MetaDose provides a suite of functions to perform linear
and nonlinear dose-response meta-regression on study-level data. It
supports both continuous (mdcont()) and binary
(mdbin()) outcomes, with visualization and S3 methods for
easy inspection of results.
The workflow is:
mdcont() for continuous
outcomes or mdbin() for binary outcomes to estimate linear
or nonlinear dose-response relationships, including restricted cubic
spline modeling.dose
object’s plot() method to generate publication-ready
dose-response plots, and print() to inspect the model
summaries.MetaDose provides an interactive Shiny
application. The app allows uploading data, performing linear or
nonlinear dose-response meta-regression, and visualizing results without
writing R code.The Shiny app is hosted online and can be accessed here: MetaDose Shiny App
This approach helps researchers understand the relationship between dose and outcome in a meta-analytic context, providing both numerical and graphical summaries.
Install the development version of MetaDose from GitHub
with:
# install.packages("remotes")
remotes::install_github("asmpro7/MetaDose")Continuous Outcome Example
# Perform linear and nonlinear dose-response meta-regression
cont_results <- mdcont(
data = study_data,
mean.e = mean_e,
sd.e = sd_e,
n.e = n_e,
mean.c = mean_c,
sd.c = sd_c,
n.c = n_c,
dose = dose,
measure = "MD"
)
# Print both linear and nonlinear model summaries
print(cont_results, model = "both")
# Plot the dose-response curves
plot(cont_results, model = "both")Binary Outcome Example
# Perform linear and nonlinear dose-response meta-regression
bin_results <- mdbin(
data = study_data,
event.e = event_e,
n.e = n_e,
event.c = event_c,
n.c = n_c,
dose = dose,
measure = "RR"
)
# Print model summaries
print(bin_results, model = "both")
# Plot the dose-response curves
plot(bin_results, model = "both")