Refining sleep staging accuracy: transfer learning coupled with scorability models
Wolfgang Ganglberger,
Samaneh Nasiri,
Haoqi Sun
et al.
Abstract:Study Objectives
This study aimed to (1) improve sleep staging accuracy through transfer learning (TL), to achieve or exceed human inter-expert agreement and (2) introduce a scorability model to assess the quality and trustworthiness of automated sleep staging.
Methods
A deep neural network (base model) was trained on a large multi-site polysomnography (PSG) dataset from the United States. TL was used to calibrate the model t… Show more
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