The use of artificial intelligence in detecting papilledema from fundus photographs.

IF 1 Q4 OPHTHALMOLOGY
Lazuardiah Anandi, Brigitta Marcia Budihardja, Erika Anggraini, Rona Ali Badjrai, Syntia Nusanti
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引用次数: 1

Abstract

Papilledema is an optic disc swelling with increased intracranial pressure as the underlying cause. Diagnosis of papilledema is made based on ophthalmoscopy findings. Although important, ophthalmoscopy can be challenging for general physicians and nonophthalmic specialists. Meanwhile, artificial intelligence (AI) has the potential to be a useful tool for the detection of fundus abnormalities, including papilledema. Even more, AI might also be useful in grading papilledema. We aim to review the latest advancement in the diagnosis of papilledema using AI and explore its potential. This review was conducted following the Preferred Reporting Items for Systematic Reviews and Meta-analyses guidelines. A systematic literature search was performed on four databases (PubMed, Cochrane, ProQuest, and Google Scholar) using the Keywords "AI" and "papilledema" including their synonyms. The literature search identified 372 articles, of which six met the eligibility criteria. Of the six articles included in this review, three articles assessed the use of AI for detecting papilledema, one article evaluated the use of AI for papilledema grading using Frisèn criteria, and two articles assessed the use of AI for both detection and grading. The models for both papilledema detection and grading had shown good diagnostic value, with high sensitivity (83.1%-99.82%), specificity (82.6%-98.65%), and accuracy (85.89%-99.89%). Even though studies regarding the use of AI in papilledema are still limited, AI has shown promising potential for papilledema detection and grading. Further studies will help provide more evidence to support the use of AI in clinical practice.

Abstract Image

人工智能在眼底照片中检测乳头水肿中的应用。
视神经乳头水肿是一种视盘肿胀,颅内压升高是其根本原因。视乳头水肿的诊断是基于眼科检查结果。虽然眼科检查很重要,但对普通医生和非眼科专家来说,这是一个挑战。同时,人工智能(AI)有可能成为检测眼底异常(包括乳头水肿)的有用工具。更重要的是,人工智能也可能有助于对乳头水肿进行分级。本文旨在综述人工智能在乳头状水肿诊断方面的最新进展,并探讨其潜力。本综述按照系统评价和荟萃分析指南的首选报告项目进行。在四个数据库(PubMed、Cochrane、ProQuest和Google Scholar)中使用关键词“AI”和“papilledema”(包括其同义词)进行系统的文献检索。文献检索发现372篇,其中6篇符合入选标准。在本综述纳入的六篇文章中,三篇文章评估了人工智能用于检测乳头状水肿的使用,一篇文章评估了人工智能用于使用fris标准对乳头状水肿进行分级的使用,两篇文章评估了人工智能用于检测和分级的使用。乳头水肿检测和分级模型均具有较高的敏感性(83.1% ~ 99.82%)、特异性(82.6% ~ 98.65%)和准确性(85.89% ~ 99.89%),具有较好的诊断价值。尽管关于人工智能在乳头状水肿中的应用的研究仍然有限,但人工智能在乳头状水肿的检测和分级方面显示出了良好的潜力。进一步的研究将有助于提供更多的证据来支持人工智能在临床实践中的应用。
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
1.80
自引率
9.10%
发文量
68
审稿时长
19 weeks
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