Heterogeneity testing in meta‐analysis of genome searches
University of Thessaly · Tufts University · +2 more institutions
Abstract
Genome searches for identifying susceptibility loci for the same complex disease often give inconclusive or inconsistent results. Genome Search Meta-analysis (GSMA) is an established non-parametric method to identify genetic regions that rank high on average in terms of linkage statistics (e.g., lod scores) across studies. Meta-analysis typically aims not only to obtain average estimates, but also to quantify heterogeneity. However, heterogeneity testing between studies included in GSMA has not been developed yet. Heterogeneity may be produced by differences in study designs, study populations, and chance, and the extent of heterogeneity might influence the conclusions of a meta-analysis. Here, we propose and…
Citation impact
- FWCI
- 7.43
- Percentile
- 100%
- References
- 32
Authors
2Topics & keywords
- Meta-analysis
- Genetic heterogeneity
- Computational biology
- Linkage (software)
- Biology
- Genetics
- Statistics
- Medicine
- Good health and well-being