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Cancer network activity associated with therapeutic response and synergism

BACKGROUND: Cancer patients often show no or only modest benefit from a given therapy. This major problem in oncology is generally attributed to the lack of specific predictive biomarkers, yet a global measure of cancer cell activity may support a comprehensive mechanistic understanding of therapy e...

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Autores principales: Serra-Musach, Jordi, Mateo, Francesca, Capdevila-Busquets, Eva, de Garibay, Gorka Ruiz, Zhang, Xiaohu, Guha, Raj, Thomas, Craig J., Grueso, Judit, Villanueva, Alberto, Jaeger, Samira, Heyn, Holger, Vizoso, Miguel, Pérez, Hector, Cordero, Alex, Gonzalez-Suarez, Eva, Esteller, Manel, Moreno-Bueno, Gema, Tjärnberg, Andreas, Lázaro, Conxi, Serra, Violeta, Arribas, Joaquín, Benson, Mikael, Gustafsson, Mika, Ferrer, Marc, Aloy, Patrick, Pujana, Miquel Àngel
Formato: Online Artículo Texto
Lenguaje:English
Publicado: BioMed Central 2016
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4995628/
https://www.ncbi.nlm.nih.gov/pubmed/27553366
http://dx.doi.org/10.1186/s13073-016-0340-x
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author Serra-Musach, Jordi
Mateo, Francesca
Capdevila-Busquets, Eva
de Garibay, Gorka Ruiz
Zhang, Xiaohu
Guha, Raj
Thomas, Craig J.
Grueso, Judit
Villanueva, Alberto
Jaeger, Samira
Heyn, Holger
Vizoso, Miguel
Pérez, Hector
Cordero, Alex
Gonzalez-Suarez, Eva
Esteller, Manel
Moreno-Bueno, Gema
Tjärnberg, Andreas
Lázaro, Conxi
Serra, Violeta
Arribas, Joaquín
Benson, Mikael
Gustafsson, Mika
Ferrer, Marc
Aloy, Patrick
Pujana, Miquel Àngel
author_facet Serra-Musach, Jordi
Mateo, Francesca
Capdevila-Busquets, Eva
de Garibay, Gorka Ruiz
Zhang, Xiaohu
Guha, Raj
Thomas, Craig J.
Grueso, Judit
Villanueva, Alberto
Jaeger, Samira
Heyn, Holger
Vizoso, Miguel
Pérez, Hector
Cordero, Alex
Gonzalez-Suarez, Eva
Esteller, Manel
Moreno-Bueno, Gema
Tjärnberg, Andreas
Lázaro, Conxi
Serra, Violeta
Arribas, Joaquín
Benson, Mikael
Gustafsson, Mika
Ferrer, Marc
Aloy, Patrick
Pujana, Miquel Àngel
author_sort Serra-Musach, Jordi
collection PubMed
description BACKGROUND: Cancer patients often show no or only modest benefit from a given therapy. This major problem in oncology is generally attributed to the lack of specific predictive biomarkers, yet a global measure of cancer cell activity may support a comprehensive mechanistic understanding of therapy efficacy. We reasoned that network analysis of omic data could help to achieve this goal. METHODS: A measure of “cancer network activity” (CNA) was implemented based on a previously defined network feature of communicability. The network nodes and edges corresponded to human proteins and experimentally identified interactions, respectively. The edges were weighted proportionally to the expression of the genes encoding for the corresponding proteins and relative to the number of direct interactors. The gene expression data corresponded to the basal conditions of 595 human cancer cell lines. Therapeutic responses corresponded to the impairment of cell viability measured by the half maximal inhibitory concentration (IC(50)) of 130 drugs approved or under clinical development. Gene ontology, signaling pathway, and transcription factor-binding annotations were taken from public repositories. Predicted synergies were assessed by determining the viability of four breast cancer cell lines and by applying two different analytical methods. RESULTS: The effects of drug classes were associated with CNAs formed by different cell lines. CNAs also differentiate target families and effector pathways. Proteins that occupy a central position in the network largely contribute to CNA. Known key cancer-associated biological processes, signaling pathways, and master regulators also contribute to CNA. Moreover, the major cancer drivers frequently mediate CNA and therapeutic differences. Cell-based assays centered on these differences and using uncorrelated drug effects reveals novel synergistic combinations for the treatment of breast cancer dependent on PI3K-mTOR signaling. CONCLUSIONS: Cancer therapeutic responses can be predicted on the basis of a systems-level analysis of molecular interactions and gene expression. Fundamental cancer processes, pathways, and drivers contribute to this feature, which can also be exploited to predict precise synergistic drug combinations. ELECTRONIC SUPPLEMENTARY MATERIAL: The online version of this article (doi:10.1186/s13073-016-0340-x) contains supplementary material, which is available to authorized users.
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spelling pubmed-49956282016-08-25 Cancer network activity associated with therapeutic response and synergism Serra-Musach, Jordi Mateo, Francesca Capdevila-Busquets, Eva de Garibay, Gorka Ruiz Zhang, Xiaohu Guha, Raj Thomas, Craig J. Grueso, Judit Villanueva, Alberto Jaeger, Samira Heyn, Holger Vizoso, Miguel Pérez, Hector Cordero, Alex Gonzalez-Suarez, Eva Esteller, Manel Moreno-Bueno, Gema Tjärnberg, Andreas Lázaro, Conxi Serra, Violeta Arribas, Joaquín Benson, Mikael Gustafsson, Mika Ferrer, Marc Aloy, Patrick Pujana, Miquel Àngel Genome Med Research BACKGROUND: Cancer patients often show no or only modest benefit from a given therapy. This major problem in oncology is generally attributed to the lack of specific predictive biomarkers, yet a global measure of cancer cell activity may support a comprehensive mechanistic understanding of therapy efficacy. We reasoned that network analysis of omic data could help to achieve this goal. METHODS: A measure of “cancer network activity” (CNA) was implemented based on a previously defined network feature of communicability. The network nodes and edges corresponded to human proteins and experimentally identified interactions, respectively. The edges were weighted proportionally to the expression of the genes encoding for the corresponding proteins and relative to the number of direct interactors. The gene expression data corresponded to the basal conditions of 595 human cancer cell lines. Therapeutic responses corresponded to the impairment of cell viability measured by the half maximal inhibitory concentration (IC(50)) of 130 drugs approved or under clinical development. Gene ontology, signaling pathway, and transcription factor-binding annotations were taken from public repositories. Predicted synergies were assessed by determining the viability of four breast cancer cell lines and by applying two different analytical methods. RESULTS: The effects of drug classes were associated with CNAs formed by different cell lines. CNAs also differentiate target families and effector pathways. Proteins that occupy a central position in the network largely contribute to CNA. Known key cancer-associated biological processes, signaling pathways, and master regulators also contribute to CNA. Moreover, the major cancer drivers frequently mediate CNA and therapeutic differences. Cell-based assays centered on these differences and using uncorrelated drug effects reveals novel synergistic combinations for the treatment of breast cancer dependent on PI3K-mTOR signaling. CONCLUSIONS: Cancer therapeutic responses can be predicted on the basis of a systems-level analysis of molecular interactions and gene expression. Fundamental cancer processes, pathways, and drivers contribute to this feature, which can also be exploited to predict precise synergistic drug combinations. ELECTRONIC SUPPLEMENTARY MATERIAL: The online version of this article (doi:10.1186/s13073-016-0340-x) contains supplementary material, which is available to authorized users. BioMed Central 2016-08-24 /pmc/articles/PMC4995628/ /pubmed/27553366 http://dx.doi.org/10.1186/s13073-016-0340-x Text en © The Author(s). 2016 Open AccessThis article is distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons license, and indicate if changes were made. The Creative Commons Public Domain Dedication waiver (http://creativecommons.org/publicdomain/zero/1.0/) applies to the data made available in this article, unless otherwise stated.
spellingShingle Research
Serra-Musach, Jordi
Mateo, Francesca
Capdevila-Busquets, Eva
de Garibay, Gorka Ruiz
Zhang, Xiaohu
Guha, Raj
Thomas, Craig J.
Grueso, Judit
Villanueva, Alberto
Jaeger, Samira
Heyn, Holger
Vizoso, Miguel
Pérez, Hector
Cordero, Alex
Gonzalez-Suarez, Eva
Esteller, Manel
Moreno-Bueno, Gema
Tjärnberg, Andreas
Lázaro, Conxi
Serra, Violeta
Arribas, Joaquín
Benson, Mikael
Gustafsson, Mika
Ferrer, Marc
Aloy, Patrick
Pujana, Miquel Àngel
Cancer network activity associated with therapeutic response and synergism
title Cancer network activity associated with therapeutic response and synergism
title_full Cancer network activity associated with therapeutic response and synergism
title_fullStr Cancer network activity associated with therapeutic response and synergism
title_full_unstemmed Cancer network activity associated with therapeutic response and synergism
title_short Cancer network activity associated with therapeutic response and synergism
title_sort cancer network activity associated with therapeutic response and synergism
topic Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4995628/
https://www.ncbi.nlm.nih.gov/pubmed/27553366
http://dx.doi.org/10.1186/s13073-016-0340-x
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