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改进的空间分解方法——一种用于尖峰分类的稳健聚类技术。

Improved space breakdown method - A robust clustering technique for spike sorting.

作者信息

Ardelean Eugen-Richard, Ichim Ana-Maria, Dînşoreanu Mihaela, Mureşan Raul Cristian

机构信息

Department of Experimental and Theoretical Neuroscience, Transylvanian Institute of Neuroscience, Cluj-Napoca, Romania.

Department of Computer Science, Technical University of Cluj-Napoca, Cluj-Napoca, Romania.

出版信息

Front Comput Neurosci. 2023 Feb 20;17:1019637. doi: 10.3389/fncom.2023.1019637. eCollection 2023.

Abstract

UNLABELLED

Space Breakdown Method (SBM) is a clustering algorithm that was developed specifically for low-dimensional neuronal spike sorting. Cluster overlap and imbalance are common characteristics of neuronal data that produce difficulties for clustering methods. SBM is able to identify overlapping clusters through its design of cluster centre identification and the expansion of these centres. SBM's approach is to divide the distribution of values of each feature into chunks of equal size. In each of these chunks, the number of points is counted and based on this number the centres of clusters are found and expanded. SBM has been shown to be a contender for other well-known clustering algorithms especially for the particular case of two dimensions while being too computationally expensive for high-dimensional data. Here, we present two main improvements to the original algorithm in order to increase its ability to deal with high-dimensional data while preserving its performance: the initial array structure was substituted with a graph structure and the number of partitions has been made feature-dependent, denominating this improved version as the Improved Space Breakdown Method (ISBM). In addition, we propose a clustering validation metric that does not punish overclustering and such obtains more suitable evaluations of clustering for spike sorting. Extracellular data recorded from the brain is unlabelled, therefore we have chosen simulated neural data, to which we have the ground truth, to evaluate more accurately the performance. Evaluations conducted on synthetic data indicate that the proposed improvements reduce the space and time complexity of the original algorithm, while simultaneously leading to an increased performance on neural data when compared with other state-of-the-art algorithms.

CODE AVAILABLE AT

https://github.com/ArdeleanRichard/Space-Breakdown-Method.

摘要

未标记

空间分解方法(SBM)是一种专门为低维神经元尖峰分类开发的聚类算法。聚类重叠和不平衡是神经元数据的常见特征,这给聚类方法带来了困难。SBM能够通过其聚类中心识别设计和这些中心的扩展来识别重叠聚类。SBM的方法是将每个特征的值分布划分为大小相等的块。在这些块中的每一个中,计算点数,并基于此找到并扩展聚类中心。SBM已被证明是其他知名聚类算法的有力竞争者,特别是在二维的特定情况下,而对于高维数据来说计算成本过高。在这里,我们对原始算法提出了两个主要改进,以提高其处理高维数据的能力同时保持其性能:将初始数组结构替换为图结构,并使分区数量与特征相关,将这个改进版本称为改进空间分解方法(ISBM)。此外,我们提出了一种聚类验证指标,该指标不会惩罚过度聚类,从而获得更适合用于尖峰分类的聚类评估。从大脑记录的细胞外数据是未标记的,因此我们选择了有真实标记的模拟神经数据,以便更准确地评估性能。对合成数据进行的评估表明,所提出的改进降低了原始算法的空间和时间复杂度,同时与其他现有算法相比,在神经数据上的性能有所提高。

代码可在

https://github.com/ArdeleanRichard/Space-Breakdown-Method获取。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5678/9986479/ba031e7ff70c/fncom-17-1019637-g001.jpg

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