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Personalisation of breast cancer follow-up: a time-dependent prognostic nomogram for the estimation of annual risk of locoregional recurrence in early breast cancer patients

机译:乳腺癌随访的个性化:随时间变化的预后诺模图,用于估计早期乳腺癌患者局部复发的年度风险

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The objective of this study was to develop and validate a time-dependent logistic regression model for prediction of locoregional recurrence (LRR) of breast cancer and a web-based nomogram for clinical decision support. Women first diagnosed with early breast cancer between 2003 and 2006 in all Dutch hospitals were selected from the Netherlands Cancer Registry (n = 37,230). In the first 5 years following primary breast cancer treatment, 950 (2.6 %) patients developed a LRR as first event. Risk factors were determined using logistic regression and the risks were calculated per year, conditional on not being diagnosed with recurrence in the previous year. Discrimination and calibration were assessed. Bootstrapping was used for internal validation. Data on primary tumours diagnosed between 2007 and 2008 in 43 Dutch hospitals were used for external validation of the performance of the nomogram (n = 12,308). The final model included the variables grade, size, multifocality, and nodal involvement of the primary tumour, and whether patients were treated with radio-, chemo- or hormone therapy. The index cohort showed an area under the ROC curve of 0.84, 0.77, 0.70, 0.73 and 0.62, respectively, per subsequent year after primary treatment. Model predictions were well calibrated. Estimates in the validation cohort did not differ significantly from the index cohort. The results were incorporated in a web-based nomogram (http://www.utwente.nl/mira/influence). This validated nomogram can be used as an instrument to identify patients with a low or high risk of LRR who might benefit from a less or more intensive follow-up after breast cancer and to aid clinical decision making for personalised follow-up.
机译:这项研究的目的是开发和验证时间依赖性逻辑回归模型,用于预测乳腺癌的局部复发(LRR)和基于网络的列线图,以提供临床决策支持。从荷兰癌症登记处(n = 37,230)中选出了2003年至2006年间在所有荷兰医院中首次被诊断出患有早期乳腺癌的女性。在原发性乳腺癌治疗后的最初5年中,有950名(2.6%)患者发生了LRR,这是首次事件。使用logistic回归确定风险因素,并每年计算风险,条件是前一年未被诊断为复发。鉴别和校准进行了评估。引导程序用于内部验证。 2007年至2008年间在荷兰的43家医院中诊断出的原发肿瘤数据用于外部验证列线图的性能(n = 12,308)。最终模型包括原发肿瘤的变量等级,大小,多灶性和淋巴结转移,以及患者是否接受放射,化学或激素治疗。指数队列显示,在初次治疗后的每一年,ROC曲线下的面积分别为0.84、0.77、0.70、0.73和0.62。模型预测得到很好的校准。验证队列中的估计与索引队列没有显着差异。将结果合并到基于网络的列线图中(http://www.utwente.nl/mira/influence)。该经过验证的列线图可以用作识别具有较低或较高LRR风险的患者的工具,这些患者可能从乳腺癌术后较少或较多的随访中受益,并有助于针对个性化随访的临床决策。

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