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首页> 外文期刊>Ultrasound in Medicine and Biology >Small Breast Lesion Classification Performance Using the Normalized Axial-Shear Strain Area Feature
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Small Breast Lesion Classification Performance Using the Normalized Axial-Shear Strain Area Feature

机译:使用归一化轴向剪切应变区特征的小乳房病变分类性能

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Breast cancers that are found and confirmed because they are causing symptoms tend to be larger and are more likely to have already spread to the lymph nodes and beyond. Thus, early detection and confirmation are of paramount importance. The normalized axial-shear strain area (NASSA) feature from the axial-shear strain elastogram (ASSE) has been shown to be a feature that can identify the boundary-bonding conditions that are indicative of the presence of cancer. Recently, we investigated and reported on the potential of the NASSA feature for breast lesion classification into fibroadenomas and cancers. In this article, we investigate the size distribution of the lesions that were part of the previous study and analyze classification performance specifically on small lesions (<10 mm diameter). A total of 33 biopsy-proven malignant tumors and 30 fibroadenomas were part of the study that involved three observers blinded to the Breast Imaging Reporting and Data System (BIRADS) ultrasound scores. The observers outlined the lesions on the sonograms and the lesion size (maximum circle-equivalent diameter in millimeters) was computed from this outline. The ASSE was automatically segmented and color-overlaid on the sonogram, and the NASSA feature from ASSE was computed semi-automatically. Receiver operating characteristic curves were then generated for the subset of cases involving small lesions. Box plots were produced for the two different lesion size groups, small and large, from a logistic regression classifier that was built previously. The results of our study show that approximately 38% and 22% of the fibroadenomas and cancers, respectively, were small. Furthermore, it was found that the NASSA feature resulted in a perfect classification of the small lesions, both in the training data and in the cross-validation. For lesions <10 mm the difference in fibroadenoma and cancer mean scores was 0.73 ± 0.13 (p < 0.001), whereas lesions >10 mm had a difference of 0.52 ± 0.24 (p < 0.001). The results also showed that the small lesions actually had better classification than the larger lesions (>10 mm). These results suggest that the ASSE feature can work equally well, even on small lesions, to improve the standard ultrasound BIRADS-based breast lesion classification of fibroadenoma and malignant tumors.
机译:被发现并证实是由于它们引起症状的乳腺癌往往更大,并且更可能已经扩散到淋巴结及以后。因此,早期检测和确认至关重要。轴向剪切应变弹性图(ASSE)的归一化轴向剪切应变区域(NASSA)特征已被证明是可以识别指示癌症存在的边界结合条件的特征。最近,我们调查并报道了NASSA功能将乳腺病变分类为纤维腺瘤和癌症的潜力。在本文中,我们调查了先前研究的一部分病变的大小分布,并专门针对小病变(直径<10 mm)分析了分类性能。共有33例经活检证实的恶性肿瘤和30例纤维腺瘤是该研究的一部分,涉及三名对乳腺影像报告和数据系统(BIRADS)超声评分不了解的观察员。观察者在超声图上勾勒出病灶,并根据此轮廓计算病灶大小(最大圆形等效直径,单位为毫米)。自动分割ASSE并将其颜色叠加在超声图上,并且ASSE的NASSA功能是半自动计算的。然后针对涉及小病灶的病例子集生成受试者工作特征曲线。根据先前建立的逻辑回归分类器,针对大小不同的两个不同病变大小组绘制了箱形图。我们的研究结果表明,纤维腺瘤和癌症分别约占38%和22%。此外,发现在训练数据和交叉验证中,NASSA功能都可以对小病变进行完美分类。对于<10 mm的病变,纤维腺瘤和癌症平均评分的差异为0.73±0.13(p <0.001),而> 10 mm的病变则为0.52±0.24(p <0.001)。结果还表明,小病变实际上比大病变(> 10 mm)具有更好的分类。这些结果表明,即使在较小的病变上,ASSE功能也可以很好地发挥作用,以改善基于标准的BIRADS超声对纤维腺瘤和恶性肿瘤的乳房病变分类。

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