对时间到事件结果实施多层次网络元回归:复发难治性多发性骨髓瘤案例研究。

IF 4.9 2区 医学 Q1 ECONOMICS Value in Health Pub Date : 2024-08-01 DOI:10.1016/j.jval.2024.04.017
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引用次数: 0

摘要

目标:多层次网络元回归(ML-NMR)利用来自随机对照试验(RCT)网络的单个患者数据(IPD)和总体数据(AD)来评估多种治疗方法的疗效比较,同时调整研究之间的差异。我们概述了用于时间到事件结果的 ML-NMR 方法,并将其应用于一个说明性案例研究,包括示例 R 代码:该案例研究评估了idecabtagene vicleucel(ide-cel)、selinexor+dexamethasone(Sd)、belantamab mafodotin(BM)和常规治疗(CC)对三类暴露的复发/难治性多发性骨髓瘤患者在总生存期(OS)方面的疗效比较。我们将单臂临床试验和真实世界数据天真地结合在一起,创建了一项AD人工RCT(aRCT)(MAMMOTH-CC与DREAMM-2-BM相比,STORM-2-Sd与DREAMM-2-BM相比)和一项IPD aRCT(KarMMa-ide-cel与KarMMa-RW-CC相比)。在某些假设条件下,我们纳入了具有倾斜分布的连续协变量,并以中位数和范围进行报告。ML-NMR模型调整了既往治疗线数、三类难治性(TCR)状态和年龄,并通过留一信息标准(LOOIC)进行比较。我们总结了IPD aRCT人群的预测危险比和生存率(95%可信区间):结果:Weibull ML-NMR 模型的 LOOIC 最低。就OS而言,Ide-cel的疗效优于Sd、BM和CC。效应修饰因子对模型的影响最小,只有TCR是预后因素:我们展示了 ML-NMR 在时间到事件结果方面的应用,并介绍了可用于帮助实施的代码。鉴于 ML-NMR 的优点,我们鼓励从业人员在需要对人群进行调整以比较多种治疗方法时使用 ML-NMR。
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Implementing Multilevel Network Meta-Regression for Time-To-Event Outcomes: A Case Study in Relapsed Refractory Multiple Myeloma

Objectives

Multilevel network meta-regression (ML-NMR) leverages individual patient data (IPD) and aggregate data from a network of randomized controlled trials (RCTs) to assess the comparative efficacy of multiple treatments, while adjusting for between-study differences. We provide an overview of ML-NMR for time-to-event outcomes and apply it to an illustrative case study, including example R code.

Methods

The case study evaluated the comparative efficacy of idecabtagene vicleucel (ide-cel), selinexor+dexamethasone (Sd), belantamab mafodotin (BM), and conventional care (CC) for patients with triple-class exposed relapsed/refractory multiple myeloma in terms of overall survival. Single-arm clinical trials and real-world data were naively combined to create an aggregate data artificial RCT (aRCT) (MAMMOTH-CC versus DREAMM-2-BM versus STORM-2-Sd) and an IPD aRCT (KarMMa-ide-cel versus KarMMa-RW-CC). With some assumptions, we incorporated continuous covariates with skewed distributions, reported as median and range. The ML-NMR models adjusted for number of prior lines, triple-class refractory status, and age and were compared using the leave-one-out information criterion. We summarized predicted hazard ratios and survival (95% credible intervals) in the IPD aRCT population.

Results

The Weibull ML-NMR model had the lowest leave-one-out information criterion. Ide-cel was more efficacious than Sd, BM, and CC in terms of overall survival. Effect modifiers had minimal impact on the model, and only triple-class refractory was a prognostic factor.

Conclusions

We demonstrate an application of ML-NMR for time-to-event outcomes and introduce code that can be used to aid implementation. Given its benefits, we encourage practitioners to utilize ML-NMR when population adjustment is necessary for comparisons of multiple treatments.

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来源期刊
Value in Health
Value in Health 医学-卫生保健
CiteScore
6.90
自引率
6.70%
发文量
3064
审稿时长
3-8 weeks
期刊介绍: Value in Health contains original research articles for pharmacoeconomics, health economics, and outcomes research (clinical, economic, and patient-reported outcomes/preference-based research), as well as conceptual and health policy articles that provide valuable information for health care decision-makers as well as the research community. As the official journal of ISPOR, Value in Health provides a forum for researchers, as well as health care decision-makers to translate outcomes research into health care decisions.
期刊最新文献
Analytical Methods for Comparing Uncontrolled Trials with External Controls from Real-World Data: a Systematic Literature Review and Comparison to European Regulatory and Health Technology Assessment Practice. Author Reply to "Cost-of/Burden-of-Illness Studies: Steps Backward?" Author Reply. Table of Contents Editorial Board
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