Fixed-effects model: the most convincing model for meta-analysis with few studies
Abstract
According to Davey et al. (2011) with a total of 22,453 meta-analyses from the January 2008 Issue of the Cochrane Database of Systematic Reviews, the median number of studies included in each meta-analysis is only three. In other words, about a half or more of meta-analyses conducted in the literature include only two or three studies. While the common-effect model (also referred to as the fixed-effect model) may lead to misleading results when the heterogeneity among studies is large, the conclusions based on the random-effects model may also be unreliable when the number of studies is small. Alternatively, the fixed-effects model avoids the restrictive assumption in the common-effect model and the need to estimate the between-study variance in the random-effects model. We note, however, that the fixed-effects model is under appreciated and rarely used in practice until recently. In this paper, we compare all three models and demonstrate the usefulness of the fixed-effects model when the number of studies is small. In addition, we propose a new estimator for the unweighted average effect in the fixed-effects model. Simulations and real examples are also used to illustrate the benefits of the fixed-effects model and the new estimator.
Cite
@article{arxiv.2002.04211,
title = {Fixed-effects model: the most convincing model for meta-analysis with few studies},
author = {Enxuan Lin and Tiejun Tong and Yong Chen and Yuedong Wang},
journal= {arXiv preprint arXiv:2002.04211},
year = {2020}
}
Comments
29 pages, 6 figures