Methods for segmentation of spinal cord and esophagus in radiotherapy planning computed tomography

J. O. Diniz, A. Silva, A. Paiva
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引用次数: 0

Abstract

Organs at Risk (OARs) are healthy tissues around cancer that must be preserved in radiotherapy (RT). The spinal cord and esophagus are crucial OARs. In this work, we proposed methods for the segmentation of these OARs from the CT using image processing techniques and deep convolutional neural network (CNN). For spinal cord segmentation, two methods are proposed, the first using techniques such as template matching, superpixel, and CNN. The second method, use adaptive template matching and CNN. In the esophagus segmentation, we proposed a method composed of registration techniques, atlas, pre-processing, U-Net, and post-processing. The methods were applied to 36 planning CT images provided by The Cancer Imaging Archive. The first method for spinal cord segmentation obtained 78.20% Dice. The second method for spinal cord segmentation obtained 81.69% Dice. The esophagus segmentation method obtained an accuracy of 82.15% Dice.
放射治疗计划中脊髓和食管分割的计算机断层扫描方法
危险器官(OARs)是肿瘤周围的健康组织,必须在放射治疗(RT)中保存。脊髓和食道是关键的桨。在这项工作中,我们提出了使用图像处理技术和深度卷积神经网络(CNN)从CT中分割这些桨的方法。对于脊髓的分割,提出了两种方法,第一种是使用模板匹配、超像素和CNN等技术。第二种方法,采用自适应模板匹配和CNN。在食管分割中,我们提出了一种由配准技术、图谱、预处理、U-Net和后处理组成的方法。该方法应用于癌症影像档案馆提供的36张规划CT图像。第一种方法的脊髓分割成功率为78.20%。第二种方法的脊髓分割准确率为81.69%。食道分割的准确率为82.15%。
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