Network meta‐analysis, electrical networks and graph theory

Network meta-analysis is an active field of research in clinical biostatistics. It aims to combine information from all randomized comparisons among a set of treatments for a given medical condition. We show how graph-theoretical methods can be applied to network meta-analysis. A meta-analytic graph consists of vertices (treatments) and edges (randomized comparisons). We illustrate the correspondence between meta-analytic networks and electrical networks, where variance corresponds to resistance, treatment effects to voltage, and weighted treatment effects to current flows. Based thereon, we then show that graph-theoretical methods that have been routinely applied to electrical networks also work well in network meta-analysis. In more detail, the resulting consistent treatment effects induced in the edges can be estimated via the Moore-Penrose pseudoinverse of the Laplacian matrix. Moreover, the variances of the treatment effects are estimated in analogy to electrical effective resistances. It is shown that this method, being computationally simple, leads to the usual fixed effect model estimate when applied to pairwise meta-analysis and is consistent with published results when applied to network meta-analysis examples from the literature. Moreover, problems of heterogeneity and inconsistency, random effects modeling and including multi-armed trials are addressed. Copyright © 2012 John Wiley & Sons, Ltd.

[1]  Lindsay Paterson Circuits and efficiency in incomplete block designs , 1983 .

[2]  S Dias,et al.  Checking consistency in mixed treatment comparison meta‐analysis , 2010, Statistics in medicine.

[3]  I. Gutman,et al.  Generalized inverse of the Laplacian matrix and some applications , 2004 .

[4]  Georgia Salanti,et al.  Multiple-treatments meta-analysis of chemotherapy and targeted therapies in advanced breast cancer. , 2008, Journal of the National Cancer Institute.

[5]  François Fouss,et al.  Random-Walk Computation of Similarities between Nodes of a Graph with Application to Collaborative Recommendation , 2007, IEEE Transactions on Knowledge and Data Engineering.

[6]  Teri Lynn Herbert,et al.  Characteristics of recent biostatistical methods adopted by researchers publishing in general/internal medicine journals , 2013, Statistics in medicine.

[7]  Georgia Salanti,et al.  Indirect and mixed‐treatment comparison, network, or multiple‐treatments meta‐analysis: many names, many benefits, many concerns for the next generation evidence synthesis tool , 2012, Research synthesis methods.

[8]  S. Thompson,et al.  Quantifying heterogeneity in a meta‐analysis , 2002, Statistics in medicine.

[9]  Stephen Senn,et al.  The Many Modes of Meta , 2000 .

[10]  Georgia Salanti,et al.  Evaluation of networks of randomized trials , 2008, Statistical methods in medical research.

[11]  F. Yates THE RECOVERY OF INTER-BLOCK INFORMATION IN BALANCED INCOMPLETE BLOCK DESIGNS , 1940 .