4.5 Article

A Bioinformatics-Based Analysis of an Anoikis-Related Gene Signature Predicts the Prognosis of Patients with Low-Grade Gliomas

Journal

BRAIN SCIENCES
Volume 12, Issue 10, Pages -

Publisher

MDPI
DOI: 10.3390/brainsci12101349

Keywords

anoikis; low-grade glioma; signature; prognosis; immune microenvironment

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Funding

  1. General project of the Wuxi Commission of Health [MS201933, T202120]

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In this study, anoikis-related genes were used to identify subtypes and construct a prognostic model for low-grade glioma (LGG) patients. The study also revealed differences in the immune microenvironment and pathways between different subtypes. The risk score was identified as an independent prognostic factor in LGG patients and was associated with poor prognosis. The high-risk group showed higher immune cell infiltration, tumor mutation load, and therapeutic response to immune checkpoint blockers.
Low-grade glioma (LGG) is a highly aggressive disease in the skull. On the other hand, anoikis, a specific form of cell death induced by the loss of cell contact with the extracellular matrix, plays a key role in cancer metastasis. In this study, anoikis-related genes (ANRGs) were used to identify LGG subtypes and to construct a prognostic model for LGG patients. In addition, we explored the immune microenvironment and enrichment pathways between different subtypes. We constructed an anoikis-related gene signature using the TCGA (The Cancer Genome Atlas) cohort and investigated the differences between different risk groups in clinical features, mutational landscape, immune cell infiltration (ICI), etc. Kaplan-Meier analysis showed that the characteristics of ANRGs in the high-risk group were associated with poor prognosis in LGG patients. The risk score was identified as an independent prognostic factor. The high-risk group had higher ICI, tumor mutation load (TMB), immune checkpoint gene expression, and therapeutic response to immune checkpoint blockers (ICB). Functional analysis showed that these high-risk and low-risk groups had different immune statuses and drug sensitivity. Risk scores were used together with LGG clinicopathological features to construct a nomogram, and Decision Curve Analysis (DCA) showed that the model could enable patients to benefit from clinical treatment strategies.

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