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      Ranking Reversible Covalent Drugs: From Free Energy Perturbation to Fragment Docking

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      Journal of Chemical Information and Modeling
      American Chemical Society (ACS)

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          Abstract

          Reversible covalent inhibitors have drawn increasing attention in drug design, as they are likely more potent than noncovalent inhibitors and less toxic than covalent inhibitors. Despite those advantages, the computational prediction of reversible covalent binding presents a formidable challenge because the binding process consists of multiple steps and quantum mechanics (QM) level calculation is needed to estimate the covalent binding free energy. It has been shown that the dissociation rates and the equilibrium dissociation constants vary significantly even with similar warheads, due to noncovalent interactions. We have previously used a simplistic two-state model for predicting the relative binding selectivity of reversible covalent inhibitors ( J. Am. Chem. Soc . 2017, 139, 17945). Here we go beyond binding selectivity and demonstrate that it is possible to use free energy perturbation (FEP) molecular dynamics (MD) to calculate the overall reversible covalent binding using a specially designed thermodynamic cycle. We show that FEP can predict the varying binding free energies of the analogs sharing a common α-ketoamide warhead. More importantly, our results revealed that the chemical modification away from warhead changes the binding affinity at both noncovalent and covalent binding states, and the computational prediction can be improved by considering the binding free energy of both states. Furthermore, we explored the possibility of using a more rapid computational method, Site-Identification by Ligand Competitive Saturation (SILCS), to rank the same set of reversible covalent inhibitors. We found that the fragment docking to a set of precomputed SILCS FragMaps produces a reasonable ranking. In conclusion, two independent approaches provided consistent results that the covalent binding state is suitable for the initial ranking of the reversible covalent drug candidates. For lead-optimization, the FEP approach described here can provide more rigorous and detailed information regarding how much the covalent and noncovalent binding states are contributing to the overall binding affinity, thus offering a new avenue for fine tuning the noncovalent interactions for optimizing reversible covalent drugs.

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          Author and article information

          Journal
          Journal of Chemical Information and Modeling
          J. Chem. Inf. Model.
          American Chemical Society (ACS)
          1549-9596
          1549-960X
          February 14 2019
          February 14 2019
          Article
          10.1021/acs.jcim.8b00959
          6610880
          30763080
          2670ba31-ac9b-4469-8681-005018684296
          © 2019
          History

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