Chen Weijie, Giger Maryellen L, Bick Ulrich, Newstead Gillian M
Department of Radiology, Committee on Medical Physics, The University of Chicago, Chicago, Illinois 60637, USA.
Med Phys. 2006 Aug;33(8):2878-87. doi: 10.1118/1.2210568.
Dynamic contrast-enhanced magnetic resonance imaging (DCE-MRI) of the breast is being used increasingly in the detection and diagnosis of breast cancer as a complementary modality to mammography and sonography. Although the potential diagnostic value of kinetic curves in DCE-MRI is established, the method for generating kinetic curves is not standardized. The inherent reason that curve identification is needed is that the uptake of contrast agent in a breast lesion is often heterogeneous, especially in malignant lesions. It is accepted that manual region of interest selection in 4D breast magnetic resonance (MR) images to generate the kinetic curve is a time-consuming process and suffers from significant inter- and intraobserver variability. We investigated and developed a fuzzy c-means (FCM) clustering-based technique for automatically identifying characteristic kinetic curves from breast lesions in DCE-MRI of the breast. Dynamic contrast-enhanced MR images were obtained using a T1-weighted 3D spoiled gradient echo sequence with Gd-DTPA dose of 0.2 mmol/kg and temporal resolution of 69 s. FCM clustering was applied to automatically partition the signal-time curves in a segmented 3D breast lesion into a number of classes (i.e., prototypic curves). The prototypic curve with the highest initial enhancement was selected as the representative characteristic kinetic curve (CKC) of the lesion. Four features were then extracted from each characteristic kinetic curve to depict the maximum contrast enhancement, time to peak, uptake rate, and washout rate of the lesion kinetics. The performance of the kinetic features in the task of distinguishing between benign and malignant lesions was assessed by receiver operating characteristic analysis. With a database of 121 breast lesions (77 malignant and 44 benign cases), the classification performance of the FCM-identified CKCs was found to be better than that from the curves obtained by averaging over the entire lesion and similar to kinetic curves generated from regions drawn within the lesion by a radiologist experienced in breast MRI.
乳腺动态对比增强磁共振成像(DCE-MRI)作为乳腺X线摄影和超声检查的补充手段,在乳腺癌的检测和诊断中应用越来越广泛。尽管DCE-MRI中动力学曲线的潜在诊断价值已得到认可,但生成动力学曲线的方法尚未标准化。需要进行曲线识别的内在原因是乳腺病变中造影剂的摄取通常不均匀,尤其是在恶性病变中。人们公认,在4D乳腺磁共振(MR)图像中手动选择感兴趣区域以生成动力学曲线是一个耗时的过程,并且观察者之间和观察者内部存在显著差异。我们研究并开发了一种基于模糊c均值(FCM)聚类的技术,用于从乳腺DCE-MRI中的乳腺病变自动识别特征动力学曲线。使用T1加权3D扰相梯度回波序列获得动态对比增强MR图像,钆喷酸葡胺剂量为0.2 mmol/kg,时间分辨率为69秒。应用FCM聚类将分割后的3D乳腺病变中的信号-时间曲线自动划分为多个类别(即原型曲线)。选择初始增强最高的原型曲线作为病变的代表性特征动力学曲线(CKC)。然后从每条特征动力学曲线中提取四个特征,以描述病变动力学的最大对比增强、达峰时间、摄取率和廓清率。通过受试者工作特征分析评估动力学特征在区分良性和恶性病变任务中的性能。在一个包含121个乳腺病变(77例恶性和44例良性病例)的数据库中,发现FCM识别的CKC的分类性能优于通过对整个病变进行平均获得的曲线,并且与由一位在乳腺MRI方面经验丰富的放射科医生在病变内绘制的区域生成的动力学曲线相似。