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RFMiD:用于多疾病检测挑战赛的视网膜图像分析。

RFMiD: Retinal Image Analysis for multi-Disease Detection challenge.

机构信息

Center of Excellence in Signal and Image Processing, Shri Guru Gobind Singhji Institute of Engineering and Technology, Nanded 431606, India.

Center of Excellence in Signal and Image Processing, Shri Guru Gobind Singhji Institute of Engineering and Technology, Nanded 431606, India.

出版信息

Med Image Anal. 2025 Jan;99:103365. doi: 10.1016/j.media.2024.103365. Epub 2024 Oct 9.

DOI:10.1016/j.media.2024.103365
PMID:39395210
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.

摘要

在过去的几十年中,已经收集了许多可公开获取的大型眼底图像数据集,用于糖尿病视网膜病变、青光眼和年龄相关性黄斑变性以及其他一些常见病变的研究。这些公开的数据集被用于开发计算机辅助疾病诊断系统,通过训练深度学习模型来检测这些常见病变。限制眼科医生采用这种系统的一个挑战是,计算机辅助疾病诊断系统忽略了一些威胁视力的罕见病变,如视网膜中央动脉阻塞或前部缺血性视神经病变等,而这些病变是眼科医生目前可以检测到的。为了在常见疾病的自动眼部疾病分类方面取得进展,并涵盖罕见病变,我们与 IEEE 国际生物医学成像研讨会(ISBI-2021)联合举办了“多疾病检测的视网膜图像分析”挑战赛。本文报告了挑战赛的组织、数据集、表现最佳参与者的解决方案、评估指标以及基于新的“视网膜眼底多病种图像数据集(RFMiD)”的结果。挑战赛有两个主要子挑战:疾病筛查(即是否存在病变-二进制分类问题)和疾病/病变分类(28 类多标签分类问题)。该挑战赛得到了科学界的积极响应,有 74 名个人/团队提交了参赛作品。表现最佳的方法利用了数据预处理、数据增强、预训练模型和模型集成的组合。与之前专注于特定疾病检测的努力不同,这种多疾病(常见和罕见病变)检测将能够开发出可用于筛查视网膜的通用模型。

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引用本文的文献

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Research progress in deep learning-based fundus image analysis for the diagnosis and prediction of hypertension-related diseases.基于深度学习的眼底图像分析在高血压相关疾病诊断和预测中的研究进展
Front Cell Dev Biol. 2025 Aug 6;13:1608994. doi: 10.3389/fcell.2025.1608994. eCollection 2025.
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Selecting the Right AI Algorithm for the Job: A Guide for Navigating the AI Jungle in Ophthalmology.为工作选择合适的人工智能算法:眼科人工智能丛林导航指南
Ophthalmol Ther. 2025 Jul 2. doi: 10.1007/s40123-025-01191-2.
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External Validation of Deep Learning Models for Classifying Etiology of Retinal Hemorrhage Using Diverse Fundus Photography Datasets.
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Bioengineering (Basel). 2024 Dec 29;12(1):20. doi: 10.3390/bioengineering12010020.