4.6 Article

Discovery of Kinase and Carbonic Anhydrase Dual Inhibitors by Machine Learning Classification and Experiments

Journal

PHARMACEUTICALS
Volume 15, Issue 2, Pages -

Publisher

MDPI
DOI: 10.3390/ph15020236

Keywords

carbonic anhydrase; cheminformatics; docking simulation; dual inhibitor; fingerprint; kinase; machine learning; polypharmacology

Funding

  1. Bio and Medical Technology Development Program of the National Research Foundation - Ministry of Science and ICT [2017M3A9G8083382]
  2. 4TH BK21 project (Educational Research Group for Platform development of management of emerging infectious disease) of the Korean ministry of education [5199990614732]
  3. Ministry of Oceans and Fisheries' R&D project, Korea [2021633]
  4. National Research Foundation of Korea [5199990614732] Funding Source: Korea Institute of Science & Technology Information (KISTI), National Science & Technology Information Service (NTIS)

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This study predicts dual inhibitors for kinase and carbonic anhydrase using machine learning techniques and validates their efficacy through biochemical and biophysical experiments. The results show potent inhibitory activities of certain kinase and carbonic anhydrase inhibitors, and provide evidence of their direct interaction with the respective proteins.
A multi-target small molecule modulator is advantageous for treating complicated diseases such as cancers. However, the strategy and application for discovering a multi-target modulator have been less reported. This study presents the dual inhibitors for kinase and carbonic anhydrase (CA) predicted by machine learning (ML) classifiers, and validated by biochemical and biophysical experiments. ML trained by CA I and CA II inhibitor molecular fingerprints predicted candidates from the protein-specific bioactive molecules approved or under clinical trials. For experimental tests, three sulfonamide-containing kinase inhibitors, 5932, 5946, and 6046, were chosen. The enzyme assays with CA I, CA II, CA IX, and CA XII have allowed the quantitative comparison in the molecules' inhibitory activities. While 6046 inhibited weakly, 5932 and 5946 exhibited potent inhibitions with 100 nM to 1 mu M inhibitory constants. The ML screening was extended for finding CAs inhibitors of all known kinase inhibitors. It found XMU-MP-1 as another potent CA inhibitor with an approximate 30 nM inhibitory constant for CA I, CA II, and CA IX. Differential scanning fluorimetry confirmed the direct interaction between CAs and small molecules. Cheminformatics studies, including docking simulation, suggest that each molecule possesses two separate functional moieties: one for interaction with kinases and the other with CAs.

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