FlexAID

Last updated
Flexible Artificial Intelligence Docking (FlexAID)
Original author(s) Louis-Philippe Morency, Francis Gaudreault, Rafael J. Najmanovich
Repository github.com/NRGlab/FlexAID
Written in C, C++
Operating system Linux, macOS, Win64 (support and development dropped from 2022 onward)
Platform x86_64, ARM-based System on Chip (Apple M1 [Pro Max])
Type Protein–ligand docking
License Apache License
Website nrglab.github.io

FlexAID is a molecular docking software that can use small molecules and peptides as ligands and proteins and nucleic acids as docking targets. As the name suggests, FlexAID supports full ligand flexibility as well side-chain flexibility of the target. It does using a soft scoring function based on the complementarity of the two surfaces (ligand and target).

Contents

FlexAID has been shown to outperform existing widely used software such as AutoDock Vina and FlexX in the prediction of binding poses. This is particularly true in cases where target flexibility is crucial, such as is likely to be the case when using homology models. [1] [2] [3] The source code is available on GitHub under Apache License. [4]

Graphical user interface

A PyMOL plugin for FlexAID, NRGsuite, has also been developed by the original authors. [5]

See also

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References

  1. https://nrglab.github.io
  2. Morency, Louis-Philippe; Gaudreault, Francis; Najmanovich, Rafael (2018). "Applications of the NRGsuite and the Molecular Docking Software FlexAID in Computational Drug Discovery and Design". Computational Drug Discovery and Design. Methods in Molecular Biology. Vol. 1762. pp. 367–388. doi:10.1007/978-1-4939-7756-7_18. ISBN   978-1-4939-7755-0. PMID   29594781.
  3. Gaudreault, Francis; Najmanovich, Rafael J. (2015-07-27). "FlexAID: Revisiting Docking on Non-Native-Complex Structures". Journal of Chemical Information and Modeling. 55 (7): 1323–1336. doi: 10.1021/acs.jcim.5b00078 . ISSN   1549-9596. PMID   26076070.
  4. GitHub - NRGlab/FlexAID: Flexible Artificial Intelligence Docking., NRGlab, 2018-02-28, retrieved 2019-05-22
  5. Gaudreault, Francis; Morency, Louis-Philippe; Najmanovich, Rafael J. (2015-12-01). "NRGsuite: a PyMOL plugin to perform docking simulations in real time using FlexAID". Bioinformatics. 31 (23): 3856–3858. doi:10.1093/bioinformatics/btv458. ISSN   1367-4803. PMC   4653388 . PMID   26249810.