PepsNMR
github.com/manonmartin/pepsnmrThis package provides R functions for common pre-procssing steps that are applied on 1H-NMR data. It also provides a function to read the FID signals directly in the Bruker format.
Sourced from
- GitHub — github.com/manonmartin/pepsnmr
- Bioconductor — PepsNMR
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