Abstract

Pathological myopia is a severe case of myopia, i.e., nearsightedness. Pathological myopia is also known as degenerative myopia because it ultimately leads to blindness. In pathological myopia, certain myopia-specific pathologies occur at the eye’s posterior i.e., Foster-Fuchs’s spot, Cystoid degeneration, Liquefaction, Macular degeneration, Vitreous opacities, Weiss’s reflex, Posterior staphyloma, etc. This research is aimed at developing a machine learning (ML) approach for the automatic detection of pathological myopia based on fundus images. A deep learning technique of convolutional neural network (CNN) is employed for this purpose. A CNN model is developed in Spyder. The fundus images are first preprocessed. The preprocessed images are then fed to the designed CNN model. The CNN model automatically extracts the features from the input images and classifies the images i.e., normal image or pathological myopia. The best performing CNN model achieved an AUC score of 0.9845. The best validation loss obtained is 0.1457. The results show that the model can be successfully employed to detect pathological myopia from the fundus images.

Highlights

  • Pathological myopia is a severe case of myopia, i.e., nearsightedness

  • Clinical diagnosis of pathological myopia depends upon the examination of the fundus images

  • The convolutional neural network (CNN) algorithm is developed in Spyder and is executed on Intel Core i7 Quad-Core CPU (8 GB RAM) at 2.60 GHz with NVIDIA GPU (4 GB)

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Summary

Introduction

Pathological myopia is a severe case of myopia, i.e., nearsightedness. Pathological myopia is known as degenerative myopia because it leads to blindness. Certain myopia-specific pathologies occur at the eye’s posterior i.e., Foster-Fuchs’s spot, Cystoid degeneration, Liquefaction, Macular degeneration, Vitreous opacities, Weiss’s reflex, Posterior staphyloma, etc. This research is aimed at developing a machine learning (ML) approach for the automatic detection of pathological myopia based on fundus images. The CNN model automatically extracts the features from the input images and classifies the images i.e., normal image or pathological myopia. The results show that the model can be successfully employed to detect pathological myopia from the fundus images. Pathological myopia (PM) is a severe case of myopia or nearsightedness It is called degenerative myopia due to myopia-specific pathology at the posterior, i.e. Foster-Fuchs’s spot, Cystoid degeneration, Liquefaction, Macular degeneration, Vitreous opacities, Weiss’s reflex, Posterior staphyloma, etc. Clinical diagnosis of pathological myopia depends upon the examination of the fundus images. Because the condition will be diagnosed automatically solely based on the fundus images of a patient

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