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Volitional control of neural activity relies on the natural motor repertoire.意志控制神经活动依赖于自然运动技能。
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Behavioral and neural correlates of visuomotor adaptation observed through a brain-computer interface in primary motor cortex.在初级运动皮层中通过脑机接口观察到的视觉运动适应的行为和神经相关性。
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Dissociating motor cortex from the motor.分离运动皮层与运动。
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The neuronal basis of long-term sensorimotor learning.长期感觉运动学习的神经基础。
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由任意选择的初级运动皮层神经元小集合快速获得新型界面控制。

Rapid acquisition of novel interface control by small ensembles of arbitrarily selected primary motor cortex neurons.

作者信息

Law Andrew J, Rivlis Gil, Schieber Marc H

机构信息

Department of Biomedical Engineering, University of Rochester, Rochester, New York;

Department of Neurology, University of Rochester, Rochester, New York; and Department of Neurobiology and Anatomy, University of Rochester, Rochester, New York.

出版信息

J Neurophysiol. 2014 Sep 15;112(6):1528-48. doi: 10.1152/jn.00373.2013. Epub 2014 Jun 11.

DOI:10.1152/jn.00373.2013
PMID:24920030
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC4137252/
Abstract

Pioneering studies demonstrated that novel degrees of freedom could be controlled individually by directly encoding the firing rate of single motor cortex neurons, without regard to each neuron's role in controlling movement of the native limb. In contrast, recent brain-computer interface work has emphasized decoding outputs from large ensembles that include substantially more neurons than the number of degrees of freedom being controlled. To bridge the gap between direct encoding by single neurons and decoding output from large ensembles, we studied monkeys controlling one degree of freedom by comodulating up to four arbitrarily selected motor cortex neurons. Performance typically exceeded random quite early in single sessions and then continued to improve to different degrees in different sessions. We therefore examined factors that might affect performance. Performance improved with larger ensembles. In contrast, other factors that might have reflected preexisting synaptic architecture-such as the similarity of preferred directions-had little if any effect on performance. Patterns of comodulation among ensemble neurons became more consistent across trials as performance improved over single sessions. Compared with the ensemble neurons, other simultaneously recorded neurons showed less modulation. Patterns of voluntarily comodulated firing among small numbers of arbitrarily selected primary motor cortex (M1) neurons thus can be found and improved rapidly, with little constraint based on the normal relationships of the individual neurons to native limb movement. This rapid flexibility in relationships among M1 neurons may in part underlie our ability to learn new movements and improve motor skill.

摘要

开创性研究表明,可以通过直接编码单个运动皮层神经元的放电率来单独控制新的自由度,而无需考虑每个神经元在控制自然肢体运动中的作用。相比之下,最近的脑机接口研究强调对大量神经元集合的输出进行解码,这些集合包含的神经元数量远多于被控制的自由度数量。为了弥合单个神经元直接编码与大量神经元集合解码输出之间的差距,我们研究了猴子通过共同调制多达四个任意选择的运动皮层神经元来控制一个自由度的情况。在单次实验中,表现通常在很早的时候就超过了随机水平,然后在不同的实验中继续以不同程度提高。因此,我们研究了可能影响表现的因素。更大的神经元集合能提高表现。相比之下,其他可能反映预先存在的突触结构的因素,比如偏好方向的相似性,对表现几乎没有影响。随着单次实验中表现的提高,神经元集合中共同调制的模式在不同试验之间变得更加一致。与神经元集合相比,其他同时记录的神经元表现出的调制较少。因此,在少量任意选择的初级运动皮层(M1)神经元之间自愿共同调制的放电模式能够快速被发现并得到改善,而且几乎不受单个神经元与自然肢体运动的正常关系的限制。M神经元之间关系的这种快速灵活性可能部分解释了我们学习新运动和提高运动技能的能力。