Publication: Retinal Nerve Fiber Layer Defect Detection using Machine Learning on Optic Disc Photograph
Issued Date
2021-01-01
Resource Type
Other identifier(s)
2-s2.0-85125471976
Rights
Mahidol University
Rights Holder(s)
SCOPUS
Bibliographic Citation
BHI 2021 - 2021 IEEE EMBS International Conference on Biomedical and Health Informatics, Proceedings. (2021)
Suggested Citation
Anita Manassakorn, Kitiwat Khamwan, Dhammathat Owasirikul, Rath Itthipanichpong, Vera Sa-Ing, Supatana Auethavekiat Retinal Nerve Fiber Layer Defect Detection using Machine Learning on Optic Disc Photograph. BHI 2021 - 2021 IEEE EMBS International Conference on Biomedical and Health Informatics, Proceedings. (2021). doi:10.1109/BHI50953.2021.9508567 Retrieved from: https://repository.li.mahidol.ac.th/handle/20.500.14594/76701
Research Projects
Organizational Units
Authors
Journal Issue
Thesis
Title
Retinal Nerve Fiber Layer Defect Detection using Machine Learning on Optic Disc Photograph
Other Contributor(s)
Abstract
Glaucoma is a neurodegenerative disease presents with retinal nerve fiber layer (RNFL) defects. We apply machine learning classifiers on the color information of the RNFL to differentiate between intact RNFL (i-RNFL) and RNFL defect (d-RNFL) on optic disc photographs (DPs). DPs from individuals with and without glaucoma were collected. Then, a semi-circle was automatically marked on the DPs, to label i-RNFL versus d-RNFL. RGB intensities and other color spaces of two profiles were collected. Five-fold cross validation is used to compare classification efficiency of five classifiers. A total of 2,051 profiles from 89, 32 and 15 DPs from patients with glaucoma, glaucoma suspects and control subjects were collected. There were 702 and 175 points of d-RNFL and 940 and 234 of i-RNFL in the training and test sets. In the training set, the 3 best classifiers using RGB intensities were fine Gaussian support vector machine (SVM), medium k-Nearest Neighbor and ensemble RUSBoosted Trees, with accuracies of 81.8%, 79.4% and 79.2%. The performance of the fine Gaussian SVM was similar between RGB and other color spaces. In the test set, the highest sensitivity (71.4%) and specificity (88.5%) were archived using RGB and the combination of RGB and Cb and Cr.