Advances in Corneal Diagnostics Using Machine Learning

This paper provides comprehensive insights into the cornea and its diseases, with a particular focus on keratoconus. This paper explores the cornea?s function in maintaining ocular health, detailing its anatomy, pathological conditions, and the latest developments in diagnostic techniques. Keratocon...

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Main Authors: Al-Sharify N.T., Yussof S., Ghaeb N.H., Al-Sharify Z.T., Naser H.Y., Ahmed S.M., See O.H., Weng L.Y.
Other Authors: 57205364615
Format: Article
Published: Multidisciplinary Digital Publishing Institute (MDPI) 2025
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author Al-Sharify N.T.
Yussof S.
Ghaeb N.H.
Al-Sharify Z.T.
Naser H.Y.
Ahmed S.M.
See O.H.
Weng L.Y.
author2 57205364615
author_facet 57205364615
Al-Sharify N.T.
Yussof S.
Ghaeb N.H.
Al-Sharify Z.T.
Naser H.Y.
Ahmed S.M.
See O.H.
Weng L.Y.
author_sort Al-Sharify N.T.
building UNITEN Library
collection Institutional Repository
content_provider Universiti Tenaga Nasional
content_source UNITEN Institutional Repository
continent Asia
country Malaysia
description This paper provides comprehensive insights into the cornea and its diseases, with a particular focus on keratoconus. This paper explores the cornea?s function in maintaining ocular health, detailing its anatomy, pathological conditions, and the latest developments in diagnostic techniques. Keratoconus is discussed extensively, covering its subtypes, etiology, clinical manifestations, and the application of the Q-value for quantification. Several diagnostic techniques, such as corneal topography, are crucial points of discussion. This paper also examines the use of machine learning models, specifically Decision Tree and Nearest Neighbor Analysis, which enhance the accuracy of diagnosing based on topographical corneal parameters from corneal topography. These models provide valuable insights into disease progression and aid in clinical decision making. Integrating these technologies in medical research opens promising avenues for enhanced disease detection. Our findings demonstrate the effectiveness of Decision Tree and Nearest Neighbor Analysis in classifying and predicting conditions based on corneal parameters. The Decision Tree achieved classification accuracy of 62% for training and 65.7% for testing, while Nearest Neighbor Analysis yielded 65.4% for training and 62.6% for holdout samples. These models offer valuable insights into the progression and severity of keratoconus, aiding clinicians in treatment and management decisions. ? 2024 by the authors.
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institution Universiti Tenaga Nasional
publishDate 2025
publisher Multidisciplinary Digital Publishing Institute (MDPI)
record_format dspace
spelling my.uniten.dspace-360902025-03-03T15:41:22Z Advances in Corneal Diagnostics Using Machine Learning Al-Sharify N.T. Yussof S. Ghaeb N.H. Al-Sharify Z.T. Naser H.Y. Ahmed S.M. See O.H. Weng L.Y. 57205364615 16023225600 26428056100 57204908487 57218554005 57696704100 16023044400 59489098700 This paper provides comprehensive insights into the cornea and its diseases, with a particular focus on keratoconus. This paper explores the cornea?s function in maintaining ocular health, detailing its anatomy, pathological conditions, and the latest developments in diagnostic techniques. Keratoconus is discussed extensively, covering its subtypes, etiology, clinical manifestations, and the application of the Q-value for quantification. Several diagnostic techniques, such as corneal topography, are crucial points of discussion. This paper also examines the use of machine learning models, specifically Decision Tree and Nearest Neighbor Analysis, which enhance the accuracy of diagnosing based on topographical corneal parameters from corneal topography. These models provide valuable insights into disease progression and aid in clinical decision making. Integrating these technologies in medical research opens promising avenues for enhanced disease detection. Our findings demonstrate the effectiveness of Decision Tree and Nearest Neighbor Analysis in classifying and predicting conditions based on corneal parameters. The Decision Tree achieved classification accuracy of 62% for training and 65.7% for testing, while Nearest Neighbor Analysis yielded 65.4% for training and 62.6% for holdout samples. These models offer valuable insights into the progression and severity of keratoconus, aiding clinicians in treatment and management decisions. ? 2024 by the authors. Final 2025-03-03T07:41:22Z 2025-03-03T07:41:22Z 2024 Article 10.3390/bioengineering11121198 2-s2.0-85213222534 https://www.scopus.com/inward/record.uri?eid=2-s2.0-85213222534&doi=10.3390%2fbioengineering11121198&partnerID=40&md5=80f09a909aaeca543c879c43829c61ee https://irepository.uniten.edu.my/handle/123456789/36090 11 12 1198 All Open Access; Gold Open Access Multidisciplinary Digital Publishing Institute (MDPI) Scopus
spellingShingle Al-Sharify N.T.
Yussof S.
Ghaeb N.H.
Al-Sharify Z.T.
Naser H.Y.
Ahmed S.M.
See O.H.
Weng L.Y.
Advances in Corneal Diagnostics Using Machine Learning
title Advances in Corneal Diagnostics Using Machine Learning
title_full Advances in Corneal Diagnostics Using Machine Learning
title_fullStr Advances in Corneal Diagnostics Using Machine Learning
title_full_unstemmed Advances in Corneal Diagnostics Using Machine Learning
title_short Advances in Corneal Diagnostics Using Machine Learning
title_sort advances in corneal diagnostics using machine learning
url_provider http://dspace.uniten.edu.my/