4.6 Article

Reconstruction of sparse connectivity in neural networks from spike train covariances

Publisher

IOP PUBLISHING LTD
DOI: 10.1088/1742-5468/2013/03/P03008

Keywords

neuronal networks (theory); network dynamics; network reconstruction; computational neuroscience

Funding

  1. German Federal Ministry of Education and Research (BMBF) [01GQ0420, 01GQ0830]
  2. German Research Foundation (DFG) [CRC 780]

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The inference of causation from correlation is in general highly problematic. Correspondingly, it is difficult to infer the existence of physical synaptic connections between neurons from correlations in their activity. Covariances in neural spike trains and their relation to network structure have been the subject of intense research, both experimentally and theoretically. The influence of recurrent connections on covariances can be characterized directly in linear models, where connectivity in the network is described by a matrix of linear coupling kernels. However, as indirect connections also give rise to covariances, the inverse problem of inferring network structure from covariances can generally not be solved unambiguously. Here we study to what degree this ambiguity can be resolved if the sparseness of neural networks is taken into account. To reconstruct a sparse network, we determine the minimal set of linear couplings consistent with the measured covariances by minimizing the L-1 norm of the coupling matrix under appropriate constraints. Contrary to intuition, after stochastic optimization of the coupling matrix, the resulting estimate of the underlying network is directed, despite the fact that a symmetric matrix of count covariances is used for inference. The performance of the new method is best if connections are neither exceedingly sparse, nor too dense, and it is easily applicable for networks of a few hundred nodes. Full coupling kernels can be obtained from the matrix of full covariance functions. We apply our method to networks of leaky integrate-and-fire neurons in an asynchronous irregular state, where spike train covariances are well described by a linear model.

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