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Classification of 12-Lead ECG Signals with Bi-directional LSTM Network

5 November 2018
A. Mostayed
David A. Moore
Srinivas Vasudevan
W. Wee
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Abstract

We propose a recurrent neural network classifier to detect pathologies in 12-lead ECG signals and train and validate the classifier with the Chinese physiological signal challenge dataset (http://www.icbeb.org/Challenge.html). The recurrent neural network consists of two bi-directional LSTM layers and can train on arbitrary-length ECG signals. Our best trained model achieved an average F1 score of 74.15% on the validation set. Keywords: ECG classification, Deep learning, RNN, Bi-directional LSTM, QRS detection.

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