Detection of Myocardial Infarction using ECG and Multi-Scale Feature Concatenate

Diverse computer-aided diagnosis systems based on convolutional neural networks were applied to automate the detection of myocardial infarction (MI) found in electrocardiogram (ECG) for early diagnosis and prevention. However; issues; particularly overfitting and underfitting; were not being taken i...

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Main Authors: Jian, Jia-Zheng, Ger, Tzong-Rong, Lai, Han-Hua, Ku, Chi-Ming, Chen, Chiung-An, Abu, Patricia Angela R
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Published: Archīum Ateneo 2021
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Online Access:https://archium.ateneo.edu/discs-faculty-pubs/218
https://archium.ateneo.edu/cgi/viewcontent.cgi?article=1216&context=discs-faculty-pubs
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spelling ph-ateneo-arc.discs-faculty-pubs-12162022-01-31T05:10:23Z Detection of Myocardial Infarction using ECG and Multi-Scale Feature Concatenate Jian, Jia-Zheng Ger, Tzong-Rong Lai, Han-Hua Ku, Chi-Ming Chen, Chiung-An Abu, Patricia Angela R Diverse computer-aided diagnosis systems based on convolutional neural networks were applied to automate the detection of myocardial infarction (MI) found in electrocardiogram (ECG) for early diagnosis and prevention. However; issues; particularly overfitting and underfitting; were not being taken into account. In other words; it is unclear whether the network structure is too simple or complex. Toward this end; the proposed models were developed by starting with the simplest structure: a multi-lead features-concatenate narrow network (N-Net) in which only two convolutional layers were included in each lead branch. Additionally; multi-scale features-concatenate networks (MSN-Net) were also implemented where larger features were being extracted through pooling the signals. The best structure was obtained via tuning both the number of filters in the convolutional layers and the number of inputting signal scales. As a result; the N-Net reached a 95.76% accuracy in the MI detection task; whereas the MSN-Net reached an accuracy of 61.82% in the MI locating task. Both networks give a higher average accuracy and a significant difference of p < 0.001 evaluated by the U test compared with the state-of-the-art. The models are also smaller in size thus are suitable to fit in wearable devices for offline monitoring. In conclusion; testing throughout the simple and complex network structure is indispensable. However; the way of dealing with the class imbalance problem and the quality of the extracted features are yet to be discussed. 2021-03-09T08:00:00Z text application/pdf https://archium.ateneo.edu/discs-faculty-pubs/218 https://archium.ateneo.edu/cgi/viewcontent.cgi?article=1216&amp;context=discs-faculty-pubs Department of Information Systems & Computer Science Faculty Publications Archīum Ateneo accuracy convolution neural network (CNN) classifiers electrocardiography k-fold validation myocardial infarction sensitivity Cardiology Computer Engineering Computer Sciences Medicine and Health Sciences
institution Ateneo De Manila University
building Ateneo De Manila University Library
continent Asia
country Philippines
Philippines
content_provider Ateneo De Manila University Library
collection archium.Ateneo Institutional Repository
topic accuracy
convolution neural network (CNN)
classifiers
electrocardiography
k-fold validation
myocardial infarction
sensitivity
Cardiology
Computer Engineering
Computer Sciences
Medicine and Health Sciences
spellingShingle accuracy
convolution neural network (CNN)
classifiers
electrocardiography
k-fold validation
myocardial infarction
sensitivity
Cardiology
Computer Engineering
Computer Sciences
Medicine and Health Sciences
Jian, Jia-Zheng
Ger, Tzong-Rong
Lai, Han-Hua
Ku, Chi-Ming
Chen, Chiung-An
Abu, Patricia Angela R
Detection of Myocardial Infarction using ECG and Multi-Scale Feature Concatenate
description Diverse computer-aided diagnosis systems based on convolutional neural networks were applied to automate the detection of myocardial infarction (MI) found in electrocardiogram (ECG) for early diagnosis and prevention. However; issues; particularly overfitting and underfitting; were not being taken into account. In other words; it is unclear whether the network structure is too simple or complex. Toward this end; the proposed models were developed by starting with the simplest structure: a multi-lead features-concatenate narrow network (N-Net) in which only two convolutional layers were included in each lead branch. Additionally; multi-scale features-concatenate networks (MSN-Net) were also implemented where larger features were being extracted through pooling the signals. The best structure was obtained via tuning both the number of filters in the convolutional layers and the number of inputting signal scales. As a result; the N-Net reached a 95.76% accuracy in the MI detection task; whereas the MSN-Net reached an accuracy of 61.82% in the MI locating task. Both networks give a higher average accuracy and a significant difference of p < 0.001 evaluated by the U test compared with the state-of-the-art. The models are also smaller in size thus are suitable to fit in wearable devices for offline monitoring. In conclusion; testing throughout the simple and complex network structure is indispensable. However; the way of dealing with the class imbalance problem and the quality of the extracted features are yet to be discussed.
format text
author Jian, Jia-Zheng
Ger, Tzong-Rong
Lai, Han-Hua
Ku, Chi-Ming
Chen, Chiung-An
Abu, Patricia Angela R
author_facet Jian, Jia-Zheng
Ger, Tzong-Rong
Lai, Han-Hua
Ku, Chi-Ming
Chen, Chiung-An
Abu, Patricia Angela R
author_sort Jian, Jia-Zheng
title Detection of Myocardial Infarction using ECG and Multi-Scale Feature Concatenate
title_short Detection of Myocardial Infarction using ECG and Multi-Scale Feature Concatenate
title_full Detection of Myocardial Infarction using ECG and Multi-Scale Feature Concatenate
title_fullStr Detection of Myocardial Infarction using ECG and Multi-Scale Feature Concatenate
title_full_unstemmed Detection of Myocardial Infarction using ECG and Multi-Scale Feature Concatenate
title_sort detection of myocardial infarction using ecg and multi-scale feature concatenate
publisher Archīum Ateneo
publishDate 2021
url https://archium.ateneo.edu/discs-faculty-pubs/218
https://archium.ateneo.edu/cgi/viewcontent.cgi?article=1216&amp;context=discs-faculty-pubs
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