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Inference of visual field test results from OCT volumes using deep learning [Meeting Abstract]
Maetschke, Stefan; Antony, Bhavna Josephine; Ishikawa, Hiroshi; Wollstein, Gadi; Schuman, Joel S.; Wail, Simon
ISI:000488628103260
ISSN: 0146-0404
CID: 4154272
Identifying Clinically Useful Markers in Glaucoma Suspects and Primary Open Angle Glaucoma Patients Using a Machine Learning J48 Decision Tree [Meeting Abstract]
Parikh, Hardik A.; Sarrafpour, Soshian; Chiu, Bing; Gupta, Akash; Cadena, Maria de los Angeles Ramos; Ishikawa, Hiroshi; Wollstein, Gadi; Schuman, Joel; Young, Joshua A.
ISI:000488628103240
ISSN: 0146-0404
CID: 4154262
Forecasting Visual Field parameters at the Future visits using machine learning regression [Meeting Abstract]
Sedai, Suman; Antony, Bhavna; Ishikawa, Hiroshi; Wollstein, Gadi; Schuman, Joel S.
ISI:000488628103238
ISSN: 0146-0404
CID: 4154242
Deformation Analysis of 3D Optic Cup Surface in Healthy and Glaucoma Patients [Meeting Abstract]
Muta, Hidemasa; Antony, Bhavna; Halupka, Kerry; Sedai, Suman; Ishikawa, Hiroshi; Wollstein, Gadi; Schuman, Joel S.
ISI:000488628103055
ISSN: 0146-0404
CID: 4154212
Estimating visual field functions in glaucoma patients using multi-regional neural networks on OCT images [Meeting Abstract]
Yu, Hsin-Hao; Maetschke, Stefan; Antony, Bhavna Josephine; Ishikawa, Hiroshi; Wollstein, Gadi; Schuman, Joel S.; Wail, Simon
ISI:000488628103235
ISSN: 0146-0404
CID: 4154232
Utilizing a J48 Decision Tree to identify Patients at risk for Angle Closure Glaucoma. [Meeting Abstract]
Sarrafpour, Soshian; Chiu, Bing; Parikh, Hardik; Cadena, Maria De Los Angeles Ramos; Ishikawa, Hiroshi; Wollstein, Gadi; Schuman, Joel S.; Young, Joshua A.
ISI:000488628104352
ISSN: 0146-0404
CID: 4365252
Deep Learning Based Features Improves Forecasting OCT Measurements at the Future Visit [Meeting Abstract]
Ishikawa, Hiroshi; Sedai, Suman; Antony, Bhavna; Wollstein, Gadi; Schuman, Joel S.; Wail, Simon
ISI:000488628103239
ISSN: 0146-0404
CID: 4154252
A feature agnostic approach for glaucoma detection in OCT volumes
Maetschke, Stefan; Antony, Bhavna; Ishikawa, Hiroshi; Wollstein, Gadi; Schuman, Joel; Garnavi, Rahil
Optical coherence tomography (OCT) based measurements of retinal layer thickness, such as the retinal nerve fibre layer (RNFL) and the ganglion cell with inner plexiform layer (GCIPL) are commonly employed for the diagnosis and monitoring of glaucoma. Previously, machine learning techniques have relied on segmentation-based imaging features such as the peripapillary RNFL thickness and the cup-to-disc ratio. Here, we propose a deep learning technique that classifies eyes as healthy or glaucomatous directly from raw, unsegmented OCT volumes of the optic nerve head (ONH) using a 3D Convolutional Neural Network (CNN). We compared the accuracy of this technique with various feature-based machine learning algorithms and demonstrated the superiority of the proposed deep learning based method. Logistic regression was found to be the best performing classical machine learning technique with an AUC of 0.89. In direct comparison, the deep learning approach achieved a substantially higher AUC of 0.94 with the additional advantage of providing insight into which regions of an OCT volume are important for glaucoma detection. Computing Class Activation Maps (CAM), we found that the CNN identified neuroretinal rim and optic disc cupping as well as the lamina cribrosa (LC) and its surrounding areas as the regions significantly associated with the glaucoma classification. These regions anatomically correspond to the well established and commonly used clinical markers for glaucoma diagnosis such as increased cup volume, cup diameter, and neuroretinal rim thinning at the superior and inferior segments.
PMID: 31260494
ISSN: 1932-6203
CID: 3967872
Retinal optical coherence tomography image enhancement via deep learning
Halupka, Kerry J; Antony, Bhavna J; Lee, Matthew H; Lucy, Katie A; Rai, Ravneet S; Ishikawa, Hiroshi; Wollstein, Gadi; Schuman, Joel S; Garnavi, Rahil
Optical coherence tomography (OCT) images of the retina are a powerful tool for diagnosing and monitoring eye disease. However, they are plagued by speckle noise, which reduces image quality and reliability of assessment. This paper introduces a novel speckle reduction method inspired by the recent successes of deep learning in medical imaging. We present two versions of the network to reflect the needs and preferences of different end-users. Specifically, we train a convolution neural network to denoise cross-sections from OCT volumes of healthy eyes using either (1) mean-squared error, or (2) a generative adversarial network (GAN) with Wasserstein distance and perceptual similarity. We then interrogate the success of both methods with extensive quantitative and qualitative metrics on cross-sections from both healthy and glaucomatous eyes. The results show that the former approach provides state-of-the-art improvement in quantitative metrics such as PSNR and SSIM, and aids layer segmentation. However, the latter approach, which puts more weight on visual perception, outperformed for qualitative comparisons based on accuracy, clarity, and personal preference. Overall, our results demonstrate the effectiveness and efficiency of a deep learning approach to denoising OCT images, while maintaining subtle details in the images.
PMCID:6490980
PMID: 31065423
ISSN: 2156-7085
CID: 3891732
Can Macula and Optic Nerve Head Parameters Detect Glaucoma Progression in Eyes with Advanced Circumpapillary Retinal Nerve Fiber Layer Damage?
Lavinsky, Fabio; Wu, Mengfei; Schuman, Joel S; Lucy, Katie A; Liu, Mengling; Song, Youngseok; Fallon, Julia; de Los Angeles Ramos Cadena, Maria; Ishikawa, Hiroshi; Wollstein, Gadi
PURPOSE/OBJECTIVE:To evaluate the ability of OCT optic nerve head (ONH) and macular parameters to detect disease progression in eyes with advanced structural glaucomatous damage of the circumpapillary retinal nerve fiber layer (cRNFL). DESIGN/METHODS:Longitudinal study. PARTICIPANTS/METHODS:Forty-four eyes from 37 patients with advanced average cRNFL damage (≤60 μm) followed up for an average of 4.0 years. METHODS:All patients were examined with spectral-domain OCT and visual field (VF) assessment during at least 4 visits. MAIN OUTCOME MEASUREMENTS/METHODS:Visual field mean deviation (MD) and VF index. OCT cRNFL (average, superior, and inferior quadrants), ganglion cell-inner plexiform layer (GCIPL) (average, superior, and inferior), rim area, cup volume, average cup-to-disc (C:D) ratio, and vertical C:D ratio. RESULTS:/year). CONCLUSIONS:Macula GCIPL and ONH parameters may be useful in tracking progression in patients with advanced glaucoma.
PMID: 29934267
ISSN: 1549-4713
CID: 3158472