Understanding natural language: Potential application of large language models to ophthalmology

IF 3.7 3区 医学 Q1 OPHTHALMOLOGY
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Abstract

Large language models (LLMs), a natural language processing technology based on deep learning, are currently in the spotlight. These models closely mimic natural language comprehension and generation. Their evolution has undergone several waves of innovation similar to convolutional neural networks. The transformer architecture advancement in generative artificial intelligence marks a monumental leap beyond early-stage pattern recognition via supervised learning. With the expansion of parameters and training data (terabytes), LLMs unveil remarkable human interactivity, encompassing capabilities such as memory retention and comprehension. These advances make LLMs particularly well-suited for roles in healthcare communication between medical practitioners and patients. In this comprehensive review, we discuss the trajectory of LLMs and their potential implications for clinicians and patients. For clinicians, LLMs can be used for automated medical documentation, and given better inputs and extensive validation, LLMs may be able to autonomously diagnose and treat in the future. For patient care, LLMs can be used for triage suggestions, summarization of medical documents, explanation of a patient’s condition, and customizing patient education materials tailored to their comprehension level. The limitations of LLMs and possible solutions for real-world use are also presented. Given the rapid advancements in this area, this review attempts to briefly cover many roles that LLMs may play in the ophthalmic space, with a focus on improving the quality of healthcare delivery.

理解自然语言:大型语言模型在眼科领域的潜在应用。
大型语言模型(LLM)是一种基于深度学习的自然语言处理技术,目前正备受关注。这些模型密切模仿自然语言的理解和生成。与卷积神经网络类似,它们的发展也经历了几次创新浪潮。生成式人工智能中变压器架构的进步标志着通过监督学习进行早期模式识别的巨大飞跃。随着参数和训练数据(TB 级)的扩展,LLMs 展现出非凡的人类交互性,包括记忆保持和理解等能力。这些进步使 LLMs 特别适合在医疗从业者与患者之间的医疗保健交流中发挥作用。在这篇综述中,我们将讨论 LLM 的发展轨迹以及对临床医生和患者的潜在影响。对于临床医生来说,LLMs 可用于自动医疗记录,如果有更好的输入和广泛的验证,LLMs 未来可能能够进行自主诊断和治疗。在患者护理方面,LLM 可用于提出分诊建议、总结医疗文件、解释患者病情,以及根据患者的理解水平定制患者教育材料。此外,还介绍了 LLM 的局限性以及在现实世界中使用的可能解决方案。鉴于该领域的快速发展,本综述试图简要介绍 LLM 在眼科领域可能发挥的多种作用,重点是提高医疗保健服务的质量。
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
CiteScore
8.10
自引率
18.20%
发文量
197
审稿时长
6 weeks
期刊介绍: The Asia-Pacific Journal of Ophthalmology, a bimonthly, peer-reviewed online scientific publication, is an official publication of the Asia-Pacific Academy of Ophthalmology (APAO), a supranational organization which is committed to research, training, learning, publication and knowledge and skill transfers in ophthalmology and visual sciences. The Asia-Pacific Journal of Ophthalmology welcomes review articles on currently hot topics, original, previously unpublished manuscripts describing clinical investigations, clinical observations and clinically relevant laboratory investigations, as well as .perspectives containing personal viewpoints on topics with broad interests. Editorials are published by invitation only. Case reports are generally not considered. The Asia-Pacific Journal of Ophthalmology covers 16 subspecialties and is freely circulated among individual members of the APAO’s member societies, which amounts to a potential readership of over 50,000.
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