Brain Informatics (Jan 2024)

Addiction-related brain networks identification via Graph Diffusion Reconstruction Network

  • Changhong Jing,
  • Hongzhi Kuai,
  • Hiroki Matsumoto,
  • Tomoharu Yamaguchi,
  • Iman Yi Liao,
  • Shuqiang Wang

DOI
https://doi.org/10.1186/s40708-023-00216-5
Journal volume & issue
Vol. 11, no. 1
pp. 1 – 11

Abstract

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Abstract Functional magnetic resonance imaging (fMRI) provides insights into complex patterns of brain functional changes, making it a valuable tool for exploring addiction-related brain connectivity. However, effectively extracting addiction-related brain connectivity from fMRI data remains challenging due to the intricate and non-linear nature of brain connections. Therefore, this paper proposed the Graph Diffusion Reconstruction Network (GDRN), a novel framework designed to capture addiction-related brain connectivity from fMRI data acquired from addicted rats. The proposed GDRN incorporates a diffusion reconstruction module that effectively maintains the unity of data distribution by reconstructing the training samples, thereby enhancing the model’s ability to reconstruct nicotine addiction-related brain networks. Experimental evaluations conducted on a nicotine addiction rat dataset demonstrate that the proposed GDRN effectively explores nicotine addiction-related brain connectivity. The findings suggest that the GDRN holds promise for uncovering and understanding the complex neural mechanisms underlying addiction using fMRI data.

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