白内障
人工智能
光学相干层析成像
分级(工程)
计算机科学
裂隙灯
眼底(子宫)
分级比例尺
医学
前房角
曲线下面积
眼科
青光眼
外科
土木工程
工程类
内科学
药代动力学
作者
Eisuke Shimizu,Makoto Tanji,Shintato Nakayama,Toshiki Ishikawa,Naomichi Agata,Ryota Yokoiwa,Hiroki Nishimura,Rohan Khemlani,Shinri Sato,Akiko Hanyuda,Yasunori Sato
标识
DOI:10.1038/s41598-023-49563-7
摘要
In ophthalmology, the availability of many fundus photographs and optical coherence tomography images has spurred consideration of using artificial intelligence (AI) for diagnosing retinal and optic nerve disorders. However, AI application for diagnosing anterior segment eye conditions remains unfeasible due to limited standardized images and analysis models. We addressed this limitation by augmenting the quantity of standardized optical images using a video-recordable slit-lamp device. We then investigated whether our proposed machine learning (ML) AI algorithm could accurately diagnose cataracts from videos recorded with this device. We collected 206,574 cataract frames from 1812 cataract eye videos. Ophthalmologists graded the nuclear cataracts (NUCs) using the cataract grading scale of the World Health Organization. These gradings were used to train and validate an ML algorithm. A validation dataset was used to compare the NUC diagnosis and grading of AI and ophthalmologists. The results of individual cataract gradings were: NUC 0: area under the curve (AUC) = 0.967; NUC 1: AUC = 0.928; NUC 2: AUC = 0.923; and NUC 3: AUC = 0.949. Our ML-based cataract diagnostic model achieved performance comparable to a conventional device, presenting a promising and accurate auto diagnostic AI tool.
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