AI-based Clinical Assessment of Optic Nerve Head Robustness Superseding Biomechanical Testing
Fabian A. Braeu, Thanadet Chuangsuwanich, Tin A. Tun, Alexandre H., Thiery, Tin Aung, George Barbastathis, Micha\"el J.A. Girard

TL;DR
This study develops AI models to predict optic nerve head robustness from OCT scans, eliminating the need for biomechanical testing and identifying key structural features associated with robustness.
Contribution
Introduces AI algorithms, especially a dynamic graph CNN, to assess ONH robustness from baseline OCT scans and identify critical 3D structural features.
Findings
AI models accurately predict ONH robustness from OCT scans
DGCNN outperforms other models with AUC of 0.76
Key features include scleral canal and LC insertion sites
Abstract
: To use artificial intelligence (AI) to: (1) exploit biomechanical knowledge of the optic nerve head (ONH) from a relatively large population; (2) assess ONH robustness from a single optical coherence tomography (OCT) scan of the ONH; (3) identify what critical three-dimensional (3D) structural features make a given ONH robust. : Retrospective cross-sectional study. : 316 subjects had their ONHs imaged with OCT before and after acute intraocular pressure (IOP) elevation through ophthalmo-dynamometry. IOP-induced lamina-cribrosa deformations were then mapped in 3D and used to classify ONHs. Those with LC deformations superior to 4% were considered fragile, while those with deformations inferior to 4% robust. Learning from these data, we compared three AI algorithms to predict ONH robustness strictly from a baseline (undeformed)…
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Taxonomy
TopicsGlaucoma and retinal disorders · Cerebral Venous Sinus Thrombosis · Traumatic Brain Injury and Neurovascular Disturbances
MethodsDeep Graph Convolutional Neural Network
