Computational quantification of global effects induced by mutations and drugs in signaling networks of colorectal cancer cells

Abstract Colorectal cancer (CRC) is one of the most deadly and commonly diagnosed tumors worldwide. Several genes are involved in its development and progression. The most frequent mutations concern APC, KRAS, SMAD4, and TP53 genes, suggesting that CRC relies on the concomitant alteration of the rel...

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Main Authors: Sara Sommariva, Giacomo Caviglia, Silvia Ravera, Francesco Frassoni, Federico Benvenuto, Lorenzo Tortolina, Nicoletta Castagnino, Silvio Parodi, Michele Piana
Format: Article
Language:English
Published: Nature Publishing Group 2021-10-01
Series:Scientific Reports
Online Access:https://doi.org/10.1038/s41598-021-99073-7
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spelling doaj-802c1bfca65b4b31bfbc6dfdc65092702021-10-03T11:33:35ZengNature Publishing GroupScientific Reports2045-23222021-10-0111111310.1038/s41598-021-99073-7Computational quantification of global effects induced by mutations and drugs in signaling networks of colorectal cancer cellsSara Sommariva0Giacomo Caviglia1Silvia Ravera2Francesco Frassoni3Federico Benvenuto4Lorenzo Tortolina5Nicoletta Castagnino6Silvio Parodi7Michele Piana8Dipartimento di Matematica, Università di GenovaDipartimento di Matematica, Università di GenovaDipartimento di Medicina Sperimentale, Università di GenovaDipartimento di Matematica, Università di GenovaDipartimento di Matematica, Università di GenovaDipartimento di Medicina Interna, Università di GenovaDipartimento di Medicina Interna, Università di GenovaDipartimento di Medicina Interna, Università di GenovaDipartimento di Matematica, Università di GenovaAbstract Colorectal cancer (CRC) is one of the most deadly and commonly diagnosed tumors worldwide. Several genes are involved in its development and progression. The most frequent mutations concern APC, KRAS, SMAD4, and TP53 genes, suggesting that CRC relies on the concomitant alteration of the related pathways. However, with classic molecular approaches, it is not easy to simultaneously analyze the interconnections between these pathways. To overcome this limitation, recently these pathways have been included in a huge chemical reaction network (CRN) describing how information sensed from the environment by growth factors is processed by healthy colorectal cells. Starting from this CRN, we propose a computational model which simulates the effects induced by single or multiple concurrent mutations on the global signaling network. The model has been tested in three scenarios. First, we have quantified the changes induced on the concentration of the proteins of the network by a mutation in APC, KRAS, SMAD4, or TP53. Second, we have computed the changes in the concentration of p53 induced by up to two concurrent mutations affecting proteins upstreams in the network. Third, we have considered a mutated cell affected by a gain of function of KRAS, and we have simulated the action of Dabrafenib, showing that the proposed model can be used to determine the most effective amount of drug to be delivered to the cell. In general, the proposed approach displays several advantages, in that it allows to quantify the alteration in the concentration of the proteins resulting from a single or multiple given mutations. Moreover, simulations of the global signaling network of CRC may be used to identify new therapeutic targets, or to disclose unexpected interactions between the involved pathways.https://doi.org/10.1038/s41598-021-99073-7
collection DOAJ
language English
format Article
sources DOAJ
author Sara Sommariva
Giacomo Caviglia
Silvia Ravera
Francesco Frassoni
Federico Benvenuto
Lorenzo Tortolina
Nicoletta Castagnino
Silvio Parodi
Michele Piana
spellingShingle Sara Sommariva
Giacomo Caviglia
Silvia Ravera
Francesco Frassoni
Federico Benvenuto
Lorenzo Tortolina
Nicoletta Castagnino
Silvio Parodi
Michele Piana
Computational quantification of global effects induced by mutations and drugs in signaling networks of colorectal cancer cells
Scientific Reports
author_facet Sara Sommariva
Giacomo Caviglia
Silvia Ravera
Francesco Frassoni
Federico Benvenuto
Lorenzo Tortolina
Nicoletta Castagnino
Silvio Parodi
Michele Piana
author_sort Sara Sommariva
title Computational quantification of global effects induced by mutations and drugs in signaling networks of colorectal cancer cells
title_short Computational quantification of global effects induced by mutations and drugs in signaling networks of colorectal cancer cells
title_full Computational quantification of global effects induced by mutations and drugs in signaling networks of colorectal cancer cells
title_fullStr Computational quantification of global effects induced by mutations and drugs in signaling networks of colorectal cancer cells
title_full_unstemmed Computational quantification of global effects induced by mutations and drugs in signaling networks of colorectal cancer cells
title_sort computational quantification of global effects induced by mutations and drugs in signaling networks of colorectal cancer cells
publisher Nature Publishing Group
series Scientific Reports
issn 2045-2322
publishDate 2021-10-01
description Abstract Colorectal cancer (CRC) is one of the most deadly and commonly diagnosed tumors worldwide. Several genes are involved in its development and progression. The most frequent mutations concern APC, KRAS, SMAD4, and TP53 genes, suggesting that CRC relies on the concomitant alteration of the related pathways. However, with classic molecular approaches, it is not easy to simultaneously analyze the interconnections between these pathways. To overcome this limitation, recently these pathways have been included in a huge chemical reaction network (CRN) describing how information sensed from the environment by growth factors is processed by healthy colorectal cells. Starting from this CRN, we propose a computational model which simulates the effects induced by single or multiple concurrent mutations on the global signaling network. The model has been tested in three scenarios. First, we have quantified the changes induced on the concentration of the proteins of the network by a mutation in APC, KRAS, SMAD4, or TP53. Second, we have computed the changes in the concentration of p53 induced by up to two concurrent mutations affecting proteins upstreams in the network. Third, we have considered a mutated cell affected by a gain of function of KRAS, and we have simulated the action of Dabrafenib, showing that the proposed model can be used to determine the most effective amount of drug to be delivered to the cell. In general, the proposed approach displays several advantages, in that it allows to quantify the alteration in the concentration of the proteins resulting from a single or multiple given mutations. Moreover, simulations of the global signaling network of CRC may be used to identify new therapeutic targets, or to disclose unexpected interactions between the involved pathways.
url https://doi.org/10.1038/s41598-021-99073-7
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