Abstract
Objectives
Breast carcinoma (BRCA) has resulted in a huge health burden globally. N1-methyladenosine (m1A) RNA methylation has been proven to play key roles in tumorigenesis. Nevertheless, the function of m1A RNA methylation-related genes in BRCA is indistinct.
Methods
The RNA sequencing (RNA-seq), copy-number variation (CNV), single-nucleotide variant (SNV), and clinical data of BRCA were acquired via The Cancer Genome Atlas (TCGA) database. In addition, the GSE20685 dataset, the external validation set, was acquired from the Gene Expression Omnibus (GEO) database. 10 m1A RNA methylation regulators were obtained from the previous literature, and further analyzed through differential expression analysis by rank-sum test, mutation by SNV data, and mutual correlation by Pearson Correlation Analysis. Furthermore, the differentially expressed m1A-related genes were selected through overlapping m1A-related module genes obtained by weighted gene co-expression network analysis (WGCNA), differentially expressed genes (DEGs) in BRCA and DEGs between high- and low- m1A score subgroups. The m1A-related model genes in the risk signature were derived by univariate Cox and least absolute shrinkage and selection operator (LASSO) regression analyses. In addition, a nomogram was built through univariate and multivariate Cox analyses. After that, the immune infiltration between the high- and low-risk groups was investigated through ESTIMATE and CIBERSORT. Finally, the expression trends of model genes in clinical BRCA samples were further confirmed by quantitative real-time PCR (RT‒qPCR).
Results
Eighty-five differentially expressed m1A-related genes were obtained. Among them, six genes were selected as prognostic biomarkers to build the risk model. The validation results of the risk model showed that its prediction was reliable. In addition, Cox independent prognosis analysis revealed that age, risk score, and stage were independent prognostic factors for BRCA. Moreover, 13 types of immune cells were different between the high- and low-risk groups and the immune checkpoint molecules TIGIT, IDO1, LAG3, ICOS, PDCD1LG2, PDCD1, CD27, and CD274 were significantly different between the two risk groups. Ultimately, RT-qPCR results confirmed that the model genes MEOX1, COL17A1, FREM1, TNN, and SLIT3 were significantly up-regulated in BRCA tissues versus normal tissues.
Conclusions
An m1A RNA methylation regulator-related prognostic model was constructed, and a nomogram based on the prognostic model was constructed to provide a theoretical reference for individual counseling and clinical preventive intervention in BRCA.
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Introduction
Breast carcinoma (BRCA) is the most common malignant tumor in women [1]. The percentage of women with BRCA is steadily increasing, with an estimated 11.7% of all cancer cases or 2.3 million new cases in 2020 [1, 2]. BRCA can be mainly classified into luminal A, luminal B, HER-2 positive, and triple-negative breast cancer (TNBC) according to the expression of ER, PR, HER-2, and Ki-67. The different subtypes may lead to different responses to clinical treatment and different prognoses [3]. Great improvements in the early diagnosis and comprehensive treatment of breast cancer have been made in recent years, but breast cancer is still the leading cause of cancer death in women [2]. Therefore, there is an urgent need to develop new therapeutic and prognostic targets for BRCA.
Growing evidence has revealed that RNA chemical modifications have important functions in vital cellular processes, such as cell differentiation, circadian rhythm maintenance, cell signaling, and protein production [4,5,6]. RNA methylation is one of the most common RNA chemical modification patterns observed during posttranscriptional RNA epigenetic modifications, including N3-methylcytosine (m3C), N1-methyladenosine (m1A), N6-methyladenosine (m6A), and 5-methylcytosine (m5C) [7,8,9,10,11]. The N1 position where the methyl group is attached to adenosine is m1A [12] and is prevalent in rRNA, mRNA, tRNA, and mitochondrial transcripts. Most m1A is found in GC-rich sequences with a highly structured 5-untranslated region (UTR) near the mRNA translation start site [8]. Studies have shown that m1A dysregulation affects RNA structural stability, protein interactions, folding, cell proliferation, and cell death [8, 13]. M1A methylation regulators are composed of “eliminate decoders” (ALKBH3, ALKBH1), “encoders” (TRMT61B, TRMT10C, TRMT6, TRMT61A), and “code readers” (YTHDC1, YTHDF1, YTHDF2, YTHDF3) [14,15,16,17]. It has been demonstrated that dynamic regulation of m1A in response to physiological stress and abnormal expression of m1A regulators are associated with tumorigenesis and cancer recurrence [18]. Studies have illustrated that changes in m1A-related genes are closely related to the progression of bladder cancer [19]. The expression of ALKBH1 is closely related to the poor prognosis of lung adenocarcinoma (LUAD) [20]. A study by Couch et al. demonstrated that TRMT61B is closely associated with ER-negative breast cancer [21].
However, the impact of m1A-related genes on breast cancer prognosis remains unclear. Therefore, this study mainly used bioinformatics analysis to investigate the effect of m1A-related genes on the prognosis of breast cancer patients. A total of 6 m1A-related genes (MEOX1, COL17A1, FREM1, CD1C, TNN, and SLIT3) were selected as prognostic m1A-related biomarkers to build the risk model. The validation results of the risk model showed that its prediction was reliable. Finally, the experimental results demonstrate the reliability of the bioinformatics analysis. This research may provide new ideas for the diagnosis and treatment of BRCA.
Materials and methods
Data source
The transcriptome (1104 BRCA samples and 114 normal samples), copy-number variations (CNVs), single-nucleotide variants (SNVs), and clinical data of BRCA were downloaded from the TCGA database (https://portal.gdc.cancer.gov/). After removing the samples without survival status and invalid survival time, a total of 1069 BRCA samples with complete survival information were obtained for subsequent risk model construction. Moreover, the GSE20685 dataset, the external validation set, was retrieved from the GEO database (https://www.ncbi.nlm.nih.gov/geo), containing the expression profile data of 115 BRCA samples with survival information. Finally, 10 m1A RNA methylation regulators were obtained from the literature of Wu et al. [22], including ALKBH1, ALKBH3, TRMT10C (AKA: RG9MTD1), YTHDF2, TRMT61A, TRMT61B, YTHDC1, TRMT6, YTHDF1, and YTHDF3.
CNV and functional enrichment analyses of m1A RNA methylation regulators
Considering the important role of various CNV regions in lymph-node metastasis in triple-negative breast cancer patients [23], the genetic variation of N6-methyladenosine (m6A)-related regulators, that is, CNV data, expression differences, and mutations, has been investigated in BRCA [24]. In the current study, similarly, the R package was employed for the 10 m1A-related regulators to initially seek their CNV types and frequencies and chromosomal assignments. In addition, based on transcriptome data, the expression patterns of 10 m1A-related regulators were compared between BRCA samples and controls using the rank-sum test and visualized by ggplot2 (Version 3.3.3). For the exploration of the biological function and signaling pathway of these m1A-related regulators, Gene Ontology (GO) enrichment analysis was further utilized for the 10 m1A-related regulators by ClusterProfiler (version 3.18.0) [25] in the R package with adj.p < 0.05 and count ≥ 1 as the selection standard, and the results were visualized in a bar chart and bubble diagram by enrichplot (version 1.10.2) [26].
Survival analysis and immune infiltration of 10 m1A-related regulators
The m1A score of each of 1069 BRCA samples was calculated by single sample Gene Set Enrichment Analysis (ssGSEA) of Gene Set Variation Analysis (GSVA) [27, 28]. Then, the survival time and survival data were extracted, and the survminer package (version 0.4.9) was utilized to calculate the optimal threshold of m1A scores to separate BRCA samples into m1A score high-risk and low-risk subgroups according to previous methods [29]. The survival package (Version 3.2–11) [30] was used for the survival analysis of the two subgroups, a survival curve was drawn, and p < 0.05 was considered statistically significant.
In addition, the immune infiltration was analyzed in the two score subgroups [31]. First, the ESTIMATE algorithm was applied for the stromal scores, immune scores, and ESTIMATE composite scores of each sample in two score subgroups. The comparison of the three scores between the two m1A score subgroups was conducted through the rank-sum test and visualized in violin plots. Moreover, CIBERSORT was further performed on each sample in both subgroups to compute the proportions of 22 types of immune cells, and the correlations of the immune cells were computed by Pearson correlation analysis [32].
Screening of m1A-related Genes
In contrast to the previous studies of BRCA, disease status (BRCA/normal) was used as the trait data of weighted gene co-expression network analysis (WGCNA) (Version 1.70-3), which was performed to filter the most relevant m1A modules and genes in this study [33]. Initially, the expression values of genes were computed, and genes with expression values greater than 1 were selected for cluster analysis. The cluster analysis of samples aimed to determine whether outlier samples needed to be removed. Next, the adjacency and similarity between genes were calculated. Then, the dynamic tree cutting algorithm was performed to divide modules. Based on the following settings, the minimum number of genes per module was 200, MEDissThres = 0.2. Finally, genes in the key modules that met the requirements of 丨GS丨 > 0.2, and 丨MM丨 > 0.6 were regarded as m1A-related genes.
Differentially expressed m1A-related genes
The limma package (Version 3.44.3) [34] was applied with the criteria of adj.p < 0.05 and |Log2FC|≥ 1 to screen out the differentially expressed genes (DEGs) between 1104 BRCA samples and 114 normal samples. Similarly, DEGs between m1A score high-risk and low-risk subgroups were identified as well, which exhibited the differences in gene expression between BRCA cohorts with different prognoses according to the m1A score. In addition, the VennDiagram package (Version 1.6.20) was utilized to overlap DEGs in BRCA samples, DEGs in m1A score high-risk and low-risk subgroups, and the m1A-related module genes obtained by WGCNA (the downregulated DEGs in BRCA were intersected with the downregulated genes in the m1A score high-risk subgroup and key module genes, and vice versa) to acquire the differentially expressed m1A-related genes.
Construction and validation of the m1A-related prognosis model
First, based on the ratio of 7:3, 749 and 320 samples of the 1069 BRCA samples were treated as the training set and internal validation set, respectively. Moreover, after extracting the expression data of differentially expressed m1A-related genes from the training set, the overall survival (OS) and other clinical information were combined with the extracted expression data to further obtain clinical expression data of BRCA samples. Then, the risk model was built by univariate Cox analysis and least absolute shrinkage and selection operator (LASSO) logistic regression [35]. To be more specific, univariate Cox analysis was applied to screen out the differentially expressed m1A-related genes with p < 0.05 by the survival package (version 3.2-11). LASSO logistic regression analysis was performed with the setting of family to Cox, to the screened differentially expressed m1A-related genes for constructing the risk model. At the meantime, Kaplan–Meier (K–M) survival analysis was conducted to evaluate the difference in OS of TCGA-BRCA cohorts with different expression patterns of these model genes, as described by Zhang et al. [36].
Moreover, the RiskScore of every BRCA patient was computed by the risk coefficient (\({coef}_{i}\)) of the model genes obtained by LASSO and their respective expression levels (\({x}_{i}\)), with the formula RiskScore = \(\sum\nolimits_{n = 1}^{n} {coef_{i} } * x_{i}\) [37]. After separating BRCA patients into high- or low-risk (score) groups based on the median RiskScores, the overall survival curves were plotted for the groups by survminer (version 0.4.8). The risk model efficacy was further assessed by the area under the curve (AUC) of the receiver-operating characteristic (ROC) curves37. The 1-, 3- and 5-year survival time node ROC curves were plotted by the survival ROC package (Version 3.1-12) for the risk model. Moreover, the same evaluation procedures were employed for both the internal and external validation (GSE20685) sets to further determine the effectiveness of the risk model.
Establishment of a nomogram
To detect the prognosis of the risk model and clinical factors, correlation analysis was performed between clinicopathological characteristics (age, T, N, M, sex, subtype, vital, and stage) of the 1069 BRCA samples and the RiskScore. The differences in subgroups of clinicopathological characteristics [age (> 60 and ≤ 60), T (T1, T2, T3, T4), M (M0, M1), N (N0, N1, N2, N3), sex (male, female), subtype (BRCA_LumA, BRCA_LumB, BRCA_Normal, BRCA_Basal, BRCA_Her2), and Vital (Alive, Dead)] between the low- and high-risk groups were examined by the Chi-square test. In addition, the rank-sum test was further utilized to compare differences in RiskScores expression among the different subgroups of clinicopathological characteristics [38]. Considering the vital significance of the intrinsic subtype of BRCA in prognosis, risk stratification analysis was further conducted to investigate the utilization of the risk model in patients with different intrinsic subtypes of BRCA [39].
Next, univariate Cox independent prognostic analysis was further employed for the clinicopathological characteristics and RiskScore to investigate the prognosis of the clinicopathological characteristics and the risk model. Subsequently, clinicopathological characteristics with p < 0.05 were regarded as factors for multivariate Cox independent prognostic analysis.
Then, the rms function (version 6.2-0) in the R package was employed on the 1069 BRCA samples to construct the nomogram to further predict BRCA patient 1-, 3-, and 5-year survival probabilities according to the total score of independent factors screened by the Cox analyses, and the nomogram was verified by the overall calibration curve [40]. In addition, the effectiveness comparison between the risk model and nomogram was evaluated by decision curve analysis (DCA).
Effects of the risk model on immune heterogeneity
The estimate package (version 1.0.13) was performed on the 1069 BRCA samples to detect the immune differences between the two risk groups. The immune infiltration of both stromal and immune cells in a tumor sample can be obtained by the ESTIMATE algorithm, which is presented as stromal scores, immune scores, and ESTIMATE composite scores [41]. Furthermore, the abundances of 22 types of immune cells were calculated in each BRCA sample by the CIBERSORT algorithm (Version 1.03) [42] with p < 0.05 as the selection standard. Then, the rank-sum test was used to compare the proportions of 22 immune cells between the high- and low-risk groups. In addition, the correlation between risk model genes and differential immune cells was detected through Pearson correlation.
In this study, the rank-sum test was employed to compare the differences between the two risk groups in both the expression data of 24 human leukocyte antigen (HLA) genes extracted from a previous publication by Yue et al. [43] and the expression data of nine immune checkpoint molecules (LAG3, ICOS, TIGIT, CD274, PDCD1, IDO1, CD27, PDCD1LG2, and HAVCR2).
Analysis of risk model gene mutations
Eventually, the SNVs of each risk model gene in BRCA were analyzed according to the SNV data, and their mutation frequencies were presented as a waterfall diagram by maftools R package [44].
Total RNA extraction and quantitative real-time PCR (qRT‒PCR) analysis
All clinical samples were obtained from the Department of Breast Surgery, Guizhou Provincial People's Hospital, and all patients signed informed consent. The clinical characteristics of the patients are shown in Table 1. Total RNA was extracted from BRCA tissues and healthy controls using RNA extraction kits (Promega, Shanghai, China) in accordance with the manufacturer's instructions. Then, cDNA synthesis was conducted on 2 μg of each sample using a fixed one-step RT-PCR kit (Promega, Shanghai, China). The SYBR Green Super Mix system was applied to perform qRT‒PCR. Gene expression was evaluated for three biological replicates, and the 2−ΔΔCT method was employed to analyze the relative changes in gene expression. GAPDH was utilized as a control. The primer sequences used in this paper are listed in Table 2.
Results
CNV and expression of m1A RNA methylation regulators
To explore the functional alteration and biological significance of m1A RNA methylation in BRCA development, the mutation rate of CNV and the expression levels of 10 m1A RNA methylation regulators were first evaluated. The waterfall diagram showed that 9 of 10 m1A RNA methylation regulators were mutated in the BRCA samples, and YTHDF1 was the gene with the highest mutation frequency of 15% (Fig. 1a). For the chromosomal assignment results, it was revealed that 10 m1A RNA methylation regulators were mainly located on chromosomes 1, 2, 3, 4, 8, 11, 14, and 22 (Fig. 1b). Besides, copy-number amplification occurred in 8 regulators except ALKBH1 and TRMT61A which experienced copy-number deletions (Table 3). However, in general, the probabilities of CNV among the 10 m1A RNA methylation regulators in BRCA samples were low.
From the perspective of the gene expression patterns of these 10 m1A RNA methylation regulators in BRCA, the boxplot of the rank-sum test suggested that except for YTHDF3, the expression levels of the other nine m1A RNA methylation regulators showed significant differences between tumor and normal samples (Fig. 1c), indicating the potential correlation of m1A RNA methylation and BRCA.
Next, using the enrichment analysis targeted the m1A RNA methylation regulators, the GO enrichment results indicated that in the BP process, these regulators were mostly significantly correlated with the methylation and modification of RNA, tRNA, and mRNA such as positive regulation of translation initiation, RNA methylation, tRNA metabolism process, tRNA methylation, tRNA processing, tRNA modification, mRNA modification, and mRNA methylation. From the perspective of cellular components (CC), they were significantly correlated with the mitochondrial matrix, mitochondrial nucleoid, nucleus, endonuclease complex, endoribonuclease complex, ribonuclease P complex, and methyltransferase complex. Additionally, demethylase activity, methyltransferase activity, transferase activity, RNA methyltransferase activity, and S-adenosylmethionine-dependent methyltransferase activity were mainly enriched in the molecular functions (MF) (Fig. 1d).
Prognostic value and immune correlation analysis of m1A RNA methylation regulators of BRCA
Following the m1A score of 1069 BRCA samples was calculated using ssGSEA, the m1A score high-risk and low-risk subgroups were generated according to the optimal threshold of m1A scores. Differences in OS and immune infiltration states between two subgroups were revealed using K–M survival analysis and the immune-related analyses. It was revealed that the prognosis of BRCA patients in the m1A score high-risk group was significantly worse (p = 0.025) (Fig. 2a). For the exploration of the immune infiltration, both ESTIMATE and CIBERSORT algorithms were employed. The ESTIMATE results illustrated that the m1A score low-risk group had significantly higher stromal scores, immune scores, and ESTIMATE composite scores (Fig. 2b). In addition, CIBERSORT results illustrated that M0 macrophages had a strong negative correlation with all the remaining immune cells. The proportions of seven types of immune cells (CD T cells, follicular helper T cells, activated NK cells, plasma cells, resting memory CD4 T cells, activated memory CD4 T cells, and activated dendritic cells) were significantly different between the two score subgroups (Fig. 2c–e).
MElightgreen and MEblack with the strongest correlations to the m1A score
Next, the genes associated with the m1A score were identified using WGCNA methods. The clustering analysis showed that there was no outlier sample, and the sorted staging data of m1A, T, N, M, age, and stage selected were used to construct a sample dendrogram and trait heatmap (Fig. 3a). Moreover, the optimal soft threshold analysis revealed that β was selected as 8 (Fig. 3b). On account of the optimal soft threshold, when 200 was set to the minimum number of genes in each gene module, 23 modules were acquired (Fig. 3c). Moreover, with MEDissThres set to 0.2 to merge similar modules analyzed by the dynamic tree cutting algorithm, 12 modules were obtained (Fig. 3c). Using m1A characteristics as well as other clinical characteristics as the clinical phenotypes of WGCNA, the correlation heatmap between modules and clinical phenotypes illustrated that of the 12 modules, MElightgreen (Cor = − 0.54, p = 5E−82) had the strongest negative correlation with m1A characteristics, while MEblack (Cor = 0.45, p = 1E–54) correlated the most negatively with m1A traits. Therefore, MElightgreen and MEblack were considered key modules related to m1A (Fig. 3d). As for, the correlations between m1A traits and genes in these key modules, it was showed that the correlation coefficient between MEblack genes and m1A traits was 0.52 (p < 0.05), and 220 of 574 genes in the MEblack module met the selection requirements. Furthermore, the correlation coefficient between the MElightgreen gene and m1A traits was 0.8, and 434 of 1000 genes in the MElightgreen were selected as m1A-related genes (Fig. 3e).
Identification of differentially expressed m1A-related genes
To further explore the differences in gene expression between different subgroups, the differentially expressed analysis was conducted with adj.p < 0.05 and |Log2FC|≥ 1. A total of 3600 DEGs, of which 1180 were up-regulated and 2420 were downregulated genes in BRCA samples compared to controls, were collected (Fig. 4a). Similarly, 184 differentially expressed genes related to BRCA prognosis were found between the two m1A score risk subgroups, including 182 downregulated and 2 up-regulated genes in m1A score high-risk samples (Fig. 4b). Finally, the overlap analysis among DEGs in BRCA, DEGs in the high-m1A/low-m1A risk subgroups, and m1A-related genes showed that 85 differentially expressed m1A-related genes were selected (overlapping genes were only obtained in downregulated genes) (Fig. 4c).
High efficiency of risk model based on 6 model genes
The expression data of 85 differentially expressed m1A-related genes were extracted from the training set to explore their prognostic value in BRCA. After combining these data with OS clinical information, forest map was drawn to visualize the univariate Cox analysis results, and nine differentially expressed m1A-related genes relevant to survival were identified including MEOX1, COL17A1, FREM1, CD1C, TNN, CLEC10A, IL33, CADM3, and SLIT3. Besides, SLIT3 was a risk factor (HR > 1) and the rest of the factors were protective factors (HR < 1) (Fig. 5a). The LASSO regression analysis results of these nine genes involved further suggested that 6 genes (MEOX1, COL17A1, FREM1, CD1C, TNN, and SLIT3) were screened out as model genes when the cross-validation error was lowest (lambda. min = 0.00397) (Fig. 5b). About the survival differences of these genes with distinct expressed patterns, the K–M analysis results preliminarily suggested that cohorts with low expression of COL17A1, FREM1, CD1C, and TNN had worse prognoses (Supplementary Fig. 1). Next, the RiskScore of the six model genes was estimated with the formula: RiskScore = 0.31 × SLIT3 + (− 0.04) × MEOX1 + (− 0.03) × COL17A1 + (− 0.1) × FREM1 + (− 0.03) × CD1C + (− 0.09) × TNN. The risk curve based on the RiskScore of 749 samples in training set showed that the high-risk patients experienced worse survival (Fig. 5c). The K–M curve demonstrated that the low-risk patients had a higher survival probability (Fig. 5d). Furthermore, the AUCs of the ROC curve in the training set were all greater than 0.6 at 1, 3, and 5 years, suggesting that the efficiency of the risk model was good (Fig. 5e). Moreover, the validation results of both the internal (test set) and external validation (GSE20685) sets all showed consistent results with those of the training set (Fig. 5f–k).
Clinical correlation analysis
Differences of risk score among BRCA individuals with different clinical characteristics were compared for the correlation of the risk model and clinicopathological characteristics using Chi-square test and rank-sum test. The Chi-square test results suggested that except for N (p = 0.62), there were significant differences in age, T, M, sex, subtype, vital, and stage between the two risk groups (Table 4). Furthermore, the rank-sum test results demonstrated that the RiskScores differences among the subgroups of T, M, Stage, Vital, Age, Subtype, and Sex groups were significant except for N, indicating the excellent correlations of the risk model and various clinicopathological characteristics (Fig. 6). In addition, the risk stratification analysis was conducted to investigate the application of the risk model in survival prediction in patients with different intrinsic subtypes of BRCA, and it was illustrated that there was a significant difference in OS between different risk groups both Luminal A- and Luminal B-related BRCA cohorts (Supplementary Fig. 2).
Excellent potential of nomogram for clinical prediction
Univariate and multivariate Cox analyses were further used to evaluate the independent prognostic value among the risk model and various clinicopathological characteristics. T, N, M, stage, age, and RiskScore could be considered as independent prognostic factors in the univariate Cox independent prognostic analysis (p < 0.05) (Fig. 7a). Next, the multivariate Cox independent prognostic analysis showed that the p values of age, stage, and RiskScore were less than 0.05, which could be regarded as independent prognostic factors for BRCA (Fig. 7b). Moreover, a nomogram was constructed for clinical utilization. The C-index of the nomogram based on age, stage, and RiskScore was 0.778, and the slopes of the calibration curves for the nomogram at 1, 3, and 5 years were close to 1, revealing that the prediction of this nomogram was accurate (Fig. 7c, d). At the same time, DCA curves also suggested that the net benefit of the nomogram was greater than that of the risk model (Fig. 7e).
Correlation between the risk model and the tumor microenvironment
Through a series of approaches of ESTIMATE and CIBERSORT, the relationship between the risk model and the tumor microenvironment was also investigated. The ESTIMATE results revealed that immune scores and ESTIMATE scores between the high- and low-risk groups were notably different (p < 0.05) (Fig. 8a). Furthermore, CIBERSORT was applied to calculate the proportions of 22 types of immune cells in 561 BRCA samples (HIGH = 273, LOW = 288) after eliminating samples with p > 0.05. The boxplot of the rank-sum test indicated that 13 types of immune cells (CD8 T cells, naive B cells, follicular helper T cells, M0, M1, M2 macrophages, activated memory CD4 T cells, monocytes, neutrophils, naive CD4 T cells, activated mast cells, resting dendritic cells, and memory B cells) were different between the 2 risk groups (Fig. 8b). Moreover, the risk model genes were positively correlated with B cells but negatively correlated with M0 macrophages (Fig. 8c).
Besides, differences of 24 HLA genes as well as 9 immune checkpoint molecules in different risk groups were explored as well through rank-sum test. Results illustrated that 20 out of 24 HLA-related genes (HLA − DPA1, HLA − DQB1, HLA − DRB1, HLA − DRB6, HLA − DRB5, HLA − DMB, HLA − C, HLA − DQB2, HLA − J, HLA − H, HLA − F, HLA − E, HLA − DPB1, HLA − DPB2, HLA − DOA, HLA − DOB, HLA − DQA1, HLA − DQA2, HLA − DMA, and HLA − DRA) were differentially expressed between the two risk groups (p < 0.05) (Fig. 8d). Finally, the rank-sum test of nine immune checkpoint molecules revealed that the expression differences between the two risk groups of 8 immune checkpoint molecules (TIGIT, IDO1, LAG3, ICOS, PDCD1LG2, PDCD1, CD27, and CD274) were significant, indicating the therapeutic potential for BRCA by targeting the mechanisms controlling immune checkpoint expression (Fig. 8e).
SNV of risk model genes and relative expression levels of related genes in normal and primary tumors
Finally, the mutation rate of SNVs based on the “maftools” and the mRNA expression levels of 6 model genes in clinical BRCA samples were investigated. The waterfall diagram suggested that a total of 41 samples were altered in at least one model gene, which accounted for 74.55%, and FREM1 was the most mutated model gene with a frequency of 29% followed by TNN (20%) and COL17A1 (16%) (Fig. 9a). To further directly validate the expressions of these model genes in BRCA tissues, we assessed the expression levels of these genes in BRCA tissues and normal tissues by qRT‒PCR, and the results showed that except for CD1C, the other five genes had lower mRNA levels in tumor tissues than in normal tissues (Fig. 9b).
Discussion
In recent years, RNA modification has become a research hotspot. M1A is an important posttranscriptional modification of RNA [14, 45]. Many studies have proven that m1A is closely related to the tumor immune response [18, 46]. There are currently approximately 2570 m1A modification sites validated in humans [47], but little is known about the relationship between m1A modification and BRCA.
In recent years, bioinformatics methods have been widely used in breast cancer research. For example, the expression, somatic mutation, copy-number variation, and biological function of pyroptosis-related genes in breast cancer were evaluated based on the TCGA-BRCA dataset [48]. Yang et al. [35] used the WGCNA method and ssGSEA Z-score to predict survival and risk stratification in triple-negative breast cancer. A prognostic signature based on 6 fatty acid metabolism-related genes relevant to OS was generated using Lasso Cox hazards regression analysis in the TCGA dataset and was validated in two external cohorts [49]. In this study, a prognostic model was constructed by 6 m1A-related genes (MEOX1, COL17A1, FREM1, CD1C, TNN, and SLIT3) screened by univariate Cox analysis and LASSO regression analysis.
Considering that breast cancer is intrinsically heterogeneous and different intrinsic subtypes are associated with distinct biological features and clinical outcomes. By comparing the risk scores for different intrinsic subtypes of breast cancer, it was found that the risk scores were well differentiated among different subtypes. Some studies have found that Luminal A and Luminal B may have differences in clinical diagnosis [50], and the risk scores of the two also had significant differences, which preliminarily proves the effectiveness of the study. Moreover, risk stratification survival analysis for each subtype was carried out as well. The results showed that the prognostic model had good predictive ability in the prognosis of Luminal A and Luminal B patients with BRCA. Meanwhile, correlation analysis between risk models and clinical factors was conducted. Except for the N-stage, other clinicopathological features had a significant correlation with risk scores. Although, the significant correlation between risk genes MEOX1, COL17A1, and lymph-node metastasis in triple-negative breast cancer patients has been reported [51, 52]. However, these studies did not involve the specific mechanism of m1A regulation, which is not inconsistent with our conclusions. Although univariate analysis has shown that lymph-node (N) status was associated with OS, further multivariate analysis has shown that it was not sufficient to participate as an independent prognostic factor in the construction of m6A-related nomograms, which was also similar to our findings [53]. We speculated that the relevant mechanism of m1A had less influence on the lymph-node metastasis process of breast cancer patients.
Studies have shown that high levels of MEOX1 were an independent prognostic factor for non-small cell lung cancer (NSCLC), and it could regulate cell proliferation and colony formation in vitro, making it a potential therapeutic target for NSCLC [54]. Yodsurang V mentioned that COL17A1 was a novel p53 transcriptional target in BRCA that inhibited cell migration and invasion and was positively associated with prognosis, and the expression level of COL17A1 mRNA in both primary and metastatic BRCA tissues was significantly reduced, which was consistent with our findings [55]. FREM1 was mainly involved in cellular metabolism and immune cell infiltration. The results of immunohistochemical (IHC) and immunofluorescence (IF) showed that the expression of FREM1 in BRCA tissue was significantly reduced as shown in the current study, and low FREM1 expression was an independent prognostic factor for BRCA [56]. The study by Zhang et al. [57] demonstrated that SLIT3 was a potential tumor suppressor in lung adenocarcinoma. And meanwhile, the results of IHC in a study of BRCA showed that SLIT3 expression was lower than that in normal tissues [58], exhibiting the same expression patterns in this study. Therefore, we believe that these genes may be involved in the prognosis of breast cancer. In this work, the C-index of the m1A-related nomogram was calculated to be 0.7782541, indicating that the prediction of the nomogram model was accurate. We performed a decision curve analysis on the risk model and nomogram, and compared the prediction efficiency of the simple risk model and the model after adding clinical factors (M stage). The results showed that the latter can better predict the survival of patients.
It is noteworthy that the DEGs between the high-m1A and low-m1A risk groups and the low-m1A risk groups which may be attributed to the fact that the role of m1A modification in tumors is heterogeneous. The repressive impact of m1A on translation is probably due to its scarcity in cytosolic mRNAs [17, 59]. For the m1A eraser genes ALKBH1 and ALKBH3, it was suggested that the mRNA expression of MFAP2 and the methylation modification of m1A were increased in colorectal cancer when ALKBH1 was silenced [60]. The depletion of ALKBH3 enhances the decay of Aurora A mRNA and inhibits its translation [61]. Similarly, the expression of key genes relevant to the ErbB and mTOR pathways could also be inhibited by ALKBH3 in gastrointestinal cancer [62]. On the other hand, overexpression of TRM6/TRM61 mRNA as m1A writer genes was detected in highly invasive glioblastoma multiforme, which reduced PKCα [59]. Moreover, it was found that the expression of DEGs in hepatocellular carcinoma patients with different m1A methylation modification modes was mostly regulated, which was similar to our results. It was indicated that the inhibition of m1A methylation on gene expression may play an important role in BRCA.
A large number of studies have also shown that immune infiltration is associated with tumor prognosis. Tumors with a large amount of CD8+ T-cell infiltration, M1 macrophages, and plasma cells in the tumor microenvironment seem to have a better prognosis [63,64,65,66,67]. Higher levels of M0 and M2 macrophages and lower levels of CD8+ T cells in the tumor microenvironment are associated with poorer prognosis [68, 69]. In our study, risk model genes had a strong negative correlation with M0 macrophages and a strong positive correlation with B cells, which has proven the finding of Zhu [69]. A large number of studies have proven that HLA family genes are closely related to immunotherapy. HLA genes are essential for T lymphocyte activation and antigen presentation [70]. Low HLA-E expression is associated with better overall survival in endometrial cancer [71]. This study found that among the 24 HLA family genes, except HLA-G, HLA-L, HLA-B, and HLA-A, the remaining genes were significantly differentially expressed between the high- and low-risk groups.
Immune checkpoint blockade shows better therapeutic response in many tumor treatments [72]. We therefore analyzed the differential expression of immune checkpoints between the high-risk and low-risk groups. Except for HAVCR2, other immune checkpoints were differentially expressed between the high- and low-risk groups. Our findings suggest that BRCA may be particularly sensitive to combination checkpoint blockade therapy. Studies have shown that high LAG3 expression can induce EGFR-TKI and gefitinib resistance, as well as anti-PD-1 therapy resistance [73]. There are also studies, suggesting that ICOS activation may enhance the effects of inhibitory checkpoint blockade [74]. Ostroumov et al. [75] identified TIGIT as a potential target of immune checkpoint combination therapy by transcriptome analysis. In recent years, numerous studies have shown that cancer cells expressing CD274 may have an impact on regulatory T cells in the tumor microenvironment [76]. PDCD1 is closely associated with TMB, MSI, and immune cell infiltration, and can be used as a prognostic marker in various cancers [77]. A new finding suggested that IDO1 promotes GC metastasis and may be a promising target for GC anticancer therapy [78]. Hence, these immune checkpoints may offer new directions for breast cancer treatment.
Finally, we examined the mRNA expression levels of m1A-related genes in breast cancer tissues and normal breast tissues. Except for CD1C, other genes had lower mRNA levels in tumor tissues than in normal tissues. Studies have discovered that over-expression of MEOX2 promoted apoptosis through inhibiting the PI3K/Akt pathway in laryngeal cancer cells [79]. A study by Feiyu Mao et al. demonstrated that high expression of COL17A1 is a marker for predicting poor prognosis in pancreatic cancer and promoting tumor progression through the NF-κB pathway [80]. Another study demonstrated that elevated FREM1 expression in breast cancer is a marker of favorable prognosis and high levels of immune infiltration [56].
However, this study also has limitations. We only verified the mRNA expression of the genes and RIP-qPCR and western blot experiments of six m1A methylation-related key genes, especially the CD1C gene, should be completed in a follow-up study. In addition, the exploration of the original cohort data was not involved in this study and required further investigation [58]. Clinical experiments and in vivo and in vitro experiments are required to validate the correlation between m1A modification and BRCA, which could make our findings more sound and solid.
In conclusion, an m1A RNA methylation regulator-related prognostic model containing six genes (MEOX1, COL17A1, FREM1, CD1C, TNN, and SLIT3) was constructed, and the clinical correlation analysis and construction of the nomogram based on the prognostic model were conducted to provide a theoretical reference for individual counseling and clinical preventive intervention in BRCA. In addition, the prognostic gene expression had significant correlations with M0 macrophages and naive B cells. Various immune checkpoint molecules (ICOS, TIGIT, etc.) that were differentially expressed in the two risk groups might be considered potential therapeutic targets in BRCA. Moreover, mutations in FREM1 and TNN as well as the m1A RNA methylation regulator YTHDF1 occurred in the BRCA process. In the future, we will continue to carry out experimental verification.
Data availability
The data that support the findings of this study are available on request from the corresponding author.
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We would like to thank the R language, researchers, and study participants for their contributions.
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This work was supported by grants from the National Natural Science Foundation of China Youth Project (81802479), Guizhou Provincial Department of Health Project (gzwjkj2019-1-124), and Guizhou Provincial Department of Science and Technology Project (Qianke He Foundation [2020] 1Y343).
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Li, L., Yang, W., Jia, D. et al. Establishment of a N1-methyladenosine-related risk signature for breast carcinoma by bioinformatics analysis and experimental validation. Breast Cancer 30, 666–684 (2023). https://doi.org/10.1007/s12282-023-01458-1
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DOI: https://doi.org/10.1007/s12282-023-01458-1