Gene Expression Music Algorithm-Based Characterization of the Ewing Sarcoma Stem Cell Signature.
Martin Sebastian StaegePublished in: Stem cells international (2016)
Gene Expression Music Algorithm (GEMusicA) is a method for the transformation of DNA microarray data into melodies that can be used for the characterization of differentially expressed genes. Using this method we compared gene expression profiles from endothelial cells (EC), hematopoietic stem cells, neuronal stem cells, embryonic stem cells (ESC), and mesenchymal stem cells (MSC) and defined a set of genes that can discriminate between the different stem cell types. We analyzed the behavior of public microarray data sets from Ewing sarcoma ("Ewing family tumors," EFT) cell lines and biopsies in GEMusicA after prefiltering DNA microarray data for the probe sets from the stem cell signature. Our results demonstrate that individual Ewing sarcoma cell lines have a high similarity to ESC or EC. Ewing sarcoma cell lines with inhibited Ewing sarcoma breakpoint region 1-Friend leukemia virus integration 1 (EWSR1-FLI1) oncogene retained the similarity to ESC and EC. However, correlation coefficients between GEMusicA-processed expression data between EFT and ESC decreased whereas correlation coefficients between EFT and EC as well as between EFT and MSC increased after knockdown of EWSR1-FLI1. Our data support the concept of EFT being derived from cells with features of embryonic and endothelial cells.
Keyphrases
- stem cells
- gene expression
- electronic health record
- endothelial cells
- big data
- mesenchymal stem cells
- genome wide
- cell therapy
- dna methylation
- bone marrow
- circulating tumor
- embryonic stem cells
- bioinformatics analysis
- induced apoptosis
- mental health
- cell free
- deep learning
- signaling pathway
- emergency department
- living cells
- binding protein
- ultrasound guided
- fluorescent probe
- cerebral ischemia
- genome wide analysis
- adverse drug