gcplyr
was created to make it easier to import, wrangle, and do
model-free analyses of microbial growth curve data, as commonly output
by plate readers.
gcplyr
can flexibly import all the common data formats output by
plate readers and reshape them into ‘tidy’ formats for analyses.gcplyr
can import experimental designs from files or directly in
R
, then merge this design information with density data.gcplyr
and popular packages dplyr
and ggplot2
.gcplyr
can calculate plain and per-capita derivatives of density
data.gcplyr
has several methods to deal with noise in density or
derivatives data.gcplyr
can extract parameters like growth rate/doubling time,
maximum density (carrying capacity), lag time, area under the curve,
diauxic shifts, extinction, and more without fitting an equation for
growth to your data.Please send all questions, requests, comments, and bugs to mikeblazanin@gmail.com
You can install the version most-recently released on CRAN by running the following line in R:
install.packages("gcplyr")
You can install the most recently-released version from GitHub by running the following lines in R:
install.packages("devtools")
devtools::install_github("mikeblazanin/gcplyr")
The best way to get started is to check out the online
documentation, which includes
examples of all of the most common gcplyr
functions and walks through
how to import, reshape, and analyze growth curve data using gcplyr
from start to finish.
This documentation is also available as a series of pdf vignette files:
Please cite software as:
Blazanin, M. gcplyr: an R package for microbial growth curve data analysis. BMC Bioinformatics 25, 232 (2024). https://doi.org/10.1186/s12859-024-05817-3