Department of Health Science and Technology, Aalborg University, Fredrik Bajers Vej 7D, 9220, Aalborg, Denmark.
Health & Rehabilitation Research Institute, Auckland University of Technology, Auckland, New Zealand.
Med Biol Eng Comput. 2020 Nov;58(11):2699-2710. doi: 10.1007/s11517-020-02253-2. Epub 2020 Aug 30.
Error-related potentials (ErrPs) have been proposed for designing adaptive brain-computer interfaces (BCIs). Therefore, ErrPs must be decoded. The aim of this study was to evaluate ErrP decoding using combinations of different feature types and classifiers in BCI paradigms involving motor execution (ME) and imagination (MI). Fifteen healthy subjects performed 510 (ME) and 390 (MI) trials of right/left wrist extensions and foot dorsiflexions. Sham BCI feedback was delivered with an accuracy of 80% (ME) and 70% (MI). Continuous EEG was recorded and divided into ErrP and NonErrP epochs. Temporal, spectral, and discrete wavelet transform (DWT) marginals and template matching features were extracted, and all combinations of feature types were classified using linear discriminant analysis, support vector machine, and random forest classifiers. ErrPs were elicited for both ME and MI paradigms, and the average classification accuracies were significantly higher than the chance level. The highest average classification accuracy was obtained using temporal features and a combination of temporal + DWT features classified with random forest; 89 ± 9% and 83 ± 9% for ME and MI, respectively. These results generally indicate that temporal features should be used when detecting ErrPs, but there is great inter-subject variability, which means that user-specific features should be derived to maximize the performance. Graphical abstract.
错误相关电位(ErrPs)已被提议用于设计自适应脑机接口(BCI)。因此,必须对 ErrP 进行解码。本研究的目的是评估涉及运动执行(ME)和想象(MI)的 BCI 范式中使用不同特征类型和分类器组合对 ErrP 解码的效果。15 名健康受试者进行了 510 次(ME)和 390 次(MI)右手/左手腕伸展和足背屈运动。使用 80%(ME)和 70%(MI)的准确率提供虚假 BCI 反馈。连续 EEG 被记录并分为 ErrP 和非 ErrP 时段。提取了时间、频谱和离散小波变换(DWT)边际和模板匹配特征,并使用线性判别分析、支持向量机和随机森林分类器对所有特征类型组合进行分类。ME 和 MI 两种范式都诱发了 ErrPs,平均分类准确率明显高于随机水平。使用时间特征和随机森林分类的时间+DWT 特征组合获得了最高的平均分类准确率;ME 和 MI 的准确率分别为 89±9%和 83±9%。这些结果通常表明,在检测 ErrP 时应该使用时间特征,但存在很大的个体间可变性,这意味着应该导出用户特定的特征以最大限度地提高性能。