Multi-step framework for glaucoma diagnosis in retinal fundus images using deep learning.

Med Biol Eng Comput

School of Information Engineering and Automation, Kunming University of Science and Technology, Kunming, 650500, China.

Published: January 2025

AI Article Synopsis

  • Glaucoma is a leading cause of blindness, and using deep learning to analyze retinal fundus images for screening has become common, but blood vessels in these images can complicate diagnosis.
  • This paper introduces MSGC-CNN, a multi-step framework that improves glaucoma diagnosis by integrating original fundus images with blood vessel-removed images, enhancing feature analysis.
  • The authors designed a specialized feature extraction network, RA-ResNet, and implemented transfer learning, achieving high classification accuracies of 92.01%, 93.75%, and 97.87% on three different public datasets, marking a significant improvement in diagnostic results.

Article Abstract

Glaucoma is one of the most common causes of blindness in the world. Screening glaucoma from retinal fundus images based on deep learning is a common method at present. In the diagnosis of glaucoma based on deep learning, the blood vessels within the optic disc interfere with the diagnosis, and there is also some pathological information outside the optic disc in fundus images. Therefore, integrating the original fundus image with the vessel-removed optic disc image can improve diagnostic efficiency. In this paper, we propose a novel multi-step framework named MSGC-CNN that can better diagnose glaucoma. In the framework, (1) we combine glaucoma pathological knowledge with deep learning model, fuse the features of original fundus image and optic disc region in which the interference of blood vessel is specifically removed by U-Net, and make glaucoma diagnosis based on the fused features. (2) Aiming at the characteristics of glaucoma fundus images, such as small amount of data, high resolution, and rich feature information, we design a new feature extraction network RA-ResNet and combined it with transfer learning. In order to verify our method, we conduct binary classification experiments on three public datasets, Drishti-GS, RIM-ONE-R3, and ACRIMA, with accuracy of 92.01%, 93.75%, and 97.87%. The results demonstrate a significant improvement over earlier results.

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Source
http://dx.doi.org/10.1007/s11517-024-03172-2DOI Listing

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