Bataineh Mohammad, McNiel David, Choi John, Hessburg John, Francis Joseph
Department of Biomedical Engineering, Cullen College of Engineering, University of Houston, Houston, TX 77204-6022.
Department of Physiology and Pharmacology, SUNY Downstate Medical Center, Brooklyn, NY-11203.
Proc South Biomed Eng Conf. 2016 Mar;2016:19-20. doi: 10.1109/SBEC.2016.12. Epub 2016 Apr 28.
The design of brain machine interfaces (BMI) has been improving over the past decade. Such improvements have led to advanced capability in terms of restoring the functionality of a paralyzed/amputated limb and producing fine controlled movements of a robotic arm and hand. However, there is still more to be invested towards producing advanced BMI features such as producing appropriate forces when gripping and carrying an object using an artificial limb. This feature requires direct supervision and control from the brain to produce accurate results. Toward this goal, this work investigates the processing of neural signals from four brain regions in a nonhuman primate to predict maximum grip force. The signals received from each of the primary motor (M1) cortex, primary somatosensory (S1) cortex, dorsal premotor (PmD) cortex, and ventral premotor (PmV) cortex are used to build regression models to predict the applied maximum grip force. Comparisons of model prediction results are presented. The relative prediction accuracy from all brain regions would assist in further investigation to build robust approaches for controlling the force values. The brain regions and their interactions could eventually be summed in a weighted manner to complete the targeted approach.
在过去十年中,脑机接口(BMI)的设计一直在改进。这些改进在恢复瘫痪/截肢肢体的功能以及实现机器人手臂和手部的精细控制运动方面带来了先进的能力。然而,在开发先进的BMI功能方面仍有更多工作需要投入,例如在使用假肢抓握和搬运物体时产生适当的力。此功能需要大脑进行直接监督和控制才能产生准确的结果。为了实现这一目标,这项工作研究了来自非人类灵长类动物四个脑区的神经信号处理,以预测最大握力。从每个初级运动(M1)皮层、初级体感(S1)皮层、背侧运动前区(PmD)皮层和腹侧运动前区(PmV)皮层接收到的信号用于建立回归模型,以预测施加的最大握力。给出了模型预测结果的比较。来自所有脑区的相对预测准确性将有助于进一步研究,以建立控制力值的稳健方法。最终,可以以加权的方式汇总脑区及其相互作用,以完成目标方法。