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人工智能大型语言模型在眼科护理中的应用。

Utility of artificial intelligence-based large language models in ophthalmic care.

机构信息

School of Optometry, College of Health and Life Sciences, Aston University, Birmingham, UK.

出版信息

Ophthalmic Physiol Opt. 2024 May;44(3):641-671. doi: 10.1111/opo.13284. Epub 2024 Feb 25.

Abstract

PURPOSE

With the introduction of ChatGPT, artificial intelligence (AI)-based large language models (LLMs) are rapidly becoming popular within the scientific community. They use natural language processing to generate human-like responses to queries. However, the application of LLMs and comparison of the abilities among different LLMs with their human counterparts in ophthalmic care remain under-reported.

RECENT FINDINGS

Hitherto, studies in eye care have demonstrated the utility of ChatGPT in generating patient information, clinical diagnosis and passing ophthalmology question-based examinations, among others. LLMs' performance (median accuracy, %) is influenced by factors such as the iteration, prompts utilised and the domain. Human expert (86%) demonstrated the highest proficiency in disease diagnosis, while ChatGPT-4 outperformed others in ophthalmology examinations (75.9%), symptom triaging (98%) and providing information and answering questions (84.6%). LLMs exhibited superior performance in general ophthalmology but reduced accuracy in ophthalmic subspecialties. Although AI-based LLMs like ChatGPT are deemed more efficient than their human counterparts, these AIs are constrained by their nonspecific and outdated training, no access to current knowledge, generation of plausible-sounding 'fake' responses or hallucinations, inability to process images, lack of critical literature analysis and ethical and copyright issues. A comprehensive evaluation of recently published studies is crucial to deepen understanding of LLMs and the potential of these AI-based LLMs.

SUMMARY

Ophthalmic care professionals should undertake a conservative approach when using AI, as human judgement remains essential for clinical decision-making and monitoring the accuracy of information. This review identified the ophthalmic applications and potential usages which need further exploration. With the advancement of LLMs, setting standards for benchmarking and promoting best practices is crucial. Potential clinical deployment requires the evaluation of these LLMs to move away from artificial settings, delve into clinical trials and determine their usefulness in the real world.

摘要

目的

随着 ChatGPT 的推出,基于人工智能(AI)的大型语言模型(LLM)在科学界迅速流行起来。它们使用自然语言处理生成类似于人类的对查询的响应。然而,在眼科护理中,LLM 的应用及其与人类在能力方面的比较仍然报道较少。

最近的发现

迄今为止,在眼科护理方面的研究表明,ChatGPT 可用于生成患者信息、进行临床诊断和通过眼科问题为基础的考试等。LLM 的性能(中位数准确率,%)受迭代次数、使用的提示以及领域等因素的影响。人类专家(86%)在疾病诊断方面表现出最高的熟练程度,而 ChatGPT-4 在眼科考试(75.9%)、症状分诊(98%)和提供信息及回答问题(84.6%)方面优于其他模型。LLM 在一般眼科方面表现出更好的性能,但在眼科亚专科方面的准确性降低。尽管像 ChatGPT 这样的基于 AI 的 LLM 被认为比人类更高效,但这些 AI 受到其非特定和过时的训练、无法访问当前知识、生成似是而非的“虚假”响应或幻觉、无法处理图像、缺乏批判性文献分析以及伦理和版权问题的限制。对最近发表的研究进行全面评估对于加深对 LLM 的理解以及这些基于 AI 的 LLM 的潜力至关重要。

总结

眼科护理专业人员在使用 AI 时应采取保守的方法,因为人类判断对于临床决策和监测信息的准确性仍然至关重要。本综述确定了需要进一步探索的眼科应用和潜在用途。随着 LLM 的进步,为基准测试和推广最佳实践设定标准至关重要。潜在的临床应用需要评估这些 LLM,使其脱离人工设置,深入临床试验,并确定其在现实世界中的有用性。

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