MGMT ProFWise: Unlocking a New Application for Combined Feature Selection and the Rank-Based Weighting Method to Link MGMT Methylation Status to Serum Protein Expression in Patients with Glioblastoma.

Abstract

Glioblastoma (GBM) is a fatal brain tumor with limited treatment options. O6-methylguanine-DNA-methyltransferase (MGMT) promoter methylation status is the central molecular biomarker linked to both the response to temozolomide, the standard chemotherapy drug employed for GBM, and to patient survival. However, MGMT status is captured on tumor tissue which, given the difficulty in acquisition, limits the use of this molecular feature for treatment monitoring. MGMT protein expression levels may offer additional insights into the mechanistic understanding of MGMT but, currently, they correlate poorly to promoter methylation. The difficulty of acquiring tumor tissue for MGMT testing drives the need for non-invasive methods to predict MGMT status. Feature selection aims to identify the most informative features to build accurate and interpretable prediction models. This study explores the new application of a combined feature selection (i.e., LASSO and mRMR) and the rank-based weighting method (i.e., MGMT ProFWise) to non-invasively link MGMT promoter methylation status and serum protein expression in patients with GBM. Our method provides promising results, reducing dimensionality (by more than 95%) when employed on two large-scale proteomic datasets (7k SomaScan® panel and CPTAC) for all our analyses. The computational results indicate that the proposed approach provides 14 shared serum biomarkers that may be helpful for diagnostic, prognostic, and/or predictive operations for GBM-related processes, given further validation.

Department

Description

Provenance

Subjects

Humans, Glioblastoma, Brain Neoplasms, DNA Repair Enzymes, DNA Modification Methylases, O(6)-Methylguanine-DNA Methyltransferase, Blood Proteins, Tumor Suppressor Proteins, Proteomics, Temozolomide

Citation

Published Version (Please cite this version)

10.3390/ijms25074082

Publication Info

Tasci, Erdal, Yajas Shah, Sarisha Jagasia, Ying Zhuge, Jason Shephard, Margaret O Johnson, Olivier Elemento, Thomas Joyce, et al. (2024). MGMT ProFWise: Unlocking a New Application for Combined Feature Selection and the Rank-Based Weighting Method to Link MGMT Methylation Status to Serum Protein Expression in Patients with Glioblastoma. International journal of molecular sciences, 25(7). p. 4082. 10.3390/ijms25074082 Retrieved from https://hdl.handle.net/10161/34371.

This is constructed from limited available data and may be imprecise. To cite this article, please review & use the official citation provided by the journal.

Scholars@Duke

Johnson

Margaret Johnson

Associate Professor of Neurosurgery

I am a neuro-oncologist, neurologist, and palliative care physician at the Preston Robert Tisch Brain Tumor Center. I also provide neuro-oncology expertise for the National Tele-Oncology Program and National Precision Oncology Program at the Veteran's Health Administration. My clinical and research interests encompass supportive care and palliative care with a special interest in older adults with brain tumors. The incidence of malignant brain tumors like glioblastoma and non-malignant tumors like meningioma affect aging populations and it is crucial to be able to provide better care for these patients. 


Unless otherwise indicated, scholarly articles published by Duke faculty members are made available here with a CC-BY-NC (Creative Commons Attribution Non-Commercial) license, as enabled by the Duke Open Access Policy. If you wish to use the materials in ways not already permitted under CC-BY-NC, please consult the copyright owner. Other materials are made available here through the author’s grant of a non-exclusive license to make their work openly accessible.