Filippini Matteo, Breveglieri Rossella, Akhras M Ali, Bosco Annalisa, Chinellato Eris, Fattori Patrizia
Department of Pharmacy and Biotechnology, University of Bologna, 40126 Bologna, Italy, and.
School of Science and Engineering, Middlesex University, London NW4 4BT, United Kingdom.
J Neurosci. 2017 Apr 19;37(16):4311-4322. doi: 10.1523/JNEUROSCI.3077-16.2017. Epub 2017 Mar 20.
Neurodecoders have been developed by researchers mostly to control neuroprosthetic devices, but also to shed new light on neural functions. In this study, we show that signals representing grip configurations can be reliably decoded from neural data acquired from area V6A of the monkey medial posterior parietal cortex. Two monkeys were trained to perform an instructed-delay reach-to-grasp task in the dark and in the light toward objects of different shapes. Population neural activity was extracted at various time intervals on vision of the objects, the delay before movement, and grasp execution. This activity was used to train and validate a Bayes classifier used for decoding objects and grip types. Recognition rates were well over chance level for all the epochs analyzed in this study. Furthermore, we detected slightly different decoding accuracies, depending on the task's visual condition. Generalization analysis was performed by training and testing the system during different time intervals. This analysis demonstrated that a change of code occurred during the course of the task. Our classifier was able to discriminate grasp types fairly well in advance with respect to grasping onset. This feature might be important when the timing is critical to send signals to external devices before the movement start. Our results suggest that the neural signals from the dorsomedial visual pathway can be a good substrate to feed neural prostheses for prehensile actions. Recordings of neural activity from nonhuman primate frontal and parietal cortex have led to the development of methods of decoding movement information to restore coordinated arm actions in paralyzed human beings. Our results show that the signals measured from the monkey medial posterior parietal cortex are valid for correctly decoding information relevant for grasping. Together with previous studies on decoding reach trajectories from the medial posterior parietal cortex, this highlights the medial parietal cortex as a target site for transforming neural activity into control signals to command prostheses to allow human patients to dexterously perform grasping actions.
研究人员开发神经解码器主要是为了控制神经假体设备,但也为了揭示神经功能。在本研究中,我们表明可以从猴子内侧后顶叶皮层V6A区域获取的神经数据中可靠地解码代表抓握配置的信号。两只猴子经过训练,在黑暗和明亮环境中对不同形状的物体执行指令延迟伸手抓握任务。在看到物体、运动前的延迟以及抓握执行的不同时间间隔提取群体神经活动。该活动用于训练和验证用于解码物体和抓握类型的贝叶斯分类器。在本研究分析的所有时期,识别率都远高于随机水平。此外,我们发现根据任务的视觉条件,解码准确率略有不同。通过在不同时间间隔对系统进行训练和测试来进行泛化分析。该分析表明在任务过程中发生了编码变化。我们的分类器能够在抓握开始前很好地辨别抓握类型。当时间对于在运动开始前向外部设备发送信号至关重要时,这一特征可能很重要。我们的结果表明,来自背内侧视觉通路的神经信号可以成为为抓握动作提供神经假体的良好基础。对非人类灵长类动物额叶和顶叶皮层神经活动的记录导致了解码运动信息以恢复瘫痪人类协调手臂动作的方法的发展。我们的结果表明,从猴子内侧后顶叶皮层测量的信号对于正确解码与抓握相关的信息是有效的。与之前关于从内侧后顶叶皮层解码伸手轨迹的研究一起,这突出了顶叶内侧皮层作为将神经活动转化为控制信号以指挥假体从而使人类患者能够灵活执行抓握动作的目标部位。