Dalmış Mehmet Ufuk, Gubern-Mérida Albert, Vreemann Suzan, Karssemeijer Nico, Mann Ritse, Platel Bram
Radiology and Nuclear Medicine, Radboud University Medical Center, Geert Grooteplein 10, Route 766 Nijmegen, Gelderland 6500 HB, The Netherlands.
Med Phys. 2016 Jan;43(1):84. doi: 10.1118/1.4937787.
With novel MRI sequences, high spatiotemporal resolution has become available in dynamic contrast-enhanced magnetic resonance imaging (DCE-MRI) of the breast. Since benign structures in the breast can show enhancement similar to malignancies in DCE-MRI, characterization of detected lesions is an important problem. The purpose of this study is to develop a computer-aided diagnosis (CADx) system for characterization of breast lesions imaged with high spatiotemporal resolution DCE-MRI.
The developed CADx system is composed of four main parts: semiautomated lesion segmentation, automated computation of morphological and dynamic features, aorta detection, and classification between benign and malignant categories. Lesion segmentation is performed by using a "multiseed smart opening" algorithm. Five morphological features were computed based on the segmentation of the lesion. For each voxel, contrast enhancement curve was fitted to an exponential model and dynamic features were computed based on this fitted curve. Average and standard deviations of the dynamic features were computed over the entire segmented area, in addition to the average value in an automatically selected smaller "most suspicious region." To compute the dynamic features for an enhancement curve, information of aortic enhancement is also needed. To keep the system fully automated, the authors developed a component which automatically detects the aorta and computes the aortic enhancement time. The authors used random forests algorithm to classify benign lesions from malignant. The authors evaluated this system in a dataset of breast MRI scans of 325 patients with 223 malignant and 172 benign lesions and compared its performance to an existing approach. The authors also evaluated the classification performances for ductal carcinoma in situ (DCIS), invasive ductal carcinoma (IDC), and invasive lobular carcinoma (ILC) lesions separately. The classification performances were measured by receiver operating characteristic (ROC) analysis in a leave-one-out cross validation scheme.
The area under the ROC curve (AUC) obtained by the proposed CADx system was 0.8543, which was significantly higher (p = 0.007) than the performance obtained by the previous CADx system (0.8172) on the same dataset. The AUC values for DCIS, IDC, and ILC lesions were 0.7924, 0.8688, and 0.8650, respectively.
The authors developed a CADx system for high spatiotemporal resolution DCE-MRI of the breast. This system outperforms a previously proposed system in classifying benign and malignant lesions, while it requires less user interactions.
借助新型MRI序列,在乳腺动态对比增强磁共振成像(DCE-MRI)中已可实现高时空分辨率。由于乳腺中的良性结构在DCE-MRI中可表现出与恶性肿瘤相似的强化,因此对检测到的病变进行特征描述是一个重要问题。本研究的目的是开发一种计算机辅助诊断(CADx)系统,用于对具有高时空分辨率DCE-MRI成像的乳腺病变进行特征描述。
所开发的CADx系统由四个主要部分组成:半自动病变分割、形态学和动态特征的自动计算、主动脉检测以及良性和恶性类别分类。病变分割采用“多种子智能开运算”算法。基于病变分割计算了五个形态学特征。对于每个体素,将对比增强曲线拟合为指数模型,并基于此拟合曲线计算动态特征。除了在自动选择的较小“最可疑区域”中的平均值外,还计算了整个分割区域内动态特征的平均值和标准差。为了计算增强曲线的动态特征,还需要主动脉增强的信息。为了使系统完全自动化,作者开发了一个组件,该组件可自动检测主动脉并计算主动脉增强时间。作者使用随机森林算法对良性病变和恶性病变进行分类。作者在一个包含325例患者的乳腺MRI扫描数据集中评估了该系统,其中有223个恶性病变和172个良性病变,并将其性能与现有方法进行了比较。作者还分别评估了导管原位癌(DCIS)、浸润性导管癌(IDC)和浸润性小叶癌(ILC)病变的分类性能。在留一法交叉验证方案中,通过受试者操作特征(ROC)分析来衡量分类性能。
所提出的CADx系统获得的ROC曲线下面积(AUC)为0.8543,在同一数据集上显著高于先前CADx系统获得的性能(0.8172)(p = 0.007)。DCIS、IDC和ILC病变的AUC值分别为0.7924、0.8688和0.8650。
作者开发了一种用于乳腺高时空分辨率DCE-MRI的CADx系统。该系统在良性和恶性病变分类方面优于先前提出的系统,同时所需的用户交互较少。