多电极神经元记录系统中实时尖峰重叠分解的高通量硬件。

Jelena Dragas, David Jäckel, Felix Franke, Andreas Hierlemann
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引用次数: 1

摘要

在密集的神经网络记录中,脉冲重叠经常发生,这给脉冲分类带来了困难。脑机接口和神经网络动力学的活体研究通常需要实时完成准确的尖峰排序,执行延迟低(毫秒级)。此外,现代神经元记录系统以数千个电极为特征,需要并行处理数十或数百个神经元。现有的尖峰重叠分解算法通常非常复杂,不适合实时实现,特别是在芯片上实现。在这里,我们提出了一种能够实时处理成对尖峰重叠的硬件设备。先前发表的尖峰排序算法不适合处理低延迟的大型神经网络数据,本文针对高吞吐量、低延迟的硬件实现进行了优化。所设计的硬件架构已在FPGA平台上进行了验证。在2.75 ms的延迟下,重叠尖峰的低尖峰分类错误率(0.05)已经实现,使得系统特别适合在闭环实验中使用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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High-Throughput Hardware for Real-Time Spike Overlap Decomposition in Multi-Electrode Neuronal Recording Systems.

Spike overlaps occur frequently in dense neuronal network recordings, creating difficulties for spike sorting. Brainmachine interfaces and in vivo studies of neuronal network dynamics often require that an accurate spike sorting be done in real time, with low execution latency (on the order of milliseconds). Moreover, modern neuronal recording systems that feature thousands of electrodes require processing of several tens or hundreds of neurons in parallel. The existing algorithms capable of performing spike overlap decomposition are generally very complex and unsuitable for real-time implementation, especially for an on-chip implementation. Here we present a hardware device capable of processing pair-wise spike overlaps in real time. A previously-published spike sorting algorithm, which is not suitable for processing data of large neuronal networks with low latency, has been optimized for high-throughput, low-latency hardware implementation. The designed hardware architecture has been verified on an FPGA platform. Low spike sorting error rates (0.05) for overlapping spikes have been achieved with a latency of 2.75 ms, rendering the system particularly suitable for use in closed-loop experiments.

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