Detecting Keratoconus From Corneal Imaging Data Using Machine Learning

Keratoconus affects approximately one in 2,000 individuals worldwide. It is typically associated with the decrease in visual acuity. Given its wide prevalence, there is an unmet need for the development of new tools that can diagnose the disease at an early stage in order to prevent disease progress...

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Main Authors: Alexandru Lavric, Valentin Popa, Hidenori Takahashi, Siamak Yousefi
Format: Article
Language:English
Published: IEEE 2020-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9165721/
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spelling doaj-90c550efad1341ceb38f1ab015a2bcd22021-03-30T03:25:21ZengIEEEIEEE Access2169-35362020-01-01814911314912110.1109/ACCESS.2020.30160609165721Detecting Keratoconus From Corneal Imaging Data Using Machine LearningAlexandru Lavric0https://orcid.org/0000-0001-7734-4854Valentin Popa1Hidenori Takahashi2Siamak Yousefi3https://orcid.org/0000-0001-8633-5730Faculty of Electrical Engineering and Computer Science, Stefan cel Mare University, Suceava, RomaniaFaculty of Electrical Engineering and Computer Science, Stefan cel Mare University, Suceava, RomaniaDepartment of Ophthalmology, Jichi Medical University, Tochigi, JapanDepartment of Ophthalmology, University of Tennessee Health Science Center, Memphis, TN, USAKeratoconus affects approximately one in 2,000 individuals worldwide. It is typically associated with the decrease in visual acuity. Given its wide prevalence, there is an unmet need for the development of new tools that can diagnose the disease at an early stage in order to prevent disease progression and vision loss. The aim of this study is to develop and test a machine learning algorithm that can detect keratoconus at early stages. We applied several machine learning algorithms to detect keratoconus and then tested the algorithms using real world medical data, including corneal topography, elevation, and pachymetry parameters collected from OCT-based topography instruments from several corneal clinics in Japan. We implemented 25 different machine learning models in Matlab and achieved a range of 62% to 94.0% accuracy. The highest accuracy level of 94% was obtained by a support vector machine (SVM) algorithm using a subset of eight corneal parameters with the highest discriminating power. The proposed model may aid physicians in assessing corneal status and detecting keratoconus, which is otherwise challenging through subjective evaluations, particularly at the preclinical and early stages of the disease. The algorithm can be integrated into corneal imaging devices or used as a stand-alone-software for cornea assessment and detecting early stage keratoconus.https://ieeexplore.ieee.org/document/9165721/Keratoconusmachine learningcorneal imaging datadata miningsupport vector machine
collection DOAJ
language English
format Article
sources DOAJ
author Alexandru Lavric
Valentin Popa
Hidenori Takahashi
Siamak Yousefi
spellingShingle Alexandru Lavric
Valentin Popa
Hidenori Takahashi
Siamak Yousefi
Detecting Keratoconus From Corneal Imaging Data Using Machine Learning
IEEE Access
Keratoconus
machine learning
corneal imaging data
data mining
support vector machine
author_facet Alexandru Lavric
Valentin Popa
Hidenori Takahashi
Siamak Yousefi
author_sort Alexandru Lavric
title Detecting Keratoconus From Corneal Imaging Data Using Machine Learning
title_short Detecting Keratoconus From Corneal Imaging Data Using Machine Learning
title_full Detecting Keratoconus From Corneal Imaging Data Using Machine Learning
title_fullStr Detecting Keratoconus From Corneal Imaging Data Using Machine Learning
title_full_unstemmed Detecting Keratoconus From Corneal Imaging Data Using Machine Learning
title_sort detecting keratoconus from corneal imaging data using machine learning
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2020-01-01
description Keratoconus affects approximately one in 2,000 individuals worldwide. It is typically associated with the decrease in visual acuity. Given its wide prevalence, there is an unmet need for the development of new tools that can diagnose the disease at an early stage in order to prevent disease progression and vision loss. The aim of this study is to develop and test a machine learning algorithm that can detect keratoconus at early stages. We applied several machine learning algorithms to detect keratoconus and then tested the algorithms using real world medical data, including corneal topography, elevation, and pachymetry parameters collected from OCT-based topography instruments from several corneal clinics in Japan. We implemented 25 different machine learning models in Matlab and achieved a range of 62% to 94.0% accuracy. The highest accuracy level of 94% was obtained by a support vector machine (SVM) algorithm using a subset of eight corneal parameters with the highest discriminating power. The proposed model may aid physicians in assessing corneal status and detecting keratoconus, which is otherwise challenging through subjective evaluations, particularly at the preclinical and early stages of the disease. The algorithm can be integrated into corneal imaging devices or used as a stand-alone-software for cornea assessment and detecting early stage keratoconus.
topic Keratoconus
machine learning
corneal imaging data
data mining
support vector machine
url https://ieeexplore.ieee.org/document/9165721/
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