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Transferring Structured Knowledge in Unsupervised Domain Adaptation of a Sleep Staging Network

Title
Transferring Structured Knowledge in Unsupervised Domain Adaptation of a Sleep Staging Network
Authors
Yoo C.Lee H.W.Kang J.-W.
Ewha Authors
이향운강제원
SCOPUS Author ID
이향운scopus; 강제원scopus
Issue Date
2022
Journal Title
IEEE Journal of Biomedical and Health Informatics
ISSN
2168-2194JCR Link
Citation
IEEE Journal of Biomedical and Health Informatics vol. 26, no. 3, pp. 1273 - 1284
Keywords
knowledge transferlocal alignmentSleep stagingunsupervised domain adaptation
Publisher
Institute of Electrical and Electronics Engineers Inc.
Indexed
SCIE; SCOPUS WOS scopus
Document Type
Article
Abstract
Automatic sleep staging based on deep learning (DL) has been attracting attention for analyzing sleep quality and determining treatment effects. It is challenging to acquire long-term sleep data from numerous subjects and manually labeling them even though most DL-based models are trained using large-scale sleep data to provide state-of-the-art performance. One way to overcome this data shortage is to create a pre-trained network with an existing large-scale dataset (source domain) that is applicable to small cohorts of datasets (target domain); however, discrepancies in data distribution between the domains prevent successful refinement of this approach. In this paper, we propose an unsupervised domain adaptation method for sleep staging networks to reduce discrepancies by re-aligning the domains in the same space and producing domain-invariant features. Specifically, in addition to a classical domain discriminator, we introduce local discriminators - subject and stage - to maintain the intrinsic structure of sleep data to decrease local misalignments while using adversarial learning to play a minimax game between the feature extractor and discriminators. Moreover, we present several optimization schemes during training because the conventional adversarial learning is not effective to our training scheme. We evaluate the performance of the proposed method by examining the staging performances of a baseline network compared with direct transfer (DT) learning in various conditions. The experimental results demonstrate that the proposed domain adaptation significantly improves the performance though it needs no labeled sleep data in target domain. © 2013 IEEE.
DOI
10.1109/JBHI.2021.3103614
Appears in Collections:
의과대학 > 의학과 > Journal papers
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