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

journal contribution
posted on 2024-10-30, 00:52 authored by Marnie Downes, Meredith O’Connor, Craig OlssonCraig Olsson, David Burgner, Sharon Goldfeld, Liz SpryLiz Spry, George Patton, Margarita Moreno-Betancur
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.

History

Journal

American Journal of Epidemiology

Pagination

kwae405-

Location

Oxford, Eng.

Open access

  • No

ISSN

0002-9262

eISSN

1476-6256

Language

eng

Publisher

Oxford University Press

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