Rev Bras Oftalmol.2026;85:e0056
Epithelial thickness profiles in normal and keratoconus eyes identified by Artificial Intelligence
DOI: 10.37039/1982.8551.20260056
ABSTRACT
Objective:
To identify corneal epithelial thickness profiles for early keratoconus diagnosis with the aid of Artificial Intelligence.
Methods:
A total of 496 eyes (306 normal and 190 with keratoconus) were analyzed using optical coherence tomography images.
Results:
Epithelial segmentation revealed distinct patterns between groups, highlighting early changes in epithelial thickness in keratoconus eyes. The findings reinforce the potential of artificial intelligence in disease screening, enabling a more precise and objective diagnostic approach.
Conclusion:
Implementing algorithms such as k-means can significantly contribute to the early identification of keratoconus and the optimization of clinical management.

