Transfer Learning Based Paroxysmal Atrial Fibrillation Classification Using Continuous Wavelet Transform Scalogram
Authors
Rakibul Hasan
(Electrical and Electronic Engineering)
Abstract
Atrial fibrillation (AF), the most common
cardiac arrhythmia, is linked to comorbidity, heart failure, and aging. Its erratic and intermittent behavior makes reliable detection difficult. Recent research has demonstrated the usefulness of nonlinear time and frequency domain
characteristics in the detection of AF through the application
of deep learning (DL) and other machine learning (ML)
techniques. In this study, the CPSC 2021 dataset was used to
create continuous wavelet transform (CWT)-based scalogram
images from cardiac rhythms comprising normal, persistent atrial fibrillation (PAF), and paroxysmal atrial fibrillation
(PoxyAF). The challenge involved classifying normal and PAF
scalogram images, as well as three classes of classification: normal, PAF, and PoxyAF, for which transfer learning (TL) models were utilized. A number of TL models were trained; among them, EfficientNetB7 obtained a testing accuracy of
99.27% for two-class classification, whereas MobileNet achieved 93.23% for three-class classification.