Title :
Classification Tree for Risk Assessment in Patients Suffering From Congestive Heart Failure via Long-Term Heart Rate Variability
Author :
Melillo, Paolo ; De Luca, N. ; Bracale, M. ; Pecchia, L.
Author_Institution :
Dipt. di Ing. dell´Energia Elettr. e dell´Inf., Guglielmo Marconi of the Univ. of Bologna, Bologna, Italy
Abstract :
This study aims to develop an automatic classifier for risk assessment in patients suffering from congestive heart failure (CHF). The proposed classifier separates lower risk patients from higher risk ones, using standard long-term heart rate variability (HRV) measures. Patients are labeled as lower or higher risk according to the New York Heart Association classification (NYHA). A retrospective analysis on two public Holter databases was performed, analyzing the data of 12 patients suffering from mild CHF (NYHA I and II), labeled as lower risk, and 32 suffering from severe CHF (NYHA III and IV), labeled as higher risk. Only patients with a fraction of total heartbeats intervals (RR) classified as normal-to-normal (NN) intervals (NN/RR) higher than 80% were selected as eligible in order to have a satisfactory signal quality. Classification and regression tree (CART) was employed to develop the classifiers. A total of 30 higher risk and 11 lower risk patients were included in the analysis. The proposed classification trees achieved a sensitivity and a specificity rate of 93.3% and 63.6%, respectively, in identifying higher risk patients. Finally, the rules obtained by CART are comprehensible and consistent with the consensus showed by previous studies that depressed HRV is a useful tool for risk assessment in patients suffering from CHF.
Keywords :
cardiology; data analysis; diseases; medical signal processing; regression analysis; signal classification; CART method; HRV measurement; NYHA I classification; NYHA II classification; NYHA III classification; NYHA IV classification; NYHA classification; New York Heart Association classification; automatic classifier; classification and regression tree method; classification tree sensitivity; classification tree specificity; congestive heart failure patient; data analysis; depressed HRV; higher risk patient; long-term heart rate variability; lower risk patient; mild CHF; normal-to-normal interval; public Holter database; retrospective analysis; risk assessment; satisfactory signal quality; severe CHF; total heartbeat interval classification; Accuracy; Databases; Decision trees; Heart rate variability; Sensitivity; Standards; Congestive heart failure (CHF); data mining; decision tree; heart rate variability (HRV);
Journal_Title :
Biomedical and Health Informatics, IEEE Journal of
DOI :
10.1109/JBHI.2013.2244902