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OphGLM: Training an Ophthalmology Large Language-and-Vision Assistant based on Instructions and Dialogue

21 June 2023
Weihao Gao
Zhuo Deng
Zhiyuan Niu
Fuju Rong
Chucheng Chen
Zheng Gong
Wenze Zhang
Daimin Xiao
Fangjun Li
Zhenjie Cao
Zhaoyi Ma
Wenbin Wei
Lan Ma
    LM&MA
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Abstract

Large multimodal language models (LMMs) have achieved significant success in general domains. However, due to the significant differences between medical images and text and general web content, the performance of LMMs in medical scenarios is limited. In ophthalmology, clinical diagnosis relies on multiple modalities of medical images, but unfortunately, multimodal ophthalmic large language models have not been explored to date. In this paper, we study and construct an ophthalmic large multimodal model. Firstly, we use fundus images as an entry point to build a disease assessment and diagnosis pipeline to achieve common ophthalmic disease diagnosis and lesion segmentation. Then, we establish a new ophthalmic multimodal instruction-following and dialogue fine-tuning dataset based on disease-related knowledge data and publicly available real-world medical dialogue. We introduce visual ability into the large language model to complete the ophthalmic large language and vision assistant (OphGLM). Our experimental results demonstrate that the OphGLM model performs exceptionally well, and it has the potential to revolutionize clinical applications in ophthalmology. The dataset, code, and models will be made publicly available at https://github.com/ML-AILab/OphGLM.

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