Construction and validation of a prognostic risk model for breast cancer based on protein expression

被引:0
作者
Bo Huang
Xujun Zhang
Qingyi Cao
Jianing Chen
Chenhong Lin
Tianxin Xiang
Ping Zeng
机构
[1] Zhejiang University School of Medicine,Department of Gynecology and Obstetrics, The First Affiliated Hospital
[2] Zhejiang University School of Medicine,State Key Laboratory for Diagnosis and Treatment of Infectious Diseases National Clinical Research Center for Infectious Diseases, National Medical Center for Infectious Diseases, Collaborative Innovation Center for D
[3] Zhejiang University School of Medicine,Department of Gastroenterology, Sir Run Run Shaw Hospital
[4] The First Affiliated Hospital of Nanchang University,Department of Hospital Infection Control
来源
BMC Medical Genomics | / 15卷
关键词
Breast cancer; Proteomics; TCPA; TCGA; Prognostic risk model;
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学科分类号
摘要
Breast cancer (BRCA) is the primary cause of mortality among females globally. The combination of advanced genomic analysis with proteomics characterization to construct a protein prognostic model will help to screen effective biomarkers and find new therapeutic directions. This study obtained proteomics data from The Cancer Proteome Atlas (TCPA) dataset and clinical data from The Cancer Genome Atlas (TCGA) dataset. Kaplan–Meier and Cox regression analyses were used to construct a prognostic risk model, which was consisted of 6 proteins (CASPASE7CLEAVEDD198, NFKBP65-pS536, PCADHERIN, P27, X4EBP1-pT70, and EIF4G). Based on risk curves, survival curves, receiver operating characteristic curves, and independent prognostic analysis, the protein prognostic model could be viewed as an independent factor to accurately predict the survival time of BRCA patients. We further validated that this prognostic model had good predictive performance in the GSE88770 dataset. The expression of 6 proteins was significantly associated with the overall survival of BRCA patients. The 6 proteins and encoding genes were differentially expressed in normal and primary tumor tissues and in different BRCA stages. In addition, we verified the expression of 3 differential proteins by immunohistochemistry and found that CDH3 and EIF4G1 were significantly higher in breast cancer tissues. Functional enrichment analysis indicated that the 6 genes were mainly related to the HIF-1 signaling pathway and the PI3K-AKT signaling pathway. This study suggested that the prognosis-related proteins might serve as new biomarkers for BRCA diagnosis, and that the risk model could be used to predict the prognosis of BRCA patients.
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