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Data for Brain Reference Architecture of YM24Amygdala

##article.authors##

  • Yohei Maruyama The Whole Brain Architecture Initiative
  • Tatsuya Miyamoto Graduate school of Advanced Science and Engineering, Waseda University
  • Yoshimasa Tawatsuji Graduate School of Engineering, The University of Tokyo, The Whole Brain Architecture Initiative
  • Hiroshi Yamakawa Graduate School of Engineering, The University of Tokyo, The Whole Brain Architecture Initiative

DOI:

https://doi.org/10.51094/jxiv.775

Keywords:

motif, Funciton Realization Graph, Brain Information Flow, amygdala, fear conditioning

Abstract

The dataset covers fear conditioning in the amygdala, including Brain Information Flow (BIF) data related to the amygdala’ s fear conditioning circuitry. The data was collected in alignment with anatomical and neural dynamics and reconstructed using functionally organized motifs for the construction of Functional Reference Graphs (FRG). By using motifs, it enables the identification of frequently observed patterns as functional modules within the amygdala. This facilitates a detailed analysis of the amygdala’ s BIF circuitry from a bottom-up perspective, aiding in the construction of FRG graphs and enhancing our comprehension of the neural circuitry’s overall function. This data is organized into brain reference architecture (BRA) format. The dataset is stored in the BRA Data Repository and is readily accessible for research purposes.

Conflicts of Interest Disclosure

Yoshimasa Tawatsuji and Hiroshi Yamakawa are managers of BRAES but did not take part in the editorial process or decisions pertaining to this manuscript.

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Submitted: 2024-06-27 23:30:18 UTC

Published: 2024-07-04 10:36:48 UTC

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Biology, Life Sciences & Basic Medicine