人工智能时代闭合角疾病的评估:综述。

IF 18.6 1区 医学 Q1 OPHTHALMOLOGY
Zhi Da Soh , Mingrui Tan , Monisha Esther Nongpiur , Benjamin Yixing Xu , David Friedman , Xiulan Zhang , Christopher Leung , Yong Liu , Victor Koh , Tin Aung , Ching-Yu Cheng
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引用次数: 0

摘要

原发性闭角型青光眼是一种视力受损的疾病,在世界范围内检测不足。管理原发性闭合角疾病(PACD)的许多挑战都与缺乏方便和精确的临床疾病评估和监测工具有关。近年来,人工智能辅助检测和评估PACD的工具激增,取得了令人鼓舞的结果。已经开发了利用临床数据的机器学习(ML)算法来根据疾病机制对闭角眼进行分类。利用图像数据的其他ML算法在检测角度闭合方面表现出良好的性能。尽管如此,直接在图像数据上训练的深度学习(DL)算法在检测PACD方面通常优于传统的ML算法,能够准确区分角度状态(开放、狭窄、闭合),并自动测量定量参数。然而,需要做更多的工作来扩展这些人工智能算法的能力,并将其部署到现实世界的实践环境中。这包括需要进行真实世界的评估,建立不同算法的用例,并在考虑其他临床、经济、社会和政策相关因素的同时评估部署的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Assessment of angle closure disease in the age of artificial intelligence: A review

Primary angle closure glaucoma is a visually debilitating disease that is under-detected worldwide. Many of the challenges in managing primary angle closure disease (PACD) are related to the lack of convenient and precise tools for clinic-based disease assessment and monitoring. Artificial intelligence (AI)- assisted tools to detect and assess PACD have proliferated in recent years with encouraging results. Machine learning (ML) algorithms that utilize clinical data have been developed to categorize angle closure eyes by disease mechanism. Other ML algorithms that utilize image data have demonstrated good performance in detecting angle closure. Nonetheless, deep learning (DL) algorithms trained directly on image data generally outperformed traditional ML algorithms in detecting PACD, were able to accurately differentiate between angle status (open, narrow, closed), and automated the measurement of quantitative parameters. However, more work is required to expand the capabilities of these AI algorithms and for deployment into real-world practice settings. This includes the need for real-world evaluation, establishing the use case for different algorithms, and evaluating the feasibility of deployment while considering other clinical, economic, social, and policy-related factors.

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来源期刊
CiteScore
34.10
自引率
5.10%
发文量
78
期刊介绍: Progress in Retinal and Eye Research is a Reviews-only journal. By invitation, leading experts write on basic and clinical aspects of the eye in a style appealing to molecular biologists, neuroscientists and physiologists, as well as to vision researchers and ophthalmologists. The journal covers all aspects of eye research, including topics pertaining to the retina and pigment epithelial layer, cornea, tears, lacrimal glands, aqueous humour, iris, ciliary body, trabeculum, lens, vitreous humour and diseases such as dry-eye, inflammation, keratoconus, corneal dystrophy, glaucoma and cataract.
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