| Literature DB >> 29159598 |
Luigi Capoferri1, Marc van Dijk1, Ariën S Rustenburg1,2, Tsjerk A Wassenaar1,3, Derk P Kooi1, Eko A Rifai1, Nico P E Vermeulen1, Daan P Geerke4.
Abstract
BACKGROUND: Computational methods to predict binding affinities of small ligands toward relevant biological (off-)targets are helpful in prioritizing the screening and synthesis of new drug candidates, thereby speeding up the drug discovery process. However, use of ligand-based approaches can lead to erroneous predictions when structural and dynamic features of the target substantially affect ligand binding. Free energy methods for affinity computation can include steric and electrostatic protein-ligand interactions, solvent effects, and thermal fluctuations, but often they are computationally demanding and require a high level of supervision. As a result their application is typically limited to the screening of small sets of compounds by experts in molecular modeling.Entities:
Keywords: Binding affinity prediction; Computational toxicology; Drug design; Free energy calculation; Linear interaction energy
Year: 2017 PMID: 29159598 PMCID: PMC5696310 DOI: 10.1186/s13321-017-0243-x
Source DB: PubMed Journal: J Cheminform ISSN: 1758-2946 Impact factor: 5.514
Fig. 1Architecture of eTOX ALLIES. prediction or calibration (training) of a new model is initiated by submitting a dataset of compounds through the API. For each query or training compound, evaluation of ligand–protein interaction energies is requested using model-specific settings. The job manager takes care of the steps required to obtain interaction energies for each compound and to expose them to the API when completed. Interaction energies are subsequently used for model calibration or prediction, and as part of the evaluation of the reliability index for predictions
Fig. 2Iterative LIE fitting of a model calibrated using k training compounds (Cpds) for which n simulations are run (note that n can be different per Cpd). The final model will contain simulation results for the number of poses (looped over using index j) for which the standard deviation error in prediction (SDEP) is lowest as determined in leave-one-out (LOO) cross validation. Note that ’s are averaged over two MD simulations starting from different atomic starting velocities
Fig. 3Web GUI: models page. A list of available models and calibrated versions are available here. Configuration parameters are shown in the Model Details section, while statistics about the calibrated model version are shown in the Version Details section
Fig. 4Web GUI: creating a new model. A new model can be calibrated through this page in a straightforward way. Multiple relevant protein structures can be included in a single model and uploaded in PDB format
Fig. 5Web GUI: submit page. This page offers the possibility to submit new screenings (i.e., prediction(s) for a compound or set of compounds listed in a SDF file to be uploaded). Calibration of a new model version (recalibration) can be performed by changing the default setting for Type of calculation
Fig. 6Web GUI: running jobs page Status and results from current screening(s) are shown here. For each dataset screening, a dropdown menu shows details about calculations for each compound