DocumentCode :
742741
Title :
Prediction of Heart Failure Decompensation Events by Trend Analysis of Telemonitoring Data
Author :
Henriques, J. ; Carvalho, P. ; Paredes, S. ; Rocha, T. ; Habetha, J. ; Antunes, M. ; Morais, J.
Author_Institution :
Dept. de Eng. Inf., Univ. de Coimbra, Coimbra, Portugal
Volume :
19
Issue :
5
fYear :
2015
Firstpage :
1757
Lastpage :
1769
Abstract :
This paper aims to assess the predictive value of physiological data daily collected in a telemonitoring study in the early detection of heart failure (HF) decompensation events. The main hypothesis is that physiological time series with similar progression (trends) may have prognostic value in future clinical states (decompensation or normal condition). The strategy is composed of two main steps: a trend similarity analysis and a predictive procedure. The similarity scheme combines the Haar wavelet decomposition, in which signals are represented as linear combinations of a set of orthogonal bases, with the Karhunen-Loève transform, that allows the selection of the reduced set of bases that capture the fundamental behavior of the time series. The prediction process assumes that future evolution of current condition can be inferred from the progression of past physiological time series. Therefore, founded on the trend similarity measure, a set of time series presenting a progression similar to the current condition is identified in the historical dataset, which is then employed, through a nearest neighbor approach, in the current prediction. The strategy is evaluated using physiological data resulting from the myHeart telemonitoring study, namely blood pressure, respiration rate, heart rate, and body weight collected from 41 patients (15 decompensation events and 26 normal conditions). The obtained results suggest, in general, that the physiological data have predictive value, and in particular, that the proposed scheme is particularly appropriate to address the early detection of HF decompensation.
Keywords :
Haar transforms; biomedical telemetry; blood pressure measurement; cardiovascular system; diseases; patient monitoring; pneumodynamics; telemedicine; time series; HF decompensation; Haar wavelet decomposition; Karhunen-Loève transform; blood pressure; body weight; decompensation condition; heart failure decompensation event prediction; heart rate; historical dataset; myHeart telemonitoring study; nearest neighbor approach; normal condition; orthogonal bases; past physiological time series progression; physiological data; predictive procedure; predictive value; prognostic value; respiration rate; telemonitoring data; trend analysis; trend similarity analysis; trend similarity measure; Approximation methods; Biomedical monitoring; Market research; Physiology; Time series analysis; Wavelet transforms; Haar wavelet; heart failure (HF) decompensation; telemonitoring; time-series prediction; trend analysis;
fLanguage :
English
Journal_Title :
Biomedical and Health Informatics, IEEE Journal of
Publisher :
ieee
ISSN :
2168-2194
Type :
jour
DOI :
10.1109/JBHI.2014.2358715
Filename :
6901192
Link To Document :
بازگشت