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Incorporating the clinical and radiomics features of contrast-enhanced mammography to classify breast lesions: a retrospective study

机译:纳入对比度增强乳房X线摄影的临床和辐射瘤特征,以分类乳腺病变:回顾性研究

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Background: Contrast-enhanced mammography (CEM) is a promising breast imaging technique. A limited number of studies have focused on the radiomics analysis of CEM. We intended to explore whether a model constructed with both clinical and radiomics features of CEM can better classify benign and malignant breast lesions. Methods: This retrospective, double-center study included women who underwent CEM between August 2017 and February 2020. The data from Center 1 were used as training set and the data from Center 2 were used as external testing set (training: testing =2:1). Models were constructed with the clinical, radiomics, and clinical + radiomics features of CEM. The clinical features included patient age and clinical image features interpreted by the radiologists. The radiomics features were extracted from high-energy (HE), low-energy (LE), and dual-energy subtraction (DES) images of CEM. The Mann-Whitney U test, Pearson correlation and Boruta’s approach were used to select the radiomics features. Random Forest (RF) and logistic regression were used to establish the models. For the testing set, the areas under the curve (AUCs) and 95% confidence intervals (CIs) were employed to evaluate the performance of the models. For the training set, the mean AUCs were obtained by performing internal validation for 100 iterations and then compared by the Kruskal-Wallis and Mann-Whitney U tests. Results: A total of 226 women (mean age: 47.4±10.1 years) with 226 pathologically proven breast lesions (101 benign; 125 malignant) were included. For the external testing set, the AUCs were 0.964 (95% CI: 0.918–1.000) for the combined model, 0.947 (95% CI: 0.891–0.997) for the radiomics model, and 0.882 (95% CI: 0.803–0.962) for the clinical model. In the internal validation process, the combined model achieved a mean AUC of 0.934±0.030, which was significantly higher than those of the radiomics (mean AUC =0.921±0.031, adjusted P0.050) and clinical models (mean AUC =0.907±0.036; adjusted P0.050). Conclusions: Incorporating both clinical and radiomics features of CEM may achieve better classification results for breast lesions.
机译:背景:对比度增强的乳房X线摄影(CEM)是一种有前途的乳房成像技术。有限数量的研究专注于CEM的辐射瘤分析。我们打算探讨与CEM的临床和辐射瘤特征构建的模型是否可以更好地分类良性和恶性乳房病变。方法:这种回顾性,双中心研究包括2017年8月和2020年2月之间接受CEM的女性。来自中心1的数据用作训练集,中央2的数据用作外部测试集(培训:测试= 2: 1)。模型是用CEM的临床,辐射族和临床+辐射族特征构建的模型。临床特征包括患者年龄和临床图像特征,由放射科医师解释。从CEM的高能量(HE),低能量(LE)和CEM的双能量减法(DES)图像中提取了辐射瘤特征。 Mann-Whitney U测试,Pearson相关性和Boruta的方法用于选择射线源特征。随机森林(RF)和逻辑回归用于建立模型。对于测试组,采用曲线(AUC)下的区域和95%置信区间(CIS)来评估模型的性能。对于培训集,通过对100个迭代进行内部验证来获得平均AUC,然后通过Kruskal-Wallis和Mann-Whitney U测试进行比较。结果:共有226名女性(平均年龄:47.4±10.1岁),包括226例病理证明乳房病变(101良性; 125人)。对于外部检测组,AUC为组合型号为0.964(95%CI:0.918-1.000),为辐射源模型0.947(95%CI:0.891-0.997),0.882(95%CI:0.803-0.962)对于临床模型。在内部验证过程中,组合模型实现了0.934±0.030的平均AUC,其显着高于放射体(平均AUC = 0.921±0.031,调节的P< 0.050)和临床模型(平均AUC = 0.907±0.036 ;调整的P& 0.050)。结论:掺入CEM的临床和辐射瘤特征可以达到更好的乳房病变的分类结果。

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