2011
DOI: 10.1021/ci200266d
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DrugPred: A Structure-Based Approach To Predict Protein Druggability Developed Using an Extensive Nonredundant Data Set

Abstract: Judging if a protein is able to bind orally available molecules with high affinity, i.e. if a protein is druggable, is an important step in target assessment. In order to derive a structure-based method to predict protein druggability, a comprehensive, nonredundant data set containing crystal structures of 71 druggable and 44 less druggable proteins was compiled by literature search and data mining. This data set was subsequently used to train a structure-based druggability predictor (DrugPred) using partial l… Show more

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Cited by 91 publications
(207 citation statements)
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“…To that extent, usual CAAD techniques can be useful to estimate the druggability and the effects of small molecules on IDP interactions. 10,34,71,72 These methods analyze the cavities over static structures coming from experiments or simulations such as DrugPred, 73 Cavity 74 or fpocket, 75 or coupled to MD simulations and calculate the druggability "on-the -fly", such as the recently developed JEDI. 76 Zhang and coworkers 44 have studied the ligand-binding cavities of diverse IDPs comparing some of their properties with those of ordered proteins.…”
Section: Binding Cavity Detection and Understandingmentioning
confidence: 99%
“…To that extent, usual CAAD techniques can be useful to estimate the druggability and the effects of small molecules on IDP interactions. 10,34,71,72 These methods analyze the cavities over static structures coming from experiments or simulations such as DrugPred, 73 Cavity 74 or fpocket, 75 or coupled to MD simulations and calculate the druggability "on-the -fly", such as the recently developed JEDI. 76 Zhang and coworkers 44 have studied the ligand-binding cavities of diverse IDPs comparing some of their properties with those of ordered proteins.…”
Section: Binding Cavity Detection and Understandingmentioning
confidence: 99%
“…To that extent, usual CAAD techniques can be useful to estimate the druggability and the effects of small molecules on IDP interactions [10,34,71,72]. These methods analyze the cavities over static structures coming from experiments or simulations such as DrugPred [73], Cavity [74] or fpocket [75], or coupled to MD simulations and calculate the druggability "on-the -fly", such as the recently developed JEDI [76].…”
Section: Binding Cavity Detection and Understandingmentioning
confidence: 99%
“…In general terms, druggability can be inferred from homologous proteins whose druggabilities are known [177]. In one study, using both a non-redundant set of druggable and a less druggable set containing 71 druggable and 44 less-druggable targets [178], it was possible to classify all protein targets into druggable or less druggable ones without serious training [174]: Oxidoreductases appeared more frequently as being druggable, while hydrolases, lyases and isomerases were more frequently less druggable.…”
Section: Current Trends In Ivsmentioning
confidence: 99%