Longitudinal study on the impact of short-term radiological interpretation training on resting-state brain network hubs

  • Hongmei Wang
  • , Renhuan Yao
  • , Xiaoyan Zhang
  • , Minghao Dong
  • , Chenwang Jin

Research output: Contribution to journalArticlepeer-review

Abstract

Radiological expertise develops through extensive experience in specific imaging modalities. While previous research has focused on long-term learning and neural mechanisms of expertise, the effects of short-term radiological training on resting-state neural networks remain underexplored. This study investigates the impact of four weeks of radiological interpretation training on resting-state neural networks in 32 radiology interns. Using behavioral assessments and resting-state fMRI data, a Recursive Feature Elimination Support Vector Machine (RFE-SVM) model achieved 82% accuracy in classifying data from the pre- and post-training phases. Key brain regions linked to attention, decision-making, working memory, and visual processing were identified, providing insights into how short-term training reshapes intrinsic brain networks and facilitates rapid adaptation to new skills. These findings also lay a theoretical foundation for designing more effective training programs.

Original languageEnglish
Article number100252
JournalTrends in Neuroscience and Education
Volume39
DOIs
StatePublished - Jun 2025
Externally publishedYes

Keywords

  • Degree centrality
  • Longitudinal study
  • Radiological expertise
  • Short-term
  • Support vector machine

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