Evaluation of secretome biomarkers in glioblastoma cancer stem cells: A bioinformatics analysis

Author:

Jangholi Ehsan12ORCID,Tehran Hoda Ahmari3,Ghasemi Afsaneh4,Hoseinian Mohammad1,Firoozi Sina5,Ghodsi Seyed Mohammad12,Tamaddon Mona6,Bereimipour Ahmad7,Hadjighassem Mahmoudreza1

Affiliation:

1. Brain and Spinal Cord Injury Research Center Neuroscience Institute, Tehran University of Medical Sciences Tehran Iran

2. Department of Neurosurgery Shariati Hospital, Tehran University of Medical Sciences Tehran Iran

3. Department of Medical Education Qom University of Medical Sciences Qom Iran

4. Department of Public Health School of Health, Fasa University of Medical Sciences Fasa Iran

5. School of Medicine Kermanshah University of Medical Sciences Kermanshah Iran

6. Chronic Disease Research Center Endocrinology and Metabolism Population Sciences Institute, Tehran University of Medical Sciences Tehran Iran

7. Department of Biological Sciences and BioDiscovery Institute University of North Texas Denton Texas USA

Abstract

AbstractBackgroundGlioblastoma (GBM) is a malignant brain tumor that frequently occurs alongside other central nervous system (CNS) conditions. The secretome of GBM cells contains a diverse array of proteins released into the extracellular space, influencing the tumor microenvironment. These proteins can serve as potential biomarkers for GBM due to their involvement in key biological processes, exploring the secretome biomarkers in GBM research represents a cutting‐edge strategy with significant potential for advancing diagnostic precision, treatment monitoring, and ultimately improving outcomes for patients with this challenging brain cancer.AimThis study was aimed to investigate the roles of secretome biomarkers and their pathwayes in GBM through bioinformatics analysis.Methods and ResultsUsing data from the Gene Expression Omnibus and the Cancer Genome Atlas datasets—where both healthy and cancerous samples were analyzed—we used a quantitative analytical framework to identify differentially expressed genes (DEGs) and cell signaling pathways that might be related to GBM. Then, we performed gene ontology studies and hub protein identifications to estimate the roles of these DEGs after finding disease‐gene connection networks and signaling pathways. Using the GEPIA Proportional Hazard Model and the Kaplan–Meier estimator, we widened our analysis to identify the important genes that may play a role in both progression and the survival of patients with GBM. In total, 890 DEGs, including 475 and 415 upregulated and downregulated were identified, respectively. Our results revealed that SQLE, DHCR7, delta‐1 phospholipase C (PLCD1), and MINPP1 genes are highly expressed, and the Enolase 2 (ENO2) and hexokinase‐1 (HK1) genes are low expressions.ConclusionHence, our findings suggest novel mechanisms that affect the occurrence of GBM development, growth, and/or establishment and may also serve as secretory biomarkers for GBM prognosis and possible targets for therapy. So, continued research in this field may uncover new avenues for therapeutic interventions and contribute to the ongoing efforts to combat GBM effectively.

Publisher

Wiley

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