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Refining sleep staging accuracy: Transfer learning coupled with scorability models.

Wolfgang GanglbergerSamaneh NasiriHaoqi SunSoriul KimChol ShinM Brandon WestoverRobert Joseph Thomas
Published in: Sleep (2024)
Fine-tuning a pre-trained neural network through targeted transfer learning significantly enhances sleep staging performance for an atypical montage, achieving and surpassing human expert agreement levels. The introduction of a scorability assessment provides a robust measure of reliability, ensuring quality control and enhancing the practical application of the system before deployment. This approach marks an important advancement in automated sleep analysis, demonstrating the potential for AI to exceed human performance in clinical settings.
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