Department of Surgery.
Department of Medical Statistics.
Ann Oncol. 2015 Jun;26(6):1254-1262. doi: 10.1093/annonc/mdv146. Epub 2015 Apr 10.
Predictive models are an integral part of current clinical practice and help determine optimal treatment strategies for individual patients. A drawback is that covariates are assumed to have constant effects on overall survival (OS), when in fact, these effects may change during follow-up (FU). Furthermore, breast cancer (BC) patients may experience events that alter their prognosis from that time onwards. We investigated the 'dynamic' effects of different covariates on OS and developed a nomogram to calculate 5-year dynamic OS (DOS) probability at different prediction timepoints (tP) during FU.
Dutch and Belgian postmenopausal, endocrine-sensitive, early BC patients enrolled in the TEAM trial were included. We assessed time-varying effects of specific covariates and obtained 5-year DOS predictions using a proportional baselines landmark supermodel. Covariates included age, histological grade, hormone receptor and HER2 status, T- and N-stage, locoregional recurrence (LRR), distant recurrence, and treatment compliance. A nomogram was designed to calculate 5-year DOS based on individual characteristics.
A total of 2602 patients were included (mean FU 6.2 years). N-stage, LRR, and HER2 status demonstrated time-varying effects on 5-year DOS. Hazard ratio (HR) functions for LRR, high-risk N-stage (N2/3), and HER2 positivity were HR = (8.427 × 0.583[Formula: see text], HR = (3.621 × 0.816[Formula: see text], and HR = (1.235 × 0.851[Formula: see text], respectively. Treatment discontinuation was associated with a higher mortality risk, but without a time-varying effect [HR 1.263 (0.867-1.841)]. All other covariates were time-constant.
The current nomogram accounts for elapsed time since starting adjuvant endocrine treatment and optimizes prediction of individual 5-year DOS during FU for postmenopausal, endocrine-sensitive BC patients. The nomogram can facilitate in determining whether further therapy will benefit an individual patient, although validation in an independent dataset is still needed.
预测模型是当前临床实践的一个组成部分,有助于为个体患者确定最佳治疗策略。缺点是,协变量被假设对总生存期(OS)有恒定的影响,而实际上,这些影响可能会在随访期间(FU)发生变化。此外,乳腺癌(BC)患者可能会经历改变其预后的事件。我们研究了不同协变量对 OS 的“动态”影响,并开发了一个列线图来计算 FU 期间不同预测时间点(tP)的 5 年动态 OS(DOS)概率。
纳入荷兰和比利时绝经后、内分泌敏感、早期 BC 患者的 TEAM 试验。我们评估了特定协变量的时变效应,并使用比例基线 landmark 超模型获得了 5 年 DOS 预测。协变量包括年龄、组织学分级、激素受体和 HER2 状态、T 和 N 分期、局部区域复发(LRR)、远处复发和治疗依从性。设计了一个列线图来根据个体特征计算 5 年 DOS。
共纳入 2602 例患者(平均 FU 6.2 年)。N 分期、LRR 和 HER2 状态对 5 年 DOS 有时间变化的影响。LRR、高危 N 分期(N2/3)和 HER2 阳性的危险比(HR)函数分别为 HR =(8.427×0.583[公式:见正文],HR =(3.621×0.816[公式:见正文],HR =(1.235×0.851[公式:见正文]。治疗中断与更高的死亡率风险相关,但没有时间变化的影响[HR 1.263(0.867-1.841)]。所有其他协变量都是时间不变的。
当前的列线图考虑了开始辅助内分泌治疗后的时间流逝,并优化了绝经后、内分泌敏感的 BC 患者 FU 期间个体 5 年 DOS 的预测。该列线图可以帮助确定是否对个体患者进行进一步治疗将受益,尽管仍需要在独立数据集进行验证。