lastpage :
730
Abstract :
The majority of patients in the hospital are ambulatory and would benefit significantly from predictive and personalized monitoring systems. Such patients are well suited to having their physiological condition monitored using low-power, minimally intrusive wearable sensors. Despite data-collection systems now being manufactured commercially, allowing physiological data to be acquired from mobile patients, little work has been undertaken on the use of the resultant data in a principled manner for robust patient care, including predictive monitoring. Most current devices generate so many false-positive alerts that devices cannot be used for routine clinical practice. This paper explores principled machine learning approaches to interpreting large quantities of continuously acquired, multivariate physiological data, using wearable patient monitors, where the goal is to provide early warning of serious physiological determination, such that a degree of predictive care may be provided. We adopt a one-class support vector machine formulation, proposing a formulation for determining the free parameters of the model using partial area under the ROC curve, a method arising from the unique requirements of performing online analysis with data from patient-worn sensors. There are few clinical evaluations of machine learning techniques in the literature, so we present results from a study at the Oxford University Hospitals NHS Trust devised to investigate the large-scale clinical use of patient-worn sensors for predictive monitoring in a ward with a high incidence of patient mortality. We show that our system can combine routine manual observations made by clinical staff with the continuous data acquired from wearable sensors. Practical considerations and recommendations based on our experiences of this clinical study are discussed, in the context of a framework for personalized monitoring.
Keywords :
biomedical electronics; biomedical telemetry; body sensor networks; data acquisition; data analysis; information services; learning (artificial intelligence); low-power electronics; patient care; patient monitoring; support vector machines; telemedicine; ambulatory hospital patients; clinical evaluations; clinical observations; continuous physiological data acquisition; data collection systems; false-positive alert generation; large-scale clinical use; low-power wearable sensors; minimally intrusive wearable sensors; multivariate physiological data; one-class support vector machine formulation; online data analysis; partial area under the ROC curve; patient mortality incidence; personalized monitoring systems; physiological condition monitoring; predictive care; predictive mobile patient monitoring; predictive monitoring systems; principled machine learning approaches; robust patient care; routine clinical practice; routine manual observations; wearable patient monitors; wearable sensor data; Biomedical monitoring; Hospitals; Kernel; Manuals; Monitoring; Support vector machines; Wearable sensors; E-health; novelty detection; personalized monitoring; predictive monitoring;
fLanguage :
English
Journal_Title :
Biomedical and Health Informatics, IEEE Journal of
Publisher :
ieee
ISSN :
2168-2194
Type :
jour
DOI :
10.1109/JBHI.2013.2293059
Filename :
6675775
Link To Document :
بازگشت