AI to Identify Strain-sensitive Regions of the Optic Nerve Head Linked to Functional Loss in Glaucoma
Thanadet Chuangsuwanich, Monisha E. Nongpiur, Fabian A. Braeu, Tin A. Tun, Alexandre Thiery, Shamira Perera, Ching Lin Ho, Martin Buist, George Barbastathis, Tin Aung, Micha\"el J.A. Girard

TL;DR
This study demonstrates that biomechanical strain analysis of the optic nerve head, using explainable AI, improves prediction of visual field loss patterns in glaucoma and identifies critical strain-sensitive regions linked to disease progression.
Contribution
It introduces a novel AI-based approach combining biomechanics and deep learning to predict glaucoma progression and identify key ONH regions involved.
Findings
ONH strain improves visual field loss prediction accuracy
Inferior and inferotemporal rim are key strain-sensitive regions
Model achieved high AUCs of 0.77-0.88 in classification tasks
Abstract
Objective: (1) To assess whether ONH biomechanics improves prediction of three progressive visual field loss patterns in glaucoma; (2) to use explainable AI to identify strain-sensitive ONH regions contributing to these predictions. Methods: We recruited 237 glaucoma subjects. The ONH of one eye was imaged under two conditions: (1) primary gaze and (2) primary gaze with IOP elevated to ~35 mmHg via ophthalmo-dynamometry. Glaucoma experts classified the subjects into four categories based on the presence of specific visual field defects: (1) superior nasal step (N=26), (2) superior partial arcuate (N=62), (3) full superior hemifield defect (N=25), and (4) other/non-specific defects (N=124). Automatic ONH tissue segmentation and digital volume correlation were used to compute IOP-induced neural tissue and lamina cribrosa (LC) strains. Biomechanical and structural features were input to…
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