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orbbound

Sensitivity Analysis for Outcome Reporting Bias (ORB)


Description

Implementation of the method by Copas & Jackson (2004) to evaluate outcome reporting bias in meta-analysis. An upper bound for outcome reporting bias is estimated for a given number of studies suspected with outcome reporting bias.

Usage

orbbound(x, k.suspect = 1, tau = x$tau, left = NULL, backtransf = x$backtransf)

Arguments

x

An object of class meta.

k.suspect

Number of studies with suspected outcome reporting bias.

tau

Square-root of between-study variance tau-squared.

left

A logical indicating whether the cause of any selection bias is due to missing studies on the left or right of the funnel plot: left hand side if left=TRUE, right hand side if left=FALSE. If not set, the linear regression test for funnel plot asymmetry (i.e., function metabias(..., meth="linreg")) is used to determine whether studies are missing on the left or right hand side.

backtransf

A logical indicating whether results should be back transformed in printouts and plots. If backtransf=TRUE (default), results for sm="OR" are printed as odds ratios rather than log odds ratio, for example.

Details

This function provides the method by Copas and Jackson (2004) to estimate an upper bound for bias for a given number of studies with suspected outcome reporting bias.

Based on the upper bound of outcome reporting bias, treatment estimates and confidence limits adjusted for bias are calculated.

For comparison, the original meta-analysis is always considered in the sensitivity analysis (i.e. value 0 is always added to k.suspect).

Value

An object of class c("orbbound") with corresponding print and forest function. The object is a list containing the following components:

k.suspect, tau

As defined above.

maxbias

Maximum bias for given values of k.suspect.

fixed

Adjusted treatment estimates and corresponding quantities for fixed effect model (a list with elements TE, seTE, lower, upper, z, p, level, df).

random

Adjusted treatment estimates and corresponding quantities for random effects model (a list with elements TE, seTE, lower, upper, z, p, level, df).

left

Whether selection bias expected on left or right

x

Meta-analysis object (i.e. argument x from function call).

call

Function call.

version

Version of R package metasens used to create object.

Author(s)

Guido Schwarzer sc@imbi.uni-freiburg.de

References

Copas J, Jackson D (2004): A bound for publication bias based on the fraction of unpublished studies. Biometrics, 60, 146–53

See Also

Examples

data(Fleiss1993bin, package = "meta")

m1 <- metabin(d.asp, n.asp, d.plac, n.plac, data = Fleiss1993bin, sm = "OR")

orb1 <- orbbound(m1, k.suspect = 1:5)
print(orb1, digits = 2)
forest(orb1, xlim = c(0.75, 1.5))

# Same result
#
orb2 <- orbbound(m1, k.suspect = 1:5, left = FALSE)
print(orb2, digits = 2)

# Assuming bias in other direction
#
orb3 <- orbbound(m1, k.suspect = 1:5, left = TRUE)
print(orb3, digits = 2)

metasens

Statistical Methods for Sensitivity Analysis in Meta-Analysis

v0.6-0
GPL (>= 2)
Authors
Guido Schwarzer [cre, aut] (<https://orcid.org/0000-0001-6214-9087>), James R. Carpenter [aut] (<https://orcid.org/0000-0003-3890-6206>), Gerta Rücker [aut] (<https://orcid.org/0000-0002-2192-2560>)
Initial release
2021-01-15

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