Assessing Methods for Adjusting Estimates of Treatment Effectiveness for Patient Nonadherence in the Context of Time-to-Event Outcomes and Health Technology Assessment: A Simulation Study.

IF 3.1 3区 医学 Q2 HEALTH CARE SCIENCES & SERVICES Medical Decision Making Pub Date : 2024-11-08 DOI:10.1177/0272989X241293414
Abualbishr Alshreef, Nicholas Latimer, Paul Tappenden, Simon Dixon
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Abstract

Purpose: We aim to assess the performance of methods for adjusting estimates of treatment effectiveness for patient nonadherence in the context of health technology assessment using simulation methods.

Methods: We simulated trial datasets with nonadherence, prognostic characteristics, and a time-to-event outcome. The simulated scenarios were based on a trial investigating immunosuppressive treatments for improving graft survival in patients who had had a kidney transplant. The primary estimand was the difference in restricted mean survival times in all patients had there been no nonadherence. We compared generalized methods (g-methods; marginal structural model with inverse probability of censoring weighting [IPCW], structural nested failure time model [SNFTM] with g-estimation) and simple methods (intention-to-treat [ITT] analysis, per-protocol [PP] analysis) in 90 scenarios each with 1,900 simulations. The methods' performance was primarily assessed according to bias.

Results: In implementation nonadherence scenarios, the average percentage bias was 20% (ranging from 7% to 37%) for IPCW, 20% (8%-38%) for SNFTM, 20% (8%-38%) for PP, and 40% (20%-75%) for ITT. In persistence nonadherence scenarios, the average percentage bias was 26% (9%-36%) for IPCW, 26% (14%-39%) for SNFTM, 26% (14%-36%) for PP, and 47% (16%-72%) for ITT. In initiation nonadherence scenarios, the percentage bias ranged from -29% to 110% for IPCW, -34% to 108% for SNFTM, -32% to 102% for PP, and between -18% and 200% for ITT.

Conclusion: In this study, g-methods and PP produced more accurate estimates of the treatment effect adjusted for nonadherence than the ITT analysis did. However, considerable bias remained in some scenarios.

Highlights: Randomized controlled trials are usually analyzed using the intention-to-treat (ITT) principle, which produces a valid estimate of effectiveness relating to the underlying trial, but when patient adherence to medications in the real world is known to differ from that observed in the trial, such estimates are likely to result in a biased representation of real-world effectiveness and cost-effectiveness.Our simulation study demonstrates that generalized methods (g-methods; IPCW, SNFTM) and per-protocol analysis provide more accurate estimates of the treatment effect than the ITT analysis does, when adjustment for nonadherence is required; however, even with these adjustment methods, considerable bias may remain in some scenarios.When real-world adherence is expected to differ from adherence observed in a trial, adjustment methods should be used to provide estimates of real-world effectiveness.

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在事件发生时间结果和健康技术评估的背景下,评估根据患者不依从性调整治疗效果估计值的方法:模拟研究。
目的:我们旨在利用模拟方法评估在卫生技术评估中根据患者不依从性调整治疗效果估计值的方法的性能:我们模拟了具有不依从性、预后特征和时间到事件结果的试验数据集。模拟情景是基于一项研究免疫抑制治疗提高肾移植患者移植物存活率的试验。主要估算指标是在没有不依从的情况下,所有患者的限制性平均存活时间的差异。我们在 90 种情况下分别用 1900 次模拟,比较了广义方法(g 方法;具有反删减概率加权[IPCW]的边际结构模型、具有 g 估计的结构嵌套失败时间模型[SNFTM])和简单方法(意向治疗[ITT]分析、每方案[PP]分析)。这些方法的性能主要根据偏差进行评估:结果:在执行不坚持方案中,IPCW 的平均偏差百分比为 20%(从 7% 到 37% 不等),SNFTM 为 20%(8%-38%),PP 为 20%(8%-38%),ITT 为 40%(20%-75%)。在持续不坚持的情况下,IPCW 的平均偏差百分比为 26% (9%-36%),SNFTM 为 26% (14%-39%),PP 为 26% (14%-36%),ITT 为 47% (16%-72%)。在起始不坚持治疗的情况下,IPCW的偏差百分比为-29%至110%,SNFTM为-34%至108%,PP为-32%至102%,ITT为-18%至200%:在本研究中,与 ITT 分析相比,g-方法和 PP 在调整不依从性后对治疗效果的估计更为准确。然而,在某些情况下仍存在相当大的偏差:随机对照试验通常采用意向治疗(ITT)原则进行分析,该原则可得出与基础试验相关的有效疗效估计值,但当已知现实世界中患者的用药依从性与试验中观察到的依从性不同时,此类估计值很可能导致现实世界疗效和成本效益的代表性出现偏差。我们的模拟研究表明,当需要对不依从性进行调整时,通用方法(g-方法;IPCW、SNFTM)和按方案分析比 ITT 分析能提供更准确的治疗效果估计值;然而,即使采用了这些调整方法,在某些情况下仍可能存在相当大的偏差。
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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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