Literature DB >> 32866092

Towards More Accurate Automatic Sleep Staging via Deep Transfer Learning.

Huy Phan, Oliver Y Chen, Philipp Koch, Zongqing Lu, Ian McLoughlin, Alfred Mertins, Maarten De Vos.   

Abstract

BACKGROUND: Despite recent significant progress in the development of automatic sleep staging methods, building a good model still remains a big challenge for sleep studies with a small cohort due to the data-variability and data-inefficiency issues. This work presents a deep transfer learning approach to overcome these issues and enable transferring knowledge from a large dataset to a small cohort for automatic sleep staging.
METHODS: We start from a generic end-to-end deep learning framework for sequence-to-sequence sleep staging and derive two networks as the means for transfer learning. The networks are first trained in the source domain (i.e. the large database). The pretrained networks are then finetuned in the target domain (i.e. the small cohort) to complete knowledge transfer. We employ the Montreal Archive of Sleep Studies (MASS) database consisting of 200 subjects as the source domain and study deep transfer learning on three different target domains: the Sleep Cassette subset and the Sleep Telemetry subset of the Sleep-EDF Expanded database, and the Surrey-cEEGrid database. The target domains are purposely adopted to cover different degrees of data mismatch to the source domains.
RESULTS: Our experimental results show significant performance improvement on automatic sleep staging on the target domains achieved with the proposed deep transfer learning approach.
CONCLUSIONS: These results suggest the efficacy of the proposed approach in addressing the above-mentioned data-variability and data-inefficiency issues. SIGNIFICANCE: As a consequence, it would enable one to improve the quality of automatic sleep staging models when the amount of data is relatively small.11The source code and the pretrained models are published at https://github.com/pquochuy/sleep_transfer_learning.

Year:  2021        PMID: 32866092     DOI: 10.1109/TBME.2020.3020381

Source DB:  PubMed          Journal:  IEEE Trans Biomed Eng        ISSN: 0018-9294            Impact factor:   4.538


  5 in total

1.  Automatic sleep stages classification using multi-level fusion.

Authors:  Hyungjik Kim; Seung Min Lee; Sunwoong Choi
Journal:  Biomed Eng Lett       Date:  2022-08-10

2.  Interrater sleep stage scoring reliability between manual scoring from two European sleep centers and automatic scoring performed by the artificial intelligence-based Stanford-STAGES algorithm.

Authors:  Matteo Cesari; Ambra Stefani; Thomas Penzel; Abubaker Ibrahim; Heinz Hackner; Anna Heidbreder; András Szentkirályi; Beate Stubbe; Henry Völzke; Klaus Berger; Birgit Högl
Journal:  J Clin Sleep Med       Date:  2021-06-01       Impact factor: 4.324

3.  Comparison of deep transfer learning algorithms and transferability measures for wearable sleep staging.

Authors:  Samuel H Waters; Gari D Clifford
Journal:  Biomed Eng Online       Date:  2022-09-12       Impact factor: 3.903

Review 4.  A Survey on Deep Learning-Based Short/Zero-Calibration Approaches for EEG-Based Brain-Computer Interfaces.

Authors:  Wonjun Ko; Eunjin Jeon; Seungwoo Jeong; Jaeun Phyo; Heung-Il Suk
Journal:  Front Hum Neurosci       Date:  2021-05-28       Impact factor: 3.169

5.  The power of ECG in multimodal patient-specific seizure monitoring: Added value to an EEG-based detector using limited channels.

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Journal:  Epilepsia       Date:  2021-07-09       Impact factor: 5.864

  5 in total

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