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人类运动皮层记录中的隐式抓握力表征

Implicit Grasp Force Representation in Human Motor Cortical Recordings.

作者信息

Downey John E, Weiss Jeffrey M, Flesher Sharlene N, Thumser Zachary C, Marasco Paul D, Boninger Michael L, Gaunt Robert A, Collinger Jennifer L

机构信息

Department of Bioengineering, University of Pittsburgh, Pittsburgh, PA, United States.

Center for the Neural Basis of Cognition, Pittsburgh, PA, United States.

出版信息

Front Neurosci. 2018 Oct 31;12:801. doi: 10.3389/fnins.2018.00801. eCollection 2018.

Abstract

In order for brain-computer interface (BCI) systems to maximize functionality, users will need to be able to accurately modulate grasp force to avoid dropping heavy objects while also being able to handle fragile items. We present a case-study consisting of two experiments designed to identify whether intracortical recordings from the motor cortex of a person with tetraplegia could predict intended grasp force. In the first task, we were able classify neural responses to attempted grasps of four objects, each of which required similar grasp kinematics but different implicit grasp force targets, with 69% accuracy. In the second task, the subject attempted to move a virtual robotic arm in space to grasp a simple virtual object. For each trial, the subject was asked to grasp the virtual object with the force appropriate for one of the four objects from the first experiment, with the goal of measuring an implicit representation of grasp force. While the subject knew the grasp force during all phases of the trial, accurate classification was only achieved during active grasping, not while the hand moved to, transported, or released the object. In both tasks, misclassifications were most often to the object with an adjacent force requirement. In addition to the implications for understanding the representation of grasp force in motor cortex, these results are a first step toward creating intelligent algorithms to help BCI users grasp and manipulate a variety of objects that will be encountered in daily life. NCT01894802 https://clinicaltrials.gov/ct2/show/NCT01894802.

摘要

为了使脑机接口(BCI)系统的功能最大化,用户需要能够精确调节抓握力,以避免掉落重物,同时还能够处理易碎物品。我们展示了一个案例研究,该研究由两个实验组成,旨在确定四肢瘫痪患者运动皮层的皮层内记录是否能够预测预期的抓握力。在第一个任务中,我们能够以69%的准确率对尝试抓握四个物体时的神经反应进行分类,每个物体都需要相似的抓握运动学,但隐含的抓握力目标不同。在第二个任务中,受试者试图在空间中移动一个虚拟机器人手臂来抓握一个简单的虚拟物体。对于每次试验,要求受试者用与第一个实验中四个物体之一相适应的力抓握虚拟物体,目的是测量抓握力的隐含表征。虽然受试者在试验的所有阶段都知道抓握力,但只有在主动抓握期间才能实现准确分类,而不是在手部移向、运送或释放物体时。在这两个任务中,错误分类最常发生在力要求相邻的物体上。除了对理解运动皮层中抓握力表征的意义外,这些结果是朝着创建智能算法迈出的第一步,以帮助BCI用户抓握和操作日常生活中会遇到的各种物体。NCT01894802 https://clinicaltrials.gov/ct2/show/NCT01894802

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c5bb/6220062/a6f67922da87/fnins-12-00801-g001.jpg

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