Co‑expression network analysis of gene expression profiles of HER2+ breast cancer‑associated brain metastasis
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- Published online on: October 10, 2018 https://doi.org/10.3892/ol.2018.9562
- Pages: 7008-7019
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Copyright: © Yuan et al. This is an open access article distributed under the terms of Creative Commons Attribution License.
Abstract
Introduction
Brain metastasis occurs in ~30% of patients with breast cancer (1). Owing to the lack of effective therapeutic treatments, breast cancer brain metastasis can cause significant morbidity, resulting in a poor prognosis. A number of characteristics are associated with the development of primary breast cancer into brain metastases, including being diagnosed at a young age, hormone receptor-negative status, tumors >20 mm in diameter, lymph node invasion, grade 3 and human epidermal growth factor receptor 2 (HER2)+ status (2–4). In another study it has been reported that patients with HER2+ breast cancer have a 2–4-fold increased frequency of brain metastasis (25–37%) compared with patients with HER2− breast cancer (2). The reason HER2 is associated with breast cancer brain metastasis has yet to be determined; however, previous studies identified that the improved extracranial control of disease, inability of treatments to access or be active in the central nervous system (CNS) and the natural predilection for tumor cells to deposit in the CNS may contribute (5,6). Despite the availability of HER2-targeted therapies, e.g., trastuzumab, it is expected that brain metastasis from breast cancer will continue to be a significant clinical problem in the long term.
To address this urgent situation, more biomarkers for the early detection of breast cancer-associated brain metastasis are required. Owing to the development of microarray assays, there has been a significant increase in the data available, broadening and deepening the research concerning biomarkers for breast cancer-associated brain metastasis. Weighted gene co-expression network analysis (WGCNA) is a powerful instrument to identify hub genes in the data from microarray assays. The concept of WGCNA is straightforward: Nodes represent genes and nodes are connected when the corresponding genes are significantly co-expressed across appropriately selected tissue samples (7,8).
In the present study, WGCNA was performed to detect the significant hub genes in a set of samples collected from patients with HER2+ breast cancer, including patients with brain metastasis. Additionally, the potential candidate genes were verified in a set of patient samples using the reverse transcription-quantitative polymerase chain reaction (RT-qPCR).
Materials and methods
Ethics statement
Written informed consent for research was obtained from all patients included in the present study. All experiments were conducted according to the relevant guidelines and regulations of the Institutional Ethical Review Committee of Hubei Cancer Hospital (Wuhan, China). The present study was approved by the Institutional Ethical Review Committee of Hubei Cancer Hospital.
Data collection
Normalized gene expression data were downloaded from the Gene Expression Omnibus database (www.ncbi.nlm.nih.gov/geo). The dataset GSE43837 was used as a training set to construct expression networks and identify hub genes in the present study. This dataset was based on the microarray platform of Affymetrix Human X3P Array (U133_X3P), which consisted of the expression data of 38 human samples, containing 19 HER2+ human breast cancer-associated brain metastases and 19 HER2+ primary human breast tumors. The gene expression data were based on the RNA microdissection and hybridization technology, as reported previously (9).
Study population
A total of 28 patients between 28 and 65 years old with HER2+ breast cancer treated at the Hubei Cancer Hospital from 1 January 2012 to 31 December 2016 were included in the present study and utilized as the testing set for the confirmation of hub genes determined from the training set. The inclusion criteria for the patients participating in the present study were the following: Primary diagnosis for HER2+ breast cancer with tumours harvested during operation and all patients were diagnosed with brain metastasis at different time points following operation, with the brain being the first site of relapse. Harvested tumors were subsequently stored in liquid nitrogen (25 kpa) at −195.79°C for long-term storage. In addition, the brain metastasis samples were harvested following diagnosis and kept in liquid nitrogen. The clinical characteristics of the patients included in the present study are indicated in Table I.
Table I.General characteristics of the patients included in the present study for testing the hub genes. |
Data preprocessing
For each patient included in the training set, when brain metastasis occurred, a value of 1 was assigned; otherwise, a value of 0 was assigned for patients without brain metastasis.
Co-expression network construction
The WGCNA R package software (R version 2.15.3 for Windows; www.r-project.org) was used to perform the analysis. Primarily, the genomic expression information of each patient was associated with brain metastasis. Student's t-test was used to determine the association between gene expression and brain metastasis. The significantly altered genes were selected as primary hub genes. In the following steps, according to the official tutorial for the WGCNA R 2.15.3 package software (www.r-project.org) (10), the automatic block-wise network construction and module detection methods were used to construct co-expression networks. Analysis of network topology was also performed to select the feasible soft-thresholding power. Following detection of the gene modules, the corresponding association with brain metastasis was determined. The relative association of the individual gene with brain metastasis was termed ‘gene significance’. This was defined by the absolute value of the association between the gene and brain metastasis. Module membership was also defined as the association between the module eigengene and the gene expression profile to quantify the significance of the association between the gene profile and the module. The module with the strongest association was further analyzed to locate the genes associated with brain metastasis.
Visualization of the network
Following confirmation of the significantly associated genes of the training set, the network of genes was visualized by integrating the information from the process of network construction into the software of Cytoscape (version 3.4; www.cytoscape.org). Cytoscape is open source software for the visualization of molecular interaction networks and biological pathways.
Gene Ontology (GO) and Kyoto Encyclopedia of Genes and Genomes (KEGG) analyses
Subsequently, the relatively significant genes of the networks were added into GO and KEGG (https://david.ncifcrf.gov/) analyses to determine the significant biological processes of the cancer cells. The online analysis tool Database for Annotation, Visualization and Integrated Discovery (david.ncifcrf.gov/tools.jsp) was used to transform the network data in order to conduct GO and KEGG analyses.
RNA extraction and reverse transcription-quantitative polymerase chain reaction (RT-qPCR)
Total RNA of the patients in the testing set was extracted from the frozen tissues as previously described (9). For RT-qPCR, a PrimeScript RT Master Mix (Takara Biotechnology Co., Ltd., Dalian, China) was used to synthesize cDNA. SYBR® Real-time PCR Master mix (Toyobo Co., Ltd., Shanghai, China) was used to perform qPCR analyses. The results were normalized with the expression of GAPDH as a reference and quantified using the 2−ΔΔCq method (11). The GAPDH sequence was as follows: Forward, 5′-ACCATCTTCCAGGAGCGAGA-3′ and reverse, 5′-GCAAATGAGCCCCAGCCTTC-3′. The primers are detailed in Table II. RT-qPCR and data collection were performed using a Bio-Rad CFX Manager 3.0 instrument (Bio-Rad Laboratories, Inc., Hercules, CA, USA). All RT-qPCRs were performed in triplicate. The following thermocycling conditions were used for qPCR: 94°C for 30 sec; 40 cycles of 60°C for 30 sec and 72°C for 30 sec. The data were processed with GraphPad Prism (version 7; GraphPad Software, Inc., La Jolla, CA, USA). P<0.05 was considered to indicate a statistically significant difference.
Results
Construction of the network
As depicted in Fig. 1, the heatmap of the training dataset indicated that the expression profiles in primary breast cancer and brain metastasis were significantly different. There were 4,168 genes included in the training dataset. Owing to the large amount of data, only the expression of the 50 most significant (P<0.05) genes was depicted in the heatmap.
Only the clinical characteristics of brain metastasis were associated with the sample dendrogram, as depicted in Fig. 2. The samples were clustered according to the expression microarray, and there was no notable outlier; therefore, all the patients were included in this analysis.
As depicted in Fig. 3, the power 18 was selected as the lowest power for the scale-free topology for which the fitting index reached 0.90. Different genes were subsequently grouped into modules according to the association of expression (Fig. 4). Each color represented a different module, comprised of gene sets of multiple different genes.
In the clustering tree (dendrogram), each leaf, represented by a short vertical line, corresponded to a gene. Branches of the dendrogram group together to form densely interconnected, highly co-expressed genes. Module identification amounted to the identification of individual branches. Owing to the marked association among the genes inside each module, the modules with similar expression profiles were merged. To quantify the co-expression similarity of entire modules, their eigengenes were calculated and were clustered according to their association. The modules were associated with brain metastasis according to the overall gene significance inside each module, and the most significant associations were determined. The further the value was from 0, the more significant the association was between brain metastasis and the module. Red was used to depict the positive associations, and green depicts negative associations. It was indicated that the yellow module had the greatest positive association with breast cancer-associated brain metastasis, whereas the grey module had the lowest negative association.
Figs. 5 and 6 depict the heatmaps of the expression profiles of the yellow module and grey module, respectively. There were 449 genes included in the yellow module and 1,550 genes included in the grey module. Owing to the large amount of data, only the expression of top 50 genes were depicted in the heatmap. According to these heatmaps, the expression profiles in primary breast cancer and brain metastasis were significantly different in each module (P<0.05).
Visualization of the networks
In Figs. 7 and 8, the genes of the yellow module and grey module that had the greatest association with each other were correspondingly integrated into the network. According to the networks, there were two hub genes situated in the center: 211378_39_x_at, representing cyclophilin A (CypA) (also known as peptidylprolyl isomerase A); Hs.82202.2.A1_3p_a_at, representing ribosomal protein L17 (RPL17); g3445483_3p_a_at, representing tumor protein p63 (TP63); and Hs.57787.1.S1_3p_at, representing von Willebrand factor A domain-containing 8 (VWA8).
The expression data of CypA, RPL17, TP63 and VWA8 were extracted from the respective gene modules. As depicted in Fig. 9, in the training set, CypA and RPL17 were overexpressed in breast cancer-associated brain metastasis, whereas the expression of TP63 and VWA8 was significantly downregulated in breast cancer-associated brain metastasis.
GO and KEGG pathway analysis
Fig. 10 depicts the results of GO and KEGG pathway analysis of the yellow and grey modules, respectively. According to the results, a number of pathways changed significantly when breast cancer metastasized to the brain. For the yellow module, the process of antigen processing and presentation of endogenous peptide antigen was the most significant biological process (BP), the component of the proton-transporting ATP synthase complex was the most significant cell component (CC), the function of transporter associated with antigen processing binding was the most significant molecular function (MF) and the pathway of base excision repair was the most significant KEGG pathway. For the grey module, the process of regulation of activin receptor signaling pathway was the most significant BP, the component of actin cap was the most significant CC, the function of Toll-like receptor 4 binding was the most significant MF and the pathway of renal cell carcinoma was the most significant KEGG pathway. However, none of the aforementioned genes were included in the significantly influenced pathways.
Hub gene confirmation in patient samples
As depicted in Fig. 11, in the patient samples from the testing set, which included all 28 patients, the expression of CypA and RPL17 in brain metastases was significantly increased, compared with in primary breast tumors, and the expression of TP63 and VWA8 in brain metastases was significantly decreased, compared with in primary breast tumors.
Fig. 12 indicated that the expression of the four hub genes was associated with progression to brain metastasis following surgery for primary breast cancer; however, a positive marker associated with brain metastasis-free survival time was not determined.
Discussion
Cyclophilins (Cyps) are proteins that bind to cyclosporin and serve an immunosuppressive role following organ transplantation (12). CypA is one of the 16 family members constituting human Cyps (13). The expression of CypA was reported to be upregulated in a number of malignant tumor types, including small-cell lung cancer (14), pancreatic cancer (15), hepatocellular carcinoma (16) and breast cancer (17). The presence of CypA was considered to promote cellular proliferation and protect those cancer cells against apoptosis or oxidative stress (13). In the present study, the results of the network analysis demonstrated that the upregulated CypA expression was significantly associated with breast cancer-associated brain metastasis in patients with HER2+ breast cancer. The identification testing in patient samples also determined that CypA may promote breast cancer cells to metastasize to brain tissue.
RPL17, a member of the L22P family of ribosomal proteins, has been indicated to be located in the cytoplasm (18). Due to the encoded protein sharing an amino acid identity with RPL23 from Halobacterium marismortui, the official name of this gene is RPL17 (19). RPL17 could promote multidrug resistance in gastric cancer cells by suppressing drug-induced apoptosis (20,21). In human osteosarcoma, the overexpression of RPL17 may result in stabilization and activation of p53, which serves a pivotal role in suppressing cancer cell proliferation (22). In the network analysis of the present study, the results indicated that the expression of RPL17 was significantly downregulated in primary breast tumors, compared with in metastatic brain tumors. Furthermore, in the patient samples, the expression of RPL17 was more suppressed in primary tumors, compared with brain metastatic neoplasms. The results may indicate that in breast cancer, RPL17 could promote tumor cell invasion and migration.
TP63 is a member of the p53 family, which consists of numerous transcription factors including, p53, p63 and p73 (21), and is reported to be involved in the process of epithelial development and carcinogenesis (23). In normal breast tissue, TP63 expression is restricted to basal/myoepithelial cells, and p63 is essential for mammary gland morphogenesis during embryonic development (24–26). TP63 is highly expressed in a subset of tumors lacking the expression of the estrogen receptor, progesterone receptor and HER2, which is denoted as triple-negative breast cancer (27–29). As aforementioned, patients with HER2+ breast cancer have an increased probability of developing brain metastasis, compared with patients without HER2 expression. Orzol et al (30) introduced in their research that knocking out TP63 caused breast cancer cells to proliferate at a decreased rate and adhere less tightly, which resulted in an increased rate of migration. In the present study, the network analysis indicated that the expression of TP63 was negatively associated with HER2+ breast cancer-associated brain metastasis, which indicated that an increased expression of TP63 was associated with decreased frequency of brain metastasis occurrence. Furthermore, in the patient samples, compared with primary breast tumors, the expression of TP63 in brain metastasis tumors was notably decreased.
The VWA8 gene was originally identified by the Kazusa cDNA project, where it was termed VWA8 (31). Sequence analysis demonstrated that the protein encoded by the VWA8 gene may contain a VWA domain in its C-terminus (31). Data from curated expression analysis of VWA8 in human tissues indicated that VWA8 expression was marked in organs that had high-energy requirements, including organs with a high density of mitochondria (31). The presence of VWA8 exclusively in mitochondria raised the possibility that this protein had a role in metabolic regulation or bioenergetic events (31); however, to date, there is no research concerning its role in malignant tumor types. In the network analysis of the present study, the results indicated that the upregulated expression of VWA8 was negatively associated with breast cancer-associated brain metastasis. Additionally, in the patient samples, the expression of VWA8 in primary breast tumors was notably increased, compared with the metastatic brain tumors.
Furthermore, none of the four genes aforementioned were associated with brain metastasis-free survival time. This may be attributable to the following reasons. First, the quantity of patients with HER2+ brain metastasis was too small. At present, there are only 28 patients with HER2+ breast cancer-associated brain metastasis that could be included in the analysis. Secondly, the treatments the patients received following surgery may influence the occurrence of brain metastasis. According to Romond et al (32), the application of trastuzumab for patients with HER2+ may significantly delay the occurrence of brain metastasis, while its effectiveness remains unclear. Thirdly, the different grades of breast cancer prior to surgery and early lymph-node metastasis may also influence the occurrence of brain metastasis (33). To determine how the actual mechanism regulates the occurrence of breast cancer-associated brain metastasis, further clinical and basic research is required.
Primarily, the results of the network analysis in the present study were confirmed in the patient samples to a certain extent. A number of novel target genes were identified, which may provide a novel foundation for targeted therapeutic treatments of HER2+ breast cancer-associated brain metastasis. Although numerous genes that function together and constitute networks were determined, the core hub genes were not identified as the most significantly changed genes, and they did not serve pivotal functions in the most significantly influenced signaling pathways. However, as aforementioned, the significant differences observed between primary breast tumors and brain metastatic neoplasms were derived from significantly altered systems, specifically, gene modules rather than single molecules.
Acknowledgements
Not applicable.
Funding
No funding was received.
Availability of data and materials
The datasets (GSE43837) generated and analyzed during the study are available from the corresponding author, on reasonable request.
Authors' contributions
FY and WW wrote the manuscript and conducted related experiments and data analysis. HC designed the study and discussed the findings. All authors have read and approved the manuscript.
Ethics approval and consent to participate
Written informed consent for research was obtained from all patients included in the present study. All experiments were conducted according to the relevant guidelines and regulations of the Institutional Ethical Review Committee of Hubei Cancer Hospital (Wuhan, China). The present study was approved by the Institutional Ethical Review Committee of Hubei Cancer Hospital.
Patient consent for publication
Not applicable.
Competing interests
The authors declare that they have no competing interests.
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