Abstract

Glioblastoma (GBM) is the most common form of brain tumor and has a uniformly poor prognosis. Development of prognostic biomarkers in easily accessible serum samples have the potential to improve the outcomes of patients with GBM through personalized therapy planning. In this study pre-treatment serum samples from 30 patients newly diagnosed with GBM were evaluated using a 40-protein multiplex ELISA platform. Analysis of potentially relevant gene targets using The Cancer Genome Atlas database was done using the Glioblastoma Bio Discovery Portal (GBM-BioDP). A ten-biomarker subgroup of clinically relevant molecules was selected using a functional grouping analysis of the 40 plex genes with two genes selected from each group on the basis of degree of variance, lack of co-linearity with other biomarkers and clinical interest. A Multivariate Cox proportional hazard approach was used to analyze the relationship between overall survival (OS), gene expression, and resection status as covariates. Thirty of 40 of the MSD molecules mapped to known genes within TCGA and separated the patient cohort into two main clusters centered predominantly around a grouping of classical and proneural versus the mesenchymal subtype as classified by Verhaak. Using the values for the 30 proteins in a prognostic index (PI) demonstrated that patients in the entire cohort with a PI below the median lived longer than those patients with a PI above the median (HR 1.8, p=0.001) even when stratified by both age and MGMT status. This finding was also consistent within each Verhaak subclass and highly significant (range p=0.0001-0.011). Additionally, a subset of ten proteins including, CRP, SAA, VCAM1, VEGF, MDC, TNFA, IL7, IL8, IL10, IL16 were found to have prognostic value within the TCGA database and a positive correlation with overall survival in GBM patients who had received gross tumor resection followed by conventional radiation therapy and temozolomide treatment concurrent with the addition of valproic acid. These findings demonstrate that proteomic approaches to the development of prognostic assays for treatment of GBM may hold potential clinical value.

Highlights

  • Glioblastoma (GBM) is the most common form of primary brain tumor found in adults in the United States

  • A subset of ten proteins including, C-reactive protein (CRP), serum amyloid A (SAA), Vascular Cell Adhesion Molecule 1 (VCAM1), vascular endothelial growth factor (VEGF), MDC, tumor necrosis factor alpha (TNFA), interleukin 7 (IL7), interleukin 8 (IL8), interleukin 10 (IL10), IL16 were found to have prognostic value within the The Cancer Genome Atlas (TCGA) database and a positive correlation with overall survival in GBM patients who had received gross tumor resection followed by conventional radiation therapy and temozolomide treatment concurrent with the addition of valproic acid

  • To expand on this we used the Mesoscale Diagnostics 40-plex ELISA including a panel of chemokine, cytokine, angiogenic, vascular injury and pro inflammatory markers to determine if a cytokine signature could differentiate between short- and long-term

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Summary

A Serum Proteomic Signature Predicting Survival in Patients with Glioblastoma

Mary Sproull, Peter Mathen, Charlotte Anne Miller, Megan Mackey, Teresa Cooley, Deedee Smart, Uma Shankavaram and Kevin Camphausen* Citation: Sproull M, Mathen P, Miller CA, Mackey M, Cooley T, et al (2019) A Serum Proteomic Signature Predicting Survival in Patients with Glioblastoma. J Biochem Analyt Stud 4(1): dx.doi.org/10.16966/2576-5833.117

Results
Introduction
Methods and Materials
Statistical methodology
Discussion and Conclusion
Full Text
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