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Automated segmentation of muscle and adipose tissue on CTimages for human body composition analysis

机译:人体成分分析CTImages肌肉和脂肪组织的自动分割

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The ability to compute body composition in cancer patients lends itself to determining the specific clinical outcomes associated with fat and lean tissue stores. For example, a wasting syndrome of advanced disease associates with shortened survival. Moreover, certain tissue compartments represent sites for drug distribution and are likely determinants of chemotherapy efficacy and toxicity. CT images are abundant, but these cannot be fully exploited unless there exist practical and fast approaches for tissue quantification. Here we propose a fully automated method for segmenting muscle, visceral and subcutaneous adipose tissues, taking the approach of shape modeling for the analysis of skeletal muscle. Muscle shape is represented using PCA encoded Free Form Deformations with respect to a mean shape. The shape model is learned from manually segmented images and used in conjunction with a tissue appearance prior. VAT and SAT are segmented based on the final deformed muscle shape. In comparing the automatic and manual methods, coefficients of variation (COV) (1 — 2%), were similar to or smaller than inter- and intra-observer COVs reported for manual segmentation.
机译:计算癌症患者身体组成的能力赋予了确定与脂肪和瘦组织储存相关的特定临床结果。例如,具有缩短生存率的晚期疾病联系人的浪费综合症。此外,某些组织隔间代表药物分布的部位,可能是化疗疗效和毒性的决定因素。 CT图像丰富,但除非存在有关组织量化的实用和快速方法,否则这些不能完全利用。在这里,我们提出了一种全自动方法,用于分割肌肉,内脏和皮下脂肪组织,采用形状建模的方法进行骨骼肌的分析。使用PCA与平均形状的PCA编码的自由形状变形表示肌肉形状。从手动分段图像中学习形状模型,并在先前结​​合组织外观。基于最终变形的肌肉形状进行增值税和饱和度。在比较自动和手动方法时,变异系数(COV)(1-2%)类似于或小于报告用于手动分割的和观察者内部COV。

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