IEEE Trans Neural Syst Rehabil Eng. 2024;32:2759-2771. doi: 10.1109/TNSRE.2024.3435016. Epub 2024 Aug 5.
Assessing communication abilities in patients with disorders of consciousness (DOCs) is challenging due to limitations in the behavioral scale. Electroencephalogram-based brain-computer interfaces (BCIs) and eye-tracking for detecting ocular changes can capture mental activities without requiring physical behaviors and thus may be a solution. This study proposes a hybrid BCI that integrates EEG and eye tracking to facilitate communication in patients with DOC. Specifically, the BCI presented a question and two randomly flashing answers (yes/no). The subjects were instructed to focus on an answer. A multimodal target recognition network (MTRN) is proposed to detect P300 potentials and eye-tracking responses (i.e., pupil constriction and gaze) and identify the target in real time. In the MTRN, the dual-stream feature extraction module with two independent multiscale convolutional neural networks extracts multiscale features from multimodal data. Then, the multimodal attention strategy adaptively extracts the most relevant information about the target from multimodal data. Finally, a prototype network is designed as a classifier to facilitate small-sample data classification. Ten healthy individuals, nine DOC patients and one LIS patient were included in this study. All healthy subjects achieved 100% accuracy. Five patients could communicate with our BCI, with 76.1±7.9% accuracy. Among them, two patients who were noncommunicative on the behavioral scale exhibited communication ability via our BCI. Additionally, we assessed the performance of unimodal BCIs and compared MTRNs with other methods. All the results suggested that our BCI can yield more sensitive outcomes than the CRS-R and can serve as a valuable communication tool.
评估意识障碍(DOC)患者的沟通能力具有挑战性,因为行为量表存在局限性。基于脑电图的脑机接口(BCI)和眼动追踪可以检测眼部变化,从而无需身体行为即可捕获心理活动,因此可能是一种解决方案。本研究提出了一种集成脑电图和眼动追踪的混合 BCI,以促进 DOC 患者的交流。具体来说,BCI 提出了一个问题和两个随机闪烁的答案(是/否)。要求受试者专注于一个答案。提出了一种多模态目标识别网络(MTRN),以实时检测 P300 电位和眼动追踪响应(即瞳孔收缩和注视)并识别目标。在 MTRN 中,具有两个独立多尺度卷积神经网络的双流特征提取模块从多模态数据中提取多尺度特征。然后,多模态注意策略自适应地从多模态数据中提取与目标最相关的信息。最后,设计了一个原型网络作为分类器,以促进小样本数据分类。本研究纳入了 10 名健康个体、9 名 DOC 患者和 1 名 LIS 患者。所有健康受试者均达到 100%的准确率。5 名患者可以与我们的 BCI 进行交流,准确率为 76.1±7.9%。其中,两名在行为量表上无交流能力的患者通过我们的 BCI 表现出了交流能力。此外,我们评估了单模态 BCI 的性能,并将 MTRNs 与其他方法进行了比较。所有结果表明,我们的 BCI 可以产生比 CRS-R 更敏感的结果,并且可以作为一种有价值的沟通工具。