Department of Equipment, Shengjing Hospital of China Medical University, Shenyang, China.
Department of Radiology, Shengjing Hospital of China Medical University, Shenyang, China.
Int J Clin Oncol. 2019 Jul;24(7):815-824. doi: 10.1007/s10147-019-01421-1. Epub 2019 Feb 27.
To propose a semi-automatic method for distinguishing invasive ductal carcinomas from benign lesions on breast dynamic contrast-enhanced magnetic resonance imaging (DCE-MRI).
142 cases were included. In the conventional method, the region of interest for a breast lesion was drawn manually and the corresponding mean time-signal intensity curve (TIC) was qualitatively categorized. Only one quantitative parameter was obtained: the maximum slope of increase (MSI). By contrast, the proposed method extracted the suspicious breast lesion semi-automatically. Besides MSI, more quantitative parameters reflecting perfusion information were derived from the mean TIC and lesion region, including the signal intensity slope (SI), initial percentage of enhancement, percentage of peak enhancement, early signal enhancement ratio, and second enhancement percentage. The mean TIC was categorized quantitatively according to the value of SI. Regression models were established. The diagnostic performance differed between the new and conventional methods according to the Wilcoxon rank-sum test and receiver operating characteristic analysis.
According to the TIC categorization results, the accuracies of the traditional and the new method were 59.16% and 76.05%, respectively (P < 0.05). The accuracy was 63.35% for MSI, which was derived from the manual method. For the semi-automatic method, the accuracies were 81.0% and 78.9% for the lesion region and the corresponding mean TIC regression models, respectively.
The results demonstrate that our proposed semi-automatic method is beneficial for discriminating breast IDCs and benign lesions based on DCE-MRI, and this method should be considered as a supplementary tool for subjective diagnosis by clinical radiologists.
提出一种基于乳腺动态对比增强磁共振成像(DCE-MRI)的自动区分乳腺浸润性导管癌与良性病变的半自动化方法。
共纳入 142 例患者。在常规方法中,手动绘制乳腺病变感兴趣区并对相应的平均时间信号强度曲线(TIC)进行定性分类。仅获得一个定量参数:最大斜率增加(MSI)。相比之下,所提出的方法半自动提取可疑乳腺病变。除 MSI 外,还从平均 TIC 和病变区域中提取了更多反映灌注信息的定量参数,包括信号强度斜率(SI)、初始增强百分比、峰值增强百分比、早期信号增强比和第二次增强百分比。根据 SI 值对平均 TIC 进行定量分类。建立回归模型。根据 Wilcoxon 秩和检验和受试者工作特征分析,新方法与传统方法之间的诊断性能存在差异。
根据 TIC 分类结果,传统方法和新方法的准确率分别为 59.16%和 76.05%(P<0.05)。手动方法得到的 MSI 准确率为 63.35%。对于半自动方法,病变区域和相应的平均 TIC 回归模型的准确率分别为 81.0%和 78.9%。
结果表明,我们提出的半自动方法有助于基于 DCE-MRI 区分乳腺 IDC 和良性病变,该方法应被视为临床放射科医生主观诊断的补充工具。