Moving Beyond Active-Site Detection: MixMD Applied to Allosteric Systems
Moving Beyond Active-Site Detection: MixMD Applied to Allosteric Systems
Mixed-solvent molecular dynamics (MixMD) is a hotspot-mapping technique that relies on molecular dynamics simulations of proteins in binary solvent mixtures. Previous work on MixMD has established the technique's effectiveness in capturing binding sites of small organic compounds. In this work, we show that MixMD can identify both competitive and allosteric sites on proteins. The MixMD approach embraces full protein flexibility and allows competition between solvent probes and water. Sites preferentially mapped by probe molecules are more likely to be binding hotspots. There are two important requirements for the identification of ligand-binding hotspots: (1) hotspots must be mapped at very high signal-to-noise ratio and (2) the hotspots must be mapped by multiple probe types. We have developed our mapping protocol around acetonitrile, isopropanol, and pyrimidine as probe solvents because they allowed us to capture hydrophilic, hydrophobic, hydrogen-bonding, and aromatic interactions. Charged probes were needed for mapping one target, and we introduce them in this work. In order to demonstrate the robust nature and wide applicability of the technique, a combined total of 5 μs of MixMD was applied across several protein targets known to exhibit allosteric modulation. Most notably, all the protein crystal structures used to initiate our simulations had no allosteric ligands bound, so there was no preorganization of the sites to predispose the simulations to find the allosteric hotspots. The protein test cases were ABL Kinase, Androgen Receptor, CHK1 Kinase, Glucokinase, PDK1 Kinase, Farnesyl Pyrophosphate Synthase, and Protein-Tyrosine Phosphatase 1B. The success of the technique is demonstrated by the fact that the top-four sites solely map the competitive and allosteric sites. Lower-ranked sites consistently map other biologically relevant sites, multimerization interfaces, or crystal-packing interfaces. Lastly, we highlight the importance of including protein flexibility by demonstrating that MixMD can map allosteric sites that are not detected in half the systems using FTMap applied to the same crystal structures.
- University of Michigan–Ann Arbor United States
- University of Michigan–Flint United States
Protein Tyrosine Phosphatase, Non-Receptor Type 1, Acetonitriles, Pyruvate Dehydrogenase Acetyl-Transferring Kinase, Water, Geranyltranstransferase, Hydrogen Bonding, Molecular Dynamics Simulation, Protein Serine-Threonine Kinases, Protein Structure, Secondary, 2-Propanol, Pyrimidines, Allosteric Regulation, Receptors, Androgen, Catalytic Domain, Checkpoint Kinase 1, Glucokinase, Solvents, Protein Multimerization, Hydrophobic and Hydrophilic Interactions
Protein Tyrosine Phosphatase, Non-Receptor Type 1, Acetonitriles, Pyruvate Dehydrogenase Acetyl-Transferring Kinase, Water, Geranyltranstransferase, Hydrogen Bonding, Molecular Dynamics Simulation, Protein Serine-Threonine Kinases, Protein Structure, Secondary, 2-Propanol, Pyrimidines, Allosteric Regulation, Receptors, Androgen, Catalytic Domain, Checkpoint Kinase 1, Glucokinase, Solvents, Protein Multimerization, Hydrophobic and Hydrophilic Interactions
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