David Restrepo, Justin Michael Quion, Frederico Do Carmo Novaes, Iago Diogenes Azevedo Costa, Constanza Vasquez, Alyssa Nicole Bautista, Ellaine Quiminiano, Patricia Abigail Lim, Roger Mwavu, Leo Anthony Celi, Luis Filipe Nakayama
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引用次数: 0
Abstract
Background: Imaging plays a pivotal role in eye assessment. With the introduction of advanced machine learning and artificial intelligence (AI), the focus has shifted to imaging datasets in ophthalmology. While disparities and health inequalities hidden within data are well-documented, the ophthalmology field faces specific challenges to the creation and maintenance of datasets. Optical Coherence Tomography (OCT) is useful for the diagnosis and monitoring of retinal pathologies, making it valuable for AI applications. This review aims to identify and compare the landscape of publicly available optical coherence tomography databases for AI applications.
Methods: We conducted a literature review on OCT and AI articles with publicly accessible datasets, using PubMed, Scopus, and Web of Science databases. The review retrieved 183 articles, and after full-text analysis, 50 articles were included. From the included articles were identified 8 publicly available OCT datasets, focusing on patient demographics and clinical details for thorough assessment and comparison.
Results: The resulting datasets encompass 154,313 images collected from Spectralis, Cirrus HD, Topcon 3D, and Bioptigen devices. These datasets included normal exams, age-related macular degeneration, and diabetic maculopathy, among others. Comprehensive demographic information is available in one dataset and the USA is the most represented population.
Discussion: Current publicly available OCT databases for AI applications exhibit limitations, stemming from their non-representative nature and the lack of comprehensive demographic information. Limited datasets hamper research and equitable AI development. To promote equitable AI algorithmic development in ophthalmology, there is a need for the creation and dissemination of more representative datasets.
背景:成像在眼科评估中起着举足轻重的作用。随着先进的机器学习和人工智能(AI)的引入,眼科成像数据集已成为关注的焦点。虽然隐藏在数据中的差异和健康不平等问题已得到充分证实,但眼科领域在数据集的创建和维护方面面临着特殊的挑战。光学相干断层扫描(OCT)可用于诊断和监测视网膜病变,因此对人工智能应用非常有价值。本综述旨在确定和比较用于人工智能应用的公开光学相干断层扫描数据库的情况:我们使用 PubMed、Scopus 和 Web of Science 数据库,对可公开访问数据集的光学相干断层扫描和人工智能文章进行了文献综述。综述共检索到 183 篇文章,经过全文分析,共纳入 50 篇文章。从收录的文章中确定了 8 个可公开获取的 OCT 数据集,重点关注患者人口统计学和临床细节,以便进行全面评估和比较:结果:数据集包括从 Spectralis、Cirrus HD、Topcon 3D 和 Bioptigen 设备收集的 154,313 幅图像。这些数据集包括正常检查、老年性黄斑变性和糖尿病性黄斑病变等。在一个数据集中提供了全面的人口统计信息,美国是代表性最强的人群:讨论:目前用于人工智能应用的公开 OCT 数据库具有局限性,原因在于其不具代表性和缺乏全面的人口统计学信息。有限的数据集阻碍了研究和公平的人工智能发展。为了促进眼科人工智能算法的公平发展,有必要创建和传播更具代表性的数据集。
期刊介绍:
Seminars in Ophthalmology offers current, clinically oriented reviews on the diagnosis and treatment of ophthalmic disorders. Each issue focuses on a single topic, with a primary emphasis on appropriate surgical techniques.