Zafar Amad, Hong Keum-Shik
School of Mechanical Engineering, Pusan National University, Busan, South Korea.
Department of Electrical Engineering, University of Wah, Wah Cantonment, Pakistan.
Front Neurorobot. 2020 Feb 18;14:10. doi: 10.3389/fnbot.2020.00010. eCollection 2020.
An intrinsic problem when using hemodynamic responses for the brain-machine interface is the slow nature of the physiological process. In this paper, a novel method that estimates the oxyhemoglobin changes caused by neuronal activations is proposed and validated. In monitoring the time responses of blood-oxygen-level-dependent signals with functional near-infrared spectroscopy (fNIRS), the early trajectories of both oxy- and deoxy-hemoglobins in their phase space are scrutinized. Furthermore, to reduce the detection time, a prediction method based upon a kernel-based recursive least squares (KRLS) algorithm is implemented. In validating the proposed approach, the fNIRS signals of finger tapping tasks measured from the left motor cortex are examined. The results show that the KRLS algorithm using the Gaussian kernel yields the best fitting for both ΔHbO (i.e., 87.5%) and ΔHbR (i.e., 85.2%) at = 15 steps ahead (i.e., 1.63 s ahead at a sampling frequency of 9.19 Hz). This concludes that a neuronal activation can be concluded in about 0.1 s with fNIRS using prediction, which enables an almost real-time practice if combined with EEG.
在脑机接口中使用血流动力学响应时,一个内在问题是生理过程的缓慢特性。本文提出并验证了一种估计由神经元激活引起的氧合血红蛋白变化的新方法。在使用功能近红外光谱(fNIRS)监测血氧水平依赖信号的时间响应时,仔细研究了氧合血红蛋白和脱氧血红蛋白在其相空间中的早期轨迹。此外,为了减少检测时间,实现了一种基于核递归最小二乘(KRLS)算法的预测方法。在验证所提出的方法时,检查了从左运动皮层测量的手指敲击任务的fNIRS信号。结果表明,使用高斯核的KRLS算法在提前15步(即在9.19Hz的采样频率下提前1.63s)时,对ΔHbO(即87.5%)和ΔHbR(即85.2%)都产生了最佳拟合。这表明,使用预测的fNIRS可以在大约0.1s内得出神经元激活的结论,如果与脑电图结合使用,几乎可以实现实时操作。