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Keratoconus severity identification using unsupervised machine learning

We developed an unsupervised machine learning algorithm and applied it to big corneal parameters to identify and monitor keratoconus stages. A big dataset of corneal swept source optical coherence tomography (OCT) images of 12,242 eyes acquired from SS-1000 CASIA OCT Imaging Systems in multiple cent...

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Autores principales: Yousefi, Siamak, Yousefi, Ebrahim, Takahashi, Hidenori, Hayashi, Takahiko, Tampo, Hironobu, Inoda, Satoru, Arai, Yusuke, Asbell, Penny
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6219768/
https://www.ncbi.nlm.nih.gov/pubmed/30399144
http://dx.doi.org/10.1371/journal.pone.0205998
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author Yousefi, Siamak
Yousefi, Ebrahim
Takahashi, Hidenori
Hayashi, Takahiko
Tampo, Hironobu
Inoda, Satoru
Arai, Yusuke
Asbell, Penny
author_facet Yousefi, Siamak
Yousefi, Ebrahim
Takahashi, Hidenori
Hayashi, Takahiko
Tampo, Hironobu
Inoda, Satoru
Arai, Yusuke
Asbell, Penny
author_sort Yousefi, Siamak
collection PubMed
description We developed an unsupervised machine learning algorithm and applied it to big corneal parameters to identify and monitor keratoconus stages. A big dataset of corneal swept source optical coherence tomography (OCT) images of 12,242 eyes acquired from SS-1000 CASIA OCT Imaging Systems in multiple centers across Japan was assembled. A total of 3,156 eyes with valid Ectasia Status Index (ESI) between zero and 100% were selected for the downstream analysis. Four hundred and twenty corneal topography, elevation, and pachymetry parameters (excluding ESI Keratoconus indices) were selected. The algorithm included three major steps. 1) Principal component analysis (PCA) was used to linearly reduce the dimensionality of the input data from 420 to eight significant principal components. 2) Manifold learning was used to further reducing the selected principal components nonlinearly to two eigen-parameters. 3) Finally, a density-based clustering was applied to the eigen-parameters to identify eyes with keratoconus. Visualization of clusters in 2-D space was used to validate the quality of learning subjectively and ESI was used to assess the accuracy of the identified clusters objectively. The proposed method identified four clusters; I: a cluster composed of mostly normal eyes (224 eyes with ESI equal to zero, 23 eyes with ESI between five and 29, and nine eyes with ESI greater than 29), II: a cluster composed of mostly healthy eyes and eyes with forme fruste keratoconus (1772 eyes with ESI equal to zero, 698 eyes with ESI between five and 29, and 117 eyes with ESI greater than 29), III: a cluster composed of mostly eyes with mild keratoconus stage (184 eyes with ESI greater than 29, 74 eyes with ESI between five and 29, and 6 eyes with ESI equal to zero), and IV: a cluster composed of eyes with mostly advanced keratoconus stage (80 eyes had ESI greater than 29 and 1 eye had ESI between five and 29). We found that keratoconus status and severity can be well identified using unsupervised machine learning algorithms along with linear and non-linear corneal data transformation. The proposed method can better identify and visualize the keratoconus stages.
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spelling pubmed-62197682018-11-19 Keratoconus severity identification using unsupervised machine learning Yousefi, Siamak Yousefi, Ebrahim Takahashi, Hidenori Hayashi, Takahiko Tampo, Hironobu Inoda, Satoru Arai, Yusuke Asbell, Penny PLoS One Research Article We developed an unsupervised machine learning algorithm and applied it to big corneal parameters to identify and monitor keratoconus stages. A big dataset of corneal swept source optical coherence tomography (OCT) images of 12,242 eyes acquired from SS-1000 CASIA OCT Imaging Systems in multiple centers across Japan was assembled. A total of 3,156 eyes with valid Ectasia Status Index (ESI) between zero and 100% were selected for the downstream analysis. Four hundred and twenty corneal topography, elevation, and pachymetry parameters (excluding ESI Keratoconus indices) were selected. The algorithm included three major steps. 1) Principal component analysis (PCA) was used to linearly reduce the dimensionality of the input data from 420 to eight significant principal components. 2) Manifold learning was used to further reducing the selected principal components nonlinearly to two eigen-parameters. 3) Finally, a density-based clustering was applied to the eigen-parameters to identify eyes with keratoconus. Visualization of clusters in 2-D space was used to validate the quality of learning subjectively and ESI was used to assess the accuracy of the identified clusters objectively. The proposed method identified four clusters; I: a cluster composed of mostly normal eyes (224 eyes with ESI equal to zero, 23 eyes with ESI between five and 29, and nine eyes with ESI greater than 29), II: a cluster composed of mostly healthy eyes and eyes with forme fruste keratoconus (1772 eyes with ESI equal to zero, 698 eyes with ESI between five and 29, and 117 eyes with ESI greater than 29), III: a cluster composed of mostly eyes with mild keratoconus stage (184 eyes with ESI greater than 29, 74 eyes with ESI between five and 29, and 6 eyes with ESI equal to zero), and IV: a cluster composed of eyes with mostly advanced keratoconus stage (80 eyes had ESI greater than 29 and 1 eye had ESI between five and 29). We found that keratoconus status and severity can be well identified using unsupervised machine learning algorithms along with linear and non-linear corneal data transformation. The proposed method can better identify and visualize the keratoconus stages. Public Library of Science 2018-11-06 /pmc/articles/PMC6219768/ /pubmed/30399144 http://dx.doi.org/10.1371/journal.pone.0205998 Text en © 2018 Yousefi 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
Yousefi, Siamak
Yousefi, Ebrahim
Takahashi, Hidenori
Hayashi, Takahiko
Tampo, Hironobu
Inoda, Satoru
Arai, Yusuke
Asbell, Penny
Keratoconus severity identification using unsupervised machine learning
title Keratoconus severity identification using unsupervised machine learning
title_full Keratoconus severity identification using unsupervised machine learning
title_fullStr Keratoconus severity identification using unsupervised machine learning
title_full_unstemmed Keratoconus severity identification using unsupervised machine learning
title_short Keratoconus severity identification using unsupervised machine learning
title_sort keratoconus severity identification using unsupervised machine learning
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6219768/
https://www.ncbi.nlm.nih.gov/pubmed/30399144
http://dx.doi.org/10.1371/journal.pone.0205998
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