作者
Ming-Chen Lu, Callie Deng, Miles F Greenwald, Sina Farsiu, N Venkatesh Prajna, Nambi Nallasamy, Mercy Pawar, Jenna N Hart, SR Sumithra, Prabhleen Kochar, Suvitha Selvaraj, Harry Levine, Guillermo Amescua, Paula A Sepulveda-Beltran, Leslie M Niziol, Maria A Woodward, AQUA Study Team
发表日期
2024/4/1
期刊
Cornea
卷号
43
期号
4
页码范围
419-424
出版商
LWW
简介
Purpose:
The aim of this study was to facilitate deep learning systems in image annotations for diagnosing keratitis type by developing an automated algorithm to classify slit-lamp photographs (SLPs) based on illumination technique.
Methods:
SLPs were collected from patients with corneal ulcer at Kellogg Eye Center, Bascom Palmer Eye Institute, and Aravind Eye Care Systems. Illumination techniques were slit beam, diffuse white light, diffuse blue light with fluorescein, and sclerotic scatter (ScS). Images were manually labeled for illumination and randomly split into training, validation, and testing data sets (70%: 15%: 15%). Classification algorithms including MobileNetV2, ResNet50, LeNet, AlexNet, multilayer perceptron, and k-nearest neighborhood were trained to distinguish 4 type of illumination techniques. The algorithm performances on the test data set were evaluated with 95% confidence intervals (CIs) for …
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