» Articles » PMID: 18094416

Gene Expression-based Molecular Diagnostic System for Malignant Gliomas is Superior to Histological Diagnosis

Overview
Journal Clin Cancer Res
Specialty Oncology
Date 2007 Dec 21
PMID 18094416
Citations 39
Authors
Affiliations
Soon will be listed here.
Abstract

Purpose: Current morphology-based glioma classification methods do not adequately reflect the complex biology of gliomas, thus limiting their prognostic ability. In this study, we focused on anaplastic oligodendroglioma and glioblastoma, which typically follow distinct clinical courses. Our goal was to construct a clinically useful molecular diagnostic system based on gene expression profiling.

Experimental Design: The expression of 3,456 genes in 32 patients, 12 and 20 of whom had prognostically distinct anaplastic oligodendroglioma and glioblastoma, respectively, was measured by PCR array. Next to unsupervised methods, we did supervised analysis using a weighted voting algorithm to construct a diagnostic system discriminating anaplastic oligodendroglioma from glioblastoma. The diagnostic accuracy of this system was evaluated by leave-one-out cross-validation. The clinical utility was tested on a microarray-based data set of 50 malignant gliomas from a previous study.

Results: Unsupervised analysis showed divergent global gene expression patterns between the two tumor classes. A supervised binary classification model showed 100% (95% confidence interval, 89.4-100%) diagnostic accuracy by leave-one-out cross-validation using 168 diagnostic genes. Applied to a gene expression data set from a previous study, our model correlated better with outcome than histologic diagnosis, and also displayed 96.6% (28 of 29) consistency with the molecular classification scheme used for these histologically controversial gliomas in the original article. Furthermore, we observed that histologically diagnosed glioblastoma samples that shared anaplastic oligodendroglioma molecular characteristics tended to be associated with longer survival.

Conclusions: Our molecular diagnostic system showed reproducible clinical utility and prognostic ability superior to traditional histopathologic diagnosis for malignant glioma.

Citing Articles

FN1 and VEGFA Are Potential Therapeutic Targets in Glioblastoma as Determined by Bioinformatics Analysis.

Im M, Roh J, Jang W, Kim W Cancer Genomics Proteomics. 2024; 22(1):70-80.

PMID: 39730176 PMC: 11696323. DOI: 10.21873/cgp.20488.


Congress of neurological surgeons systematic review and evidence-based guidelines update on the role of neuropathology in the management of progressive glioblastoma in adults.

Goodman A, Velazquez Vega J, Glenn C, Olson J J Neurooncol. 2022; 158(2):179-224.

PMID: 35648306 DOI: 10.1007/s11060-022-04005-8.


A Novel Multi-Omics Analysis Model for Diagnosis and Survival Prediction of Lower-Grade Glioma Patients.

Wu W, Wang Y, Xiang J, Li X, Wahafu A, Yu X Front Oncol. 2022; 12:729002.

PMID: 35646656 PMC: 9133344. DOI: 10.3389/fonc.2022.729002.


Crosstalk Between Tumor-Associated Microglia/Macrophages and CD8-Positive T Cells Plays a Key Role in Glioblastoma.

Tu S, Lin X, Qiu J, Zhou J, Wang H, Hu S Front Immunol. 2021; 12:650105.

PMID: 34394072 PMC: 8358794. DOI: 10.3389/fimmu.2021.650105.


Identification of the Prognostic Signatures of Glioma With Different Status.

Zhang P, Meng X, Liu L, Li S, Li Y, Ali S Front Oncol. 2021; 11:633357.

PMID: 34336645 PMC: 8317988. DOI: 10.3389/fonc.2021.633357.