Chen Min, Wang Jiancong, Oguz Ipek, VanderBeek Brian L, Gee James C
Department of Radiology, University of Pennsylvania, Philadelphia PA 19104, USA.
Department of Ophthalmology, University of Pennsylvania, Philadelphia PA 19104, USA.
Fetal Infant Ophthalmic Med Image Anal (2017). 2017 Sep;10554:177-184. doi: 10.1007/978-3-319-67561-9_20. Epub 2017 Sep 9.
The choroid plays a critical role in maintaining the portions of the eye responsible for vision. Specific alterations in the choroid have been associated with several disease states, including age-related macular degeneration (AMD), central serous choroiretinopathy, retinitis pigmentosa and diabetes. In addition, choroid thickness measures have been shown as a predictive biomarker for treatment response and visual function. Where several approaches currently exist for segmenting the choroid in optical coherence tomography (OCT) images of healthy retina, very few are capable of addressing images with retinal pathology. The difficulty is due to existing methods relying on first detecting the retinal boundaries before performing the choroidal segmentation. Performance suffers when these boundaries are disrupted or suffer large morphological changes due to disease, and cannot be found accurately. In this work, we show that a learning based approach using convolutional neural networks can allow for the detection and segmentation of the choroid without the prerequisite delineation of the retinal layers. This avoids the need to model and delineate unpredictable pathological changes in the retina due to disease. Experimental validation was performed using 62 manually delineated choroid segmentations of retinal enhanced depth OCT images from patients with AMD. Our results show segmentation accuracy that surpasses those reported by state of the art approaches on healthy retinal images, and overall high values in images with pathology, which are difficult to address by existing methods without pathology specific heuristics.
脉络膜在维持眼睛负责视觉的部分中起着关键作用。脉络膜的特定改变与多种疾病状态相关,包括年龄相关性黄斑变性(AMD)、中心性浆液性脉络膜视网膜病变、色素性视网膜炎和糖尿病。此外,脉络膜厚度测量已被证明是治疗反应和视觉功能的预测生物标志物。目前在健康视网膜的光学相干断层扫描(OCT)图像中有几种脉络膜分割方法,但很少有方法能够处理有视网膜病变的图像。困难在于现有方法依赖于在进行脉络膜分割之前先检测视网膜边界。当这些边界因疾病而中断或发生大的形态变化且无法准确找到时,性能就会受到影响。在这项工作中,我们表明基于卷积神经网络的学习方法可以在不预先描绘视网膜层的情况下检测和分割脉络膜。这避免了对因疾病导致的视网膜中不可预测的病理变化进行建模和描绘的需要。使用来自AMD患者的视网膜增强深度OCT图像的62个手动描绘的脉络膜分割进行了实验验证。我们的结果表明,分割精度超过了在健康视网膜图像上最先进方法所报告的精度,并且在有病变的图像中总体值较高,而现有方法在没有病理特定启发式方法的情况下难以处理这些图像。