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A validated web-application (GFDC) for automatic classification of glaucomatous visual field defects using Hodapp-Parrish-Anderson criteria.

Arun James ThirunavukarasuNikhil JainRohan SangheraFederico LattuadaShathar MahmoodAnna EconomouHelmut C Y YuRupert Bourne
Published in: NPJ digital medicine (2024)
Subjectivity and ambiguity of visual field classification limits the accuracy and reliability of glaucoma diagnosis, prognostication, and management decisions. Standardised rules for classifying glaucomatous visual field defects exist, but these are labour-intensive and therefore impractical for day-to-day clinical work. Here a web-application, Glaucoma Field Defect Classifier (GFDC), for automatic application of Hodapp-Parrish-Anderson, is presented and validated in a cross-sectional study. GFDC exhibits perfect accuracy in classifying mild, moderate, and severe glaucomatous field defects. GFDC may thereby improve the accuracy and fairness of clinical decision-making in glaucoma. The application and its source code are freely hosted online for clinicians and researchers to use with glaucoma patients.
Keyphrases
  • optic nerve
  • deep learning
  • machine learning
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  • chronic kidney disease
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  • risk factors
  • prognostic factors
  • social media