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Polypharmacology Within the Full Kinome: a Machine Learning Approach

Protein kinases generate nearly a thousand different protein products and regulate the majority of cellular pathways and signal transduction. It is therefore not surprising that the deregulation of kinases has been implicated in many disease states. In fact, kinase inhibitors are the largest class o...

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Autores principales: Jones, Derek, Bopaiah, Jeevith, Alghamedy, Fatemah, Jacobs, Nathan, Weiss, Heidi L., de Jong, W.A., Ellingson, Sally R.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Medical Informatics Association 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5961802/
https://www.ncbi.nlm.nih.gov/pubmed/29888050
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author Jones, Derek
Bopaiah, Jeevith
Alghamedy, Fatemah
Jacobs, Nathan
Weiss, Heidi L.
de Jong, W.A.
Ellingson, Sally R.
author_facet Jones, Derek
Bopaiah, Jeevith
Alghamedy, Fatemah
Jacobs, Nathan
Weiss, Heidi L.
de Jong, W.A.
Ellingson, Sally R.
author_sort Jones, Derek
collection PubMed
description Protein kinases generate nearly a thousand different protein products and regulate the majority of cellular pathways and signal transduction. It is therefore not surprising that the deregulation of kinases has been implicated in many disease states. In fact, kinase inhibitors are the largest class of new cancer therapies. Understanding polypharmacology within the full kinome, how drugs interact with many different kinases, would allow for the development of safer and more efficacious cancer therapies. A full understanding of these interactions is not experimentally feasible making highly accurate computational predictions extremely useful and important. This work aims at making a machine learning model useful for investigating the full kinome. We evaluate many feature sets for our model and get better performance over molecular docking with all of them. We demonstrate that you can achieve a nearly 60% increase in success rate at identifying binding compounds using our model over molecular docking scores.
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spelling pubmed-59618022018-06-08 Polypharmacology Within the Full Kinome: a Machine Learning Approach Jones, Derek Bopaiah, Jeevith Alghamedy, Fatemah Jacobs, Nathan Weiss, Heidi L. de Jong, W.A. Ellingson, Sally R. AMIA Jt Summits Transl Sci Proc Articles Protein kinases generate nearly a thousand different protein products and regulate the majority of cellular pathways and signal transduction. It is therefore not surprising that the deregulation of kinases has been implicated in many disease states. In fact, kinase inhibitors are the largest class of new cancer therapies. Understanding polypharmacology within the full kinome, how drugs interact with many different kinases, would allow for the development of safer and more efficacious cancer therapies. A full understanding of these interactions is not experimentally feasible making highly accurate computational predictions extremely useful and important. This work aims at making a machine learning model useful for investigating the full kinome. We evaluate many feature sets for our model and get better performance over molecular docking with all of them. We demonstrate that you can achieve a nearly 60% increase in success rate at identifying binding compounds using our model over molecular docking scores. American Medical Informatics Association 2018-05-18 /pmc/articles/PMC5961802/ /pubmed/29888050 Text en ©2018 AMIA - All rights reserved. This is an Open Access article: verbatim copying and redistribution of this article are permitted in all media for any purpose
spellingShingle Articles
Jones, Derek
Bopaiah, Jeevith
Alghamedy, Fatemah
Jacobs, Nathan
Weiss, Heidi L.
de Jong, W.A.
Ellingson, Sally R.
Polypharmacology Within the Full Kinome: a Machine Learning Approach
title Polypharmacology Within the Full Kinome: a Machine Learning Approach
title_full Polypharmacology Within the Full Kinome: a Machine Learning Approach
title_fullStr Polypharmacology Within the Full Kinome: a Machine Learning Approach
title_full_unstemmed Polypharmacology Within the Full Kinome: a Machine Learning Approach
title_short Polypharmacology Within the Full Kinome: a Machine Learning Approach
title_sort polypharmacology within the full kinome: a machine learning approach
topic Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5961802/
https://www.ncbi.nlm.nih.gov/pubmed/29888050
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