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Glioblastoma survival is associated with distinct proteomic alteration signatures post chemoirradiation in a large-scale proteomic panel

BACKGROUND: Glioblastomas (GBM) are rapidly progressive, nearly uniformly fatal brain tumors. Proteomic analysis represents an opportunity for noninvasive GBM classification and biological understanding of treatment response. PURPOSE: We analyzed differential proteomic expression pre vs. post comple...

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Autores principales: Krauze, Andra Valentina, Sierk, Michael, Nguyen, Trinh, Chen, Qingrong, Yan, Chunhua, Hu, Ying, Jiang, William, Tasci, Erdal, Zgela, Theresa Cooley, Sproull, Mary, Mackey, Megan, Shankavaram, Uma, Meerzaman, Daoud, Camphausen, Kevin
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10448824/
https://www.ncbi.nlm.nih.gov/pubmed/37637066
http://dx.doi.org/10.3389/fonc.2023.1127645
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author Krauze, Andra Valentina
Sierk, Michael
Nguyen, Trinh
Chen, Qingrong
Yan, Chunhua
Hu, Ying
Jiang, William
Tasci, Erdal
Zgela, Theresa Cooley
Sproull, Mary
Mackey, Megan
Shankavaram, Uma
Meerzaman, Daoud
Camphausen, Kevin
author_facet Krauze, Andra Valentina
Sierk, Michael
Nguyen, Trinh
Chen, Qingrong
Yan, Chunhua
Hu, Ying
Jiang, William
Tasci, Erdal
Zgela, Theresa Cooley
Sproull, Mary
Mackey, Megan
Shankavaram, Uma
Meerzaman, Daoud
Camphausen, Kevin
author_sort Krauze, Andra Valentina
collection PubMed
description BACKGROUND: Glioblastomas (GBM) are rapidly progressive, nearly uniformly fatal brain tumors. Proteomic analysis represents an opportunity for noninvasive GBM classification and biological understanding of treatment response. PURPOSE: We analyzed differential proteomic expression pre vs. post completion of concurrent chemoirradiation (CRT) in patient serum samples to explore proteomic alterations and classify GBM by integrating clinical and proteomic parameters. MATERIALS AND METHODS: 82 patients with GBM were clinically annotated and serum samples obtained pre- and post-CRT. Serum samples were then screened using the aptamer-based SOMAScan® proteomic assay. Significant traits from uni- and multivariate Cox models for overall survival (OS) were designated independent prognostic factors and principal component analysis (PCA) was carried out. Differential expression of protein signals was calculated using paired t-tests, with KOBAS used to identify associated KEGG pathways. GSEA pre-ranked analysis was employed on the overall list of differentially expressed proteins (DEPs) against the MSigDB Hallmark, GO Biological Process, and Reactome databases with weighted gene correlation network analysis (WGCNA) and Enrichr used to validate pathway hits internally. RESULTS: 3 clinical clusters of patients with differential survival were identified. 389 significantly DEPs pre vs. post-treatment were identified, including 284 upregulated and 105 downregulated, representing several pathways relevant to cancer metabolism and progression. The lowest survival group (median OS 13.2 months) was associated with DEPs affiliated with proliferative pathways and exhibiting distinct oppositional response including with respect to radiation therapy related pathways, as compared to better-performing groups (intermediate, median OS 22.4 months; highest, median OS 28.7 months). Opposite signaling patterns across multiple analyses in several pathways (notably fatty acid metabolism, NOTCH, TNFα via NF-κB, Myc target V1 signaling, UV response, unfolded protein response, peroxisome, and interferon response) were distinct between clinical survival groups and supported by WGCNA. 23 proteins were statistically signficant for OS with 5 (NETO2, CST7, SEMA6D, CBLN4, NPS) supported by KM. CONCLUSION: Distinct proteomic alterations with hallmarks of cancer, including progression, resistance, stemness, and invasion, were identified in serum samples obtained from GBM patients pre vs. post CRT and corresponded with clinical survival. The proteome can potentially be employed for glioma classification and biological interrogation of cancer pathways.
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spelling pubmed-104488242023-08-25 Glioblastoma survival is associated with distinct proteomic alteration signatures post chemoirradiation in a large-scale proteomic panel Krauze, Andra Valentina Sierk, Michael Nguyen, Trinh Chen, Qingrong Yan, Chunhua Hu, Ying Jiang, William Tasci, Erdal Zgela, Theresa Cooley Sproull, Mary Mackey, Megan Shankavaram, Uma Meerzaman, Daoud Camphausen, Kevin Front Oncol Oncology BACKGROUND: Glioblastomas (GBM) are rapidly progressive, nearly uniformly fatal brain tumors. Proteomic analysis represents an opportunity for noninvasive GBM classification and biological understanding of treatment response. PURPOSE: We analyzed differential proteomic expression pre vs. post completion of concurrent chemoirradiation (CRT) in patient serum samples to explore proteomic alterations and classify GBM by integrating clinical and proteomic parameters. MATERIALS AND METHODS: 82 patients with GBM were clinically annotated and serum samples obtained pre- and post-CRT. Serum samples were then screened using the aptamer-based SOMAScan® proteomic assay. Significant traits from uni- and multivariate Cox models for overall survival (OS) were designated independent prognostic factors and principal component analysis (PCA) was carried out. Differential expression of protein signals was calculated using paired t-tests, with KOBAS used to identify associated KEGG pathways. GSEA pre-ranked analysis was employed on the overall list of differentially expressed proteins (DEPs) against the MSigDB Hallmark, GO Biological Process, and Reactome databases with weighted gene correlation network analysis (WGCNA) and Enrichr used to validate pathway hits internally. RESULTS: 3 clinical clusters of patients with differential survival were identified. 389 significantly DEPs pre vs. post-treatment were identified, including 284 upregulated and 105 downregulated, representing several pathways relevant to cancer metabolism and progression. The lowest survival group (median OS 13.2 months) was associated with DEPs affiliated with proliferative pathways and exhibiting distinct oppositional response including with respect to radiation therapy related pathways, as compared to better-performing groups (intermediate, median OS 22.4 months; highest, median OS 28.7 months). Opposite signaling patterns across multiple analyses in several pathways (notably fatty acid metabolism, NOTCH, TNFα via NF-κB, Myc target V1 signaling, UV response, unfolded protein response, peroxisome, and interferon response) were distinct between clinical survival groups and supported by WGCNA. 23 proteins were statistically signficant for OS with 5 (NETO2, CST7, SEMA6D, CBLN4, NPS) supported by KM. CONCLUSION: Distinct proteomic alterations with hallmarks of cancer, including progression, resistance, stemness, and invasion, were identified in serum samples obtained from GBM patients pre vs. post CRT and corresponded with clinical survival. The proteome can potentially be employed for glioma classification and biological interrogation of cancer pathways. Frontiers Media S.A. 2023-08-10 /pmc/articles/PMC10448824/ /pubmed/37637066 http://dx.doi.org/10.3389/fonc.2023.1127645 Text en Copyright © 2023 Krauze, Sierk, Nguyen, Chen, Yan, Hu, Jiang, Tasci, Zgela, Sproull, Mackey, Shankavaram, Meerzaman and Camphausen https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Oncology
Krauze, Andra Valentina
Sierk, Michael
Nguyen, Trinh
Chen, Qingrong
Yan, Chunhua
Hu, Ying
Jiang, William
Tasci, Erdal
Zgela, Theresa Cooley
Sproull, Mary
Mackey, Megan
Shankavaram, Uma
Meerzaman, Daoud
Camphausen, Kevin
Glioblastoma survival is associated with distinct proteomic alteration signatures post chemoirradiation in a large-scale proteomic panel
title Glioblastoma survival is associated with distinct proteomic alteration signatures post chemoirradiation in a large-scale proteomic panel
title_full Glioblastoma survival is associated with distinct proteomic alteration signatures post chemoirradiation in a large-scale proteomic panel
title_fullStr Glioblastoma survival is associated with distinct proteomic alteration signatures post chemoirradiation in a large-scale proteomic panel
title_full_unstemmed Glioblastoma survival is associated with distinct proteomic alteration signatures post chemoirradiation in a large-scale proteomic panel
title_short Glioblastoma survival is associated with distinct proteomic alteration signatures post chemoirradiation in a large-scale proteomic panel
title_sort glioblastoma survival is associated with distinct proteomic alteration signatures post chemoirradiation in a large-scale proteomic panel
topic Oncology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10448824/
https://www.ncbi.nlm.nih.gov/pubmed/37637066
http://dx.doi.org/10.3389/fonc.2023.1127645
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