Clinical and prognostic significance analysis of glycolysis-related genes in HNSCC

JOURNAL OF GENE MEDICINE(2024)

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摘要
BackgroundHead and neck squamous cell carcinoma (HNSCC) represents one of the most malignant cancers worldwide, with poor survival. Experimental evidence implies that glycolysis/hypoxia is associated with HNSCC. In this study, we aimed to construct a novel glycolysis-/hypoxia-related gene (GHRG) signature for survival prediction of HNSCC.MethodsA multistage screening strategy was used to establish the GHRG prognostic model by univariate/least absolute shrinkage and selection operator (LASSO)/step multivariate Cox regressions from The Cancer Genome Atlas cohort. A nomogram was constructed to quantify the survival probability. Correlations between risk score and immune infiltration and chemotherapy sensitivity were explored.ResultsWe established a 12-GHRG mRNA signature to predict the prognosis in HNSCC patients. Patients in the high-risk score group had a much worse prognosis. The predictive power of the model was validated by external HNSCC cohorts, and the model was identified as an independent factor for survival prediction. Immune infiltration analysis showed that the high-risk score group had an immunosuppressive microenvironment. Finally, the model was effective in predicting chemotherapeutic sensitivity.ConclusionsOur study demonstrated that the GHRG model is a robust prognostic tool for survival prediction of HNSCC. Findings of this work provide novel insights for immune infiltration and chemotherapy of HNSCC, and may be applied clinically to guide therapeutic strategies. Yuan et al. established and validated a 12-GHRG signature for the prognostic prediction of HNSCC, which has potential for use in clinical settings for convenient prognostic monitoring. Moreover, the GHRG model could predict the immune infiltrate features and chemotherapy drug sensitivities of HNSCC. image
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关键词
gene signature,glycolysis,HNSCC,hypoxia,prognosis
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