Myocardial infarction detection using ECG signal applying deep learning techniques - ConvNet, VGG16, InceptionV3 and MobileNet
Abstract
Due to our unhealthy diets and the consumption of enhanced cholesterol in our
daily lives, our health has become vulnerable and at risk of different types of cardiac
diseases. The most common of them is Myocardial Infarction (MI), also known
as Heart Attack. Myocardial Infarction takes place because of sudden blockage of
blood flow in one’s heart. Without sufficient blood flow, one’s heart muscles cannot
get the nourishment and oxygen that they need to function appropriately, which
causes irreversible damage to the heart tissues. However, early detection and treatment
of a Myocardial infarction can decrease the risk of heart damage and increase
the rate of survival. As a diagnostic tool, the Electrocardiogram (ECG) is one of
the most popular to diagnose various cardiovascular illnesses, including Myocardial
Infarction (MI). The ECG captures the heart’s electrical activity and these signals
can be utilized to diagnose irregular cardiac rhythms. Because of the intensity and
duration of ECG signals, manual ECG signal diagnosis is prone to errors and is neither
sensitive nor specific for MI diagnosis when used alone. Therefore, this research
proposes a novel approach of detecting Myocardial Infarction (MI), using deep learning
techniques. It includes ConvNet model as well as other popular transfer learning
models like MobileNet, VGG16 and InceptionV3 which uses 12-lead ECG signals as
input. The trained model with the proposed ConvNet and MobileNet architecture
have shown exceptionally promising accuracy in MI detection compared to VGG16
and InceptionV3. The performance of the proposed models are measured using Confusion
matrix , Precision score, F1-score, Recall score and ROC curve. Our average
accuracy is 97.50 percent which is acquired by using MobileNet. Also, the Convnet
model shows promising result. Thereby, we can say that the suggested model can
deliver high MI detection performance in wearable technologies and intensive care
units.