Personalized logical models to investigate cancer response to BRAF treatments in melanomas and colorectal cancers.

The study of response to cancer treatments has benefited greatly from the contribution of different omics data but their interpretation is sometimes difficult. Some mathematical models based on prior biological knowledge of signaling pathways facilitate this interpretation but often require fitting...

Full description

Bibliographic Details
Main Authors: Jonas Béal, Lorenzo Pantolini, Vincent Noël, Emmanuel Barillot, Laurence Calzone
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2021-01-01
Series:PLoS Computational Biology
Online Access:https://doi.org/10.1371/journal.pcbi.1007900
id doaj-afd0edf56de94533a704b4e1a8f81fbc
record_format Article
spelling doaj-afd0edf56de94533a704b4e1a8f81fbc2021-05-21T04:32:47ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582021-01-01171e100790010.1371/journal.pcbi.1007900Personalized logical models to investigate cancer response to BRAF treatments in melanomas and colorectal cancers.Jonas BéalLorenzo PantoliniVincent NoëlEmmanuel BarillotLaurence CalzoneThe study of response to cancer treatments has benefited greatly from the contribution of different omics data but their interpretation is sometimes difficult. Some mathematical models based on prior biological knowledge of signaling pathways facilitate this interpretation but often require fitting of their parameters using perturbation data. We propose a more qualitative mechanistic approach, based on logical formalism and on the sole mapping and interpretation of omics data, and able to recover differences in sensitivity to gene inhibition without model training. This approach is showcased by the study of BRAF inhibition in patients with melanomas and colorectal cancers who experience significant differences in sensitivity despite similar omics profiles. We first gather information from literature and build a logical model summarizing the regulatory network of the mitogen-activated protein kinase (MAPK) pathway surrounding BRAF, with factors involved in the BRAF inhibition resistance mechanisms. The relevance of this model is verified by automatically assessing that it qualitatively reproduces response or resistance behaviors identified in the literature. Data from over 100 melanoma and colorectal cancer cell lines are then used to validate the model's ability to explain differences in sensitivity. This generic model is transformed into personalized cell line-specific logical models by integrating the omics information of the cell lines as constraints of the model. The use of mutations alone allows personalized models to correlate significantly with experimental sensitivities to BRAF inhibition, both from drug and CRISPR targeting, and even better with the joint use of mutations and RNA, supporting multi-omics mechanistic models. A comparison of these untrained models with learning approaches highlights similarities in interpretation and complementarity depending on the size of the datasets. This parsimonious pipeline, which can easily be extended to other biological questions, makes it possible to explore the mechanistic causes of the response to treatment, on an individualized basis.https://doi.org/10.1371/journal.pcbi.1007900
collection DOAJ
language English
format Article
sources DOAJ
author Jonas Béal
Lorenzo Pantolini
Vincent Noël
Emmanuel Barillot
Laurence Calzone
spellingShingle Jonas Béal
Lorenzo Pantolini
Vincent Noël
Emmanuel Barillot
Laurence Calzone
Personalized logical models to investigate cancer response to BRAF treatments in melanomas and colorectal cancers.
PLoS Computational Biology
author_facet Jonas Béal
Lorenzo Pantolini
Vincent Noël
Emmanuel Barillot
Laurence Calzone
author_sort Jonas Béal
title Personalized logical models to investigate cancer response to BRAF treatments in melanomas and colorectal cancers.
title_short Personalized logical models to investigate cancer response to BRAF treatments in melanomas and colorectal cancers.
title_full Personalized logical models to investigate cancer response to BRAF treatments in melanomas and colorectal cancers.
title_fullStr Personalized logical models to investigate cancer response to BRAF treatments in melanomas and colorectal cancers.
title_full_unstemmed Personalized logical models to investigate cancer response to BRAF treatments in melanomas and colorectal cancers.
title_sort personalized logical models to investigate cancer response to braf treatments in melanomas and colorectal cancers.
publisher Public Library of Science (PLoS)
series PLoS Computational Biology
issn 1553-734X
1553-7358
publishDate 2021-01-01
description The study of response to cancer treatments has benefited greatly from the contribution of different omics data but their interpretation is sometimes difficult. Some mathematical models based on prior biological knowledge of signaling pathways facilitate this interpretation but often require fitting of their parameters using perturbation data. We propose a more qualitative mechanistic approach, based on logical formalism and on the sole mapping and interpretation of omics data, and able to recover differences in sensitivity to gene inhibition without model training. This approach is showcased by the study of BRAF inhibition in patients with melanomas and colorectal cancers who experience significant differences in sensitivity despite similar omics profiles. We first gather information from literature and build a logical model summarizing the regulatory network of the mitogen-activated protein kinase (MAPK) pathway surrounding BRAF, with factors involved in the BRAF inhibition resistance mechanisms. The relevance of this model is verified by automatically assessing that it qualitatively reproduces response or resistance behaviors identified in the literature. Data from over 100 melanoma and colorectal cancer cell lines are then used to validate the model's ability to explain differences in sensitivity. This generic model is transformed into personalized cell line-specific logical models by integrating the omics information of the cell lines as constraints of the model. The use of mutations alone allows personalized models to correlate significantly with experimental sensitivities to BRAF inhibition, both from drug and CRISPR targeting, and even better with the joint use of mutations and RNA, supporting multi-omics mechanistic models. A comparison of these untrained models with learning approaches highlights similarities in interpretation and complementarity depending on the size of the datasets. This parsimonious pipeline, which can easily be extended to other biological questions, makes it possible to explore the mechanistic causes of the response to treatment, on an individualized basis.
url https://doi.org/10.1371/journal.pcbi.1007900
work_keys_str_mv AT jonasbeal personalizedlogicalmodelstoinvestigatecancerresponsetobraftreatmentsinmelanomasandcolorectalcancers
AT lorenzopantolini personalizedlogicalmodelstoinvestigatecancerresponsetobraftreatmentsinmelanomasandcolorectalcancers
AT vincentnoel personalizedlogicalmodelstoinvestigatecancerresponsetobraftreatmentsinmelanomasandcolorectalcancers
AT emmanuelbarillot personalizedlogicalmodelstoinvestigatecancerresponsetobraftreatmentsinmelanomasandcolorectalcancers
AT laurencecalzone personalizedlogicalmodelstoinvestigatecancerresponsetobraftreatmentsinmelanomasandcolorectalcancers
_version_ 1721432555149852672