| Literature DB >> 18513392 |
Gerta Rücker1, Martin Schumacher.
Abstract
BACKGROUND: Simpson's paradox is sometimes referred to in the areas of epidemiology and clinical research. It can also be found in meta-analysis of randomized clinical trials. However, though readers are able to recalculate examples from hypothetical as well as real data, they may have problems to easily figure where it emerges from.Entities:
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Year: 2008 PMID: 18513392 PMCID: PMC2438436 DOI: 10.1186/1471-2288-8-34
Source DB: PubMed Journal: BMC Med Res Methodol ISSN: 1471-2288 Impact factor: 4.615
Pooled data of rosiglitazone meta-analysis (full data see ref. [16])
| Events | Total | Fraction | |
| Rosiglitazone group | 86 | 15556 | 0.5528% |
| Control group | 72 | 12277 | 0.5865% |
Figure 1Scatterplot of correlation between two continuous variables Different colors represent different levels of Z.
Figure 2Three plots elucidating effect reversion in rosiglitazone meta-analysis: (a) Scatterplot of fraction of events against proportion of patients in the active treatment group (left panel). (b) Line plot displaying risk differences within trials (middle panel). 0 = control group, 1 = active treatment group. (c) Overlay plot of scatterplot and line plot (right panel).
Figure 3Three plots illustrating Simpson's paradox in a meta-analysis of case-control studies: (a) Scatterplot of frequency of exposition (on a log odds scale) against proportion of cases (left panel). (b) Line plot displaying log odds ratios within studies (middle panel). 0 = control group, 1 = case group. (c) Curved overlay plot (right panel).
Overlay plot compared to Baker-Kramer plot [3]
| Element of the plot | Plot type | |
| Overlay plot | Baker-Kramer plot | |
| Treatment (proportion) | Binary confounder (proportion) | |
| Outcome | Outcome | |
| Lines | Strata (here: Trials) | Treatments |