Detecting Keratoconus by Using SVM and Decision Tree Classifiers with the Aid of Image Processing

 Researchers used different methods such as image processing and machine learning techniques in addition to medical instruments such as Placido disc, Keratoscopy, Pentacam;to help diagnosing variety of diseases that affect the eye. Our paper aims to detect one of these diseases that affect the corn...

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Main Author: Mosa et al.
Format: Article
Language:Arabic
Published: College of Science for Women, University of Baghdad 2019-12-01
Series:Baghdad Science Journal
Subjects:
Online Access:http://bsj.uobaghdad.edu.iq/index.php/BSJ/article/view/4602
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spelling doaj-9cf7dc7b26674bd0a8c1ede70ede753d2020-11-25T02:14:02ZaraCollege of Science for Women, University of BaghdadBaghdad Science Journal2078-86652411-79862019-12-01164(Suppl.)10.21123/bsj.2019.16.4(Suppl.).1022Detecting Keratoconus by Using SVM and Decision Tree Classifiers with the Aid of Image ProcessingMosa et al.  Researchers used different methods such as image processing and machine learning techniques in addition to medical instruments such as Placido disc, Keratoscopy, Pentacam;to help diagnosing variety of diseases that affect the eye. Our paper aims to detect one of these diseases that affect the cornea, which is Keratoconus. This is done by using image processing techniques and pattern classification methods. Pentacam is the device that is used to detect the cornea’s health; it provides four maps that can distinguish the changes on the surface of the cornea which can be used for Keratoconus detection. In this study, sixteen features were extracted from the four refractive maps along with five readings from the Pentacam software. The classifiers utilized in our study are Support Vector Machine (SVM) and Decision Trees classification accuracy was achieved 90% and 87.5%, respectively of detecting Keratoconus corneas. The features were extracted by using the Matlab (R2011 and R 2017) and Orange canvas (Pythonw).        http://bsj.uobaghdad.edu.iq/index.php/BSJ/article/view/4602Decision Tree,Image processing, Keratoconus (KCN), Pentacam, SVM, Topographic Maps
collection DOAJ
language Arabic
format Article
sources DOAJ
author Mosa et al.
spellingShingle Mosa et al.
Detecting Keratoconus by Using SVM and Decision Tree Classifiers with the Aid of Image Processing
Baghdad Science Journal
Decision Tree,Image processing, Keratoconus (KCN), Pentacam, SVM, Topographic Maps
author_facet Mosa et al.
author_sort Mosa et al.
title Detecting Keratoconus by Using SVM and Decision Tree Classifiers with the Aid of Image Processing
title_short Detecting Keratoconus by Using SVM and Decision Tree Classifiers with the Aid of Image Processing
title_full Detecting Keratoconus by Using SVM and Decision Tree Classifiers with the Aid of Image Processing
title_fullStr Detecting Keratoconus by Using SVM and Decision Tree Classifiers with the Aid of Image Processing
title_full_unstemmed Detecting Keratoconus by Using SVM and Decision Tree Classifiers with the Aid of Image Processing
title_sort detecting keratoconus by using svm and decision tree classifiers with the aid of image processing
publisher College of Science for Women, University of Baghdad
series Baghdad Science Journal
issn 2078-8665
2411-7986
publishDate 2019-12-01
description  Researchers used different methods such as image processing and machine learning techniques in addition to medical instruments such as Placido disc, Keratoscopy, Pentacam;to help diagnosing variety of diseases that affect the eye. Our paper aims to detect one of these diseases that affect the cornea, which is Keratoconus. This is done by using image processing techniques and pattern classification methods. Pentacam is the device that is used to detect the cornea’s health; it provides four maps that can distinguish the changes on the surface of the cornea which can be used for Keratoconus detection. In this study, sixteen features were extracted from the four refractive maps along with five readings from the Pentacam software. The classifiers utilized in our study are Support Vector Machine (SVM) and Decision Trees classification accuracy was achieved 90% and 87.5%, respectively of detecting Keratoconus corneas. The features were extracted by using the Matlab (R2011 and R 2017) and Orange canvas (Pythonw).       
topic Decision Tree,Image processing, Keratoconus (KCN), Pentacam, SVM, Topographic Maps
url http://bsj.uobaghdad.edu.iq/index.php/BSJ/article/view/4602
work_keys_str_mv AT mosaetal detectingkeratoconusbyusingsvmanddecisiontreeclassifierswiththeaidofimageprocessing
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