作者
Valentin Aranha Dos Santos, Leopold Schmetterer, Hannes Stegmann, Martin Pfister, Alina Messner, Gerald Schmidinger, Gerhard Garhofer, René M Werkmeister
发表日期
2019/2/1
期刊
Biomedical optics express
卷号
10
期号
2
页码范围
622-641
出版商
Optica Publishing Group
简介
Deep learning has dramatically improved object recognition, speech recognition, medical image analysis and many other fields. Optical coherence tomography (OCT) has become a standard of care imaging modality for ophthalmology. We asked whether deep learning could be used to segment cornea OCT images. Using a custom-built ultrahigh-resolution OCT system, we scanned 72 healthy eyes and 70 keratoconic eyes. In total, 20,160 images were labeled and used for the training in a supervised learning approach. A custom neural network architecture called CorneaNet was designed and trained. Our results show that CorneaNet is able to segment both healthy and keratoconus images with high accuracy (validation accuracy: 99.56%). Thickness maps of the three main corneal layers (epithelium, Bowman’s layer and stroma) were generated both in healthy subjects and subjects suffering from keratoconus …
引用总数
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