Khateri Parisa, Koottungal Tiana, Wong Damon, Strauss Rupert W, Janeschitz-Kriegl Lucas, Pfau Maximilian, Schmetterer Leopold, Scholl Hendrik P N
Institute of Molecular and Clinical Ophthalmology Basel, Basel, Switzerland.
Department of Ophthalmology, University of Basel, Basel, Switzerland.
Sci Rep. 2025 Feb 8;15(1):4739. doi: 10.1038/s41598-025-85213-w.
Stargardt disease type 1 (STGD1) is a genetic disorder that leads to progressive vision loss, with no approved treatments currently available. The development of effective therapies faces the challenge of identifying appropriate outcome measures that accurately reflect treatment benefits. Optical Coherence Tomography (OCT) provides high-resolution retinal images, serving as a valuable tool for deriving potential outcome measures, such as retinal thickness. However, automated segmentation of OCT images, particularly in regions disrupted by degeneration, remains complex. In this study, we propose a deep learning-based approach that incorporates a pathology-aware loss function to segment retinal sublayers in OCT images from patients with STGD1. This method targets relatively unaffected regions for sublayer segmentation, ensuring accurate boundary delineation in areas with minimal disruption. In severely affected regions, identified by a box detection model, the total retina is segmented as a single layer to avoid errors. Our model significantly outperforms standard models, achieving an average Dice coefficient of [Formula: see text] for total retina and [Formula: see text] for retinal sublayers. The most substantial improvement was in the segmentation of the photoreceptor inner segment, with Dice coefficient increasing by [Formula: see text]. This approach provides a balance between granularity and reliability, making it suitable for clinical application in tracking disease progression and evaluating therapeutic efficacy.
1型斯塔加特病(STGD1)是一种导致渐进性视力丧失的遗传性疾病,目前尚无获批的治疗方法。有效疗法的开发面临着确定能够准确反映治疗益处的合适结局指标的挑战。光学相干断层扫描(OCT)可提供高分辨率的视网膜图像,是推导诸如视网膜厚度等潜在结局指标的宝贵工具。然而,OCT图像的自动分割,尤其是在因变性而 disrupted 的区域,仍然很复杂。在本研究中,我们提出了一种基于深度学习的方法,该方法结合了病理感知损失函数,用于分割STGD1患者OCT图像中的视网膜子层。该方法针对相对未受影响的区域进行子层分割,确保在干扰最小的区域准确划定边界。在由框检测模型识别出的严重受影响区域,将整个视网膜分割为单层以避免错误。我们的模型明显优于标准模型,整个视网膜的平均骰子系数为[公式:见正文],视网膜子层的平均骰子系数为[公式:见正文]。最大的改进在于光感受器内段的分割,骰子系数增加了[公式:见正文]。这种方法在粒度和可靠性之间取得了平衡,使其适用于跟踪疾病进展和评估治疗效果的临床应用。