Journal ArticleUnknown
Over-fitting suppression training strategies for deep learning-based atrial fibrillation detection
Authors
Author Affiliations
Southeast University, Northumbria University, Agency for Science, Technology and Research, Institute for Infocomm Research
Published InMedical & Biological Engineering & Computing
Year2021
Citations58
Abstract
Nowadays, deep learning-based models have been widely developed for atrial fibrillation (AF) detection in electrocardiogram (ECG) signals. However, owing to the inevitable over-fitting problem, classification accuracy of the developed models severely differed when applying on the independent test datasets. This situation is more significant for AF detection from dynamic ECGs. In this study, we explored two potential training strategies to address the over-fitting problem in AF detection. The first one is to use the Fast Fourier transform (FFT) and Hanning-window-based filter to suppress the influence from individual difference. Another is to train the model on the wearable ECG data to improve the robustness of model. Wearable ECG data from 29 patients with arrhythmia were collected for at least 24 h.…
View at Publisher
BORR does not host full-text PDFs. The button above takes you to the original publisher.