PLoS Computational Biology (Mar 2024)

Ensemble dynamics and information flow deduction from whole-brain imaging data.

  • Yu Toyoshima,
  • Hirofumi Sato,
  • Daiki Nagata,
  • Manami Kanamori,
  • Moon Sun Jang,
  • Koyo Kuze,
  • Suzu Oe,
  • Takayuki Teramoto,
  • Yuishi Iwasaki,
  • Ryo Yoshida,
  • Takeshi Ishihara,
  • Yuichi Iino

DOI
https://doi.org/10.1371/journal.pcbi.1011848
Journal volume & issue
Vol. 20, no. 3
p. e1011848

Abstract

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The recent advancements in large-scale activity imaging of neuronal ensembles offer valuable opportunities to comprehend the process involved in generating brain activity patterns and understanding how information is transmitted between neurons or neuronal ensembles. However, existing methodologies for extracting the underlying properties that generate overall dynamics are still limited. In this study, we applied previously unexplored methodologies to analyze time-lapse 3D imaging (4D imaging) data of head neurons of the nematode Caenorhabditis elegans. By combining time-delay embedding with the independent component analysis, we successfully decomposed whole-brain activities into a small number of component dynamics. Through the integration of results from multiple samples, we extracted common dynamics from neuronal activities that exhibit apparent divergence across different animals. Notably, while several components show common cooperativity across samples, some component pairs exhibited distinct relationships between individual samples. We further developed time series prediction models of synaptic communications. By combining dimension reduction using the general framework, gradient kernel dimension reduction, and probabilistic modeling, the overall relationships of neural activities were incorporated. By this approach, the stochastic but coordinated dynamics were reproduced in the simulated whole-brain neural network. We found that noise in the nervous system is crucial for generating realistic whole-brain dynamics. Furthermore, by evaluating synaptic interaction properties in the models, strong interactions within the core neural circuit, variable sensory transmission and importance of gap junctions were inferred. Virtual optogenetics can be also performed using the model. These analyses provide a solid foundation for understanding information flow in real neural networks.