Development of the Integrated Glaucoma Risk Index
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초록

Various machine-learning schemes have been proposed to diagnose glaucoma. They can classify subjects into 'normal' or 'glaucoma'-positive but cannot determine the severity of the latter. To complement this, researchers have proposed statistical indices for glaucoma risk. However, they are based on a single examination indicator and do not reflect the total severity of glaucoma progression. In this study, we propose an integrated glaucoma risk index (I-GRI) based on the visual field (VF) test, optical coherence tomography (OCT), and intraocular pressure (TOP) test. We extracted important features from the examination data using a machine learning scheme and integrated them into a single measure using a mathematical equation. The proposed index produces a value between 0 and 1; the higher the risk index value, the greater the risk/severity of glaucoma. In the sanity test using test cases, the I-GRI showed a balanced distribution in both glaucoma and normal cases. When we classified glaucoma and normal cases using the I-GRI, we obtained a misclassification rate of 0.07 (7%). The proposed index is useful for diagnosing glaucoma and for detecting its progression.

키워드

glaucomamachine learningpredictionrisk indexDIAGNOSISSYSTEM
제목
Development of the Integrated Glaucoma Risk Index
저자
Oh, SejongCho, Kyong JinKim, Seong-Jae
DOI
10.3390/diagnostics12030734
발행일
2022-03
유형
Article
저널명
Diagnostics
12
3