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定量成像:利用统计形状模型在CT上对肝脏形状进行量化以评估肝纤维化。

Quantitative imaging: quantification of liver shape on CT using the statistical shape model to evaluate hepatic fibrosis.

作者信息

Hori Masatoshi, Okada Toshiyuki, Higashiura Keisuke, Sato Yoshinobu, Chen Yen-Wei, Kim Tonsok, Onishi Hiromitsu, Eguchi Hidetoshi, Nagano Hiroaki, Umeshita Koji, Wakasa Kenichi, Tomiyama Noriyuki

机构信息

Department of Radiology, Osaka University Graduate School of Medicine, D1, 2-2 Yamadaoka, Suita, Osaka 565-0871, Japan.

Department of Radiology, Osaka University Graduate School of Medicine, D1, 2-2 Yamadaoka, Suita, Osaka 565-0871, Japan; Department of Surgery, Faculty of Medicine, University of Tsukuba, Tsukuba, Ibaraki, Japan.

出版信息

Acad Radiol. 2015 Mar;22(3):303-9. doi: 10.1016/j.acra.2014.10.001. Epub 2014 Dec 6.

Abstract

RATIONALE AND OBJECTIVES

To investigate the usefulness of the statistical shape model (SSM) for the quantification of liver shape to evaluate hepatic fibrosis.

MATERIALS AND METHODS

Ninety-one subjects (45 men and 46 women; age range, 20-75 years) were included in this retrospective study: 54 potential liver donors and 37 patients with chronic liver disease. The subjects were classified histopathologically according to the fibrosis stage as follows: F0 (n = 55); F1 (n = 6); F2 (3); F3 (n = 1); and F4 (n = 26). Each subject underwent contrast-enhanced computed tomography (CT) using a 64-channel scanner (0.625-mm slice thickness). An abdominal radiologist manually traced the liver boundaries on every CT section using an image workstation; the boundaries were used for subsequent analyses. An SSM was constructed by the principal component analysis of the subject data set, which defined a parametric model of the liver shapes. The shape parameters were calculated by fitting SSM to the segmented liver shape of each subject and were used for the training of a linear support vector regression (SVR), which classifies the liver fibrosis stage to maximize the area under the receiver operating characteristic curve (AUC). SSM/SVR models were constructed and were validated in a leave-one-out manner. The performance of our technique was compared to those of two previously reported types of caudate-right lobe ratios (C/RL-m and C/RL-r).

RESULTS

In our SSM/SVR models, the AUC values for the classification of liver fibrosis were 0.96 (F0 vs. F1-4), 0.95 (F0-1 vs. F2-4), 0.96 (F0-2 vs. F3-4), and 0.95 (F0-3 vs. F4). These values were significantly superior to AUC values using the C/RL-m or C/RL-r ratios (P < .005).

CONCLUSIONS

SSM was useful for estimating the stage of hepatic fibrosis by quantifying liver shape.

摘要

原理与目的

研究统计形状模型(SSM)在量化肝脏形状以评估肝纤维化方面的实用性。

材料与方法

本回顾性研究纳入了91名受试者(45名男性和46名女性;年龄范围20 - 75岁):54名潜在肝脏供体和37名慢性肝病患者。根据纤维化阶段将受试者进行如下组织病理学分类:F0(n = 55);F1(n = 6);F2(n = 3);F3(n = 1);F4(n = 26)。每位受试者使用64排螺旋CT扫描仪(层厚0.625mm)进行增强CT扫描。一名腹部放射科医生使用图像工作站在每个CT层面上手动描绘肝脏边界;这些边界用于后续分析。通过对受试者数据集进行主成分分析构建SSM,该模型定义了肝脏形状的参数模型。通过将SSM拟合到每个受试者分割后的肝脏形状来计算形状参数,并将其用于训练线性支持向量回归(SVR),该回归用于对肝纤维化阶段进行分类,以最大化受试者工作特征曲线(AUC)下的面积。构建了SSM/SVR模型并采用留一法进行验证。将我们技术的性能与之前报道的两种尾状叶 - 右叶比值(C/RL - m和C/RL - r)的性能进行比较。

结果

在我们的SSM/SVR模型中,用于肝纤维化分类的AUC值分别为0.96(F0与F1 - 4)、0.95(F0 - 1与F2 - 4)、0.96(F0 - 2与F3 - 4)和0.95(F0 - 3与F4)。这些值显著优于使用C/RL - m或C/RL - r比值时的AUC值(P <.005)。

结论

SSM通过量化肝脏形状在估计肝纤维化阶段方面是有用的。

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