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首页> 外文期刊>Journal of Cognitive Neuroscience >Optimizing a Linear Algorithm for Real-Time Robotic Control using Chronic Cortical Ensemble Recordings in Monkeys
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Optimizing a Linear Algorithm for Real-Time Robotic Control using Chronic Cortical Ensemble Recordings in Monkeys

机译:使用猴子中的慢性皮质合奏记录优化实时机器人控制的线性算法

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Previous work in our laboratory has demonstrated that a simple linear model can be used to translate cortical neuronal activity into real-time motor control commands that allow a robot arm to mimic the intended hand movements of trained primates. Here, we describe the results of a comprehensive analysis of the contribution of single cortical neurons to this linear model. Key to the operation of this model was the observation that a large percentage of cortical neurons located in both frontal and parietal cortical areas are tuned for hand position. In most neurons, hand position tuning was time-dependent, varying continuously during a 1-sec period before hand movement onset. The relevance of this physiological finding was demonstrated by showing that maximum contribution of individual neurons to the linear model was only achieved when optimal parameters for the impulse response functions describing time-varying neuronal position tuning were selected. Optimal parameters included impulse response functions with 1.0- to 1.4-sec time length and 50- to 100-msec bins. Although reliable generalization and long-term predictions (60-90 min) could be achieved after 10-min training sessions, we noticed that the model performance degraded over long periods. Part of this degradation was accounted by the observation that neuronal position tuning varied significantly throughout the duration (60-90 min) of a recording session. Altogether, these results indicate that the experimental paradigm described here may be useful not only to investigate aspects of neural population coding, but it may also provide a test bed for the development of clinically useful cortical prosthetic devices aimed at restoring motor functions in severely paralyzed patients.
机译:我们实验室先前的工作表明,可以使用简单的线性模型将皮层神经元活动转换为实时运动控制命令,从而使机械手能够模仿经过训练的灵长类动物的预期手部运动。在这里,我们描述了单个皮质神经元对该线性模型的贡献的全面分析的结果。该模型操作的关键是观察到,位于额叶和顶叶皮层区域的大部分皮层神经元都针对手部位置进行了调整。在大多数神经元中,手的位置调整是时间相关的,在手开始运动之前的1秒钟内连续变化。通过显示只有在选择了描述时变神经元位置调整的脉冲响应函数的最佳参数时,才能实现单个神经元对线性模型的最大贡献,从而证明了这一生理发现的相关性。最佳参数包括具有1.0到1.4秒时间长度和50到100毫秒仓的脉冲响应功能。尽管经过10分钟的训练后可以实现可靠的概括和长期预测(60-90分钟),但我们注意到模型性能长期下降。这种退化的部分原因是观察到整个记录会话的持续时间(60-90分钟)内神经元位置调整发生了显着变化。总而言之,这些结果表明,此处描述的实验范式不仅可用于研究神经群体编码方面,而且还可为开发旨在恢复严重瘫痪患者的运动功能的临床上有用的皮质修复设备提供测试平台。

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