Benchmarking Large Multimodal Models for Ophthalmic Visual Question Answering with OphthalWeChat
Pusheng Xu, Xia Gong, Xiaolan Chen, Weiyi Zhang, Jiancheng Yang, Bingjie Yan, Meng Yuan, Yalin Zheng, Mingguang He, Danli Shi

TL;DR
This paper introduces OphthalWeChat, a bilingual ophthalmic VQA benchmark with real-world clinical data, to evaluate and compare large multimodal models' performance in eye care question answering.
Contribution
It creates the first bilingual ophthalmic VQA benchmark with authentic clinical data, enabling systematic evaluation of VLMs in ophthalmology.
Findings
Gemini 2.0 Flash outperformed other models in overall accuracy.
The dataset includes 3,469 images and 30,120 QA pairs across multiple ophthalmic conditions.
Model performance varies by question type and language, highlighting strengths and weaknesses.
Abstract
Purpose: To develop a bilingual multimodal visual question answering (VQA) benchmark for evaluating VLMs in ophthalmology. Methods: Ophthalmic image posts and associated captions published between January 1, 2016, and December 31, 2024, were collected from WeChat Official Accounts. Based on these captions, bilingual question-answer (QA) pairs in Chinese and English were generated using GPT-4o-mini. QA pairs were categorized into six subsets by question type and language: binary (Binary_CN, Binary_EN), single-choice (Single-choice_CN, Single-choice_EN), and open-ended (Open-ended_CN, Open-ended_EN). The benchmark was used to evaluate the performance of three VLMs: GPT-4o, Gemini 2.0 Flash, and Qwen2.5-VL-72B-Instruct. Results: The final OphthalWeChat dataset included 3,469 images and 30,120 QA pairs across 9 ophthalmic subspecialties, 548 conditions, 29 imaging modalities, and 68…
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