EvidenceSynthesis is part of HADES.
IntroductionThis R package contains routines for combining causal effect estimates and study diagnostics across multiple data sites in a distributed study. This includes functions for performing meta-analysis and forest plots.
Features# Simulate some data for this example:
populations <- simulatePopulations()
# Fit a Cox regression at each data site, and approximate likelihood function:
fitModelInDatabase <- function(population) {
cyclopsData <- Cyclops::createCyclopsData(Surv(time, y) ~ x + strata(stratumId),
data = population,
modelType = "cox")
cyclopsFit <- Cyclops::fitCyclopsModel(cyclopsData)
approximation <- approximateLikelihood(cyclopsFit, parameter = "x", approximation = "custom")
return(approximation)
}
approximations <- lapply(populations, fitModelInDatabase)
approximations <- do.call("rbind", approximations)
# At study coordinating center, perform meta-analysis using per-site approximations:
estimate <- computeBayesianMetaAnalysis(approximations)
estimate
# mu mu95Lb mu95Ub muSe tau tau95Lb tau95Ub logRr seLogRr
# 1 0.5770562 -0.2451619 1.382396 0.4154986 0.2733942 0.004919128 0.7913512 0.5770562 0.4152011
Technology
This an R package with some parts implemented in Java.
System requirementsRequires R and Java.
Getting StartedMake sure your R environment is properly configured. This means that Java must be installed. See these instructions for how to configure your R environment.
In R, use the following commands to download and install EvidenceSynthesis:
install.packages("EvidenceSynthesis")
Documentation can be found on the package website.
PDF versions of the documentation are also available:
Read here how you can contribute to this package.
LicenseEvidenceSynthesis is licensed under Apache License 2.0
DevelopmentThis package is being developed in RStudio.
Development statusBeta
RetroSearch is an open source project built by @garambo | Open a GitHub Issue
Search and Browse the WWW like it's 1997 | Search results from DuckDuckGo
HTML:
3.2
| Encoding:
UTF-8
| Version:
0.7.4