Abstract

Cardiovascular diseases have been reported to be the leading cause of mortality across the globe. Among such diseases, Myocardial Infarction (MI), also known as “heart attack”, is of main interest among researchers, as its early diagnosis can prevent life threatening cardiac conditions and potentially save human lives. Analyzing the Electrocardiogram (ECG) can provide valuable diagnostic information to detect different types of cardiac arrhythmia. Real-time ECG monitoring systems with advanced machine learning methods provide information about the health status in real-time and have improved user’s experience. However, advanced machine learning methods have put a burden on portable and wearable devices due to their high computing requirements. We present an improved, less complex Convolutional Neural Network (CNN)-based classifier model that identifies multiple arrhythmia types using the two-dimensional image of the ECG wave in real-time. The proposed model is presented as a three-layer ECG signal analysis model that can potentially be adopted in real-time portable and wearable monitoring devices. We have designed, implemented, and simulated the proposed CNN network using Matlab. We also present the hardware implementation of the proposed method to validate its adaptability in real-time wearable systems. The European ST-T database recorded with single lead L3 is used to validate the CNN classifier and achieved an accuracy of 99.23%, outperforming most existing solutions.

Highlights

  • This study aims to contribute to the growing area of research in ECG analysis and detection of different arrhythmia types in real-time to prevent various cardiac conditions and to improve telehealth practices

  • We present a 2-D Convolutional Neural Network (CNN) based classifier model that performs the automated feature engineering and learns the fiducial points with global averaging presented at the feature map level of the CNN

  • Records used to construct the DS3.2 TrainingSet are different from the records used for the DS3.2

Read more

Summary

Introduction

Coronary Heart Disease (CHD), known as Cardiovascular Disease (CVD) is a result of lack of blood supply to the heart organ. CHD is attributed to many different types of arrhythmia, which are generally defined as irregular, slow, or rapid heart beats. Acute Myocardial Infarction (MI) can result in death, but fatalities usually depend on the severity of an arrhythmia. The rising mortality rates due to these heart diseases have demanded early diagnosis of cardiac conditions before they progress to acute MI and leading to death. The most common tool to diagnose different types of arrhythmia is Electrocardiogram (ECG). Thorough analysis of ECG has gained much attention among researchers to accurately and effectively diagnose arrhythmia and critical cardiac conditions

Objectives
Results
Discussion
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call