Deep conv-attention model for diagnosing left bundle branch block from 12-lead electrocardiograms
Alireza Sadeghi, Alireza Rezaee, Farshid Hajati

TL;DR
This paper introduces a deep learning model with attention mechanisms for accurately diagnosing left bundle branch block from 12-lead ECG data, achieving high accuracy and aiding early treatment decisions.
Contribution
A novel deep conv-attention model specifically designed for LBBB detection from ECG data, demonstrating superior accuracy over traditional methods.
Findings
Accuracy of 98.80% on ECG data
High specificity of 99.33%
F1 score of 73.97%
Abstract
Cardiac resynchronization therapy (CRT) is a treatment that is used to compensate for irregularities in the heartbeat. Studies have shown that this treatment is more effective in heart patients with left bundle branch block (LBBB) arrhythmia. Therefore, identifying this arrhythmia is an important initial step in determining whether or not to use CRT. On the other hand, traditional methods for detecting LBBB on electrocardiograms (ECG) are often associated with errors. Thus, there is a need for an accurate method to diagnose this arrhythmia from ECG data. Machine learning, as a new field of study, has helped to increase human systems' performance. Deep learning, as a newer subfield of machine learning, has more power to analyze data and increase systems accuracy. This study presents a deep learning model for the detection of LBBB arrhythmia from 12-lead ECG data. This model consists of…
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Taxonomy
TopicsECG Monitoring and Analysis · EEG and Brain-Computer Interfaces
