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      CorneaNet: fast segmentation of cornea OCT scans of healthy and keratoconic eyes using deep learning

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          Abstract

          <p class="first" id="d3518100e307">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. CorneaNet is more than 50 times faster than our previous algorithm. Our results show that deep learning algorithms can be used for OCT image segmentation and could be applied in various clinical settings. In particular, CorneaNet could be used for early detection of keratoconus and more generally to study other diseases altering corneal morphology. </p>

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                Author and article information

                Contributors
                (View ORCID Profile)
                Journal
                Biomedical Optics Express
                Biomed. Opt. Express
                The Optical Society
                2156-7085
                2156-7085
                2019
                2019
                January 17 2019
                February 01 2019
                : 10
                : 2
                : 622
                Article
                10.1364/BOE.10.000622
                6377876
                30800504
                25a2b250-7fd4-4d6f-b219-54082c71a62d
                © 2019
                History

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