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A 3-D Active Shape Model Driven by Fuzzy Inference: Application to Cardiac CT and MR

机译:基于模糊推理的3-D活动形状模型:在心脏CT和MR中的应用

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Manual quantitative analysis of cardiac left ventricular function using Multislice CT and MR is arduous because of the large data volume. In this paper, we present a 3-D active shape model (ASM) for semiautomatic segmentation of cardiac CT and MR volumes, without the requirement of retraining the underlying statistical shape model. A fuzzy c-means based fuzzy inference system was incorporated into the model. Thus, relative gray-level differences instead of absolute gray values were used for classification of 3-D regions of interest (ROIs), removing the necessity of training different models for different modalities/acquisition protocols. The 3-D ASM was evaluated using 25 CT and 15 MR datasets. Automatically generated contours were compared to expert contours in 100 locations. For CT, 82.4% of epicardial contours and 74.1% of endocardial contours had a maximum error of 5 mm along 95% of the contour arc length. For MR, those numbers were 93.2% (epicardium) and 91.4% (endocardium). Volume regression analysis revealed good linear correlations between manual and semiautomatic volumes, $r^{2}geq0.98$. This study shows that the fuzzy inference 3-D ASM is a robust promising instrument for semiautomatic cardiac left ventricle segmentation. Without retraining its statistical shape component, it is applicable to routinely acquired CT and MR studies.
机译:由于数据量大,使用Multislice CT和MR对心脏左心室功能进行人工定量分析十分繁琐。在本文中,我们提出了一种用于心脏CT和MR体积半自动分割的3-D活动形状模型(ASM),而无需重新训练基础的统计形状模型。基于模糊c均值的模糊推理系统被纳入模型。因此,使用相对灰度级差异而不是绝对灰度值对3D感兴趣区域(ROI)进行分类,从而消除了针对不同的模式/获取协议训练不同模型的必要性。使用25个CT和15个MR数据集评估了3-D ASM。将自动生成的轮廓与100个位置的专家轮廓进行比较。对于CT,沿轮廓弧长的95%,心外膜轮廓的82.4%和心内膜轮廓的74.1%的最大误差为5 mm。对于MR,这些数字分别为93.2%(心内膜)和91.4%(心内膜)。体积回归分析显示手动和半自动体积$ r ^ {2} geq0.98 $之间具有良好的线性相关性。这项研究表明,模糊推理3-D ASM是半自动心脏左心室分割的有力工具。在不重新训练其统计形状成分的情况下,它适用于常规获取的CT和MR研究。

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