Highly accurate and precise automated cup-to-disc ratio quantification for glaucoma screening

Author:

Chaurasia Abadh KORCID,Greatbatch Connor J,Han Xikun,Gharahkhani Puya,Mackey David A,MacGregor Stuart,Craig Jamie E,Hewitt Alex W

Abstract

ABSTRACTObjectiveAn enlarged cup-to-disc ratio (CDR) is a hallmark of glaucomatous optic neuropathy. Manual assessment of CDR may be inaccurate and time-consuming. Herein we sought to develop and validate a deep-learning-based algorithm to automatically determine CDR from fundus images.DesignAlgorithm development for estimating CDR using fundus data from a population-based observational study.ParticipantsA total of 184,580 fundus images from the UK Biobank, Drishti_GS, and EyePACS.Main Outcome MeasuresThe area under the receiver operating characteristic curve (AUROC) and coefficient of determination (R2).MethodsFastAI and PyTorch libraries were used to train a convolutional neural network-based model on fundus images from the UK Biobank. Models were constructed to determine image gradability (classification analysis) as well as to estimate CDR (regression analysis). The best-performing model was then validated for use in glaucoma screening using a multiethnic dataset from EyePACS and Drishti_GS.ResultsOur gradability model vgg19_bn achieved an accuracy of 97.13% on a validation set of 16,045 images, with 99.26% precision and AUROC of 96.56%. Using regression analysis, our best-performing model (trained on the vgg19_bn architecture) attained an R2of 0.8561 (95% CI: 0.8560-0.8562), while the mean squared error was 0.4714 (95% CI: 0.4712-0.4716) and mean absolute error was 0.5379 (95% CI: 0.5378-0.5380) on a validation set of 12,183 images for determining CDR (0-9.5 scale with a 0.5 interval). The regression point was converted into classification metrics using a tolerance of 2 for 20 classes; the classification metrics achieved an accuracy of 99.35%. The EyePACS dataset (98172 healthy, 3270 glaucoma) was then used to externally validate the model for glaucoma diagnosis, with an accuracy, sensitivity and specificity of 82.49%, 72.02% and 82.83%, respectively.ConclusionsOur models were precise in determining image gradability and estimating CDR in a time-efficient manner. Although our AI-derived CDR estimates achieve high accuracy, the CDR threshold for glaucoma screening will vary depending on other clinical parameters.PrecisDeep-learning-based models can accurately diagnose and monitor glaucoma progression through automated CDR assessment. However, the CDR threshold for glaucoma screening may vary depending on other clinical parameters.

Publisher

Cold Spring Harbor Laboratory

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