Please use this identifier to cite or link to this item: doi:10.22028/D291-46688
Title: Deep Learning-Based Diagnosis of Corneal Condition by Using Raw Optical Coherence Tomography Data
Author(s): Mirsalehi, Maziar
Schwemm, Michael
Flockerzi, Elias
Szentmáry, Nóra
Abdin, Alaa Din
Seitz, Berthold
Langenbucher, Achim
Language: English
Title: Diagnostics
Volume: 15
Issue: 24
Publisher/Platform: MDPI
Year of Publication: 2025
Free key words: CNN
cornea
deep learning
ectasia
eye
GUI
keratoconus
OCT
raw data
vision
DDC notations: 610 Medicine and health
Publikation type: Journal Article
Abstract: Background/Objectives: Keratoconus (KC) is the most common corneal ectasia. This condition affects quality of vision, especially when it is progressive, and a timely and stage-related treatment is mandatory. Therefore, early diagnosis is crucial to preserve visual acuity. Medical data may be used either in their raw state or in a preprocessed form. Software modifications introduced through updates may potentially affect outcomes. Unlike preprocessed data, raw data preserve their original format across software versions and provide a more consistent basis for clinical analysis. The objec tive of this study was to distinguish between healthy and KC corneas from raw optical coherence tomography data by using a convolutional neural network. Methods: In to tal, 2737 eye examinations acquired with the Casia2 anterior-segment optical coherence tomography (Tomey, Nagoya, Japan) were decided by three experienced ophthalmol ogists to belong to one of three classes: ‘normal’, ‘ectasia’, or ‘other disease’. Each eye examination consisted of sixteen meridional slice images. The dataset included 744 examinations. DenseNet121, EfficientNet-B0, MobileNetV3-Large and ResNet18 were modified for use as convolutional neural networks for prediction. All reported metric values were rounded to four decimal places. Results: The overall accuracy for the modified DenseNet121, modified EfficientNet-B0, modified MobileNetV3-Large and modified ResNet18 is 91.27%, 91.27%, 92.86% and 89.68%, respectively. The macro-averaged sensitivity, macro-averaged specificity, macro-averaged Positive Pre dictive Value and macro-averaged F1 score for the modified DenseNet121, modified EfficientNet-B0, modified MobileNetV3-Large and modified ResNet18 are reported as 91.27%, 91.27%, 92.86% and 89.68%; 95.63%, 95.63%, 96.43% and 94.84%; 91.58% 91.65%, 92.91% and 90.24%; and 91.35%, 91.29%, 92.85% and 89.81%, respectively. Conclusions: The successful use of a convolutional neural network with raw optical coherence tomography data demonstrates the potential of raw data to be used instead of preprocessed data for diagnosing KC in ophthalmology.
DOI of the first publication: 10.3390/diagnostics15243115
URL of the first publication: https://doi.org/10.3390/diagnostics15243115
Link to this record: urn:nbn:de:bsz:291--ds-466882
hdl:20.500.11880/40928
http://dx.doi.org/10.22028/D291-46688
ISSN: 2075-4418
Date of registration: 5-Jan-2026
Faculty: M - Medizinische Fakultät
Department: M - Augenheilkunde
Professorship: M - Univ.-Prof. Dr. Dipl.-Ing. Achim Langenbucher
M - Prof. Dr. Berthold Seitz
M - Prof. Dr. med. Nóra Szentmáry
Collections:SciDok - Der Wissenschaftsserver der Universität des Saarlandes

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