Chandra_2017_Chem.Biol.Drug.Des_90_1173

Reference

Title : SVMDLF: A novel R-based Web application for prediction of dipeptidyl peptidase 4 inhibitors - Chandra_2017_Chem.Biol.Drug.Des_90_1173
Author(s) : Chandra S , Pandey J , Tamrakar AK , Siddiqi MI
Ref : Chemical Biology Drug Des , 90 :1173 , 2017
Abstract :

Dipeptidyl peptidase 4 (DPP4) is a well-known target for the antidiabetic drugs. However, currently available DPP4 inhibitor screening assays are costly and labor-intensive. It is important to create a robust in silico method to predict the activity of DPP4 inhibitor for the new lead finding. Here, we introduce an R-based Web application SVMDLF (SVM-based DPP4 Lead Finder) to predict the inhibitor of DPP4, based on support vector machine (SVM) model, predictions of which are confirmed by in vitro biological evaluation. The best model generated by MACCS structure fingerprint gave the Matthews correlation coefficient of 0.87 for the test set and 0.883 for the external test set. We screened Maybridge database consisting approximately 53,000 compounds. For further bioactivity assay, six compounds were shortlisted, and of six hits, three compounds showed significant DPP4 inhibitory activities with IC50 values ranging from 8.01 to 10.73 mum. This application is an OpenCPU server app which is a novel single-page R-based Web application for the DPP4 inhibitor prediction. The SVMDLF is freely available and open to all users at http://svmdlf.net/ocpu/library/dlfsvm/www/ and http://www.cdri.res.in/svmdlf/.

PubMedSearch : Chandra_2017_Chem.Biol.Drug.Des_90_1173
PubMedID: 28585374

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Citations formats

Chandra S, Pandey J, Tamrakar AK, Siddiqi MI (2017)
SVMDLF: A novel R-based Web application for prediction of dipeptidyl peptidase 4 inhibitors
Chemical Biology Drug Des 90 :1173

Chandra S, Pandey J, Tamrakar AK, Siddiqi MI (2017)
Chemical Biology Drug Des 90 :1173