Aresta Guilherme, Araújo Teresa, Schmidt-Erfurth Ursula, Bogunovic Hrvoje
Christian Doppler Lab for Artificial Intelligence in Retina, Institute of Artificial Intelligence, Center for Medical Data Science, Medical University of Vienna, Vienna, Austria.
Department of Ophthalmology & Optometry, Medical University of Vienna, Vienna, Austria.
Transl Vis Sci Technol. 2025 Mar 3;14(3):26. doi: 10.1167/tvst.14.3.26.
The purpose of this study was to develop a robust and general purpose artificial intelligence (AI) system that allows the identification of retinal optical coherence tomography (OCT) volumes with pathomorphological manifestations not present in normal eyes in screening programs and large retrospective studies.
An unsupervised anomaly detection deep learning approach for the screening of retinal OCTs with any pathomorphological manifestations via Teacher-Student knowledge distillation is developed. The system is trained with only normal cases without any additional manual labeling. At test time, it scores how anomalous a sample is and produces localized anomaly maps with regions of interest in a B-scan. Fovea-centered OCT scans acquired with Spectralis (Heidelberg Engineering) were considered. A total of 3358 patients were used for development and testing. The detection performance was evaluated in a large data cohort with different pathologies including diabetic macular edema (DME) and the multiple stages of age-related macular degeneration (AMD) and on external public datasets with various disease biomarkers.
The volume-wise anomaly detection receiver operating characteristic (ROC) area under the curve (AUC) was 0.94 ± 0.05 in the test set. Pathological B-scan detection on external datasets varied between 0.81 and 0.87 AUC. Qualitatively, the derived anomaly maps pointed toward diagnostically relevant regions. The behavior of the system across the datasets was similar and consistent.
Anomaly detection constitutes a valid complement to supervised systems aimed at improving the success of vision preservation and eye care, and is an important step toward more efficient and generalizable screening tools.
Deep learning approaches can enable an automated and objective screening of a wide range of pathological retinal conditions that deviate from normal appearance.
本研究的目的是开发一种强大的通用人工智能(AI)系统,该系统能够在筛查项目和大型回顾性研究中识别出具有正常眼睛不存在的病理形态学表现的视网膜光学相干断层扫描(OCT)图像。
开发了一种无监督异常检测深度学习方法,通过师生知识蒸馏来筛查具有任何病理形态学表现的视网膜OCT图像。该系统仅使用正常病例进行训练,无需任何额外的手动标注。在测试时,它对样本的异常程度进行评分,并在B扫描中生成带有感兴趣区域的局部异常图。考虑使用Spectralis(海德堡工程公司)采集的以黄斑中心凹为中心的OCT扫描图像。共有3358名患者用于开发和测试。在包含不同病理情况(包括糖尿病性黄斑水肿(DME)和年龄相关性黄斑变性(AMD)的多个阶段)的大数据队列以及具有各种疾病生物标志物的外部公共数据集中评估检测性能。
在测试集中,基于体积的异常检测接收器操作特征(ROC)曲线下面积(AUC)为0.94±0.05。在外部数据集上的病理性B扫描检测的AUC在0.81至0.87之间。定性地说,导出的异常图指向诊断相关区域。该系统在各个数据集上的表现相似且一致。
异常检测是对旨在提高视力保护和眼保健成功率的监督系统的有效补充,是朝着更高效、更通用的筛查工具迈出的重要一步。
深度学习方法能够对广泛的偏离正常外观的病理性视网膜疾病进行自动化和客观的筛查。