German Primate Center, D-37077 Göttingen, Germany, and.
German Primate Center, D-37077 Göttingen, Germany, and Department of Biology, University of Göttingen, D-37077 Göttingen, Germany
J Neurosci. 2015 Jan 21;35(3):1068-81. doi: 10.1523/JNEUROSCI.3594-14.2015.
Despite recent advances in decoding cortical activity for motor control, the development of hand prosthetics remains a major challenge. To reduce the complexity of such applications, higher cortical areas that also represent motor plans rather than just the individual movements might be advantageous. We investigated the decoding of many grip types using spiking activity from the anterior intraparietal (AIP), ventral premotor (F5), and primary motor (M1) cortices. Two rhesus monkeys were trained to grasp 50 objects in a delayed task while hand kinematics and spiking activity from six implanted electrode arrays (total of 192 electrodes) were recorded. Offline, we determined 20 grip types from the kinematic data and decoded these hand configurations and the grasped objects with a simple Bayesian classifier. When decoding from AIP, F5, and M1 combined, the mean accuracy was 50% (using planning activity) and 62% (during motor execution) for predicting the 50 objects (chance level, 2%) and substantially larger when predicting the 20 grip types (planning, 74%; execution, 86%; chance level, 5%). When decoding from individual arrays, objects and grip types could be predicted well during movement planning from AIP (medial array) and F5 (lateral array), whereas M1 predictions were poor. In contrast, predictions during movement execution were best from M1, whereas F5 performed only slightly worse. These results demonstrate for the first time that a large number of grip types can be decoded from higher cortical areas during movement preparation and execution, which could be relevant for future neuroprosthetic devices that decode motor plans.
尽管近年来在解码皮质活动以进行运动控制方面取得了进展,但手部假肢的开发仍然是一个主要挑战。为了降低此类应用的复杂性,代表运动计划而不仅仅是单个运动的更高皮质区域可能是有利的。我们使用来自前内顶叶(AIP)、腹侧运动前(F5)和初级运动(M1)皮质的尖峰活动来研究多种抓握类型的解码。两只恒河猴在延迟任务中接受训练,以抓握 50 个物体,同时记录手部运动学和来自六个植入电极阵列(共 192 个电极)的尖峰活动。离线时,我们从运动学数据中确定了 20 种抓握类型,并使用简单的贝叶斯分类器对这些手型和抓握的物体进行解码。当从 AIP、F5 和 M1 组合进行解码时,预测 50 个物体的平均准确率为 50%(使用规划活动)和 62%(在运动执行期间)(机会水平为 2%),并且当预测 20 种抓握类型时,准确率大大提高(规划,74%;执行,86%;机会水平,5%)。当从单个阵列进行解码时,在运动规划期间可以很好地从 AIP(内侧阵列)和 F5(外侧阵列)预测物体和抓握类型,而 M1 的预测效果较差。相比之下,在运动执行期间,M1 的预测效果最好,而 F5 的表现仅略差。这些结果首次证明,在运动准备和执行期间,可以从较高的皮质区域解码大量的抓握类型,这对于未来解码运动计划的神经假肢设备可能是相关的。