4.4 Article

Fine tuning for success in structure-based virtual screening

Journal

JOURNAL OF COMPUTER-AIDED MOLECULAR DESIGN
Volume 35, Issue 12, Pages 1195-1206

Publisher

SPRINGER
DOI: 10.1007/s10822-021-00431-4

Keywords

Structure-based virtual screening; Docking; Scoring; Calibration; Decoys

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Structure-based virtual screening is crucial in drug discovery, allowing for the selection of potential ligands for experimental testing. By developing an automated calibration process, it is possible to significantly reduce the duration of the calibration phase and choose the best protocol effectively.
Structure-based virtual screening plays a significant role in drug-discovery. The method virtually docks millions of compounds from corporate or public libraries into a binding site of a disease-related protein structure, allowing for the selection of a small list of potential ligands for experimental testing. Many algorithms are available for docking and assessing the affinity of compounds for a targeted protein site. The performance of affinity estimation calculations is highly dependent on the size and nature of the site, therefore a rationale for selecting the best protocol is required. To address this issue, we have developed an automated calibration process, implemented in a Knime workflow. It consists of four steps: preparation of a protein test set with structures and models of the target, preparation of a compound test set with target-related ligands and decoys, automatic test of 24 scoring/rescoring protocols for each target structure and model, and graphical display of results. The automation of the process combined with execution on high performance computing resources greatly reduces the duration of the calibration phase, and the test of many combinations of algorithms on various target conformations results in a rational and optimal choice of the best protocol. Here, we present this tool and exemplify its application in setting-up an optimal protocol for SBVS against Retinoid X Receptor alpha.

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