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Automatic segmentation of lungs in SPECT images using active shape model trained by meshes delineated in CT images

机译:使用由CT图像中描绘的网格训练的活动形状模型在SPECT图像中自动分割肺

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This paper presents a fully automated method for segmentation of 3D SPECT ventilation and perfusion images. It relies on statistical information on lung shape derived by CT manual segmentation and its main processing steps are: shape model extraction, binary segmentation, positioning of mean shape in SPECT images and iterative shape adaptation based on intensity profiles and on what is considered `plausible' lung shape. The Active Shape Model is used to generate accurate anatomic results in SPECT images with functional information and thus unclear borders, especially in the case of pathologies. The method was compared against ground truth manual segmentation on CT images, using volumetric, difference dice coefficient, sensitivity and precision.
机译:本文提出了一种用于分割3D SPECT通气和灌注图像的全自动方法。它依赖于CT手动分割得出的有关肺部形状的统计信息,其主要处理步骤包括:形状模型提取,二进制分割,SPECT图像中平均形状的定位以及基于强度分布和被认为是“合理的”的迭代形状适应。肺的形状。活动形状模型用于在SPECT图像中生成具有功能信息的精确解剖结果,因此边界不清晰,尤其是在病理情况下。使用体积,差异骰子系数,灵敏度和精度,将该方法与CT图像上的地面真实手动分割方法进行了比较。

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