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Measuring symmetry, asymmetry and randomness in neural network connectivity

Esposito, U.
•
Giugliano, M.
•
Van Rossum, M.
•
Vasilaki, E.
2014
  • journal article

Periodico
PLOS ONE
Abstract
Cognitive functions are stored in the connectome, the wiring diagram of the brain, which exhibits non-random features, so-called motifs. In this work, we focus on bidirectional, symmetric motifs, i.e. two neurons that project to each other via connections of equal strength, and unidirectional, non-symmetric motifs, i.e. within a pair of neurons only one neuron projects to the other. We hypothesise that such motifs have been shaped via activity dependent synaptic plasticity processes. As a consequence, learning moves the distribution of the synaptic connections away from randomness. Our aim is to provide a global, macroscopic, single parameter characterisation of the statistical occurrence of bidirectional and unidirectional motifs. To this end we define a symmetry measure that does not require any a priori thresholding of the weights or knowledge of their maximal value. We calculate its mean and variance for random uniform or Gaussian distributions, which allows us to introduce a confidence measure of how significantly symmetric or asymmetric a specific configuration is, i.e. how likely it is that the configuration is the result of chance. We demonstrate the discriminatory power of our symmetry measure by inspecting the eigenvalues of different types of connectivity matrices. We show that a Gaussian weight distribution biases the connectivity motifs to more symmetric configurations than a uniform distribution and that introducing a random synaptic pruning, mimicking developmental regulation in synaptogenesis, biases the connectivity motifs to more asymmetric configurations, regardless of the distribution. We expect that our work will benefit the computational modelling community, by providing a systematic way to characterise symmetry and asymmetry in network structures. Further, our symmetry measure will be of use to electrophysiologists that investigate symmetry of network connectivity. © 2014 Esposito et al.
DOI
10.1371/journal.pone.0100805
WOS
WOS:000339040600019
Archivio
http://hdl.handle.net/20.500.11767/102882
info:eu-repo/semantics/altIdentifier/scopus/2-s2.0-84904052436
Diritti
open access
Soggetti
  • Algorithm

  • Connectome

  • Human

  • Nerve Net

  • Neuronal Plasticity

  • Stochastic Processe

  • Computer Simulation

  • Models, Neurological

  • Settore BIO/09 - Fisi...

Scopus© citazioni
8
Data di acquisizione
Jun 2, 2022
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Web of Science© citazioni
11
Data di acquisizione
Mar 4, 2024
Visualizzazioni
12
Data di acquisizione
Apr 19, 2024
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