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Main Authors: Wu, Yue, Chen, Xiaolan, Zhang, Weiyi, Liu, Shunming, Sum, Wing Man Rita, Wu, Xinyuan, Shang, Xianwen, Kee, Chea-su, He, Mingguang, Shi, Danli
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2507.19498
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author Wu, Yue
Chen, Xiaolan
Zhang, Weiyi
Liu, Shunming
Sum, Wing Man Rita
Wu, Xinyuan
Shang, Xianwen
Kee, Chea-su
He, Mingguang
Shi, Danli
author_facet Wu, Yue
Chen, Xiaolan
Zhang, Weiyi
Liu, Shunming
Sum, Wing Man Rita
Wu, Xinyuan
Shang, Xianwen
Kee, Chea-su
He, Mingguang
Shi, Danli
contents Large language models (LLMs) show promise for tailored healthcare communication but face challenges in interpretability and multi-task integration particularly for domain-specific needs like myopia, and their real-world effectiveness as patient education tools has yet to be demonstrated. Here, we introduce ChatMyopia, an LLM-based AI agent designed to address text and image-based inquiries related to myopia. To achieve this, ChatMyopia integrates an image classification tool and a retrieval-augmented knowledge base built from literature, expert consensus, and clinical guidelines. Myopic maculopathy grading task, single question examination and human evaluations validated its ability to deliver personalized, accurate, and safe responses to myopia-related inquiries with high scalability and interpretability. In a randomized controlled trial (n=70, NCT06607822), ChatMyopia significantly improved patient satisfaction compared to traditional leaflets, enhancing patient education in accuracy, empathy, disease awareness, and patient-eyecare practitioner communication. These findings highlight ChatMyopia's potential as a valuable supplement to enhance patient education and improve satisfaction with medical services in primary eye care settings.
format Preprint
id arxiv_https___arxiv_org_abs_2507_19498
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle ChatMyopia: An AI Agent for Pre-consultation Education in Primary Eye Care Settings
Wu, Yue
Chen, Xiaolan
Zhang, Weiyi
Liu, Shunming
Sum, Wing Man Rita
Wu, Xinyuan
Shang, Xianwen
Kee, Chea-su
He, Mingguang
Shi, Danli
Human-Computer Interaction
Artificial Intelligence
Large language models (LLMs) show promise for tailored healthcare communication but face challenges in interpretability and multi-task integration particularly for domain-specific needs like myopia, and their real-world effectiveness as patient education tools has yet to be demonstrated. Here, we introduce ChatMyopia, an LLM-based AI agent designed to address text and image-based inquiries related to myopia. To achieve this, ChatMyopia integrates an image classification tool and a retrieval-augmented knowledge base built from literature, expert consensus, and clinical guidelines. Myopic maculopathy grading task, single question examination and human evaluations validated its ability to deliver personalized, accurate, and safe responses to myopia-related inquiries with high scalability and interpretability. In a randomized controlled trial (n=70, NCT06607822), ChatMyopia significantly improved patient satisfaction compared to traditional leaflets, enhancing patient education in accuracy, empathy, disease awareness, and patient-eyecare practitioner communication. These findings highlight ChatMyopia's potential as a valuable supplement to enhance patient education and improve satisfaction with medical services in primary eye care settings.
title ChatMyopia: An AI Agent for Pre-consultation Education in Primary Eye Care Settings
topic Human-Computer Interaction
Artificial Intelligence
url https://arxiv.org/abs/2507.19498