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首页> 外文期刊>Medical Physics >Computerized characterization of breast masses on three-dimensional ultrasound volumes.
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Computerized characterization of breast masses on three-dimensional ultrasound volumes.

机译:三维超声体积上乳房肿块的计算机表征。

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摘要

We are developing computer vision techniques for the characterization of breast masses as malignant or benign on radiologic examinations. In this study, we investigated the computerized characterization of breast masses on three-dimensional (3-D) ultrasound (US) volumetric images. We developed 2-D and 3-D active contour models for automated segmentation of the mass volumes. The effect of the initialization method of the active contour on the robustness of the iterative segmentation method was studied by varying the contour used for its initialization. For a given segmentation, texture and morphological features were automatically extracted from the segmented masses and their margins. Stepwise discriminant analysis with the leave-one-out method was used to select effective features for the classification task and to combine these features into a malignancy score. The classification accuracy was evaluated using the area Az under the receiver operating characteristic (ROC) curve, as well as the partial area index Az(0.9), defined as the relative area under the ROC curve above a sensitivity threshold of 0.9. For the purpose of comparison with the computer classifier, four experienced breast radiologists provided malignancy ratings for the 3-D US masses. Our dataset consisted of 3-D US volumes of 102 biopsied masses (46 benign, 56 malignant). The classifiers based on 2-D and 3-D segmentation methods achieved test Az values of 0.87+/-0.03 and 0.92+/-0.03, respectively. The difference in the Az values of the two computer classifiers did not achieve statistical significance. The Az values of the four radiologists ranged between 0.84 and 0.92. The difference between the computer's Az value and that of any of the four radiologists did not achieve statistical significance either. However, the computer's Az(0.9) value was significantly higher than that of three of the four radiologists. Our results indicate that an automated and effective computer classifier can be designed for differentiating malignant and benign breast masses on 3-D US volumes. The accuracy of the classifier designed in this study was similar to that of experienced breast radiologists.
机译:我们正在开发计算机视觉技术,用于在放射检查中将乳腺肿块表征为恶性或良性。在这项研究中,我们调查了三维(3-D)超声(US)体积图像上的乳房肿块的计算机表征。我们开发了2-D和3-D活动轮廓模型,用于自动分割质量。通过改变用于初始化轮廓的轮廓,研究了主动轮廓的初始化方法对迭代分割方法的鲁棒性的影响。对于给定的分割,从分割的块及其边缘自动提取纹理和形态特征。采用留一法的逐步判别分析为分类任务选择有效特征,并将这些特征组合为恶性评分。使用接收器工作特性(ROC)曲线下的面积Az以及部分面积指数Az(0.9)定义分类精度,该局部面积指数Az(0.9)定义为灵敏度阈值高于0.9的ROC曲线下的相对面积。为了与计算机分类器进行比较,四名经验丰富的乳腺放射科医生对美国3-D肿块进行了恶性评级。我们的数据集由102个活检肿块(46例良性,56例恶性)的3D美国体积组成。基于2-D和3-D分割方法的分类器分别获得的测试Az值分别为0.87 +/- 0.03和0.92 +/- 0.03。两个计算机分类器的Az值差异未达到统计显着性。四位放射科医生的Az值在0.84至0.92之间。计算机的Az值与四位放射线医生中任何一个的Az值之间的差异也没有达到统计学意义。但是,计算机的Az(0.9)值显着高于四位放射科医生中的三位。我们的结果表明,可以设计一种自动有效的计算机分类器,以区分3D美国容积的恶性和良性乳腺肿块。在这项研究中设计的分类器的准确性与经验丰富的乳腺放射科医生相似。

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