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进展还是衰老?一种用于区分 OCT 扫描中青光眼进展与年龄相关变化的深度学习方法。

Progression or Aging? A Deep Learning Approach for Distinguishing Glaucoma Progression From Age-Related Changes in OCT Scans.

机构信息

From the Department of Electrical and Computer Engineering, Pratt School of Engineering (S.M., F.A.M.), Duke University, Durham, North Carolina, USA.

Duke Eye Center and Department of Ophthalmology (A.A.J., F.A.M.), Duke University, Durham, North Carolina, USA; Bascom Palmer Eye Institute (A.A.J., D.M., F.A.M.), University of Miami, Miami, Florida, USA.

出版信息

Am J Ophthalmol. 2024 Oct;266:46-55. doi: 10.1016/j.ajo.2024.04.030. Epub 2024 May 3.

Abstract

PURPOSE

To develop deep learning (DL) algorithm to detect glaucoma progression using optical coherence tomography (OCT) images, in the absence of a reference standard.

DESIGN

Retrospective cohort study.

METHODS

Glaucomatous and healthy eyes with ≥5 reliable peripapillary OCT (Spectralis, Heidelberg Engineering) circle scans were included. A weakly supervised time-series learning model, called noise positive-unlabeled (Noise-PU) DL was developed to classify whether sequences of OCT B-scans showed glaucoma progression. The model used 2 learning schemes, one to identify age-related changes by differentiating test sequences from glaucoma vs healthy eyes, and the other to identify test-retest variability based on scrambled OCTs of glaucoma eyes. Both models' bases were convolutional neural networks (CNN) and long short-term memory (LSTM) networks which were combined to form a CNN-LSTM model. Model features were combined and jointly trained to identify glaucoma progression, accounting for age-related loss. The DL model's outcomes were compared with ordinary least squares (OLS) regression of retinal nerve fiber layer (RNFL) thickness over time, matched for specificity. The hit ratio was used as a proxy for sensitivity.

RESULTS

Eight thousand seven hundred eighty-five follow-up sequences of 5 consecutive OCT tests from 3253 eyes (1859 subjects) were included in the study. The mean follow-up time was 3.5 ± 1.6 years. In the test sample, the hit ratios of the DL and OLS methods were 0.498 (95%CI: 0.470-0.526) and 0.284 (95%CI: 0.258-0.309) respectively (P < .001) when the specificities were equalized to 95%.

CONCLUSION

A DL model was able to identify longitudinal glaucomatous structural changes in OCT B-scans using a surrogate reference standard for progression.

摘要

目的

开发深度学习(DL)算法,使用光学相干断层扫描(OCT)图像在缺乏参考标准的情况下检测青光眼进展。

设计

回顾性队列研究。

方法

纳入了≥5 个可靠的视盘周围 OCT(海德堡工程 Spectralis)环扫的青光眼和正常眼。开发了一种称为噪声阳性未标记(Noise-PU)的弱监督时间序列学习模型,用于对 OCT B 扫描序列是否显示青光眼进展进行分类。该模型使用 2 种学习方案,一种通过区分来自青光眼和正常眼的测试序列来识别与年龄相关的变化,另一种通过对青光眼眼的 OCT 进行乱序来识别测试-再测试变异性。两种模型的基础都是卷积神经网络(CNN)和长短时记忆(LSTM)网络,它们结合起来形成一个 CNN-LSTM 模型。模型特征被组合并联合训练以识别青光眼进展,同时考虑与年龄相关的损失。将 DL 模型的结果与基于时间的视网膜神经纤维层(RNFL)厚度的普通最小二乘法(OLS)回归进行比较,特异性匹配。命中率被用作敏感性的替代指标。

结果

该研究纳入了来自 3253 只眼(1859 名受试者)的 8785 条连续 5 次 OCT 测试的随访序列。平均随访时间为 3.5±1.6 年。在测试样本中,当特异性相等时,DL 和 OLS 方法的命中率分别为 0.498(95%CI:0.470-0.526)和 0.284(95%CI:0.258-0.309)(P<.001)。

结论

DL 模型能够使用进展的替代参考标准识别 OCT B 扫描中的纵向青光眼结构变化。

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