Cargando…

Reverse phase protein array (RPPA) combined with computational analysis to unravel relevant prognostic factors in non- small cell lung cancer (NSCLC): a pilot study

In this work high throughput technology and computational analysis were used to study two stage IV lung adenocarcinoma patients treated with standard chemotherapy with markedly different survival (128 months vs 6 months, respectively) and whose tumor samples exhibit a dissimilar protein activation p...

Descripción completa

Detalles Bibliográficos
Autores principales: Ludovini, Vienna, Chiari, Rita, Tomassoni, Lorenzo, Antonini, Chiara, Baldelli, Elisa, Baglivo, Sara, Siggillino, Annamaria, Tofanetti, Francesca Romana, Bellezza, Guido, Hodge, K. Alex, Petricoin, Emanuel, Pierobon, Mariaelena, Crinò, Lucio, Bianconi, Fortunato
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Impact Journals LLC 2017
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5669974/
https://www.ncbi.nlm.nih.gov/pubmed/29137348
http://dx.doi.org/10.18632/oncotarget.18480
_version_ 1783275943013384192
author Ludovini, Vienna
Chiari, Rita
Tomassoni, Lorenzo
Antonini, Chiara
Baldelli, Elisa
Baglivo, Sara
Siggillino, Annamaria
Tofanetti, Francesca Romana
Bellezza, Guido
Hodge, K. Alex
Petricoin, Emanuel
Pierobon, Mariaelena
Crinò, Lucio
Bianconi, Fortunato
author_facet Ludovini, Vienna
Chiari, Rita
Tomassoni, Lorenzo
Antonini, Chiara
Baldelli, Elisa
Baglivo, Sara
Siggillino, Annamaria
Tofanetti, Francesca Romana
Bellezza, Guido
Hodge, K. Alex
Petricoin, Emanuel
Pierobon, Mariaelena
Crinò, Lucio
Bianconi, Fortunato
author_sort Ludovini, Vienna
collection PubMed
description In this work high throughput technology and computational analysis were used to study two stage IV lung adenocarcinoma patients treated with standard chemotherapy with markedly different survival (128 months vs 6 months, respectively) and whose tumor samples exhibit a dissimilar protein activation pattern of the signal transduction. Tumor samples of the two patients were subjected to Reverse Phase Protein Microarray (RPPA) analysis to explore the expression/activation levels of 51 signaling proteins. We selected the most divergent proteins based on the ratio of their RPPA values in the two patients with short (s-OS) and long (l-OS) overall survival (OS) and tested them against a EGFR-IGF1R mathematical model. The model with RPPA data showed that the activation levels of 19 proteins were different in the two patients. The four proteins that most distinguished the two patients were BADS155/136 and c-KITY703/719 having a higher activation level in the patient with short survival and p70S6S371/T389 and b-RAFS445 that had a lower activation level in the s-OS patient. The final model describes the interactions between the MAPK and PI3K-mTOR pathways, including 21 nodes. According to our model mTOR and ERK activation levels were predicted to be lower in the s-OS patient than the l-OS patient, while the AMPK activation level was higher in the s-OS patient. Moreover, KRAS activation was predicted to be higher in the l-OS KRAS-mutated patient. In accordance with their different biological properties, the Moment Independent Robustness Indicator in s-OS and l-OS predicted the interaction of MAPK and mTOR and the crosstalk AKT with p90RSK as candidates to be prognostic factors and drug targets.
format Online
Article
Text
id pubmed-5669974
institution National Center for Biotechnology Information
language English
publishDate 2017
publisher Impact Journals LLC
record_format MEDLINE/PubMed
spelling pubmed-56699742017-11-09 Reverse phase protein array (RPPA) combined with computational analysis to unravel relevant prognostic factors in non- small cell lung cancer (NSCLC): a pilot study Ludovini, Vienna Chiari, Rita Tomassoni, Lorenzo Antonini, Chiara Baldelli, Elisa Baglivo, Sara Siggillino, Annamaria Tofanetti, Francesca Romana Bellezza, Guido Hodge, K. Alex Petricoin, Emanuel Pierobon, Mariaelena Crinò, Lucio Bianconi, Fortunato Oncotarget Case Report In this work high throughput technology and computational analysis were used to study two stage IV lung adenocarcinoma patients treated with standard chemotherapy with markedly different survival (128 months vs 6 months, respectively) and whose tumor samples exhibit a dissimilar protein activation pattern of the signal transduction. Tumor samples of the two patients were subjected to Reverse Phase Protein Microarray (RPPA) analysis to explore the expression/activation levels of 51 signaling proteins. We selected the most divergent proteins based on the ratio of their RPPA values in the two patients with short (s-OS) and long (l-OS) overall survival (OS) and tested them against a EGFR-IGF1R mathematical model. The model with RPPA data showed that the activation levels of 19 proteins were different in the two patients. The four proteins that most distinguished the two patients were BADS155/136 and c-KITY703/719 having a higher activation level in the patient with short survival and p70S6S371/T389 and b-RAFS445 that had a lower activation level in the s-OS patient. The final model describes the interactions between the MAPK and PI3K-mTOR pathways, including 21 nodes. According to our model mTOR and ERK activation levels were predicted to be lower in the s-OS patient than the l-OS patient, while the AMPK activation level was higher in the s-OS patient. Moreover, KRAS activation was predicted to be higher in the l-OS KRAS-mutated patient. In accordance with their different biological properties, the Moment Independent Robustness Indicator in s-OS and l-OS predicted the interaction of MAPK and mTOR and the crosstalk AKT with p90RSK as candidates to be prognostic factors and drug targets. Impact Journals LLC 2017-06-14 /pmc/articles/PMC5669974/ /pubmed/29137348 http://dx.doi.org/10.18632/oncotarget.18480 Text en Copyright: © 2017 Ludovini et al. http://creativecommons.org/licenses/by/3.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/3.0/) 3.0 (CC BY 3.0), which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Case Report
Ludovini, Vienna
Chiari, Rita
Tomassoni, Lorenzo
Antonini, Chiara
Baldelli, Elisa
Baglivo, Sara
Siggillino, Annamaria
Tofanetti, Francesca Romana
Bellezza, Guido
Hodge, K. Alex
Petricoin, Emanuel
Pierobon, Mariaelena
Crinò, Lucio
Bianconi, Fortunato
Reverse phase protein array (RPPA) combined with computational analysis to unravel relevant prognostic factors in non- small cell lung cancer (NSCLC): a pilot study
title Reverse phase protein array (RPPA) combined with computational analysis to unravel relevant prognostic factors in non- small cell lung cancer (NSCLC): a pilot study
title_full Reverse phase protein array (RPPA) combined with computational analysis to unravel relevant prognostic factors in non- small cell lung cancer (NSCLC): a pilot study
title_fullStr Reverse phase protein array (RPPA) combined with computational analysis to unravel relevant prognostic factors in non- small cell lung cancer (NSCLC): a pilot study
title_full_unstemmed Reverse phase protein array (RPPA) combined with computational analysis to unravel relevant prognostic factors in non- small cell lung cancer (NSCLC): a pilot study
title_short Reverse phase protein array (RPPA) combined with computational analysis to unravel relevant prognostic factors in non- small cell lung cancer (NSCLC): a pilot study
title_sort reverse phase protein array (rppa) combined with computational analysis to unravel relevant prognostic factors in non- small cell lung cancer (nsclc): a pilot study
topic Case Report
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5669974/
https://www.ncbi.nlm.nih.gov/pubmed/29137348
http://dx.doi.org/10.18632/oncotarget.18480
work_keys_str_mv AT ludovinivienna reversephaseproteinarrayrppacombinedwithcomputationalanalysistounravelrelevantprognosticfactorsinnonsmallcelllungcancernsclcapilotstudy
AT chiaririta reversephaseproteinarrayrppacombinedwithcomputationalanalysistounravelrelevantprognosticfactorsinnonsmallcelllungcancernsclcapilotstudy
AT tomassonilorenzo reversephaseproteinarrayrppacombinedwithcomputationalanalysistounravelrelevantprognosticfactorsinnonsmallcelllungcancernsclcapilotstudy
AT antoninichiara reversephaseproteinarrayrppacombinedwithcomputationalanalysistounravelrelevantprognosticfactorsinnonsmallcelllungcancernsclcapilotstudy
AT baldellielisa reversephaseproteinarrayrppacombinedwithcomputationalanalysistounravelrelevantprognosticfactorsinnonsmallcelllungcancernsclcapilotstudy
AT baglivosara reversephaseproteinarrayrppacombinedwithcomputationalanalysistounravelrelevantprognosticfactorsinnonsmallcelllungcancernsclcapilotstudy
AT siggillinoannamaria reversephaseproteinarrayrppacombinedwithcomputationalanalysistounravelrelevantprognosticfactorsinnonsmallcelllungcancernsclcapilotstudy
AT tofanettifrancescaromana reversephaseproteinarrayrppacombinedwithcomputationalanalysistounravelrelevantprognosticfactorsinnonsmallcelllungcancernsclcapilotstudy
AT bellezzaguido reversephaseproteinarrayrppacombinedwithcomputationalanalysistounravelrelevantprognosticfactorsinnonsmallcelllungcancernsclcapilotstudy
AT hodgekalex reversephaseproteinarrayrppacombinedwithcomputationalanalysistounravelrelevantprognosticfactorsinnonsmallcelllungcancernsclcapilotstudy
AT petricoinemanuel reversephaseproteinarrayrppacombinedwithcomputationalanalysistounravelrelevantprognosticfactorsinnonsmallcelllungcancernsclcapilotstudy
AT pierobonmariaelena reversephaseproteinarrayrppacombinedwithcomputationalanalysistounravelrelevantprognosticfactorsinnonsmallcelllungcancernsclcapilotstudy
AT crinolucio reversephaseproteinarrayrppacombinedwithcomputationalanalysistounravelrelevantprognosticfactorsinnonsmallcelllungcancernsclcapilotstudy
AT bianconifortunato reversephaseproteinarrayrppacombinedwithcomputationalanalysistounravelrelevantprognosticfactorsinnonsmallcelllungcancernsclcapilotstudy