Use of Advanced Flexible Modeling Approaches for Survival Extrapolation from Early Follow-up Data in two Nivolumab Trials in Advanced NSCLC with Extended Follow-up.

IF 3.1 3区 医学 Q2 HEALTH CARE SCIENCES & SERVICES
M A Chaudhary, M Edmondson-Jones, G Baio, E Mackay, J R Penrod, D J Sharpe, G Yates, S Rafiq, K Johannesen, M K Siddiqui, J Vanderpuye-Orgle, A Briggs
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引用次数: 2

Abstract

Objectives: Immuno-oncology (IO) therapies are often associated with delayed responses that are deep and durable, manifesting as long-term survival benefits in patients with metastatic cancer. Complex hazard functions arising from IO treatments may limit the accuracy of extrapolations from standard parametric models (SPMs). We evaluated the ability of flexible parametric models (FPMs) to improve survival extrapolations using data from 2 trials involving patients with non-small-cell lung cancer (NSCLC).

Methods: Our analyses used consecutive database locks (DBLs) at 2-, 3-, and 5-y minimum follow-up from trials evaluating nivolumab versus docetaxel in patients with pretreated metastatic squamous (CheckMate-017) and nonsquamous (CheckMate-057) NSCLC. For each DBL, SPMs, as well as 3 FPMs-landmark response models (LRMs), mixture cure models (MCMs), and Bayesian multiparameter evidence synthesis (B-MPES)-were estimated on nivolumab overall survival (OS). The performance of each parametric model was assessed by comparing milestone restricted mean survival times (RMSTs) and survival probabilities with results obtained from externally validated SPMs.

Results: For the 2- and 3-y DBLs of both trials, all models tended to underestimate 5-y OS. Predictions from nonvalidated SPMs fitted to the 2-y DBLs were highly unreliable, whereas extrapolations from FPMs were much more consistent between models fitted to successive DBLs. For CheckMate-017, in which an apparent survival plateau emerges in the 3-y DBL, MCMs fitted to this DBL estimated 5-y OS most accurately (11.6% v. 12.3% observed), and long-term predictions were similar to those from the 5-y validated SPM (20-y RMST: 30.2 v. 30.5 mo). For CheckMate-057, where there is no clear evidence of a survival plateau in the early DBLs, only B-MPES was able to accurately predict 5-y OS (14.1% v. 14.0% observed [3-y DBL]).

Conclusions: We demonstrate that the use of FPMs for modeling OS in NSCLC patients from early follow-up data can yield accurate estimates for RMST observed with longer follow-up and provide similar long-term extrapolations to externally validated SPMs based on later data cuts. B-MPES generated reasonable predictions even when fitted to the 2-y DBLs of the studies, whereas MCMs were more reliant on longer-term data to estimate a plateau and therefore performed better from 3 y. Generally, LRM extrapolations were less reliable than those from alternative FPMs and validated SPMs but remained superior to nonvalidated SPMs. Our work demonstrates the potential benefits of using advanced parametric models that incorporate external data sources, such as B-MPES and MCMs, to allow for accurate evaluation of treatment clinical and cost-effectiveness from trial data with limited follow-up.

Highlights: Flexible advanced parametric modeling methods can provide improved survival extrapolations for immuno-oncology cost-effectiveness in health technology assessments from early clinical trial data that better anticipate extended follow-up.Advantages include leveraging additional observable trial data, the systematic integration of external data, and more detailed modeling of underlying processes.Bayesian multiparameter evidence synthesis performed particularly well, with well-matched external data.Mixture cure models also performed well but may require relatively longer follow-up to identify an emergent plateau, depending on the specific setting.Landmark response models offered marginal benefits in this scenario and may require greater numbers in each response group and/or increased follow-up to support improved extrapolation within each subgroup.

在两项延长随访的晚期NSCLC Nivolumab试验中,使用先进的灵活建模方法从早期随访数据推断生存期。
目的:免疫肿瘤学(IO)治疗通常与深度和持久的延迟反应相关,表现为转移性癌症患者的长期生存益处。IO处理产生的复杂危险函数可能会限制标准参数模型(SPMs)外推的准确性。我们利用两项涉及非小细胞肺癌(NSCLC)患者的试验数据,评估了灵活参数模型(FPMs)改善生存推断的能力。方法:我们的分析使用连续数据库锁定(dbl),在2年、3年和5年的最短随访时间,从试验中评估纳武单抗与多西他赛在预处理转移性鳞状(CheckMate-017)和非鳞状(CheckMate-057)非小细胞肺癌患者中的疗效。对于每个DBL, SPMs以及3个fpm -标志性反应模型(lrm),混合治愈模型(MCMs)和贝叶斯多参数证据合成(B-MPES)-对纳沃单抗总生存期(OS)进行估计。通过比较里程碑限制平均生存时间(RMSTs)和生存概率与外部验证SPMs获得的结果来评估每个参数模型的性能。结果:对于两项试验的2年和3年DBLs,所有模型都倾向于低估5年OS。未经验证的SPMs对2年DBLs的预测是高度不可靠的,而FPMs的外推在连续DBLs的模型之间更为一致。对于CheckMate-017,在3年的DBL中出现了明显的生存平台,适合该DBL的mcm最准确地估计了5年的OS (11.6% vs 12.3%观察到),并且长期预测与5年验证的SPM相似(20年RMST: 30.2 vs 30.5个月)。对于CheckMate-057,在早期DBL中没有明确的生存平台证据,只有B-MPES能够准确预测5年生存率(14.1% vs . 14.0%观察[3年DBL])。结论:我们证明,使用FPMs对NSCLC患者的OS进行建模,可以从早期随访数据中得出更长的随访期间观察到的RMST的准确估计,并为基于后期数据切割的外部验证的SPMs提供类似的长期推断。B-MPES即使适用于研究的2年DBLs,也能产生合理的预测,而mcm更依赖于长期数据来估计平台期,因此从3年开始表现更好。一般来说,LRM外推的可靠性低于替代FPMs和经过验证的SPMs,但仍优于未经验证的SPMs。我们的工作证明了使用包含外部数据源的先进参数模型的潜在好处,例如B-MPES和mcm,可以在有限的随访下从试验数据中准确评估治疗的临床和成本效益。亮点:灵活的先进参数化建模方法可以从早期临床试验数据中为卫生技术评估中的免疫肿瘤学成本效益提供改进的生存推断,从而更好地预测延长的随访。优点包括利用额外的可观察试验数据,外部数据的系统集成,以及对底层过程进行更详细的建模。贝叶斯多参数证据合成在外部数据匹配良好的情况下表现特别好。混合固化模型也表现良好,但根据具体情况,可能需要相对较长的随访时间来确定出现的平台期。在这种情况下,里程碑式反应模型提供了边际效益,可能需要在每个反应组中增加更多的数据和/或增加随访,以支持在每个子组中改进的外推。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Medical Decision Making
Medical Decision Making 医学-卫生保健
CiteScore
6.50
自引率
5.60%
发文量
146
审稿时长
6-12 weeks
期刊介绍: Medical Decision Making offers rigorous and systematic approaches to decision making that are designed to improve the health and clinical care of individuals and to assist with health care policy development. Using the fundamentals of decision analysis and theory, economic evaluation, and evidence based quality assessment, Medical Decision Making presents both theoretical and practical statistical and modeling techniques and methods from a variety of disciplines.
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