Abstract

Arrhythmia is considered a life-threatening disease causing serious health issues in patients, when left untreated. An early diagnosis of arrhythmias would be helpful in saving lives. This study is conducted to classify patients into one of the sixteen subclasses, among which one class represents absence of disease and the other fifteen classes represent electrocardiogram records of various subtypes of arrhythmias. The research is carried out on the dataset taken from the University of California at Irvine Machine Learning Data Repository. The dataset contains a large volume of feature dimensions which are reduced using wrapper based feature selection technique. For multiclass classification, support vector machine (SVM) based approaches including one-against-one (OAO), one-against-all (OAA), and error-correction code (ECC) are employed to detect the presence and absence of arrhythmias. The SVM method results are compared with other standard machine learning classifiers using varying parameters and the performance of the classifiers is evaluated using accuracy, kappa statistics, and root mean square error. The results show that OAO method of SVM outperforms all other classifiers by achieving an accuracy rate of 81.11% when used with 80/20 data split and 92.07% using 90/10 data split option.

Highlights

  • In today’s world, people are suffering from various chronic diseases

  • This research is conducted on the arrhythmia dataset taken from the University of California at Irvine (UCI) machine learning repository

  • The dataset has a total of 279 attributes for each given sample where the first four attributes contain general information such as age, height, gender, and weight, while the rest of the attributes are extracted from the ECG signals recorded by a standard 12-lead recorder including the P, Q, R, S, and T waves information

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Summary

Introduction

In today’s world, people are suffering from various chronic diseases. Among them heart diseases are found to affect a large size of population. The most widely used tool for diagnosing the function of heart is the electrocardiogram (ECG) recorded using electrodes places on the body, which produces a graphical pattern of the electrical impulses of heart [1]. ECG signals are normally made of P waves, T waves, and QRS complex. The significant parameters required for the examination of heart-patients are time duration, shape, and the relationship between P wave, QRS complex, T wave, and R-R interval. Any abrupt change in these parameters indicates an ailment of the heart that may occur due to a wide range of reasons [2]

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