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Diagnosis of Multiple Sclerosis by Detecting Asymmetry Within the Retina Using a Similarity-Based Neural Network Publisher



Cain Bolton R1 ; Kafieh R2 ; Ashtari F3 ; Atapourabarghouei A1
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Authors Affiliations
  1. 1. Durham University, Department of Computer Science, Durham, DH1 3LE, United Kingdom
  2. 2. Durham University, Department of Engineering, Durham, DH1 3LE, United Kingdom
  3. 3. Isfahan University of Medical Sciences, Isfahan Neurosciences Research Center, Isfahan, 8174673461, Iran

Source: IEEE Access Published:2024


Abstract

Multiple sclerosis (MS) is a chronic neurological disorder that targets the central nervous system, causing demyelination and neural disruption, which can include retinal nerve damage leading to visual disturbances. The purpose of this study is to demonstrate the capability to automatically diagnose MS by detecting asymmetry within the retina, using a similarity-based neural network, trained on optical coherence tomography images. This work aims to investigate the feasibility of a learning-based system accurately detecting the presence of MS, based on information from pairs of left and right retina images. We also justify the effectiveness of a Siamese Neural Network for our task and present its strengths through experimental evaluation of the approach. We train a Siamese neural network to detect MS and assess its performance using a test dataset from the same distribution as well as an out-of-distribution dataset, which simulates an external dataset captured under different environmental conditions. Our experimental results demonstrate that a Siamese neural network can attain accuracy levels of up to 0.932 using both an in-distribution test dataset and a simulated external dataset. Our model can detect MS more accurately than standard neural network architectures, demonstrating its feasibility in medical applications for the early, cost-effective detection of MS. © 2013 IEEE.
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