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MEArec: A Fast and Customizable Testbench Simulator for Ground-truth Extracellular Spiking Activity.MEArec:一种用于真实胞外尖峰活动的快速可定制测试台仿真器。
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Spike sorting based on shape, phase, and distribution features, and K-TOPS clustering with validity and error indices.基于形状、相位和分布特征的尖峰分类,以及具有有效性和误差指标的 K-TOPS 聚类。
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Independent Component Analysis for Fully Automated Multi-Electrode Array Spike Sorting.用于全自动多电极阵列尖峰分类的独立成分分析
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Automatic spike sorting for high-density microelectrode arrays.用于高密度微电极阵列的自动尖峰分选
J Neurophysiol. 2018 Dec 1;120(6):3155-3171. doi: 10.1152/jn.00803.2017. Epub 2018 Sep 12.

基于尖峰形状特征和定位方法的多电极阵列无监督尖峰分类

Unsupervised spike sorting for multielectrode arrays based on spike shape features and location methods.

作者信息

Zhao Shunan, Wang Xiaoliang, Wang Dongqi, Shi Jin, Jia Xingru

机构信息

School of Control Science and Engineering, Dalian University of Technology, Linggong Road, Dalian, 116000 Liaoning China.

School of Life Sciences, Zhengzhou University, Science Road, Zhengzhou, 450001 Henan China.

出版信息

Biomed Eng Lett. 2024 Jun 3;14(5):1087-1111. doi: 10.1007/s13534-024-00395-y. eCollection 2024 Sep.

DOI:10.1007/s13534-024-00395-y
PMID:39220019
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC11362451/
Abstract

Microelectrode arrays (MEAs) enable simultaneous measurement of spike trains from numerous neurons, owing to advancements in microfabrication technology. These probes are highly valuable for comprehending the intricate dynamics of neuronal networks. Spike sorting is a pivotal step in comprehensively analyzing the activity of neuronal networks from extracellular recordings. However, the accuracy of spike sorting is relatively low due to the dense sampling of spikes in MEAs. Here, we propose an unsupervised pipeline named UMAP-COM method, which utilizes combined features to address this problem. These combined features comprise dominant spike shape features extracted by the uniform manifold approximation and projection (UMAP), as well as spike locations estimated by the center of mass (COM). We validate the UMAP-COM method on publicly available datasets from different kinds of probes, demonstrating that it is more accurate than other spike sorting methods. Furthermore, we conduct separate evaluations of spike shape feature extraction methods and spike localization methods. In this comparison, UMAP emerges as the superior feature extraction method, demonstrating its effectiveness in accurately representing spike shapes. Additionally, we find that the COM method outperforms other spike localization methods, highlighting its ability to enhance the accuracy of spike sorting.

摘要

由于微加工技术的进步,微电极阵列(MEA)能够同时测量众多神经元的尖峰序列。这些探针对于理解神经网络的复杂动态非常有价值。尖峰分类是从细胞外记录全面分析神经网络活动的关键步骤。然而,由于MEA中尖峰的密集采样,尖峰分类的准确性相对较低。在这里,我们提出了一种名为UMAP-COM方法的无监督流程,该方法利用组合特征来解决这个问题。这些组合特征包括通过均匀流形近似和投影(UMAP)提取的主要尖峰形状特征,以及通过质心(COM)估计的尖峰位置。我们在来自不同类型探针的公开可用数据集上验证了UMAP-COM方法,证明它比其他尖峰分类方法更准确。此外,我们对尖峰形状特征提取方法和尖峰定位方法进行了单独评估。在这次比较中,UMAP成为 superior 特征提取方法,证明了其在准确表示尖峰形状方面的有效性。此外,我们发现COM方法优于其他尖峰定位方法,突出了其提高尖峰分类准确性的能力。 (注:原文中superior未翻译完整,可能是拼写错误,推测应为“ superior”,意为“更好的、更优越的” )