DIAGNOSIS OF GALUCOMA BASED ON MEASUREMENTS ON RETINAL FUNDUS IMAGES

Glaucoma is an eye disease caused by increased intraocular pressure that causes damage to the optic nerve resulting in decreased vision in the eye or even blindness. In Indonesia, 51.4% of glaucoma cases are only examined in advanced conditions where there has been significant damage to the eye....

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Main Author: Gebriani, Fara
Format: Final Project
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/80967
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:80967
spelling id-itb.:809672024-03-16T12:17:47ZDIAGNOSIS OF GALUCOMA BASED ON MEASUREMENTS ON RETINAL FUNDUS IMAGES Gebriani, Fara Indonesia Final Project Glaucoma, optic disc, optic cup, classification. INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/80967 Glaucoma is an eye disease caused by increased intraocular pressure that causes damage to the optic nerve resulting in decreased vision in the eye or even blindness. In Indonesia, 51.4% of glaucoma cases are only examined in advanced conditions where there has been significant damage to the eye. Therefore, glaucoma should be detected as early as possible so that patients can receive early treatment. Computer-assisted detection will greatly assist the glaucoma detection process. Currently, there are many developments in automatic glaucoma detection methods, one of which is the approach of quantifying Optic Cup (OC) and Optic Disc (OD) characteristics such as Cup-to-Disc Ratio (CDR), Rim-to-Disc Ratio (RDR) and measurement of neuroretinal rim thickness in the inferior, superior, nasal and temporal quadrants (ISNT Quadrant) on retinal fundus images. In a previous study, Suwandoko (2022) developed a glaucoma detection method based on the quantification of OC and OD characteristics. However, the previous research only quantified the characteristics of CDR and RDR and the method used to classify glaucoma was logistic regression. In this study, the previously developed method will be optimized by adding new features by measuring the ISNT Quadrant and using decision tree as a glaucoma classification method. The optimization of this method resulted in classification performance with accuracy, specificity, sensitivity and f1-score of 0.900, 0.722, 1.000 and 0.928 for the Drishti-GS dataset and 0.958, 0.996, 0.600 and 0.728 for the entire REFUGE dataset. text
institution Institut Teknologi Bandung
building Institut Teknologi Bandung Library
continent Asia
country Indonesia
Indonesia
content_provider Institut Teknologi Bandung
collection Digital ITB
language Indonesia
description Glaucoma is an eye disease caused by increased intraocular pressure that causes damage to the optic nerve resulting in decreased vision in the eye or even blindness. In Indonesia, 51.4% of glaucoma cases are only examined in advanced conditions where there has been significant damage to the eye. Therefore, glaucoma should be detected as early as possible so that patients can receive early treatment. Computer-assisted detection will greatly assist the glaucoma detection process. Currently, there are many developments in automatic glaucoma detection methods, one of which is the approach of quantifying Optic Cup (OC) and Optic Disc (OD) characteristics such as Cup-to-Disc Ratio (CDR), Rim-to-Disc Ratio (RDR) and measurement of neuroretinal rim thickness in the inferior, superior, nasal and temporal quadrants (ISNT Quadrant) on retinal fundus images. In a previous study, Suwandoko (2022) developed a glaucoma detection method based on the quantification of OC and OD characteristics. However, the previous research only quantified the characteristics of CDR and RDR and the method used to classify glaucoma was logistic regression. In this study, the previously developed method will be optimized by adding new features by measuring the ISNT Quadrant and using decision tree as a glaucoma classification method. The optimization of this method resulted in classification performance with accuracy, specificity, sensitivity and f1-score of 0.900, 0.722, 1.000 and 0.928 for the Drishti-GS dataset and 0.958, 0.996, 0.600 and 0.728 for the entire REFUGE dataset.
format Final Project
author Gebriani, Fara
spellingShingle Gebriani, Fara
DIAGNOSIS OF GALUCOMA BASED ON MEASUREMENTS ON RETINAL FUNDUS IMAGES
author_facet Gebriani, Fara
author_sort Gebriani, Fara
title DIAGNOSIS OF GALUCOMA BASED ON MEASUREMENTS ON RETINAL FUNDUS IMAGES
title_short DIAGNOSIS OF GALUCOMA BASED ON MEASUREMENTS ON RETINAL FUNDUS IMAGES
title_full DIAGNOSIS OF GALUCOMA BASED ON MEASUREMENTS ON RETINAL FUNDUS IMAGES
title_fullStr DIAGNOSIS OF GALUCOMA BASED ON MEASUREMENTS ON RETINAL FUNDUS IMAGES
title_full_unstemmed DIAGNOSIS OF GALUCOMA BASED ON MEASUREMENTS ON RETINAL FUNDUS IMAGES
title_sort diagnosis of galucoma based on measurements on retinal fundus images
url https://digilib.itb.ac.id/gdl/view/80967
_version_ 1822997060974018560