Litcius/Paper detail

MILCDock: Machine Learning Enhanced Consensus Docking for Virtual Screening in Drug Discovery

Connor J. Morris, Jacob Stern, Brenden Stark, Max Christopherson, Dennis Della Corte

2022Journal of Chemical Information and Modeling27 citationsDOI

Abstract

Molecular docking tools are regularly used to computationally identify new molecules in virtual screening for drug discovery. However, docking tools suffer from inaccurate scoring functions with widely varying performance on different proteins. To enable more accurate ranking of active over inactive ligands in virtual screening, we created a machine learning consensus docking tool, MILCDock, that uses predictions from five traditional molecular docking tools to predict the probability a ligand binds to a protein. MILCDock was trained and tested on data from both the DUD-E and LIT-PCBA docking datasets and shows improved performance over traditional molecular docking tools and other consensus docking methods on the DUD-E dataset. LIT-PCBA targets proved to be difficult for all methods tested. We also find that DUD-E data, although biased, can be effective in training machine learning tools if care is taken to avoid DUD-E's biases during training.

Topics & Concepts

Virtual screeningDocking (animal)Computer scienceProtein–ligand dockingDrug discoveryMachine learningArtificial intelligenceTraining setComputational biologyData miningBioinformaticsBiologyMedicineNursingComputational Drug Discovery MethodsProtein Structure and DynamicsMachine Learning in Materials Science