2008
DOI: 10.1007/s10822-008-9196-5
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Recommendations for evaluation of computational methods

Abstract: The field of computational chemistry, particularly as applied to drug design, has become increasingly important in terms of the practical application of predictive modeling to pharmaceutical research and development. Tools for exploiting protein structures or sets of ligands known to bind particular targets can be used for bindingmode prediction, virtual screening, and prediction of activity. A serious weakness within the field is a lack of standards with respect to quantitative evaluation of methods, data set… Show more

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Cited by 329 publications
(339 citation statements)
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“…The ideal value of the AUC is 100% [26], which indicates that all known ligands are ranked higher than their decoys. In random sampling, the AUC value is 50% [32]. The EF 1% value represents the early enrichment of the protocols, while the AUC value represents the global enrichment [26,32].…”
Section: Resultsmentioning
confidence: 99%
“…The ideal value of the AUC is 100% [26], which indicates that all known ligands are ranked higher than their decoys. In random sampling, the AUC value is 50% [32]. The EF 1% value represents the early enrichment of the protocols, while the AUC value represents the global enrichment [26,32].…”
Section: Resultsmentioning
confidence: 99%
“…Next, the selected structure undergoes several procedures to properly prepare it for the molecular docking studies. In short, the preparation routine consists of adding hydrogen atoms, eliminating water molecules (with the exception of those mediating important interactions), specifying the correct protonation and tautomerization states of the binding site residues, and calculating partial charges [172].…”
Section: Structure-based Virtual Screening (Sbvs)mentioning
confidence: 99%
“…[175,176] PubChem [177,178] ChemSpider [179,180] ChEMBL [181,182] NuBBE DB [183,184] ChemBank [185,186] eMolecules [187] DrugBank [188,189] Binding DB [190,191] In a following step, the prepared database is docked into the target binding site. The conformational search algorithm explores the energy landscape of each molecule and high-scoring compounds are selected as potential ligands [169][170][171][172]. As virtual screening involves hundreds of thousands (or millions) of compounds, post-docking analysis is usually conducted to decide which compounds to prioritize.…”
Section: Structure-based Virtual Screening (Sbvs)mentioning
confidence: 99%
“…It has to be noted at this stage that there does not seem to be an established consensus on what the best performance criteria are in the domain of Compound Activity Prediction (see for instance [12]), although Precision (fraction of actual Actives among compounds predicted as Active) and Recall (fraction of all the Active compounds that are among those predicted as Active) seem to be generally relevant. In addition, it is worth pointing out that these (and many other) criteria of performance should be considered as generalisations of classical performance criteria since they include dependence of the results on the required confidence level.…”
Section: Resultsmentioning
confidence: 99%