Abstract

The main goal of this study is to identify the association between corneal shape, elevation, and thickness parameters and visual field damage using machine learning. A total of 676 eyes from 568 patients from the Jichi Medical University in Japan were included in this study. Corneal topography, pachymetry, and elevation images were obtained using anterior segment optical coherence tomography (OCT) and visual field tests were collected using standard automated perimetry with 24-2 Swedish Interactive Threshold Algorithm. The association between corneal structural parameters and visual field damage was investigated using machine learning and evaluated through tenfold cross-validation of the area under the receiver operating characteristic curves (AUC). The average mean deviation was − 8.0 dB and the average central corneal thickness (CCT) was 513.1 µm. Using ensemble machine learning bagged trees classifiers, we detected visual field abnormality from corneal parameters with an AUC of 0.83. Using a tree-based machine learning classifier, we detected four visual field severity levels from corneal parameters with an AUC of 0.74. Although CCT and corneal hysteresis have long been accepted as predictors of glaucoma development and future visual field loss, corneal shape and elevation parameters may also predict glaucoma-induced visual functional loss.

Highlights

  • The main goal of this study is to identify the association between corneal shape, elevation, and thickness parameters and visual field damage using machine learning

  • While intraocular pressure (IOP), age, disc hemorrhage, and optic cup characteristics have been long identified as classic risk factors for development of primary open-angle glaucoma (POAG)[1,2], the Ocular Hypertension Treatment Study (OHTS) suggested central corneal thickness (CCT) as a new risk factor for development of ­POAG3

  • The role of CCT is clinically important because it affects IOP measurements which can be misleading in glaucoma ­assessment[17,19,20]

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Summary

Introduction

The main goal of this study is to identify the association between corneal shape, elevation, and thickness parameters and visual field damage using machine learning. CCT and corneal hysteresis have long been accepted as predictors of glaucoma development and future visual field loss, corneal shape and elevation parameters may predict glaucoma-induced visual functional loss. While intraocular pressure (IOP), age, disc hemorrhage, and optic cup characteristics have been long identified as classic risk factors for development of primary open-angle glaucoma (POAG)[1,2], the Ocular Hypertension Treatment Study (OHTS) suggested central corneal thickness (CCT) as a new risk factor for development of ­POAG3. Several other studies confirmed that thin CCT may predict glaucoma development and future vision ­loss[4,5]. Methods that can predict visual field damage are highly desirable in clinical practice

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