GladiaTOX
github.com/philipmorrisintl/gladiatoxGladiaTOX R package is an open-source, flexible solution to high-content screening data processing and reporting in biomedical research. GladiaTOX takes advantage of the tcpl core functionalities and provides a number of extensions: it provides a web-service solution to fetch raw data; it computes severity scores and exports ToxPi formatted files; furthermore it contains a suite of functionalities to generate pdf reports for quality control and data processing.
Sourced from
- Bioconductor — GladiaTOX
- GitHub — github.com/philipmorrisintl/gladiatox
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