RFMiD: Retinal Image Analysis for multi-Disease Detection challenge

  • Samiksha Pachade
  • , Prasanna Porwal
  • , Manesh Kokare
  • , Girish Deshmukh
  • , Vivek Sahasrabuddhe
  • , Zhengbo Luo
  • , Feng Han
  • , Zitang Sun
  • , Li Qihan
  • , Sei ichiro Kamata
  • , Edward Ho
  • , Edward Wang
  • , Asaanth Sivajohan
  • , Saerom Youn
  • , Kevin Lane
  • , Jin Chun
  • , Xinliang Wang
  • , Yunchao Gu
  • , Sixu Lu
  • , Young tack Oh
  • Hyunjin Park, Chia Yen Lee, Hung Yeh, Kai Wen Cheng, Haoyu Wang, Jin Ye, Junjun He, Lixu Gu, Dominik Müller, Iñaki Soto-Rey, Frank Kramer, Hidehisa Arai, Yuma Ochi, Takami Okada, Luca Giancardo, Gwenolé Quellec, Fabrice Mériaudeau

Research output: Contribution to journalShort surveypeer-review

8 Scopus citations

Abstract

In the last decades, many publicly available large fundus image datasets have been collected for diabetic retinopathy, glaucoma, and age-related macular degeneration, and a few other frequent pathologies. These publicly available datasets were used to develop a computer-aided disease diagnosis system by training deep learning models to detect these frequent pathologies. One challenge limiting the adoption of a such system by the ophthalmologist is, computer-aided disease diagnosis system ignores sight-threatening rare pathologies such as central retinal artery occlusion or anterior ischemic optic neuropathy and others that ophthalmologists currently detect. Aiming to advance the state-of-the-art in automatic ocular disease classification of frequent diseases along with the rare pathologies, a grand challenge on “Retinal Image Analysis for multi-Disease Detection” was organized in conjunction with the IEEE International Symposium on Biomedical Imaging (ISBI - 2021). This paper, reports the challenge organization, dataset, top-performing participants solutions, evaluation measures, and results based on a new “Retinal Fundus Multi-disease Image Dataset” (RFMiD). There were two principal sub-challenges: disease screening (i.e. presence versus absence of pathology — a binary classification problem) and disease/pathology classification (a 28-class multi-label classification problem). It received a positive response from the scientific community with 74 submissions by individuals/teams that effectively entered in this challenge. The top-performing methodologies utilized a blend of data-preprocessing, data augmentation, pre-trained model, and model ensembling. This multi-disease (frequent and rare pathologies) detection will enable the development of generalizable models for screening the retina, unlike the previous efforts that focused on the detection of specific diseases.

Original languageEnglish
Article number103365
JournalMedical Image Analysis
Volume99
DOIs
StatePublished - Jan 2025

Keywords

  • Classification
  • Multi-label classification
  • Ocular disease
  • Rare pathology detection
  • Retinal fundus images

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