Identification of Prognostic Signature of Necroptosis-Related lncRNAs and Molecular Subtypes in Glioma

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Abstract

Background. In tumor progression and epigenetic regulation, long non-coding RNA (lncRNA) and necroptosis are crucial regulators. However, in glioma microenvironment, the role of necroptosis-related lncRNAs (NRLs) remains unknown. Method. In this study, the RNA-seq and clinical annotation of glioma patients were analyzed using the Cancer Genome Atlas (TCGA) and Chinese Glioma Genome Atlas (CGGA) databases. To investigate prognosis and tumor microenvironment of NRLs in gliomas, we conducted a prediction model based on the training cohort. The accuracy of the model was verified in the verification cohort. Results. A signature composed of 13 NRLs was identified, and all glioma patients were divided into two groups. We found that each group has unique survival outcomes, biological behaviors, and immune infiltrating status. The necroptosis-related lncRNA signature (NRLS) model was found to be an independent risk factor in multivariate Cox analysis. Immunosuppressive microenvironment was positively correlated with the high-risk group. Due to significantly different IC50 between risk groups, NRLS could be used as a guide for chemotherapeutic treatment. Further, the entire cohort was divided into two clusters depending on NRLs. Consensus clustering method and the risk scoring system were basically similar. Survival probability was higher in Cluster 2, while Cluster 1 has stronger immunologic infiltration. Conclusion. The predictive signature could be a prognostic factor independently and serve to detect the role of NRLs in glioma immunotherapy response.

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Zhang, G., Chen, R., Zhu, L., Ma, H., Tang, H., Shang, C., … Liu, J. (2022). Identification of Prognostic Signature of Necroptosis-Related lncRNAs and Molecular Subtypes in Glioma. Computational and Mathematical Methods in Medicine, 2022. https://doi.org/10.1155/2022/3440586

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