Abstract When randomized trials have addressed multiple interventions for the same health problem, network meta-analyses (NMAs) permit researchers to statistically pool data from individual studies including evidence from both direct and indirect comparisons. Grasping the significance of the results of NMAs may be very challenging. Authors may present the findings from such analyses in several numerical and graphical ways. In this paper, we discuss ranking strategies and visual depictions of rank, including the surface under the cumulative ranking (SUCRA) curve method. We present ranking approaches’ merits and limitations and provide an example of how to apply the results of a NMA to clinical practice
Pairwise meta-analysis is an established statistical tool for synthesizing evidence from multiple tr...
Pairwise meta-analysis is an established statistical tool for synthesizing evidence from multiple tr...
Objectives: Ranking metrics in network meta-analysis (NMA) are computed separately for each outcome....
There are often multiple potential interventions to treat a disease; therefore, we need a method for...
There are often multiple potential interventions to treat a disease; therefore, we need a method for...
International audienceWhen interpreting the relative effects from a network meta-analysis (NMA), res...
Evidence from randomised trials and their meta-analyses is typically formed of head-to-head comparis...
OBJECTIVES: To present graphical tools for reporting network meta-analysis (NMA) results aiming to i...
Currently, network meta-analyses (NMAs) are the only technique allowing to compare and rank numerous...
Objectives: To present a novel and simple graphical approach to improve the presentation of the trea...
Pairwise meta-analysis is an established statistical tool for synthesizing evidence from multiple tr...
This review aimed to arrange the concepts of a network meta-analysis (NMA) and to demonstrate the an...
Network meta-analysis (NMA) expands upon traditional meta-analysis by integrating three or more inte...
This article belongs to a collaborative methodological series of narrative reviews about biostatisti...
OBJECTIVE To assess the characteristics and core statistical methodology specific to network meta...
Pairwise meta-analysis is an established statistical tool for synthesizing evidence from multiple tr...
Pairwise meta-analysis is an established statistical tool for synthesizing evidence from multiple tr...
Objectives: Ranking metrics in network meta-analysis (NMA) are computed separately for each outcome....
There are often multiple potential interventions to treat a disease; therefore, we need a method for...
There are often multiple potential interventions to treat a disease; therefore, we need a method for...
International audienceWhen interpreting the relative effects from a network meta-analysis (NMA), res...
Evidence from randomised trials and their meta-analyses is typically formed of head-to-head comparis...
OBJECTIVES: To present graphical tools for reporting network meta-analysis (NMA) results aiming to i...
Currently, network meta-analyses (NMAs) are the only technique allowing to compare and rank numerous...
Objectives: To present a novel and simple graphical approach to improve the presentation of the trea...
Pairwise meta-analysis is an established statistical tool for synthesizing evidence from multiple tr...
This review aimed to arrange the concepts of a network meta-analysis (NMA) and to demonstrate the an...
Network meta-analysis (NMA) expands upon traditional meta-analysis by integrating three or more inte...
This article belongs to a collaborative methodological series of narrative reviews about biostatisti...
OBJECTIVE To assess the characteristics and core statistical methodology specific to network meta...
Pairwise meta-analysis is an established statistical tool for synthesizing evidence from multiple tr...
Pairwise meta-analysis is an established statistical tool for synthesizing evidence from multiple tr...
Objectives: Ranking metrics in network meta-analysis (NMA) are computed separately for each outcome....