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dc.contributor.authorYan, Rui
dc.date.accessioned2020-10-19T07:38:08Z
dc.date.available2020-10-19T07:38:08Z
dc.date.issued2020
dc.identifier.isbn978-951-39-8329-1
dc.identifier.urihttps://jyx.jyu.fi/handle/123456789/72231
dc.description.abstractOver the past decades, probably due to our hectic lifestyle in modern society, complaints about sleep problems have increased dramatically, affecting a large part of the world’s population. The polysomnography (PSG) test is a common tool for diagnosing sleep problems, but the scoring of PSG recordings is an essential but time-consuming process. Therefore, automatic sleep scoring becomes crucial and urgent to settle the growing unmet needs in sleep research. This thesis extends the previous research on automatic sleep scoring from two aspects. One is to extensively explore signal modalities and feature types related to automatic sleep scoring. This exploratory work obtains the optimal signal fusion and feature set for automatic sleep scoring, and further clarifies the contribution of signals and features to the discrimination of sleep stages. Our results demonstrate that diverse features and signal modalities are coordinative and complementary, which benefits the improvement of classification accuracy. The other one is to develop automatic sleep scoring tools that can accommodate different datasets and sample populations without adjusting model structure and parameters across tasks. Experimental results show that the joint analysis of multiple signals can improve the stability, robustness and generalizability of the proposed models. Model performance has been verified on multiple public datasets, demonstrating good model transferability between different datasets and diverse disease populations. In summary, this research finding will advance the understanding of underlying mechanism during automatic sleep scoring and clarify the association between manual scoring criteria and automatic scoring methods. The joint analysis of multiple signals enhances model versatility, which inspires the construction of cross-model in the field of automatic sleep scoring. Moreover, the proposed automatic sleep scoring methods can be integrated with diverse PSG systems, thereby facilitating sleep monitoring in clinical or routine care. Keywords: automatic sleep scoring, polysomnography, multi-modality analysis, deep learning, machine learningen
dc.format.mimetypeapplication/pdf
dc.language.isoeng
dc.publisherJyväskylän yliopisto
dc.relation.ispartofseriesJYU dissertations
dc.relation.haspart<b>Artikkeli I:</b> Yan, R., Zhang, C., Spruyt, K., Wei, L., Wang, Z., Tian, L., . . . Cong, F. (2019). Multi-modality of polysomnography signals’ fusion for automatic sleep scoring. <i>Biomedical Signal Processing and Control, 49, 14-23.</i> <a href="https://doi.org/10.1016/j.bspc.2018.10.001"target="_blank"> DOI: 10.1016/j.bspc.2018.10.001</a>
dc.relation.haspart<b>Artikkeli II:</b> Yan, Rui; Li, Fan; Wang, Xiaoyu; Ristaniemi, Tapani; Cong, Fengyu (2019). An Automatic Sleep Scoring Toolbox : Multi-modality of Polysomnography Signals’ Processing. In <i>Obaidat, Mohammad; Callegari, Christian; van Sinderen, Marten; Novais, Paulo; Sarigiannidis, Panagiotis; Battiato, Sebastiano; Serrano Sánchez de León, Ángel; Lorenz, Pascal; Davoli, Franco (Eds.) ICETE 2019 : Proceedings of the 16th International Joint Conference on e-Business and Telecommunications, Volume 1: DCNET, ICE-B, OPTICS, SIGMAP and WINSYS. Setúbal: SCITEPRESS Science And Technology Publications, 301-309.</i> <a href="https://doi.org/10.5220/0007925503010309"target="_blank"> DOI: 10.5220/0007925503010309</a>
dc.relation.haspart<b>Artikkeli III:</b> Yan, Rui; Li, Fan; Wang, Xiaoyu; Ristaniemi, Tapani; Cong, Fengyu (2020). Automatic Sleep Scoring Toolbox and Its Application in Sleep Apnea. In <i>Obaidat, Mohammad S. (Eds.) ICETE 2019 : 16th International Joint Conference on e-Business and Telecommunications, Revised Selected Papers, Communications in Computer and Information Science, 1247. Cham: Springer, 256-275.</i> <a href="https://doi.org/10.1007/978-3-030-52686-3_11"target="_blank"> DOI: 10.1007/978-3-030-52686-3_11</a>
dc.relation.haspart<b>Artikkeli IV:</b> Rui Yan, Fan Li, DongDong Zhou, Tapani Ristaniemi and Fengyu Cong. (2020). A Deep Learning Model for Automatic Sleep Scoring using Multimodality Time Series. In <i>28th European Signal Processing Conference (EUSIPCO 2020). 5 pages. IEEE, Amsterdam, Netherlands.</i>
dc.relation.haspart<b>Artikkeli V:</b> Rui Yan, Fan Li, Dongdong Zhou, Tapani Ristaniemi, and Fengyu Cong. 2020. Automatic Sleep Scoring: A Deep Learning Architecture for Multi-modality Time Series. <i>Submitted to the Journal of Neuroscience Methods.</i>
dc.rightsIn Copyright
dc.subjectaivotutkimus
dc.subjectuni (lepotila)
dc.subjectunihäiriöt
dc.subjectsignaalianalyysi
dc.subjectsignaalinkäsittely
dc.subjectkoneoppiminen
dc.subjectautomatic sleep scoring
dc.subjectpolysomnography
dc.subjectmulti-modality analysis
dc.subjectdeap learning
dc.subjectmachine learning
dc.titleAutomatic sleep scoring based on multi-modality polysomnography data
dc.typeDiss.
dc.identifier.urnURN:ISBN:978-951-39-8329-1
dc.relation.issn2489-9003
dc.rights.copyright© The Author & University of Jyväskylä
dc.rights.accesslevelopenAccess
dc.type.publicationdoctoralThesis
dc.format.contentfulltext
dc.rights.urlhttp://rightsstatements.org/page/InC/1.0/?language=en
dc.date.digitised


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