Literature DB >> 33788679

XSleepNet: Multi-View Sequential Model for Automatic Sleep Staging.

Huy Phan, Oliver Y Chen, Minh C Tran, Philipp Koch, Alfred Mertins, Maarten De Vos.   

Abstract

Automating sleep staging is vital to scale up sleep assessment and diagnosis to serve millions experiencing sleep deprivation and disorders and enable longitudinal sleep monitoring in home environments. Learning from raw polysomnography signals and their derived time-frequency image representations has been prevalent. However, learning from multi-view inputs (e.g., both the raw signals and the time-frequency images) for sleep staging is difficult and not well understood. This work proposes a sequence-to-sequence sleep staging model, XSleepNet,1 that is capable of learning a joint representation from both raw signals and time-frequency images. Since different views may generalize or overfit at different rates, the proposed network is trained such that the learning pace on each view is adapted based on their generalization/overfitting behavior. In simple terms, the learning on a particular view is speeded up when it is generalizing well and slowed down when it is overfitting. View-specific generalization/overfitting measures are computed on-the-fly during the training course and used to derive weights to blend the gradients from different views. As a result, the network is able to retain the representation power of different views in the joint features which represent the underlying distribution better than those learned by each individual view alone. Furthermore, the XSleepNet architecture is principally designed to gain robustness to the amount of training data and to increase the complementarity between the input views. Experimental results on five databases of different sizes show that XSleepNet consistently outperforms the single-view baselines and the multi-view baseline with a simple fusion strategy. Finally, XSleepNet also outperforms prior sleep staging methods and improves previous state-of-the-art results on the experimental databases.

Entities:  

Mesh:

Year:  2022        PMID: 33788679     DOI: 10.1109/TPAMI.2021.3070057

Source DB:  PubMed          Journal:  IEEE Trans Pattern Anal Mach Intell        ISSN: 0098-5589            Impact factor:   9.322


  4 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.  A Deep Learning Method Approach for Sleep Stage Classification with EEG Spectrogram.

Authors:  Chengfan Li; Yueyu Qi; Xuehai Ding; Junjuan Zhao; Tian Sang; Matthew Lee
Journal:  Int J Environ Res Public Health       Date:  2022-05-23       Impact factor: 4.614

3.  Auto-annotating sleep stages based on polysomnographic data.

Authors:  Hanrui Zhang; Xueqing Wang; Hongyang Li; Soham Mehendale; Yuanfang Guan
Journal:  Patterns (N Y)       Date:  2021-10-28

4.  End-to-End Sleep Staging Using Nocturnal Sounds from Microphone Chips for Mobile Devices.

Authors:  Jung Kyung Hong; Jeong-Whun Kim; Joonki Hong; Hai Hong Tran; Jinhwan Jung; Hyeryung Jang; Dongheon Lee; In-Young Yoon
Journal:  Nat Sci Sleep       Date:  2022-06-25
  4 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.