Litcius/Paper detail

Automated cornea diagnosis using deep convolutional neural networks based on cornea topography maps

Benjamin Fassbind, Achim Langenbucher, Andreas P. Streich

2023Scientific Reports15 citationsDOIOpen Access PDF

Abstract

Cornea topography maps allow ophthalmologists to screen and diagnose cornea pathologies. We aim to automatically identify any cornea abnormalities based on such cornea topography maps, with focus on diagnosing keratoconus. To do so, we represent the OCT scans as images and apply Convolutional Neural Networks (CNNs) for the automatic analysis. The model is based on a state-of-the-art ConvNeXt CNN architecture with weights fine-tuned for the given specific application using the cornea scans dataset. A set of 1940 consecutive screening scans from the Saarland University Hospital Clinic for Ophthalmology was annotated and used for model training and validation. All scans were recorded with a CASIA2 anterior segment Optical Coherence Tomography (OCT) scanner. The proposed model achieves a sensitivity of 98.46% and a specificity of 91.96% when distinguishing between healthy and pathological corneas. Our approach enables the screening of cornea pathologies and the classification of common pathologies like keratoconus. Furthermore, the approach is independent of the topography scanner and enables the visualization of those scan regions which drive the model's decisions.

Topics & Concepts

CorneaKeratoconusConvolutional neural networkComputer scienceOptical coherence tomographyArtificial intelligenceScannerCorneal topographyComputer visionMedical imagingPattern recognition (psychology)OphthalmologyMedicineCorneal surgery and disordersGlaucoma and retinal disordersRetinal Imaging and Analysis