Fazekas Botond, Aresta Guilherme, Lachinov Dmitrii, Riedl Sophie, Mai Julia, Schmidt-Erfurth Ursula, Bogunović Hrvoje
Christian Doppler Laboratory for Artificial Intelligence in Retina, Department of Ophthalmology and Optometry, Medical University of Vienna, Vienna, Austria; Institute of Artificial Intelligence, Center for Medical Data Science, Medical University of Vienna, Vienna, Austria.
Christian Doppler Laboratory for Artificial Intelligence in Retina, Department of Ophthalmology and Optometry, Medical University of Vienna, Vienna, Austria; Institute of Artificial Intelligence, Center for Medical Data Science, Medical University of Vienna, Vienna, Austria.
Comput Methods Programs Biomed. 2025 Apr;261:108586. doi: 10.1016/j.cmpb.2025.108586. Epub 2025 Jan 9.
Automated, anatomically coherent retinal layer segmentation in optical coherence tomography (OCT) is one of the most important components of retinal disease management. However, current methods rely on large amounts of labeled data, which can be difficult and expensive to obtain. In addition, these systems tend often propose anatomically impossible results, which undermines their clinical reliability.
This study introduces a semi-supervised approach to retinal layer segmentation that leverages large amounts of unlabeled data and anatomical prior knowledge related to the structure of the retina. During training, we use a novel topological engine that converts inferred retinal layer boundaries into pixel-wise structured segmentations. These compose a set of anatomically valid disentangled representations which, together with predicted style factors, are used to reconstruct the input image. At training time, the retinal layer boundaries and pixel-wise predictions are both guided by reference annotations, where available, but more importantly by innovatively exploiting anatomical priors that improve the performance, robustness and coherence of the method even if only a small amount of labeled data is available.
Exhaustive experiments with respect to label efficiency, contribution of unsupervised data and robustness to different acquisition settings were conducted. The proposed method showed state of-the-art performance on all the studied public and internal datasets, specially in low annotated data regimes. Additionally, the model was able to make use of unlabeled data from a different domain with only a small performance drop in comparison to a fully-supervised setting.
A novel, robust, label-efficient retinal layer segmentation method was proposed. The approach has shown state-of-the-art layer segmentation performance with a fraction of the training data available, while at the same time, its robustness against domain shift was also shown.
光学相干断层扫描(OCT)中自动化、解剖结构连贯的视网膜层分割是视网膜疾病管理的最重要组成部分之一。然而,当前方法依赖大量标注数据,获取这些数据可能困难且昂贵。此外,这些系统常常会给出解剖结构上不可能的结果,这削弱了它们的临床可靠性。
本研究引入一种用于视网膜层分割的半监督方法,该方法利用大量未标注数据以及与视网膜结构相关的解剖学先验知识。在训练过程中,我们使用一种新颖的拓扑引擎,将推断出的视网膜层边界转换为逐像素的结构化分割。这些分割构成一组解剖学上有效的解缠表示,它们与预测的风格因子一起用于重建输入图像。在训练时,视网膜层边界和逐像素预测均由参考注释(若有)引导,但更重要的是通过创新性地利用解剖学先验知识,即使只有少量标注数据,也能提高该方法的性能、鲁棒性和连贯性。
针对标注效率、无监督数据的贡献以及对不同采集设置的鲁棒性进行了详尽实验。所提出的方法在所有研究的公共和内部数据集上均表现出了领先水平,特别是在低标注数据情况下。此外,与完全监督设置相比,该模型能够利用来自不同领域的未标注数据,且性能仅有小幅下降。
提出了一种新颖、鲁棒且标注高效的视网膜层分割方法。该方法在可用训练数据量仅为一小部分的情况下,展现出了领先的层分割性能,同时还展示了其对域转移的鲁棒性。