Prognostic Significance of Cuproptosis-Related Gene Signatures in Breast Cancer Based on Transcriptomic Data Analysis.
Zizhen ZhouJinhai DengTeng PanZhengjie ZhuXiulan ZhouChunxin LvHuanxin LiWeixiong PengBihai LinCuidan CaiHuijuan WangYufeng CaiFengxiang WeiGuanglin ZhouPublished in: Cancers (2022)
Breast cancer (BRCA) remains a serious threat to women's health, with the rapidly increasing morbidity and mortality being possibly due to a lack of a sophisticated classification system. To date, no reliable biomarker is available to predict prognosis. Cuproptosis has been recently identified as a new form of programmed cell death, characterized by the accumulation of copper in cells. However, little is known about the role of cuproptosis in breast cancer. In this study, a cuproptosis-related genes (CRGs) risk model was constructed, based on transcriptomic data with corresponding clinical information relating to breast cancer obtained from both the TCGA and GEO databases, to assess the prognosis of breast cancer by comprehensive bioinformatics analyses. The CRGs risk model was constructed and validated based on the expression of four genes (NLRP3, LIPT1, PDHA1 and DLST). BRCA patients were then divided into two subtypes according to the CRGs risk model. Furthermore, our analyses revealed that the application of this risk model was significantly associated with clinical outcome, immune infiltrates and tumor mutation burden (TMB) in breast cancer patients. Additionally, a new clinical nomogram model based on risk score was established and showed great performance in overall survival (OS) prediction, confirming the potential clinical significance of the CRGs risk model. Collectively, our findings revealed that the CRGs risk model can be a useful tool to stratify subtypes and that the cuproptosis-related signature plays an important role in predicting prognosis in BRCA patients.
Keyphrases
- breast cancer risk
- end stage renal disease
- data analysis
- single cell
- ejection fraction
- newly diagnosed
- gene expression
- chronic kidney disease
- poor prognosis
- genome wide
- mental health
- public health
- pregnant women
- prognostic factors
- wastewater treatment
- skeletal muscle
- machine learning
- adipose tissue
- rna seq
- long non coding rna
- deep learning
- binding protein
- insulin resistance
- cell cycle arrest
- pi k akt