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Model-Guided Segmentation of Liver in CT and PET-CT Images of Child Patients Based on Statistical Region Merging

机译:基于统计区域合并的儿童患者CT和PET-CT图像中肝的模型指导分割

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The paper introduces a novel model-guided method for liver segmentation in CT and PET-CT images. Using a model liver volume as a template and a liver shape annotated in one of the patient slices, it automatically segments the whole liver volume in the patient dataset. The method is based on non-deformable registration of the model volume to the patient data and combination of components pre-segmented by statistical region merging in each patient slice to maximise the overlap with the registered model shape. It does not require construction of probabilistic atlases, large training sets, or contrast enhancement of the portal venous phase. Its performance was tested on one CT and two PET-CT child patient scans, used alternately as patient data and, annotated by an expert, as a liver model. Additionally, subsampled and denoised data were used for testing, resulting in 21 experiments. The average accuracy measured as the Dice index between the computed volume and the expert-delineated one was 84.2±4.7 (as a percentage), which demonstrates robustness of the method to high variability in liver shape of child patients. The algorithm was developed primarily for the purpose of building voxel models of human anatomy for radiation dose calculation. The framework could be extended for segmentation of other organs and tissues necessary for construction of anatomy models.
机译:本文介绍了一种在CT和PET-CT图像中进行肝脏分割的新型模型指导方法。使用模型肝脏体积作为模板,并在其中一个患者切片中标注肝脏形状,它会自动在患者数据集中分割整个肝脏体积。该方法基于模型体积到患者数据的不可变形配准以及通过统计区域合并在每个患者切片中预分割的组件的组合,以最大化与配准的模型形状的重叠。它不需要构造概率图谱,大型训练集或增强门静脉期的对比度。在一项CT和两次PET-CT儿童患者扫描上测试了其性能,这些扫描交替用作患者数据,并由专家注释,作为肝脏模型。此外,还使用了二次采样和去噪后的数据进行测试,从而进行了21次实验。以Dice指数表示的计算得出的体积与专家描述的平均值之间的平均准确度为84.2±4.7(以百分比表示),这表明该方法对儿童患者肝脏形状的高变异性具有鲁棒性。该算法主要是为了建立人体解剖体素模型以进行辐射剂量计算而开发的。可以扩展该框架,以分割构建解剖模型所需的其他器官和组织。

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