Glaucoma Diagnosis
Glaucoma diagnosis research focuses on developing accurate and efficient automated methods for detecting and grading this blinding eye disease, primarily using fundus photography and optical coherence tomography (OCT) images. Current efforts leverage deep learning, employing architectures like convolutional neural networks (CNNs), vision transformers, recurrent neural networks (RNNs), and capsule networks, often incorporating attention mechanisms and multi-modal data fusion to improve diagnostic accuracy and address challenges like domain shifts and data imbalance. These advancements aim to improve early detection, enabling timely intervention and potentially reducing the global burden of glaucoma by assisting ophthalmologists and expanding access to screening.
Papers
Medical Application of Geometric Deep Learning for the Diagnosis of Glaucoma
Alexandre H. Thiery, Fabian Braeu, Tin A. Tun, Tin Aung, Michael J. A. Girard
Geometric Deep Learning to Identify the Critical 3D Structural Features of the Optic Nerve Head for Glaucoma Diagnosis
Fabian A. Braeu, Alexandre H. Thiéry, Tin A. Tun, Aiste Kadziauskiene, George Barbastathis, Tin Aung, Michaël J. A. Girard
GAMMA Challenge:Glaucoma grAding from Multi-Modality imAges
Junde Wu, Huihui Fang, Fei Li, Huazhu Fu, Fengbin Lin, Jiongcheng Li, Lexing Huang, Qinji Yu, Sifan Song, Xinxing Xu, Yanyu Xu, Wensai Wang, Lingxiao Wang, Shuai Lu, Huiqi Li, Shihua Huang, Zhichao Lu, Chubin Ou, Xifei Wei, Bingyuan Liu, Riadh Kobbi, Xiaoying Tang, Li Lin, Qiang Zhou, Qiang Hu, Hrvoje Bogunovic, José Ignacio Orlando, Xiulan Zhang, Yanwu Xu
Opinions Vary? Diagnosis First!
Junde Wu, Huihui Fang, Dalu Yang, Zhaowei Wang, Wenshuo Zhou, Fangxin Shang, Yehui Yang, Yanwu Xu