Litcius/Paper detail

Emulating Docking Results Using a Deep Neural Network: A New Perspective for Virtual Screening

Stanisław Jastrzȩbski, Maciej Szymczak, Agnieszka Pocha, Stefan Mordalski, Jacek Tabor, Andrzej J. Bojarski, Sabina Podlewska

2020Journal of Chemical Information and Modeling32 citationsDOIOpen Access PDF

Abstract

Docking is one of the most important steps in virtual screening pipelines, and it is an established method for examining potential interactions between ligands and receptors. However, this method is computationally expensive, and it is often among the last steps of the process of compound libraries evaluation. In this work, we investigate the feasibility of learning a deep neural network to predict the docking output directly from a two-dimensional compound structure. The developed protocol is orders of magnitude faster than typical docking software, and it returns ligand-receptor complexes encoded in the form of the interaction fingerprint. Its speed and efficiency unlock the application possibilities, such as screening compound libraries of vast size on the basis of contact patterns or docking score (derived on the basis of predicted interaction schemes). We tested our approach on several G protein-coupled receptor targets and 4 CYP enzymes in retrospective virtual screening experiments, and a variant of graph convolutional network appeared to be most effective in emulating docking results. The method can be easily used by the community based on the code available in the Supporting Information.

Topics & Concepts

Docking (animal)Virtual screeningComputer scienceProtein–ligand dockingArtificial intelligenceData miningMachine learningComputational biologyDrug discoveryBioinformaticsBiologyMedicineNursingComputational Drug Discovery MethodsReceptor Mechanisms and SignalingMonoclonal and Polyclonal Antibodies Research