Computational and Mathematical Methods in Medicine
Volume 2022 (2022), Article ID 5422698, 32 pages
https://doi.org/10.1155/2022/5422698
Cuproptosis Combined with lncRNAs Predicts the Prognosis and Immune Microenvironment of Breast Cancer
Correspondence should be addressed to Dong Wang and Hao Pan
Received 8 August 2022; Accepted 10 September 2022; Published 29 September 2022
Academic Editor: Ilias Elmouki
Copyright © 2022 Liangping Zhang et al. This is an open access article distributed under the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
Abstract
Breast cancer (BC), the most common cancer in women, is caused by the uncontrolled proliferation of mammary epithelial cells under the action of a variety of carcinogenic factors. Cuproptosis-related targets have been found to be closely associated with breast cancer development. TCGA obtained 1226 tumor samples, 1073 clinical data, and 37 lncRNAs during univariate Cox multivariate analysis. We used nonnegative matrix factoring (NMF) agglomeration to spot thirty-three potential molecular subsets with totally different cuproptosis-related lncRNA expression patterns. The least absolute shrinkage and selection operator (LASSO) formula and variable Cox multivariate analysis were not used to construct the best prognostic model. The variations in neoplasm mutation burden and factor gene ontology (GO) and gene set enrichment analysis (GSEA) within the high- and low-risk teams were analyzed, and therefore, the potential mechanism of the development of carcinoma was analyzed. We created a prognostic profile consisting of nineteen cuproptosis-related genes (NFE2L2, LIPT1, LIPT2, DLD, etc.) and their connected targets. The correlation between tumor mutational burden (TMB) and clinical manifestations of tumors demonstrates the importance of high- and low-expression bunch data on the incidence of clinical manifestations of tumors. The area under the curve (AUC) shows moderate prophetic power for copper mortality. GO enrichment analysis showed that immunorelated responses were enriched. Correlation analysis of immune cells showed that pathology could play an important role in the prevalence and prognosis of tumors, and there were variations in immune cells between the probable and low-risk groups. Our study suggests that the prognostic characteristic genes associated with cuproptosis can be used as new biomarkers to predict the prognosis of breast cancer patients. In addition, we found that immunotherapy may play a key role in breast cancer treatment regimens. Levels of immune-associated cells and pathways vary significantly among risk groups of breast cancer patients.
1. Introduction
With the improvement in medical treatment, the death rate for breast cancer has dropped dramatically [1, 2]. A range of treatments have been developed to combat the onset and progression of cancer, such as brachytherapy for treating various malignancies [3] and local breast surgery for metastatic breast cancer [4]. RNA therapy for breast cancer plays a significant regulatory role in cell-targeted therapy by increasing or silencing the expression of specific proteins [5] and includes emerging immunotherapy strategies, such as intratumoral therapy and antitumor vaccines [6]. Despite the rapid development of treatments, sometimes, a single treatment fails to achieve the desired effect. Moreover, for triple-negative breast cancer, which is more likely to relapse and metastasize and has a low survival rate, there are a lack of clear targets and limited therapeutic interventions [7]. Therefore, it is particularly important to find more effective therapeutic schemes and regulatory targets for breast cancer. In cancer development and progression, long noncoding RNAs play a crucial role [8]. It has been found that the long noncoding RNA Neat1 promotes growth and metastasis of breast cancer in some studies [9]. In triple-negative breast cancer (TNBC), long noncoding RNAs (lncRNAs) increase invasion, migration, tumor growth, and decrease apoptosis [10]. There has been evidence that abnormally expressed lncRNAs are associated with poor prognoses in TNBC tissues. Due to these specific characteristics, lncRNAs have emerged as novel diagnostic and prognostic biomarkers for TNBC treatment.
We know that the nucleus contains copper and that cancer cells contain higher levels of copper than normal cells, but the mechanisms are poorly studied, and the functional significance of more copper and the underlying mechanisms are still poorly understood [11]. Copper metabolism-related targets have been reported as potential breast cancer therapeutic targets, since they stimulate angiogenesis and metastasis and are essential to cell proliferation and survival [12]. The main method of cuproptosis depends on the buildup of living copper ions. Copper ions directly bind to the lipoacylated elements of the TCA cycle, resulting in the aggregation and disorder of those proteins and blocking the TCA cycle, thus leading to macromolecule cytotoxic stress and death [13, 14]. FDX1 is a key regulator of cuproptosis and an upstream regulator of protein lipoylation [15]. For breast cancer patients, immunotherapy cannot be ignored, and immune checkpoint blockade therapies have been used in a variety of cancers [16, 17]. Metals are known to be important for metabolic activity; however, once excess metals exceed the flexibility of cells to bind inert compounds, they become toxic [18, 19]. Some data mining studies of cancer patients have shown upregulation of the mitochondrial copper-chaperone and cochaperone proteins COX17 and SCO2 [20]. The regulatory mechanism of the copper-related pathway is important for breast cancer development.
In this study, we hope to find a completely unique lncRNA feature that can accurately predict the prognosis of tumor patients, and at the same time, we will analyze the possible role of cuproptosis-related lncRNA as a tumor therapeutic target to find a key signaling pathway for the treatment of breast cancer.
2. Materials and Methods
2.1. Collection and Grouping of Breast Cancer Data
The RNA-sequencing and clinical data of The Cancer Genome Atlas (TCGA) BRCA dataset were downloaded from TCGA (https://tcga-data.nci.nih.gov/tcga/). The cohort consisted of 1098 carcinoma patients with relevant organic phenomenon profiles and clinical characteristics, and 25 patients were then excluded because of incomplete transcriptomic and clinical information. The remaining data with complete follow-up information () was included in our dataset for more analysis.
2.2. Analysis of High and Low lncRNA Expression Groups
First, we distinguished lncRNAs from total RNA. Through correlation analysis, we obtained cuproptosis-related lncRNAs, and univariate Cox regression analysis was applied to obtain lncRNA-related prognoses. Moreover, the downloaded carcinoma samples were divided into 2 groups in a step with the expression level of lncRNAs through nonnegative matrix factorization (NMF) clustering, namely, the lncRNA high-expression cluster and the lncRNA low-expression cluster. Heat maps of the high expression cluster and therefore the low expression cluster were used to analyze the correlation of clinical manifestations of the samples. Then, the ESTIMATE algorithm and CIBERSORT were applied to analyze the differences in the immune microenvironment (stromal score, immune score, ESTIMATE score, and tumor purity) and immune cell infiltration between group 1 and group 2.
2.3. Construction of the Model and the Nomogram
The least absolute shrinkage and selection operator (LASSO) and multivariate Cox regression analyses are used in this analysis; we obtained a prognostic model based on 16 lncRNAs. At the same time, heat maps were drawn to show the expression in 1073 patients. Furthermore, to predict the prognosis more efficiently, a nomogram was used. Before the nomogram, we ran univariate Cox regression and multivariate Cox regression analysis to determine which clinical characteristics could be used as an influential factor.
2.4. Tumor Mutation Analysis
In the model, patient groups with high-expression breast cancer and those with low-expression breast cancer showed a difference. The gene mutation burden of groups with high expression was calculated. Mutation counts were clearly observed in both the high-expression and low-expression groups, and the relationship between mutations and risk was investigated.
2.5. Functional Enrichment Analysis
Using differentially expressed genes (DEGs) of the different levels of risk groups, we ran gene ontology (GO) to identify potential pathways. GO analysis showed significant enrichment of immune-related molecules. They included body substance immune reactions, modulating cell surface receptor signal pathway substances, and receptor-mediated signal pathway immune reactions.
2.6. Immune Cell Infiltration and Immune Function Analysis
Based on the GO results, we explored more immune-related studies. CIBERSORT was used to calculate the abundance of immune cells, and a single-sample gene set enrichment analysis (ssGSEA) was used to compare immune function between different levels of risk individuals. A gene set enrichment analysis (GSEA) was performed to analyze the differences in pathways between the two groups.
2.7. Statistical Analyses
R (version 4.2.0 https://cran.r-project.org/bin/windows/base/) and Perl (version 5.30.0.1; https://www.perl.org/get.html) programming languages were used to extract and process clinical information and RNA sequences. The cutoff value for differentially expressed FRGs was set at , and a false was used. The test and chi-square test were used to calculate whether the results were significantly different.
3. Results and Discussion
3.1. Nonnegative Matrix Factorization (NMF) Clustering
It can be seen from the figure that there were differences between high-expression clusters and low-expression clusters (Figures 1(a) and 1(b)). High lncRNA expression clusters showed significant differences in ESTIMATE score, immune score, stromal score, and tumor purity atmospheres. The ESTIMATE score of high-expression cluster patients was significantly higher than one of low expression cluster patients (Figure 1(c)), and the immune score of high-expression cluster patients was significantly higher than one of low-expression cluster patients (Figure 1(d)). The stromal score of the patients with high expression was significantly higher than that of the patients with low expression (Figure 1(e)), and tumor purity was significantly lower in patients with high expression than in patients with low expression (Figure 1(f)). We compared the high expression and low expression of lncRNA, indicating important variations in tumor-infiltrating immune cells between the risk cluster and the low-risk cluster. Comparing the two groups shows that there is a difference in the proportion of infiltrating immune cells (Figure 1(g)). There were differences in immune cell content and the microenvironment between patients with high lncRNA expression and patients with low-risk lncRNAs, so there was a high correlation between immune cells (Figure 1(h)).