Hybrid data augmentation strategies for robust deep learning classification of corneal topographic maptopographic map.

Journal: Biomedical physics & engineering express
PMID:

Abstract

Deep learning has emerged as a powerful tool in medical imaging, particularly for corneal topographic map classification. However, the scarcity of labeled data poses a significant challenge to achieving robust performance. This study investigates the impact of various data augmentation strategies on enhancing the performance of a customized convolutional neural network model for corneal topographic map classification. We propose a hybrid data augmentation approach that combines traditional transformations, generative adversarial networks, and specific generative models. Experimental results demonstrate that the hybrid data augmentation method, achieves the highest accuracy of 99.54%, significantly outperforming individual data augmentation techniques. This hybrid approach not only improves model accuracy but also mitigates overfitting issues, making it a promising solution for medical image classification tasks with limited data availability.

Authors

  • Abir Chaari
    ATISP laboratory, ENET'com, University of Sfax, Tunisia.
  • Imen Fourati Kallel
    ESSE laboratory, ENET'com, University of Sfax, Tunisia.
  • Sonda Kammoun
    Department of Ophthalmology, Habib Bourguiba Hospital, University of Sfax, Tunisia.
  • Mondher Frikha
    ENETCOM, Universite de Sfax, Tunisia.