Lazaridis Georgios, Lorenzi Marco, Mohamed-Noriega Jibran, Aguilar-Munoa Soledad, Suzuki Katsuyoshi, Nomoto Hiroki, Ourselin Sebastien, Garway-Heath David F
NIHR Biomedical Research Centre at Moorfields Eye Hospital NHS Foundation Trust and UCL Institute of Ophthalmology, London, United Kingdom; Centre for Medical Image Computing, University College London, London, United Kingdom; School of Biomedical Engineering and Imaging Sciences, King's College London, London, United Kingdom.
Epione Research Project, Centre Inria Sophia Antipolis - Méditerranée, Université Côte d'Azur, Valbonne, Antibes, France.
Ophthalmol Glaucoma. 2021 May-Jun;4(3):295-304. doi: 10.1016/j.ogla.2020.10.008. Epub 2020 Oct 15.
To establish whether deep learning methods are able to improve the signal-to-noise ratio of time-domain (TD) OCT images to approach that of spectral-domain (SD) OCT images.
Method agreement study and progression detection in a randomized, double-masked, placebo-controlled, multicenter trial for open-angle glaucoma (OAG), the United Kingdom Glaucoma Treatment Study (UKGTS).
The training and validation cohort comprised 77 stable OAG participants with TD OCT and SD OCT imaging at up to 11 visits within 3 months. The testing cohort comprised 284 newly diagnosed OAG patients with TD OCT images from a cohort of 516 recruited at 10 United Kingdom centers between 2007 and 2010.
An ensemble of generative adversarial networks (GANs) was trained on TD OCT and SD OCT image pairs from the training dataset and applied to TD OCT images from the testing dataset. Time-domain OCT images were converted to synthesized SD OCT images and segmented via Bayesian fusion on the output of the GANs.
Bland-Altman analysis assessed agreement between TD OCT and synthesized SD OCT average retinal nerve fiber layer thickness (RNFLT) measurements and the SD OCT RNFLT. Analysis of the distribution of the rates of RNFLT change in TD OCT and synthesized SD OCT in the two treatment arms of the UKGTS was compared. A Cox model for predictors of time-to-incident visual field (VF) progression was computed with the TD OCT and the synthesized SD OCT images.
The 95% limits of agreement were between TD OCT and SD OCT were 26.64 to -22.95; between synthesized SD OCT and SD OCT were 8.11 to -6.73; and between SD OCT and SD OCT were 4.16 to -4.04. The mean difference in the rate of RNFLT change between UKGTS treatment and placebo arms with TD OCT was 0.24 (P = 0.11) and with synthesized SD OCT was 0.43 (P = 0.0017). The hazard ratio for RNFLT slope in Cox regression modeling for time to incident VF progression was 1.09 (95% confidence interval [CI], 1.02-1.21; P = 0.035) for TD OCT and 1.24 (95% CI, 1.08-1.39; P = 0.011) for synthesized SD OCT.
Image enhancement significantly improved the agreement of TD OCT RNFLT measurements with SD OCT RNFLT measurements. The difference, and its significance, in rates of RNFLT change in the UKGTS treatment arms was enhanced and RNFLT change became a stronger predictor of VF progression.
确定深度学习方法是否能够提高时域(TD)OCT图像的信噪比,使其接近谱域(SD)OCT图像的信噪比。
在一项针对开角型青光眼(OAG)的随机、双盲、安慰剂对照、多中心试验——英国青光眼治疗研究(UKGTS)中进行方法一致性研究和进展检测。
训练和验证队列包括77名稳定的OAG参与者,他们在3个月内接受了多达11次的TD OCT和SD OCT成像。测试队列包括284名新诊断的OAG患者,他们的TD OCT图像来自2007年至2010年在英国10个中心招募的516名患者组成的队列。
在来自训练数据集的TD OCT和SD OCT图像对上训练一组生成对抗网络(GAN),并将其应用于来自测试数据集的TD OCT图像。将时域OCT图像转换为合成的SD OCT图像,并通过对GAN输出进行贝叶斯融合进行分割。
Bland-Altman分析评估TD OCT与合成的SD OCT平均视网膜神经纤维层厚度(RNFLT)测量值与SD OCT RNFLT之间的一致性。比较UKGTS两个治疗组中TD OCT和合成的SD OCT中RNFLT变化率的分布。使用TD OCT和合成的SD OCT图像计算预测发生视野(VF)进展时间的Cox模型。
TD OCT与SD OCT之间的95%一致性界限为26.64至-22.95;合成的SD OCT与SD OCT之间为8.11至-6.73;SD OCT与SD OCT之间为4.16至-4.04。UKGTS治疗组与安慰剂组中,TD OCT测量的RNFLT变化率平均差异为0.24(P = 0.11),合成的SD OCT测量的为0.43(P = 0.0017)。在Cox回归模型中,对于发生VF进展时间,TD OCT的RNFLT斜率危险比为1.09(95%置信区间[CI],1.02 - 1.21;P = 0.035),合成的SD OCT为1.24(95%CI,1.08 - 1.39;P = 0.011)。
图像增强显著提高了TD OCT RNFLT测量值与SD OCT RNFLT测量值之间的一致性。UKGTS治疗组中RNFLT变化率的差异及其显著性得到增强,并且RNFLT变化成为VF进展的更强预测指标。