Literature DB >> 20064122

Machine learning classifiers for glaucoma diagnosis based on classification of retinal nerve fibre layer thickness parameters measured by Stratus OCT.

Dimitrios Bizios1, Anders Heijl, Jesper Leth Hougaard, Boel Bengtsson.   

Abstract

PURPOSE: To compare the performance of two machine learning classifiers (MLCs), artificial neural networks (ANNs) and support vector machines (SVMs), with input based on retinal nerve fibre layer thickness (RNFLT) measurements by optical coherence tomography (OCT), on the diagnosis of glaucoma, and to assess the effects of different input parameters.
METHODS: We analysed Stratus OCT data from 90 healthy persons and 62 glaucoma patients. Performance of MLCs was compared using conventional OCT RNFLT parameters plus novel parameters such as minimum RNFLT values, 10th and 90th percentiles of measured RNFLT, and transformations of A-scan measurements. For each input parameter and MLC, the area under the receiver operating characteristic curve (AROC) was calculated.
RESULTS: There were no statistically significant differences between ANNs and SVMs. The best AROCs for both ANN (0.982, 95%CI: 0.966-0.999) and SVM (0.989, 95% CI: 0.979-1.0) were based on input of transformed A-scan measurements. Our SVM trained on this input performed better than ANNs or SVMs trained on any of the single RNFLT parameters (p < or = 0.038). The performance of ANNs and SVMs trained on minimum thickness values and the 10th and 90th percentiles were at least as good as ANNs and SVMs with input based on the conventional RNFLT parameters.
CONCLUSION: No differences between ANN and SVM were observed in this study. Both MLCs performed very well, with similar diagnostic performance. Input parameters have a larger impact on diagnostic performance than the type of machine classifier. Our results suggest that parameters based on transformed A-scan thickness measurements of the RNFL processed by machine classifiers can improve OCT-based glaucoma diagnosis.

Entities:  

Mesh:

Year:  2010        PMID: 20064122     DOI: 10.1111/j.1755-3768.2009.01784.x

Source DB:  PubMed          Journal:  Acta Ophthalmol        ISSN: 1755-375X            Impact factor:   3.761


  22 in total

1.  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

2.  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

3.  Learning from healthy and stable eyes: A new approach for detection of glaucomatous progression.

Authors:  Akram Belghith; Christopher Bowd; Felipe A Medeiros; Madhusudhanan Balasubramanian; Robert N Weinreb; Linda M Zangwill
Journal:  Artif Intell Med       Date:  2015-04-23       Impact factor: 5.326

4.  Hybrid Deep Learning on Single Wide-field Optical Coherence tomography Scans Accurately Classifies Glaucoma Suspects.

Authors:  Hassan Muhammad; Thomas J Fuchs; Nicole De Cuir; Carlos G De Moraes; Dana M Blumberg; Jeffrey M Liebmann; Robert Ritch; Donald C Hood
Journal:  J Glaucoma       Date:  2017-12       Impact factor: 2.503

5.  A joint estimation detection of Glaucoma progression in 3D spectral domain optical coherence tomography optic nerve head images.

Authors:  Akram Belghith; Christopher Bowd; Robert N Weinreb; Linda M Zangwill
Journal:  Proc SPIE Int Soc Opt Eng       Date:  2014-03-18

6.  Glaucoma progression detection using nonlocal Markov random field prior.

Authors:  Akram Belghith; Christopher Bowd; Felipe A Medeiros; Madhusudhanan Balasubramanian; Robert N Weinreb; Linda M Zangwill
Journal:  J Med Imaging (Bellingham)       Date:  2014-12-29

7.  Automatic segmentation of up to ten layer boundaries in SD-OCT images of the mouse retina with and without missing layers due to pathology.

Authors:  Pratul P Srinivasan; Stephanie J Heflin; Joseph A Izatt; Vadim Y Arshavsky; Sina Farsiu
Journal:  Biomed Opt Express       Date:  2014-01-07       Impact factor: 3.732

8.  Machine Learning Models for Diagnosing Glaucoma from Retinal Nerve Fiber Layer Thickness Maps.

Authors:  Peiyu Wang; Jian Shen; Ryuna Chang; Maemae Moloney; Mina Torres; Bruce Burkemper; Xuejuan Jiang; Damien Rodger; Rohit Varma; Grace M Richter
Journal:  Ophthalmol Glaucoma       Date:  2019-08-23

9.  Integration and fusion of standard automated perimetry and optical coherence tomography data for improved automated glaucoma diagnostics.

Authors:  Dimitrios Bizios; Anders Heijl; Boel Bengtsson
Journal:  BMC Ophthalmol       Date:  2011-08-04       Impact factor: 2.209

Review 10.  Optical Coherence Tomography and Glaucoma.

Authors:  Alexi Geevarghese; Gadi Wollstein; Hiroshi Ishikawa; Joel S Schuman
Journal:  Annu Rev Vis Sci       Date:  2021-07-09       Impact factor: 7.745

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