The metafor Package

A Meta-Analysis Package for R

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news:news [2021/06/09 12:58] Wolfgang Viechtbauernews:news [2022/01/02 13:51] Wolfgang Viechtbauer
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-==== June 9th, 2021Version 3.0 Released on CRAN ====+==== 2022-01-02More Forest Plot Examples ====
  
-A new version of the metafor package (version 3.0) has been published on CRANThis version includes a lot of updates that have accumulated in the development version of the package over the past 14-15 monthsSome highlights:+Happy New Year! Hope this one will be at least marginally less crazy than the previous ones ...
  
-  * The documentation has been further improved. now make use of the [[https://cran.r-project.org/package=mathjaxr|mathjaxr]] package to nicely render equations in the HTML help pages (and in order to do this, I had to create the mathjaxr package in the first place!).  +was recently asked whether I would add the feature to show multiple confidence intervals for each of the studies in a forest plot (e.g., by using lines with varying thickness) to the metafor packageTurns out that one can already do this without too much difficulty using the existing toolssimply by superimposing two forest plots on top of each otherThis is illustrated [[plots:forest_plot_with_multiple_cis|here]].
-  * ''selmodel()'' was added for fitting a wide variety of selection models, including the beta selection model by Citkowicz and Vevea (2017), various models described by Preston et al. (2004), and step function models (with the three-parameter selection model (3PSM) as a special case). +
-  * As another technique related to publication/small-sample bias, the ''tes()'' function was added to carry out the test of 'excess significance' (Ioannidis & Trikalinos, 2007; see also Francis, 2013). +
-  * The ''regtest()'' function now shows the 'limit estimate' of the (average) true effect/outcome. This is in essence what the PET/PEESE methods do (when the standard errors / sampling variances are used as predictors in a meta-regression model). +
-  * One can now also fit so-called 'location-scale models' via the ''rma()'' function (using the ''scale'' argument)With this, one can specify predictors for the amount of heterogeneity in the outcomes (to examine if the outcomes are more/less heterogeneous under certain circumstances). +
-  * The ''regplot()'' function can be used to draw bubble plots based on meta-regression models. For models involving multiple predictorsthe function draws the line for the 'marginal relationship' of a predictor. Confidence/prediction interval bands can also be shown. +
-  * Two functions were added that are related to the meta-analysis of correlation matrices / regression coefficients: ''rcalc()'' for calculating the var-cov matrix of correlation coefficients and ''matreg()'' for fitting regression models based on correlation/covariance matrices. +
-  * Sometimes, it might be necessary to aggregate a meta-analytic dataset with multiple outcomes from the same study to the study levelAn ''aggregate()'' method for ''escalc'' objects was added that can do this, while (approximately) accounting for various types of dependencies. +
-  * When using functions that allow for parallel processing, progress bars can now also be shown, thanks to the [[https://cran.r-project.org/package=pbapply|pbapply]] package. Gives you an idea whether to just grab a coffee or go out for lunch while your computer is chugging along. +
-  * 24 new datasets were added (there are now over 60 datasets included in the package). These datasets also cover advanced methodology, such as multivariate/multilevel models, network meta-analysis, phylogenetic meta-analysis, and models with a spatial correlation structure.+
  
-Lots of smaller tweaks/improvements were also made. I feel like so much has accumulated that this warranted a version jump to version 3.0. +also wanted to see to what extent one can reproduce forest plots created by different software or using the aesthetics of certain journalsI started with the recreation of a forest plot that was obtained using RevMan, the software provided by the Cochrane Collaboration for conducting and authoring Cochrane reviewsYou can find the figure and corresponding code for this [[plots:forest_plot_revman|here]]. Then I recreated forest plot that was obtained from an article in the British Medical Journal. The resulting figure and code can be found [[plots:forest_plot_bmj|here]].
- +
-==== April 21st, 2021: Better Degrees of Freedom Calculation ==== +
- +
-In random/mixed-effects models as can be fitted with the [[https://wviechtb.github.io/metafor/reference/rma.html|rma()]] function, tests and confidence intervals for the model coefficients are by default constructed based on a standard normal distribution. In general, it is better to use the Knapp-Hartung method for this purpose, which does two things: (1) the standard errors of the model coefficients are estimated in a slightly different way and (2) a t-distribution is used with $k-p$ degrees of freedom (where $k$ is the total number of estimates and $p$ the number of coefficients in the model). When conducting a simultaneous (or 'omnibus') test of multiple coefficients, then an F-distribution with $m$ and $k-p$ degrees of freedom is used (for the 'numerator' and 'denominator' degrees of freedom, respectively), with $m$ denoting the number of coefficients testedTo use this method, set argument ''test="knha"''+
- +
-The Knapp-Hartung method cannot be directly generalized to more complex models as can be fitted with the [[https://wviechtb.github.io/metafor/reference/rma.mv.html|rma.mv()]] function, although we can still use t- and F-distributions for conducting tests of one or multiple model coefficients in the context of such models. This is possible by setting ''test="t"''. However, this then raises the question how the (denominator) degrees of freedom for such tests should be calculated. By default, the degrees of freedom are calculated as described above. However, this method does not reflect the complexities of models that are typically fitted with the ''rma.mv()'' function. For examplein multilevel models (with multiple estimates nested within studies), a predictor (or 'moderator') may be measured at the study level (i.e., it is constant for all estimates belonging to the same study) or at the level of the individual estimates (i.e., it might vary within studies). By setting argument ''dfs="contain"'', a method is used for calculating the degrees of freedom that tends to provide tests with better control of the Type I error rate and confidence intervals with closer to nominal coverage ratesSee the documentation of the function for further details. +
- +
-==== April 3rd, 2021: Scatter Plots / Bubble Plots for Meta-Regression Models ==== +
- +
-I finally got around to adding a function to the package for drawing scatter plots (also known as bubble plots) for meta-regression models. See the documentation of the [[https://wviechtb.github.io/metafor/reference/regplot.html|regplot()]] function for further detailsAn example illustrating such a plot is provided [[plots:meta_analytic_scatterplot|here]].+
  
 +Although it takes a bit of effort to recreate these figures (especially if one wants to make them look almost identical to the originals), it shows that one can essentially recreate any forest plot using the various ''forest()'' functions from metafor and then some additional functions like ''text()'', ''points()'', and so on, which give you full control over how things are drawn and the information included in the figure.
news/news.txt · Last modified: 2024/03/29 10:44 by Wolfgang Viechtbauer