Ensemble Machine Learning Approaches for Automated Fungal Keratitis Diagnosis Using In Vivo Confocal Microscopy Images

No Thumbnail Available

Date

2025

Journal Title

Journal ISSN

Volume Title

Publisher

John Wiley and Sons Inc

Abstract

Fungal keratitis (FK) is a severe ocular infection that can lead to significant vision problems or blindness if not diagnosed and treated promptly. Early and accurate detection of FK is essential for effective management. Traditional diagnostic methods are often time-consuming and require specialized laboratory resources. Recently, advances in artificial intelligence and computer vision have enabled automated diagnosis of FK using slit-lamp images. In this article, a comprehensive evaluation of state-of-the-art techniques adopted for classifying FK using in vivo confocal microscopy (IVCM) images is presented. Detailed experiments and performance evaluation of various machine learning models are systematically performed, with a focus on evaluating the effect of diverse techniques for image processing, data augmentation, hyperparameters and model finetuning to assess each model's strengths and limitations. Experiments revealed that applying green channel preprocessing with a 12-feature set achieved 99% accuracy using Random Forest, highlighting its effectiveness in FK detection, while complex techniques like histogram modelling reduced accuracy to 64%. Robust models like AdaBoost and RUSBoost maintained high F1-scores, demonstrating adaptability to imbalanced medical datasets, and to real-world clinical scenarios. © 2025 The Author(s). Healthcare Technology Letters published by John Wiley & Sons Ltd on behalf of The Institution of Engineering and Technology.

Description

Keywords

Computer aided diagnosis, Data handling, Diseases, Learning systems, Machine learning, Automated diagnosis, Biomedical imaging, Diagnostic methods, Effective management, Images processing, In-vivo, Machine learning approaches, Medical images processing, Microscopy images, Vision problems, Medical image processing, adaptive boosting, area under the curve, Article, clinical article, confocal microscopy, data augmentation, diagnostic accuracy, disease classification, feature extraction, Gaussian Naive Bayes, human, image enhancement, image processing, in vivo study, information processing, k nearest neighbor, keratomycosis, logistic regression analysis, machine learning, random forest, random undersampling boosting, receiver operating characteristic, retrospective study, sensitivity and specificity, support vector machine

Citation

Healthcare Technology Letters, 2025, 12, 1, pp. -

Collections

Endorsement

Review

Supplemented By

Referenced By