Screening of potential biomarkers for chemoresistant ovarian carcinoma with miRNA expression profiling data by bioinformatics approach

  • Authors:
    • Shiyang Wei
    • Yafeng Wang
    • Hong Xu
    • Yan Kuang
  • View Affiliations

  • Published online on: August 14, 2015     https://doi.org/10.3892/ol.2015.3610
  • Pages: 2427-2431
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Abstract

The aim of the present study was to screen out the biomarkers associated with chemoresistance in ovarian carcinomas and to investigate the molecular mechanisms. microRNA (miRNA) expression data was obtained from published microarray data of the GSE43867 dataset from Gene Expression Omnibus (GEO), including the data of 86 chemotherapy‑treated patients with serous epithelial ovarian carcinomas (response group, 36 complete response cases and 12 partial response cases; non‑response group, 10 stable cases and 28 progressive disease cases), and identification of differentially‑expressed miRNAs were conducted with a GEO2R online tool based on R language. TargetScan 6.2 was used to predict the targets of differentially‑expressed miRNAs. Protein‑protein interaction network analysis was conducted by STRING 9.1, while functional enrichment [Gene Ontology (GO) biological process terms] and Kyoto Encyclopedia of Genes and Genomes (KEGG) enrichment analyses were conducted by GeneCodis3 for the target genes. A total of 6 differentially‑expressed miRNAs were screened out, with 317 target genes obtained. It was found that 67 interactions existed among 76 genes/proteins through the PPI network analysis, and that 6 of these were potential key genes (PIK3R5, MAPK3, PTEN, S1PR3, BDKRB2 and NCBP2). The main biological processes involved in chemoresistant ovarian carcinoma were apoptosis, programmed cell death, cell migration, cell death and cell motility. The miRNA target genes were found to be associated with the ErbB signaling pathway, the gonadotropin‑releasing hormone signaling pathway and other pathways in cancer. IK3R5, MAPK3 and PIK3R5 are involved in the majority of GO terms and KEGG pathways associated with chemoresistance in ovarian carcinoma.

Introduction

Ovarian cancer is one of the leading causes of cancer incidence and cancer-associated mortality in women. Surgery combined with chemotherapy is the standard therapeutic strategy, and recurrence and chemoresistance in ovarian cancer patients are the main factors affecting the prognosis (1). Therefore, anti-resistance has become a prominent target for research into ovarian cancer (2,3).

The combination data mining method increases the probability of identifying the biological processes and functional candidate genes that could represent the high-throughput data and have a great effect on the studied disease. A number of studies have revealed that applying in silico bioinformatic approaches in mining data from high-throughput microarray profiles is reliable and effective in predicting disease-causing biomarkers and has high accuracy (4,5). Qu et al (6) used microarray technology to profile microRNA (miRNA/miR) expression between CNE-2R and its parental cell line, CNE-2, and miR-205 was found to contribute to the radioresistance of nasopharyngeal carcinoma by directly targeting PTEN. In order to find feasible approaches for solving the chemoresistance in ovarian carcinoma, more and more studies have been performed in the last decade. Using microarray profiles, multiple potential biomarkers have been reported to be involved in chemoresistant ovarian carcinoma, including miR-106a, miR-591 (7), miR-23b, miR-27a (8), ARID1A (9) and Notch3 (10). However, the biological mechanisms of the biomarkers in chemoresistant ovarian carcinoma remain unclear.

The present study aimed to extract differentially-expressed miRNAs from microarray datasets from the Gene Expression Omnibus (GEO) database to probe their biological function in the development and progression of chemoresistant ovarian carcinoma. Information retrieved via miRNAs expression data, PPI interaction network construction and pathway enrichment analysis was combined to screen out potential biomarkers for chemoresistant ovarian carcinoma. This research will assist in disclosing the biomarkers of chemoresistance in ovarian carcinoma.

Materials and methods

miRNA expression profiles

The miRNA expression profile of the GSE43867 dataset was obtained from the GEO database (http:www.ncbi.nlm.nih.gov/geo/), which is based on the GPL16566 Applied Biosystems TaqMan Array Human miRNA A/B Cards v2.0 platform (Applied Biosystems Life Technologies, Foster City, CA, USA). This dataset included the miRNA profile expression microarrays from formalin-fixed and paraffin-embedded blocks of 86 chemotherapy-treated cases with serous epithelial ovarian carcinomas, which were submitted by Vecchione et al (11).

Screening of differentially-expressed miRNAs

GEO2R (http:www.ncbi.nlm.nih.gov/geo/geo2r/) is an interactive web tool that performs comparisons on original submitter-supplied processed data tables using the GEO query and limma R packages from the Bioconductor project (12). GEO2R was used to analyze the published microarray data of the GSE43867 dataset from the GEO database. In total, 86 chemotherapy-treated patients with serous epithelial ovarian carcinomas were divided into two groups: The response group consisted of 36 complete response cases and 12 partial response cases, while the non-response group consisted of 10 stable cases and 28 progressive disease cases. The results were downloaded in text format, and the miRNAs that met the cut-off criteria of P<0.05 and a |log fold-change| of >1.0 were screened out as differentially-expressed miRNAs.

Prediction of target genes of differentially-expressed miRNAs

Targets of miRNAs are predicted by an online target prediction tool, TargetScan 6.2 (http:www.targetscan.org/) (13,14), which predicts the biological targets of miRNAs by searching for the presence of conserved 8mer and 7mer sites that match the seed region of each miRNA. A prediction score of >0.5 is selected as a criterion for target genes with each miRNA.

Construction of a protein-protein interaction (PPI) network

STRING is a database of known and predicted PPIs based on the sources derived from the genomic context, high-throughput experiments, coexpression and previous knowledge (15). STRING quantitatively integrates interaction data from these sources for a large number of organisms, and transfers information between these organisms where applicable (16). The latest version, STRING9.1 (http:string-db.org/), covers 5,214,234 proteins from 1,133 organisms (17). In the present study, a PPI network of the miRNA target genes was constructed by STRING9.1, and highly-correlated genes/proteins (confidence score, >0.7) were selected as inclusion criteria for PPI network analysis.

Functional enrichment and pathway enrichment analysis

Functional enrichment (GO biological process terms) and Kyoto Encyclopedia of Genes and Genomes (KEGG) pathway enrichment analysis (KEGG and Panther pathways) were performed for the genes in the PPI network using the GeneCodis3 web tool (http:genecodis.dacya.ucm.es/) (18,19). and the statistical test used for the enrichment was based on the hypergeometric distribution to compute P-values, which were corrected by the Benjamini and Hochberg false discovery rate method for multiple hypothesis testing (α=0.05). Only those terms with a value of P<0.05 and a count number of ≥5 genes were selected for analysis.

Results

Differentially-expressed miRNAs

A total of 6 differentially-expressed miRNAs were identified in the chemotherapy response cases compared with the non-response cases (control) in the serous epithelial ovarian carcinomas according to the criteria. The 6 miRNAs were hsa-miR-760, hsa-miR-483-5p, hsa-miR-766, hsa-miR-198, hsa-miR-129-3p and hsa-miR-642. The information for these 6 differentially-expressed miRNAs is presented in Table I.

Table I.

Differentially-expressed miRNAs obtained from the GSE43867 dataset.

Table I.

Differentially-expressed miRNAs obtained from the GSE43867 dataset.

miRNA|logFC|P-value
hsa-miR-6421.019560.00848
hsa-miR-1981.234910.01075
hsa-miR-483-5p1.354780.01347
hsa-miR-129-3p1.117700.02684
hsa-miR-7601.592640.03878
hsa-miR-7661.246570.03971

[i] miR/miRNA, microRNA; FC, fold-change.

Target genes and PPI network construction

A total of 317 target genes met the criteria of the 6 differentially-expressed miRNAs. The target genes were uploaded to the STRING online tool: A total of 67 interactions were found to exist among 76 proteins (genes) through the PPI network analysis, and 6 of them were potential key genes (PIK3R5, PTEN, MAPK3, S1PR3, BDKRB2 and NCBP2). Additionally, 37 proteins/genes were involved in the construction of the MAPK3 and NCBP2 module PPI network, as shown in Fig. 1.

GO term enrichment and KEGG analysis

The GeneCodis 3 online tool was used to characterize the biological functions of the genes that were included in the PPI network of the aforementioned potential key genes. Functional analysis demonstrated that the genes in this module could be enriched into 5 functional GO terms, as shown in Table II. The target genes were identified to be associated with GO categories such as regulation of transcription, apoptotic process and signal transduction, as shown in Table II. Based on KEGG pathway analysis, the target genes were found to be involved in the gonadotropin-releasing hormone signaling pathway, the ErbB signaling pathway and in other cancer pathways, as well as in the regulation of the actin cytoskeleton, as shown in Table III.

Table II.

Significant GO terms obtained from the microRNA targets in the protein-protein interaction network.

Table II.

Significant GO terms obtained from the microRNA targets in the protein-protein interaction network.

GO termGenesP-value
GO:0048011-nerve growth factor receptor signaling pathwayMAPK3, APH1A, KALRN, PTEN, PREX10.000876
GO:0045944-positive regulation of transcription from RNA polymerase II promoterNRIP1, MAPK3, PPARGC1A, MEF2D, STAT6, ETS10.004176
GO:0045893-positive regulation of transcription, DNA-dependentNRIP1, MAPK3, PPARGC1A, ERBB4, ETS10.005182
GO:0006915-apoptotic processAPH1A, KALRN, PREX1, MEF2D, ERBB40.008394
GO:0007165-signal transductionIQGAP1, KALRN, ARHGAP31, ERBB4, HBEGF, STAT60.013630

[i] GO, Gene Ontology.

Table III.

KEGG pathways obtained from the miRNA targets.

Table III.

KEGG pathways obtained from the miRNA targets.

PathwayGenesP-value
Kegg:04912 GnRH signaling pathwayMAPK3, MMP2, HBEGF, PLA2G5, GNRHR 2.78×10−12
Kegg:04012 ErbB signaling pathwayMAPK3, PIK3R5, ERBB4, HBEGF, CBL 3.05×10−12
Kegg:05200 Pathways in cancerMAPK3, PIK3R5, MMP2, PTEN, ETS1, CBL 3.21×10−10
Kegg:04810 Regulation of actin cytoskeletonMAPK3, PIK3R5, BDKRB2, PIP4K2B, IQGAP1 5.97×10−10

[i] GnRH, gonadotropin-releasing hormone.

Discussion

The present study identified 6 differentially-expressed miRNAs from the GEO GSE43867 dataset, which included a miRNA profile expression microarray for chemoresistant serous epithelial ovarian carcinomas, by bioinformatics analysis. In order to confirm the functions of these miRNAs, the target genes were predicted and the PPI network was constructed. Finally, functional annotations and pathway analysis were conducted to determine the biological mechanisms contributing to chemoresistant ovarian carcinoma.

The 6 differentially-expressed miRNAs were hsa-miR-760, hsa-miR-483-5p, hsa-miR-766, hsa-miR-198, hsa-miR-129-3p and hsa-miR-642. Iwaya et al (20) reported that miR-760 was downregulated in the bone marrow and primary tumor of advanced gastric cancer, while Wang et al (21) found that plasma miR-601 and miR-760 were of high value for discriminating advanced adenomas from normal controls. Zheng et al (22) found high expression levels of miR-483-5p in tumor tissues, plasma and cell lines of nasopharyngeal carcinoma patients. The results of a study by Wang et al (23) confirmed that miR-483-5p suppresses the proliferation of glioma cells via directly targeting extracellular signal-regulated kinase 1 (ERK1). The microarray results of a study by Yu et al (24) indicated that miR-483-5p was upregulated in ovarian serous carcinoma at stage III compared with stage I. miR-766 has been shown to be associated with esophageal cancer, cutaneous squamous cell carcinoma and lung adenocarcinoma (2527), while miRNA-198 has been reported to be of high value for predicting the clinical outcomes of cancer (28,29). Several studies have demonstrated the use of miR-129 as a diagnostic and prognostic biomarker for various tumors, such as renal cell carcinoma and gastric cancer (30,31). It has also been reported that increasing miR-642 improves cisplatin sensitivity in advanced bladder cancer and cell lines (32).

In order to ascertain the function of the differentially-expressed miRNAs in the present study, the target genes of these miRNAs were retrieved by TargetScan 6.2, and 317 target genes were obtained. Through the construction of a PPI network of the target genes of 6 differentially expressed miRNAs, 76 genes/proteins were shown to be involved in the PPI network, and 6 of these were screened out as potential key genes for chemoresistant ovarian carcinoma. PIK3R5, PTEN, MAPK3, S1PR3, BDKRB2 and NCBP2 formed a module in the PPI network construction, indicating that the two genes, PIK3R5 and MAPK3, may play important roles in the development of chemoresistance in ovarian carcinoma. Results obtained from GO biological process and pathway enrichment analyses also lead to the identification of MAPK3 and PIK3R5 as key genes, which were involved in the majority of GO terms and KEGG pathways associated with chemoresistance in ovarian carcinoma.

MAPK3, also known as ERK1, is a member of the mitogen-activated protein kinase family. Amsterdam et al (33) reported that intense phosphorylated ERK1 and ERK2 was detected in the peripheral areas of stage II ovarian carcinoma. Jeong et al (34) found that ERK1/2 are important in docetaxel resistance in MCF-7 spheroids. In recent years, MAPK/ERK1 has been reported to be associated with various cancer types, and it is believed that this gene participates in the process of cancer metastasis (3537). PIK3R5 is a protein-coding gene. PIK3R5 has been reported to be associated with ataxia-oculomotor apraxia (38). Shull et al (39) reported that PIK3R5 mutations co-occurred with BRAF mutations, indicating that the gene may be a potential chemotherapeutic target for melanoma patients resistant to BRAF inhibitors. Through functional enrichment analysis, the present study identified the aforementioned pathways associated with the hub genes and their regulators. Therefore, MAPK3 and PIK3R5 may be selected as therapeutic targets for chemoresistant ovarian carcinoma. We speculate that MAPK3 and PIK3R5 may be associated with the occurrence and development of chemoresistant ovarian carcinoma.

In conclusion, a bioinformatic approach was applied to identify the differentially-expressed miRNAs in serous epithelial ovarian carcinomas samples of chemotherapy-treated responsive cases compared to those of non-responsive cases. The results suggested that MAPK3 and PIK3R5 may be associated with chemoresistant ovarian carcinoma. However, as of yet, there are no other studies to prove that MAPK3 and PIK3R5 are associated with chemoresistant ovarian carcinoma. The present study may provide novel insights into the molecular mechanism of chemoresistant ovarian carcinoma, thus, further studies regarding the association of the two genes and chemoresistant ovarian carcinoma are required.

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Spandidos Publications style
Wei S, Wang Y, Xu H and Kuang Y: Screening of potential biomarkers for chemoresistant ovarian carcinoma with miRNA expression profiling data by bioinformatics approach. Oncol Lett 10: 2427-2431, 2015
APA
Wei, S., Wang, Y., Xu, H., & Kuang, Y. (2015). Screening of potential biomarkers for chemoresistant ovarian carcinoma with miRNA expression profiling data by bioinformatics approach. Oncology Letters, 10, 2427-2431. https://doi.org/10.3892/ol.2015.3610
MLA
Wei, S., Wang, Y., Xu, H., Kuang, Y."Screening of potential biomarkers for chemoresistant ovarian carcinoma with miRNA expression profiling data by bioinformatics approach". Oncology Letters 10.4 (2015): 2427-2431.
Chicago
Wei, S., Wang, Y., Xu, H., Kuang, Y."Screening of potential biomarkers for chemoresistant ovarian carcinoma with miRNA expression profiling data by bioinformatics approach". Oncology Letters 10, no. 4 (2015): 2427-2431. https://doi.org/10.3892/ol.2015.3610