Cargando…

Perturbation Biology: Inferring Signaling Networks in Cellular Systems

We present a powerful experimental-computational technology for inferring network models that predict the response of cells to perturbations, and that may be useful in the design of combinatorial therapy against cancer. The experiments are systematic series of perturbations of cancer cell lines by t...

Descripción completa

Detalles Bibliográficos
Autores principales: Molinelli, Evan J., Korkut, Anil, Wang, Weiqing, Miller, Martin L., Gauthier, Nicholas P., Jing, Xiaohong, Kaushik, Poorvi, He, Qin, Mills, Gordon, Solit, David B., Pratilas, Christine A., Weigt, Martin, Braunstein, Alfredo, Pagnani, Andrea, Zecchina, Riccardo, Sander, Chris
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2013
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3868523/
https://www.ncbi.nlm.nih.gov/pubmed/24367245
http://dx.doi.org/10.1371/journal.pcbi.1003290
_version_ 1782296462093189120
author Molinelli, Evan J.
Korkut, Anil
Wang, Weiqing
Miller, Martin L.
Gauthier, Nicholas P.
Jing, Xiaohong
Kaushik, Poorvi
He, Qin
Mills, Gordon
Solit, David B.
Pratilas, Christine A.
Weigt, Martin
Braunstein, Alfredo
Pagnani, Andrea
Zecchina, Riccardo
Sander, Chris
author_facet Molinelli, Evan J.
Korkut, Anil
Wang, Weiqing
Miller, Martin L.
Gauthier, Nicholas P.
Jing, Xiaohong
Kaushik, Poorvi
He, Qin
Mills, Gordon
Solit, David B.
Pratilas, Christine A.
Weigt, Martin
Braunstein, Alfredo
Pagnani, Andrea
Zecchina, Riccardo
Sander, Chris
author_sort Molinelli, Evan J.
collection PubMed
description We present a powerful experimental-computational technology for inferring network models that predict the response of cells to perturbations, and that may be useful in the design of combinatorial therapy against cancer. The experiments are systematic series of perturbations of cancer cell lines by targeted drugs, singly or in combination. The response to perturbation is quantified in terms of relative changes in the measured levels of proteins, phospho-proteins and cellular phenotypes such as viability. Computational network models are derived de novo, i.e., without prior knowledge of signaling pathways, and are based on simple non-linear differential equations. The prohibitively large solution space of all possible network models is explored efficiently using a probabilistic algorithm, Belief Propagation (BP), which is three orders of magnitude faster than standard Monte Carlo methods. Explicit executable models are derived for a set of perturbation experiments in SKMEL-133 melanoma cell lines, which are resistant to the therapeutically important inhibitor of RAF kinase. The resulting network models reproduce and extend known pathway biology. They empower potential discoveries of new molecular interactions and predict efficacious novel drug perturbations, such as the inhibition of PLK1, which is verified experimentally. This technology is suitable for application to larger systems in diverse areas of molecular biology.
format Online
Article
Text
id pubmed-3868523
institution National Center for Biotechnology Information
language English
publishDate 2013
publisher Public Library of Science
record_format MEDLINE/PubMed
spelling pubmed-38685232013-12-23 Perturbation Biology: Inferring Signaling Networks in Cellular Systems Molinelli, Evan J. Korkut, Anil Wang, Weiqing Miller, Martin L. Gauthier, Nicholas P. Jing, Xiaohong Kaushik, Poorvi He, Qin Mills, Gordon Solit, David B. Pratilas, Christine A. Weigt, Martin Braunstein, Alfredo Pagnani, Andrea Zecchina, Riccardo Sander, Chris PLoS Comput Biol Research Article We present a powerful experimental-computational technology for inferring network models that predict the response of cells to perturbations, and that may be useful in the design of combinatorial therapy against cancer. The experiments are systematic series of perturbations of cancer cell lines by targeted drugs, singly or in combination. The response to perturbation is quantified in terms of relative changes in the measured levels of proteins, phospho-proteins and cellular phenotypes such as viability. Computational network models are derived de novo, i.e., without prior knowledge of signaling pathways, and are based on simple non-linear differential equations. The prohibitively large solution space of all possible network models is explored efficiently using a probabilistic algorithm, Belief Propagation (BP), which is three orders of magnitude faster than standard Monte Carlo methods. Explicit executable models are derived for a set of perturbation experiments in SKMEL-133 melanoma cell lines, which are resistant to the therapeutically important inhibitor of RAF kinase. The resulting network models reproduce and extend known pathway biology. They empower potential discoveries of new molecular interactions and predict efficacious novel drug perturbations, such as the inhibition of PLK1, which is verified experimentally. This technology is suitable for application to larger systems in diverse areas of molecular biology. Public Library of Science 2013-12-19 /pmc/articles/PMC3868523/ /pubmed/24367245 http://dx.doi.org/10.1371/journal.pcbi.1003290 Text en © 2013 Molinelli et al http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are properly credited.
spellingShingle Research Article
Molinelli, Evan J.
Korkut, Anil
Wang, Weiqing
Miller, Martin L.
Gauthier, Nicholas P.
Jing, Xiaohong
Kaushik, Poorvi
He, Qin
Mills, Gordon
Solit, David B.
Pratilas, Christine A.
Weigt, Martin
Braunstein, Alfredo
Pagnani, Andrea
Zecchina, Riccardo
Sander, Chris
Perturbation Biology: Inferring Signaling Networks in Cellular Systems
title Perturbation Biology: Inferring Signaling Networks in Cellular Systems
title_full Perturbation Biology: Inferring Signaling Networks in Cellular Systems
title_fullStr Perturbation Biology: Inferring Signaling Networks in Cellular Systems
title_full_unstemmed Perturbation Biology: Inferring Signaling Networks in Cellular Systems
title_short Perturbation Biology: Inferring Signaling Networks in Cellular Systems
title_sort perturbation biology: inferring signaling networks in cellular systems
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3868523/
https://www.ncbi.nlm.nih.gov/pubmed/24367245
http://dx.doi.org/10.1371/journal.pcbi.1003290
work_keys_str_mv AT molinellievanj perturbationbiologyinferringsignalingnetworksincellularsystems
AT korkutanil perturbationbiologyinferringsignalingnetworksincellularsystems
AT wangweiqing perturbationbiologyinferringsignalingnetworksincellularsystems
AT millermartinl perturbationbiologyinferringsignalingnetworksincellularsystems
AT gauthiernicholasp perturbationbiologyinferringsignalingnetworksincellularsystems
AT jingxiaohong perturbationbiologyinferringsignalingnetworksincellularsystems
AT kaushikpoorvi perturbationbiologyinferringsignalingnetworksincellularsystems
AT heqin perturbationbiologyinferringsignalingnetworksincellularsystems
AT millsgordon perturbationbiologyinferringsignalingnetworksincellularsystems
AT solitdavidb perturbationbiologyinferringsignalingnetworksincellularsystems
AT pratilaschristinea perturbationbiologyinferringsignalingnetworksincellularsystems
AT weigtmartin perturbationbiologyinferringsignalingnetworksincellularsystems
AT braunsteinalfredo perturbationbiologyinferringsignalingnetworksincellularsystems
AT pagnaniandrea perturbationbiologyinferringsignalingnetworksincellularsystems
AT zecchinariccardo perturbationbiologyinferringsignalingnetworksincellularsystems
AT sanderchris perturbationbiologyinferringsignalingnetworksincellularsystems