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首页> 外文期刊>eLife journal >Real-time classification of experience-related ensemble spiking patterns for closed-loop applications
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Real-time classification of experience-related ensemble spiking patterns for closed-loop applications

机译:闭环应用中与经验相关的合奏峰值模式的实时分类

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Communication in neural circuits across the cortex is thought to be mediated by spontaneous temporally organized patterns of population activity lasting ~50 –200 ms. Closed-loop manipulations have the unique power to reveal direct and causal links between such patterns and their contribution to cognition. Current brain–computer interfaces, however, are not designed to interpret multi-neuronal spiking patterns at the millisecond timescale. To bridge this gap, we developed a system for classifying ensemble patterns in a closed-loop setting and demonstrated its application in the online identification of hippocampal neuronal replay sequences in the rat. Our system decodes multi-neuronal patterns at 10 ms resolution, identifies within 50 ms experience-related patterns with over 70% sensitivity and specificity, and classifies their content with 95% accuracy. This technology scales to high-count electrode arrays and will help to shed new light on the contribution of internally generated neural activity to coordinated neural assembly interactions and cognition.
机译:整个皮层神经回路中的交流被认为是由持续约50 –200 ms的种群活动的自发时间组织模式所介导的。闭环操作具有独特的力量,可以揭示这种模式及其对认知的贡献之间的直接和因果联系。然而,当前的脑机接口并未被设计为以毫秒为单位来解释多神经突刺模式。为了弥合这一差距,我们开发了一种在闭环环境中对集成模式进行分类的系统,并展示了其在大鼠海马神经元重播序列在线识别中的应用。我们的系统以10毫秒的分辨率解码多神经元模式,在50毫秒内以超过70%的灵敏度和特异性识别与经验相关的模式,并以95%的准确性对内容进行分类。这项技术可扩展到高数量的电极阵列,并将有助于阐明内部产生的神经活动对协调的神经装配相互作用和认知的贡献。

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