Chen Weijie, Giger Maryellen L, Lan Li, Bick Ulrich
Department of Radiology, The University of Chicago, MC 2026, 5841 South Maryland Avenue, Chicago, Illinois 60637, USA.
Med Phys. 2004 May;31(5):1076-82. doi: 10.1118/1.1695652.
The advantages of breast MRI using contrast agent Gd-DTPA in the diagnosis of breast cancer have been well established. The variation of interpretation criteria and absence of interpretation guidelines, however, is a major obstacle for applications of MRI in the routine clinical practice of breast imaging. Our study aims to increase the objectivity and reproducibility of breast MRI interpretation by developing an automated interpretation approach for ultimate use in computer-aided diagnosis. The database in this study contains 121 cases: 77 malignant and 44 benign masses as revealed by biopsy. Images were obtained using a T1-weighted 3D spoiled gradient echo sequence. After the acquisition of the precontrast series, Gd-DTPA contrast agent was injected intravenously by power injection with a dose of 0.2 mmol/kg. Five postcontrast series were then taken with a time interval of 60 s. Each series contained 64 coronal slices with a matrix of 128 x 256 pixels and an in-plane resolution of 1.25 x 1.25 mm2. Slice thickness ranged from 2 to 3 mm depending on breast size. The lesions were delineated by an experienced radiologist as well as independently by computer using an automatic volume-growing algorithm. Fourteen features that were extracted automatically from the lesions could be grouped into three categories based on (I) morphology, (II) enhancement kinetics, and (III) time course of enhancement-variation over the lesion. A stepwise feature selection procedure was employed to select an effective subset of features, which were then combined by linear discriminant analysis (LDA) into a discriminant score, related to the likelihood of malignancy. The classification performances of individual features and the combined discriminant score were evaluated with receiver operating characteristic (ROC) analysis. With the radiologist-delineated lesion contours, stepwise feature selection yielded four features and an Az value of 0.80 for the LDA in leave-one-out cross-validation testing. With the computer-segmented lesion volumes, it yielded six features and an Az value of 0.86 for the LDA in the leave-one-out testing.
使用造影剂钆喷酸葡胺(Gd-DTPA)的乳腺磁共振成像(MRI)在乳腺癌诊断中的优势已得到充分证实。然而,解读标准的差异以及缺乏解读指南是MRI在乳腺成像常规临床实践中应用的主要障碍。我们的研究旨在通过开发一种最终用于计算机辅助诊断的自动解读方法,提高乳腺MRI解读的客观性和可重复性。本研究中的数据库包含121例病例:经活检证实77例为恶性肿块,44例为良性肿块。图像采用T1加权三维扰相梯度回波序列获取。在采集造影前序列后,以0.2 mmol/kg的剂量通过高压注射器静脉注射Gd-DTPA造影剂。然后每隔60秒采集五个造影后序列。每个序列包含64个冠状位切片,矩阵为128×256像素,平面分辨率为1.25×1.25 mm2。根据乳房大小,切片厚度范围为2至3 mm。病变由一位经验丰富的放射科医生勾勒轮廓,同时计算机使用自动体积增长算法独立勾勒轮廓。从病变中自动提取的14个特征可根据以下三类进行分组:(I)形态学,(II)增强动力学,以及(III)病变增强变化的时间过程。采用逐步特征选择程序选择有效的特征子集,然后通过线性判别分析(LDA)将其组合成一个与恶性可能性相关的判别分数。使用受试者操作特征(ROC)分析评估各个特征和组合判别分数的分类性能。对于由放射科医生勾勒的病变轮廓,在留一法交叉验证测试中,逐步特征选择产生了四个特征,LDA的Az值为0.80。对于计算机分割的病变体积,在留一法测试中,它产生了六个特征,LDA的Az值为0.86。