» Articles » PMID: 30689990

A Deep Learning Algorithm to Quantify Neuroretinal Rim Loss From Optic Disc Photographs

Overview
Journal Am J Ophthalmol
Specialty Ophthalmology
Date 2019 Jan 29
PMID 30689990
Citations 43
Authors
Affiliations
Soon will be listed here.
Abstract

Purpose: To train a deep learning (DL) algorithm that quantifies glaucomatous neuroretinal damage on fundus photographs using the minimum rim width relative to Bruch membrane opening (BMO-MRW) from spectral-domain optical coherence tomography (SDOCT).

Design: Cross-sectional study.

Methods: A total of 9282 pairs of optic disc photographs and SDOCT optic nerve head scans from 927 eyes of 490 subjects were randomly divided into the validation plus training (80%) and test sets (20%). A DL convolutional neural network was trained to predict the SDOCT BMO-MRW global and sector values when evaluating optic disc photographs. The predictions of the DL network were compared to the actual SDOCT measurements. The area under the receiver operating curve (AUC) was used to evaluate the ability of the network to discriminate glaucomatous visual field loss from normal eyes.

Results: The DL predictions of global BMO-MRW from all optic disc photographs in the test set (mean ± standard deviation [SD]: 228.8 ± 63.1 μm) were highly correlated with the observed values from SDOCT (mean ± SD: 226.0 ± 73.8 μm) (Pearson's r = 0.88; R = 77%; P < .001), with mean absolute error of the predictions of 27.8 μm. The AUCs for discriminating glaucomatous from healthy eyes with the DL predictions and actual SDOCT global BMO-MRW measurements were 0.945 (95% confidence interval [CI]: 0.874-0.980) and 0.933 (95% CI: 0.856-0.975), respectively (P = .587).

Conclusions: A DL network can be trained to quantify the amount of neuroretinal damage on optic disc photographs using SDOCT BMO-MRW as a reference. This algorithm showed high accuracy for glaucoma detection, and may potentially eliminate the need for human gradings of disc photographs.

Citing Articles

Artificial intelligence virtual assistants in primary eye care practice.

Stuermer L, Braga S, Martin R, Wolffsohn J Ophthalmic Physiol Opt. 2024; 45(2):437-449.

PMID: 39723633 PMC: 11823310. DOI: 10.1111/opo.13435.


Artificial Intelligence and Advanced Technology in Glaucoma: A Review.

Tonti E, Tonti S, Mancini F, Bonini C, Spadea L, DEsposito F J Pers Med. 2024; 14(10).

PMID: 39452568 PMC: 11508556. DOI: 10.3390/jpm14101062.


Big data for imaging assessment in glaucoma.

da Costa D, Medeiros F Taiwan J Ophthalmol. 2024; 14(3):299-318.

PMID: 39430345 PMC: 11488812. DOI: 10.4103/tjo.TJO-D-24-00079.


The utilization of artificial intelligence in glaucoma: diagnosis versus screening.

AlShawabkeh M, AlRyalat S, Al Bdour M, Alnimat A, Al-Akhras M Front Ophthalmol (Lausanne). 2024; 4:1368081.

PMID: 38984126 PMC: 11182276. DOI: 10.3389/fopht.2024.1368081.


Deep learning and optical coherence tomography in glaucoma: Bridging the diagnostic gap on structural imaging.

Thompson A, Falconi A, Sappington R Front Ophthalmol (Lausanne). 2024; 2:937205.

PMID: 38983522 PMC: 11182271. DOI: 10.3389/fopht.2022.937205.


References
1.
Reis A, Zangalli C, Abe R, Silva A, Vianna J, Vasconcellos J . Intra- and interobserver reproducibility of Bruch's membrane opening minimum rim width measurements with spectral domain optical coherence tomography. Acta Ophthalmol. 2017; 95(7):e548-e555. DOI: 10.1111/aos.13464. View

2.
Ting D, Yim-Lui Cheung C, Lim G, Wei Tan G, Quang N, Gan A . Development and Validation of a Deep Learning System for Diabetic Retinopathy and Related Eye Diseases Using Retinal Images From Multiethnic Populations With Diabetes. JAMA. 2017; 318(22):2211-2223. PMC: 5820739. DOI: 10.1001/jama.2017.18152. View

3.
Chauhan B, OLeary N, Almobarak F, Reis A, Yang H, Sharpe G . Enhanced detection of open-angle glaucoma with an anatomically accurate optical coherence tomography-derived neuroretinal rim parameter. Ophthalmology. 2012; 120(3):535-543. PMC: 3667974. DOI: 10.1016/j.ophtha.2012.09.055. View

4.
Gulshan V, Peng L, Coram M, Stumpe M, Wu D, Narayanaswamy A . Development and Validation of a Deep Learning Algorithm for Detection of Diabetic Retinopathy in Retinal Fundus Photographs. JAMA. 2016; 316(22):2402-2410. DOI: 10.1001/jama.2016.17216. View

5.
Fleming C, Whitlock E, Beil T, Smit B, Harris R . Screening for primary open-angle glaucoma in the primary care setting: an update for the US preventive services task force. Ann Fam Med. 2005; 3(2):167-70. PMC: 1466856. DOI: 10.1370/afm.293. View