Yang Huijuan, Guan Cuntai, Chua Karen Sui Geok, Chok See San, Wang Chuan Chu, Soon Phua Kok, Tang Christina Ka Yin, Ang Kai Keng
Institute for Infocomm Research, Agency for Science, Technology and Research (A*STAR), Singapore.
J Neural Eng. 2014 Jun;11(3):035016. doi: 10.1088/1741-2560/11/3/035016. Epub 2014 May 19.
Detection of motor imagery of hand/arm has been extensively studied for stroke rehabilitation. This paper firstly investigates the detection of motor imagery of swallow (MI-SW) and motor imagery of tongue protrusion (MI-Ton) in an attempt to find a novel solution for post-stroke dysphagia rehabilitation. Detection of MI-SW from a simple yet relevant modality such as MI-Ton is then investigated, motivated by the similarity in activation patterns between tongue movements and swallowing and there being fewer movement artifacts in performing tongue movements compared to swallowing.
Novel features were extracted based on the coefficients of the dual-tree complex wavelet transform to build multiple training models for detecting MI-SW. The session-to-session classification accuracy was boosted by adaptively selecting the training model to maximize the ratio of between-classes distances versus within-class distances, using features of training and evaluation data.
Our proposed method yielded averaged cross-validation (CV) classification accuracies of 70.89% and 73.79% for MI-SW and MI-Ton for ten healthy subjects, which are significantly better than the results from existing methods. In addition, averaged CV accuracies of 66.40% and 70.24% for MI-SW and MI-Ton were obtained for one stroke patient, demonstrating the detectability of MI-SW and MI-Ton from the idle state. Furthermore, averaged session-to-session classification accuracies of 72.08% and 70% were achieved for ten healthy subjects and one stroke patient using the MI-Ton model.
These results and the subjectwise strong correlations in classification accuracies between MI-SW and MI-Ton demonstrated the feasibility of detecting MI-SW from MI-Ton models.
手部/手臂运动想象的检测已在中风康复研究中得到广泛应用。本文首次研究吞咽运动想象(MI-SW)和伸舌运动想象(MI-Ton)的检测,旨在为中风后吞咽困难康复寻找新的解决方案。鉴于舌头运动和吞咽之间激活模式的相似性,以及与吞咽相比,进行舌头运动时运动伪影较少,随后研究了从诸如MI-Ton这种简单但相关的模式中检测MI-SW。
基于双树复小波变换系数提取新特征,以构建用于检测MI-SW的多个训练模型。通过使用训练和评估数据的特征,自适应选择训练模型以最大化类间距离与类内距离之比,从而提高逐会话分类准确率。
对于10名健康受试者,我们提出的方法在MI-SW和MI-Ton上的平均交叉验证(CV)分类准确率分别为70.89%和73.79%,显著优于现有方法的结果。此外,一名中风患者在MI-SW和MI-Ton上的平均CV准确率分别为66.40%和70.24%,表明从空闲状态下可检测到MI-SW和MI-Ton。此外,使用MI-Ton模型,10名健康受试者和一名中风患者的逐会话平均分类准确率分别达到72.08%和70%。
这些结果以及MI-SW和MI-Ton之间分类准确率的个体间强相关性证明了从MI-Ton模型检测MI-SW的可行性。