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Successive Statistical and Structure-Based Modeling to Identify Chemically Novel Kinase Inhibitors.


ABSTRACT: Kinases are frequently studied in the context of anticancer drugs. Their involvement in cell responses, such as proliferation, differentiation, and apoptosis, makes them interesting subjects in multitarget drug design. In this study, a workflow is presented that models the bioactivity spectra for two panels of kinases: (1) inhibition of RET, BRAF, SRC, and S6K, while avoiding inhibition of MKNK1, TTK, ERK8, PDK1, and PAK3, and (2) inhibition of AURKA, PAK1, FGFR1, and LKB1, while avoiding inhibition of PAK3, TAK1, and PIK3CA. Both statistical and structure-based models were included, which were thoroughly benchmarked and optimized. A virtual screening was performed to test the workflow for one of the main targets, RET kinase. This resulted in 5 novel and chemically dissimilar RET inhibitors with remaining RET activity of <60% (at a concentration of 10 ?M) and similarities with known RET inhibitors from 0.18 to 0.29 (Tanimoto, ECFP6). The four more potent inhibitors were assessed in a concentration range and proved to be modestly active with a pIC50 value of 5.1 for the most active compound. The experimental validation of inhibitors for RET strongly indicates that the multitarget workflow is able to detect novel inhibitors for kinases, and hence, this workflow can potentially be applied in polypharmacology modeling. We conclude that this approach can identify new chemical matter for existing targets. Moreover, this workflow can easily be applied to other targets as well.

SUBMITTER: Burggraaff L 

PROVIDER: S-EPMC7525794 | biostudies-literature | 2020 Sep

REPOSITORIES: biostudies-literature

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Successive Statistical and Structure-Based Modeling to Identify Chemically Novel Kinase Inhibitors.

Burggraaff Lindsey L   Lenselink Eelke B EB   Jespers Willem W   van Engelen Jesper J   Bongers Brandon J BJ   González Marina Gorostiola MG   Liu Rongfang R   Hoos Holger H HH   van Vlijmen Herman W T HWT   IJzerman Adriaan P AP   van Westen Gerard J P GJP  

Journal of chemical information and modeling 20200512 9


Kinases are frequently studied in the context of anticancer drugs. Their involvement in cell responses, such as proliferation, differentiation, and apoptosis, makes them interesting subjects in multitarget drug design. In this study, a workflow is presented that models the bioactivity spectra for two panels of kinases: (1) inhibition of RET, BRAF, SRC, and S6K, while avoiding inhibition of MKNK1, TTK, ERK8, PDK1, and PAK3, and (2) inhibition of AURKA, PAK1, FGFR1, and LKB1, while avoiding inhibi  ...[more]

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