基于处理策略策略的估算方法基于PIONEER 1试验的仿真研究。

IF 1.3 4区 医学 Q4 PHARMACOLOGY & PHARMACY
James Bell, Thomas Drury, Tobias Mütze, Christian Bressen Pipper, Lorenzo Guizzaro, Marian Mitroiu, Khadija Rerhou Rantell, Marcel Wolbers, David Wright
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引用次数: 0

摘要

使用治疗策略策略来处理并发事件的估计在III期临床试验中很常见。该策略的一种估计方法是检索缺失,即使用并发事件后的观测数据乘以估算缺失数据。然而,由于数据稀疏性,这些方法存在方差膨胀和模型拟合的问题。本文介绍了这些方法的基于似然的版本,研究并比较了它们与现有的检索dropout方法、更简单的分析模型和基于参考的多重imputation的统计特性。我们使用基于II型糖尿病患者PIONEER 1 III期临床试验数据的模拟来提出复杂和相关的估计挑战。基于似然的方法显示出与它们的多重imputation等效相似的统计特性,但所有的检索dropout方法都存在高方差。检索dropout方法似乎比基于参考的方法偏差更小,导致偏差-方差权衡,但我们得出结论,大程度的方差膨胀往往比偏差更有问题。因此,只有简单的检索退出模型才适合作为临床试验的主要分析,并且只有在相信大多数数据遵循交互事件的情况下才会被观察到。尽管有很强的假设和倾向于保守偏差,但由于其相对较高的功率和适应大量缺失数据的能力,跳转到参考方法可能代表了一种更有希望的对症治疗估计方法。需要更多的研究来进一步发展如何评估治疗政策策略的治疗效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Estimation Methods for Estimands Using the Treatment Policy Strategy; a Simulation Study Based on the PIONEER 1 Trial.

Estimands using the treatment policy strategy for addressing intercurrent events are common in Phase III clinical trials. One estimation approach for this strategy is retrieved dropout whereby observed data following an intercurrent event are used to multiply impute missing data. However, such methods have had issues with variance inflation and model fitting due to data sparsity. This paper introduces likelihood-based versions of these approaches, investigating and comparing their statistical properties to the existing retrieved dropout approaches, simpler analysis models and reference-based multiple imputation. We use a simulation based upon the data from the PIONEER 1 Phase III clinical trial in Type II diabetics to present complex and relevant estimation challenges. The likelihood-based methods display similar statistical properties to their multiple imputation equivalents, but all retrieved dropout approaches suffer from high variance. Retrieved dropout approaches appear less biased than reference-based approaches, resulting in a bias-variance trade-off, but we conclude that the large degree of variance inflation is often more problematic than the bias. Therefore, only the simpler retrieved dropout models appear appropriate as a primary analysis in a clinical trial, and only where it is believed most data following intercurrent events will be observed. The jump-to-reference approach may represent a more promising estimation approach for symptomatic treatments due to its relatively high power and ability to fit in the presence of much missing data, despite its strong assumptions and tendency toward conservative bias. More research is needed to further develop how to estimate the treatment effect for a treatment policy strategy.

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来源期刊
Pharmaceutical Statistics
Pharmaceutical Statistics 医学-统计学与概率论
CiteScore
2.70
自引率
6.70%
发文量
90
审稿时长
6-12 weeks
期刊介绍: Pharmaceutical Statistics is an industry-led initiative, tackling real problems in statistical applications. The Journal publishes papers that share experiences in the practical application of statistics within the pharmaceutical industry. It covers all aspects of pharmaceutical statistical applications from discovery, through pre-clinical development, clinical development, post-marketing surveillance, consumer health, production, epidemiology, and health economics. The Journal is both international and multidisciplinary. It includes high quality practical papers, case studies and review papers.
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