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新型预后分期系统在初治转移性乳腺癌总生存方面的性能验证及癌症特异性结局性能展示。

Validation of the Performance of the Novel Prognostic Staging System for Overall Survival in De Novo Metastatic Breast Cancer and Demonstration of Performance for Cancer-Specific Outcomes.

作者信息

Vetter Christopher D, Hoskin Tanya, Olson Carrie, Giridhar Karthik, Boughey Judy C

机构信息

Division of Breast and Melanoma Surgical Oncology, Department of Surgery, Mayo Clinic, Rochester, MN, USA.

Division of Clinical Trials and Biostatistics, Department of Quantitative Health Sciences, Mayo Clinic, Rochester, MN, USA.

出版信息

Ann Surg Oncol. 2025 Jul 29. doi: 10.1245/s10434-025-17863-z.

Abstract

INTRODUCTION

A prognostic staging system for de novo metastatic breast cancer was developed by Plichta et al. We aimed to validate this system within a more contemporary cohort; assess model performance with respect to disease-specific survival (DSS), progression-free survival (PFS), and distant PFS (DPFS); and evaluate the impact of additional data on all possible metastatic sites.

METHODS

A retrospective review was conducted of patients with stage IV breast cancer in our institutional cancer registry from 2010 to 2022. Kaplan-Meier curves with log-rank tests were used; model discrimination was estimated using the C-statistic. Multivariable Cox proportional hazards regression was used to compute adjusted hazard ratios (HRs). The analysis was repeated with modified definitions incorporating all possible metastatic sites.

RESULTS

Overall, 425 patients were included. The staging system showed fair discrimination at 3 years for overall survival (OS; C-statistic 0.64), DSS (0.65), PFS (0.60), and DPFS (0.60). With a median follow-up of 41 months, stage IVA-D OS was 84%, 79%, 59%, and 47% at 3 years, respectively. Use of modified definitions upstaged 13.1% of patients but did not change the model fit (C-statistic 0.64). Patients reclassified from A/B to C/D had worse OS than patients remaining A/B (adjusted HR 1.59) and better survival than patients who were C/D under both definitions (HR 0.61).

CONCLUSIONS

The novel prognostic staging system provided meaningful discrimination in OS as well as for DSS, PFS, and DPFS. Inclusion of all metastatic sites may improve model calibration. OS has improved in more recent years.

摘要

引言

普利希塔等人开发了一种用于初发性转移性乳腺癌的预后分期系统。我们旨在在一个更现代的队列中验证该系统;评估该模型在疾病特异性生存(DSS)、无进展生存(PFS)和远处无进展生存(DPFS)方面的性能;并评估额外数据对所有可能转移部位的影响。

方法

对2010年至2022年我院癌症登记处的IV期乳腺癌患者进行回顾性研究。使用带有对数秩检验的Kaplan-Meier曲线;使用C统计量估计模型辨别力。采用多变量Cox比例风险回归计算调整后的风险比(HRs)。使用纳入所有可能转移部位的修改定义重复进行分析。

结果

总共纳入了425例患者。该分期系统在3年时对总生存(OS;C统计量为0.64)、DSS(0.65)、PFS(0.60)和DPFS(0.60)显示出一定的辨别力。中位随访41个月时,IV A - D期患者3年的OS分别为84%、79%、59%和47%。使用修改后的定义使13.1%的患者分期上调,但未改变模型拟合度(C统计量为0.64)。从A/B期重新分类为C/D期的患者的OS比仍为A/B期的患者差(调整后HR为1.59),且比在两种定义下均为C/D期的患者生存情况更好(HR为0.61)。

结论

这种新的预后分期系统在OS以及DSS、PFS和DPFS方面提供了有意义的辨别力。纳入所有转移部位可能会改善模型校准。近年来OS有所改善。

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