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Identification of a Selective G1-Phase Benzimidazolone Inhibitor by a Senescence-Targeted Virtual Screen Using Artificial Neural Networks()()

Cellular senescence is a barrier to tumorigenesis in normal cells, and tumor cells undergo senescence responses to genotoxic stimuli, which is a potential target phenotype for cancer therapy. However, in this setting, mixed-mode responses are common with apoptosis the dominant effect. Hence, more se...

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Autores principales: Bilsland, Alan E., Pugliese, Angelo, Liu, Yu, Revie, John, Burns, Sharon, McCormick, Carol, Cairney, Claire J., Bower, Justin, Drysdale, Martin, Narita, Masashi, Sadaie, Mahito, Keith, W. Nicol
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Neoplasia Press 2015
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4611071/
https://www.ncbi.nlm.nih.gov/pubmed/26476078
http://dx.doi.org/10.1016/j.neo.2015.08.009
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author Bilsland, Alan E.
Pugliese, Angelo
Liu, Yu
Revie, John
Burns, Sharon
McCormick, Carol
Cairney, Claire J.
Bower, Justin
Drysdale, Martin
Narita, Masashi
Sadaie, Mahito
Keith, W. Nicol
author_facet Bilsland, Alan E.
Pugliese, Angelo
Liu, Yu
Revie, John
Burns, Sharon
McCormick, Carol
Cairney, Claire J.
Bower, Justin
Drysdale, Martin
Narita, Masashi
Sadaie, Mahito
Keith, W. Nicol
author_sort Bilsland, Alan E.
collection PubMed
description Cellular senescence is a barrier to tumorigenesis in normal cells, and tumor cells undergo senescence responses to genotoxic stimuli, which is a potential target phenotype for cancer therapy. However, in this setting, mixed-mode responses are common with apoptosis the dominant effect. Hence, more selective senescence inducers are required. Here we report a machine learning–based in silico screen to identify potential senescence agonists. We built profiles of differentially affected biological process networks from expression data obtained under induced telomere dysfunction conditions in colorectal cancer cells and matched these to a panel of 17 protein targets with confirmatory screening data in PubChem. We trained a neural network using 3517 compounds identified as active or inactive against these targets. The resulting classification model was used to screen a virtual library of ~ 2M lead-like compounds. One hundred and forty-seven virtual hits were acquired for validation in growth inhibition and senescence-associated β-galactosidase assays. Among the found hits, a benzimidazolone compound, CB-20903630, had low micromolar IC50 for growth inhibition of HCT116 cells and selectively induced senescence-associated β-galactosidase activity in the entire treated cell population without cytotoxicity or apoptosis induction. Growth suppression was mediated by G1 blockade involving increased p21 expression and suppressed cyclin B1, CDK1, and CDC25C. In addition, the compound inhibited growth of multicellular spheroids and caused severe retardation of population kinetics in long-term treatments. Preliminary structure-activity and structure clustering analyses are reported, and expression analysis of CB-20903630 against other cell cycle suppressor compounds suggested a PI3K/AKT-inhibitor–like profile in normal cells, with different pathways affected in cancer cells.
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spelling pubmed-46110712015-11-10 Identification of a Selective G1-Phase Benzimidazolone Inhibitor by a Senescence-Targeted Virtual Screen Using Artificial Neural Networks()() Bilsland, Alan E. Pugliese, Angelo Liu, Yu Revie, John Burns, Sharon McCormick, Carol Cairney, Claire J. Bower, Justin Drysdale, Martin Narita, Masashi Sadaie, Mahito Keith, W. Nicol Neoplasia Article Cellular senescence is a barrier to tumorigenesis in normal cells, and tumor cells undergo senescence responses to genotoxic stimuli, which is a potential target phenotype for cancer therapy. However, in this setting, mixed-mode responses are common with apoptosis the dominant effect. Hence, more selective senescence inducers are required. Here we report a machine learning–based in silico screen to identify potential senescence agonists. We built profiles of differentially affected biological process networks from expression data obtained under induced telomere dysfunction conditions in colorectal cancer cells and matched these to a panel of 17 protein targets with confirmatory screening data in PubChem. We trained a neural network using 3517 compounds identified as active or inactive against these targets. The resulting classification model was used to screen a virtual library of ~ 2M lead-like compounds. One hundred and forty-seven virtual hits were acquired for validation in growth inhibition and senescence-associated β-galactosidase assays. Among the found hits, a benzimidazolone compound, CB-20903630, had low micromolar IC50 for growth inhibition of HCT116 cells and selectively induced senescence-associated β-galactosidase activity in the entire treated cell population without cytotoxicity or apoptosis induction. Growth suppression was mediated by G1 blockade involving increased p21 expression and suppressed cyclin B1, CDK1, and CDC25C. In addition, the compound inhibited growth of multicellular spheroids and caused severe retardation of population kinetics in long-term treatments. Preliminary structure-activity and structure clustering analyses are reported, and expression analysis of CB-20903630 against other cell cycle suppressor compounds suggested a PI3K/AKT-inhibitor–like profile in normal cells, with different pathways affected in cancer cells. Neoplasia Press 2015-10-19 /pmc/articles/PMC4611071/ /pubmed/26476078 http://dx.doi.org/10.1016/j.neo.2015.08.009 Text en © 2015 The Authors http://creativecommons.org/licenses/by/4.0/ This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Bilsland, Alan E.
Pugliese, Angelo
Liu, Yu
Revie, John
Burns, Sharon
McCormick, Carol
Cairney, Claire J.
Bower, Justin
Drysdale, Martin
Narita, Masashi
Sadaie, Mahito
Keith, W. Nicol
Identification of a Selective G1-Phase Benzimidazolone Inhibitor by a Senescence-Targeted Virtual Screen Using Artificial Neural Networks()()
title Identification of a Selective G1-Phase Benzimidazolone Inhibitor by a Senescence-Targeted Virtual Screen Using Artificial Neural Networks()()
title_full Identification of a Selective G1-Phase Benzimidazolone Inhibitor by a Senescence-Targeted Virtual Screen Using Artificial Neural Networks()()
title_fullStr Identification of a Selective G1-Phase Benzimidazolone Inhibitor by a Senescence-Targeted Virtual Screen Using Artificial Neural Networks()()
title_full_unstemmed Identification of a Selective G1-Phase Benzimidazolone Inhibitor by a Senescence-Targeted Virtual Screen Using Artificial Neural Networks()()
title_short Identification of a Selective G1-Phase Benzimidazolone Inhibitor by a Senescence-Targeted Virtual Screen Using Artificial Neural Networks()()
title_sort identification of a selective g1-phase benzimidazolone inhibitor by a senescence-targeted virtual screen using artificial neural networks()()
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4611071/
https://www.ncbi.nlm.nih.gov/pubmed/26476078
http://dx.doi.org/10.1016/j.neo.2015.08.009
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