This function performers a Bayesian meta-analysis
b3lmeta(
data,
mean.mu.0 = 0,
sd.mu.0 = 10,
scale.sigma.between = 0.5,
df.scale.between = 1,
scale.sigma.within = 0.5,
df.scale.within = 1,
nr.chains = 2,
nr.iterations = 10000,
nr.adapt = 1000,
nr.burnin = 1000,
nr.thin = 1
)
This function returns an object of the class "bmeta". This object contains the MCMC output of each parameter and hyper-parameter in the model and the data frame used for fitting the model.
A data frame with at least three columns with the following names: 1) TE = treatment effect, 2) seTE = the standard error of the treatment effect. 3) design = indicates study type or clustering subgroup.
Prior mean of the overall mean parameter mu.0 (mean across designs), default value is 0.
Prior standard deviation of mu.0 (mean across designs), the default value is 10.
Prior scale parameter for scale gamma distribution for the precision between study types. The default value is 0.5.
Degrees of freedom of the scale gamma distribution for the precision between study types. The default value is 1, which results in a Half Cauchy distribution for the standard deviation between studies. Larger values e.g. 30 corresponds to a Half Normal distribution.
Prior scale parameter for scale gamma distribution for the precision within study types. The default value is 0.5.
Degrees of freedom of the scale gamma distribution for the precision within study types. The default value is 1, which results in a Half Cauchy distribution for the standard deviation between studies. Larger values e.g. 30 corresponds to a Half Normal distribution.
Number of chains for the MCMC computations, default 2.
Number of iterations after adapting the MCMC, default is 10000. Some models may need more iterations.
Number of iterations in the adaptation process, default is 1000. Some models may need more iterations during adptation.
Number of iteration discard for burn-in period, default is 1000. Some models may need a longer burnin period.
Thinning rate, it must be a positive integer, the default value 1.
The results of the object of the class bcmeta can be extracted with R2jags or with rjags. In addition a summary, a print and a plot functions are implemented for this type of object.
Verde, P.E. (2021) A Bias-Corrected Meta-Analysis Model for Combining Studies of Different Types and Quality. Biometrical Journal; 1–17.
if (FALSE) {
library(jarbes)
}
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