From Scalp to Ear-EEG: A Generalizable Transfer Learning Model for Automatic Sleep Scoring in Older People.


Journal

IEEE journal of translational engineering in health and medicine
ISSN: 2168-2372
Titre abrégé: IEEE J Transl Eng Health Med
Pays: United States
ID NLM: 101623153

Informations de publication

Date de publication:
2024
Historique:
received: 21 11 2023
revised: 21 03 2024
accepted: 10 04 2024
medline: 20 5 2024
pubmed: 20 5 2024
entrez: 20 5 2024
Statut: epublish

Résumé

Sleep monitoring has extensively utilized electroencephalogram (EEG) data collected from the scalp, yielding very large data repositories and well-trained analysis models. Yet, this wealth of data is lacking for emerging, less intrusive modalities, such as ear-EEG. The current study seeks to harness the abundance of open-source scalp EEG datasets by applying models pre-trained on data, either directly or with minimal fine-tuning; this is achieved in the context of effective sleep analysis from ear-EEG data that was recorded using a single in-ear electrode, referenced to the ipsilateral mastoid, and developed in-house as described in our previous work. Unlike previous studies, our research uniquely focuses on an older cohort (17 subjects aged 65-83, mean age 71.8 years, some with health conditions), and employs LightGBM for transfer learning, diverging from previous deep learning approaches. Results show that the initial accuracy of the pre-trained model on ear-EEG was 70.1%, but fine-tuning the model with ear-EEG data improved its classification accuracy to 73.7%. The fine-tuned model exhibited a statistically significant improvement (p < 0.05, dependent t-test) for 10 out of the 13 participants, as reflected by an enhanced average Cohen's kappa score (a statistical measure of inter-rater agreement for categorical items) of 0.639, indicating a stronger agreement between automated and expert classifications of sleep stages. Comparative SHAP value analysis revealed a shift in feature importance for the N3 sleep stage, underscoring the effectiveness of the fine-tuning process. Our findings underscore the potential of fine-tuning pre-trained scalp EEG models on ear-EEG data to enhance classification accuracy, particularly within an older population and using feature-based methods for transfer learning. This approach presents a promising avenue for ear-EEG analysis in sleep studies, offering new insights into the applicability of transfer learning across different populations and computational techniques. An enhanced ear-EEG method could be pivotal in remote monitoring settings, allowing for continuous, non-invasive sleep quality assessment in elderly patients with conditions like dementia or sleep apnea.

Identifiants

pubmed: 38765887
doi: 10.1109/JTEHM.2024.3388852
pmc: PMC11100860
doi:

Types de publication

Journal Article

Langues

eng

Sous-ensembles de citation

IM

Pagination

448-456

Informations de copyright

© 2024 The Authors.

Auteurs

Ghena Hammour (G)

Department of Electrical and Electronic EngineeringImperial College London SW7 2BT London U.K.
U.K. Dementia Research Institute, Care Research and Technology Centre SW7 2BT London U.K.

Harry Davies (H)

Department of Electrical and Electronic EngineeringImperial College London SW7 2BT London U.K.
U.K. Dementia Research Institute, Care Research and Technology Centre SW7 2BT London U.K.

Giuseppe Atzori (G)

2Surrey Sleep Research Centre, School of Biosciences, Faculty of Health and Medical SciencesUniversity of Surrey GU2 7XH Guildford U.K.
U.K. Dementia Research Institute, Care Research and Technology Centre SW7 2BT London U.K.

Ciro Della Monica (C)

2Surrey Sleep Research Centre, School of Biosciences, Faculty of Health and Medical SciencesUniversity of Surrey GU2 7XH Guildford U.K.
U.K. Dementia Research Institute, Care Research and Technology Centre SW7 2BT London U.K.

Kiran K G Ravindran (KKG)

2Surrey Sleep Research Centre, School of Biosciences, Faculty of Health and Medical SciencesUniversity of Surrey GU2 7XH Guildford U.K.
U.K. Dementia Research Institute, Care Research and Technology Centre SW7 2BT London U.K.

Victoria Revell (V)

2Surrey Sleep Research Centre, School of Biosciences, Faculty of Health and Medical SciencesUniversity of Surrey GU2 7XH Guildford U.K.

Derk-Jan Dijk (DJ)

2Surrey Sleep Research Centre, School of Biosciences, Faculty of Health and Medical SciencesUniversity of Surrey GU2 7XH Guildford U.K.
U.K. Dementia Research Institute, Care Research and Technology Centre SW7 2BT London U.K.

Danilo P Mandic (DP)

Department of Electrical and Electronic EngineeringImperial College London SW7 2BT London U.K.
U.K. Dementia Research Institute, Care Research and Technology Centre SW7 2BT London U.K.

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