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Using Fused Data from Perimetry and Optical Coherence Tomography to Improve the Detection of Visual Field Progression in Glaucoma
by
Wong, Willy
, Trope, Graham E.
, Li-Han, Leo Yan
, Shi, Runjie Bill
, Buys, Yvonne M.
, Eizenman, Moshe
in
Algorithms
/ autoencoder
/ Bayesian analysis
/ Coding
/ data fusion
/ Data integration
/ Development and progression
/ Diagnosis
/ Glaucoma
/ glaucoma progression
/ Methods
/ Optical Coherence Tomography
/ Optical tomography
/ Optics
/ Perimetry
/ Regression models
/ Technology application
/ Tomography
/ Visual field
/ Visual fields
2024
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Using Fused Data from Perimetry and Optical Coherence Tomography to Improve the Detection of Visual Field Progression in Glaucoma
by
Wong, Willy
, Trope, Graham E.
, Li-Han, Leo Yan
, Shi, Runjie Bill
, Buys, Yvonne M.
, Eizenman, Moshe
in
Algorithms
/ autoencoder
/ Bayesian analysis
/ Coding
/ data fusion
/ Data integration
/ Development and progression
/ Diagnosis
/ Glaucoma
/ glaucoma progression
/ Methods
/ Optical Coherence Tomography
/ Optical tomography
/ Optics
/ Perimetry
/ Regression models
/ Technology application
/ Tomography
/ Visual field
/ Visual fields
2024
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Do you wish to request the book?
Using Fused Data from Perimetry and Optical Coherence Tomography to Improve the Detection of Visual Field Progression in Glaucoma
by
Wong, Willy
, Trope, Graham E.
, Li-Han, Leo Yan
, Shi, Runjie Bill
, Buys, Yvonne M.
, Eizenman, Moshe
in
Algorithms
/ autoencoder
/ Bayesian analysis
/ Coding
/ data fusion
/ Data integration
/ Development and progression
/ Diagnosis
/ Glaucoma
/ glaucoma progression
/ Methods
/ Optical Coherence Tomography
/ Optical tomography
/ Optics
/ Perimetry
/ Regression models
/ Technology application
/ Tomography
/ Visual field
/ Visual fields
2024
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Using Fused Data from Perimetry and Optical Coherence Tomography to Improve the Detection of Visual Field Progression in Glaucoma
Journal Article
Using Fused Data from Perimetry and Optical Coherence Tomography to Improve the Detection of Visual Field Progression in Glaucoma
2024
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Overview
Perimetry and optical coherence tomography (OCT) are both used to monitor glaucoma progression. However, combining these modalities can be a challenge due to differences in data types. To overcome this, we have developed an autoencoder data fusion (AEDF) model to learn compact encoding (AE-fused data) from both perimetry and OCT. The AEDF model, optimized specifically for visual field (VF) progression detection, incorporates an encoding loss to ensure the interpretation of the AE-fused data is similar to VF data while capturing key features from OCT measurements. For model training and evaluation, our study included 2504 longitudinal VF and OCT tests from 140 glaucoma patients. VF progression was determined from linear regression slopes of longitudinal mean deviations. Progression detection with AE-fused data was compared to VF-only data (standard clinical method) as well as data from a Bayesian linear regression (BLR) model. In the initial 2-year follow-up period, AE-fused data achieved a detection F1 score of 0.60 (95% CI: 0.57 to 0.62), significantly outperforming (p < 0.001) the clinical method (0.45, 95% CI: 0.43 to 0.47) and the BLR model (0.48, 95% CI: 0.45 to 0.51). The capacity of the AEDF model to generate clinically interpretable fused data that improves VF progression detection makes it a promising data integration tool in glaucoma management.
Publisher
MDPI AG,MDPI
Subject
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