| Literature DB >> 31592444 |
Andrew J Vickers1, Ben van Calster2,3, Ewout W Steyerberg3.
Abstract
BACKGROUND: Decision curve analysis is a method to evaluate prediction models and diagnostic tests that was introduced in a 2006 publication. Decision curves are now commonly reported in the literature, but there remains widespread misunderstanding of and confusion about what they mean. SUMMARY OF COMMENTARY: In this paper, we present a didactic, step-by-step introduction to interpreting a decision curve analysis and answer some common questions about the method. We argue that many of the difficulties with interpreting decision curves can be solved by relabeling the y-axis as "benefit" and the x-axis as "preference." A model or test can be recommended for clinical use if it has the highest level of benefit across a range of clinically reasonable preferences.Entities:
Keywords: Decision curve analysis; Educational paper; Net benefit
Year: 2019 PMID: 31592444 PMCID: PMC6777022 DOI: 10.1186/s41512-019-0064-7
Source DB: PubMed Journal: Diagn Progn Res ISSN: 2397-7523
Fig. 1A decision curve plotting benefit against preference
Fig. 2A decision curve plotting net benefit against threshold probability
Fig. 3A decision curve plotting decrease in interventions against threshold probability