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Feature based analysis of axial-shear strain imaging for breast mass classification

机译:基于特征的轴向剪切应变成像对乳房质量分类的分析

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Normal and shear strain elastography have demonstrated the potential for differentiating benign from malignant breast masses in-vivo. In this paper we present classification results using multiple features that are exacted from axial-strain images, including the size ratio (SR), and stiffness contrast (CN) and the normalized axial shear strain area (NASSA) feature from axial-shear strain images. We report on the analysis of images obtained from 109 radiofrequency data sets acquired from three different hospitals with a benign/malignant (B/M) ratio of 58/51 established via biopsy results. Radiofrequency data were acquired during a free-hand palpation study using Siemens Antares or Elegra clinical ultrasound systems. Axial displacement and strains were estimated using a multi-level pyramid based two-dimensional cross-correlation algorithm. Since the mass boundaries on 19 of the B-mode images were isoechoic, size ratio analysis could be performed only on 90 data sets. Receiver operating characteristic (ROC) analysis using leave-one-out approach shows that the area under the curve (AUC) for the NASSA feature alone was 0.90 and the stiffness contrast was 0.61 for 109 patients. The AUC for the size ratio feature was 0.84 based on 90 cases. A linear support vector machine using a leave-one-out cross-validation approach was used to study the performance improvement obtained using a combination of these features. Since the size ratio feature was only available for 90 cases, the ROC analysis for the combined features was done on 90 patients. The best classification performance was obtained with the utilization of all the features with an AUC of 0.94. ROC analysis demonstrates the potential of using the above combination of strain features for in-vivo breast mass differentiation.
机译:正常和剪切应变弹性成像已证明有可能在体内区分良性和恶性乳腺肿块。在本文中,我们使用从轴向应变图像中精确提取的多个特征来提供分类结果,包括从轴向剪切应变图像中获得的尺寸比(SR)和刚度对比(CN)以及归一化轴向剪切应变面积(NASSA)特征。我们报告了对从三家不同医院获得的109个射频数据集获得的图像进行分析的报告,这些数据通过活检结果确定为良性/恶性(B / M)比为58/51。射频数据是在使用西门子Antares或Elegra临床超声系统的徒手触诊研究中获得的。使用基于多层金字塔的二维互相关算法估计轴向位移和应变。由于19幅B模式图像上的质量边界是等回声的,因此只能对90个数据集执行大小比率分析。使用留一法的受试者工作特征(ROC)分析显示,对于109例患者,仅NASSA特征的曲线下面积(AUC)为0.90,刚度对比为0.61。基于90例病例,大小比例特征的AUC为0.84。使用留一法交叉验证方法的线性支持向量机用于研究结合这些功能获得的性能改进。由于尺寸比例功能仅适用于90例患者,因此对90例患者进行了组合功能的ROC分析。利用所有特征的AUC为0.94可获得最佳分类性能。 ROC分析证明了使用上述应变特征组合进行体内乳腺肿块分化的潜力。

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