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解码后顶叶皮质神经元集群的轨迹。

Decoding trajectories from posterior parietal cortex ensembles.

作者信息

Mulliken Grant H, Musallam Sam, Andersen Richard A

机构信息

Computation and Neural Systems, California Institute of Technology, Pasadena, California 91125, USA.

出版信息

J Neurosci. 2008 Nov 26;28(48):12913-26. doi: 10.1523/JNEUROSCI.1463-08.2008.

Abstract

High-level cognitive signals in the posterior parietal cortex (PPC) have previously been used to decode the intended endpoint of a reach, providing the first evidence that PPC can be used for direct control of a neural prosthesis (Musallam et al., 2004). Here we expand on this work by showing that PPC neural activity can be harnessed to estimate not only the endpoint but also to continuously control the trajectory of an end effector. Specifically, we trained two monkeys to use a joystick to guide a cursor on a computer screen to peripheral target locations while maintaining central ocular fixation. We found that we could accurately reconstruct the trajectory of the cursor using a relatively small ensemble of simultaneously recorded PPC neurons. Using a goal-based Kalman filter that incorporates target information into the state-space, we showed that the decoded estimate of cursor position could be significantly improved. Finally, we tested whether we could decode trajectories during closed-loop brain control sessions, in which the real-time position of the cursor was determined solely by a monkey's neural activity in PPC. The monkey learned to perform brain control trajectories at 80% success rate (for 8 targets) after just 4-5 sessions. This improvement in behavioral performance was accompanied by a corresponding enhancement in neural tuning properties (i.e., increased tuning depth and coverage of encoding parameter space) as well as an increase in off-line decoding performance of the PPC ensemble.

摘要

后顶叶皮层(PPC)中的高级认知信号此前已被用于解码伸手动作的预期终点,这首次证明了PPC可用于直接控制神经假体(穆萨拉姆等人,2004年)。在此,我们拓展了这项工作,表明PPC神经活动不仅可用于估计终点,还能用于持续控制末端执行器的轨迹。具体而言,我们训练了两只猴子,让它们在保持中央眼注视的同时,使用操纵杆在电脑屏幕上引导光标至周边目标位置。我们发现,利用相对少量同时记录的PPC神经元,就能准确重建光标的轨迹。通过在状态空间中纳入目标信息的基于目标的卡尔曼滤波器,我们表明光标的解码位置估计可得到显著改善。最后,我们测试了在闭环脑控实验中能否解码轨迹,在这些实验中,光标的实时位置仅由猴子PPC中的神经活动决定。仅经过4至5次实验,猴子就能以80%的成功率(针对8个目标)完成脑控轨迹。行为表现的这种改善伴随着神经调谐特性的相应增强(即调谐深度增加和编码参数空间覆盖范围扩大)以及PPC神经元集合离线解码性能的提高。

相似文献

1
Decoding trajectories from posterior parietal cortex ensembles.解码后顶叶皮质神经元集群的轨迹。
J Neurosci. 2008 Nov 26;28(48):12913-26. doi: 10.1523/JNEUROSCI.1463-08.2008.

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