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Reaction-diffusion models in weighted and directed connectomes

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  • Oliver Schmitt
  • Christian Nitzsche
  • Peter Eipert
  • Vishnu Prathapan
  • Marc-Thorsten Hütt
  • Claus C Hilgetag

Abstract

Connectomes represent comprehensive descriptions of neural connections in a nervous system to better understand and model central brain function and peripheral processing of afferent and efferent neural signals. Connectomes can be considered as a distinctive and necessary structural component alongside glial, vascular, neurochemical, and metabolic networks of the nervous systems of higher organisms that are required for the control of body functions and interaction with the environment. They are carriers of functional phenomena such as planning behavior and cognition, which are based on the processing of highly dynamic neural signaling patterns. In this study, we examine more detailed connectomes with edge weighting and orientation properties, in which reciprocal neuronal connections are also considered. Diffusion processes are a further necessary condition for generating dynamic bioelectric patterns in connectomes. Based on our precise connectome data, we investigate different diffusion-reaction models to study the propagation of dynamic concentration patterns in control and lesioned connectomes. Therefore, differential equations for modeling diffusion were combined with well-known reaction terms to allow the use of connection weights, connectivity orientation and spatial distances.Three reaction-diffusion systems Gray-Scott, Gierer-Meinhardt and Mimura-Murray were investigated. For this purpose, implicit solvers were implemented in a numerically stable reaction-diffusion system within the framework of neuroVIISAS. The implemented reaction-diffusion systems were applied to a subconnectome which shapes the mechanosensitive pathway that is strongly affected in the multiple sclerosis demyelination disease. It was found that demyelination modeling by connectivity weight modulation changes the oscillations of the target region, i.e. the primary somatosensory cortex, of the mechanosensitive pathway.In conclusion, a new application of reaction-diffusion systems to weighted and directed connectomes has been realized. Because the implementation was realized in the neuroVIISAS framework many possibilities for the study of dynamic reaction-diffusion processes in empirical connectomes as well as specific randomized network models are available now.Author summary: Reaction-diffusion systems were adapted and analyzed in weighted and directed connectomes. The systems were applied to a multiple sclerosis model by modulating connectivity weights within the reaction-diffusion process. This leads to changes in the oscillation patterns of a target region of the mechanosensitive pathway.

Suggested Citation

  • Oliver Schmitt & Christian Nitzsche & Peter Eipert & Vishnu Prathapan & Marc-Thorsten Hütt & Claus C Hilgetag, 2022. "Reaction-diffusion models in weighted and directed connectomes," PLOS Computational Biology, Public Library of Science, vol. 18(10), pages 1-39, October.
  • Handle: RePEc:plo:pcbi00:1010507
    DOI: 10.1371/journal.pcbi.1010507
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