Khorasani Abed, Shalchyan Vahid, Daliri Mohammad Reza
Neuroscience and Neuroengineering Research Lab, Department of Biomedical Engineering, School of Electrical Engineering, Iran University of Science and Technology (IUST), Tehran, Iran.
Kerman Neuroscience Research Center, Institute of Neuropharmacology, Kerman University of Medical Sciences, Kerman, Iran.
Front Neurosci. 2019 Apr 16;13:350. doi: 10.3389/fnins.2019.00350. eCollection 2019.
Intracortical data recorded with multi-electrode arrays provide rich information about kinematic and kinetic states of movement in the brain-machine interface (BMI) systems. Direct estimation of kinetic information such as the force from cortical data has the same importance as kinematic information to make a functional BMI system. Various types of the information including single unit activity (SUA), multiunit activity (MUA) and local field potential (LFP) can be used as an input information to extract motor commands for control of the external devices in BMI. Here we combine LFP and MUA information to improve decoding accuracy of the force signal from the multi-channel intracortical data of freely moving rats. We suggest a weighted common average referencing (CAR) algorithm in order to valid interpretation of the force decoding from different data types. The proposed spatial filter adaptively identifies contribution of the common noise on the channels employing Kalman filter method. We evaluated the efficacy of the proposed artifact algorithm on both simulation and real data. In the simulation study, the average between the original and reconstructed signal of all channels after applying the proposed artifact removal method was computed for input SNRs in the range of -45 to 0 dB. Weighted CAR method can effectively reconstruct the original signal with average higher than 0.5 for input SNRs higher than -s10 dB in case of adding simulated outlier and motion artifacts. We also show that the proposed artifact removal algorithm 33% improves the accuracy of force decoding in terms of value compared to standard CAR filters.
用多电极阵列记录的皮质内数据为脑机接口(BMI)系统中运动的运动学和动力学状态提供了丰富信息。从皮质数据直接估计诸如力等动力学信息对于构建功能性BMI系统而言,与运动学信息具有同等重要性。包括单单元活动(SUA)、多单元活动(MUA)和局部场电位(LFP)在内的各种类型信息都可用作输入信息,以提取用于控制BMI中外部设备的运动指令。在此,我们将LFP和MUA信息相结合,以提高从自由活动大鼠的多通道皮质内数据解码力信号的准确性。我们提出一种加权公共平均参考(CAR)算法,以便对来自不同数据类型的力解码进行有效解释。所提出的空间滤波器采用卡尔曼滤波方法自适应地识别通道上公共噪声的贡献。我们在模拟数据和真实数据上评估了所提出的伪迹算法的功效。在模拟研究中,对于-45至0 dB范围内的输入信噪比,计算应用所提出的伪迹去除方法后所有通道原始信号与重建信号之间的平均相关系数。在添加模拟异常值和运动伪迹的情况下,对于高于-10 dB的输入信噪比,加权CAR方法能够有效重建原始信号,平均相关系数高于0.5。我们还表明,与标准CAR滤波器相比,所提出的伪迹去除算法在相关系数值方面将力解码的准确性提高了33%。