Central Macular Topographic and Volumetric Measures: New Biomarkers for Detection of Glaucoma.
Mohammadzadeh Vahid, Cheng Melodyanne, Zadeh Sepideh Heydar, Edalati Kiumars, Yalzadeh Dariush, Caprioli Joseph, Yadav Sunil, Kadas Ella M, Brandt Alexander U, Nouri-Mahdavi Kouros
AI Summary
New OCT macular shape measures effectively detect early glaucoma, showing high accuracy and potential as segmentation-independent biomarkers for clinical diagnosis.
Abstract
Purpose
To test the hypothesis that newly developed shape measures using optical coherence tomography (OCT) macular volume scans can discriminate patients with perimetric glaucoma from healthy subjects.
Methods
OCT structural measures defining macular topography and volume were recently developed based on cubic Bézier curves. We exported macular volume scans from 135 eyes with glaucoma (133 patients) and 155 healthy eyes (85 subjects) and estimated global and quadrant-based measures. The best subset of measures to predict glaucoma was explored with a gradient boost model (GBM) with subsequent logistic regression. Accuracy and area under receiver operating curves (AUC) were the primary metrics. In addition, we separately investigated model performance in 66 eyes with mild glaucoma (mean deviation ≥ -6 dB).
Results
Average (±SD) 24-2 mean deviation was -8.2 (±6.1) dB in eyes with glaucoma. The main predictive measures for glaucoma were temporal inferior rim height, nasal inferior pit volume, and temporal inferior pit depth. Lower values for these measures predicted higher risk of glaucoma. Sensitivity, specificity, and AUC for discriminating between healthy and glaucoma eyes were 81.5% (95% CI = 76.6-91.9%), 89.7% (95% CI = 78.7-94.2%), and 0.915 (95% CI = 0.882-0.948), respectively. Corresponding metrics for mild glaucoma were 84.8% (95% CI = 72.1%-95.5%), 85.8% (95% CI = 87.1%-97.4%), and 0.913 (95% CI = 0.867-0.958), respectively.
Conclusions
Novel macular shape biomarkers detect early glaucoma with clinically relevant performance. Such biomarkers do not depend on intraretinal segmentation accuracy and may be helpful in eyes with suboptimal macular segmentation.
Translational relevance: Macular shape biomarkers provide valuable information for detection of early glaucoma and may provide additional information beyond thickness measurements.
MeSH Terms
Shields Classification
Key Concepts5
The main predictive measures for glaucoma using OCT macular volume scans were temporal inferior rim height, nasal inferior pit volume, and temporal inferior pit depth, with lower values for these measures predicting a higher risk of glaucoma.
For discriminating between healthy and glaucoma eyes, novel macular shape biomarkers derived from OCT macular volume scans achieved a sensitivity of 81.5% (95% CI = 76.6-91.9%), specificity of 89.7% (95% CI = 78.7-94.2%), and AUC of 0.915 (95% CI = 0.882-0.948) in a study of 135 eyes with glaucoma and 155 healthy eyes.
For discriminating mild glaucoma (mean deviation ≥ -6 dB) from healthy eyes, novel macular shape biomarkers derived from OCT macular volume scans achieved a sensitivity of 84.8% (95% CI = 72.1%-95.5%), specificity of 85.8% (95% CI = 87.1%-97.4%), and AUC of 0.913 (95% CI = 0.867-0.958) in a study including 66 eyes with mild glaucoma and 155 healthy eyes.
Newly developed shape measures using optical coherence tomography (OCT) macular volume scans can discriminate patients with perimetric glaucoma from healthy subjects.
A gradient boost model with subsequent logistic regression was used to explore the best subset of measures to predict glaucoma from OCT macular volume scans in 135 eyes with glaucoma (133 patients) and 155 healthy eyes (85 subjects).
Related Articles5
Number of macula optical coherence tomography scans needed to detect glaucoma progression.
Cohort StudyPerformance of Linear Mixed Models in Estimating Structural Rates of Glaucoma Progression Using Varied Random Effect Distributions.
Cohort StudyTime to Glaucoma Progression Detection by Optical Coherence Tomography in Individuals of African and European Descents.
Cohort StudyArtifact Correction in Retinal Nerve Fiber Layer Thickness Maps Using Deep Learning and Its Clinical Utility in Glaucoma.
Observational StudyDetection and agreement of event-based OCT and OCTA analysis for glaucoma progression.
Retrospective Cohort StudyIs this article assigned to the wrong chapter(s)? Let us know.