2024
DOI: 10.1002/sim.10277
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Bayesian Decision Curve Analysis With Bayesdca

Giuliano Netto Flores Cruz,
Keegan Korthauer

Abstract: Clinical decisions are often guided by clinical prediction models or diagnostic tests. Decision curve analysis (DCA) combines classical assessment of predictive performance with the consequences of using these strategies for clinical decision‐making. In DCA, the best decision strategy is the one that maximizes the net benefit: the net number of true positives (or negatives) provided by a given strategy. Here, we employ Bayesian approaches to DCA, addressing four fundamental concerns when evaluating clinical de… Show more

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