Causal inference in multi-cohort studies using the target trial framework to identify and minimize sources of bias.

IF 5 2区 医学 Q1 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH
Marnie Downes, Meredith O'Connor, Craig A Olsson, David Burgner, Sharon Goldfeld, Elizabeth A Spry, George Patton, Margarita Moreno-Betancur
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引用次数: 0

Abstract

Longitudinal cohort studies, which follow a group of individuals over time, provide the opportunity to examine causal effects of complex exposures on long-term health outcomes. Utilizing data from multiple cohorts has the potential to add further benefit by improving precision of estimates through data pooling and by allowing examination of effect heterogeneity through replication of analyses across cohorts. However, the interpretation of findings can be complicated by biases that may be compounded when pooling data, or, contribute to discrepant findings when analyses are replicated. The "target trial" is a powerful tool for guiding causal inference in single-cohort studies. Here we extend this conceptual framework to address the specific challenges that can arise in the multi-cohort setting. By representing a clear definition of the target estimand, the target trial provides a central point of reference against which biases arising in each cohort and from data pooling can be systematically assessed. Consequently, analyses can be designed to reduce these biases and the resulting findings appropriately interpreted in light of potential remaining biases. We use a case study to demonstrate the framework and its potential to strengthen causal inference in multi-cohort studies through improved analysis design and clarity in the interpretation of findings. Special Collection: N/A.

利用目标试验框架在多队列研究中进行因果推断,以识别并尽量减少偏差来源。
纵向队列研究对一组个体进行长期跟踪,为研究复杂暴露对长期健康结果的因果影响提供了机会。利用来自多个队列的数据有可能带来更多益处,如通过数据汇集提高估算的精确度,以及通过在不同队列间复制分析来检验效应的异质性。然而,对研究结果的解释可能会因偏差而变得复杂,这些偏差可能会在汇集数据时加剧,或者在重复分析时导致研究结果的差异。目标试验 "是指导单队列研究中因果推断的有力工具。在此,我们扩展了这一概念框架,以应对多队列研究中可能出现的具体挑战。通过对目标估计值的明确定义,目标试验提供了一个中心参考点,可据此系统地评估每个队列和数据池产生的偏差。因此,在设计分析时可以减少这些偏差,并根据潜在的其余偏差对分析结果进行适当解释。我们通过一个案例研究来展示该框架及其通过改进分析设计和清晰解释研究结果来加强多队列研究中因果推断的潜力。特别收藏:不详。
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
American journal of epidemiology
American journal of epidemiology 医学-公共卫生、环境卫生与职业卫生
CiteScore
7.40
自引率
4.00%
发文量
221
审稿时长
3-6 weeks
期刊介绍: The American Journal of Epidemiology is the oldest and one of the premier epidemiologic journals devoted to the publication of empirical research findings, opinion pieces, and methodological developments in the field of epidemiologic research. It is a peer-reviewed journal aimed at both fellow epidemiologists and those who use epidemiologic data, including public health workers and clinicians.
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