Abstracting and Indexing

  • PubMed NLM
  • Google Scholar
  • Semantic Scholar
  • Scilit
  • CrossRef
  • WorldCat
  • ResearchGate
  • Academic Keys
  • DRJI
  • Microsoft Academic
  • Academia.edu
  • OpenAIRE
  • Scribd
  • Baidu Scholar

High Confidence Artificial Intelligence (AI) Predictions in Glaucoma Detection: A RIM ONE Database Study

Author(s): Fernando Ly Yang, Enrique Santos Bueso.

Introduction and Objectives: Glaucoma is a progressive optic neuropathy that can lead to irreversible blindness. This study evaluates the use of neural networks in glaucoma prediction with high confidence. Patients or Materials and Methods: The RIM One dataset was used, training an EfficientNetV2B0 model on fundus images. A 95% threshold was set for high-confidence predictions. Results: Sensitivity was 91% and specificity was 99%. Applying the highconfidence threshold increased the AUC to 100%. Conclusions: This study demonstrates the feasibility of using highconfidence AI predictions for glaucoma diagnosis, improving clinical relevance.

Journal Statistics

Impact Factor: * 4.2

Acceptance Rate: 77.66%

Time to first decision: 10.4 days

Time from article received to acceptance: 2-3 weeks

Discover More: Recent Articles

Grant Support Articles

© 2016-2025, Copyrights Fortune Journals. All Rights Reserved!