IEEE J Biomed Health Inform. 2018 Jul;22(4):1148-1156. doi: 10.1109/JBHI.2017.2723024. Epub 2017 Jul 4.
Near-infrared spectroscopy (NIRS), one of the candidates to be used in a neurofeedback system or brain-computer interface (BCI), measures the brain activity by monitoring the changes in cerebral hemoglobin concentration. However, hemodynamic changes in the scalp may affect the NIRS signals. In order to remove the superficial signals when NIRS is used in a neurofeedback system or BCI, real-time processing is necessary. Real-time scalp signal separating (RT-SSS) algorithm, which is capable of separating the scalp-blood signals from NIRS signals obtained in real-time, may thus be applied. To demonstrate its effectiveness, two separate neurofeedback experiments were conducted. In the first experiment, the feedback signal was the raw NIRS signal recorded while in the second experiment, deep signal extracted using RT-SSS algorithm was used as the feedback signal. In both experiments, participants were instructed to control the feedback signal to follow a predefined track. Accuracy scores were calculated based on the differences between the trace controlled by feedback signal and the targeted track. Overall, the second experiment yielded better performance in terms of accuracy scores. These findings proved that RT-SSS algorithm is beneficial for neurofeedback.
近红外光谱(NIRS)是一种可用于神经反馈系统或脑机接口(BCI)的候选技术,它通过监测脑血红蛋白浓度的变化来测量脑活动。然而,头皮的血液动力学变化可能会影响 NIRS 信号。为了在神经反馈系统或 BCI 中使用 NIRS 时去除表面信号,需要实时处理。实时头皮信号分离(RT-SSS)算法可以从实时获得的 NIRS 信号中分离头皮血液信号,因此可以应用该算法。为了证明其有效性,进行了两个独立的神经反馈实验。在第一个实验中,反馈信号是记录的原始 NIRS 信号,而在第二个实验中,使用 RT-SSS 算法提取的深度信号被用作反馈信号。在两个实验中,参与者都被指示控制反馈信号以遵循预定义的轨迹。根据反馈信号跟踪与目标轨迹之间的差异计算了准确率得分。总体而言,第二个实验在准确率得分方面表现更好。这些发现证明 RT-SSS 算法对神经反馈是有益的。