Assessing causality in deprescribing studies: A focus on adverse drug events and adverse drug withdrawal events.

Xiaojuan Li, Elizabeth A Bayliss, M Alan Brookhart, Matthew L Maciejewski
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Abstract

Generating real-world evidence about the effect of medication discontinuation or dose reduction on outcomes, such as reduction of adverse drug effects (ADE; intended benefit) and occurrence of adverse drug withdrawal events (ADWE; unintended harm), is crucial to informing deprescribing decisions. Determining the causal effects of deprescribing is difficult for many reasons, including lack of randomization in real-world study designs and other design and measurement issues that pose threats to internal validity. The inherent challenge is how to identify the effects, both intended benefits and unintended harms, of a new medication stoppage or reduction when implemented in patients with many potential clinical and social risks that may influence the likelihood of deprescribing as well as outcomes. We discuss methodological issues of estimating the effect of medication discontinuation or reduction on risk of ADEs and ADWEs considering: (1) sampling study populations of sufficient size with the potential to demonstrate clinically meaningful and quantifiable outcomes, (2) accurate and appropriately timed measurement of covariates, outcomes, and discontinuation, and (3) statistical approaches to managing confounding and other biases inherent in long-term medication use by individuals with multiple morbidities. Designing rigorous deprescribing studies that address internal validity threats will support evidence generation by improving the ability to assess benefits and harms when the exposure of interest is the absence of a medication. Iterative learnings about data quality, variable definition, variable measurement, and exposure-outcome associations will inform strategies to improve the causal inferences possible in real-world deprescribing studies.

评估停药研究中的因果关系:重点关注不良药物事件和不良停药事件。
就停药或减少剂量对结果(如减少药物不良反应(ADE;预期获益)和发生停药不良事件(ADWE;意外伤害))的影响提供真实世界的证据,对于为停药决策提供信息至关重要。由于多种原因,确定去处方化的因果效应十分困难,包括现实世界研究设计中缺乏随机性,以及对内部有效性构成威胁的其他设计和测量问题。内在的挑战在于如何确定新药停用或减量的效果,包括预期的益处和意外的危害,因为患者有许多潜在的临床和社会风险,这些风险可能会影响停药的可能性和结果。我们讨论了估计停药或减药对 ADEs 和 ADWEs 风险影响的方法学问题,其中考虑到:(1) 足够规模的研究人群取样,这些人群有可能展示出有临床意义且可量化的结果;(2) 对协变量、结果和停药进行准确且适时的测量;(3) 采用统计方法管理混杂因素以及患有多种疾病的患者长期用药过程中固有的其他偏差。设计能解决内部有效性威胁的严格的停药研究,将能提高在不用药的情况下评估获益和危害的能力,从而为证据的生成提供支持。在数据质量、变量定义、变量测量和暴露-结果关联等方面的迭代学习将为改进真实世界去处方化研究中的因果推论提供策略信息。
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