Qu Sheng, Wu Xinchun, Huang Laigang, Zhou Yancai, Sun Qiangsan, Zeng Fanshuo
Department of Rehabilitation, The Second Qilu Hospital of Shandong University, No. 247, Beiyuan Avenue, Jinan, 250033, Shandong, China.
Department of Rehabilitation, Heze Third People's Hospital, No. 3099, Baji Road, Heze, 274100, Shandong, China.
Sci Rep. 2026 Feb 5;16(1):7417. doi: 10.1038/s41598-026-36733-6.
This study explored the value of nonlinear features extracted from EEG signals to facilitate the assessment of patients with disorders of consciousness (DOC) with limited communication capacity. We utilized a dataset comprising 104 participants, 56 with vegetative state (VS)/unresponsive wakefulness syndrome (UWS) and 48 in a minimally conscious state (MCS). For each participant, we computed channel-wise approximate entropy (ApEn) from EEG time-series data using a sliding window approach under two experimental paradigms: resting state and preferred music stimulation. These nonlinear measures were then spatially interpolated to generate topographical maps. Both resting state and preferred music stimulation data were processed as 1-second epochs using identical convolutional neural networks (CNN) architectures. The classification performance and validity of the CNN were compared against support vector machine (SVM) and generalized regression neural network (GRNN) models. ApEn in the resting state and under stimulation with preferred music correlated with the Coma Recovery Scale-Revised scores in patients with DOC, showing varied regional responses. Notably, the CNNs resulted in a positive diagnostic performance with an accuracy of 90.00% and an AUC of 0.902. The CNN was better than the SVM and GRNN in differentiating between the VS/UWS and MCS states. This study offers a convenient and accurate method for detecting awareness in patients with VS/UWS and MCS using ApEn features in the resting state and under preferred music stimulation using deep learning.
本研究探讨了从脑电图(EEG)信号中提取的非线性特征对于促进对沟通能力有限的意识障碍(DOC)患者进行评估的价值。我们使用了一个包含104名参与者的数据集,其中56名处于植物状态(VS)/无反应觉醒综合征(UWS),48名处于最低意识状态(MCS)。对于每位参与者,我们在两种实验范式下,即静息状态和偏好音乐刺激下,使用滑动窗口方法从EEG时间序列数据中计算通道级近似熵(ApEn)。然后对这些非线性测量值进行空间插值以生成地形图。静息状态和偏好音乐刺激数据均使用相同的卷积神经网络(CNN)架构处理为持续1秒的时段。将CNN的分类性能和有效性与支持向量机(SVM)和广义回归神经网络(GRNN)模型进行比较。DOC患者在静息状态和偏好音乐刺激下的ApEn与昏迷恢复量表修订版得分相关,显示出不同的区域反应。值得注意的是,CNNs具有积极的诊断性能,准确率为90.00%,曲线下面积(AUC)为0.902。在区分VS/UWS和MCS状态方面,CNN比SVM和GRNN表现更好。本研究提供了一种方便且准确的方法,在静息状态和偏好音乐刺激下利用ApEn特征,通过深度学习检测VS/UWS和MCS患者的意识。