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Quantitative ultrasound examination of peritumoral tissue improves classification of breast lesions

机译:Peritumoral组织的定量超声检查改善了乳腺病变的分类

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Quantitative Ultrasound (QUS) methods showed high suitability for classifying malignant and benign tumors based on ultrasound data from suspicious breast lesions. Apart from differences in internal structure, malignant and benign tumors have been also shown to have different effects on neighboring tissues. In our previous work we investigated the usefulness of QUS methods based on ultrasound data from surroundings of breast tumors. The present study is an attempt to answer the question of the optimal area of the surroundings to be used. The study included 116 tumors whose malignancy was determined by histopathological examination of biopsy samples. The parameters used in tumor classification were the shape parameter of the Nakagami distribution and ten texture parameters. The Linear Discriminant Analysis and the Leave-One-Out cross-validation were used to classify tumors. Classification results were assessed based on the area under the ROC curve (AUC). The best multi-parametric classifier for intra-tumor data has reached AUC = 0.82. In case of the data from the tumor surrounding area the best classification result was AUC = 0.89 and it was obtained for the surroundings range of 5 mm.
机译:定量超声(QUS)方法表明,根据来自可疑乳腺病变的超声数据对恶性和良性肿瘤进行分类的高适合性。除内部结构的差异外,恶性和良性肿瘤也已显示对邻近组织产生不同的影响。在我们之前的工作中,我们根据来自乳腺肿瘤周围环境的超声数据调查了QUS方法的有用性。本研究是一种试图回答要使用的周围环境的最佳区域的问题。该研究包括116个肿瘤,其恶性肿瘤通过活组织检查样品的组织病理学检查确定。肿瘤分类中使用的参数是NAKAGAMI分布的形状参数和十个纹理参数。线性判别分析和休假交叉验证用于对肿瘤进行分类。基于ROC曲线(AUC)下的区域评估分类结果。用于肿瘤内数据的最佳多参数分类器已达到AUC = 0.82。在来自肿瘤周围区域的数据的情况下,最好的分类结果是AUC = 0.89,并且获得5mm的周围环境。

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