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Detecting Glaucoma Worsening Using Optical Coherence Tomography Derived Visual Field Estimates
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Abstract
Objective
Multiple studies have attempted to generate visual field (VF) mean deviation (MD) estimates using cross-sectional optical coherence tomography (OCT) data. However, whether such models offer any value in detecting longitudinal VF progression is unclear. We address this by developing a machine learning (ML) model to convert OCT data to MD and assessing its ability to detect longitudinal worsening.
Design
Retrospective, longitudinal study
Participants
A model dataset of 70,575 paired OCT/VFs to train an ML model converting OCT to VF-MD. A separate progression dataset of 4,044 eyes with ≥ 5 paired OCT/VFs to assess the ability of OCT-derived MD to detect worsening. Progression dataset eyes had two additional unpaired VFs (≥ 7 total) to establish a “ground truth” rate of progression defined by MD slope.
Methods
We trained an ML model using paired VF/OCT data to estimate MD measurements for each OCT scan (OCT-MD). We used this ML model to generate longitudinal OCT-MD estimates for progression dataset eyes. We calculated MD slopes after substituting/supplementing VF-MD with OCT-MD and measured the ability to detect progression. We labeled true progressors using a ground truth MD slope <0.5 dB/year calculated from ≥ 7 VF-MD measurements. We compared the area under the curve (AUC) of MD slopes calculated using both VF-MD (with <7 measurements) and OCT-MD. Because we found OCT-MD substitution had a statistically inferior AUC to VF-MD, we simulated the effect of reducing OCT-MD mean absolute error (MAE) on the ability to detect worsening.
Main Outcome Measures
AUC
Results
OCT-MD estimates had an MAE of 1.62 dB. AUC of MD slopes with partial OCT-MD substitution was significantly worse than the VF-MD slope. Supplementing VF-MD with OCT-MD also did not improve AUC, regardless of MAE. OCT-MD estimates needed an MAE ≤ 1.00 dB before AUC was statistically similar to VF-MD alone.
Conclusion
ML models converting OCT data to VF-MD with error levels lower than published in prior work (MAE: 1.62 dB) were inferior to VF-MD data for detecting trend-based VF progression. Models converting OCT data to VF-MD must achieve better prediction errors (MAE ≤ 1 dB) to be clinically valuable at detecting VF worsening.
Title: Detecting Glaucoma Worsening Using Optical Coherence Tomography Derived Visual Field Estimates
Description:
Abstract
Objective
Multiple studies have attempted to generate visual field (VF) mean deviation (MD) estimates using cross-sectional optical coherence tomography (OCT) data.
However, whether such models offer any value in detecting longitudinal VF progression is unclear.
We address this by developing a machine learning (ML) model to convert OCT data to MD and assessing its ability to detect longitudinal worsening.
Design
Retrospective, longitudinal study
Participants
A model dataset of 70,575 paired OCT/VFs to train an ML model converting OCT to VF-MD.
A separate progression dataset of 4,044 eyes with ≥ 5 paired OCT/VFs to assess the ability of OCT-derived MD to detect worsening.
Progression dataset eyes had two additional unpaired VFs (≥ 7 total) to establish a “ground truth” rate of progression defined by MD slope.
Methods
We trained an ML model using paired VF/OCT data to estimate MD measurements for each OCT scan (OCT-MD).
We used this ML model to generate longitudinal OCT-MD estimates for progression dataset eyes.
We calculated MD slopes after substituting/supplementing VF-MD with OCT-MD and measured the ability to detect progression.
We labeled true progressors using a ground truth MD slope <0.
5 dB/year calculated from ≥ 7 VF-MD measurements.
We compared the area under the curve (AUC) of MD slopes calculated using both VF-MD (with <7 measurements) and OCT-MD.
Because we found OCT-MD substitution had a statistically inferior AUC to VF-MD, we simulated the effect of reducing OCT-MD mean absolute error (MAE) on the ability to detect worsening.
Main Outcome Measures
AUC
Results
OCT-MD estimates had an MAE of 1.
62 dB.
AUC of MD slopes with partial OCT-MD substitution was significantly worse than the VF-MD slope.
Supplementing VF-MD with OCT-MD also did not improve AUC, regardless of MAE.
OCT-MD estimates needed an MAE ≤ 1.
00 dB before AUC was statistically similar to VF-MD alone.
Conclusion
ML models converting OCT data to VF-MD with error levels lower than published in prior work (MAE: 1.
62 dB) were inferior to VF-MD data for detecting trend-based VF progression.
Models converting OCT data to VF-MD must achieve better prediction errors (MAE ≤ 1 dB) to be clinically valuable at detecting VF worsening.
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