Frontiers in Neuroscience (Apr 2024)

Beyond nodes and edges: a bibliometric analysis on graph theory and neuroimaging modalities

  • Makliya Mamat,
  • Ziyan Wang,
  • Ling Jin,
  • Kailong He,
  • Lin Li,
  • Yiyong Chen

DOI
https://doi.org/10.3389/fnins.2024.1373264
Journal volume & issue
Vol. 18

Abstract

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Understanding the intricate architecture of the brain through the lens of graph theory and advanced neuroimaging techniques has become increasingly pivotal in unraveling the complexities of neural networks. This bibliometric analysis explores the evolving landscape of brain research by focusing on the intersection of graph theoretical approaches, neuroanatomy, and diverse neuroimaging modalities. A systematic search strategy was used that resulted in the retrieval of a comprehensive dataset of articles and reviews. Using CiteSpace and VOSviewer, a detailed scientometric analysis was conducted that revealed emerging trends, key research clusters, and influential contributions within this multidisciplinary domain. Our review highlights the growing synergy between graph theory methodologies and neuroimaging modalities, reflecting the evolving paradigms shaping our understanding of brain networks. This study offers comprehensive insight into brain network research, emphasizing growth patterns, pivotal contributions, and global collaborative networks, thus serving as a valuable resource for researchers and institutions navigating this interdisciplinary landscape.

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