metacr(x, comp.no=1, outcome.no=1, method, sm, level=.settings$level, level.comb=.settings$level.comb, comb.fixed, comb.random, hakn=FALSE, method.tau="DL", tau.common=FALSE, prediction=.settings$prediction, level.predict=.settings$level.predict, swap.events, logscale, backtransf=.settings$backtransf, title, complab, outclab, keepdata=.settings$keepdata, warn=FALSE)rm5 created by R function
read.rm5."Inverse", "MH", or
"Peto", can be abbreviated."RR", "OR", "RD", "ASD", "HR",
"MD", or "SMD") is to be used for pooling of
studies."DL", "PM", "REML", "ML", "HS",
"SJ", "HE", or "EB", can be abbreviated.backtransf=TRUE
(default), results for sm="OR" are printed as odds ratios
rather than log odds ratios and results for sm="ZCOR" are
printed as correlations rather than Fisher's z transformed
correlations, for example.incr is added to studies with zero cell
frequencies)."meta" and "metabin",
"metacont", or "metagen" depending on outcome type
utilised in Cochrane Intervention review for selected outcome.
metabin, metacont, and metagen are
called - depending on the definition of the outcome in RevMan 5.
metabin, metacont, metagen, read.rm5# Locate export data file "Fleiss93_CR.csv"
# in sub-directory of package "meta"
#
filename <- system.file("data/Fleiss93_CR.csv.gz", package = "meta")
#
Fleiss93_CR <- read.rm5(filename)
# Same result as R command example(Fleiss93):
#
metacr(Fleiss93_CR)
# Same result as R command example(Fleiss93cont):
#
metacr(Fleiss93_CR, 1, 2)
forest(metacr(Fleiss93_CR, 1, 2))
# Change summary measure to RR
#
m1 <- metacr(Fleiss93_CR)
update(m1, sm="RR")
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