Automatic detection of pathological myopia using machine learning

Author:

Rauf Namra,Gilani Syed Omer,Waris Asim

Abstract

AbstractPathological 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.

Publisher

Springer Science and Business Media LLC

Subject

Multidisciplinary

Reference16 articles.

1. Sunday, M., & Lauer, A. K. Pathologic myopia (myopic degeneration). American Academy of Ophthalmology, EyeWiki. (2015). https://eyewiki.aao.org/Pathologic_Myopia_(Myopic_Degeneration). Accessed on Oct 2019.

2. Holden, B. A. et al. Global prevalence of myopia and high myopia and temporal trends from 2000 through 2050. Am. Acad. Ophthalmol. 123(5), 1036–1042 (2016).

3. Xu, M., Cheng, J., Wong, K., Wing, D., Cheng, C.-Y., Saw, S.M., & Wong, T.Y. Automated tessellated fundus detection in color fundus images. in Proceedings of the Ophthalmic Medical Image Analysis Third International Workshop, OMIA 2016, Held in Conjunction with MICCAI 2016, Athens, Greece, October 21, 2016 (Eds Chen, X. et al.). 25–32 (2016).

4. Septiarini, A., Harjoko, A., Pulungan, R., & Ekantini, R. Automatic detection of peripapillary atrophy in retinal fundus images using statistical features. in Biomedical Signal Processing and Control, Vol. 45, 151–159 (2018).

5. Zhang, Z., Cheng, J., Liu, J., Sheri, Y. C. M., Kong, C. C. & Mei, S. S. Pathological myopia detection from selective fundus image features. in 7th IEEE Conference on Industrial Electronics and Applications (ICIEA) (2012).

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