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一种具有降维和位置特征的全自动多通道神经尖峰分类算法。

A fully automatic multichannel neural spike sorting algorithm with spike reduction and positional feature.

机构信息

Department of Electrical Engineering, University of Colorado Denver, Denver, CO, United States of America.

Department of Physiology and Biophysics, University of Colorado Anschutz Medical Campus, Aurora, CO, United States of America.

出版信息

J Neural Eng. 2024 Aug 5;21(4):046039. doi: 10.1088/1741-2552/ad647d.

Abstract

: The sorting of neural spike data recorded by multichannel and high channel neural probes such as Neuropixels, especially in real-time, remains a significant technical challenge. Most neural spike sorting algorithms focus on sorting neural spikes post-hoc for high sorting accuracy-but reducing the processing delay for fast sorting, potentially even live sorting, is generally not possible with these algorithms.: Here we report our Graph nEtwork Multichannel sorting (GEMsort) algorithm, which is largely based on graph network, to allow rapid neural spike sorting for multiple neural recording channels. This was accomplished by two innovations: In GEMsort, duplicated neural spikes recorded from multiple channels were eliminated from duplicate channels by only selecting the highest amplitude neural spike in any channel for subsequent processing. In addition, the channel from which the representative neural spike was recorded was used as an additional feature to differentiate between neural spikes recorded from different neurons having similar temporal features.: Synthetic and experimentally recorded multichannel neural recordings were used to evaluate the sorting performance of GEMsort. The sorting results of GEMsort were also compared with two other state-of-the-art sorting algorithms (Kilosort and Mountainsort) in sorting time and sorting agreements.: GEMsort allows rapidly sort neural spikes and is highly suitable to be implemented with digital circuitry for high processing speed and channel scalability.

摘要

多通道和高通道神经探针(如 Neuropixels)记录的神经尖峰数据的分类,特别是实时分类,仍然是一个重大的技术挑战。大多数神经尖峰分类算法都侧重于事后对神经尖峰进行分类,以获得高精度-但这些算法通常不可能降低快速分类的处理延迟,甚至实时分类的延迟。在这里,我们报告了我们的图网络多通道分类(GEMsort)算法,该算法主要基于图网络,以允许对多个神经记录通道进行快速神经尖峰分类。这是通过两项创新实现的:在 GEMsort 中,从多个通道记录的重复神经尖峰通过仅从任何通道中选择最高幅度的神经尖峰来消除重复通道中的重复神经尖峰,以便进行后续处理。此外,记录代表性神经尖峰的通道被用作附加特征,以区分具有相似时间特征的来自不同神经元的神经尖峰。合成和实验记录的多通道神经记录用于评估 GEMsort 的分类性能。GEMsort 的分类结果还与另外两种最先进的分类算法(Kilosort 和 Mountainsort)在分类时间和分类一致性方面进行了比较。GEMsort 允许快速分类神经尖峰,非常适合与数字电路结合使用,以实现高处理速度和通道可扩展性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9ee4/11298775/cc697f61381d/jnead647df1_hr.jpg

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