Sleep apnea is a common sleep disorder that occurs due to repetitive obstruction of the airflow in human body that seriously affect the lives and health of people. This article aims to present an improved time–frequency transformation aided deep learning framework employing convolutional neural network (CNN) for automated diagnosis of apnea using single channel electrocardiogram (ECG) signals. The recorded ECG signals are further processed and converted into two-dimensional time frequency (TF) images via an iterative multisynchrosqueezing transform (I-MSST) for necessary feature extraction. After that the TF images are fed to a cascaded deep dense CNN (DCN). The advantages of the proposed module are twofold. Firstly, the I-MSST based images possess a concentrated TF plot superior to other conventional TF plots, and secondly, the cascaded DCN is able to concatenate features throughout the convolutional layers with the help of a conversion block. Moreover, an optimal DL framework has been formulated by tuning the hyperparameters via Bayesian optimization. The proposed method has been validated on two benchmark datasets for comparative analysis, and it is found that the proposed module can effectively diagnose SA with increased performance for an improved computer aided diagnosis system.
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