학술논문

Large-scale assessment of the gliomasphere model system
Document Type
article
Source
Neuro-Oncology. 18(10)
Subject
Biomedical and Clinical Sciences
Oncology and Carcinogenesis
Cancer
Rare Diseases
Brain Disorders
Brain Cancer
Genetics
Biotechnology
Blotting
Western
Cell Culture Techniques
Cluster Analysis
Gene Expression Profiling
Gene Regulatory Networks
Glioblastoma
Humans
Oligonucleotide Array Sequence Analysis
Real-Time Polymerase Chain Reaction
Transcriptome
Tumor Cells
Cultured
brain tumor stem cell
cancer stem cell
glioma
neurosphere
The Cancer Genome Atlas
Neurosciences
Oncology & Carcinogenesis
Oncology and carcinogenesis
Language
Abstract
BackgroundGliomasphere cultures are widely utilized for the study of glioblastoma (GBM). However, this model system is not well characterized, and the utility of current classification methods is not clear.MethodsWe used 71 gliomasphere cultures from 68 individuals. Using gene expression-based classification, we performed unsupervised clustering and associated gene expression with gliomasphere phenotypes and patient survival.ResultsSome aspects of the gene expression-based classification method were robust because the gliomasphere cultures retained their classification over many passages, and IDH1 mutant gliomaspheres were all proneural. While gene expression of a subset of gliomasphere cultures was more like the parent tumor than any other tumor, gliomaspheres did not always harbor the same classification as their parent tumor. Classification was not associated with whether a sphere culture was derived from primary or recurrent GBM or associated with the presence of EGFR amplification or rearrangement. Unsupervised clustering of gliomasphere gene expression distinguished 2 general categories (mesenchymal and nonmesenchymal), while multidimensional scaling distinguished 3 main groups and a fourth minor group. Unbiased approaches revealed that PI3Kinase, protein kinase A, mTOR, ERK, Integrin, and beta-catenin pathways were associated with in vitro measures of proliferation and sphere formation. Associating gene expression with gliomasphere phenotypes and patient outcome, we identified genes not previously associated with GBM: PTGR1, which suppresses proliferation, and EFEMP2 and LGALS8, which promote cell proliferation.ConclusionsThis comprehensive assessment reveals advantages and limitations of using gliomaspheres to model GBM biology, and provides a novel strategy for selecting genes for future study.