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Swept source optical coherence tomography to early detect multiple sclerosis disease. The use of machine learning techniques

OBJECTIVE: To compare axonal loss in ganglion cells detected with swept-source optical coherence tomography (SS-OCT) in eyes of patients with multiple sclerosis (MS) versus healthy controls using different machine learning techniques. To analyze the capability of machine learning techniques to impro...

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Autores principales: Pérez del Palomar, Amaya, Cegoñino, José, Montolío, Alberto, Orduna, Elvira, Vilades, Elisa, Sebastián, Berta, Pablo, Luis E., Garcia-Martin, Elena
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6502323/
https://www.ncbi.nlm.nih.gov/pubmed/31059539
http://dx.doi.org/10.1371/journal.pone.0216410
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author Pérez del Palomar, Amaya
Cegoñino, José
Montolío, Alberto
Orduna, Elvira
Vilades, Elisa
Sebastián, Berta
Pablo, Luis E.
Garcia-Martin, Elena
author_facet Pérez del Palomar, Amaya
Cegoñino, José
Montolío, Alberto
Orduna, Elvira
Vilades, Elisa
Sebastián, Berta
Pablo, Luis E.
Garcia-Martin, Elena
author_sort Pérez del Palomar, Amaya
collection PubMed
description OBJECTIVE: To compare axonal loss in ganglion cells detected with swept-source optical coherence tomography (SS-OCT) in eyes of patients with multiple sclerosis (MS) versus healthy controls using different machine learning techniques. To analyze the capability of machine learning techniques to improve the detection of retinal nerve fiber layer (RNFL) and the complex Ganglion Cell Layer–Inner plexiform layer (GCL+) damage in patients with multiple sclerosis and to use the SS-OCT as a biomarker to early predict this disease. METHODS: Patients with relapsing-remitting MS (n = 80) and age-matched healthy controls (n = 180) were enrolled. Different protocols from the DRI SS-OCT Triton system were used to obtain the RNFL and GCL+ thicknesses in both eyes. Macular and peripapilar areas were analyzed to detect the zones with higher thickness decrease. The performance of different machine learning techniques (decision trees, multilayer perceptron and support vector machine) for identifying RNFL and GCL+ thickness loss in patients with MS were evaluated. Receiver-operating characteristic (ROC) curves were used to display the ability of the different tests to discriminate between MS and healthy eyes in our population. RESULTS: Machine learning techniques provided an excellent tool to predict MS disease using SS-OCT data. In particular, the decision trees obtained the best prediction (97.24%) using RNFL data in macular area and the area under the ROC curve was 0.995, while the wide protocol which covers an extended area between macula and papilla gave an accuracy of 95.3% with a ROC of 0.998. Moreover, it was obtained that the most significant area of the RNFL to predict MS is the macula just surrounding the fovea. On the other hand, in our study, GCL+ did not contribute to predict MS and the different machine learning techniques performed worse in this layer than in RNFL. CONCLUSIONS: Measurements of RNFL thickness obtained with SS-OCT have an excellent ability to differentiate between healthy controls and patients with MS. Thus, the use of machine learning techniques based on these measures can be a reliable tool to help in MS diagnosis.
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spelling pubmed-65023232019-05-23 Swept source optical coherence tomography to early detect multiple sclerosis disease. The use of machine learning techniques Pérez del Palomar, Amaya Cegoñino, José Montolío, Alberto Orduna, Elvira Vilades, Elisa Sebastián, Berta Pablo, Luis E. Garcia-Martin, Elena PLoS One Research Article OBJECTIVE: To compare axonal loss in ganglion cells detected with swept-source optical coherence tomography (SS-OCT) in eyes of patients with multiple sclerosis (MS) versus healthy controls using different machine learning techniques. To analyze the capability of machine learning techniques to improve the detection of retinal nerve fiber layer (RNFL) and the complex Ganglion Cell Layer–Inner plexiform layer (GCL+) damage in patients with multiple sclerosis and to use the SS-OCT as a biomarker to early predict this disease. METHODS: Patients with relapsing-remitting MS (n = 80) and age-matched healthy controls (n = 180) were enrolled. Different protocols from the DRI SS-OCT Triton system were used to obtain the RNFL and GCL+ thicknesses in both eyes. Macular and peripapilar areas were analyzed to detect the zones with higher thickness decrease. The performance of different machine learning techniques (decision trees, multilayer perceptron and support vector machine) for identifying RNFL and GCL+ thickness loss in patients with MS were evaluated. Receiver-operating characteristic (ROC) curves were used to display the ability of the different tests to discriminate between MS and healthy eyes in our population. RESULTS: Machine learning techniques provided an excellent tool to predict MS disease using SS-OCT data. In particular, the decision trees obtained the best prediction (97.24%) using RNFL data in macular area and the area under the ROC curve was 0.995, while the wide protocol which covers an extended area between macula and papilla gave an accuracy of 95.3% with a ROC of 0.998. Moreover, it was obtained that the most significant area of the RNFL to predict MS is the macula just surrounding the fovea. On the other hand, in our study, GCL+ did not contribute to predict MS and the different machine learning techniques performed worse in this layer than in RNFL. CONCLUSIONS: Measurements of RNFL thickness obtained with SS-OCT have an excellent ability to differentiate between healthy controls and patients with MS. Thus, the use of machine learning techniques based on these measures can be a reliable tool to help in MS diagnosis. Public Library of Science 2019-05-06 /pmc/articles/PMC6502323/ /pubmed/31059539 http://dx.doi.org/10.1371/journal.pone.0216410 Text en © 2019 Pérez del Palomar et al http://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Pérez del Palomar, Amaya
Cegoñino, José
Montolío, Alberto
Orduna, Elvira
Vilades, Elisa
Sebastián, Berta
Pablo, Luis E.
Garcia-Martin, Elena
Swept source optical coherence tomography to early detect multiple sclerosis disease. The use of machine learning techniques
title Swept source optical coherence tomography to early detect multiple sclerosis disease. The use of machine learning techniques
title_full Swept source optical coherence tomography to early detect multiple sclerosis disease. The use of machine learning techniques
title_fullStr Swept source optical coherence tomography to early detect multiple sclerosis disease. The use of machine learning techniques
title_full_unstemmed Swept source optical coherence tomography to early detect multiple sclerosis disease. The use of machine learning techniques
title_short Swept source optical coherence tomography to early detect multiple sclerosis disease. The use of machine learning techniques
title_sort swept source optical coherence tomography to early detect multiple sclerosis disease. the use of machine learning techniques
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6502323/
https://www.ncbi.nlm.nih.gov/pubmed/31059539
http://dx.doi.org/10.1371/journal.pone.0216410
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