Journal of Medical Biochemistry (Jan 2023)

Prognosis and clinical features analysis of EMT-related signature and tumor Immune microenvironment in glioma

  • Xiao Zheng,
  • Liu Xiaoyan,
  • Mo Yixiang,
  • Chen Weibo,
  • Zhang Shizhong,
  • Yu Yingwei,
  • Weng Huiwen

DOI
https://doi.org/10.5937/jomb0-39234
Journal volume & issue
Vol. 42, no. 1
pp. 122 – 137

Abstract

Read online

Background: As the most common primary malignant intracranial tumor, glioblastoma has a poor prognosis with limited treatment options. It has a high propensity for recurrence, invasion, and poor immune prognosis due to the complex tumor microenvironment. Methods: Six groups of samples from four datasets were included in this study. We used consensus ClusterPlus to establish two subgroups by the EMT-related gene. The difference in clinicopathological features, genomic characteristics, immune infiltration, treatment response and prognoses were evaluated by multiple algorithms. By using LASSO regression, multi-factor Cox analysis, stepAIC method, a prognostic risk model was constructed based on the final screened genes. Results: The consensusClusterPlus analyses revealed two subtypes of glioblastoma (C1 and C2), which were characterized by different EMT-related gene expression patterns. C2 subtype with the worse prognosis had the more malignant clinical and pathology manifestations, higher Immune infiltration and tumor-associated molecular pathways scores, and poorer response to treatment. Additionally, our EMT-related genes risk prediction model can provide valuable support for clinical evaluations of glioma. Conclusions: The assessment system and prediction model displayed good performance in independent prognostic risk assessment and individual patient treatment response prediction. This can help with clinical treatment decisions and the development of effective treatments.

Keywords