Open Access Open Access  Restricted Access Subscription or Fee Access

Machine Learning Classification of Normal Versus Age-Related Macular Degeneration OCT Images

R. Loganathan, S. Latha

Abstract


The macula is a small area of the retina which is especially very important for good eyesight. The age related macular degeneration (AMD) is a type of visual impairment that can cause central vision blur or even loss of visionblindness or even loss of eyesight. AMD was a dangerous and progressing chronic disease which affects people over the age of 60. One of the most common symptoms of this condition is the appearance of a type of extracellular material called the drusen. Detecting this condition using an imaging technique known as Optical Coherence Tomography (OCT) can help to prevent further damage to the eyes. The motivation behind this work is to test Machine Learning (ML) with OCT images for identification of retinal disease. OCT retinal images consist of normal retina and AMD. Machine learning algorithms were used to classify 261 OCT images to determine if the person was normal or macular. The proposed method for diagnosing between diseased and healthy conditions has a classification accuracy that considerably exceeds beyond the current state of the art.


Full Text:

PDF

References


Department of Economic and Social Affairs, World Population Prospects The 2019 Revision Key Findings and Advance Tables, United Nations, New York, 2019.

National Eye Institute, Facts about age-related macular degeneration, 2021(Online). Available: https://nei.nih.gov/health/maculardegen/armd_facts. (Accessed 21 April 2022).

W.L. Wong, X. Su, X. Li, C.M.G. Cheung, R. Klein, C.-Y. Cheng, T.Y. Wong, Global prevalence of age-related macular degeneration and disease burden projection for 2020 and 2040: a systematic review and meta-analysis, The Lancet Global Health 2 (2) (2014) e106–e116.

Koh JEW, Acharya UR, Hagiwara Y, Raghavendra U, Tan JH, Sree SV, et al. Diagnosis of retinal health in digital fundus images using continuous wavelet transform (CWT) and entropies. Comput Biol Med 2017; 84:89– 97.

Wang Y, Zhang Y, Yao Z, Zhao R, Zhou F. Machine learning based detection of age-related macular degeneration (AMD) and diabetic macular edema (DME) from optical coherence tomography (OCT) images. Biomed Opt Express. 2016;7(12):4928-4940.

García-Floriano, A., Ferreira-Santiago, Á., Camacho-Nieto, O., & Yáñez-Márquez, C. (2019). A machine learning approach to medical image classification: Detecting age-related macular degeneration in fundus images. Computers and Electrical Engineering, 75, 218--229.

Latha, S., Samiappan, D., & Kumar, R. (2020). Carotid artery ultrasound image analysis: A review of the literature. Proceedings of the Institution of Mechanical Engineers, Part H: Journal of Engineering in Medicine, 234(5), 417-443. doi:10.1177/0954411919900720

Kuresan, H., Samiappan, D., & Masunda, S. (2019). Fusion of wpt and mfcc feature extraction in parkinsons disease diagnosis. Technology and Health Care, 27(4), 363-372. doi:10.3233/THC-181306

Monika, R., Dhanalakshmi, S. & Sreejith, S. (2016) Coefficient Random Permutation Based Compressed Sensing for Medical Image Compression. Lecture Notes in Electrical Engineering Advances in Electronics, Communication and Computing, pp.529–536. doi: 10.1007/978-981-10-4765-7_56

Samiappan, D., Chakrapani, V. “Classification of ultrasound carotid artery images using texture features”, (2013) International Review on Computers and Software, 8 (4), pp. 933-940. http://www.praiseworthyprize.it/public/SUBSCRIBERS/IRECOS.html

Rajinikanth, V., Sivakumar, R., Hemanth, D.J. et al. Automated classification of retinal images into AMD/non-AMD Class—a study using multi-threshold and Gassian-filter enhanced images. Evol. Intel. 14, 1163–1171 (2021).

Peyman Gholami, Priyanka Roy, Mohana Kuppuswamy Parthasarathy, Vasudevan Lakshminarayanan, OCTID: Optical coherence tomography image database, Computers & Electrical Engineering, Volume 81, 2020.


Refbacks

  • There are currently no refbacks.


Copyright (c) 2023 Journal of Control & Instrumentation



eISSN: 2229-6972