Protocol for a systematic review and meta-analysis of the diagnostic accuracy of artificial intelligence for grading of ophthalmology imaging modalities.

Jessica Cao, Brittany Chang-Kit, Glen Katsnelson, Parsa Merhraban Far, Elizabeth Uleryk, Adeteju Ogunbameru, Rafael N Miranda, Tina Felfeli
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引用次数: 1

Abstract

Background: With the rise of artificial intelligence (AI) in ophthalmology, the need to define its diagnostic accuracy is increasingly important. The review aims to elucidate the diagnostic accuracy of AI algorithms in screening for all ophthalmic conditions in patient care settings that involve digital imaging modalities, using the reference standard of human graders.

Methods: This is a systematic review and meta-analysis. A literature search will be conducted on Ovid MEDLINE, Ovid EMBASE, and Wiley Cochrane CENTRAL from January 1, 2000, to December 20, 2021. Studies will be selected via screening the titles and abstracts, followed by full-text screening. Articles that compare the results of AI-graded ophthalmic images with results from human graders as a reference standard will be included; articles that do not will be excluded. The systematic review software DistillerSR will be used to automate part of the screening process as an adjunct to human reviewers. After the full-text screening, data will be extracted from each study via the categories of study characteristics, patient information, AI methods, intervention, and outcomes. Risk of bias will be scored using Quality Assessment of Diagnostic Accuracy Studies (QUADAS-2) by two trained independent reviewers. Disagreements at any step will be addressed by a third adjudicator. The study results will include summary receiver operating characteristic (sROC) curve plots as well as pooled sensitivity and specificity of artificial intelligence for detection of any ophthalmic conditions based on imaging modalities compared to the reference standard. Statistics will be calculated in the R statistical software.

Discussion: This study will provide novel insights into the diagnostic accuracy of AI in new domains of ophthalmology that have not been previously studied. The protocol also outlines the use of an AI-based software to assist in article screening, which may serve as a reference for improving the efficiency and accuracy of future large systematic reviews.

Trial registration: PROSPERO, CRD42021274441.

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人工智能眼科成像方式分级诊断准确性的系统评价和荟萃分析方案。
背景:随着人工智能(AI)在眼科领域的兴起,对其诊断准确性的定义变得越来越重要。该综述旨在阐明人工智能算法在涉及数字成像模式的患者护理环境中筛查所有眼科疾病时的诊断准确性,并使用人类评分的参考标准。方法:系统综述和荟萃分析。从2000年1月1日至2021年12月20日,将在Ovid MEDLINE、Ovid EMBASE和Wiley Cochrane CENTRAL进行文献检索。研究将通过筛选标题和摘要,然后是全文筛选来选择。将人工智能分级的眼科图像结果与人类分级的结果进行比较,作为参考标准的文章将被纳入;不这样做的文章将被排除在外。系统审查软件蒸馏器sr将用于自动化筛选过程的一部分,作为人类审查员的辅助。全文筛选后,将通过研究特征、患者信息、人工智能方法、干预和结果等类别从每项研究中提取数据。偏倚风险将由两名训练有素的独立审稿人使用诊断准确性研究质量评估(QUADAS-2)进行评分。任何步骤的分歧都将由第三方裁决者解决。研究结果将包括接受者工作特征(sROC)曲线图,以及基于成像方式与参考标准相比,人工智能检测任何眼部疾病的综合灵敏度和特异性。统计将在R统计软件中进行计算。讨论:这项研究将为人工智能在眼科新领域的诊断准确性提供新的见解,这些领域以前没有研究过。该方案还概述了使用基于人工智能的软件来协助文章筛选,这可以作为提高未来大型系统评价的效率和准确性的参考。试验注册号:PROSPERO, CRD42021274441。
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