| Literature DB >> 29416627 |
Gabriel Santpere1, Ana Alcaráz-Sanabria2, Verónica Corrales-Sánchez2, Atanasio Pandiella3, Balázs Győrffy4,5, Alberto Ocaña2,6.
Abstract
In breast cancer, it is unclear the functional modifications at a transcriptomic level that are associated with the evolution from epithelial cells and ductal carcinoma in situ (DCIS) to basal-like tumors. By applying weighted gene co-expression network analysis (WGCNA), we identified 17 gene co-expression modules in normal, DCIS and basal-like tumor samples. We then correlated the expression pattern of these gene modules with disease progression from normal to basal-like tumours and found eight modules exhibiting a high and statistically significant correlation. M4 included genes mainly related to cell cycle/division and DNA replication like CCNA2 or CDK1. The M7 module included genes linked with the immune response showing top hub genes such as CD86 or PTPRC. M10 was found specifically correlated to DCIS, but not to basal-like tumor samples, and showed enrichment in ubiquitination or ubiquitin-like processes. We observed that genes in some of these modules were associated with clinical outcome and/or represented druggable opportunities, including AURKA, AURKB, PLK1, MCM2, CDK1, YWHAE, HSP90AB1, LCK, or those targeting ubiquitination. In conclusion, we describe relevant gene modules related to biological functions that can influence survival and be targeted pharmacologically.Entities:
Keywords: breast cancer; carcinoma in situ; transcriptomic evolution
Year: 2017 PMID: 29416627 PMCID: PMC5787480 DOI: 10.18632/oncotarget.23065
Source DB: PubMed Journal: Oncotarget ISSN: 1949-2553
Figure 1Global analysis of transcriptomes among samples
In the whole panel, colors indicate the different public GEO datasets used and shape indicates clinical diagnostic. (A) Boxplot for all probes normalized relative log expression (RLE) values indicating no major difference between datasets. (B) PCA for top variable genes showing the first 2 principal components for all samples in the combined dataset, showing PC1 majorly representing differences in diagnostic. (C) Clustering analysis of previous PC1 values confirming that clusters mainly reflect diagnostic over differences batches.
Figure 2Weighted gene co-expression network analysis of the entire dataset transcriptome using top variable genes identifies 17 modules
Unassigned genes were labelled in grey. Dendrogram obtained by hierarchical clustering of genes based on their topological overlap is shown at the top. Rows indicate gene correlation values with normal vs DCIS, normal vs basal and DCIS vs basal (blue indicating negative, and red positive, correlations).
Figure 3Boxplot representation of module eigengene values for the different groups
Biological features of selected gene co-expression modules. For DCIS, we only report observations that are replicated in the two DCIS datasets analyzed
| Module | Stage and main direction | #Genes | Top 5 hubs | Biological Function | PPI network | PPI hubs |
|---|---|---|---|---|---|---|
| M1-Green | Normal > DCIS > Basal | 300 | Angiogenesis | 57 | MEOX2, CAV1, TCF4 | |
| M2-Brown | Normal > Basal | 136 | Gland development | 18 | SPDEF, RAB27B | |
| M3-Darkred | Normal > (DCIS = Basal) | 31 | Transport | 0 | ||
| M4-Turquoise | Normal < DCIS < Basal | 434 | Cell cycle | 324 | MCM2, PCNA, AURKA, CDK1 | |
| M5-Yellow | Normal > DCIS > Basal | 122 | Lipid metabolism | 13 | ALDOC | |
| M6-Purple | Normal < (DCIS = Basal) | 73 | Lipid metabolism | 8 | ||
| M7-Black | Normal < Basal | 225 | Immune response | 86 | ISG15, STAT1, HLA-C | |
| M8-Darkturquoise | Normal > (DCIS = Basal) | 26 | Respiratory chain | 4 | ||
| M9-Darkgrey | Normal < Basal | 67 | Protein localization | 29 | ARRB2, YWHAE, HSP90AB1 | |
| M10-Cyan | Normal < DCIS > Basal | 46 | Protein ubiquitination | 0 | ||
| M15-Royalblue | Normal < Basal | 34 | Metabolism and RNA processing | 9 | RPS7 |
Figure 4Protein-protein interaction network based on direct physical interaction among genes in two different modules (M7 in a, and M9 in b)
Darker green in nodes indicates higher degree.
Figure 5Kaplan-Meyer survival curves for modules showing the strongest differences between patients with high and low expression values in the Metabric dataset