Yin Xin, Chao Jennifer R, Wang Ruikang K
University of Washington, Department of Bioengineering, 3720 15th Avenue NE, Seattle, Washington 98195, United States.
University of Washington, Department of Ophthalmology, 325 9th Avenue, Seattle, Washington 98104, United States.
J Biomed Opt. 2014 Aug;19(8):086020. doi: 10.1117/1.JBO.19.8.086020.
Despite the existence of automatic segmentation techniques, trained graders still rely on manual segmentation to provide retinal layers and features from clinical optical coherence tomography (OCT) images for accurate measurements. To bridge the gap between this time-consuming need of manual segmentation and currently available automatic segmentation techniques, this paper proposes a user-guided segmentation method to perform the segmentation of retinal layers and features in OCT images. With this method, by interactively navigating three-dimensional (3-D) OCT images, the user first manually defines user-defined (or sketched) lines at regions where the retinal layers appear very irregular for which the automatic segmentation method often fails to provide satisfactory results. The algorithm is then guided by these sketched lines to trace the entire 3-D retinal layer and anatomical features by the use of novel layer and edge detectors that are based on robust likelihood estimation. The layer and edge boundaries are finally obtained to achieve segmentation. Segmentation of retinal layers in mouse and human OCT images demonstrates the reliability and efficiency of the proposed user-guided segmentation method.
尽管存在自动分割技术,但训练有素的分级人员仍依赖手动分割来从临床光学相干断层扫描(OCT)图像中提供视网膜层和特征,以进行准确测量。为了弥合这种耗时的手动分割需求与当前可用的自动分割技术之间的差距,本文提出了一种用户引导的分割方法,用于对OCT图像中的视网膜层和特征进行分割。使用这种方法,通过交互式浏览三维(3-D)OCT图像,用户首先在视网膜层显得非常不规则的区域手动定义用户定义(或勾勒)的线条,而自动分割方法在这些区域通常无法提供令人满意的结果。然后,该算法以这些勾勒的线条为引导,通过使用基于稳健似然估计的新型层和边缘检测器,来追踪整个三维视网膜层和解剖特征。最终获得层和边缘边界以实现分割。在小鼠和人类OCT图像中对视网膜层进行分割,证明了所提出的用户引导分割方法的可靠性和效率。