qFit is a collection of programs for modeling multi-conformer protein structures.
Electron density maps obtained from high-resolution X-ray diffraction data are a spatial and temporal average of all conformations within the crystal. qFit evaluates an extremely large number of combinations of sidechain conformers, backbone fragments and small-molecule ligands to locally explain the electron density.
If you use this software, please cite:
- Wankowicz SA, Ravikumar A, Sharma S, Riley BT, Raju A, Hogan DW, van den Bedem H, Keedy DA, & Fraser JS. Uncovering Protein Ensembles: Automated Multiconformer Model Building for X-ray Crystallography and Cryo-EM. eLife. (2023).
- Riley BT, Wankowicz SA, et al. qFit 3: Protein and ligand multiconformer modeling for X-ray crystallographic and single-particle cryo-EM density maps. Protein Sci. 30, 270–285 (2021)
- van Zundert, G. C. P. et al. qFit-ligand Reveals Widespread Conformational Heterogeneity of Drug-Like Molecules in X-Ray Electron Density Maps. J. Med. Chem. 61, 11183–11198 (2018)
- Keedy, D. A., Fraser, J. S. & van den Bedem, H. Exposing Hidden Alternative Backbone Conformations in X-ray Crystallography Using qFit. PLoS Comput. Biol. 11, e1004507 (2015)
As this software relies on CVXPY, please also cite:
- Agrawal, Verschueren, Diamond, & Boyd. A Rewriting System for Convex Optimization Problems. Journal of Control and Decision. (2018).
- Diamond & Boyd. CVXPY: A Python-Embedded Modeling Language for Convex Optimization. Journal of Machine Learning Research. (2016)
We recommend using the conda package manager to install qFit.
You will need the following tools:
- git
- conda package manager (which you can get by installing Miniconda3)
Once these are installed, you can:
-
Create a new conda env & activate it
conda create --name qfit "python>=3.9" conda activate qfit
-
Install dependencies
conda install -c anaconda mkl numpy=1.22 pip install cvxpy pip install PySCIPOpt
For some of the post analysis scripts, you will also need sklean conda install -c anaconda scikit-learn
-
Clone the latest release of the qFit source, and install to your conda env
git clone -b main https://github.com/ExcitedStates/qfit-3.0.git cd qfit-3.0 pip install .
-
You're now ready to run qFit programs! See usage examples below for some examples.
Unfortunately, the Anaconda repos don't contain 'osx-arm64' binaries for IBM's CPLEX and Intel's mkl.
We don't currently have plans to switch to a different MIQP solver (e.g. Gurobi).
As a workaround, you'll have to force conda to install the 'osx-64' binaries for everything (x86_64). macOS's Rosetta 2 translation will handle the Intel→AppleSilicon translation.
Instead of the first step in the above Installation section, use this:
- Create a new conda env & activate it
CONDA_SUBDIR=osx-64 conda create --name qfit "python>=3.9" conda activate qfit; conda env config vars set CONDA_SUBDIR=osx-64; conda deactivate conda activate qfit
then follow the rest of the instructions.
If you prefer to manage your environments using other methods, qFit has the following prerequisites:
Once dependencies are installed, you can clone the qFit source, and install to your env as above.
qFit uses Black to format its code and provides a git hook to verify that code is properly formatted before allowing you to commit.
Before creating a commit, you will have to perform two actions:
- Install Black, either through a package manager or by running
python3 -m pip install --user black
- Run
git config core.hooksPath .githooks/
to use the provided pre-commit hook
The qfit
package comes with several command line tools to model alternate
conformers into electron densities. You should select the command line tool that
is most suited for your task. Please refer below for a basic usage example. More specialized and advanced use case examples
are shown in TUTORIAL in the example directory.
To remove single-conformer model bias, qFit should be used with a composite omit map. One way of generating such map is using the Phenix software suite:
phenix.composite_omit_map input.mtz model.pdb omit-type=refine
An example test case (3K0N) can be found in the qfit protein example directory. Additionally, you can find the Cryo-EM example (PDB: 7A4M) and the qFit-ligand example (PDB: 4MS6) in the example directory.
To model alternate conformers for all residues in a X-ray crystallography model using qFit, the following command should be used:
qfit_protein [COMPOSITE_OMIT_MAP_FILE] -l [LABELS] [PDB_FILE] -p [# OF THREADS]
This command will produce a multiconformer model that spans the entirety of the input target protein. The final model, with consistent labeling of multiple conformers is output into multiconformer_model2.pdb. This file should then be used as input to the post-qFit refinement script provided in scripts folder.
qFit can be run on a single thread, but speeds up significantly with multiple threads. Do to this, use the -p flag.
If you wish to specify a different directory for the output, this can be done using the flag -d.
By default, qFit expects the labels FWT,PHWT to be present in the input map. Different labels can be set accordingly using the flag -l.
Using the example 3K0N:
qfit_protein example/qfit_protein_example/3k0n_map.mtz -l 2FOFCWT,PH2FOFCWT example/qfit_protein_example/3k0n_refine.pdb
After multiconformer_model2.pdb has been generated, refine this model using:
qfit_final_refine_xray.sh example/qfit_protein_example/3k0n_structure_factors.mtz example/qfit_protein_example/multiconformer_model2.pdb
Additionally, the qFit_occupancy.params file must exist in the folder.
(A pre-generated multiconformer_model2.pdb file is available in the qfit protein example folder)
Bear in mind that this final step currently depends on an existing installation of the Phenix software suite. This script is currently written to work with version Phenix 1.20.
To model alternate conformers for all residues in a cryo-EM model using qFit, the following command should be used:
qfit_protein [MAP_FILE] -r [RES] [PDB_FILE] -em
After multiconformer_model2.pdb has been generated, refine this model using:
qfit_final_refine_cryoEM.sh example/qfit_protein_example/em_map.ccp4 example/qfit_protein_example/multiconformer_model2.pdb example/qfit_protein_example/input_pdb_file.pdb
More advanced features of qFit (modeling single residue, more advanced options, and further explainations) are explained in TUTORIAL.
The code is licensed under the MIT licence (see LICENSE
).
Several modules were taken from the pymmlib
package, originally licensed
under the Artistic License 2.0. See the licenses
directory for a copy of the
original source code and its full license.
The elements.py
is licensed under MIT, Copyright (c) 2005-2015, Christoph
Gohlke. See file header.
The Xpleo
software and LoopTK
package have been major inspirations for the inverse kinematics
functionality.