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Analysis of DCE-MRI features in tumor for prediction of the prognosis in breast cancer

机译:肿瘤中DCE-MRI特征分析乳腺癌预后预测

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Breast cancer is one of the most common malignant tumor in females. Adjuvant chemotherapy is a common method of breast cancer treatment, while not all patients will benefit from the treatment. The purpose of this study is to predict prognosis of breast cancer and stratify patients with high risk of recurrence by radiomic analysis based on dynamicenhanced magnetic resonance imaging (DCE-MRI) and gene expression data. We performed this study in three steps. First, a retrospective single-institution cohort of 61 patients with invasive breast cancer was enrolled. We extracted quantitative imaging features depicting tumor enhancement patterns and screened for those that were potentially prognostic for survival. Multivariate Cox regression analysis showed that image feature of inverse difference was independently associated with recurrence-free survival (RFS) with P value of 0.0371. Second, we built a regression model with 74-gene signature from 87 patients whose MRI and gene expression data were available for associating image features that is related with breast cancer prognosis identified in the first dataset. Finally, we validated the prognostic value of the established signature by applying it on public available genomic data sets. Using the 74-gene signature in the independent validation set, 1010 patients were divided into two groups to stratify patients for RFS (log-rank P=0.011) and overall survival (OS, log-rank P=0.029) among different survival risk levels. Our results showed that imaging features representing tumor biological characteristics would be valuable in predicting prognosis of breast cancer.
机译:乳腺癌是最常见的恶性肿瘤在女性中的一个。辅助化疗是乳腺癌治疗的常用方法,但并不是所有的患者都会从治疗中获益。本研究的目的是预测乳腺癌和患者分层的预后通过基于dynamicenhanced磁共振成像radiomic分析(DCE-MRI)和基因表达数据复发的高风险。我们分三步进行这项研究。首先,61例浸润性乳腺癌的回顾性单中心队列被录取。我们提取定量成像功能描述肿瘤增强模式,并筛选出那些被潜在的预后生存。多变量Cox回归分析显示具有0.0371的P值逆差是独立与无复发存活(RFS)相关联的该图像特征。其次,我们建立了一个回归模型74个基因的信号从87名患者的MRI和基因表达的数据可用于关联是在第一数据集识别乳腺癌预后相关的图像特征。最后,我们通过将它放在公共区域提供基因组数据集验证了建立签名的预测价值。使用在独立验证组的74个基因的信号,1010例患者分为两组,将患者的不同生存风险水平之间的RFS(数秩P = 0.011)和总生存期(OS,数秩P = 0.029) 。我们的研究结果显示,代表肿瘤的生物学特性将是预测乳腺癌预后有价值的影像学特征。

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