Identification of Key Genes and Pathways in Myeloma side population cells by Bioinformatics Analysis
Abstract
Background: Multiple myeloma (MM) is the second most common hematological malignancy, which is still
incurable and relapses inevitably, highlighting further understanding of the possible mechanisms. Side
population (SP) cells are a group of enriched progenitor cells showing stem-like phenotypes with a distinct
low-staining pattern with Hoechst 33342. Compared to main population (MP) cells, the underlying molecular
characteristics of SP cells remain largely unclear. This bioinformatics analysis aimed to identify key genes and
pathways in myeloma SP cells to provide novel biomarkers, predict MM prognosis and advance potential
therapeutic targets.
Methods: The gene expression profile GSE109651 was obtained from Gene Expression Omnibus database,
and then differentially expressed genes (DEGs) with P-value <0.05 and |log2 fold-change (FC)| > 2 were
selected by the comparison of myeloma light-chain (LC) restricted SP (LC/SP) cells and MP CD138+ cells.
Subsequently, gene ontology (GO) and Kyoto encyclopedia of genes and genomes (KEGG) pathway
enrichment analysis, protein-protein interaction (PPI) network analysis were performed to identify the
functional enrichment analysis of the DEGs and screen hub genes. Cox proportional hazards regression was
used to select the potential prognostic DEGs in training dataset (GSE2658). The prognostic value of the
potential prognostic genes was evaluated by Kaplan-Meier curve and validated in another external dataset
(MMRF-CoMMpass cohort from TCGA).
Results: Altogether, 403 up-regulated and 393 down-regulated DEGs were identified. GO analysis showed
that the up-regulated DEGs were significantly enriched in innate immune response, inflammatory response,
plasma membrane and integral component of membrane, while the down-regulated DEGs were mainly
involved in protoporphyrinogen IX and heme biosynthetic process, hemoglobin complex and erythrocyte
differentiation. KEGG pathway analysis suggested that the DEGs were significantly enriched in osteoclast
differentiation, porphyrin and chlorophyll metabolism and cytokine-cytokine receptor interaction. The top 10
hub genes, identified by the plug-in cytoHubba of the Cytoscape software using maximal clique centrality (MCC)
algorithm, were ITGAM, MMP9, ITGB2, FPR2, C3AR1, CXCL1, CYBB, LILRB2, HP and FCER1G. Modules and
corresponding GO enrichment analysis indicated that myeloma LC/SP cells were significantly associated with
immune system, immune response and cell cycle. The predictive value of the prognostic model including TFF3,
EPDR1, MACROD1, ARHGEF12, AMMECR1, NFATC2, HES6, PLEK2 and SNCA was identified, and validated
in another external dataset (MMRF-CoMMpass cohort from TCGA).
Conclusions: In conclusion, this study provides reliable molecular biomarkers for screening, prognosis, as
well as novel therapeutic targets for myeloma LC/SP cells.