Considering multiple outcomes with different weights informed the hierarchy of interventions in network meta-analysis.

J Clin Epidemiol

Université Paris Cité, Research Centre in Epidemiology and Statistics (CRESS-UMR1153), Inserm Paris, France; Department of Epidemiology, Columbia University Mailman School of Public Health, NY, USA.

Published: February 2023

AI Article Synopsis

  • The study aims to visualize and group competing interventions in network meta-analysis (NMA) by considering multiple outcomes and stakeholders' preferences using graphical methods and conjoint analysis.
  • The research involved reanalyzing 212 psychosis trials, focusing on outcomes like symptom reduction, treatment discontinuation, and weight gain, employing multidimensional scaling and hierarchical clustering.
  • Ultimately, the findings assist decision-makers in identifying optimal interventions by factoring in benefit-risk balance and patient preferences, leading to more informed choices in treatment selection.

Article Abstract

Objectives: Ranking metrics in network meta-analysis (NMA) are computed separately for each outcome. Our aim is to 1) present graphical ways to group competing interventions considering multiple outcomes and 2) use conjoint analysis for placing weights on the various outcomes based on the stakeholders' preferences.

Study Design And Setting: We used multidimensional scaling (MDS) and hierarchical tree clustering to visualize the extent of similarity of interventions in terms of the relative effects they produce through a random effect NMA. We reanalyzed a published network of 212 psychosis trials taking three outcomes into account as follows: reduction in symptoms of schizophrenia, all-cause treatment discontinuation, and weight gain.

Results: Conjoint analysis provides a mathematical method to transform judgements into weights that can be subsequently used to visually represent interventions on a two-dimensional plane or through a dendrogram. These plots provide insightful information about the clustering of interventions.

Conclusion: Grouping interventions can help decision makers not only to identify the optimal ones in terms of benefit-risk balance but also choose one from the best cluster based on other grounds, such as cost, implementation etc. Placing weights on outcomes allows considering patient profile or preferences.

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Source
http://dx.doi.org/10.1016/j.jclinepi.2022.12.025DOI Listing

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