首页> 外文期刊>Annals of oncology: official journal of the European Society for Medical Oncology >A risk score to predict disease-free survival in patients not achieving a pathological complete remission after preoperative chemotherapy for breast cancer.
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A risk score to predict disease-free survival in patients not achieving a pathological complete remission after preoperative chemotherapy for breast cancer.

机译:风险评分,用于预测乳腺癌术前化疗后未达到病理完全缓解的患者的无病生存期。

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BACKGROUND: We aimed to predict disease-free survival (DFS) in patients who failed to achieve a pathologic complete remission (pCR) after preoperative chemotherapy (PC). PATIENTS AND METHODS: Data from 577 patients treated with PC and operated at the European Institute of Oncology (EIO) were used to develop a nomogram using Cox proportional hazards regression model based on both categorical (pT, positive nodes, human epidermal growth factor receptor 2 (HER2) status, vascular invasion) and continuous histological variables (estrogen receptors and Ki-67 expression) at surgery. The nomogram was tested on a second patient cohort (343 patients) treated in other institutions and subsequently operated at the EIO. RESULTS: The nomogram for DFS based on both categorical and continuous variables had good discrimination in the training and the validation sets (concordance indices 0.73, 0.67). CONCLUSION: The use of a nomogram based on the degree of selected histopathological variables can predict DFS and might help in the adjuvant therapeutic algorithm design.
机译:背景:我们旨在预测术前化疗(PC)后未能实现病理完全缓解(pCR)的患者的无病生存期(DFS)。患者和方法:使用来自欧洲肿瘤研究所(EIO)的577例接受PC治疗的患者的数据,使用基于两种分类(pT,阳性淋巴结,人表皮生长因子受体2)的Cox比例风险回归模型制作诺模图。 (HER2)状态,血管浸润)和手术时的连续组织学变量(雌激素受体和Ki-67表达)。在其他机构接受治疗并随后在EIO进行手术的第二个患者队列(343例患者)中测试了诺模图。结果:基于分类变量和连续变量的DFS列线图在训练和验证集上具有良好的区分度(一致性指数0.73、0.67)。结论:根据选择的组织病理学变量的程度使用列线图可以预测DFS,可能有助于辅助治疗算法的设计。

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