TY - JOUR
T1 - RFMiD
T2 - Retinal Image Analysis for multi-Disease Detection challenge
AU - Pachade, Samiksha
AU - Porwal, Prasanna
AU - Kokare, Manesh
AU - Deshmukh, Girish
AU - Sahasrabuddhe, Vivek
AU - Luo, Zhengbo
AU - Han, Feng
AU - Sun, Zitang
AU - Qihan, Li
AU - Kamata, Sei ichiro
AU - Ho, Edward
AU - Wang, Edward
AU - Sivajohan, Asaanth
AU - Youn, Saerom
AU - Lane, Kevin
AU - Chun, Jin
AU - Wang, Xinliang
AU - Gu, Yunchao
AU - Lu, Sixu
AU - Oh, Young tack
AU - Park, Hyunjin
AU - Lee, Chia Yen
AU - Yeh, Hung
AU - Cheng, Kai Wen
AU - Wang, Haoyu
AU - Ye, Jin
AU - He, Junjun
AU - Gu, Lixu
AU - Müller, Dominik
AU - Soto-Rey, Iñaki
AU - Kramer, Frank
AU - Arai, Hidehisa
AU - Ochi, Yuma
AU - Okada, Takami
AU - Giancardo, Luca
AU - Quellec, Gwenolé
AU - Mériaudeau, Fabrice
N1 - Publisher Copyright:
© 2024 Elsevier B.V.
PY - 2025/1
Y1 - 2025/1
N2 - 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.
AB - 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.
KW - Classification
KW - Multi-label classification
KW - Ocular disease
KW - Rare pathology detection
KW - Retinal fundus images
UR - https://www.scopus.com/pages/publications/85205980966
U2 - 10.1016/j.media.2024.103365
DO - 10.1016/j.media.2024.103365
M3 - Short survey
C2 - 39395210
AN - SCOPUS:85205980966
SN - 1361-8415
VL - 99
JO - Medical Image Analysis
JF - Medical Image Analysis
M1 - 103365
ER -