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基于超声 B 型特征与声弹性应变特征集成的乳腺肿块定量分类

Quantitative breast mass classification based on the integration of B-mode features and strain features in elastography.

机构信息

Graduate Institute of Biomedical Informatics, College of Medical Science and Technology, Taipei Medical University, Taipei, Taiwan; Department of Computer Science and Information Engineering, National Taiwan University, Taipei, Taiwan.

Department of Medical Imaging, National Taiwan University Hospital and National Taiwan University College of Medicine, Taipei, Taiwan.

出版信息

Comput Biol Med. 2015 Sep;64:91-100. doi: 10.1016/j.compbiomed.2015.06.013. Epub 2015 Jun 26.

Abstract

BACKGROUND

Elastography is a new sonographic imaging technique to acquire the strain information of tissues and transform the information into images. Radiologists have to observe the gray-scale distribution of tissues on the elastographic image interpreted as the reciprocal of Young's modulus to evaluate the pathological changes such as scirrhous carcinoma. In this study, a computer-aided diagnosis (CAD) system was developed to extract quantitative strain features from elastographic images to reduce operator-dependence and provide an automatic procedure for breast mass classification.

METHOD

The collected image database was composed of 45 malignant and 45 benign breast masses. For each case, tumor segmentation was performed on the B-mode image to obtain tumor contour which was then mapped to the elastographic images to define the corresponding tumor area. The gray-scale pixels around tumor area were classified into white, gray, and black by fuzzy c-means clustering to highlight stiff tissues with darker values. Quantitative strain features were then extracted from the black cluster and compared with the B-mode features in the classification of breast masses.

RESULTS

The performance of the proposed strain features achieved an accuracy of 80% (72/90), a sensitivity of 80% (36/45), a specificity of 80% (36/45), and a normalized area under the receiver operating characteristic curve, Az=0.84. Combining the strain features with the B-mode features obtained a significantly better Az=0.93, p-value<0.05.

CONCLUSIONS

Summarily, the quantified strain features can be combined with the B-mode features to provide a promising suggestion in distinguishing malignant from benign tumors.

摘要

背景

弹性成像是一种新的超声成像技术,可获取组织的应变信息并将信息转换为图像。放射科医生必须观察弹性图像上组织的灰度分布,将其解释为杨氏模量的倒数,以评估硬癌等病变。在这项研究中,开发了一种计算机辅助诊断(CAD)系统,从弹性图像中提取定量应变特征,以减少操作人员的依赖性,并为乳腺肿块分类提供自动程序。

方法

所收集的图像数据库由 45 个恶性和 45 个良性乳腺肿块组成。对于每个病例,在 B 模式图像上进行肿瘤分割,以获得肿瘤轮廓,然后将其映射到弹性图像上以定义相应的肿瘤区域。通过模糊 C 均值聚类将肿瘤区域周围的灰度像素分为白色、灰色和黑色,以突出具有较暗值的硬组织。然后从黑色簇中提取定量应变特征,并与 B 模式特征在乳腺肿块分类中进行比较。

结果

所提出的应变特征的性能达到了 80%(72/90)的准确性、80%(36/45)的灵敏度、80%(36/45)的特异性和归一化接收器工作特征曲线下面积 Az=0.84。将应变特征与 B 模式特征相结合,Az 值显著提高到 0.93,p 值<0.05。

结论

总之,定量应变特征可以与 B 模式特征相结合,为区分良恶性肿瘤提供有前途的建议。

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