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Intratumor heterogeneity of DCE-MRI reveals Ki-67 proliferation status in breast cancer

机译:DCE-MRI的细胞内异质性揭示了乳腺癌中的Ki-67增殖状态

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Breast cancer is a highly heterogeneous disease both biologically and clinically, and certain pathologic parameters, i.e., Ki67 expression, are useful in predicting the prognosis of patients. The aim of the study is to identify intratumor heterogeneity of breast cancer for predicting Ki-67 proliferation status in estrogen receptor (ER)-positive breast cancer patients. A dataset of 77 patients was collected who underwent dynamic contrast enhancement magnetic resonance imaging (DCE-MRI) examination. Of these patients, 51 were high-K.i-67 expression and 26 were low-Ki-67 expression. We partitioned the breast tumor into subregions using two methods based on the values of time to peak (TTP) and peak enhancement rate (PER). Within each tumor subregion, image features were extracted including statistical and morphological features from DCE-MRI. The classification models were applied on each region separately to assess whether the classifiers based on features extracted from various subregions features could have different performance for prediction. An area under a receiver operating characteristic curve (AUC) was computed using leave-one-out cross-validation (LOOCV) method. The classifier using features related with moderate time to peak achieved best performance with AUC of 0.826 than that based on the other regions. While using multi-classifier fusion method, the AUC value was significantly (P=0.03) increased to 0.858 ±0.032 compare to classifier with AUC of 0.778 using features from the entire tumor. The results demonstrated that features reflect heterogeneity in intratumoral subregions can improve the classifier performance to predict the Ki-67 proliferation status than the classifier using features from entire tumor alone.
机译:乳腺癌在生物学和临床上的高度异质疾病,以及某些病理参数,即Ki67表达,可用于预测患者的预后。该研究的目的是鉴定乳腺癌的肿瘤内异质性,以预测雌激素受体(ER) - 阳性乳腺癌患者的KI-67增殖状态。收集了77名患者的数据集,他们接受了动态对比增强磁共振成像(DCE-MRI)检查。在这些患者中,51例是高K.I-67表达,26例低于Ki-67表达。我们使用基于峰值(TTP)的值和峰值增强率(PER)的时间值将乳腺肿瘤划分为子区域。在每个肿瘤次区域内,提取图像特征,包括来自DCE-MRI的统计和形态特征。分类模型分别应用于评估基于从各个子区域特征中提取的特征的分类器是否具有不同的预测性能。使用休假交叉验证(LOOCV)方法计算接收器操作特性曲线(AUC)的区域。分类器使用与中等时间与峰值相关的功能实现了0.826的最佳性能,而不是基于其他地区。在使用多分类器融合方法的同时,与使用来自整个肿瘤的特征的AUC的分类器相比,AUC值显着(P = 0.03)增加到0.858±0.032。结果表明,特征反映了脑内亚区域中的异质性可以改善分类器性能,以预测来自单独肿瘤的特征的分类器比分类器预测ki-67增殖状态。

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