Literature DB >> 33436888

Prediction of kinase inhibitors binding modes with machine learning and reduced descriptor sets.

Ibrahim Abdelbaky1,2,3, Hilal Tayara4, Kil To Chong5,6.   

Abstract

Protein kinases are receiving wide research interest, from drug perspective, due to their important roles in human body. Available kinase-inhibitor data, including crystallized structures, revealed many details about the mechanism of inhibition and binding modes. The understanding and analysis of these binding modes are expected to support the discovery of kinase-targeting drugs. The huge amounts of data made it possible to utilize computational techniques, including machine learning, to help in the discovery of kinase-targeting drugs. Machine learning gave reasonable predictions when applied to differentiate between the binding modes of kinase inhibitors, promoting a wider application in that domain. In this study, we applied machine learning supported by feature selection techniques to classify kinase inhibitors according to their binding modes. We represented inhibitors as a large number of molecular descriptors, as features, and systematically reduced these features in a multi-step manner while trying to attain high classification accuracy. Our predictive models could satisfy both goals by achieving high accuracy while utilizing at most 5% of the modeling features. The models could differentiate between binding mode types with MCC values between 0.67 and 0.92, and balanced accuracy values between 0.78 and 0.97 for independent test sets.

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Year:  2021        PMID: 33436888      PMCID: PMC7804204          DOI: 10.1038/s41598-020-80758-4

Source DB:  PubMed          Journal:  Sci Rep        ISSN: 2045-2322            Impact factor:   4.379


  32 in total

1.  The Protein Data Bank.

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Journal:  Nucleic Acids Res       Date:  2000-01-01       Impact factor: 16.971

2.  Machine Learning Models for Accurate Prediction of Kinase Inhibitors with Different Binding Modes.

Authors:  Filip Miljković; Raquel Rodríguez-Pérez; Jürgen Bajorath
Journal:  J Med Chem       Date:  2019-08-30       Impact factor: 7.446

3.  Discovery and characterization of novel allosteric FAK inhibitors.

Authors:  Misa Iwatani; Hidehisa Iwata; Atsutoshi Okabe; Robert J Skene; Naoki Tomita; Yoko Hayashi; Yoshio Aramaki; David J Hosfield; Akira Hori; Atsuo Baba; Hiroshi Miki
Journal:  Eur J Med Chem       Date:  2012-06-26       Impact factor: 6.514

4.  Rational design of inhibitors that bind to inactive kinase conformations.

Authors:  Yi Liu; Nathanael S Gray
Journal:  Nat Chem Biol       Date:  2006-07       Impact factor: 15.040

5.  Zeolite synthesis modelling with support vector machines: a combinatorial approach.

Authors:  Jose Manuel Serra; Laurent Allen Baumes; Manuel Moliner; Pedro Serna; Avelino Corma
Journal:  Comb Chem High Throughput Screen       Date:  2007-01       Impact factor: 1.339

6.  Discovery of N-((3R,4R)-4-Fluoro-1-(6-((3-methoxy-1-methyl-1H-pyrazol-4-yl)amino)-9-methyl-9H-purin-2-yl)pyrrolidine-3-yl)acrylamide (PF-06747775) through Structure-Based Drug Design: A High Affinity Irreversible Inhibitor Targeting Oncogenic EGFR Mutants with Selectivity over Wild-Type EGFR.

Authors:  Simon Planken; Douglas C Behenna; Sajiv K Nair; Theodore O Johnson; Asako Nagata; Chau Almaden; Simon Bailey; T Eric Ballard; Louise Bernier; Hengmiao Cheng; Sujin Cho-Schultz; Deepak Dalvie; Judith G Deal; Dac M Dinh; Martin P Edwards; Rose Ann Ferre; Ketan S Gajiwala; Michelle Hemkens; Robert S Kania; John C Kath; Jean Matthews; Brion W Murray; Sherry Niessen; Suvi T M Orr; Mason Pairish; Neal W Sach; Hong Shen; Manli Shi; James Solowiej; Khanh Tran; Elaine Tseng; Paolo Vicini; Yuli Wang; Scott L Weinrich; Ru Zhou; Michael Zientek; Longqing Liu; Yiqin Luo; Shuibo Xin; Chengyi Zhang; Jennifer Lafontaine
Journal:  J Med Chem       Date:  2017-03-29       Impact factor: 7.446

7.  Assessing the information content of structural and protein-ligand interaction representations for the classification of kinase inhibitor binding modes via machine learning and active learning.

Authors:  Raquel Rodríguez-Pérez; Filip Miljković; Jürgen Bajorath
Journal:  J Cheminform       Date:  2020-05-24       Impact factor: 5.514

8.  A comparison of MCC and CEN error measures in multi-class prediction.

Authors:  Giuseppe Jurman; Samantha Riccadonna; Cesare Furlanello
Journal:  PLoS One       Date:  2012-08-08       Impact factor: 3.240

9.  Using recursive feature elimination in random forest to account for correlated variables in high dimensional data.

Authors:  Burcu F Darst; Kristen C Malecki; Corinne D Engelman
Journal:  BMC Genet       Date:  2018-09-17       Impact factor: 2.797

10.  The advantages of the Matthews correlation coefficient (MCC) over F1 score and accuracy in binary classification evaluation.

Authors:  Davide Chicco; Giuseppe Jurman
Journal:  BMC Genomics       Date:  2020-01-02       Impact factor: 3.969

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  2 in total

1.  An Explainable Supervised Machine Learning Model for Predicting Respiratory Toxicity of Chemicals Using Optimal Molecular Descriptors.

Authors:  Keerthana Jaganathan; Hilal Tayara; Kil To Chong
Journal:  Pharmaceutics       Date:  2022-04-11       Impact factor: 6.525

2.  Interpretable Machine Learning Models for Molecular Design of Tyrosine Kinase Inhibitors Using Variational Autoencoders and Perturbation-Based Approach of Chemical Space Exploration.

Authors:  Keerthi Krishnan; Ryan Kassab; Steve Agajanian; Gennady Verkhivker
Journal:  Int J Mol Sci       Date:  2022-09-24       Impact factor: 6.208

  2 in total

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