Cargando…

Diagnosis of Subclinical Keratoconus Based on Machine Learning Techniques

(1) Background: Keratoconus is a non-inflammatory corneal disease characterized by gradual thinning of the stroma, resulting in irreversible visual quality and quantity decline. Early detection of keratoconus and subsequent prevention of possible risks are crucial factors in its progression. Random...

Descripción completa

Detalles Bibliográficos
Autores principales: Castro-Luna, Gracia, Jiménez-Rodríguez, Diana, Castaño-Fernández, Ana Belén, Pérez-Rueda, Antonio
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8468312/
https://www.ncbi.nlm.nih.gov/pubmed/34575391
http://dx.doi.org/10.3390/jcm10184281
_version_ 1784573634709291008
author Castro-Luna, Gracia
Jiménez-Rodríguez, Diana
Castaño-Fernández, Ana Belén
Pérez-Rueda, Antonio
author_facet Castro-Luna, Gracia
Jiménez-Rodríguez, Diana
Castaño-Fernández, Ana Belén
Pérez-Rueda, Antonio
author_sort Castro-Luna, Gracia
collection PubMed
description (1) Background: Keratoconus is a non-inflammatory corneal disease characterized by gradual thinning of the stroma, resulting in irreversible visual quality and quantity decline. Early detection of keratoconus and subsequent prevention of possible risks are crucial factors in its progression. Random forest is a machine learning technique for classification based on the construction of thousands of decision trees. The aim of this study was to use the random forest technique in the classification and prediction of subclinical keratoconus, considering the metrics proposed by Pentacam and Corvis. (2) Methods: The design was a retrospective cross-sectional study. A total of 81 eyes of 81 patients were enrolled: sixty-one eyes with healthy corneas and twenty patients with subclinical keratoconus (SCKC): This initial stage includes patients with the following conditions: (1) minor topographic signs of keratoconus and suspicious topographic findings (mild asymmetric bow tie, with or without deviation; (2) average K (mean corneal curvature) < 46, 5 D; (3) minimum corneal thickness (ECM) > 490 μm; (4) no slit lamp found; and (5) contralateral clinical keratoconus of the eye. Pentacam topographic and Corvis biomechanical variables were collected. Decision tree and random forest were used as machine learning techniques for classifications. Random forest performed a ranking of the most critical variables in classification. (3) Results: The essential variable was SP A1 (stiffness parameter A1), followed by A2 time, posterior coma 0°, A2 velocity and peak distance. The model efficiently predicted all patients with subclinical keratoconus (Sp = 93%) and was also a good model for classifying healthy cases (Sen = 86%). The overall accuracy rate of the model was 89%. (4) Conclusions: The random forest model was a good model for classifying subclinical keratoconus. The SP A1 variable was the most critical determinant in classifying and identifying subclinical keratoconus, followed by A2 time.
format Online
Article
Text
id pubmed-8468312
institution National Center for Biotechnology Information
language English
publishDate 2021
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-84683122021-09-27 Diagnosis of Subclinical Keratoconus Based on Machine Learning Techniques Castro-Luna, Gracia Jiménez-Rodríguez, Diana Castaño-Fernández, Ana Belén Pérez-Rueda, Antonio J Clin Med Article (1) Background: Keratoconus is a non-inflammatory corneal disease characterized by gradual thinning of the stroma, resulting in irreversible visual quality and quantity decline. Early detection of keratoconus and subsequent prevention of possible risks are crucial factors in its progression. Random forest is a machine learning technique for classification based on the construction of thousands of decision trees. The aim of this study was to use the random forest technique in the classification and prediction of subclinical keratoconus, considering the metrics proposed by Pentacam and Corvis. (2) Methods: The design was a retrospective cross-sectional study. A total of 81 eyes of 81 patients were enrolled: sixty-one eyes with healthy corneas and twenty patients with subclinical keratoconus (SCKC): This initial stage includes patients with the following conditions: (1) minor topographic signs of keratoconus and suspicious topographic findings (mild asymmetric bow tie, with or without deviation; (2) average K (mean corneal curvature) < 46, 5 D; (3) minimum corneal thickness (ECM) > 490 μm; (4) no slit lamp found; and (5) contralateral clinical keratoconus of the eye. Pentacam topographic and Corvis biomechanical variables were collected. Decision tree and random forest were used as machine learning techniques for classifications. Random forest performed a ranking of the most critical variables in classification. (3) Results: The essential variable was SP A1 (stiffness parameter A1), followed by A2 time, posterior coma 0°, A2 velocity and peak distance. The model efficiently predicted all patients with subclinical keratoconus (Sp = 93%) and was also a good model for classifying healthy cases (Sen = 86%). The overall accuracy rate of the model was 89%. (4) Conclusions: The random forest model was a good model for classifying subclinical keratoconus. The SP A1 variable was the most critical determinant in classifying and identifying subclinical keratoconus, followed by A2 time. MDPI 2021-09-21 /pmc/articles/PMC8468312/ /pubmed/34575391 http://dx.doi.org/10.3390/jcm10184281 Text en © 2021 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Castro-Luna, Gracia
Jiménez-Rodríguez, Diana
Castaño-Fernández, Ana Belén
Pérez-Rueda, Antonio
Diagnosis of Subclinical Keratoconus Based on Machine Learning Techniques
title Diagnosis of Subclinical Keratoconus Based on Machine Learning Techniques
title_full Diagnosis of Subclinical Keratoconus Based on Machine Learning Techniques
title_fullStr Diagnosis of Subclinical Keratoconus Based on Machine Learning Techniques
title_full_unstemmed Diagnosis of Subclinical Keratoconus Based on Machine Learning Techniques
title_short Diagnosis of Subclinical Keratoconus Based on Machine Learning Techniques
title_sort diagnosis of subclinical keratoconus based on machine learning techniques
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8468312/
https://www.ncbi.nlm.nih.gov/pubmed/34575391
http://dx.doi.org/10.3390/jcm10184281
work_keys_str_mv AT castrolunagracia diagnosisofsubclinicalkeratoconusbasedonmachinelearningtechniques
AT jimenezrodriguezdiana diagnosisofsubclinicalkeratoconusbasedonmachinelearningtechniques
AT castanofernandezanabelen diagnosisofsubclinicalkeratoconusbasedonmachinelearningtechniques
AT perezruedaantonio diagnosisofsubclinicalkeratoconusbasedonmachinelearningtechniques