Senn2013 | R Documentation |
Network meta-analysis in diabetes comparing effects of a number of drugs on the HbA1c value.
These data are used as an example in Senn et al. (2013) and have been preprocessed for use in R package netmeta.
A data frame with the following columns:
TE | treatment effect |
seTE | standard error of treatment effect |
treat1 | treatment 1 |
treat2 | treatment 2 |
treat1.long | treatment 1 (full treatment names) |
treat2.long | treatment 2 (full treatment names) |
studlab | Study label |
Treatment labels provided by columns treat1
and
treat2
have been abbreviated:
acar = Acarbose
benf = Benfluorex
metf = Metformin
migl = Miglitol
piog = Pioglitazone
plac = Placebo
rosi = Rosiglitazone
sita = Sitagliptin
sulf = Sulfonylurea
vild = Vildagliptin
Full treatment names are available in columns treat1.long
and treat2.long
.
Senn S, Gavini F, Magrez D, Scheen A (2013): Issues in performing a network meta-analysis. Statistical Methods in Medical Research, 22, 169–89
netmeta
data(Senn2013)
head(Senn2013)
## Not run:
# Common effects model
#
net1 <- netmeta(TE, seTE, treat1.long, treat2.long, studlab,
data = Senn2013, sm = "MD", random = FALSE, nchar.trts = 4)
net1
net1$Q.decomp
# Forest plot
#
forest(net1, ref = "plac")
# Comparison with reference group
#
netmeta(TE, seTE, treat1.long, treat2.long,
studlab, data = Senn2013, reference = "plac")
# Random effects model
#
net2 <- netmeta(TE, seTE, treat1.long, treat2.long, studlab,
data = Senn2013, common = FALSE)
net2
forest(net2, ref = "plac")
## End(Not run)
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