Pairwise pseudolikelihood approach for adjusting selection bias in meta-analysis

  • Kuk, Sunghee
  • Lee, Woojoo
Citations

WEB OF SCIENCE

0

초록

Meta-analysis provides a way of integrating several independent studies of interest. Since small studies with statistically significant results are more likely to be published, publication bias, which is a special case of selection bias, often occurs in meta analysis. Conditional likelihood and weighted estimating equation have been proposed to deal with publication bias, but they require to specify a correct selection probability model. In contrast, the pairwise pseudolikelihood approach can correct publication bias without fully specifying the correct selection probability model, but its performance in meta-analysis was not investigated. In this paper, we perform a numerical study about whether the pairwise pseudolikelihood approach is effective for solving publication bias arising from typical meta-analysis settings.

키워드

meta-analysispairwise pseudolikelihoodpublication biasselection biasPUBLICATION BIAS
제목
Pairwise pseudolikelihood approach for adjusting selection bias in meta-analysis
저자
Kuk, SungheeLee, Woojoo
DOI
10.5351/KJAS.2020.33.4.439
발행일
2020-08
유형
Article
저널명
응용통계연구
33
4
페이지
439 ~ 449