| Literature DB >> 29872216 |
Jean-Baptiste Pingault1,2, Paul F O'Reilly3, Tabea Schoeler4, George B Ploubidis5, Frühling Rijsdijk3, Frank Dudbridge6.
Abstract
Causal inference is essential across the biomedical, behavioural and social sciences.By progressing from confounded statistical associations to evidence of causal relationships, causal inference can reveal complex pathways underlying traits and diseases and help to prioritize targets for intervention. Recent progress in genetic epidemiology - including statistical innovation, massive genotyped data sets and novel computational tools for deep data mining - has fostered the intense development of methods exploiting genetic data and relatedness to strengthen causal inference in observational research. In this Review, we describe how such genetically informed methods differ in their rationale, applicability and inherent limitations and outline how they should be integrated in the future to offer a rich causal inference toolbox.Entities:
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Year: 2018 PMID: 29872216 DOI: 10.1038/s41576-018-0020-3
Source DB: PubMed Journal: Nat Rev Genet ISSN: 1471-0056 Impact factor: 53.242