Cargando…

Energetic Glaucoma Segmentation and Classification Strategies Using Depth Optimized Machine Learning Strategies

Glaucoma is a major threatening cause, in which it affects the optical nerve to lead to a permanent blindness to individuals. The major causes of Glaucoma are high pressure to eyes, family history, irregular sleeping habits, and so on. These kinds of causes lead to Glaucoma easily, and the effect of...

Descripción completa

Detalles Bibliográficos
Autores principales: Elizabeth Jesi, V., Mohamed Aslam, Shabnam, Ramkumar, G., Sabarivani, A., Gnanasekar, A. K., Thomas, Prince
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Hindawi 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8639261/
https://www.ncbi.nlm.nih.gov/pubmed/34908911
http://dx.doi.org/10.1155/2021/5709257
_version_ 1784609113853919232
author Elizabeth Jesi, V.
Mohamed Aslam, Shabnam
Ramkumar, G.
Sabarivani, A.
Gnanasekar, A. K.
Thomas, Prince
author_facet Elizabeth Jesi, V.
Mohamed Aslam, Shabnam
Ramkumar, G.
Sabarivani, A.
Gnanasekar, A. K.
Thomas, Prince
author_sort Elizabeth Jesi, V.
collection PubMed
description Glaucoma is a major threatening cause, in which it affects the optical nerve to lead to a permanent blindness to individuals. The major causes of Glaucoma are high pressure to eyes, family history, irregular sleeping habits, and so on. These kinds of causes lead to Glaucoma easily, and the effect of such disease leads to heavy damage to the internal optic nervous system and the affected person will get permanent blindness within few months. The major problem with this disease is that it is incurable; however, the affection stages can be reduced and the same level of effect as that for the long period can be maintained but this is possible only in the earlier stages of identification. This Glaucoma causes structural effect to the eye ball and it is complex to estimate the cause during regular diagnosis. In medical terms, the Cup to Disc Ratio (CDR) is minimized to the Glaucoma patients suddenly and leads to harmful damage to one's eye in severe manner. The general way to identify the Glaucoma is to take Optical Coherence Tomography (OCT) test, in which it captures the uncovered portion of eye ball (backside) and it is an efficient way to visualize diverse portions of eyes with optical nerve visibility shown clearly. The OCT images are mainly used to identify the diseases like Glaucoma with proper and robust accuracy levels. In this work, a new methodology is introduced to identify the Glaucoma in earlier stages, called Depth Optimized Machine Learning Strategy (DOMLS), in which it adapts the new optimization logic called Modified K-Means Optimization Logic (MkMOL) to provide best accuracy in results, and the proposed approach assures the accuracy level of more than 96.2% with least error rate of 0.002%. This paper focuses on the identification of early stage of Glaucoma and provides an efficient solution to people in case of effect by such disease using OCT images. The exact position pointed out is handled by using Region of Interest- (ROI-) based optical region selection, in which it is easy to point the optical cup (OC) and optical disc (OD). The proposed algorithm of DOMLS proves the accuracy levels in estimation of Glaucoma and the practical proofs are shown in the Result and Discussions section in a clear manner.
format Online
Article
Text
id pubmed-8639261
institution National Center for Biotechnology Information
language English
publishDate 2021
publisher Hindawi
record_format MEDLINE/PubMed
spelling pubmed-86392612021-12-13 Energetic Glaucoma Segmentation and Classification Strategies Using Depth Optimized Machine Learning Strategies Elizabeth Jesi, V. Mohamed Aslam, Shabnam Ramkumar, G. Sabarivani, A. Gnanasekar, A. K. Thomas, Prince Contrast Media Mol Imaging Research Article Glaucoma is a major threatening cause, in which it affects the optical nerve to lead to a permanent blindness to individuals. The major causes of Glaucoma are high pressure to eyes, family history, irregular sleeping habits, and so on. These kinds of causes lead to Glaucoma easily, and the effect of such disease leads to heavy damage to the internal optic nervous system and the affected person will get permanent blindness within few months. The major problem with this disease is that it is incurable; however, the affection stages can be reduced and the same level of effect as that for the long period can be maintained but this is possible only in the earlier stages of identification. This Glaucoma causes structural effect to the eye ball and it is complex to estimate the cause during regular diagnosis. In medical terms, the Cup to Disc Ratio (CDR) is minimized to the Glaucoma patients suddenly and leads to harmful damage to one's eye in severe manner. The general way to identify the Glaucoma is to take Optical Coherence Tomography (OCT) test, in which it captures the uncovered portion of eye ball (backside) and it is an efficient way to visualize diverse portions of eyes with optical nerve visibility shown clearly. The OCT images are mainly used to identify the diseases like Glaucoma with proper and robust accuracy levels. In this work, a new methodology is introduced to identify the Glaucoma in earlier stages, called Depth Optimized Machine Learning Strategy (DOMLS), in which it adapts the new optimization logic called Modified K-Means Optimization Logic (MkMOL) to provide best accuracy in results, and the proposed approach assures the accuracy level of more than 96.2% with least error rate of 0.002%. This paper focuses on the identification of early stage of Glaucoma and provides an efficient solution to people in case of effect by such disease using OCT images. The exact position pointed out is handled by using Region of Interest- (ROI-) based optical region selection, in which it is easy to point the optical cup (OC) and optical disc (OD). The proposed algorithm of DOMLS proves the accuracy levels in estimation of Glaucoma and the practical proofs are shown in the Result and Discussions section in a clear manner. Hindawi 2021-11-25 /pmc/articles/PMC8639261/ /pubmed/34908911 http://dx.doi.org/10.1155/2021/5709257 Text en Copyright © 2021 V. Elizabeth Jesi et al. https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research Article
Elizabeth Jesi, V.
Mohamed Aslam, Shabnam
Ramkumar, G.
Sabarivani, A.
Gnanasekar, A. K.
Thomas, Prince
Energetic Glaucoma Segmentation and Classification Strategies Using Depth Optimized Machine Learning Strategies
title Energetic Glaucoma Segmentation and Classification Strategies Using Depth Optimized Machine Learning Strategies
title_full Energetic Glaucoma Segmentation and Classification Strategies Using Depth Optimized Machine Learning Strategies
title_fullStr Energetic Glaucoma Segmentation and Classification Strategies Using Depth Optimized Machine Learning Strategies
title_full_unstemmed Energetic Glaucoma Segmentation and Classification Strategies Using Depth Optimized Machine Learning Strategies
title_short Energetic Glaucoma Segmentation and Classification Strategies Using Depth Optimized Machine Learning Strategies
title_sort energetic glaucoma segmentation and classification strategies using depth optimized machine learning strategies
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8639261/
https://www.ncbi.nlm.nih.gov/pubmed/34908911
http://dx.doi.org/10.1155/2021/5709257
work_keys_str_mv AT elizabethjesiv energeticglaucomasegmentationandclassificationstrategiesusingdepthoptimizedmachinelearningstrategies
AT mohamedaslamshabnam energeticglaucomasegmentationandclassificationstrategiesusingdepthoptimizedmachinelearningstrategies
AT ramkumarg energeticglaucomasegmentationandclassificationstrategiesusingdepthoptimizedmachinelearningstrategies
AT sabarivania energeticglaucomasegmentationandclassificationstrategiesusingdepthoptimizedmachinelearningstrategies
AT gnanasekarak energeticglaucomasegmentationandclassificationstrategiesusingdepthoptimizedmachinelearningstrategies
AT thomasprince energeticglaucomasegmentationandclassificationstrategiesusingdepthoptimizedmachinelearningstrategies