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Arrhythmia Classification Using Graph Neural Networks Based on Correlation Matrix

IEEE International Conference on Bioinformatics and Biomedicine (BIBM), 2024
Seungwoo Han
Main:3 Pages
1 Figures
3 Tables
Abstract

With the advancements in graph neural network, there has been increasing interest in applying this network to ECG signal analysis. In this study, we generated an adjacency matrix using correlation matrix of extracted features and applied a graph neural network to classify arrhythmias. The proposed model was compared with existing approaches from the literature. The results demonstrated that precision and recall for all arrhythmia classes exceeded 50%, suggesting that this method can be considered an approach for arrhythmia classification.

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