Pan Jiahui, Yu Yangzuyi, Li Man, Wei Wanxin, Chen Shuyu, Zheng Heyi, He Yanbin, Li Yuanqing
IEEE J Biomed Health Inform. 2025 Feb;29(2):1320-1332. doi: 10.1109/JBHI.2024.3487657. Epub 2025 Feb 10.
Sleep is a fundamental human activity, and automated sleep staging holds considerable investigational potential. Despite numerous deep learning methods proposed for sleep staging that exhibit notable performance, several challenges remain unresolved, including inadequate representation and generalization capabilities, limitations in multimodal feature extraction, the scarcity of labeled data, and the restricted practical application for patients with disorder of consciousness (DOC). This paper proposes MultiConsSleepNet, a multimodal consistency-based sleep staging network. This network comprises a unimodal feature extractor and a multimodal consistency feature extractor, aiming to explore universal representations of electroencephalograms (EEGs) and electrooculograms (EOGs) and extract the consistency of intra- and intermodal features. Additionally, self-supervised contrastive learning strategies are designed for unimodal and multimodal consistency learning to address the current situation in clinical practice where it is difficult to obtain high-quality labeled data but has a huge amount of unlabeled data. It can effectively alleviate the model's dependence on labeled data, and improve the model's generalizability for effective migration to DOC patients. Experimental results on three publicly available datasets demonstrate that MultiConsSleepNet achieves state-of-the-art performance in sleep staging with limited labeled data and effectively utilizes unlabeled data, enhancing its practical applicability. Furthermore, the proposed model yields promising results on a self-collected DOC dataset, offering a novel perspective for sleep staging research in patients with DOC.
睡眠是一项基本的人类活动,自动睡眠分期具有可观的研究潜力。尽管针对睡眠分期提出了众多深度学习方法,且表现出显著性能,但仍有若干挑战尚未解决,包括表征能力不足和泛化能力不足、多模态特征提取的局限性、标记数据的稀缺性以及意识障碍(DOC)患者的实际应用受限。本文提出了MultiConsSleepNet,一种基于多模态一致性的睡眠分期网络。该网络由单模态特征提取器和多模态一致性特征提取器组成,旨在探索脑电图(EEG)和眼电图(EOG)的通用表征,并提取模态内和模态间特征的一致性。此外,还为单模态和多模态一致性学习设计了自监督对比学习策略,以应对临床实践中难以获得高质量标记数据但拥有大量未标记数据的现状。它可以有效减轻模型对标记数据的依赖,并提高模型的泛化能力,以便有效地迁移到DOC患者。在三个公开可用数据集上的实验结果表明,MultiConsSleepNet在有限标记数据的睡眠分期中取得了领先性能,并有效利用了未标记数据,增强了其实际适用性。此外,所提出的模型在自行收集的DOC数据集上产生了有前景的结果,为DOC患者的睡眠分期研究提供了新的视角。