Segmentation and classification of triple negative breast cancers using DCE-MRI

S. Agner, Jun Xu, Hussain Fatakdawala, S. Ganesan, A. Madabhushi, S. Englander, M. Rosen, K. Thomas, M. Schnall, M. Feldman, J. Tomaszeweski
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引用次数: 23

Abstract

Triple-negative (TN) breast cancer has gained much interest recently due to its lack of response to receptor-targeted therapies and its aggressive clinical nature. In this study, we evaluate the ability of a computer-aided diagnosis (CAD) system to not only distinguish benign from malignant lesions on dynamic contrast-enhanced magnetic resonance imaging (DCE-MRI), but also to quantitatively distinguish triple negative breast cancers from other molecular subtypes of breast cancer. 41 breast lesions (24 malignant, 17 benign) as imaged on DCE-MRI were included in the dataset. Of the 24 malignant cases, 13 were of the TN phenotype. Using the dynamic signal intensity information from the DCE-MRIs, an Expectation Maximization-driven active contours scheme is used to automatically segment the breast lesions. Following quantitative morphological, textural, and kinetic feature extraction, a support vector machine classifier was employed to distinguish (a) benign from malignant lesions and (b) TN from non-TN cancers. In the former case, the classifier yielded an accuracy of 83%, sensitivity of 79%, and specificity of 88%. In distinguishing TN from non-TN cases, the classifier had an accuracy of 92%, sensitivity of 92%, and specificity of 91%. The results suggest that the TN phenotype has distinct and quantifiable signatures on DCE-MRI that will be instrumental in the early detection of this aggressive breast cancer subtype.
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DCE-MRI对三阴性乳腺癌的分割和分类
三阴性(TN)乳腺癌由于其对受体靶向治疗缺乏反应和具有侵袭性的临床性质,最近引起了人们的广泛关注。在这项研究中,我们评估了计算机辅助诊断(CAD)系统的能力,不仅可以通过动态对比增强磁共振成像(DCE-MRI)区分良性和恶性病变,还可以定量区分三阴性乳腺癌和其他分子亚型乳腺癌。数据集中包括DCE-MRI成像的41个乳腺病变(24个恶性,17个良性)。在24例恶性病例中,13例为TN表型。利用dce - mri的动态信号强度信息,采用期望最大化驱动的主动轮廓方案对乳腺病变进行自动分割。在定量形态学、纹理和动力学特征提取之后,使用支持向量机分类器来区分(a)良性病变和恶性病变,(b) TN癌和非TN癌。在前一种情况下,分类器的准确率为83%,灵敏度为79%,特异性为88%。在区分TN和非TN病例时,分类器的准确率为92%,灵敏度为92%,特异性为91%。结果表明,TN表型在DCE-MRI上具有明显且可量化的特征,这将有助于这种侵袭性乳腺癌亚型的早期检测。
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