Literature DB >> 21667971

Profile-QSAR: a novel meta-QSAR method that combines activities across the kinase family to accurately predict affinity, selectivity, and cellular activity.

Eric Martin1, Prasenjit Mukherjee, David Sullivan, Johanna Jansen.   

Abstract

Profile-QSAR is a novel 2D predictive model building method for kinases. This "meta-QSAR" method models the activity of each compound against a new kinase target as a linear combination of its predicted activities against a large panel of 92 previously studied kinases comprised from 115 assays. Profile-QSAR starts with a sparse incomplete kinase by compound (KxC) activity matrix, used to generate Bayesian QSAR models for the 92 "basis-set" kinases. These Bayesian QSARs generate a complete "synthetic" KxC activity matrix of predictions. These synthetic activities are used as "chemical descriptors" to train partial-least squares (PLS) models, from modest amounts of medium-throughput screening data, for predicting activity against new kinases. The Profile-QSAR predictions for the 92 kinases (115 assays) gave a median external R²(ext) = 0.59 on 25% held-out test sets. The method has proven accurate enough to predict pairwise kinase selectivities with a median correlation of R²(ext) = 0.61 for 958 kinase pairs with at least 600 common compounds. It has been further expanded by adding a "C(k)XC" cellular activity matrix to the KxC matrix to predict cellular activity for 42 kinase driven cellular assays with median R²(ext) = 0.58 for 24 target modulation assays and R²(ext) = 0.41 for 18 cell proliferation assays. The 2D Profile-QSAR, along with the 3D Surrogate AutoShim, are the foundations of an internally developed iterative medium-throughput screening (IMTS) methodology for virtual screening (VS) of compound archives as an alternative to experimental high-throughput screening (HTS). The method has been applied to 20 actual prospective kinase projects. Biological results have so far been obtained in eight of them. Q² values ranged from 0.3 to 0.7. Hit-rates at 10 uM for experimentally tested compounds varied from 25% to 80%, except in K5, which was a special case aimed specifically at finding "type II" binders, where none of the compounds were predicted to be active at 10 μM. These overall results are particularly striking as chemical novelty was an important criterion in selecting compounds for testing. The method is completely automated. Predicted activities for nearly 4 million internal and commercial compounds across 115 kinase assays and 42 cellular assays are stored in the corporate database. Like computed physical properties, this predicted kinase activity profile can be computed and stored as each compound is registered.

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Year:  2011        PMID: 21667971     DOI: 10.1021/ci1005004

Source DB:  PubMed          Journal:  J Chem Inf Model        ISSN: 1549-9596            Impact factor:   4.956


  11 in total

1.  Biomacromolecular quantitative structure-activity relationship (BioQSAR): a proof-of-concept study on the modeling, prediction and interpretation of protein-protein binding affinity.

Authors:  Peng Zhou; Congcong Wang; Feifei Tian; Yanrong Ren; Chao Yang; Jian Huang
Journal:  J Comput Aided Mol Des       Date:  2013-01-10       Impact factor: 3.686

Review 2.  Perspective on computational and structural aspects of kinase discovery from IPK2014.

Authors:  Eric Martin; Stefan Knapp; Richard A Engh; Henrik Moebitz; Thibault Varin; Benoit Roux; Jens Meiler; Valerio Berdini; Alexander Baumann; Michal Vieth
Journal:  Biochim Biophys Acta       Date:  2015-04-07

3.  Data-Driven Construction of Antitumor Agents with Controlled Polypharmacology.

Authors:  Chenxiao Da; Dehui Zhang; Michael Stashko; Eleana Vasileiadi; Rebecca E Parker; Katherine A Minson; Madeline G Huey; Justus M Huelse; Debra Hunter; Thomas S K Gilbert; Jacqueline Norris-Drouin; Michael Miley; Laura E Herring; Lee M Graves; Deborah DeRyckere; H Shelton Earp; Douglas K Graham; Stephen V Frye; Xiaodong Wang; Dmitri Kireev
Journal:  J Am Chem Soc       Date:  2019-09-20       Impact factor: 15.419

4.  Identification of Potent and Selective RIPK2 Inhibitors for the Treatment of Inflammatory Diseases.

Authors:  Xiaohui He; Sara Da Ros; John Nelson; Xuefeng Zhu; Tao Jiang; Barun Okram; Songchun Jiang; Pierre-Yves Michellys; Maya Iskandar; Sheryll Espinola; Yong Jia; Badry Bursulaya; Andreas Kreusch; Mu-Yun Gao; Glen Spraggon; Janine Baaten; Leah Clemmer; Shelly Meeusen; David Huang; Robert Hill; Vân Nguyen-Tran; John Fathman; Bo Liu; Tove Tuntland; Perry Gordon; Thomas Hollenbeck; Kenneth Ng; Jian Shi; Laura Bordone; Hong Liu
Journal:  ACS Med Chem Lett       Date:  2017-09-27       Impact factor: 4.345

5.  Cheminformatics aspects of high throughput screening: from robots to models: symposium summary.

Authors:  Y Jane Tseng; Eric Martin; Cristian G Bologa; Anang A Shelat
Journal:  J Comput Aided Mol Des       Date:  2013-05-01       Impact factor: 3.686

6.  Prediction of kinase-inhibitor binding affinity using energetic parameters.

Authors:  Singaravelu Usha; Samuel Selvaraj
Journal:  Bioinformation       Date:  2016-06-15

7.  QSAR-derived affinity fingerprints (part 2): modeling performance for potency prediction.

Authors:  Isidro Cortés-Ciriano; Ctibor Škuta; Andreas Bender; Daniel Svozil
Journal:  J Cheminform       Date:  2020-06-05       Impact factor: 5.514

8.  The Metabolic Rainbow: Deep Learning Phase I Metabolism in Five Colors.

Authors:  Na Le Dang; Matthew K Matlock; Tyler B Hughes; S Joshua Swamidass
Journal:  J Chem Inf Model       Date:  2020-02-24       Impact factor: 4.956

9.  How to Achieve Better Results Using PASS-Based Virtual Screening: Case Study for Kinase Inhibitors.

Authors:  Pavel V Pogodin; Alexey A Lagunin; Anastasia V Rudik; Dmitry A Filimonov; Dmitry S Druzhilovskiy; Mark C Nicklaus; Vladimir V Poroikov
Journal:  Front Chem       Date:  2018-04-26       Impact factor: 5.221

Review 10.  Artificial Intelligence in Drug Design.

Authors:  Gerhard Hessler; Karl-Heinz Baringhaus
Journal:  Molecules       Date:  2018-10-02       Impact factor: 4.411

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