Optical coherence tomography machine learning classifiers for glaucoma detection: A preliminary study

被引:158
作者
Burgansky-Eliash, Z
Wollstein, G
Chu, TJ
Ramsey, JD
Glymour, C
Noecker, RJ
Ishikawa, H
Schuman, JS
机构
[1] Univ Pittsburgh, Sch Med, Dept Ophthalmol,UPMC Eye Ctr, Eye & Ear Inst,Ophthalmol & Visual Sci Res Ctr, Pittsburgh, PA 15213 USA
[2] Inst Human & Machine Cognit, Pensacola, FL USA
[3] Carnegie Mellon Univ, Dept Philosophy, Pittsburgh, PA 15213 USA
关键词
D O I
10.1167/iovs.05-0366
中图分类号
R77 [眼科学];
学科分类号
100212 ;
摘要
PURPOSE. Machine-learning classifiers are trained computerized systems with the ability to detect the relationship between multiple input parameters and a diagnosis. The present study investigated whether the use of machine-learning classifiers improves optical coherence tomography (OCT) glaucoma detection. METHODS. Forty-seven patients with glaucoma ( 47 eyes) and 42 healthy subjects ( 42 eyes) were included in this cross-sectional study. Of the glaucoma patients, 27 had early disease ( visual field mean deviation [MD] >= - 6 dB) and 20 had advanced glaucoma (MD < - 6 dB). Machine-learning classifiers were trained to discriminate between glaucomatous and healthy eyes using parameters derived from OCT output. The classifiers were trained with all 38 parameters as well as with only 8 parameters that correlated best with the visual field MD. Five classifiers were tested: linear discriminant analysis, support vector machine, recursive partitioning and regression tree, generalized linear model, and generalized additive model. For the last two classifiers, a backward feature selection was used to find the minimal number of parameters that resulted in the best and most simple prediction. The cross-validated receiver operating characteristic (ROC) curve and accuracies were calculated. RESULTS. The largest area under the ROC curve (AROC) for glaucoma detection was achieved with the support vector machine using eight parameters (0.981). The sensitivity at 80% and 95% specificity was 97.9% and 92.5%, respectively. This classifier also performed best when judged by cross-validated accuracy (0.966). The best classification between early glaucoma and advanced glaucoma was obtained with the generalized additive model using only three parameters ( AROC = 0.854). CONCLUSIONS. Automated machine classifiers of OCT data might be useful for enhancing the utility of this technology for detecting glaucomatous abnormality.
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页码:4147 / 4152
页数:6
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