首页> 外文会议>Neural Engineering, 2009. NER '09 >Identifying functional connectivity of motor neuronal ensembles improves the performance of population decoders
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Identifying functional connectivity of motor neuronal ensembles improves the performance of population decoders

机译:识别运动神经元集成的功能连接性可改善群体解码器的性能

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Estimating the response properties of cortical neurons is an essential step to decode movement intentions in cortically-controlled brain machine interface applications. Among these properties is the variable degree of interaction between neurons while subjects carry out similar motor tasks. In this paper, we use a dynamic model of motor encoding, previously shown to fit experimental data from primary and supplementary motor areas in nonhuman primates, to demonstrate the utility of identifying interaction patterns in improving decoding performance. Neuronal interaction is quantified by estimating the functional connectivity among neurons in a cooperative network that are driven by heterogeneously-tuned neurons in an input noncooperative network. A reward-based functional plasticity is induced in the model during repeated execution of a center-out reach task and the connectivity is continuously estimated to track changes in the interaction patterns. Results demonstrate that the ability to track cortical adaptation can contribute significantly to improvement in motor control of neuroprosthetic devices.
机译:估计皮质神经元的响应特性是在皮质控制的脑机接口应用程序中解码运动意图的必不可少的步骤。在这些属性中,当受试者执行类似的运动任务时,神经元之间的相互作用程度可变。在本文中,我们使用了运动编码的动态模型,该模型先前已显示出可以拟合非人类灵长类动物初级和辅助运动区域的实验数据,以证明识别交互模式在提高解码性能中的实用性。通过估计由输入非合作网络中的异构调谐神经元驱动的合作网络中神经元之间的功能连接,可以量化神经元的交互作用。在重复执行中心向外到达任务期间,会在模型中引发基于奖励的功能可塑性,并且会不断估算连通性以跟踪交互模式的变化。结果表明,跟踪皮层适应的能力可以极大地改善神经修复装置的运动控制。

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