Abstract

In the present work, an automated method to diagnose Congestive Heart Failure (CHF) using Heart Rate Variability (HRV) signals is proposed. This method is based on Flexible Analytic Wavelet Transform (FAWT), which decomposes the HRV signals into different sub-band signals. Further, Accumulated Fuzzy Entropy (AFEnt) and Accumulated Permutation Entropy (APEnt) are computed over cumulative sums of these sub-band signals. This provides complexity analysis using fuzzy and permutation entropies at different frequency scales. We have extracted 20 features from these signals obtained at different frequency scales of HRV signals. The Bhattacharyya ranking method is used to rank the extracted features from the HRV signals of three different lengths (500, 1000 and 2000 samples). These ranked features are fed to the Least Squares Support Vector Machine (LS-SVM) classifier. Our proposed system has obtained a sensitivity of 98.07%, specificity of 98.33% and accuracy of 98.21% for the 500-sample length of HRV signals. Our system yielded a sensitivity of 97.95%, specificity of 98.07% and accuracy of 98.01% for HRV signals of a length of 1000 samples and a sensitivity of 97.76%, specificity of 97.67% and accuracy of 97.71% for signals corresponding to the 2000-sample length of HRV signals. Our automated system can aid clinicians in the accurate detection of CHF using HRV signals. It can be installed in hospitals, polyclinics and remote villages where there is no access to cardiologists.

Highlights

  • Around the world, nearly 26 million people are living with Congestive Heart Failure (CHF) [1].It is a pathophysiological condition in which heart is unable to provide sufficient blood supply to fulfill the requirements of the body [2]

  • We have computed Accumulated Permutation Entropy (APEnt) and Accumulated Fuzzy Entropy (AFEnt) at different frequency scales. These different frequency scales of Heart Rate Variability (HRV) signals are obtained by adding the sub-band signal from the high frequency component to the low frequency component and the low frequency component to the high frequency component

  • This dataset has the recordings of MIT-BIH NSR for normal subjects and the BIDMC dataset for CHF patients

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Summary

Introduction

Nearly 26 million people are living with Congestive Heart Failure (CHF) [1]. It is a pathophysiological condition in which heart is unable to provide sufficient blood supply to fulfill the requirements of the body [2]. It may be the result of structural or functional cardiac disorders. Edema and fatigue are the common symptoms of CHF [2,3] It is the last stage of several cardiac diseases namely; heart valve disease, Myocardial Infarction (MI) and dilated cardiomyopathy [4].

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