Department of Neurology, Northwestern University, Chicago, IL 60611, USA.
Department of Biomedical Engineering, University of California, Irvine, Irvine, CA 92617, USA.
Neuroimage. 2014 Nov 1;101:695-703. doi: 10.1016/j.neuroimage.2014.07.049. Epub 2014 Aug 2.
Brain machine interfaces (BMIs) have the potential to provide intuitive control of neuroprostheses to restore grasp to patients with paralyzed or amputated upper limbs. For these neuroprostheses to function, the ability to accurately control grasp force is critical. Grasp force can be decoded from neuronal spikes in monkeys, and hand kinematics can be decoded using electrocorticogram (ECoG) signals recorded from the surface of the human motor cortex. We hypothesized that kinetic information about grasping could also be extracted from ECoG, and sought to decode continuously-graded grasp force. In this study, we decoded isometric pinch force with high accuracy from ECoG in 10 human subjects. The predicted signals explained from 22% to 88% (60 ± 6%, mean ± SE) of the variance in the actual force generated. We also decoded muscle activity in the finger flexors, with similar accuracy to force decoding. We found that high gamma band and time domain features of the ECoG signal were most informative about kinetics, similar to our previous findings with intracortical LFPs. In addition, we found that peak cortical representations of force applied by the index and little fingers were separated by only about 4mm. Thus, ECoG can be used to decode not only kinematics, but also kinetics of movement. This is an important step toward restoring intuitively-controlled grasp to impaired patients.
脑机接口 (BMI) 有可能为神经假肢提供直观控制,以恢复瘫痪或截肢上肢患者的抓握能力。为了使这些神经假肢能够正常工作,准确控制抓握力的能力至关重要。在猴子身上,可以从神经元尖峰解码抓握力,并且可以使用从人脑运动皮层表面记录的脑电图 (ECoG) 信号解码手运动学。我们假设关于抓握的运动信息也可以从 ECoG 中提取出来,并试图解码连续分级的抓握力。在这项研究中,我们从 10 名人类受试者的 ECoG 中以高精度解码等长捏力。预测信号解释了实际产生的力的 22%到 88%(60±6%,平均值±SE)的方差。我们还解码了手指屈肌的肌肉活动,其解码精度与力相似。我们发现 ECoG 信号的高伽马频带和时域特征与我们之前使用皮层内 LFPs 的发现相似,对动力学最具信息量。此外,我们发现食指和小指施加的力的皮层峰值代表物仅相隔约 4mm。因此,ECoG 不仅可以解码运动学,还可以解码运动动力学。这是朝着为受损患者恢复直观控制抓握迈出的重要一步。