Computational identification of specific genes for glioblastoma stem-like cells identity.
Giulia FisconFederica ConteValerio LicursiSergio NasiPaola PaciPublished in: Scientific reports (2018)
Glioblastoma, the most malignant brain cancer, contains self-renewing, stem-like cells that sustain tumor growth and therapeutic resistance. Identifying genes promoting stem-like cell differentiation might unveil targets for novel treatments. To detect them, here we apply SWIM - a software able to unveil genes (named switch genes) involved in drastic changes of cell phenotype - to public datasets of gene expression profiles from human glioblastoma cells. By analyzing matched pairs of stem-like and differentiated glioblastoma cells, SWIM identified 336 switch genes, potentially involved in the transition from stem-like to differentiated state. A subset of them was significantly related to focal adhesion and extracellular matrix and strongly down-regulated in stem-like cells, suggesting that they may promote differentiation and restrain tumor growth. Their expression in differentiated cells strongly correlated with the down-regulation of transcription factors like OLIG2, POU3F2, SALL2, SOX2, capable of reprogramming differentiated glioblastoma cells into stem-like cells. These findings were corroborated by the analysis of expression profiles from glioblastoma stem-like cell lines, the corresponding primary tumors, and conventional glioma cell lines. Switch genes represent a distinguishing feature of stem-like cells and we are persuaded that they may reveal novel potential therapeutic targets worthy of further investigation.
Keyphrases
- induced apoptosis
- genome wide
- cell cycle arrest
- genome wide identification
- bioinformatics analysis
- transcription factor
- extracellular matrix
- stem cells
- single cell
- cell death
- oxidative stress
- gene expression
- squamous cell carcinoma
- brain injury
- young adults
- deep learning
- blood brain barrier
- mesenchymal stem cells
- genome wide analysis
- rna seq
- climate change
- long non coding rna
- candida albicans
- electronic health record
- drug induced
- biofilm formation
- cell adhesion