A Survey of Applications of Artificial Intelligence for Myocardial
Infarction Disease Diagnosis
- URL: http://arxiv.org/abs/2107.06179v1
- Date: Mon, 5 Jul 2021 15:15:06 GMT
- Title: A Survey of Applications of Artificial Intelligence for Myocardial
Infarction Disease Diagnosis
- Authors: Javad Hassannataj Joloudari, Sanaz Mojrian, Issa Nodehi, Amir
Mashmool, Zeynab Kiani Zadegan, Sahar Khanjani Shirkharkolaie, Tahereh
Tamadon, Samiyeh Khosravi, Mitra Akbari, Edris Hassannataj, Roohallah
Alizadehsani, Danial Sharifrazi, and Amir Mosavi
- Abstract summary: Myocardial infarction disease (MID) is caused to the rapid progress of undiagnosed coronary artery disease (CAD)
MID is the leading cause of death in middle-aged and elderly subjects all over the world.
In general, raw Electrocardiogram (ECG) signals are tested for MID identification by clinicians that is exhausting, time-consuming, and expensive.
- Score: 0.483999377006747
- License: http://creativecommons.org/licenses/by-sa/4.0/
- Abstract: Myocardial infarction disease (MID) is caused to the rapid progress of
undiagnosed coronary artery disease (CAD) that indicates the injury of a heart
cell by decreasing the blood flow to the cardiac muscles. MID is the leading
cause of death in middle-aged and elderly subjects all over the world. In
general, raw Electrocardiogram (ECG) signals are tested for MID identification
by clinicians that is exhausting, time-consuming, and expensive. Artificial
intelligence-based methods are proposed to handle the problems to diagnose MID
on the ECG signals automatically. Hence, in this survey paper, artificial
intelligence-based methods, including machine learning and deep learning, are
review for MID diagnosis on the ECG signals. Using the methods demonstrate that
the feature extraction and selection of ECG signals required to be handcrafted
in the ML methods. In contrast, these tasks are explored automatically in the
DL methods. Based on our best knowledge, Deep Convolutional Neural Network
(DCNN) methods are highly required methods developed for the early diagnosis of
MID on the ECG signals. Most researchers have tended to use DCNN methods, and
no studies have surveyed using artificial intelligence methods for MID
diagnosis on the ECG signals.
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