| Literature DB >> 30999733 |
Sung Ryul Shim1,2, Seong-Jang Kim3,4, Jonghoo Lee5, Gerta Rücker6.
Abstract
The objective of this study is to describe the general approaches to network meta-analysis that are available for quantitative data synthesis using R software. We conducted a network meta-analysis using two approaches: Bayesian and frequentist methods. The corresponding R packages were "gemtc" for the Bayesian approach and "netmeta" for the frequentist approach. In estimating a network meta-analysis model using a Bayesian framework, the "rjags" package is a common tool. "rjags" implements Markov chain Monte Carlo simulation with a graphical output. The estimated overall effect sizes, test for heterogeneity, moderator effects, and publication bias were reported using R software. The authors focus on two flexible models, Bayesian and frequentist, to determine overall effect sizes in network meta-analysis. This study focused on the practical methods of network meta-analysis rather than theoretical concepts, making the material easy to understand for Korean researchers who did not major in statistics. The authors hope that this study will help many Korean researchers to perform network meta-analyses and conduct related research more easily with R software.Entities:
Keywords: Bayes’ theorem; Consistency; Mixed treatment comparison; Multiple treatments meta-analysis; Network meta-analysis; Transitivity
Mesh:
Year: 2019 PMID: 30999733 PMCID: PMC6635665 DOI: 10.4178/epih.e2019013
Source DB: PubMed Journal: Epidemiol Health ISSN: 2092-7193
Figure 1.Monte Carlo simulation.
Figure 2.Overall concept of the Bayesian approach using a Markov chain Monte Carlo (MCMC) simulation.
Figure 3.Flow chart of network meta-analysis using the “gemtc” R package. MCMC, Markov chain Monte Carlo; DIC, deviance information criterion.
Figure 4.Network plot using the “gemtc” package. A: placebo; B: IV (single); C: IV (double); D: topical; E: combination. IV, intravenous injection.
Figure 5.Trace and density plots: (A) iterations=100 (left) vs. 500 (right); (B) iterations=10,000 & thin=20; (C) iterations=10,000 & thin=10.
Figure 6.Forest plot_reference A. A: placebo; B: IV (single); C: IV (double); D: topical; E: combination. IV, intravenous; OR, odds ratio; CrI, credible interval.
Figure 7.Flow chart of network meta-analysis using the “netmeta” R package.
Comparison effect sizes between frequentist and Bayesian method in network meta-analysis
| Data type | Treatment | Frequentist approach | Bayesian approach[ | |||
|---|---|---|---|---|---|---|
| STATA[ | R "nemeta" package | R " | ||||
| Fixed | Random | Fixed | Random | |||
| Binary | Placebo | 1.000 (reference) | 1.000 (reference) | 1.000 (reference) | 1.000 (reference) | 1.000 (reference) |
| IV (single) | 0.273 (0.186, 0.399) | 0.273 (0.186, 0.399) | 0.273 (0.186, 0.399) | 0.263 (0.181, 0.379) | 0.264 (0.173, 0.399) | |
| IV (double) | 0.229 (0.146, 0.360) | 0.229 (0.146, 0.360) | 0.229 (0.146, 0.360) | 0.220 (0.138, 0.346) | 0.220 (0.138, 0.357) | |
| Topical | 0.329 (0.197, 0.550) | 0.329 (0.197, 0.550) | 0.329 (0.197, 0.550) | 0.324 (0.193, 0.534) | 0.322 (0.180, 0.551) | |
| Combination | 0.033 (0.006, 0.175) | 0.033 (0.006, 0.175) | 0.033 (0.006, 0.175) | 0.015 (0.001, 0.089) | 0.014 (0.000, 0.083) | |
Values are presented as odds ratio (95% confidence interval).
IV, intravenous injection.
Effect size (95% credible interval).
Design-by-treatment interaction model.