U-Sleep's resilience to AASM guidelines.

Fiorillo, Luigi; Monachino, Giuliana; van der Meer, Julia; Pesce, Marco; Warncke, Jan D; Schmidt, Markus H; Bassetti, Claudio L. A.; Tzovara, Athina; Favaro, Paolo; Faraci, Francesca D (2023). U-Sleep's resilience to AASM guidelines. NPJ digital medicine, 6(1), p. 33. Nature Publishing Group 10.1038/s41746-023-00784-0

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AASM guidelines are the result of decades of efforts aiming at standardizing sleep scoring procedure, with the final goal of sharing a worldwide common methodology. The guidelines cover several aspects from the technical/digital specifications, e.g., recommended EEG derivations, to detailed sleep scoring rules accordingly to age. Automated sleep scoring systems have always largely exploited the standards as fundamental guidelines. In this context, deep learning has demonstrated better performance compared to classical machine learning. Our present work shows that a deep learning-based sleep scoring algorithm may not need to fully exploit the clinical knowledge or to strictly adhere to the AASM guidelines. Specifically, we demonstrate that U-Sleep, a state-of-the-art sleep scoring algorithm, can be strong enough to solve the scoring task even using clinically non-recommended or non-conventional derivations, and with no need to exploit information about the chronological age of the subjects. We finally strengthen a well-known finding that using data from multiple data centers always results in a better performing model compared with training on a single cohort. Indeed, we show that this latter statement is still valid even by increasing the size and the heterogeneity of the single data cohort. In all our experiments we used 28528 polysomnography studies from 13 different clinical studies.

Item Type:

Journal Article (Original Article)

Division/Institute:

08 Faculty of Science > Institute of Computer Science (INF) > Cognitive Computational Neuroscience (CCN)
04 Faculty of Medicine > Department of Head Organs and Neurology (DKNS) > Clinic of Neurology
08 Faculty of Science > Institute of Computer Science (INF) > Computer Graphics Group (CGG)
08 Faculty of Science > Institute of Computer Science (INF)

UniBE Contributor:

Monachino, Giuliana, van der Meer, Julia, Pesce, Marco, Warncke, Jan, Schmidt, Markus Helmut, Bassetti, Claudio L.A., Tzovara, Athina, Favaro, Paolo

Subjects:

000 Computer science, knowledge & systems
500 Science > 510 Mathematics
600 Technology > 610 Medicine & health

ISSN:

2398-6352

Publisher:

Nature Publishing Group

Language:

English

Submitter:

Pubmed Import

Date Deposited:

07 Mar 2023 11:08

Last Modified:

13 Mar 2024 13:13

Publisher DOI:

10.1038/s41746-023-00784-0

PubMed ID:

36878957

BORIS DOI:

10.48350/179607

URI:

https://boris.unibe.ch/id/eprint/179607

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