Literature DB >> 15790898

Relevance vector machine and support vector machine classifier analysis of scanning laser polarimetry retinal nerve fiber layer measurements.

Christopher Bowd1, Felipe A Medeiros, Zuohua Zhang, Linda M Zangwill, Jiucang Hao, Te-Won Lee, Terrence J Sejnowski, Robert N Weinreb, Michael H Goldbaum.   

Abstract

PURPOSE: To classify healthy and glaucomatous eyes using relevance vector machine (RVM) and support vector machine (SVM) learning classifiers trained on retinal nerve fiber layer (RNFL) thickness measurements obtained by scanning laser polarimetry (SLP).
METHODS: Seventy-two eyes of 72 healthy control subjects (average age = 64.3 +/- 8.8 years, visual field mean deviation = -0.71 +/- 1.2 dB) and 92 eyes of 92 patients with glaucoma (average age = 66.9 +/- 8.9 years, visual field mean deviation = -5.32 +/- 4.0 dB) were imaged with SLP with variable corneal compensation (GDx VCC; Laser Diagnostic Technologies, San Diego, CA). RVM and SVM learning classifiers were trained and tested on SLP-determined RNFL thickness measurements from 14 standard parameters and 64 sectors (approximately 5.6 degrees each) obtained in the circumpapillary area under the instrument-defined measurement ellipse (total 78 parameters). Ten-fold cross-validation was used to train and test RVM and SVM classifiers on unique subsets of the full 164-eye data set and areas under the receiver operating characteristic (AUROC) curve for the classification of eyes in the test set were generated. AUROC curve results from RVM and SVM were compared to those for 14 SLP software-generated global and regional RNFL thickness parameters. Also reported was the AUROC curve for the GDx VCC software-generated nerve fiber indicator (NFI).
RESULTS: The AUROC curves for RVM and SVM were 0.90 and 0.91, respectively, and increased to 0.93 and 0.94 when the training sets were optimized with sequential forward and backward selection (resulting in reduced dimensional data sets). AUROC curves for optimized RVM and SVM were significantly larger than those for all individual SLP parameters. The AUROC curve for the NFI was 0.87.
CONCLUSIONS: Results from RVM and SVM trained on SLP RNFL thickness measurements are similar and provide accurate classification of glaucomatous and healthy eyes. RVM may be preferable to SVM, because it provides a Bayesian-derived probability of glaucoma as an output. These results suggest that these machine learning classifiers show good potential for glaucoma diagnosis.

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Mesh:

Year:  2005        PMID: 15790898      PMCID: PMC2928387          DOI: 10.1167/iovs.04-1122

Source DB:  PubMed          Journal:  Invest Ophthalmol Vis Sci        ISSN: 0146-0404            Impact factor:   4.799


  32 in total

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Authors:  R N Weinreb
Journal:  Arch Ophthalmol       Date:  1999-10

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3.  Detection of structural damage from glaucoma with confocal laser image analysis.

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4.  Prevalence of split nerve fiber layer bundles in healthy eyes imaged with scanning laser polarimetry.

Authors:  T P Colen; H G Lemij
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5.  Histopathologic validation of Fourier-ellipsometry measurements of retinal nerve fiber layer thickness.

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6.  Comparing the areas under two or more correlated receiver operating characteristic curves: a nonparametric approach.

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7.  Detecting early glaucoma by assessment of retinal nerve fiber layer thickness and visual function.

Authors:  C Bowd; L M Zangwill; C C Berry; E Z Blumenthal; C Vasile; C Sanchez-Galeana; C F Bosworth; P A Sample; R N Weinreb
Journal:  Invest Ophthalmol Vis Sci       Date:  2001-08       Impact factor: 4.799

8.  Effect of corneal polarization axis on assessment of retinal nerve fiber layer thickness by scanning laser polarimetry.

Authors:  D S Greenfield; R W Knighton; X R Huang
Journal:  Am J Ophthalmol       Date:  2000-06       Impact factor: 5.258

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10.  Neural networks to identify glaucoma with structural and functional measurements.

Authors:  L Brigatti; D Hoffman; J Caprioli
Journal:  Am J Ophthalmol       Date:  1996-05       Impact factor: 5.258

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  21 in total

1.  Scanning laser polarimetry with variable and enhanced corneal compensation in normal and glaucomatous eyes.

Authors:  Mitra Sehi; Delia C Guaqueta; William J Feuer; David S Greenfield
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2.  Glaucoma progression detection using structural retinal nerve fiber layer measurements and functional visual field points.

Authors:  Siamak Yousefi; Michael H Goldbaum; Madhusudhanan Balasubramanian; Tzyy-Ping Jung; Robert N Weinreb; Felipe A Medeiros; Linda M Zangwill; Jeffrey M Liebmann; Christopher A Girkin; Christopher Bowd
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4.  Predicting glaucomatous progression in glaucoma suspect eyes using relevance vector machine classifiers for combined structural and functional measurements.

Authors:  Christopher Bowd; Intae Lee; Michael H Goldbaum; Madhusudhanan Balasubramanian; Felipe A Medeiros; Linda M Zangwill; Christopher A Girkin; Jeffrey M Liebmann; Robert N Weinreb
Journal:  Invest Ophthalmol Vis Sci       Date:  2012-04-30       Impact factor: 4.799

5.  Combining information from 3 anatomic regions in the diagnosis of glaucoma with time-domain optical coherence tomography.

Authors:  Mingwu Wang; Ake Tzu-Hui Lu; Rohit Varma; Joel S Schuman; David S Greenfield; David Huang
Journal:  J Glaucoma       Date:  2014-03       Impact factor: 2.503

6.  Glaucoma classification model based on GDx VCC measured parameters by decision tree.

Authors:  Mei-Ling Huang; Hsin-Yi Chen
Journal:  J Med Syst       Date:  2009-07-04       Impact factor: 4.460

7.  Linear discriminant analysis and artificial neural network for glaucoma diagnosis using scanning laser polarimetry-variable cornea compensation measurements in Taiwan Chinese population.

Authors:  Mei-Ling Huang; Hsin-Yi Chen; Wei-Cheng Huang; Yi-Yu Tsai
Journal:  Graefes Arch Clin Exp Ophthalmol       Date:  2009-12-15       Impact factor: 3.117

8.  Comparison of retinal nerve fiber layer and optic disc imaging for diagnosing glaucoma in patients suspected of having the disease.

Authors:  Felipe A Medeiros; Gianmarco Vizzeri; Linda M Zangwill; Luciana M Alencar; Pamela A Sample; Robert N Weinreb
Journal:  Ophthalmology       Date:  2008-01-22       Impact factor: 12.079

Review 9.  Optic nerve head and fibre layer imaging for diagnosing glaucoma.

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Journal:  Cochrane Database Syst Rev       Date:  2015-11-30

10.  Machine learning classifiers detect subtle field defects in eyes of HIV individuals.

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