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Classification of optic disc shape in glaucoma using machine learning based on quantified ocular parameters

PURPOSE: This study aimed to develop a machine learning-based algorithm for objective classification of the optic disc in patients with open-angle glaucoma (OAG), using quantitative parameters obtained from ophthalmic examination instruments. METHODS: This study enrolled 163 eyes of 105 OAG patients...

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Autores principales: Omodaka, Kazuko, An, Guangzhou, Tsuda, Satoru, Shiga, Yukihiro, Takada, Naoko, Kikawa, Tsutomu, Takahashi, Hidetoshi, Yokota, Hideo, Akiba, Masahiro, Nakazawa, Toru
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2017
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5736185/
https://www.ncbi.nlm.nih.gov/pubmed/29261773
http://dx.doi.org/10.1371/journal.pone.0190012
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author Omodaka, Kazuko
An, Guangzhou
Tsuda, Satoru
Shiga, Yukihiro
Takada, Naoko
Kikawa, Tsutomu
Takahashi, Hidetoshi
Yokota, Hideo
Akiba, Masahiro
Nakazawa, Toru
author_facet Omodaka, Kazuko
An, Guangzhou
Tsuda, Satoru
Shiga, Yukihiro
Takada, Naoko
Kikawa, Tsutomu
Takahashi, Hidetoshi
Yokota, Hideo
Akiba, Masahiro
Nakazawa, Toru
author_sort Omodaka, Kazuko
collection PubMed
description PURPOSE: This study aimed to develop a machine learning-based algorithm for objective classification of the optic disc in patients with open-angle glaucoma (OAG), using quantitative parameters obtained from ophthalmic examination instruments. METHODS: This study enrolled 163 eyes of 105 OAG patients (age: 62.3 ± 12.6, mean deviation of Humphrey field analyzer: -8.9 ± 7.5 dB). The eyes were classified into Nicolela’s 4 optic disc types by 3 glaucoma specialists. Randomly, 114 eyes were selected for training data and 49 for test data. A neural network (NN) was trained with the training data and evaluated with the test data. We used 91 types of quantitative data, including 7 patient background characteristics, 48 quantified OCT (swept-source OCT; DRI OCT Atlantis, Topcon) values, including optic disc topography and circumpapillary retinal nerve fiber layer thickness (cpRNFLT), and 36 blood flow parameters from laser speckle flowgraphy, to build the machine learning classification model. To extract the important features among 91 parameters, minimum redundancy maximum relevance and a genetic feature selection were used. RESULTS: The validated accuracy against test data for the NN was 87.8% (Cohen’s Kappa = 0.83). The important features in the NN were horizontal disc angle, spherical equivalent, cup area, age, 6-sector superotemporal cpRNFLT, average cup depth, average nasal rim disc ratio, maximum cup depth, and superior-quadrant cpRNFLT. CONCLUSION: The proposed machine learning system has proved to be good identifiers for different disc types with high accuracy. Additionally, the calculated confidence levels reported here should be very helpful for OAG care.
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spelling pubmed-57361852017-12-22 Classification of optic disc shape in glaucoma using machine learning based on quantified ocular parameters Omodaka, Kazuko An, Guangzhou Tsuda, Satoru Shiga, Yukihiro Takada, Naoko Kikawa, Tsutomu Takahashi, Hidetoshi Yokota, Hideo Akiba, Masahiro Nakazawa, Toru PLoS One Research Article PURPOSE: This study aimed to develop a machine learning-based algorithm for objective classification of the optic disc in patients with open-angle glaucoma (OAG), using quantitative parameters obtained from ophthalmic examination instruments. METHODS: This study enrolled 163 eyes of 105 OAG patients (age: 62.3 ± 12.6, mean deviation of Humphrey field analyzer: -8.9 ± 7.5 dB). The eyes were classified into Nicolela’s 4 optic disc types by 3 glaucoma specialists. Randomly, 114 eyes were selected for training data and 49 for test data. A neural network (NN) was trained with the training data and evaluated with the test data. We used 91 types of quantitative data, including 7 patient background characteristics, 48 quantified OCT (swept-source OCT; DRI OCT Atlantis, Topcon) values, including optic disc topography and circumpapillary retinal nerve fiber layer thickness (cpRNFLT), and 36 blood flow parameters from laser speckle flowgraphy, to build the machine learning classification model. To extract the important features among 91 parameters, minimum redundancy maximum relevance and a genetic feature selection were used. RESULTS: The validated accuracy against test data for the NN was 87.8% (Cohen’s Kappa = 0.83). The important features in the NN were horizontal disc angle, spherical equivalent, cup area, age, 6-sector superotemporal cpRNFLT, average cup depth, average nasal rim disc ratio, maximum cup depth, and superior-quadrant cpRNFLT. CONCLUSION: The proposed machine learning system has proved to be good identifiers for different disc types with high accuracy. Additionally, the calculated confidence levels reported here should be very helpful for OAG care. Public Library of Science 2017-12-19 /pmc/articles/PMC5736185/ /pubmed/29261773 http://dx.doi.org/10.1371/journal.pone.0190012 Text en © 2017 Omodaka 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
Omodaka, Kazuko
An, Guangzhou
Tsuda, Satoru
Shiga, Yukihiro
Takada, Naoko
Kikawa, Tsutomu
Takahashi, Hidetoshi
Yokota, Hideo
Akiba, Masahiro
Nakazawa, Toru
Classification of optic disc shape in glaucoma using machine learning based on quantified ocular parameters
title Classification of optic disc shape in glaucoma using machine learning based on quantified ocular parameters
title_full Classification of optic disc shape in glaucoma using machine learning based on quantified ocular parameters
title_fullStr Classification of optic disc shape in glaucoma using machine learning based on quantified ocular parameters
title_full_unstemmed Classification of optic disc shape in glaucoma using machine learning based on quantified ocular parameters
title_short Classification of optic disc shape in glaucoma using machine learning based on quantified ocular parameters
title_sort classification of optic disc shape in glaucoma using machine learning based on quantified ocular parameters
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5736185/
https://www.ncbi.nlm.nih.gov/pubmed/29261773
http://dx.doi.org/10.1371/journal.pone.0190012
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