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Computer-Aided Diagnosis of Solid Breast Lesions Using an Ultrasonic Multi-Feature Analysis Procedure

机译:超声多特征分析程序对乳腺实体病变的计算机辅助诊断

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We have developed a family of quantitative descriptors in order to provide noninvasive, reliable means of distinguishing benign from malignant breast lesions. These include acoustic descriptors (“echogenicity,” “heterogeneity,” “shadowing”) and morphometric descriptors (“area,” “aspect ratio,” “border irregularity,” “margin definition”). These quantitative descriptors are designed to be independent of instrument properties and physician expertise. Our analysis included manual tracing of lesion boundaries and adjacent areas on grayscale images generated from RF data. To derive quantitative acoustic features, we computed spectral-parameter maps of radio-frequency (RF) echo signals (using a sliding-window Fourier analysis) of the lesion and adjacent areas. We quantified morphometric features by geometric and fractal analysis of traced lesion boundaries. Although no single parameter can reliably discriminate cancerous from non-cancerous breast lesions, multi-feature analysis provides excellent discrimination of cancerous and non-cancerous lesions. Our analysis of data acquired during routine ultrasonic examination of 130 biopsy-scheduled patients produced a receiver-operating characteristic (ROC) area under the curve (AUC) of 0.947±0.045. Lesion-margin definition, spiculation, and border irregularity were the most useful among the quantitative descriptors; some morphometric features (such as border irregularity) also were particularly effective in lesion classification. Our results are consistent with many of the Breast Imaging Reporting and Data System (BI-RADS) breast-lesion-classification criteria in use today. DOI: http://dx.doi.org/10.3329/bjmp.v4i1.14672 Bangladesh Journal of Medical Physics Vol.4 No.1 2011 1-10
机译:我们提供了一系列定量指标,以提供无创,可靠的方法来区分良性和恶性乳腺病变。这些包括声学描述符(“回声性”,“异质性”,“阴影”)和形态计量描述符(“区域”,“长宽比”,“边界不规则”,“边距定义”)。这些定量描述符被设计为独立于仪器属性和医师专业知识。我们的分析包括在RF数据生成的灰度图像上手动跟踪病变边界和相邻区域。为了获得定量的声学特征,我们计算了病变和邻近区域的射频(RF)回波信号的频谱参数图(使用滑窗傅立叶分析)。我们通过对病灶边界进行几何和分形分析来量化形态特征。尽管没有单一参数可以可靠地区分癌灶和非癌灶,但多特征分析可以很好地区分癌灶和非癌灶。我们对130名活检预定患者的常规超声检查过程中获得的数据进行分析,得出曲线下(AUC)为0.947±0.045的接收器操作特征(ROC)区域。在定量描述语中,病变边缘的定义,针刺和边界不规则是最有用的。一些形态特征(如边界不规则)在病变分类中也特别有效。我们的结果与当今使用的许多乳房成像报告和数据系统(BI-RADS)乳房病变分类标准一致。 DOI:http://dx.doi.org/10.3329/bjmp.v4i1.14672孟加拉国医学物理学杂志2011年第4卷第1期1-10

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