Inserm, UMR 1101, Brest, France.
Inserm, UMR 1227, Brest, France.
Clin Exp Ophthalmol. 2022 Aug;50(6):653-666. doi: 10.1111/ceo.14119. Epub 2022 Jun 27.
Dry eye disease (DED) is a common eye condition worldwide and a primary reason for visits to the ophthalmologist. DED diagnosis is performed through a combination of tests, some of which are unfortunately invasive, non-reproducible and lack accuracy. The following review describes methods that diagnose and measure the extent of eye dryness, enabling clinicians to quantify its severity. Our aim with this paper is to review classical methods as well as those that incorporate automation. For only four ways of quantifying DED, we take a deeper look into what main elements can benefit from automation and the different ways studies have incorporated it. Like numerous medical fields, Artificial Intelligence (AI) appears to be the path towards quality DED diagnosis. This review categorises diagnostic methods into the following: classical, semi-automated and promising AI-based automated methods.
干眼症(DED)是一种常见的眼病,也是眼科医生就诊的主要原因之一。DED 的诊断是通过一系列检查来进行的,其中一些检查不幸的是具有侵入性、不可重复性并且准确性不足。以下综述描述了诊断和测量眼睛干燥程度的方法,使临床医生能够量化其严重程度。我们撰写本文的目的是回顾经典方法以及那些融入自动化的方法。对于仅有的四种量化 DED 的方法,我们深入探讨了哪些主要元素可以受益于自动化以及研究采用自动化的不同方式。像许多医学领域一样,人工智能(AI)似乎是实现高质量 DED 诊断的途径。本综述将诊断方法分为以下几类:经典方法、半自动方法和有前途的基于 AI 的自动化方法。