Department of Neurology, Northwestern University, Chicago, IL 60611
Shirley Ryan AbilityLab, Chicago, IL 60611.
eNeuro. 2020 Aug 17;7(4). doi: 10.1523/ENEURO.0063-20.2020. Print 2020 Jul/Aug.
The ability to grasp and manipulate objects requires controlling both finger movement kinematics and isometric force in rapid succession. Previous work suggests that these behavioral modes are controlled separately, but it is unknown whether the cerebral cortex represents them differently. Here, we asked the question of how movement and force were represented cortically, when executed sequentially with the same finger. We recorded high-density electrocorticography (ECoG) from the motor and premotor cortices of seven human subjects performing a movement-force motor task. We decoded finger movement [0.7 ± 0.3 fractional variance accounted for (FVAF)] and force (0.7 ± 0.2 FVAF) with high accuracy, yet found different spatial representations. In addition, we used a state-of-the-art deep learning method to uncover smooth, repeatable trajectories through ECoG state space during the movement-force task. We also summarized ECoG across trials and participants by developing a new metric, the neural vector angle (NVA). Thus, state-space techniques can help to investigate broad cortical networks. Finally, we were able to classify the behavioral mode from neural signals with high accuracy (90 ± 6%). Thus, finger movement and force appear to have distinct representations in motor/premotor cortices. These results inform our understanding of the neural control of movement, as well as the design of grasp brain-machine interfaces (BMIs).
掌握和操纵物体的能力需要快速连续地控制手指运动运动学和等长力。以前的工作表明,这些行为模式是分开控制的,但尚不清楚大脑皮层是否以不同的方式对它们进行表示。在这里,我们想知道当使用同一根手指顺序执行时,运动和力在皮层中是如何被表示的。我们记录了七名人类受试者在执行运动-力运动任务时的运动和运动前皮层的高密度脑电描记图(ECoG)。我们以高准确率解码了手指运动(0.7±0.3 分数方差解释(FVAF))和力(0.7±0.2 FVAF),但发现了不同的空间表示。此外,我们使用最先进的深度学习方法来揭示运动-力任务期间 ECoG 状态空间中的平滑、可重复的轨迹。我们还通过开发一种新的度量标准,即神经向量角(NVA),对跨试验和参与者的 ECoG 进行了总结。因此,状态空间技术可以帮助研究广泛的皮层网络。最后,我们能够以很高的准确率(90±6%)从神经信号中对行为模式进行分类。因此,手指运动和力似乎在运动/运动前皮层中具有不同的表示。这些结果为我们理解运动的神经控制以及抓握脑机接口(BMI)的设计提供了信息。