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Kidney tumor segmentation and detection on Computed Tomography data

机译:肾脏肿瘤分割和计算机断层扫描数据的检测

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摘要

In this paper, a novel kidney segmentation method for Computed Tomography patient data with kidney cancer is proposed. The segmentation process is based on Hybrid Level Set method with elliptical shape constraints. Using segmentation results, a fully automated technique of kidney region classification is introduced. Identification of the kidney, tumor and vascular tree is based on RUSBoost and the decision trees technique. This approach enables to resolve main problems connected with region classification: class imbalance and the number of voxels to classify. The classification is based on 64-element feature vectors calculated for the kidney region that consist of 3D edge, region, orientation and spatial neighborhood information. The proposed methodology was evaluated on clinical kidney cancer CT data set. Segmentation effectiveness in Dice coefficient meaning was equal to 0.85±0.04. Overall accuracy of the proposed classification model amounts to 92.1%. Presented results confirm usefulness of the proposed solution. We believe that this is the first solution which allows to segment (divide) kidney region into separable compartments, i.e. kidney, tumor and vascular tree.
机译:在本文中,提出了一种新的肾脏分割方法,用于计算机断层扫描与肾脏癌患者的数据。分割过程基于具有椭圆形状约束的混合水平集方法。使用分割结果,介绍了一种全自动的肾脏区域分类技术。肾脏,肿瘤和血管树的识别基于RUSBoost和决策树技术。这种方法可以解决与区域分类有关的主要问题:类不平衡和要分类的体素数量。该分类基于为肾脏区域计算的64个元素特征向量,该向量由3D边缘,区域,方向和空间邻域信息组成。在临床肾癌CT数据集上评估了所提出的方法。 Dice系数意义上的分割效果等于0.85±0.04。所提出的分类模型的总体准确性为92.1%。提出的结果证实了所提出的解决方案的有用性。我们认为,这是允许将肾脏区域分割(划分)为可分离部分(即肾脏,肿瘤和血管树)的第一个解决方案。

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