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Machine learning optimization of cross docking accuracy
Affiliation:1. Ariel University, Ariel, Israel;2. San Francisco State University, United States;3. The Hebrew University of Jerusalem, Jerusalem, Israel;4. University of Cincinnati, United States;1. Department of Chemical Technology, University of Calcutta, 92, A.P.C. Road, Kolkata, 700009, India;2. Nutrition and Food Science, Department of Physical Sport Science, Princess Nourah bint Abdulrahman University, P. O. Box 84428, Riyadh, 11671, Saudi Arabia;3. Department of Chemistry, P.O. Box 2455, College of Science, King Saud University, Riyadh, 11451, Saudi Arabia;4. Division of Pharmacy and Optometry, School of Health Sciences, Faculty of Biology, Medicine and Health, University of Manchester, Oxford Road, Manchester, M13 9PL, United Kingdom;1. Department of Chemistry and Biochemistry, Natural Products and Drug Discovery Center, University of North Carolina at Greensboro, Greensboro, NC 27402, USA;2. Mycosynthetix, Inc., 505 Meadowlands Drive, Suite 103, Hillsborough, USA
Abstract:Performance of small molecule automated docking programs has conceptually been divided into docking -, scoring -, ranking - and screening power, which focuses on the crystal pose prediction, affinity prediction, ligand ranking and database screening capabilities of the docking program, respectively. Benchmarks show that different docking programs can excel in individual benchmarks which suggests that the scoring function employed by the programs can be optimized for a particular task. Here the scoring function of Smina is re-optimized towards enhancing the docking power using a supervised machine learning approach and a manually curated database of ligands and cross docking receptor pairs. The optimization method does not need associated binding data for the receptor-ligand examples used in the data set and works with small train sets. The re-optimization of the weights for the scoring function results in a similar docking performance with regard to docking power towards a cross docking test set. A ligand decoy based benchmark indicates a better discrimination between poses with high and low RMSD. The reported parameters for Smina are compatible with Autodock Vina and represent ready-to-use alternative parameters for researchers who aim at pose prediction rather than affinity prediction.
Keywords:Molecular docking  Docking power  Scoring function  Machine learning optimization  Smina  Autodock Vina  Drug discovery  Cross docking
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