Cargando…

Gene identification for risk of relapse in stage I lung adenocarcinoma patients: a combined methodology of gene expression profiling and computational gene network analysis

Risk assessment and treatment choice remains a challenge in early non-smallcell lung cancer (NSCLC). The aim of this study was to identify novel genes involved in the risk of early relapse (ER) compared to no relapse (NR) in resected lung adenocarcinoma (AD) patients using a combination of high thro...

Descripción completa

Detalles Bibliográficos
Autores principales: Ludovini, Vienna, Bianconi, Fortunato, Siggillino, Annamaria, Piobbico, Danilo, Vannucci, Jacopo, Metro, Giulio, Chiari, Rita, Bellezza, Guido, Puma, Francesco, Fazia, Maria Agnese Della, Servillo, Giuseppe, Crinò, Lucio
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Impact Journals LLC 2016
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5058701/
https://www.ncbi.nlm.nih.gov/pubmed/27081700
http://dx.doi.org/10.18632/oncotarget.8723
_version_ 1782459285846884352
author Ludovini, Vienna
Bianconi, Fortunato
Siggillino, Annamaria
Piobbico, Danilo
Vannucci, Jacopo
Metro, Giulio
Chiari, Rita
Bellezza, Guido
Puma, Francesco
Fazia, Maria Agnese Della
Servillo, Giuseppe
Crinò, Lucio
author_facet Ludovini, Vienna
Bianconi, Fortunato
Siggillino, Annamaria
Piobbico, Danilo
Vannucci, Jacopo
Metro, Giulio
Chiari, Rita
Bellezza, Guido
Puma, Francesco
Fazia, Maria Agnese Della
Servillo, Giuseppe
Crinò, Lucio
author_sort Ludovini, Vienna
collection PubMed
description Risk assessment and treatment choice remains a challenge in early non-smallcell lung cancer (NSCLC). The aim of this study was to identify novel genes involved in the risk of early relapse (ER) compared to no relapse (NR) in resected lung adenocarcinoma (AD) patients using a combination of high throughput technology and computational analysis. We identified 18 patients (n.13 NR and n.5 ER) with stage I AD. Frozen samples of patients in ER, NR and corresponding normal lung (NL) were subjected to Microarray technology and quantitative-PCR (Q-PCR). A gene network computational analysis was performed to select predictive genes. An independent set of 79 ADs stage I samples was used to validate selected genes by Q-PCR. From microarray analysis we selected 50 genes, using the fold change ratio of ER versus NR. They were validated both in pool and individually in patient samples (ER and NR) by Q-PCR. Fourteen increased and 25 decreased genes showed a concordance between two methods. They were used to perform a computational gene network analysis that identified 4 increased (HOXA10, CLCA2, AKR1B10, FABP3) and 6 decreased (SCGB1A1, PGC, TFF1, PSCA, SPRR1B and PRSS1) genes. Moreover, in an independent dataset of ADs samples, we showed that both high FABP3 expression and low SCGB1A1 expression was associated with a worse disease-free survival (DFS). Our results indicate that it is possible to define, through gene expression and computational analysis, a characteristic gene profiling of patients with an increased risk of relapse that may become a tool for patient selection for adjuvant therapy.
format Online
Article
Text
id pubmed-5058701
institution National Center for Biotechnology Information
language English
publishDate 2016
publisher Impact Journals LLC
record_format MEDLINE/PubMed
spelling pubmed-50587012016-10-15 Gene identification for risk of relapse in stage I lung adenocarcinoma patients: a combined methodology of gene expression profiling and computational gene network analysis Ludovini, Vienna Bianconi, Fortunato Siggillino, Annamaria Piobbico, Danilo Vannucci, Jacopo Metro, Giulio Chiari, Rita Bellezza, Guido Puma, Francesco Fazia, Maria Agnese Della Servillo, Giuseppe Crinò, Lucio Oncotarget Research Paper Risk assessment and treatment choice remains a challenge in early non-smallcell lung cancer (NSCLC). The aim of this study was to identify novel genes involved in the risk of early relapse (ER) compared to no relapse (NR) in resected lung adenocarcinoma (AD) patients using a combination of high throughput technology and computational analysis. We identified 18 patients (n.13 NR and n.5 ER) with stage I AD. Frozen samples of patients in ER, NR and corresponding normal lung (NL) were subjected to Microarray technology and quantitative-PCR (Q-PCR). A gene network computational analysis was performed to select predictive genes. An independent set of 79 ADs stage I samples was used to validate selected genes by Q-PCR. From microarray analysis we selected 50 genes, using the fold change ratio of ER versus NR. They were validated both in pool and individually in patient samples (ER and NR) by Q-PCR. Fourteen increased and 25 decreased genes showed a concordance between two methods. They were used to perform a computational gene network analysis that identified 4 increased (HOXA10, CLCA2, AKR1B10, FABP3) and 6 decreased (SCGB1A1, PGC, TFF1, PSCA, SPRR1B and PRSS1) genes. Moreover, in an independent dataset of ADs samples, we showed that both high FABP3 expression and low SCGB1A1 expression was associated with a worse disease-free survival (DFS). Our results indicate that it is possible to define, through gene expression and computational analysis, a characteristic gene profiling of patients with an increased risk of relapse that may become a tool for patient selection for adjuvant therapy. Impact Journals LLC 2016-04-13 /pmc/articles/PMC5058701/ /pubmed/27081700 http://dx.doi.org/10.18632/oncotarget.8723 Text en Copyright: © 2016 Ludovini et al. http://creativecommons.org/licenses/by/2.5/ 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 credited.
spellingShingle Research Paper
Ludovini, Vienna
Bianconi, Fortunato
Siggillino, Annamaria
Piobbico, Danilo
Vannucci, Jacopo
Metro, Giulio
Chiari, Rita
Bellezza, Guido
Puma, Francesco
Fazia, Maria Agnese Della
Servillo, Giuseppe
Crinò, Lucio
Gene identification for risk of relapse in stage I lung adenocarcinoma patients: a combined methodology of gene expression profiling and computational gene network analysis
title Gene identification for risk of relapse in stage I lung adenocarcinoma patients: a combined methodology of gene expression profiling and computational gene network analysis
title_full Gene identification for risk of relapse in stage I lung adenocarcinoma patients: a combined methodology of gene expression profiling and computational gene network analysis
title_fullStr Gene identification for risk of relapse in stage I lung adenocarcinoma patients: a combined methodology of gene expression profiling and computational gene network analysis
title_full_unstemmed Gene identification for risk of relapse in stage I lung adenocarcinoma patients: a combined methodology of gene expression profiling and computational gene network analysis
title_short Gene identification for risk of relapse in stage I lung adenocarcinoma patients: a combined methodology of gene expression profiling and computational gene network analysis
title_sort gene identification for risk of relapse in stage i lung adenocarcinoma patients: a combined methodology of gene expression profiling and computational gene network analysis
topic Research Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5058701/
https://www.ncbi.nlm.nih.gov/pubmed/27081700
http://dx.doi.org/10.18632/oncotarget.8723
work_keys_str_mv AT ludovinivienna geneidentificationforriskofrelapseinstageilungadenocarcinomapatientsacombinedmethodologyofgeneexpressionprofilingandcomputationalgenenetworkanalysis
AT bianconifortunato geneidentificationforriskofrelapseinstageilungadenocarcinomapatientsacombinedmethodologyofgeneexpressionprofilingandcomputationalgenenetworkanalysis
AT siggillinoannamaria geneidentificationforriskofrelapseinstageilungadenocarcinomapatientsacombinedmethodologyofgeneexpressionprofilingandcomputationalgenenetworkanalysis
AT piobbicodanilo geneidentificationforriskofrelapseinstageilungadenocarcinomapatientsacombinedmethodologyofgeneexpressionprofilingandcomputationalgenenetworkanalysis
AT vannuccijacopo geneidentificationforriskofrelapseinstageilungadenocarcinomapatientsacombinedmethodologyofgeneexpressionprofilingandcomputationalgenenetworkanalysis
AT metrogiulio geneidentificationforriskofrelapseinstageilungadenocarcinomapatientsacombinedmethodologyofgeneexpressionprofilingandcomputationalgenenetworkanalysis
AT chiaririta geneidentificationforriskofrelapseinstageilungadenocarcinomapatientsacombinedmethodologyofgeneexpressionprofilingandcomputationalgenenetworkanalysis
AT bellezzaguido geneidentificationforriskofrelapseinstageilungadenocarcinomapatientsacombinedmethodologyofgeneexpressionprofilingandcomputationalgenenetworkanalysis
AT pumafrancesco geneidentificationforriskofrelapseinstageilungadenocarcinomapatientsacombinedmethodologyofgeneexpressionprofilingandcomputationalgenenetworkanalysis
AT faziamariaagnesedella geneidentificationforriskofrelapseinstageilungadenocarcinomapatientsacombinedmethodologyofgeneexpressionprofilingandcomputationalgenenetworkanalysis
AT servillogiuseppe geneidentificationforriskofrelapseinstageilungadenocarcinomapatientsacombinedmethodologyofgeneexpressionprofilingandcomputationalgenenetworkanalysis
AT crinolucio geneidentificationforriskofrelapseinstageilungadenocarcinomapatientsacombinedmethodologyofgeneexpressionprofilingandcomputationalgenenetworkanalysis