Department of Health Science and Technology, SMI, Aalborg University, Aalborg, Denmark.
J Neural Eng. 2018 Dec;15(6):066030. doi: 10.1088/1741-2552/aae4b8. Epub 2018 Sep 27.
As for stroke rehabilitation, brain-computer interfaces could potentially be used for inducing neural plasticity in patients with cerebral palsy by pairing movement intentions with relevant somatosensory feedback. Therefore, the aim of this study was to investigate if movement intentions from children with cerebral palsy can be detected from single-trial EEG. Moreover, different feature types and electrode setups were evaluated.
Eight adolescents with cerebral palsy performed self-paced dorsiflexions of the ankle while nine channels of EEG were recorded. The EEG was divided into movement intention epochs and idle epochs. The data were pre-processed and temporal, spectral and template matching features were extracted and classified using a random forest classifier. The classification accuracy of the 2-class problem was used as an estimation of the detection performance. This analysis was repeated using a single EEG channel, a large Laplacian filtered channel and nine channels.
A classification accuracy of ~70% was obtained using only a single channel. This increased to ~80% for the Laplacian filtered data, while ~75% of the data were correctly classified when using nine channels. In general, the highest accuracies were obtained using temporal features or using all of them combined.
The results indicate that it is possible to detect movement intentions in patients with cerebral palsy; this may be used in the development of a brain-computer interface for motor rehabilitation of patients with cerebral palsy.
在脑卒中康复中,脑-机接口可通过将运动意图与相关体感反馈相匹配,从而对脑瘫患者进行神经可塑性诱导。因此,本研究旨在探讨脑瘫儿童的运动意图是否可从单次脑电(EEG)中检测到。此外,评估了不同的特征类型和电极设置。
8 名青少年脑瘫患者在进行自我控制的踝关节背屈运动时,记录了 9 个通道的 EEG。EEG 被分为运动意图期和空闲期。对数据进行预处理,并使用随机森林分类器提取和分类时频、谱和模板匹配特征。使用 2 类问题的分类准确率作为检测性能的估计。使用单个 EEG 通道、大 Laplacian 滤波通道和 9 个通道重复了此分析。
仅使用单个通道可获得约 70%的分类准确率。使用 Laplacian 滤波数据时,准确率提高到约 80%,而使用 9 个通道时,约 75%的数据被正确分类。一般来说,使用时频特征或所有特征组合可获得最高的准确率。
结果表明,检测脑瘫患者的运动意图是可行的;这可能用于开发脑瘫患者运动康复的脑-机接口。