Alonso-Caneiro David, Read Scott A, Collins Michael J
Contact Lens and Visual Optics Laboratory, School of Optometry and Vision Science, Queensland University of Technology, Brisbane, Queensland, Australia.
Biomed Opt Express. 2013 Nov 11;4(12):2795-812. doi: 10.1364/BOE.4.002795. eCollection 2013.
The assessment of choroidal thickness from optical coherence tomography (OCT) images of the human choroid is an important clinical and research task, since it provides valuable information regarding the eye's normal anatomy and physiology, and changes associated with various eye diseases and the development of refractive error. Due to the time consuming and subjective nature of manual image analysis, there is a need for the development of reliable objective automated methods of image segmentation to derive choroidal thickness measures. However, the detection of the two boundaries which delineate the choroid is a complicated and challenging task, in particular the detection of the outer choroidal boundary, due to a number of issues including: (i) the vascular ocular tissue is non-uniform and rich in non-homogeneous features, and (ii) the boundary can have a low contrast. In this paper, an automatic segmentation technique based on graph-search theory is presented to segment the inner choroidal boundary (ICB) and the outer choroidal boundary (OCB) to obtain the choroid thickness profile from OCT images. Before the segmentation, the B-scan is pre-processed to enhance the two boundaries of interest and to minimize the artifacts produced by surrounding features. The algorithm to detect the ICB is based on a simple edge filter and a directional weighted map penalty, while the algorithm to detect the OCB is based on OCT image enhancement and a dual brightness probability gradient. The method was tested on a large data set of images from a pediatric (1083 B-scans) and an adult (90 B-scans) population, which were previously manually segmented by an experienced observer. The results demonstrate the proposed method provides robust detection of the boundaries of interest and is a useful tool to extract clinical data.
从人脉络膜的光学相干断层扫描(OCT)图像评估脉络膜厚度是一项重要的临床和研究任务,因为它提供了有关眼睛正常解剖结构和生理功能以及与各种眼部疾病和屈光不正发展相关变化的有价值信息。由于手动图像分析耗时且主观,因此需要开发可靠的客观自动图像分割方法来得出脉络膜厚度测量值。然而,检测界定脉络膜的两个边界是一项复杂且具有挑战性的任务,特别是检测脉络膜外边界,这是由于一些问题,包括:(i)血管性眼组织不均匀且具有丰富的非均匀特征,以及(ii)边界对比度可能较低。本文提出了一种基于图搜索理论的自动分割技术,用于分割脉络膜内边界(ICB)和脉络膜外边界(OCB),以从OCT图像中获得脉络膜厚度轮廓。在分割之前,对B扫描进行预处理,以增强两个感兴趣的边界并最小化周围特征产生的伪影。检测ICB的算法基于简单边缘滤波器和方向加权图惩罚,而检测OCB的算法基于OCT图像增强和双亮度概率梯度。该方法在来自儿科(1083次B扫描)和成人(90次B扫描)人群的大量图像数据集上进行了测试,这些图像先前由经验丰富的观察者进行了手动分割。结果表明,所提出的方法能够可靠地检测感兴趣的边界,是提取临床数据的有用工具。