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阈值化功能连接矩阵以恢复大规模神经元网络的拓扑特性。

Thresholding Functional Connectivity Matrices to Recover the Topological Properties of Large-Scale Neuronal Networks.

作者信息

Boschi Alessio, Brofiga Martina, Massobrio Paolo

机构信息

Department of Informatics, Bioengineering, Robotics, Systems Engineering (DIBRIS), University of Genova, Genova, Italy.

National Institute for Nuclear Physics (INFN), Genova, Italy.

出版信息

Front Neurosci. 2021 Aug 16;15:705103. doi: 10.3389/fnins.2021.705103. eCollection 2021.

Abstract

The identification of the organization principles on the basis of the brain connectivity can be performed in terms of structural (i.e., morphological), functional (i.e., statistical), or effective (i.e., causal) connectivity. If structural connectivity is based on the detection of the morphological (synaptically mediated) links among neurons, functional and effective relationships derive from the recording of the patterns of electrophysiological activity (e.g., spikes, local field potentials). Correlation or information theory-based algorithms are typical routes pursued to find statistical dependencies and to build a functional connectivity matrix. As long as the matrix collects the possible associations among the network nodes, each interaction between the neuron and is different from zero, even though there was no morphological, statistical or causal connection between them. Hence, it becomes essential to find and identify only the significant functional connections that are predictive of the structural ones. For this reason, a robust, fast, and automatized procedure should be implemented to discard the "noisy" connections. In this work, we present a Double Threshold (DDT) algorithm based on the definition of two statistical thresholds. The main goal is not to lose weak but significant links, whose arbitrary exclusion could generate functional networks with a too small number of connections and altered topological properties. The algorithm allows overcoming the limits of the simplest threshold-based methods in terms of precision and guaranteeing excellent computational performances compared to shuffling-based approaches. The presented DDT algorithm was compared with other methods proposed in the literature by using a benchmarking procedure based on synthetic data coming from the simulations of large-scale neuronal networks with different structural topologies.

摘要

基于脑连接性来识别组织原则,可以从结构(即形态学)、功能(即统计学)或有效(即因果)连接性方面进行。如果结构连接性基于神经元之间形态学(突触介导)连接的检测,那么功能和有效关系则源于电生理活动模式(例如,尖峰、局部场电位)的记录。基于相关性或信息论的算法是寻找统计依赖性并构建功能连接矩阵的典型途径。只要矩阵收集了网络节点之间的可能关联,神经元之间的每次相互作用都不为零,即使它们之间不存在形态学、统计学或因果联系。因此,找到并识别仅能预测结构连接的显著功能连接变得至关重要。出于这个原因,应该实施一个稳健、快速且自动化的程序来舍弃“嘈杂”的连接。在这项工作中,我们提出了一种基于两个统计阈值定义的双阈值(DDT)算法。主要目标是不丢失微弱但显著的连接,随意排除这些连接可能会生成连接数量过少且拓扑特性改变的功能网络。与基于洗牌的方法相比,该算法在精度方面克服了最简单的基于阈值方法的局限性,并保证了出色的计算性能。通过使用基于来自具有不同结构拓扑的大规模神经元网络模拟的合成数据的基准测试程序,将所提出的DDT算法与文献中提出的其他方法进行了比较。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/025f/8415479/8166643705e9/fnins-15-705103-g001.jpg

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