Welcome to ClientVPS Mirrors

README


Random effects meta-analysis
for correlated test statistics


Meta-analysis is widely used to summarize estimated effects sizes across multiple statistical tests. Standard fixed and random effect meta-analysis methods assume that the estimated of the effect sizes are statistically independent. Here we relax this assumption and enable meta-analysis when the correlation matrix between effect size estimates is known. Fixed effect meta-analysis uses the method of Lin and Sullivan (2009), and random effects meta-analysis uses the method of Han, et al. 2016. An exentsion of the Lin-Sullivan method for finite sample size is described in Hoffman and Roussos (2025).

Usage

# Run fixed effects meta-analysis, 
#  accounting for correlation 
LS( beta, stders, Sigma)

# Run fixed effects meta-analysis, 
#  accounting for correlation,
#  and finite sample size using residual degrees of freedom
LS.empirical( beta, stders, Sigma, nu=rdf)

# Run random effects meta-analysis, 
#  accounting for correlation 
RE2C( beta, stders, Sigma)

Install from GitHub

devtools::install_github("DiseaseNeurogenomics/remaCor")

Need a high-speed mirror for your open-source project?
Contact our mirror admin team at info@clientvps.com.

This archive is provided as a free public service to the community.
Proudly supported by infrastructure from VPSPulse , RxServers , BuyNumber , UnitVPS , OffshoreName and secure payment technology by ArionPay.