DEEP LEARNING METHOD FOR ENHANCING SLEEP STAGING CLASSIFICATION
Zhengzhong Zhu
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https://hdl.handle.net/2142/114850
Description
Title
DEEP LEARNING METHOD FOR ENHANCING SLEEP STAGING CLASSIFICATION
Author(s)
Zhengzhong Zhu
Issue Date
2022-05
Keyword(s)
Deep Learning; Sleep Staging Classification
Abstract
Traditionally, doctors classify the sleep staging of patients by manually examining the
spectrogram of electroencephalogram (EEG) data at different time intervals. We propose a twostage pipeline that automatically predicts the staging of sleep given enough confidence and
requests for manual labeling from doctors given enough uncertainty. In the first stage, multiple
deep learning models, such as VGG-16 and ResNet-50, take in EEG data preprocessed with fast
Fourier transform (FFT) and output a prediction and some confidence scores. In the second
stage, multiple models with trainable parameters take in the confidence scores and output the
decision of whether accept or reject the prediction. Among different combinations of models,
RESNET-50 and SCRIB achieve the lowest average class-specific risk.
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