眼科视觉语言模型。

IF 3 2区 医学 Q1 OPHTHALMOLOGY Current Opinion in Ophthalmology Pub Date : 2024-11-01 Epub Date: 2024-08-26 DOI:10.1097/ICU.0000000000001089
Gilbert Lim, Kabilan Elangovan, Liyuan Jin
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引用次数: 0

摘要

综述的目的:视觉语言模型是人工智能领域的一种新兴模式,可在单一模型内同时分析图像和文本数据。这两种模式的融合与眼科特别相关,因为眼科历来涉及血管造影术、光学相干断层扫描和眼底摄影等专业成像技术,同时还要与包含自由文本描述的电子健康记录对接。本综述将对快速发展的视觉语言模型领域进行调查,因为它们适用于当前的眼科研究和实践:虽然包含图像和文本数据的模型在眼科领域由来已久,但有效的多模态视觉语言模型是最近利用转换器和自动编码器模型等技术的进步而发展起来的。摘要:视觉语言模型具有协助和简化眼科现有临床工作流程的潜力,无论是诊前、诊中还是诊后。然而,还有一些重要的挑战需要克服,特别是在患者隐私和模型建议的可解释性方面。
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Vision language models in ophthalmology.

Purpose of review: Vision Language Models are an emerging paradigm in artificial intelligence that offers the potential to natively analyze both image and textual data simultaneously, within a single model. The fusion of these two modalities is of particular relevance to ophthalmology, which has historically involved specialized imaging techniques such as angiography, optical coherence tomography, and fundus photography, while also interfacing with electronic health records that include free text descriptions. This review then surveys the fast-evolving field of Vision Language Models as they apply to current ophthalmologic research and practice.

Recent findings: Although models incorporating both image and text data have a long provenance in ophthalmology, effective multimodal Vision Language Models are a recent development exploiting advances in technologies such as transformer and autoencoder models.

Summary: Vision Language Models offer the potential to assist and streamline the existing clinical workflow in ophthalmology, whether previsit, during, or post-visit. There are, however, also important challenges to be overcome, particularly regarding patient privacy and explainability of model recommendations.

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来源期刊
CiteScore
6.80
自引率
5.40%
发文量
120
审稿时长
6-12 weeks
期刊介绍: Current Opinion in Ophthalmology is an indispensable resource featuring key up-to-date and important advances in the field from around the world. With renowned guest editors for each section, every bimonthly issue of Current Opinion in Ophthalmology delivers a fresh insight into topics such as glaucoma, refractive surgery and corneal and external disorders. With ten sections in total, the journal provides a convenient and thorough review of the field and will be of interest to researchers, clinicians and other healthcare professionals alike.
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