Reconstruction of sparse recurrent connectivity and inputs from the nonlinear dynamics of neuronal networks.

IF 1.5 4区 医学 Q3 MATHEMATICAL & COMPUTATIONAL BIOLOGY Journal of Computational Neuroscience Pub Date : 2023-02-01 DOI:10.1007/s10827-022-00831-x
Victor J Barranca
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引用次数: 1

Abstract

Reconstructing the recurrent structural connectivity of neuronal networks is a challenge crucial to address in characterizing neuronal computations. While directly measuring the detailed connectivity structure is generally prohibitive for large networks, we develop a novel framework for reverse-engineering large-scale recurrent network connectivity matrices from neuronal dynamics by utilizing the widespread sparsity of neuronal connections. We derive a linear input-output mapping that underlies the irregular dynamics of a model network composed of both excitatory and inhibitory integrate-and-fire neurons with pulse coupling, thereby relating network inputs to evoked neuronal activity. Using this embedded mapping and experimentally feasible measurements of the firing rate as well as voltage dynamics in response to a relatively small ensemble of random input stimuli, we efficiently reconstruct the recurrent network connectivity via compressive sensing techniques. Through analogous analysis, we then recover high dimensional natural stimuli from evoked neuronal network dynamics over a short time horizon. This work provides a generalizable methodology for rapidly recovering sparse neuronal network data and underlines the natural role of sparsity in facilitating the efficient encoding of network data in neuronal dynamics.

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神经网络非线性动力学中稀疏循环连接和输入的重建。
重建神经网络的循环结构连通性是表征神经元计算的一个关键挑战。虽然直接测量详细的连接结构对于大型网络通常是禁止的,但我们开发了一个新的框架,通过利用神经元连接的广泛稀疏性,从神经元动力学中反向工程大规模循环网络连接矩阵。我们推导了一个线性输入-输出映射,该映射是由兴奋性和抑制性整合-火神经元与脉冲耦合组成的模型网络的不规则动力学的基础,从而将网络输入与诱发的神经元活动联系起来。利用这种嵌入式映射和实验上可行的发射率测量以及响应相对较小的随机输入刺激的电压动态,我们通过压缩感知技术有效地重建了循环网络连接。通过类比分析,我们在短时间内从诱发的神经网络动态中恢复高维自然刺激。这项工作为快速恢复稀疏神经网络数据提供了一种可推广的方法,并强调了稀疏性在促进神经动力学中网络数据的有效编码中的自然作用。
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来源期刊
CiteScore
2.00
自引率
8.30%
发文量
32
审稿时长
3 months
期刊介绍: The Journal of Computational Neuroscience provides a forum for papers that fit the interface between computational and experimental work in the neurosciences. The Journal of Computational Neuroscience publishes full length original papers, rapid communications and review articles describing theoretical and experimental work relevant to computations in the brain and nervous system. Papers that combine theoretical and experimental work are especially encouraged. Primarily theoretical papers should deal with issues of obvious relevance to biological nervous systems. Experimental papers should have implications for the computational function of the nervous system, and may report results using any of a variety of approaches including anatomy, electrophysiology, biophysics, imaging, and molecular biology. Papers investigating the physiological mechanisms underlying pathologies of the nervous system, or papers that report novel technologies of interest to researchers in computational neuroscience, including advances in neural data analysis methods yielding insights into the function of the nervous system, are also welcomed (in this case, methodological papers should include an application of the new method, exemplifying the insights that it yields).It is anticipated that all levels of analysis from cognitive to cellular will be represented in the Journal of Computational Neuroscience.
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