| Literature DB >> 35477477 |
Yuqing Shen1,2, Hui Lin1,2, Kelie Chen3, Wanzhong Ge4,5,6, Dajing Xia3,5,6, Yihua Wu3,5,6, Weiguo Lu7,8,9,10.
Abstract
BACKGROUND: Taxol resistance in serous ovarian cancer is responsible for its poor prognosis, yet the underlying mechanism is still poorly understood. Thus, we probed the mechanism of Taxol resistance in serous ovarian cancer with multiple bioinformatic methods to provide novel insights into potential therapies.Entities:
Keywords: Bioinformatics; Immune infiltration; RIPK2; Serous ovarian cancer; Taxol resistance
Mesh:
Substances:
Year: 2022 PMID: 35477477 PMCID: PMC9044796 DOI: 10.1186/s13048-022-00986-2
Source DB: PubMed Journal: J Ovarian Res ISSN: 1757-2215 Impact factor: 5.506
mRNA sequencing datasets containing overall survival and progress free interval of serous ovarian patients treated with Taxol
| Accession number of dataset | Platform | Pathological type | Samples treated with Taxol |
|---|---|---|---|
| GSE30161 | GPL570 | serous cancer (85%) | 58 |
| GSE32063 | GPL6480 | advanced-stage high-grade serous ovarian cancer | 40 |
| GSE63885 | GPL570 | serous cancer | 36 |
mRNA sequencing datasets containing Taxol-sensitive/resistant cell lines
| Accession number of dataset | Platform | Cell line | Response to Taxol | |
|---|---|---|---|---|
| Sensitive | Resistant | |||
| GSE58878 | GPL16951 | SKOV3 | 5 | 10 |
| GSE26465 | GPL6104 | OV90 | 2 | 4 |
| GSE73935 | GPL13667 | A2780 | 3 | 6 |
| W1 | 3 | 3 | ||
| GSE54772 | GPL570 | SKOV3 | 2 | 2 |
Fig. 1Venn diagram and heatmaps for differentially expressed genes (DEGs) in mRNA sequencing datasets. A heatmaps for DEGs in dataset GSE58878. B heatmaps for DEGs in dataset GSE26465. C heatmaps for DEGs in dataset GSE73935. D heatmaps for DEGs in dataset GSE54772. E Venn diagram showing the intersection of the upregulated DEGs from datasets GSE58878, GSE26465, GSE73935 and GSE54772. F Venn diagram showing the intersection of the downregulated DEGs from datasets GSE58878, GSE26465, GSE73935 and GSE54772
Fig. 2Relationship of RIPK2 expression with survival outcome. A Overall survival (OS) and progression-free interval (PFI) in RIPK2 high and low expression groups in the TCGA-OV dataset. B Overall survival (OS) and progression-free interval (PFI) in the RIPK2 high and low expression groups in the GSE30161 dataset. C Overall survival (OS) and progression-free interval (PFI) in the RIPK2 high and low expression groups in the GSE32063 dataset. D Overall survival (OS) and progression-free interval (PFI) in the RIPK2 high and low expression group in the GSE63885 dataset. E Overall survival (OS) of groups defined by RIPK2 expression and Taxol usage in the TCGA-OV cohort. The numbers below the figures denote the number of patients at risk in each group
Fig. 3Gene Ontology (GO) and Kyoto Encyclopedia of Genes and Genomes(KEGG) enrichment analyses and protein-protein network(PPI) analysis of coexpressed genes of RIPK2 in serous ovarian cancer patients treated with Taxol. A Molecular function. B Biological process. C cellular component. D Enriched KEGG pathways of genes coexpressed with RIPK2. The horizontal axis represents the number of DEGs under the GO/KEGG term and the sizes of the dots represents the number of genes located in the functional area. E PPI network generated by the STRING database and visualized by Cytoscape. Nodes represent coexpressed genes and edges represent PPIs
Fig. 4RIPK2 genomic alterations in ovarian cancer (cBioPortal). A OncoPrint of RIPK2 alterations in TCGA-OV cohort. Different types of genetic alterations are highlighted in different colors. B the relationship of copy number alterations and mRNA expression of RIPK2. C difference of genetic mutations in RIPK2 altered and unaltered group. Tumor protein p53 (TP53), BReast CAncer gene 1 (BRCA1), BReast CAncer gene 2 (BRCA2) and 10 other genes with the most significant p values were shown. D copy-number change. 10 genes with the most significant p values were shown. *p < 0.01
Fig. 5Correlation between RIPK2 expression and immune infiltration A Correlation between RIPK2 expression and infiltrating immune cells in TCGA-OV dataset. B Correlation between RIPK2 expression and infiltrating immune cells in GSE30161 dataset. C Correlation between RIPK2 expression and infiltrating immune cells in GSE32063 dataset. D Correlation between RIPK2 expression and infiltrating immune cells in GSE63885 dataset. p < 0.05 was considered statistically significant. MPP, Multipotent rogenitors; CD8+ Tem, CD8+ effector memory T-cells; CMP, Common myeloid progenitors; GMP, Granulocyte-macrophage progenitors; MEP, Megakaryocyte–erythroid progenitors; Tregs, Regulatory T-cells; HSC, Hematopoietic stem cells; CD4+ Tcm, CD4+ central memory T-cells; mv Endothelial cells, Microvascular endothelial cells; CD4+ Tem, CD4+ effector memory T-cells; CD8+ Tcm, CD8+ central memory T-cells; ly Endothelial cells, Lymphatic endothelial cells; MSC, Mesenchymal stem cells; aDC, Activated dendritic cells; cDC, Xonventional dendritic cells; pDC, Plasmacytoid dendritic cells; iDC, Immature dendritic cells; Th2 cells, Type 2 T-helper cells; CLP, Common lymphoid progenitors; Th1 cells, Type 1 T-helper cells; NKT, Natural killer T-cells; Tgd cells, Gamma delta T-cells