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📄 Abstract
Abstract: We identify two major limitations in the existing studies on retinal vessel
segmentation: (1) Most existing works are restricted to one modality, i.e., the
Color Fundus (CF). However, multi-modality retinal images are used every day in
the study of the retina and diagnosis of retinal diseases, and the study of
vessel segmentation on other modalities is scarce; (2) Even though a few works
extended their experiments to new modalities such as the Multi-Color Scanning
Laser Ophthalmoscopy (MC), these works still require fine-tuning a separate
model for the new modality. The fine-tuning will require extra training data,
which is difficult to acquire. In this work, we present a novel universal
vessel segmentation model (URVSM) for multi-modality retinal images. In
addition to performing the study on a much wider range of image modalities, we
also propose a universal model to segment the vessels in all these commonly
used modalities. While being much more versatile compared with existing
methods, our universal model also demonstrates comparable performance to the
state-of-the-art fine-tuned methods. To the best of our knowledge, this is the
first work that achieves modality-agnostic retinal vessel segmentation and the
first to study retinal vessel segmentation in several novel modalities.
Authors (7)
Bo Wen
Anna Heinke
Akshay Agnihotri
Dirk-Uwe Bartsch
William Freeman
Truong Nguyen
+1 more
Submitted
February 10, 2025
Key Contributions
Proposes a universal vessel segmentation model (URVSM) capable of segmenting retinal vessels across multiple modalities without requiring modality-specific fine-tuning. This addresses the limitations of single-modality models and the need for extensive retraining data for new modalities.
Business Value
Accelerates the diagnosis and monitoring of retinal diseases by providing a single, versatile tool for vessel segmentation across various imaging techniques, potentially improving patient outcomes and reducing healthcare costs.