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Data mining framework for breast lesion classification in shear wave ultrasound: A hybrid feature paradigm

机译:剪切波超声中乳腺病变分类的数据挖掘框架:混合特征范式

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Assessment of elasticity parameters of breast using ultrasound elastography (USE) provides exclusive information about the cancerous tissue. Shear wave elastography (SWE), a new USE imaging procedure is increasingly used for elasticity evaluation of breast lesions. SWE examination is gaining popularity in the characterization of benign and malignant breast lesions as it has high diagnostic performance accuracy. However, some degree of manual errors, such as probe compression or movement may cause inaccurate results. In addition, the systems cannot measure elasticity values in small lesions where the tissues do not vibrate enough. Thus, computer-aided methods suppress these technical or manual limitations of SWE during evaluation of breast lesions. Therefore, this paper proposes, a novel methodology for characterization of benign and malignant breast lesions using SWE. Original SWE image is subjected to three levels of Discrete wavelet transform (DWT) to obtain different coefficients. Second order statistics (Run Length Statistics) and Hu's moments features are extracted from DWF coefficients. Extracted features are subjected to sequential forward selection (SFS) method to obtain the significant features and ranked using ReliefF feature ranking technique. Ranked features are fed to different classifiers for automated characterization of benign and malignant breast lesions. Our proposed technique achieved a significant accuracy of 93.59%, sensitivity of 90.41% and specificity of 96.39% using only three features. In addition, a unique integrated index named Shear Wave Breast Cancer Risk Index (sBCRI) is formulated for characterization of malignant and benign breast lesion using only two features. The proposed index, sBCRI, provides a single number which characterizes the malignant and benign cancer faster. This system can be employed as an ideal screening tool as it has high sensitivity and low false-positive rate. Hence, the women with benign lesions need not undergo unnecessary biopsies. (C) 2016 Elsevier Ltd. All rights reserved.
机译:使用超声弹性成像(USE)评估乳房的弹性参数可提供有关癌组织的独家信息。剪切波弹性成像(SWE),一种新的USE成像程序,越来越多地用于乳腺病变的弹性评估。 SWE检查具有很高的诊断性能准确性,因此在乳腺良性和恶性病变的表征中越来越受欢迎。但是,某些程度的手动错误(例如探头压缩或移动)可能会导致结果不准确。此外,该系统无法测量组织振动不足的小病变中的弹性值。因此,计算机辅助方法抑制了乳腺病变评估过程中SWE的这些技术或手动限制。因此,本文提出了一种使用SWE表征乳腺良恶性病变的新方法。对原始SWE图像进行三个级别的离散小波变换(DWT),以获得不同的系数。从DWF系数中提取二阶统计量(游程长度统计量)和Hu的矩特征。对提取的特征进行顺序前向选择(SFS)方法以获得重要特征,并使用ReliefF特征分级技术对其进行分级。分级的特征被馈送到不同的分类器,以自动表征良性和恶性乳腺病变。我们提出的技术仅使用三个功能即可达到93.59%的显着准确度,90.41%的灵敏度和96.39%的特异性。此外,制定了一个独特的综合指数,称为“横波乳腺癌风险指数”(sBCRI),仅使用两个功能即可表征恶性和良性乳腺病变。拟议的指标sBCRI提供了一个单一数字,可以更快地表征恶性和良性癌症。该系统具有高灵敏度和低假阳性率,因此可以用作理想的筛查工具。因此,具有良性病变的妇女无需进行不必要的活检。 (C)2016 Elsevier Ltd.保留所有权利。

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