Department of Biomedical Engineering, College of Precision Instruments and Optoelectronics Engineering, Tianjin University, NO. 92, Weijin Road, Nankai District, Tianjin, China.
National Key Laboratory of Human Factors Engineering, China Astronaut Research and Training Center, NO. 26, Beiqing Road, Handian District, Beijing, China.
Comput Methods Programs Biomed. 2017 Dec;152:35-43. doi: 10.1016/j.cmpb.2017.09.002. Epub 2017 Sep 9.
As one of the most important brain-computer interface (BCI) paradigms, P300-Speller was shown to be significantly impaired once applied in practical situations due to effects of mental workload. This study aims to provide a new method of building training models to enhance performance of P300-Speller under mental workload. Three experiment conditions based on row-column P300-Speller paradigm were performed including speller-only, 3-back-speller and mental-arithmetic-speller. Data under dual-task conditions were introduced to speller-only data respectively to build new training models. Then performance of classifiers with different models was compared under the same testing condition. The results showed that when tasks of imported training data and testing data were the same, character recognition accuracies and round accuracies of P300-Speller with mixed-data training models significantly improved (FDR, p < 0.005). When they were different, performance significantly improved when tested on mental-arithmetic-speller (FDR, p < 0.05) while the improvement was modest when tested on n-back-speller (FDR, p < 0.1). The analysis of ERPs revealed that ERP difference between training data and testing data was significantly diminished when the dual-task data was introduced to training data (FDR, p < 0.05). The new method of training classifier on mixed data proved to be effective in enhancing performance of P300-Speller under mental workload, confirmed the feasibility to build a universal training model and overcome the effects of mental workload in its practical applications.
作为最重要的脑机接口(BCI)范式之一,P300-Speller 在实际应用中由于心理工作量的影响而表现出显著的受损。本研究旨在提供一种新的训练模型构建方法,以提高心理工作量下 P300-Speller 的性能。基于行列 P300-Speller 范式进行了三项实验条件,包括仅拼写器、3 回拼写器和心算拼写器。将双任务条件下的数据分别引入仅拼写器数据,以构建新的训练模型。然后,在相同的测试条件下比较不同模型的分类器性能。结果表明,当导入训练数据和测试数据的任务相同时,混合数据训练模型的字符识别准确率和圆准确率显著提高(FDR,p<0.005)。当任务不同时,在心算拼写器上测试时,性能显著提高(FDR,p<0.05),而在 n 回拼写器上测试时,性能略有提高(FDR,p<0.1)。ERP 分析表明,当将双任务数据引入训练数据时,训练数据和测试数据之间的 ERP 差异显著减小(FDR,p<0.05)。在心理工作量下,混合数据训练分类器的新方法被证明可以有效提高 P300-Speller 的性能,证实了构建通用训练模型的可行性,并克服了其实际应用中的心理工作量影响。