Department of Cogno-Mechatronics Engineering, Pusan National University, 30 Jangjeon-dong, Geumjeong-gu, Busan 609-735, Republic of Korea.
Neurosci Lett. 2013 Oct 11;553:84-9. doi: 10.1016/j.neulet.2013.08.021. Epub 2013 Aug 20.
This paper presents a study on functional near-infrared spectroscopy (fNIRS) indicating that the hemodynamic responses of the right- and left-wrist motor imageries have distinct patterns that can be classified using a linear classifier for the purpose of developing a brain-computer interface (BCI). Ten healthy participants were instructed to imagine kinesthetically the right- or left-wrist flexion indicated on a computer screen. Signals from the right and left primary motor cortices were acquired simultaneously using a multi-channel continuous-wave fNIRS system. Using two distinct features (the mean and the slope of change in the oxygenated hemoglobin concentration), the linear discriminant analysis classifier was used to classify the right- and left-wrist motor imageries resulting in average classification accuracies of 73.35% and 83.0%, respectively, during the 10s task period. Moreover, when the analysis time was confined to the 2-7s span within the overall 10s task period, the average classification accuracies were improved to 77.56% and 87.28%, respectively. These results demonstrate the feasibility of an fNIRS-based BCI and the enhanced performance of the classifier by removing the initial 2s span and/or the time span after the peak value.
本文研究了功能近红外光谱(fNIRS),表明右腕和左腕运动想象的血液动力学反应具有不同的模式,可以使用线性分类器进行分类,目的是开发脑机接口(BCI)。10 名健康参与者被指示在计算机屏幕上想象右腕或左腕的屈肌运动。使用多通道连续波 fNIRS 系统同时采集来自右和左初级运动皮层的信号。使用两个不同的特征(含氧血红蛋白浓度的平均值和变化斜率),线性判别分析分类器用于对右腕和左腕运动想象进行分类,在 10 秒任务期间的平均分类准确率分别为 73.35%和 83.0%。此外,当分析时间限制在整个 10 秒任务期间的 2-7 秒跨度内时,平均分类准确率分别提高到 77.56%和 87.28%。这些结果表明基于 fNIRS 的 BCI 的可行性,以及通过去除初始 2 秒跨度和/或峰值后时间跨度来提高分类器的性能。