Gou Mingyu, Yin Haolong, Chen Tianzhen, Cheng Fei, Du Jiang, Lyu Baoliang, Zheng Weilong
Paris Elite Institute of Technology, Shanghai Jiao Tong University, Shanghai 200240, P. R. China.
School of Computer Science, Shanghai Jiao Tong University, Shanghai 200240, P. R. China.
Sheng Wu Yi Xue Gong Cheng Xue Za Zhi. 2025 Aug 25;42(4):668-677. doi: 10.7507/1001-5515.202504044.
Meditation aims to guide individuals into a state of deep calm and focused attention, and in recent years, it has shown promising potential in the field of medical treatment. Numerous studies have demonstrated that electroencephalogram (EEG) patterns change during meditation, suggesting the feasibility of using deep learning techniques to monitor meditation states. However, significant inter-subject differences in EEG signals poses challenges to the performance of such monitoring systems. To address this issue, this study proposed a novel model-calibrated multi-source adversarial adaptation network (CMAAN). The model first trained multiple domain-adversarial neural networks in a pairwise manner between various source-domain individuals and the target-domain individual. These networks were then integrated through a calibration process using a small amount of labeled data from the target domain to enhance performance. We evaluated the proposed model on an EEG dataset collected from 18 subjects undergoing methamphetamine rehabilitation. The model achieved a classification accuracy of 73.09%. Additionally, based on the learned model, we analyzed the key EEG frequency bands and brain regions involved in the meditation process. The proposed multi-source domain adaptation framework improves both the performance and robustness of EEG-based meditation monitoring and holds great promise for applications in biomedical informatics and clinical practice.
冥想旨在引导个体进入深度平静和专注的状态,近年来,它在医学治疗领域展现出了可观的潜力。众多研究表明,冥想过程中脑电图(EEG)模式会发生变化,这表明使用深度学习技术监测冥想状态具有可行性。然而,EEG信号在个体之间存在显著差异,这对这种监测系统的性能构成了挑战。为解决这一问题,本研究提出了一种新型模型——校准多源对抗适应网络(CMAAN)。该模型首先在各个源域个体与目标域个体之间以成对方式训练多个域对抗神经网络。然后,利用来自目标域的少量标记数据通过校准过程对这些网络进行整合,以提高性能。我们在从18名接受甲基苯丙胺康复治疗的受试者收集的EEG数据集上对所提出的模型进行了评估。该模型实现了73.09%的分类准确率。此外,基于所学习的模型,我们分析了冥想过程中涉及的关键EEG频段和脑区。所提出的多源域适应框架提高了基于EEG的冥想监测的性能和鲁棒性,在生物医学信息学和临床实践中的应用前景广阔。