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KinFragLib: Combinatorial library

Authors: Sydow, Dominique; Schmiel, Paula; Mortie, Jérémie; Buchthal, Katharina; Kramer, Paula Linh; Volkamer, Andrea;

KinFragLib: Combinatorial library

Abstract

KinFragLib: Exploring the Kinase Inhibitor Space Using Subpocket-Focused Fragmentation and Recombination. Project description. Protein kinases play a crucial role in many cell signaling processes, making them one of the most important families of drug targets. In this context, fragment-based drug design strategies have been successfully applied to develop novel kinase inhibitors, usually following a knowledge-driven approach to optimize a focused set of fragments to a potent kinase inhibitor. Alternatively, KinFragLib is a new method that allows to explore and extend the chemical space of kinase inhibitors using data-driven fragmentation and recombination, built on available structural kinome data from the KLIFS database for over 3,200 kinase DFG-in complexes. The computational fragmentation method splits the co-crystallized non-covalent kinase inhibitors into fragments with respect to their 3D proximity to six predefined functionally relevant subpocket centers. The resulting fragment library consists of six subpocket pools with over 9,000 fragments, available at https://github.com/volkamerlab/KinFragLib. KinFragLib offers two main applications: (i) In-depth analyses of the chemical space of known kinase inhibitors, subpocket characteristics and connections, as well as (ii) subpocket-informed recombination of fragments to generate potential novel inhibitors. The latter showed that recombining only a subset of 727 representative fragments generated a combinatorial library of 11.3 million molecules, containing, besides some known kinase inhibitors, more than 99% novel chemical matter compared to ChEMBL and 55% molecules compliant with Lipinski's rule of five. Combinatorial library dataset. The dataset offered here is part of the KinFragLib GitHub repository (https://github.com/volkamerlab/KinFragLib) and contains the metadata and properties of the KinFragLib combinatorial library. 1. Raw data combinatorial_library.json: Full combinatorial library, please refer to notebooks/4_1_combinatorial_library_data_preparation.ipynb at https://github.com/volkamerlab/KinFragLib for detailed information about this data format. combinatorial_library_deduplicated.json: Deduplicated combinatorial library (based on InChIs). chembl_standardized_inchi.csv: Standardized ChEMBL 33 molecules in the form of InChI strings. 2. Processed data Data extracted from combinatorial_library_deduplicated.json, performed in notebooks/4_1_combinatorial_library_data_preparation.ipynb at https://github.com/volkamerlab/KinFragLib. n_atoms.csv: Number of atoms for each recombined ligand. ro5.csv: Number of ligands that fulfill Lipinski's rule of five (Ro5) and its individual criteria; number of ligands in total. subpockets.csv: Number of ligands per subpocket combination. original_exact.json: Ligands with exact matches in original ligands, i.e. KLIFS ligands that were used for the fragmentation. original_substructure.json: Ligands with substructure matches in original ligands, i.e. KLIFS ligands that were used for the fragmentation. chembl_exact.json: Ligands with exact matches in ChEMBL. chembl_most_similar.json: Most similar ligand in ChEMBL for each recombined ligand. chembl_highly_similar.json: Most similar ligand in ChEMBL for each recombined ligand with similarity greater than 0.9. Usage. This dataset can be used to run the notebooks available on https://github.com/volkamerlab/KinFragLib. Clone the KinFragLib repository. Download the tar.bz2 file provided here. Extract the archive content to the combinatorial library folder in your local KinFragLib folder and run the notebooks. tar -xvf combinatorial_library.tar.bz2 -C /path_to_kinfraglib/data/combinatorial_library/ Citation. This dataset is part of the KinFragLib publication: Sydow, D., Schmiel, P., Mortier, J., and Volkamer, A. KinFragLib: Exploring the Kinase Inhibitor Space Using Subpocket-Focused Fragmentation and Recombination. J. Chem. Inf. Model. 2020. https://pubs.acs.org/doi/abs/10.1021/acs.jcim.0c00839

Related Organizations
Keywords

computational drug design, kinases, kinase inhibitors, fragment-based drug design

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selected citations
These citations are derived from selected sources.
This is an alternative to the "Influence" indicator, which also reflects the overall/total impact of an article in the research community at large, based on the underlying citation network (diachronically).
BIP!Citations provided by BIP!
popularity
This indicator reflects the "current" impact/attention (the "hype") of an article in the research community at large, based on the underlying citation network.
BIP!Popularity provided by BIP!
influence
This indicator reflects the overall/total impact of an article in the research community at large, based on the underlying citation network (diachronically).
BIP!Influence provided by BIP!
impulse
This indicator reflects the initial momentum of an article directly after its publication, based on the underlying citation network.
BIP!Impulse provided by BIP!
0
Average
Average
Average