期刊论文详细信息
Archives of Public Health
Metaprop: a Stata command to perform meta-analysis of binomial data
Victoria N Nyaga1  Marc Arbyn1  Marc Aerts2 
[1] Unit of Cancer Epidemiology, Scientific Institute of Public Health, Juliette Wytsmanstraat 14, 1050 Brussels, Belgium
[2] Center for Statistics, Hasselt University, Agoralaan Building D, 3590 Diepenbeek, Belgium
关键词: Freeman-Tukey double arcsine transformation;    Confidence intervals;    Logistic-normal;    Binomial;    Stata;    Meta-analysis;   
Others  :  1083890
DOI  :  10.1186/2049-3258-72-39
 received in 2014-05-05, accepted in 2014-07-11,  发布年份 2014
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【 摘 要 】

Background

Meta-analyses have become an essential tool in synthesizing evidence on clinical and epidemiological questions derived from a multitude of similar studies assessing the particular issue. Appropriate and accessible statistical software is needed to produce the summary statistic of interest.

Methods

Metaprop is a statistical program implemented to perform meta-analyses of proportions in Stata. It builds further on the existing Stata procedure metan which is typically used to pool effects (risk ratios, odds ratios, differences of risks or means) but which is also used to pool proportions. Metaprop implements procedures which are specific to binomial data and allows computation of exact binomial and score test-based confidence intervals. It provides appropriate methods for dealing with proportions close to or at the margins where the normal approximation procedures often break down, by use of the binomial distribution to model the within-study variability or by allowing Freeman-Tukey double arcsine transformation to stabilize the variances. Metaprop was applied on two published meta-analyses: 1) prevalence of HPV-infection in women with a Pap smear showing ASC-US; 2) cure rate after treatment for cervical precancer using cold coagulation.

Results

The first meta-analysis showed a pooled HPV-prevalence of 43% (95% CI: 38%-48%). In the second meta-analysis, the pooled percentage of cured women was 94% (95% CI: 86%-97%).

Conclusion

By using metaprop, no studies with 0% or 100% proportions were excluded from the meta-analysis. Furthermore, study specific and pooled confidence intervals always were within admissible values, contrary to the original publication, where metan was used.

【 授权许可】

   
2014 Nyaga et al.; licensee BioMed Central Ltd.

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