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Computer-aided diagnosis for the classification of breast masses in automated whole breast ultrasound images.

机译:用于自动全乳超声图像中乳腺肿块分类的计算机辅助诊断。

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New automated whole breast ultrasound (ABUS) machines have recently been developed and the ultrasound (US) volume dataset of the whole breast can be acquired in a standard manner. The purpose of this study was to develop a novel computer-aided diagnosis system for classification of breast masses in ABUS images. One hundred forty-seven cases (76 benign and 71 malignant breast masses) were obtained by a commercially available ABUS system. Because the distance of neighboring slices in ABUS images is fixed and small, these continuous slices were used for reconstruction as three-dimensional (3-D) US images. The 3-D tumor contour was segmented using the level-set segmentation method. Then, the 3-D features, including the texture, shape and ellipsoid fitting were extracted based on the segmented 3-D tumor contour to classify benign and malignant tumors based on the logistic regression model. The Student's t test, Mann-Whitney U test and receiver operating characteristic (ROC) curve analysis were used for statistical analysis. From the Az values of ROC curves, the shape features (0.9138) are better than the texture features (0.8603) and the ellipsoid fitting features (0.8496) for classification. The difference was significant between shape and ellipsoid fitting features (p = 0.0382). However, combination of ellipsoid fitting features and shape features can achieve a best performance with accuracy of 85.0% (125/147), sensitivity of 84.5% (60/71), specificity of 85.5% (65/76) and the area under the ROC curve Az of 0.9466. The results showed that ABUS images could be used for computer-aided feature extraction and classification of breast tumors.
机译:最近已经开发了新的自动化全乳超声(ABUS)机器,并且可以以标准方式获取整个乳的超声(US)体积数据集。这项研究的目的是开发一种新型的计算机辅助诊断系统,用于对ABUS图像中的乳腺肿块进行分类。通过商业上可获得的ABUS系统获得了147例(76例良性和71例恶性乳腺肿块)。由于ABUS图像中相邻切片的距离固定且很小,因此将这些连续切片用于重建为三维(3-D)US图像。使用水平集分割方法对3-D肿瘤轮廓进行分割。然后,基于分割的3-D肿瘤轮廓提取包括纹理,形状和椭圆形拟合的3-D特征,以基于逻辑回归模型对良性和恶性肿瘤进行分类。统计分析使用了学生t检验,Mann-Whitney U检验和接收者工作特征(ROC)曲线分析。从ROC曲线的Az值来看,形状特征(0.9138)优于纹理特征(0.8603)和椭圆拟合特征(0.8496)进行分类。形状和椭圆拟合特征之间的差异是显着的(p = 0.0382)。但是,椭圆形拟合特征和形状特征的组合可以达到最佳性能,其准确度为85.0%(125/147),灵敏度为84.5%(60/71),特异性为85.5%(65/76)且在其下方区域ROC曲线Az为0.9466。结果表明,ABUS图像可用于乳腺肿瘤的计算机辅助特征提取和分类。

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