View source: R/influence.analysis.R
InfluenceAnalysis | R Documentation |
Conducts an influence analysis of a meta-analysis generated by meta
functions,
and allows to produce influence diagnostic plots.
InfluenceAnalysis(x, random = FALSE, subplot.heights = c(30,18),
subplot.widths = c(30,30), forest.lims = 'default',
return.separate.plots = FALSE, text.scale = 1)
x |
An object of class |
random |
Logical. Should the random-effects model be used to generate the influence diagnostics?
Uses the |
subplot.heights |
Concatenated array of two numerics. Specifies the heights of the
first (first number) and second (second number) row of the overall plot generated when plotting the results.
Default is |
subplot.widths |
Concatenated array of two numerics. Specifies the widths of the
first (first number) and second (second number) column of the overall results plot generated when plotting the results.
Default is |
forest.lims |
Concatenated array of two numerics. Specifies the x-axis limits of the forest plots
generated when plotting the results. Use |
return.separate.plots |
Logical. When plotted, should the influence plots be shown as separate plots in lieu of returning them in one overall plot? |
text.scale |
Positive numeric. Scaling factor for the text geoms used when plotting the results. Values <1 shrink the
text, while values >1 increase the text size. Default is |
The function conducts an influence analysis using the "Leave-One-Out" paradigm internally
and produces data for four influence diagnostics. Diagnostic plots can be produced by saving the output of the
function to an object and plugging it into the plot
function.
These diagnostics may be used to determine which study or effect size
may have an excessive influence on the overall results of a meta-analysis and/or contribute substantially to
the between-study heterogeneity in an analysis. This may be used for outlier detection and to test
the robustness of the overall results found in an analysis. Results for four diagnostics are calculated:
Baujat Plot: Baujat et al. (2002) proposed a plot to evaluate heterogeneity patterns in
a meta-analysis. The x-axis of the Baujat plot shows the overall heterogeneity contribution of each effect size
while the y-axis shows the influence of each effect size on the pooled result. The baujat
function is called internally to produce the results. Effect sizes or studies with high values
on both the x and y-axis may be considered to be influential cases; effect sizes or studies
with high heterogeneity contribution (x-axis) and low influence on the overall results can be outliers
which might be deleted to reduce the amount of between-study heterogeneity.
Influence Characteristics: Several influence analysis diagnostics
proposed by Viechtbauer & Cheung (2010). Results are calculated by an internal call
to influence.rma.uni
. In the console output, potentially influential studies are marked
with an asterisk (*
). When plotted, effect sizes/studies determined to be influential cases
using the "rules of thumb" described in Viechtbauer & Cheung (2010) are shown in red. For further
details, see the documentation of the influence.rma.uni
function.
Forest Plot for the Leave-One-Out Analysis, sorted by Effect Size: This
displays the effect size and I^2
-heterogeneity when omitting one of the k
studies each time.
The plot is sorted by effect size to determine which studies or effect sizes particularly
affect the overall effect size. Results are generated by an internal call to metainf
.
Forest Plot for the Leave-One-Out Analysis, sorted by I^2
: see above; results are sorted
by I^2
to determine the study for which exclusion results in the greatest reduction of heterogeneity.
A list
object of class influence.analysis
containing the
following objects is returned (if results are saved to a variable):
BaujatPlot
: The Baujat plot
InfluenceCharacteristics
: The Viechtbauer-Cheung influence characteristics plot
ForestEffectSize
: The forest plot sorted by effect size
ForestI2
: The forest plot sorted by between-study heterogeneity
Data
: A data.frame
containing the data used for plotting.
Otherwise, the function prints out (1) the results of the Leave-One-Out Analysis (sorted by I^2
),
(2) the Viechtbauer-Cheung Influence Diagnostics and (3) Baujat Plot data (sorted by heterogeneity contribution),
in this order. Plots can be produced manually by plugging a saved object of class InfluenceAnalysis
generated by
the function into the plot
function. It is also possible to only produce one specific plot by
specifying the name of the plot as a character
in the second argument of the plot
call (see Examples).
Mathias Harrer & David Daniel Ebert
Harrer, M., Cuijpers, P., Furukawa, T.A, & Ebert, D. D. (2019). Doing Meta-Analysis in R: A Hands-on Guide. DOI: 10.5281/zenodo.2551803. Chapter 6.3
DerSimonian R. & Laird N. (1986), Meta-analysis in clinical trials. Controlled Clinical Trials, 7, 177–188.
Viechtbauer, W., & Cheung, M. W.-L. (2010). Outlier and influence diagnostics for meta-analysis. Research Synthesis Methods, 1, 112–125.
influence.rma.uni
, metainf
, baujat
## Not run:
# Load 'ThirdWave' data
data(ThirdWave)
# Create 'meta' meta-analysis object
library(meta)
meta = metagen(TE, seTE, studlab = Author, data=ThirdWave)
# Run influence analysis; specify to return separate plots when plotted
inf.an = InfluenceAnalysis(meta, random = TRUE,
return.separate.plots = TRUE)
# Show results in console
inf.an
# Generate all plots
plot(inf.an)
# For baujat plot
plot(inf.an, "baujat")
# For influence diagnostics plot
plot(inf.an, "influence")
# For forest plot sorted by effect size
plot(inf.an, "ES")
# For forest plot sorted by I-squared
plot(inf.an, "I2")
## End(Not run)
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