Deep learning‐mediated prediction of concealed accessory pathway based on sinus rhythmic electrocardiograms
Lei Wang,
Fang Yang,
Xiao‐Jing Bao
et al.
Abstract:BackgroundConcealed accessory pathway (AP) may cause atrial ventricular reentrant tachycardia impacting the health of patients. However, it is asymptomatic and undetectable during sinus rhythm.MethodsTo detect concealed AP with electrocardiography (ECG) images, we collected normal sinus rhythmic ECG images of concealed AP patients and healthy subjects. All ECG images were randomly allocated to the training and testing datasets, and were used to train and test six popular convolutional neural networks from Imag… Show more
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