A General Model for Retinal Segmentation and Quantification
Zhonghua Wang, Lie Ju, Sijia Li, Wei Feng, Sijin Zhou, Ming Hu, Jianhao Xiong, Xiaoying Tang, Yifan Peng, Mingquan Lin, Yaodong Ding, Yong Zeng, Wenbin Wei, Li Dong, Zongyuan Ge

TL;DR
RetSAM is a comprehensive framework that enables robust retinal segmentation and biomarker extraction from fundus images, facilitating large-scale ophthalmic research and disease correlation analysis.
Contribution
It introduces a multi-target segmentation model trained on over 200,000 images, supporting diverse structures and lesion types with superior performance and generalization.
Findings
Achieves 3.9% higher DSC than previous methods
Supports 17 public datasets with robust multi-task performance
Extracts over 30 standardized biomarkers for disease analysis
Abstract
Retinal imaging is fast, non-invasive, and widely available, offering quantifiable structural and vascular signals for ophthalmic and systemic health assessment. This accessibility creates an opportunity to study how quantitative retinal phenotypes relate to ocular and systemic diseases. However, such analyses remain difficult at scale due to the limited availability of public multi-label datasets and the lack of a unified segmentation-to-quantification pipeline. We present RetSAM, a general retinal segmentation and quantification framework for fundus imaging. It delivers robust multi-target segmentation and standardized biomarker extraction, supporting downstream ophthalmologic studies and oculomics correlation analyses. Trained on over 200,000 fundus images, RetSAM supports three task categories and segments five anatomical structures, four retinal phenotypic patterns, and more than…
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Taxonomy
TopicsRetinal Imaging and Analysis · Retinal Diseases and Treatments · AI in cancer detection
