The enlightenment of artificial intelligence large-scale model on the research of intelligent eye diagnosis in traditional Chinese medicine

Q3 Medicine
Yuan Gao , Zixuan Wu , Boyang Sheng , Fu Zhang , Yong Cheng , Junfeng Yan , Qinghua Peng
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引用次数: 0

Abstract

Eye diagnosis is a method for inspecting systemic diseases and syndromes by observing the eyes. With the development of intelligent diagnosis in traditional Chinese medicine (TCM), artificial intelligence (AI) can improve the accuracy and efficiency of eye diagnosis. However, the research on intelligent eye diagnosis still faces many challenges, including the lack of standardized and precisely labeled data, multi-modal information analysis, and artificial intelligence models for syndrome differentiation. The widespread application of AI models in medicine provides new insights and opportunities for the research of eye diagnosis intelligence. This study elaborates on the three key technologies of AI models in the intelligent application of TCM eye diagnosis, and explores the implications for the research of eye diagnosis intelligence. First, a database concerning eye diagnosis was established based on self-supervised learning so as to solve the issues related to the lack of standardized and precisely labeled data. Next, the cross-modal understanding and generation of deep neural network models to address the problem of lacking multi-modal information analysis. Last, the building of data-driven models for eye diagnosis to tackle the issue of the absence of syndrome differentiation models. In summary, research on intelligent eye diagnosis has great potential to be applied the surge of AI model applications.
人工智能大型模型对中医智能眼诊研究的启示
眼诊是通过观察眼睛来检查全身性疾病和综合征的一种方法。随着中医智能诊断的发展,人工智能(AI)可以提高眼科诊断的准确性和效率。然而,眼科智能诊断的研究仍面临诸多挑战,包括缺乏标准化和精确标记的数据、多模态信息分析以及用于综合征分型的人工智能模型。人工智能模型在医学领域的广泛应用为眼科诊断智能化研究提供了新的启示和机遇。本研究阐述了人工智能模型在中医眼科诊断智能化应用中的三大关键技术,并探讨了其对眼科诊断智能化研究的启示。首先,建立基于自监督学习的眼科诊断数据库,以解决缺乏标准化和精确标注数据的问题。其次,通过跨模态理解和生成深度神经网络模型,解决缺乏多模态信息分析的问题。最后,建立数据驱动的眼科诊断模型,解决缺乏综合征区分模型的问题。总之,智能眼科诊断研究大有可为,将掀起人工智能模型应用的热潮。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Digital Chinese Medicine
Digital Chinese Medicine Medicine-Complementary and Alternative Medicine
CiteScore
1.80
自引率
0.00%
发文量
126
审稿时长
63 days
期刊介绍:
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