Abstract
Background
Breast cancer is the most common cancer and leading cause of cancer mortality in women worldwide. Exonuclease 1 (EXO1), a protein with 5' to 3' exonuclease and RNase H activity, could be involved in mismatch repair and recombination. This study aims to investigate the prognostic value of EXO1 in breast cancer and explore the association between EXO1 expression and breast carcinogenesis.
Methods
The data of 1,215 breast cancer susceptibility gene (BRCA) samples were obtained from The Cancer Genome Atlas (TCGA). Real-time quantitative polymerase chain reaction (RT-qPCR) further verified the elevated mRNA expression level of EXO1 in human BRCA cells MDA-MB231 compared with that in human breast epithelial cells MCF-10A. EXO1 copy number was proved to be correlated with its expression level. Besides, Kaplan-Meier analysis, differentially expressed genes and function enrichment analysis were performed.
Results
Analysis of data from The Cancer Genome Atlas (TCGA) revealed that the EXO1 expression level in breast cancer tissues was significantly increased. Real-time quantitative polymerase chain reaction (RT-qPCR) supported the elevated mRNA expression level of EXO1 in human breast cancer cells MDA-MB231 compared with that in human breast epithelial cells MCF-10A. EXO1 copy number was shown to be correlated with its expression level. Kaplan-Meier analysis showed that elevated EXO1 was an indicator of poor breast cancer prognosis. Furthermore, differentially expressed genes and function enrichment analysis indicated that the cell cycle pathway and cardiac muscle contraction pathway were activated and inhibited respectively in breast cancer samples with high EXO1 expression.
Conclusions
Therefore, this study shows that elevated EXO1 expression is associated with carcinogenesis and poor prognosis in breast cancer, and might be a biomarker for breast cancer treatment.
Keywords: Breast cancer, exonuclease 1 (EXO1), prognosis, cell cycle pathway, cardiac muscle contraction pathway
Introduction
Breast cancer is the most common cancer worldwide and accounts for the majority of cancer-related deaths in women (1). In 2012, there were 1.7 million new cases of breast cancer diagnosed, along with 198,000 breast cancer deaths reported in developed regions and 324,000 deaths in less developed regions (2). The etiology of breast cancer includes high-fat dietary intake, alcohol consumption, exposure to ionizing radiation, hormone use, oral contraceptives, in addition to other potential causes (3). The main curative therapies consist of antiestrogens, surgery, hormonal therapy, radiation therapy, and chemotherapy, which are accompanied with unpleasant side effects (1). Despite advancements in treatment, it has been difficult to establish improvements in survival of patients with recurrent or metastatic breast cancer (4). Consequently, expectations around breast cancer treatment and prognosis remain guarded. Given the World Health Organization suggests early detection improves outcomes and survival in breast cancer (1), it is necessary and important to find effective biomarkers for early diagnosis and prognosis of breast cancer.
Exonuclease 1 (EXO1), a protein with 5' to 3' exonuclease and RNase H activity, could interact with mutator S homolog 2 (MSH2) and be involved in mismatch repair and recombination (5,6). Previous studies revealed that EXO1 played a key role in induction of DNA damage checkpoints and DNA damage repair (7,8), as a guardian of our genome to reduce cancer progression. Conversely, EXO1 is associated with cancer carcinogenesis and progression. This has been demonstrated in ovarian cancer, where EXO1 expression has been shown to be up-regulated suggesting a relationship with chemoresistance of ovarian cancer (9). Additionally, the allele of EXO1 K589E has shown an association with susceptibility to and development of lung cancer (10) and EXO1 K589E polymorphism has been associated with risk of cervical cancer and potential promotion of carcinogenesis of cervical cancer (11). Clinical data in Memorial sloan-kettering cancer center (MSKCC) and TCGA was revealed that the EXO1 was markedly related to the progression and prognosis in prostate cancer (12). Despite such evidence, to our knowledge the mechanism role of EXO1 in breast cancer has not been thoroughly investigated.
Bioinformative and experimental analyses were undertaken to explore the role of EXO1 as a biomarker in breast cancer. This study comprehensively analyzed the expression spectrum of EXO1 in a large cohort of breast cancer samples from The Cancer Genome Atlas (TCGA), and validated its elevated mRNA expression level in human breast cancer cell lines and clinical tissues using real-time quantitative polymerase chain reaction (RT-qPCR) and western blotting. Gene copy number varies in different diseases and its increase and deletion lead to altered expression levels of cancer-related genes (13). Epigenetic modifications are able to influence gene expression without altering nucleotide sequence, and DNA methylation is considered as a typical epigenetic modification (14). It is recognized that multiple genomic characteristics—including gene copy number, mRNA expression and methylation—can provide a systematic approach to research pertaining to the genomic landscape of cancers (13). Therefore, we also investigated the association of EXO1 expression with gene copy number and methylation to explore the EXO1 expression and affecting factors through multi-omics approaches. Survival analysis and Cox regression analysis were performed to explore the prognostic value of EXO1 in breast cancer. Moreover, we conducted functional enrichment analysis to investigate the underlying mechanisms and biological processes in breast cancer.
We present the following article in accordance with the REMARK reporting checklist (available at http://dx.doi.org/10.21037/atm-20-7922).
Methods
Study population
The data of 1,215 breast cancer samples were obtained from TCGA (www.cancergenome.nih.gov). There were 1,102 tumor tissue samples and 113 adjacent tissue samples with gene copy number and data of methylation. Of these, 1,086 tumor tissue samples had complete information of tumor stage, and 1,097 tumor tissue samples had complete information of overall survival (OS) and survival status. Patient samples included 3 normal health and 4 breast cancer patients which were from Tianjin Medical University Cancer Institute and Hospital. All procedures performed in this study involving human participants were in accordance with the Declaration of Helsinki (as revised in 2013). All informed consents were obtained and our research was approved by Tianjin Medical University Cancer Institute and Hospital Ethical Committee.
Differential expression analysis
The edgeR Bioconductor package was used to screen for differentially expressed genes (DEGs). Genes with average counts less than 10 in the samples were removed. Thresholds for significantly differential expression were set as follows: FDR <0.05 and |log2FC| >1 (FDR: False Discovery Rates; FC: Fold Change).
Function enrichment analysis
The Database for Annotation, Visualization and Integrated Discovery (DAVID) (https://david.ncifcrf.gov/) analysis was conducted, and P value <0.05 was used as a threshold for statistical significance of enriched pathways.
Cell culture
The human breast cancer cell lines (MDA-MB-231, SKBR3, MCF-7, T47D) and human breast epithelial cell lines (MCF10A and 76N-Tert) were purchased from the American Type Culture Collection (Manassas, VA, USA). Besides, human breast cancer cell line Cal51 was from the German Collection of Microorganisms and Cell Cultures (Leibniz Institute DSMZ, Braunschweig, Germany). Breast cancer cell lines were cultured in RPMI 1640 medium (GIBCO, USA) supplemented with 10% fetal bovine serum (Hyclone, USA). Breast epithelial cell lines were cultured in DMEM/F12 medium (GIBCO, USA) containing amino acid mixture (L-Alanine, L-Asparagine, L-Aspartic Acid, L-Glutamic Acid, L-Glycine, L-Proline, and L-Serine), HEPES (5 mL), insulin (500 µL), hydrocortisone (500 µL), epidermal growth factor (250 µL), and penicillin-streptomycin (5 mL). The cells were incubated in an incubator (Thermo Forma, USA) at 37 °C with 5% CO2.
Real-time quantitative polymerase chain reaction (RT-qPCR)
Total RNA was extracted from cells using chloroform. The integrity of RNA samples was determined by 1% (weight/volume) agarose gel electrophoresis and the concentration was measured by NanoDrop ND-2000 spectrophotometer (NanoDrop Technologies, USA). RNA was then reversely transcribed into cDNA according to the instructions of PrimeScript™ RT Master Mix kit (TakaRa, China). RT-qPCR was performed using the SYBR Premix Ex Taq kit (Roche, Basel, Switzerland) on CFX96 Bio-Rad Real-Time PCR System (Bio-Rad, USA). The reaction system included 10.0 µL 2× SYBR Premix Ex Taq, 1.0 µL upstream primer, 1.0 µL downstream primer, 1 µL cDNA, and 7 µL RNase-free dH2O. The primer sequence for RT-qPCR is shown in Table 1. The experimental data was analyzed using 2−ΔΔCt method with GAPDH as an endogenous control. The sequences of primers in this research were shown in the Table S1.
Table 1. The primer sequences of RT-qPCR.
Gene | Sequence |
---|---|
EXO1 | F: 5'-GCAACTTCTTCGTGAGGGA-3' |
R: 5'-AGGAAGGTATTGTTGGCCCG-3' | |
GAPDH | F: GGTGAAGGTCGGTGTGAACG |
R: CTCGCTCCTGGAAGATGGTG |
RT-qPCR, real-time quantitative polymerase chain reaction; F, forward; R, reverse.
Western blotting
Total proteins were separated, and western blotting was conducted and repeated several times as previous standard method (15). Antibody against EXO1 (YT1646, 1:2,000, Texas, USA) and GAPDH (YM3215, 1:5,000, Texas, USA) antibody were both from Immunoway, and GAPDH as a control. Anti-rabbit Ig secondary antibody (1:2,000, CA, USA) was purchased from Vector Laboratories.
Statistical analysis
The associations between EXO1 expression and clinicopathologic variables in breast cancer were analyzed by using a Chi-square test. A two-sided t-test was conducted to analyze the association between EXO1 expression and age, and compare the EXO1 expressions in tumor tissues and adjacent tissues. The Kaplan-Meier method was applied to estimate the OS, and comparisons of OS among multiple groups were conducted using a log-rank test. Pearson correlation was conducted to analyze the relationship between EXO1 expression and methylation. The t-test compared the difference of mRNA expression levels between the experimental and control groups in RT-qPCR and western blotting. In the analysis of EXO1-related genes, the tumor tissue samples were divided into two groups using the median of EXO1 expression level as the threshold, with abbreviations “EXO1_high” and “EXO1_low”. A P value <0.05 was considered statistically significant in all statistical analyses.
Results
Correlation of EXO1 expression with clinicopathologic features in breast cancer patients
Tumor tissue samples were divided into “EXO1_high” and “EXO1_low” groups using the median of EXO1 expression level as threshold. The associations between EXO1 expression and OS status, tumor stage, and gender, were analyzed using a Chi-square test. There was no significant difference in gender (P=0.3821) and tumor stage (P=0.2383) between groups. Patients with high EXO1 expression showed a tendency towards death (P=0.02272). The association between EXO1 expression and age was analyzed using a two-sided t-test. Age was lower in the “EXO1_high” group compared with that in the “EXO1_low” group (P=0.001709, Table 2).
Table 2. The association between EXO1 expression and demographic and clinicopathological parameters of breast cancer patients.
Parameters | EXO1 expression | χ2 | P value | |
---|---|---|---|---|
High (N=548) | Low (N=549) | |||
Age, years (mean ± SD) | 57.87±13.31 | 60.37±12.88 | 0.001709 | |
Gender | 0.76384 | 0.3821 | ||
Female | 540 | 545 | ||
Male | 8 | 4 | ||
Classification of breast cancer | 7.751 | 0.1011 | ||
ER(+)PR(+)HER2(−) | 191 | 214 | ||
ER(+)PR(+)HER2(+) | 52 | 60 | ||
ER(−)PR(−)HER2(+) | 22 | 19 | ||
ER(−)PR(−)HER2(−) | 89 | 69 | ||
Other | 210 | 171 | ||
Radiotherapy | 0.81581 | 0.665 | ||
Yes | 352 | 365 | ||
No | 150 | 172 | ||
Unknown | 30 | 28 | ||
Chemotherapy | 5.7512 | 0.05638 | ||
Yes | 303 | 280 | ||
No | 297 | 211 | ||
Unknown | 2 | 4 | ||
Pathologic stage | 1.3907 | 0.2383 | ||
I/II | 394 | 412 | ||
III/IV/V | 149 | 131 | ||
OS status | / | / | ||
Dead | 90 | 63 | ||
Alive | 458 | 486 |
High expression of EXO1 indicated poor prognosis in breast cancer patients
Kaplan-Meier method and log-rank test were conducted to estimate and compare OS among multiple groups. The OS in the “EXO1_high” group was significantly worse than that in the “EXO1_low” group (P=0.012) (Figure 1A). OS analysis was also conducted with gender and EXO1 expression level as variables simultaneously. For patients in the same age group, OS of patients with low EXO1 expression was superior (P<0.0001) (Figure 1B), indicating EXO1 as an independent risk factor for breast cancer.
EXO1 expression was increased in breast cancer tissues
The average expression level of EXO1 in breast cancer tissues was 9.34 compared to 5.83 seen in adjacent tissues. The EXO1 expression in breast cancer tissues was significantly higher than that in adjacent tissues (P=0) (Figure 2A). Although significant differences in EXO1 expression levels were observed between adjacent tissues and tumor tissues of different stages (P=0), EXO1 expression was not significantly correlated with tumor stage (adjacent tissues: 5.83, stage I: 8.79, stage II: 9.48, stage III: 9.45, stage IV: 9.42, stage V: 8.80; P=0.419) (Figure 2B). These results showed EXO1 might play a key role in breast carcinogenesis with high expression level in the early stage.
Validation of elevated EXO1 expression in cell lines and tissues
In order to verify that EXO1 expression was increased in breast cancer, RT-qPCR and western blotting were used to determine the mRNA (Figure 3A) and protein expressions (Figure 3B) of EXO1 in human breast cancer cell lines and human breast epithelial cell lines. Besides, the clinical tissues, including tumor and normal tissues, were used to confirmed the high expression of EXO1 in breast cancer (Figure 3C). The results revealed that the mRNA and protein expression of EXO1 in cells and tissues were significantly higher in breast cancer.
Correlations of EXO1 expression with gene copy number and methylation
DNA copy number variation has been found to feature in most cancers. In this study, we investigate the association between EXO1 gene copy number and its expression level. DNA methylation was previously shown to be involved in tumorigenesis (16). This study analyzed the association between EXO1 expression and its methylation, with Pearson correlation analysis showing no significant correlation between EXO1 expression and its methylation (P=0.6597, r=−0.015) (Figure 4A). The focal segment score of each gene was calculated using GISTIC in TCGA, which represented changes of copy number. The “−1”, “0”, and “1” were used to represent gene copy number loss, normal copy number, and copy number amplification respectively. The EXO1 expression level in group “1” was significantly higher than that in groups “−1” and “0” (group “−1”: 9.03, group “0”: 9.14, group “1”: 10.13; P=4.66e-06) (Figure 4B).
The molecular mechanism of EXO1 underlying breast cancer carcinogenesis and poor prognosis
To explore the underlying molecular mechanism of EXO1 in breast cancer carcinogenesis, we screened the DEGs between “EXO1_high” and “EXO1_low” samples. As shown in https://cdn.amegroups.cn/static/public/ATM-20-7922-1.xlsx, a total of 1,593 DEGs were obtained. The expression heatmap of the DEGs is shown in Figure 5A. The up-regulated genes were mainly distributed in the pathways including cell cycle, oocyte meiosis, and neuroactive ligand-receptor interaction (Figure 5B), with the cell cycle pathway showing highest significance. The down-regulated genes were mainly distributed in the pathways including cardiac muscle contraction, neuroactive ligand-receptor interaction, and peroxisome proliferator-activated receptors (PPAR) (Figure 5C), with the cardiac muscle contraction pathway showing highest significance. The cell cycle pathway of the up-regulated genes is shown in Figure 6A with red color indicating up-regulated genes and light green color indicating subpathways. The cardiac muscle contraction pathway the down-regulated genes was shown in Figure 6B with dark green color indicating down-regulated genes and light green color indicating subpathways.
Discussion
Breast cancer is the main cause of cancer mortality in women and is considered a global public health issue (17,18). Current prognostic factors of breast cancer include clinical stage, tumor size and stage, axillary nodal status, lymphovascular involvement, and hormone receptor status, with numerous ongoing efforts to evaluate new prognostic factors in breast cancer risk (19). Gene-expression profiling provides the possibility of accurate prognostic information, which plays a significant role in selecting optimal therapy for individuals and avoiding over- and under-treatment (20). This study showed EXO1 expression level was increased in breast cancer tissues compared with that in adjacent tissues, and high expression level in the early stages of breast cancer. The elevated expression of EXO1 was validated in human breast cancer cell line MDA-MB231 by RT-qPCR. This study also found that patients with high expression level of EXO1 had inferior OS compared to patients with low expression level of EXO1. These results indicated EXO1 might be a potential biomarker for breast cancer carcinogenesis and prognosis.
EXO1 is an exonuclease associated with multiple DNA metabolic processes such as DNA replication and DNA repair of mismatch and double-stranded break (21). Although the relationships between EXO1 dysfunction and several cancers have been confirmed, the specific mechanism varies between cancers (22). Mutations of the nuclease domain or the binding domains of MLH1 and MSH2 in EXO1 could contribute to cancer risks through loss of protein function (22-24), while elevated expression of EXO1 might be involved in cancers through increasing genomic instability. Valente V et al. found that EXO1 was up-regulated in astrocytomas, and EXO1 silence contributed to faster double-strand breaks repair (25). Muthulakshmi et al. suggested increased EXO1 expression was related to increased unrectified DNA repairs and genomic instability in breast cancer (26). It is known that genomic instability is a characteristic seen in most cancers and has been observed in breast cancer (27-29). Thus, it is inferred that elevated EXO1 might be involved in carcinogenesis and poor prognosis of breast cancer by increasing genomic instability.
A previous study revealed DNA copy number exerted a direct effect on gene expression in breast cancer, including tumors and the corresponding cell lines (30). The alteration of DNA copy number can result in gene expression deregulation directly and might promote cancer development and progression. Furthermore, DNA methylation can also alter the expression level of genes (14). To explore the EXO1 expression and affecting factors, this study also investigated the association between EXO1 expression and gene copy number and methylation, showing EXO1 expression in the group with gene copy number amplification was significantly elevated compared to the groups with gene copy number loss and normal copy number. This was also consistent with existing research; however, there was no significant correlation between EXO1 expression and its methylation. Thus, it is speculated that EXO1 might exert its effects through integration of multi-omics effects.
EXO1 could regulate the cell cycle checkpoints lead to double-strand breaks, cell-cycle arrest, cell death, or cellular transformation (22), which interacted with multiple critical proteins, including 14-3-3 complex and 9-1-1 complex physically and functionally (31,32). The cell cycle pathway was shown to be activated by CASC11 in gastric cancer (33). This pathway was also found to be involved in prostate cancer (34). In small cell lung cancer and non-small cell lung cancer, cell cycle upregulation was observed through activating pro-proliferative genes or inhibiting cell cycle inhibitor (35). The cell cycle pathway was associated with breast cancer prognosis and its upregulation might play a key role in promoting breast cancer progression (36). In this study, we found several pathways up-regulated in breast cancer samples with high EXO1 expression level, including cell cycle, oocyte meiosis, and neuroactive ligand-receptor interaction pathways, with the cell cycle pathway showing the most significant up-regulation. The expression levels of several cell cycle pathway-related genes were increased, including CDC25A, CycE, and CDK1. Elevated expression of CDC25A was correlated with poorer outcomes in breast cancer (37) while high levels of CycE were associated with reduced OS in breast cancer (38). Additionally, alteration of CDK1 was observed in breast tumor cases (39). Moreover, previous research indicated that the EXO1 over-expression activated RAS/AKT/MYC/E2F1 signaling pathways results in elevated cell proliferation, genomic instability (26). These results were consistent with our findings.
Conclusions
This study showed increased EXO1 expression was associated with carcinogenesis and poor prognosis in breast cancer, likely through regulating cell cycle or cardiac muscle contraction pathways. EXO1 might be an effective prognostic biomarker and novel therapeutic target for breast cancer; however, there are some limitations to this study. The association of EXO1 expression with suggested pathways—including cell cycle and cardiac muscle contraction pathways—were not experimentally validated and require further investigation in our follow-up study.
Supplementary
Acknowledgments
Funding: This work was supported by National Natural Science Foundation of China (grant number: 81672623); General project of scientific research program of Tianjin Municipal Education Commission (grant number: 2019KJ186); Tianjin Municipal Science and Technology Bureau (grant number: 19YFZCSY00030).
Ethical Statement: The authors are accountable for all aspects of the work in ensuring that questions related to the accuracy or integrity of any part of the work are appropriately investigated and resolved. All procedures performed in this study involving human participants were in accordance with the Declaration of Helsinki (as revised in 2013). Our research was approved by Tianjin Medical University Cancer Institute and Hospital Ethical Committee and all informed consents were obtained.
Reporting Checklist: The authors have completed the REMARK reporting checklist. Available at http://dx.doi.org/10.21037/atm-20-7922
Data Sharing Statement: Available at http://dx.doi.org/10.21037/atm-20-7922
Conflicts of Interest: Both authors have completed the ICMJE uniform disclosure form (available at http://dx.doi.org/10.21037/atm-20-7922). The authors have no conflicts of interest to declare.
(English Language Editor: M. Hawkins)
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