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Real-Time Readout of Large-Scale Unsorted Neural Ensemble Place Codes

机译:实时读取未分类的大型神经集成位置代码

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SummaryUncovering spatial representations from large-scale ensemble spike activity in specific brain circuits provides valuable feedback in closed-loop experiments. We develop a graphics processing unit (GPU)-powered population-decoding system for ultrafast reconstruction of spatial positions from rodents’ unsorted spatiotemporal spiking patterns, during run behavior or sleep. In comparison with an optimized quad-core central processing unit (CPU) implementation, our approach achieves an ~20- to 50-fold increase in speed in eight tested rat hippocampal, cortical, and thalamic ensemble recordings, with real-time decoding speed (approximately fraction of a millisecond per spike) and scalability up to thousands of channels. By?accommodating parallel shuffling in real time (computation time 15?ms), our approach enables assessment of the statistical significance of online-decoded “memory replay” candidates during quiet wakefulness or sleep. This open-source software toolkit supports the decoding of spatial correlates or content-triggered experimental manipulation in closed-loop neuroscience experiments.
机译:结束语从特定脑回路中的大规模合奏峰值活动中发现空间表示形式,可在闭环实验中提供有价值的反馈。我们开发了图形处理单元(GPU)驱动的人口解码系统,用于在奔跑行为或睡眠过程中根据啮齿类动物的未排序时空峰值模式快速重建空间位置。与优化的四核中央处理器(CPU)实施相比,我们的方法在八组经过测试的大鼠海马,皮质和丘脑合奏记录中实现了约20到50倍的速度提高,并具有实时解码速度(每个尖峰大约需要毫秒级的时间),可扩展性高达数千个通道。通过实时适应并行改组(计算时间<15µms),我们的方法可以评估在安静的清醒或睡眠期间在线解码的“内存重播”候选人的统计意义。此开源软件工具包支持闭环神经科学实验中空间相关性的解码或内容触发的实验操作。

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