theGreatHerrLebert/ionmob
An open-source prediction framework for peptide ion collision cross section (CCS) values with python.
Predicts peptide ion collision cross section (CCS) values, a measure of an ion's size and shape, which is crucial for identifying peptides in mass spectrometry. It takes peptide sequences, their charge, and mass-to-charge ratio as input and outputs predicted CCS values. This tool is designed for mass spectrometry practitioners and researchers who analyze proteomic data.
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Use this if you need to accurately predict peptide ion CCS values for improved identification and characterization in your mass spectrometry experiments.
Not ideal if you are solely interested in basic peptide sequence analysis without the need for detailed structural or mobility predictions.
Stars
15
Forks
3
Language
Python
License
GPL-3.0
Category
Last pushed
Oct 06, 2023
Commits (30d)
0
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