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Advisor(s)
Abstract(s)
: Cyclic Alternating Pattern (CAP) is a sleep instability marker defined based on the ampli tude and frequency of the electroencephalogram signal. Because of the time and intensive process
of labeling the data, different machine learning and automatic approaches are proposed. However,
due to the low accuracy of the traditional approach and the black box approach of the machine
learning approach, the proposed systems remain untrusted by the physician. This study contributes
to accurately estimating CAP in a Frequency-Time domain by A-phase and its subtypes prediction by
transforming the monopolar deviated electroencephalogram signals into corresponding scalograms.
Subsequently, various computer vision classifiers were tested for the A-phase using scalogram images.
It was found that MobileNetV2 outperformed all other tested classifiers by achieving the average
accuracy, sensitivity, and specificity values of 0.80, 0.75, and 0.81, respectively. The MobileNetV2
trained model was further fine-tuned for A-phase subtypes prediction. To further verify the visual
ability of the trained models, Gradcam++ was employed to identify the targeted regions by the
trained network. It was verified that the areas identified by the model match the regions focused
on by the sleep experts for A-phase predictions, thereby proving its clinical viability and robustness.
This motivates the development of novel deep learning based methods for CAP patterns predictions.
Description
Keywords
Continuous wavelet transform Cyclic alternating patterns Deep learning Electroencephalogram Signal processing . Faculdade de Ciências Exatas e da Engenharia
Citation
Gupta , A.; Mendonça, F.; Mostafa, S.S.; Ravelo-García, A.G.; Morgado-Dias, F. Visual Explanations of Deep Learning Architectures in Predicting Cyclic Alternating Patterns Using Wavelet Transforms. Electronics 2023, 12, 2954. https:// doi.org/10.3390/electronics12132954
Publisher
MDPI