MSstatsResponse
Tools for detecting drug-protein interactions and estimating IC50 values from chemoproteomics data. Implements semi-parametric isotonic regression, bootstrapping, and curve fitting to evaluate compound effects on protein abundance.
- Repository
- github.com/vitek-lab/msstatsresponse
Source attribution
- Bioconductor — MSstatsResponse
Related resources
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