PROPKA predicts the pKa values of ionizable groups in proteins (version 3.0) and protein-ligand complexes (version 3.1) based in the 3D structure.
For proteins without ligands both version should produce the same result.
The method is described in the following papers, which you should cite in publications:
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Søndergaard, Chresten R., Mats HM Olsson, Michal Rostkowski, and Jan H. Jensen. "Improved Treatment of Ligands and Coupling Effects in Empirical Calculation and Rationalization of pKa Values." Journal of Chemical Theory and Computation 7, no. 7 (2011): 2284-2295.
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Olsson, Mats HM, Chresten R. Søndergaard, Michal Rostkowski, and Jan H. Jensen. "PROPKA3: consistent treatment of internal and surface residues in empirical pKa predictions." Journal of Chemical Theory and Computation 7, no. 2 (2011): 525-537.
See propka.ki.ku.dk for the PROPKA web server, using the tutorial.
No installation needed. Just clone and run.
- Python 3.1 or higher
- Clone the code from GitHub
- Run 'propka.py' with a .pdb file (see Examples)
Calculate using pdb file
./propka.py 1hpx.pdb
If for some reason your setup with python3.1+ is not located in '/usr/bin/python3', run the script
python3.2 propka.py 1hpx.pdb
Please run Tests/runtest.py/
after changes before pushing commits.
Please cite these references in publications:
-
Søndergaard, Chresten R., Mats HM Olsson, Michal Rostkowski, and Jan H. Jensen. "Improved Treatment of Ligands and Coupling Effects in Empirical Calculation and Rationalization of pKa Values." Journal of Chemical Theory and Computation 7, no. 7 (2011): 2284-2295.
-
Olsson, Mats HM, Chresten R. Søndergaard, Michal Rostkowski, and Jan H. Jensen. "PROPKA3: consistent treatment of internal and surface residues in empirical pKa predictions." Journal of Chemical Theory and Computation 7, no. 2 (2011): 525-537.