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INFLUENCE 3.0模型:局部区域复发和对侧乳腺癌的更新预测,现在也适用于接受新辅助全身治疗的患者。

The INFLUENCE 3.0 model: Updated predictions of locoregional recurrence and contralateral breast cancer, now also suitable for patients treated with neoadjuvant systemic therapy.

作者信息

Van Maaren M C, Hueting T A, van Uden D J P, van Hezewijk M, de Munck L, Mureau M A M, Seegers P A, Voorham Q J M, Schmidt M K, Sonke G S, Groothuis-Oudshoorn C G M, Siesling S

机构信息

Department of Health Technology and Services Research, Technical Medical Centre, University of Twente, Enschede, the Netherlands; Department of Research and Development, Netherlands Comprehensive Cancer Organisation (IKNL), Utrecht, the Netherlands.

Evidencio Medical Decision Support, Haaksbergen, the Netherlands.

出版信息

Breast. 2025 Feb;79:103829. doi: 10.1016/j.breast.2024.103829. Epub 2024 Oct 28.

Abstract

BACKGROUND

Individual risk prediction of 5-year locoregional recurrence (LRR) and contralateral breast cancer (CBC) supports decisions regarding personalised surveillance. The previously developed INFLUENCE tool was rebuild, including a recent population and patients who received neoadjuvant systemic therapy (NST).

METHODS

Women, surgically treated for nonmetastatic breast cancer, diagnosed between 2012 and 2016, were selected from the Netherlands Cancer Registry. Cox regression with restricted cubic splines was compared to Random Survival Forest (RSF) to predict five-year LRR and CBC risks. Separate models were developed for NST patients. Discrimination and calibration were assessed by 100x bootstrap resampling.

RESULTS

In the non-NST and NST group, 49,631 and 10,154 patients were included, respectively. Age, mode of detection, histology, sublocalisation, grade, pT, pN, hormonal receptor status ± endocrine treatment, HER2 status ± targeted treatment, surgery ± immediate reconstruction ± radiation therapy, and chemotherapy were significant predictors for LRR and/or CBC in non-NST patients. For NST patients this was similar, but excluding (y)pT and (y)pN status, and including presence of ductal carcinoma in situ, axillary lymph node dissection and pathologic complete response. For non-NST patients, the Cox and RSF models were integrated in the online tool with 5-year AUCs of 0.77 (95%CI:0.77-0.77) and 0.68 (95%CI:0.67-0.68)] for LRR and CBC prediction, respectively. For NST patients, the RSF model performed best (AUCs 0.77 (95%CI:0.76-0.78) and 0.73 (95%CI:0.69-0.76) for LRR and CBC, respectively). Regarding calibration, observed-predicted differences were all <1 %.

CONCLUSION

This INFLUENCE 3.0 models showed moderate performance in LRR and CBC prediction. The models have been made available as online tool to enable clinical decision support regarding personalised follow-up.

摘要

背景

对5年局部区域复发(LRR)和对侧乳腺癌(CBC)进行个体风险预测有助于支持个性化监测决策。之前开发的INFLUENCE工具进行了重建,纳入了近期的人群以及接受新辅助全身治疗(NST)的患者。

方法

从荷兰癌症登记处选取2012年至2016年间接受手术治疗的非转移性乳腺癌女性患者。将带有限制性立方样条的Cox回归与随机生存森林(RSF)进行比较,以预测5年LRR和CBC风险。为接受NST的患者开发了单独的模型。通过100次自抽样重采样评估辨别力和校准情况。

结果

在非NST组和NST组中,分别纳入了49631例和10154例患者。年龄、检测方式、组织学类型、亚定位、分级、pT、pN、激素受体状态±内分泌治疗、HER2状态±靶向治疗、手术±即刻重建±放疗以及化疗是非NST患者LRR和/或CBC的显著预测因素。对于接受NST的患者情况类似,但不包括(y)pT和(y)pN状态,而是纳入原位导管癌的存在、腋窝淋巴结清扫和病理完全缓解情况。对于非NST患者,Cox模型和RSF模型被整合到在线工具中,用于LRR和CBC预测的5年曲线下面积(AUC)分别为0.77(95%CI:0.77 - 0.77)和0.68(95%CI:0.67 - 0.68)。对于接受NST的患者,RSF模型表现最佳(LRR和CBC的AUC分别为0.77(95%CI:0.76 - 0.78)和0.73(95%CI:0.69 - 0.76))。在校准方面,观察到的预测差异均<1%。

结论

这种INFLUENCE 3.0模型在LRR和CBC预测方面表现中等。这些模型已作为在线工具提供,以支持关于个性化随访的临床决策。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d85e/11605451/a78f4c1fb0ca/gr1.jpg

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