DedooseR

R-CMD-check

DedooseR is an R package that connects with Dedoose to support the analysis of qualitative data. It was built to help researchers streamline workflows, explore qualitative data flexibly, and conduct qualitative coding and analysis with rigor.

Key Features

DedooseR currently has 8 key functions that allow you to:

Why This Package?

Ongoing challenges in qualitative research include defining what constitutes high-quality data and demonstrating transparency in how saturation is reached (Small & Calarco, 2022). Informed by guidelines for high-quality qualitative research (Hennink & Kaiser, 2022), DedooseR allows you to better understand your data with quality tags in Dedoose like:

By tagging these indicators in Dedoose and exploring them in R, this allows for gain greater confidence in both the depth and diversity of datasets.

Installation

You can install the released version of DedooseR from CRAN:

install.packages("DedooseR")

And load it using:

library(DedooseR)

How do I use the package?

The vignettes walk you through how to use each of the functions, from cleaning to recoding to viewing excerpts to assessing saturation and creating code co-occurence network maps, so do check them out!

Acknowledgements

We sincerely thank Ritvik Kammend, Karen Edema, and Safalta Shukla for their contributions to testing the package and refining its documentation and examples. Their care and curiosity helped the project take a clearer, steadier shape.

References

Hennink, M., & Kaiser, B. N. (2022). Sample sizes for saturation in qualitative research: A systematic review of empirical tests. Social science & medicine, 292, 114523.

Small, M. L., & Calarco, J. M. (2022). Qualitative Literacy: A Guide to Evaluating Ethnographic and Interview Research (1st ed.). University of California Press. https://doi.org/10.2307/j.ctv2vr9c4x