Integrating molecular docking, CoMFA analysis and Machine Learning classification with virtual screening towards identification of novel scaffolds as Plasmodium falciparum enoyl acyl carrier protein reductase inhibitor

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dc.contributor.author Shah, Priyanka
dc.contributor.author Tiwari, Sunita
dc.contributor.author Siddiqi, M I
dc.date.accessioned 2014-08-01T10:14:19Z
dc.date.available 2014-08-01T10:14:19Z
dc.date.issued 2014
dc.identifier.citation Medicinal Chemistry Research, 2014, 23(7), 3308-3326 en
dc.identifier.uri http://hdl.handle.net/123456789/1332
dc.description.abstract In the present study, an integrated application of various in silico methods including molecular docking, CoMFA analyses and machine learning classification methods were used on a set of known triclosan and rhodanine inhibitors of Plasmodium falciparum enoyl acyl carrier protein reductase (PfENR) and maybridge compound database with the prime objective of implementation of knowledge-based synergistic approach towards prioritized screening and identification of novel scaffolds as PfENR inhibitors. Ensemble of CoMFA models were build with excellent values of statistical matrices where genetic algorithm was applied in a conformation selection step on a dataset clustered over chemical space to ensure high degree of structural variability with correlation. Two-dimensional and three-dimensional descriptors were used vigorously to classify actives from inactives by extracting useful correlation among selected descriptors. Nevertheless, the entire hypothesis was pipelined sequentially in the pursuit of proposing probable actives from Maybridge database on the basis of docking, machine learning classification and CoMFA studies. After ADME filtering, a set of 26 compounds from the maybridge database were finally predicted to be plausible inhibitors of PfENR satisfying multiple computational validation models. en
dc.format.extent 967225 bytes
dc.format.mimetype application/pdf
dc.language.iso en en
dc.relation.ispartofseries CSIR-CDRI Communication No. 8598 en
dc.subject Docking en
dc.subject CoMFA, QSAR en
dc.subject Genetic Algorithm en
dc.subject Machine Learning Classification en
dc.subject Virtual Screening en
dc.subject Anti-malarial agents en
dc.title Integrating molecular docking, CoMFA analysis and Machine Learning classification with virtual screening towards identification of novel scaffolds as Plasmodium falciparum enoyl acyl carrier protein reductase inhibitor en
dc.type Article en


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