首页> 外文期刊>Computerized Medical Imaging and Graphics: The Official Jounal of the Computerized Medical Imaging Society >An automated method for choroidal thickness measurement from Enhanced Depth Imaging Optical Coherence Tomography images
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An automated method for choroidal thickness measurement from Enhanced Depth Imaging Optical Coherence Tomography images

机译:一种自动化方法,用于增强深度成像光学相干断层扫描图像的脉络膜厚度测量

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摘要

The choroid is vascular tissue located underneath the retina and supplies oxygen to the outer retina; any damage to this tissue can be a precursor to retinal diseases. This paper presents an automated method of choroidal segmentation from Enhanced Depth Imaging Optical Coherence Tomography (EDI-OCT) images. The Dijkstra shortest path algorithm is used to segment the choroid-sclera interface (CSI), the outermost border of the choroid. A novel intensity-normalisation technique that is based on the depth of the choroid is used to equalise the intensity of all non-vessel pixels in the choroid region. The outer boundary of choroidal vessel and CSI are determined approximately and incorporated to the edge weight of the CSI segmentation to choose optimal edge weights. This method is tested on 190 B-scans of 10 subjects against choroid thickness (CTh) results produced manually by two graders. For comparison, results obtained by two state-of-the-art automated methods and our proposed method are compared against the manual grading, and our proposed method performed the best. The mean root-mean-square error (RMSE) for finding the CSI boundary by our method is 7.71 +/- 6.29 pixels, which is significantly lower than the RMSE for the two other state-of-the-art methods (36.17 +/- 11.97 pixels and 44.19 +/- 19.51 pixels). The correlation coefficient for our method is 0.76, and 0.51 and 0.66 for the other two state-of-the-art methods. The interclass correlation coefficients are 0.72, 0.43 and 0.56 respectively. Our method is highly accurate, robust, reliable and consistent. This identification can enable to quantify the biomarkers of the choroidin large scale study for assessing, monitoring disease progression as well as early detection of retinal diseases. Identification of the boundary can help to determine the loss or change of choroid, which can be used as features for the automatic determination of the stages of retinal diseases.
机译:脉络膜是位于视网膜下方的血管组织,向外视网膜供应氧气;对该组织的任何损害都可以是视网膜疾病的前体。本文介绍了来自增强深度成像光学相干断层扫描(EDI-OCT)图像的脉络膜分割的自动化方法。 Dijkstra最短路径算法用于分割Choroid-Sclera接口(CSI),脉络膜的最外层边界。一种基于脉络膜的深度的新型强度归一化技术用于均衡脉络膜区域中的所有非血管像素的强度。脉络膜血管和CSI的外边界大致并结合到CSI分段的边缘重量,以选择最佳边缘权重。该方法在190 B-SCANS上测试了10个受试者的康科氏菌厚度(CTH)结果,由两位分级机制生产。为了比较,通过两种最先进的自动化方法获得的结果和我们提出的方法与手动分级进行比较,我们所提出的方法表现了最佳。用于通过我们的方法查找CSI边界的平均根均方误差(RMSE)是7.71 +/- 6.29像素,这显着低于另外两种最先进方法的RMSE(36.17 + / - 11.97像素和44.19 +/- 19.51像素)。对于其他两种最先进的方法,我们方法的相关系数为0.76和0.51和0.66。杂类相关系数分别为0.72,0.43和0.56。我们的方法高度准确,稳健,可靠且保持一致。该识别可以使能量化脉络膜大规模研究的生物标志物进行评估,监测疾病进展以及早期检测视网膜疾病。边界的识别可以有助于确定脉络膜的损失或变化,这可以用作自动测定视网膜疾病的阶段的特征。

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