Continuous Eye Disease Severity Evaluation System using Siamese Neural Networks

Evaluating the severity of eye diseases using medical images is a very essential and routine task performed in medical diagnosis and treatment. Current grading systems which are largely based on discrete classification are unreliable and do reflect not the entire spectrum of eye disease severity. T...

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Main Authors: Muyideen Abdulraheem, Idowu D. Oladipo, Sunday Adeola Ajagbe, Ghaniyyat B. Balogun, Nissi O. Emma-Adamah
Format: Article
Language:English
Published: ITI Research Group 2023-03-01
Series:ParadigmPlus
Subjects:
Online Access:https://journals.itiud.org/index.php/paradigmplus/article/view/42
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author Muyideen Abdulraheem
Idowu D. Oladipo
Sunday Adeola Ajagbe
Ghaniyyat B. Balogun
Nissi O. Emma-Adamah
author_facet Muyideen Abdulraheem
Idowu D. Oladipo
Sunday Adeola Ajagbe
Ghaniyyat B. Balogun
Nissi O. Emma-Adamah
author_sort Muyideen Abdulraheem
collection DOAJ
description Evaluating the severity of eye diseases using medical images is a very essential and routine task performed in medical diagnosis and treatment. Current grading systems which are largely based on discrete classification are unreliable and do reflect not the entire spectrum of eye disease severity. The unreliability of discrete classification systems for eye diseases is clear, as classification is subjective and done based on the personal opinion of various medical experts, which may vary. In a bid to solve these issues, this study proposes a system for determining the severity of eye diseases on a continuous range using a twin-convoluted neural network approach known as Siamese Neural Networks. This system is demonstrated in the domain of diabetic retinopathy. Samples of retinal fundus images from an eye clinic in India are taken as test cases to evaluate the performance of a Siamese Triplet network which attempts to find the distance between their image embedding. The outputs of the Siamese network when a reference image is juxtaposed with a collection of images with distant severity categories (negative images), as well as when two reference images are compared to each other, are found to have a positive correlation (95\%) with originally assigned severity classes. Hence, these outputs indicate a continuous range of the severity and change in eye diseases.
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spelling doaj.art-b5125b0085f542a9832cca307a5fd1ac2023-03-31T16:18:59ZengITI Research GroupParadigmPlus2711-46272023-03-014110.55969/paradigmplus.v4n1a1Continuous Eye Disease Severity Evaluation System using Siamese Neural NetworksMuyideen Abdulraheem0Idowu D. Oladipo1Sunday Adeola Ajagbe2Ghaniyyat B. Balogun3Nissi O. Emma-Adamah4University of Ilorin, Nigeria. University of Ilorin, Nigeria. First Technical University, Nigeria.University of Ilorin, NigeriaKwara State Polytechnic, Nigeria Evaluating the severity of eye diseases using medical images is a very essential and routine task performed in medical diagnosis and treatment. Current grading systems which are largely based on discrete classification are unreliable and do reflect not the entire spectrum of eye disease severity. The unreliability of discrete classification systems for eye diseases is clear, as classification is subjective and done based on the personal opinion of various medical experts, which may vary. In a bid to solve these issues, this study proposes a system for determining the severity of eye diseases on a continuous range using a twin-convoluted neural network approach known as Siamese Neural Networks. This system is demonstrated in the domain of diabetic retinopathy. Samples of retinal fundus images from an eye clinic in India are taken as test cases to evaluate the performance of a Siamese Triplet network which attempts to find the distance between their image embedding. The outputs of the Siamese network when a reference image is juxtaposed with a collection of images with distant severity categories (negative images), as well as when two reference images are compared to each other, are found to have a positive correlation (95\%) with originally assigned severity classes. Hence, these outputs indicate a continuous range of the severity and change in eye diseases. https://journals.itiud.org/index.php/paradigmplus/article/view/42Eye DiseasesSiameseNeural NetworksConvoluted Neural NetworkClassification
spellingShingle Muyideen Abdulraheem
Idowu D. Oladipo
Sunday Adeola Ajagbe
Ghaniyyat B. Balogun
Nissi O. Emma-Adamah
Continuous Eye Disease Severity Evaluation System using Siamese Neural Networks
ParadigmPlus
Eye Diseases
Siamese
Neural Networks
Convoluted Neural Network
Classification
title Continuous Eye Disease Severity Evaluation System using Siamese Neural Networks
title_full Continuous Eye Disease Severity Evaluation System using Siamese Neural Networks
title_fullStr Continuous Eye Disease Severity Evaluation System using Siamese Neural Networks
title_full_unstemmed Continuous Eye Disease Severity Evaluation System using Siamese Neural Networks
title_short Continuous Eye Disease Severity Evaluation System using Siamese Neural Networks
title_sort continuous eye disease severity evaluation system using siamese neural networks
topic Eye Diseases
Siamese
Neural Networks
Convoluted Neural Network
Classification
url https://journals.itiud.org/index.php/paradigmplus/article/view/42
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AT sundayadeolaajagbe continuouseyediseaseseverityevaluationsystemusingsiameseneuralnetworks
AT ghaniyyatbbalogun continuouseyediseaseseverityevaluationsystemusingsiameseneuralnetworks
AT nissioemmaadamah continuouseyediseaseseverityevaluationsystemusingsiameseneuralnetworks