Synthetic Vasculature and Pathology Enhance Vision-Language Model Reasoning
By: Chenjun Li , Cheng Wan , Laurin Lux and more
Vision-Language Models (VLMs) offer a promising path toward interpretable medical diagnosis by allowing users to ask about clinical explanations alongside predictions and across different modalities. However, training VLMs for detailed reasoning requires large-scale image-text datasets. In many specialized domains, for example in reading Optical Coherence Tomography Angiography (OCTA) images, such precise text with grounded description of pathologies is scarce or even non-existent. To overcome this bottleneck, we introduce Synthetic Vasculature Reasoning (SVR), a framework that controllably synthesizes images and corresponding text, specifically: realistic retinal vasculature with Diabetic Retinopathy (DR) features: capillary dropout, microaneurysms, neovascularization, and tortuosity, while automatically generating granular reasoning texts. Based on this we curate OCTA-100K-SVR, an OCTA image-reasoning dataset with 100,000 pairs. Our experiments show that a general-purpose VLM (Qwen3-VL-8b) trained on the dataset achieves a zero-shot balanced classification accuracy of 89.67% on real OCTA images, outperforming supervised baselines. Through human expert evaluation we also demonstrate that it significantly enhances explanation quality and pathology localization on clinical data.
Similar Papers
Fine-tuning Vision Language Models with Graph-based Knowledge for Explainable Medical Image Analysis
CV and Pattern Recognition
Helps doctors see why eyes are sick.
PathVLM-R1: A Reinforcement Learning-Driven Reasoning Model for Pathology Visual-Language Tasks
CV and Pattern Recognition
Helps doctors find diseases in pictures.
PathoHR: Hierarchical Reasoning for Vision-Language Models in Pathology
CV and Pattern Recognition
Helps computers find cancer in pictures better.