| Literature DB >> 24713881 |
Maya L Petersen1, Mark J van der Laan.
Abstract
The practice of epidemiology requires asking causal questions. Formal frameworks for causal inference developed over the past decades have the potential to improve the rigor of this process. However, the appropriate role for formal causal thinking in applied epidemiology remains a matter of debate. We argue that a formal causal framework can help in designing a statistical analysis that comes as close as possible to answering the motivating causal question, while making clear what assumptions are required to endow the resulting estimates with a causal interpretation. A systematic approach for the integration of causal modeling with statistical estimation is presented. We highlight some common points of confusion that occur when causal modeling techniques are applied in practice and provide a broad overview on the types of questions that a causal framework can help to address. Our aims are to argue for the utility of formal causal thinking, to clarify what causal models can and cannot do, and to provide an accessible introduction to the flexible and powerful tools provided by causal models.Entities:
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Year: 2014 PMID: 24713881 PMCID: PMC4077670 DOI: 10.1097/EDE.0000000000000078
Source DB: PubMed Journal: Epidemiology ISSN: 1044-3983 Impact factor: 4.822