Directed acyclic graphs and causal thinking in clinical risk prediction modeling.
Marco PiccininniStefan KonigorskiJessica L RohmannTobias KurthPublished in: BMC medical research methodology (2020)
Our findings provide a theoretical basis for the intuition that a diagnostic clinical risk prediction model including causes as predictors is likely to be more transportable. Furthermore, using DAGs to identify Markov Blanket variables may be a useful, efficient strategy to select predictors in clinical risk prediction models if strong knowledge of the underlying causal structure exists or can be learned.
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