Decision curve analysis for personalized treatment choice between multiple options Journal Article


Authors: Chalkou, K.; Vickers, A. J.; Pellegrini, F.; Manca, A.; Salanti, G.
Article Title: Decision curve analysis for personalized treatment choice between multiple options
Abstract: Background: Decision curve analysis can be used to determine whether a personalized model for treatment benefit would lead to better clinical decisions. Decision curve analysis methods have been described to estimate treatment benefit using data from a single randomized controlled trial. Objectives: Our main objective is to extend the decision curve analysis methodology to the scenario in which several treatment options exist and evidence about their effects comes from a set of trials, synthesized using network meta-analysis (NMA). Methods: We describe the steps needed to estimate the net benefit of a prediction model using evidence from studies synthesized in an NMA. We show how to compare personalized versus one-size-fit-all treatment decision-making strategies, such as “treat none” or “treat all patients with a specific treatment” strategies. First, threshold values for each included treatment need to be defined (i.e., the minimum risk difference compared with control that renders a treatment worth taking). The net benefit per strategy can then be plotted for a plausible range of threshold values to reveal the most clinically useful strategy. We applied our methodology to an NMA prediction model for relapsing-remitting multiple sclerosis, which can be used to choose between natalizumab, dimethyl fumarate, glatiramer acetate, and placebo. Results: We illustrated the extended decision curve analysis methodology using several threshold value combinations for each available treatment. For the examined threshold values, the “treat patients according to the prediction model” strategy performs either better than or close to the one-size-fit-all treatment strategies. However, even small differences may be important in clinical decision making. As the advantage of the personalized model was not consistent across all thresholds, improving the existing model (by including, for example, predictors that will increase discrimination) is needed before advocating its clinical usefulness. Conclusions: This novel extension of decision curve analysis can be applied to NMA-based prediction models to evaluate their use to aid treatment decision making. Decision curve analysis is extended into a (network) meta-analysis framework. Personalized models predicting treatment benefit are evaluated when several treatment options are available and evidence about their effects comes from a set of trials. Detailed steps to compare personalized versus one-size-fit-all treatment decision-making strategies are outlined. This extension of decision curve analysis can be applied to (network) meta-analysis–based prediction models to evaluate their use to aid treatment decision making. © The Author(s) 2022.
Keywords: randomized controlled trials as topic; clinical decision making; natalizumab; multiple sclerosis; meta analysis; personalized medicine; decision curve analysis; randomized controlled trial (topic); prediction model; net benefit; clinical decision-making; dimethyl fumarate; humans; human; precision medicine; multiple sclerosis, relapsing-remitting; clinical usefulness; network meta-analysis
Journal Title: Medical Decision Making
Volume: 43
Issue: 3
ISSN: 0272-989X
Publisher: Sage Publications  
Date Published: 2023-04-01
Start Page: 337
End Page: 349
Language: English
DOI: 10.1177/0272989x221143058
PUBMED: 36511470
PROVIDER: scopus
PMCID: PMC10021120
DOI/URL:
Notes: The MSK Cancer Center Support Grant (P30 CA008748) is acknowledged in the PubMed record and PDF -- Source: Scopus
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  1. Andrew J Vickers
    880 Vickers