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Michael H Goldbaum

Showing results (41-50 of 65) with videos related to

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Transactions of the American Ophthalmological Society|February 4, 2010
Patterns of glaucomatous visual field loss in sita fields automatically identified using independent component analysisMichael H Goldbaum, Gil-Jin Jang, Chris Bowd, et al.
Investigative Ophthalmology & Visual Science|July 28, 2004
Using unsupervised learning with variational bayesian mixture of factor analysis to identify patterns of glaucomatous visual field defectsPamela A Sample, Kwokleung Chan, Catherine Boden, et al.
IEEE Transactions on Bio-Medical Engineering|March 25, 2014
Glaucoma progression detection using structural retinal nerve fiber layer measurements and functional visual field pointsSiamak Yousefi, Michael H Goldbaum, Madhusudhanan Balasubramanian, et al.
Investigative Ophthalmology & Visual Science|January 5, 2002
Comparing machine learning classifiers for diagnosing glaucoma from standard automated perimetryMichael H Goldbaum, Pamela A Sample, Kwokleung Chan, et al.
Plos One|February 6, 2014
Glaucomatous patterns in Frequency Doubling Technology (FDT) perimetry data identified by unsupervised machine learning classifiersChristopher Bowd, Robert N Weinreb, Madhusudhanan Balasubramanian, et al.
Translational Vision Science & Technology|July 22, 2021
Individualized Glaucoma Change Detection Using Deep Learning Auto Encoder-Based Regions of InterestChristopher Bowd, Akram Belghith, Mark Christopher, et al.
Retina (Philadelphia, Pa.)|February 8, 2020
PREVALENCE OF MISMATCH REPAIR GENE MUTATIONS IN UVEAL MELANOMAChristopher B Toomey, Nicholas J Protopsaltis, Samantha Phou, et al.
The British Journal of Ophthalmology|September 20, 2015
Visual phenomena perceived during pars plana vitrectomy under peribulbar block and monitored anaesthesia careHema L Ramkumar, Azadeh Khatibi, William R Freeman, et al.
Eclinicalmedicine|April 12, 2021
Prevalence of subclinical retinal ischemia in patients with cardiovascular disease - a hypothesis driven studyChristopher P Long, Alison X Chan, Christine Y Bakhoum, et al.
Investigative Ophthalmology & Visual Science|June 30, 2004
Confocal scanning laser ophthalmoscopy classifiers and stereophotograph evaluation for prediction of visual field abnormalities in glaucoma-suspect eyesChristopher Bowd, Linda M Zangwill, Felipe A Medeiros, et al.
Pageof 7

Showing results (41-50 of 65) with videos related to

Sort By:
Pageof 7
Transactions of the American Ophthalmological Society|February 4, 2010
Patterns of glaucomatous visual field loss in sita fields automatically identified using independent component analysisMichael H Goldbaum, Gil-Jin Jang, Chris Bowd, et al.
Investigative Ophthalmology & Visual Science|July 28, 2004
Using unsupervised learning with variational bayesian mixture of factor analysis to identify patterns of glaucomatous visual field defectsPamela A Sample, Kwokleung Chan, Catherine Boden, et al.
IEEE Transactions on Bio-Medical Engineering|March 25, 2014
Glaucoma progression detection using structural retinal nerve fiber layer measurements and functional visual field pointsSiamak Yousefi, Michael H Goldbaum, Madhusudhanan Balasubramanian, et al.
Investigative Ophthalmology & Visual Science|January 5, 2002
Comparing machine learning classifiers for diagnosing glaucoma from standard automated perimetryMichael H Goldbaum, Pamela A Sample, Kwokleung Chan, et al.
Plos One|February 6, 2014
Glaucomatous patterns in Frequency Doubling Technology (FDT) perimetry data identified by unsupervised machine learning classifiersChristopher Bowd, Robert N Weinreb, Madhusudhanan Balasubramanian, et al.
Translational Vision Science & Technology|July 22, 2021
Individualized Glaucoma Change Detection Using Deep Learning Auto Encoder-Based Regions of InterestChristopher Bowd, Akram Belghith, Mark Christopher, et al.
Retina (Philadelphia, Pa.)|February 8, 2020
PREVALENCE OF MISMATCH REPAIR GENE MUTATIONS IN UVEAL MELANOMAChristopher B Toomey, Nicholas J Protopsaltis, Samantha Phou, et al.
The British Journal of Ophthalmology|September 20, 2015
Visual phenomena perceived during pars plana vitrectomy under peribulbar block and monitored anaesthesia careHema L Ramkumar, Azadeh Khatibi, William R Freeman, et al.
Eclinicalmedicine|April 12, 2021
Prevalence of subclinical retinal ischemia in patients with cardiovascular disease - a hypothesis driven studyChristopher P Long, Alison X Chan, Christine Y Bakhoum, et al.
Investigative Ophthalmology & Visual Science|June 30, 2004
Confocal scanning laser ophthalmoscopy classifiers and stereophotograph evaluation for prediction of visual field abnormalities in glaucoma-suspect eyesChristopher Bowd, Linda M Zangwill, Felipe A Medeiros, et al.
Pageof 7