DS1 spectrogram: UCTECG-Net: Uncertainty-aware Convolution Transformer ECG Network for Arrhythmia Detection

UCTECG-Net: Uncertainty-aware Convolution Transformer ECG Network for Arrhythmia Detection

February 18, 20262602.16216

Authors

Hamzeh Asgharnezhad,Pegah Tabarisaadi,Abbas Khosravi,Roohallah Alizadehsani,U. Rajendra Acharya

Abstract

Deep learning has improved automated electrocardiogram (ECG) classification, but limited insight into prediction reliability hinders its use in safety-critical settings. This paper proposes UCTECG-Net, an uncertainty-aware hybrid architecture that combines one-dimensional convolutions and Transformer encoders to process raw ECG signals and their spectrograms jointly.

Evaluated on the MIT-BIH Arrhythmia and PTB Diagnostic datasets, UCTECG-Net outperforms LSTM, CNN1D, and Transformer baselines in terms of accuracy, precision, recall and F1 score, achieving up to 98.58% accuracy on MIT-BIH and 99.14% on PTB. To assess predictive reliability, we integrate three uncertainty quantification methods (Monte Carlo Dropout, Deep Ensembles, and Ensemble Monte Carlo Dropout) into all models and analyze their behavior using an uncertainty-aware confusion matrix and derived metrics.

The results show that UCTECG-Net, particularly with Ensemble or EMCD, provides more reliable and better-aligned uncertainty estimates than competing architectures, offering a stronger basis for risk-aware ECG decision support.

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