Modeling the dynamic nature of protein-ligand binding with atomistic simulations is one of the main challenges in computational biophysics, with important implications in the drug design process. Although in the past few years hardware and software advances have significantly revamped the use of molecular simulations, we still lack a fast and accurate ab initio description of the binding mechanism in complex systems, available only for up-to-date techniques and requiring several hours or days of heavy computation. Such delay is one of the main limiting factors for a larger penetration of protein dynamics modeling in the pharmaceutical industry. Here we present a game-changing technology, opening up the way for fast reliable simulations of protein dynamics by combining an adaptive reinforcement learning procedure with Monte Carlo sampling in the frame of modern multi-core computational resources. We show remarkable performance in mapping the protein-ligand energy landscape, being able to reproduce the full binding mechanism in less than half an hour, or the active site induced fit in less than 5 minutes. We exemplify our method by studying diverse complex targets, including nuclear hormone receptors and GPCRs, demonstrating the potential of using the new adaptive technique in screening and lead optimization studies.
From laccase design to application of the overexpressed biocatalyst in an industrial environment for eco-friendly synthesis of polyaniline and dyes.
In this study, we present a fully automatic platform based on our Monte Carlo algorithm, the Protein Energy Landscape Exploration method (PELE), for the estimation of absolute protein–ligand binding free energies, one of the most significant challenges in computer aided drug design. Based on a ligand pathway approach, an initial short enhanced sampling simulation is performed to identify reasonable starting positions for more extended sampling. This stepwise approach allows for a significant faster convergence of the free energy estimation using the Markov State Model (MSM) technique. PELE-MSM was applied on four diverse protein and ligand systems, successfully ranking compounds for two systems. Based on the results, current limitations and challenges with physics-based methods in computational structural biology are discussed. Overall, PELE-MSM constitutes a promising step toward computing absolute binding free energies and in their application into drug discovery projects.
]. This article may be used for noncommercial purposes in accordance with Wiley Terms and Conditions for Use of Self-Archived Versions. BOSS http://zarbi.chem.yale.edu/soft ware.html Jorgensen lab. General purpose molecular modeling system that performs molecular mechanics calculations, Metropolis MC statistical simulations, and semiempirical quantum mechanics calculations. Free for non-profit/commercial for profit. MCPRO http://zarbi.chem.yale.edu/soft ware.html Jorgensen lab. MC statistical mechanics simulations of peptides, proteins, and nucleic acids; it was derived from BOSS. Free for nonprofit/commercial for profit. PELE https:pele.bsc.es, www.nostrumbodiscvery.com Guallar lab. MC specialized in mapping protein-ligand interactions. Free for non profit/ commercial for profit. Sire http://siremol.org Christopher Woods, et al. C++/Python rewrite of ProtoMS. It now includes many more modeling modules. GNU General Public License. ICM http://www.molsoft.com/icm_pr o.html Molsoft, LLC Biased probability MC. Prediction of the threedimensional structure of peptides and proteins. Commercial. Tinker https://dasher.wustl.edu/tinker Ponder lab. General molecular modeling program including a MC minimization technique. Free of charge, registered under U.S. Copyright law. Macromodel https://www.schrodinger.com/ macromodel Schrödinger, LLC Mixed MC algorithms and other molecular modeling methods. Commercial. Schrodinger also distributes a (commercial) MCPRO+ version.
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