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首页> 外文期刊>BioMed research international >CEUS Helps to Rerate Small Breast Tumors of BI-RADS Category 3 and Category 4
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CEUS Helps to Rerate Small Breast Tumors of BI-RADS Category 3 and Category 4

机译:CEUS帮助评估BI-RADS 3类和4类小乳腺肿瘤

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Purpose. The primary aim of this study was to explore if classification, whether using the BI-RADS categories based on CEUS or conventional ultrasound, was conducive to the identification of benign and malignant category 3 or 4 small breast lesions.Material and Methods. We evaluated 30 malignant and 77 benign small breast lesions using CEUS. The range of enhancement, type of enhancement strength, intensity of enhancement, and enhancement patterns were independent factors included to assess the BI-RADS categories.Results. Of the nonenhanced breast lesions, 97.8% (44/45) were malignant, while, of the hyperplasic nodules, 96.8% (30/31) showed no enhancement in our study. Category changes of the lesions were made according to the features determined using CEUS. The results showed that these features could improve diagnostic sensitivity (from 70.0 to 80.0, 80.0, 90.0, and 90.0%), reduce the negative likelihood ratio (from 0.33 to 0.22, 0.25, 0.11, and 0.12), and improve the NPV (from 88.8 to 92.2, 91.2, 96.2, and 95.5%). However, this was not conducive to improve diagnostic specificity or the PPV.Conclusion. The vast majority of nonenhanced small breast lesions were malignant and most of the hyperplasic nodules showed no contrast enhancement. As a reference, CEUS was helpful in identifying BI-RADS category 3 or 4 small breast lesions.
机译:目的。这项研究的主要目的是探讨使用基于CEUS的BI-RADS分类还是常规超声分类是否有助于识别良性和恶性3或4类小乳腺病变。材料与方法。我们使用CEUS评估了30例恶性和77例良性乳腺小病变。增强范围,增强强度类型,增强强度和增强模式是评估BI-RADS类别的独立因素。在未增强的乳腺病变中,有97.8%(44/45)是恶性的,而在增生性结节中,有96.8%(30/31)没有改善。根据使用CEUS确定的特征进行病变的类别改变。结果表明,这些功能可以提高诊断灵敏度(从70.0到80.0、80.0、90.0和90.0%),降低负似然比(从0.33到0.22、0.25、0.11和0.12),并改善NPV(从88.8至92.2、91.2、96.2和95.5%)。但是,这不利于提高诊断特异性或PPV。结论。绝大多数未增强的小乳腺病变是恶性的,大多数增生性结节均未显示对比度增强。作为参考,CEUS有助于识别BI-RADS 3或4类小乳腺病变。

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