JOURNAL ARTICLE

A Novel Glycolysis-Related Gene Signature Predicts Prognosis For CutaneousMelanoma

Lingjun ZhuLianghui ZhangYi ChenYiwen WangFeifei Kong

Year: 2022 Journal:   Combinatorial Chemistry & High Throughput Screening Vol: 26 (5)Pages: 965-978   Publisher: Bentham Science Publishers

Abstract

Background: There exists a lack of effective tools predicting prognosis for cutaneous melanoma patients. Glycolysis plays an essential role in the carcinogenesis process. Objective: : We intended to construct a new prognosis model for cutaneous melanoma. Method: Based on the data from TCGA database, we conducted univariate Cox regression analysis and identified prognostic glycolysis-related genes (GRGs). Meanwhile, GSE15605 dataset was used to identify differentially expressed genes (DEGs). The intersection of prognostic GRGs and DEGs was extracted for the subsequent multivariate Cox regression analysis. Results: A prognostic signature containing ten GRGs was built, and the TCGA cohort was classified into high and low risk subgroups based on risk score of each patient. K-M analysis manifested that the overall survival of high-risk group was statistically worse than that of low-risk group. Further study indicated that the risk-score could be used as an independent prognostic factor which effectively predicted the clinical prognosis in patients with different age, gender and stage. GO and KEGG enrichment analysis showed DEGs between high and low risk groups were enriched in immune-related functions and pathways. In addition, a significant difference existed between high and low risk groups in infiltration pattern of immune cell and expression levels of inhibitory immune checkpoint genes. Conclusion: A new glycolysis-related gene signature was established for identifying cutaneous melanoma patients with poor prognosis and formulating individualized treatment for them.

Keywords:
Oncology Proportional hazards model Melanoma Internal medicine KEGG Glycolysis Survival analysis Medicine Skin cancer Univariate Gene Multivariate statistics Cancer Biology Cancer research Gene expression Transcriptome Genetics Machine learning Computer science

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Citation History

Topics

Cancer Immunotherapy and Biomarkers
Health Sciences →  Medicine →  Oncology
Ferroptosis and cancer prognosis
Health Sciences →  Medicine →  Pulmonary and Respiratory Medicine
Melanoma and MAPK Pathways
Life Sciences →  Biochemistry, Genetics and Molecular Biology →  Molecular Biology
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