Using soft computing techniques to diagnose Glaucoma disease

J Infect Public Health. 2021 Jan;14(1):109-116. doi: 10.1016/j.jiph.2019.09.005. Epub 2019 Oct 24.

Abstract

Glaucoma is a major cause of blindness. Most patients start to observe that late after the disease causes a high level of damage in the optic nerve head and the high percentage of vision loss. Early diagnosis and treatment are essential and must be taken. Image processing mass-screening and machine learning classification can support early and automatic diagnosis of Glaucoma symptoms so as to take protective measures and to extend symptom-free life of patients. This paper proposes improved techniques to extract disease-related and image-based features. Support Vector Machines and Genetically-Optimized Artificial Neural Networks, pronounced machine learning algorithms, are fine-tuned to combine the two set of features in one automated image classification system. The proposed methodology was applied to a dataset of 106 retina images obtained from three hospitals. The proposed system automatically detected Glaucoma using Support Vector Machines technique with 100% specificity and 87% accuracy. Artificial Neural Network classified the images with 98% accuracy.

Keywords: Artificial Neural Networks; Diagnosis; Genetic Algorithms; Glaucoma; Support Vector Machines.

MeSH terms

  • Algorithms
  • Glaucoma* / diagnosis
  • Humans
  • Machine Learning
  • Neural Networks, Computer
  • Optic Disk*