角膜炎
医学
棘阿米巴
失明
棘阿米巴角膜炎
人工智能
病毒学
计算机科学
验光服务
皮肤病科
微生物学
生物
作者
Zhongwen Li,He Xie,Zhouqian Wang,D J Li,Kuan Chen,Xihang Zong,Qiang Wei,Feng Wen,Zhi‐Hong Deng,Li Min Chen,Huiping Li,He Dong,Pengcheng Wu,Tong Sun,Yan Cheng,Yanning Yang,Jinsong Xue,Qiu-Ying Zheng,Jiewei Jiang,Wei Chen
标识
DOI:10.1038/s41746-024-01174-w
摘要
Abstract The main cause of corneal blindness worldwide is keratitis, especially the infectious form caused by bacteria, fungi, viruses, and Acanthamoeba. The key to effective management of infectious keratitis hinges on prompt and precise diagnosis. Nevertheless, the current gold standard, such as cultures of corneal scrapings, remains time-consuming and frequently yields false-negative results. Here, using 23,055 slit-lamp images collected from 12 clinical centers nationwide, this study constructed a clinically feasible deep learning system, DeepIK, that could emulate the diagnostic process of a human expert to identify and differentiate bacterial, fungal, viral, amebic, and noninfectious keratitis. DeepIK exhibited remarkable performance in internal, external, and prospective datasets (all areas under the receiver operating characteristic curves > 0.96) and outperformed three other state-of-the-art algorithms (DenseNet121, InceptionResNetV2, and Swin-Transformer). Our study indicates that DeepIK possesses the capability to assist ophthalmologists in accurately and swiftly identifying various infectious keratitis types from slit-lamp images, thereby facilitating timely and targeted treatment.
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