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Radiomics for ultrafast dynamic contrast-enhanced breast MRI in the diagnosis of breast cancer: a pilot study

机译:放射线学用于超快速动态对比增强乳腺MRI诊断乳腺癌的初步研究

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Radiomics for dynamic contrast-enhanced (DCE) breast MRI have shown promise in the diagnosis of breast cancer as applied to conventional DCE-MRI protocols. Here, we investigate the potential of using such radiomic features in the diagnosis of breast cancer applied on ultrafast breast MRI in which images are acquired every few seconds. The dataset consisted of 64 lesions (33 malignant and 31 benign) imaged with both "conventional" and ultrafast DCE-MRI. After automated lesion segmentation in each image sequence, we calculated 38 radiomic features categorized as describing size, shape, margin, enhancement-texture, kinetics, and enhancement variance kinetics. For each feature, we calculated the 95% confidence interval of the area under the ROC curve (AUC) to determine whether the performance of each feature in the task of distinguishing between malignant and benign lesions was better than random guessing. Subsequently, we assessed performance of radiomic signatures in 10-fold cross-validation repeated 10 times using a support vector machine with as input all the features as well as features by category. We found that many of the features remained useful (AUC>0.5) for the ultrafast protocol, with the exception of some features, e.g., those designed for late-phase kinetics such as the washout rate. For ultrafast MRI, the radiomics enhancement-texture signature achieved the best performance, which was comparable to that of the kinetics signature for "conventional' DCE-MRI, both achieving AUC values of 0.71. Radiomic developed for "conventional' DCE-MRI shows promise for translation to the ultrafast protocol, where enhancement texture appears to play a dominant role.
机译:用于动态对比增强(DCE)乳房MRI的Radiomics在应用于传统DCE-MRI方案的乳腺癌诊断中已显示出希望。在这里,我们研究了使用这种放射学特征在乳腺癌诊断中应用在超快乳房MRI中的潜力,其中每隔几秒钟就可以获取一次图像。该数据集由“常规”和超快DCE-MRI成像的64个病变(33例恶性和31例良性)组成。在每个图像序列中进行自动病变分割后,我们计算了38个放射学特征,这些特征被分类为描述大小,形状,边缘,增强纹理,动力学和增强方差动力学。对于每个特征,我们计算了ROC曲线(AUC)下区域的95%置信区间,以确定在区分恶性和良性病变的任务中每个特征的性能是否优于随机猜测。随后,我们使用支持向量机(输入所有特征以及按特征分类的特征),在重复10次的10倍交叉验证中评估了放射性标记的性能。我们发现,许多功能对于超快协议仍然有用(AUC> 0.5),除了某些功能(例如为后期动力学设计的那些功能,如洗脱速率)外。对于超快MRI,radiomics增强纹理特征达到了最佳性能,与“常规” DCE-MRI的动力学特征相当,两者的AUC值均达到0.71。为“常规” DCE-MRI开发的Radiomic展现出了希望转换为超快速协议,其中增强纹理似乎起主要作用。

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