학술논문

Myocardial Infarction Severity Stages Classification From ECG Signals Using Attentional Recurrent Neural Network
Document Type
Periodical
Source
IEEE Sensors Journal IEEE Sensors J. Sensors Journal, IEEE. 20(15):8711-8720 Aug, 2020
Subject
Signal Processing and Analysis
Communication, Networking and Broadcast Technologies
Components, Circuits, Devices and Systems
Robotics and Control Systems
Electrocardiography
Myocardium
Feature extraction
Recurrent neural networks
Electromagnetic interference
Pathology
Lead
Electrocardiogram (ECG)
myocardial infarction
recurrent neural networks
attention mechanism
Language
ISSN
1530-437X
1558-1748
2379-9153
Abstract
Myocardial infarction (MI) is a lethal heart condition that occurs due to the lack of blood flow to the heart tissues. Based on the time from symptoms onset, it is categorized into three severity stages: early MI (EMI), acute MI (AMI), and chronic MI (CMI). Electrocardiogram (ECG) signals are often used to diagnose MI with pathological changes in its characteristics. In clinical practice, accurate diagnosis and risk-stratification are essential to optimize various treatment strategies, hence clinical outcome. However, most automated methods focus only on identifying MI patients from healthy controls (HC). Therefore, in this paper, we propose a novel multi-lead diagnostic attention-based recurrent neural network (MLDA-RNN) for automated diagnosis of the three MI severity stages from HC subjects. The method systematically processes the 12-lead ECGs to capture the multi-scale temporal dependencies from each ECG leads for improved classification. Specifically, we first employ the RNNs to encode the temporal variations in the 12-lead ECG signals. These encoded vectors are fed to the intra-lead attention module to summarize the within-lead discriminative vectors to obtain lead-attentive representations. Then, the inter-lead attention module aggregates these representative vectors based on their clinical relevance to obtain a high-level feature representation for a reliable diagnosis. Using 12-lead ECGs from the PTBDB and STAFF III datasets, we achieved an overall accuracy of 97.79% without compromising on the class-wise detection rates. With improved performance, the MLDA-RNN also shows promising results for model interpretability as the learned attention weights often correlate with clinicians’ way of diagnosing MI severity stages.