ARTICLE
TITLE

Heart Rate Variability Classification using Support Vector Machine and Genetic Algorithm

SUMMARY

Background: Electrocardiogram (ECG) is defined as an electrical signal, which represents cardiac activity. Heart rate variability (HRV) as the variation of interval between two consecutive heartbeats represents the balance between the sympathetic and parasympathetic branches of the autonomic nervous system.Objective: In this study, we aimed to evaluate the efficiency of discrete wavelet transform (DWT) based features extracted from HRV which were further selected by genetic algorithm (GA), and were deployed by support vector machine to HRV classification.Materials and Methods: In this paper, 53 ECGs including 3 different beat types (ventricular fibrillation (VF), atrial fibrillation (AF) and also normal sinus rhythm (NSR)), were selected from the MIT/BIH arrhythmia database. The approach contains 4 stages including HRV signal extraction from each ECG signal, feature extraction using DWT (entropy, mean, variance, kurtosis and spectral component ß), best features selection by GA and classification of normal and abnormal ECGs using the selected features by support vector machine (SVM).Results: The performance of the classification procedure employing the combination of selected features were evaluated using several measures including accuracy, sensitivity, specificity and precision which resulted in 97.14%, 97.54%, 96.9% and 97.64%, respectively.Conclusion: A comparative analysis with the related existing methods illustrates  the proposed method has a higher potential in the classification of AF and VF. The attempt to classify the ECG signal has been successfully achieved. The proposed method has shown a promising sensitivity of 97.54% which indicates that this technique is an excellent model for computer-aided diagnosis of cardiac arrhythmias. 

 Articles related

Miming Andika, Universitas Fort De Kock, Indonesia    

Hypertension is a cardiovascular disease that often occurs in Indonesia. This is a health problem with a high prevalence, which is 25.8%, according to the 2013 Riskesdas data. People with hypertension also often experience complications with other cardio... see more


Natalia Omelchenko-Comer,Heather Kalb,LOUELLA COHEN,CARLEY DIGIACINTO,EMILY , GIORDANO,DEEANN GREENE,SIERRA ROBINSON,DORA WALLACE,BRYLEE HENDERSON,AUDRIANNA TAYLOR,PAYTON KNICELY    

The body position is influencing multiple physiological functions, including blood pressure, lung capacity, and mood. A previous study indicated significant difference in the HR measures in sitting, prone, and supine position if the breathing pace is nor... see more


Natalia Omelchenko-Comer,Heather Kalb,LOUELLA COHEN,CARLEY DIGIACINTO,EMILY GIORDANO,DEEANN GREENE,SIERRA ROBINSON,DORA WALLACE,BRYLEE HENDERSON,PAYTON KNICELY,AUDRIANNA TAYLOR    

A decline in the heart muscle strength is a well-recognized aspect of normal aging. Nonetheless, the resting heart rate (HR) in developing adults appears to be unchanged. The aim of this study was to determine if HR recovery after exercise is influenced ... see more


Vickie Nutter,Paul Thomlinson, PhD,Jock Nunley    

The purpose of this study was to use the popular energy healing modality known as Reiki to reduce measurably the level of stress in a recipient. Specifically, the Reiki treatments would target an dement of the recipient's autonomic nervous system (ANS), ... see more


O. I. Antoniv, S. M. Kovalchuk, L. V. Panina, O. R. Pinyazhko    

Heart rate variability (HRV ) parameters and hematological indices in rats under hypobaric hypoxia duringtreatment by a thiazolidine derivative substance Les-589 (potassium salt of 3-(5-phenylpropeniliden rhodamine-3-yl)-propanoic acid) were studied. Hyp... see more