Title of article :
Optimal Length of Heart Rate Variability Data and Forecasting Time for Ventricular Fibrillation Prediction Using Machine Learning
Author/Authors :
Jeong, Da Un Department of IT Convergence Engineering - Kumoh National Institute of Technology - Gumi, Republic of Korea , Tadele Taye, Getu School of Public Health - Mekelle University - Mekelle, Ethiopia , Hwang, Han-Jeong Department of Electronics and Information Engineering - Korea University - Sejong, Republic of Korea , Lim, Ki Moo Department of IT Convergence Engineering - Kumoh National Institute of Technology - Gumi, Republic of Korea
Abstract :
Ventricular fibrillation (VF) is a cardiovascular disease that is one of the major causes of mortality worldwide, according to the
World Health Organization. Heart rate variability (HRV) is a biomarker that is used for detecting and predicting lifethreatening arrhythmias. Predicting the occurrence of VF in advance is important for saving patients from sudden death. We
extracted features from seven HRV data lengths to predict the onset of VF before nine different forecast times and observed the
prediction accuracies. By using only five features, an artificial neural network classifier was trained and validated based on 10-
fold cross-validation. Maximum prediction accuracies of 88.18% and 88.64% were observed at HRV data lengths of 10 and 20 s,
respectively, at a forecast time of 0 s. The worst prediction accuracy was recorded at an HRV data length of 70 s and a forecast
time of 80 s. Our results showed that features extracted from HRV signals near the VF onset could yield relatively high VF
prediction accuracies.
Keywords :
HRV , VF , HRV , Fibrillation
Journal title :
Computational and Mathematical Methods in Medicine