Utilization of an optimized AlphaFold protein model for structure‐based design of a selective HDAC11 inhibitor with anti‐neuroblastoma activity

Author:

Baselious Fady1ORCID,Hilscher Sebastian1ORCID,Hagemann Sven2,Tripathee Sunita2,Robaa Dina1,Barinka Cyril3ORCID,Hüttelmaier Stefan2,Schutkowski Mike4,Sippl Wolfgang1ORCID

Affiliation:

1. Department of Medicinal Chemistry, Institute of Pharmacy Martin‐Luther‐University of Halle‐Wittenberg Halle (Saale) Germany

2. Institute of Molecular Medicine Martin Luther University Halle‐Wittenberg Halle (Saale) Germany

3. Institute of Biotechnology of the Czech Academy of Sciences BIOCEV Vestec Czech Republic

4. Charles Tanford Protein Center, Department of Enzymology, Institute of Biochemistry and Biotechnology Martin‐Luther‐University of Halle‐Wittenberg Halle (Saale) Germany

Abstract

AbstractAlphaFold is an artificial intelligence approach for predicting the three‐dimensional (3D) structures of proteins with atomic accuracy. One challenge that limits the use of AlphaFold models for drug discovery is the correct prediction of folding in the absence of ligands and cofactors, which compromises their direct use. We have previously described the optimization and use of the histone deacetylase 11 (HDAC11) AlphaFold model for the docking of selective inhibitors such as FT895 and SIS17. Based on the predicted binding mode of FT895 in the optimized HDAC11 AlphaFold model, a new scaffold for HDAC11 inhibitors was designed, and the resulting compounds were tested in vitro against various HDAC isoforms. Compound 5a proved to be the most active compound with an IC50 of 365 nM and was able to selectively inhibit HDAC11. Furthermore, docking of 5a showed a binding mode comparable to FT895 but could not adopt any reasonable poses in other HDAC isoforms. We further supported the docking results with molecular dynamics simulations that confirmed the predicted binding mode. 5a also showed promising activity with an EC50 of 3.6 µM on neuroblastoma cells.

Publisher

Wiley

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