
Background Publication bias is a form of scientific misconduct. It threatens the validity of research results and the credibility of science. Although several tests on publication bias exist, no in-depth evaluations are available that examine which test performs best for different research settings. Methods Four tests on publication bias, Egger’s test (FAT), p-uniform, the test of excess significance (TES), as well as the caliper test, were evaluated in a Monte Carlo simulation. Two different types of publication bias and its degree (0%, 50%, 100%) were simulated. The type of publication bias was defined either as file-drawer , meaning the repeated analysis of new datasets, or p-hacking , meaning the inclusion of covariates in order to obtain a significant result. In addition, the underlying effect ( β = 0, 0.5, 1, 1.5), effect heterogeneity, the number of observations in the simulated primary studies ( N = 100, 500), and the number of observations for the publication bias tests ( K = 100, 1,000) were varied. Results All tests evaluated were able to identify publication bias both in the file-drawer and p-hacking condition. The false positive rates were, with the exception of the 15%- and 20%-caliper test, unbiased. The FAT had the largest statistical power in the file-drawer conditions, whereas under p-hacking the TES was, except under effect heterogeneity, slightly better. The CTs were, however, inferior to the other tests under effect homogeneity and had a decent statistical power only in conditions with 1,000 primary studies. Discussion The FAT is recommended as a test for publication bias in standard meta-analyses with no or only small effect heterogeneity. If two-sided publication bias is suspected as well as under p-hacking the TES is the first alternative to the FAT. The 5%-caliper test is recommended under conditions of effect heterogeneity and a large number of primary studies, which may be found if publication bias is examined in a discipline-wide setting when primary studies cover different research problems.
Monte carlo simulation, QH301-705.5, Statistics, R, Publication bias, Ethical Issues, p-uniform, Medicine, Test for excess significance, Caliper test, Biology (General)
Monte carlo simulation, QH301-705.5, Statistics, R, Publication bias, Ethical Issues, p-uniform, Medicine, Test for excess significance, Caliper test, Biology (General)
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| influence This indicator reflects the overall/total impact of an article in the research community at large, based on the underlying citation network (diachronically). | Top 10% | |
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