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Integrative genomic analysis facilitates precision strategies for glioblastoma treatment.


ABSTRACT: Glioblastoma (GBM) is the most common form of malignant primary brain tumor with a dismal prognosis. Currently, the standard treatments for GBM rarely achieve satisfactory results, which means that current treatments are not individualized and precise enough. In this study, a multiomics-based GBM classification was established and three subclasses (GPA, GPB, and GPC) were identified, which have different molecular features both in bulk samples and at single-cell resolution. A robust GBM poor prognostic signature (GPS) score model was then developed using machine learning method, manifesting an excellent ability to predict the survival of GBM. NVP-BEZ235, GDC-0980, dasatinib and XL765 were ultimately identified to have subclass-specific efficacy targeting patients with a high risk of poor prognosis. Furthermore, the GBM classification and GPS score model could be considered as potential biomarkers for immunotherapy response. In summary, an integrative genomic analysis was conducted to advance individual-based therapies in GBM.

SUBMITTER: Chen D 

PROVIDER: S-EPMC9589211 | biostudies-literature | 2022 Nov

REPOSITORIES: biostudies-literature

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Integrative genomic analysis facilitates precision strategies for glioblastoma treatment.

Chen Danyang D   Liu Zhicheng Z   Wang Jingxuan J   Yang Chen C   Pan Chao C   Tang Yingxin Y   Zhang Ping P   Liu Na N   Li Gaigai G   Li Yan Y   Wu Zhuojin Z   Xia Feng F   Zhang Cuntai C   Nie Hao H   Tang Zhouping Z  

iScience 20221004 11


Glioblastoma (GBM) is the most common form of malignant primary brain tumor with a dismal prognosis. Currently, the standard treatments for GBM rarely achieve satisfactory results, which means that current treatments are not individualized and precise enough. In this study, a multiomics-based GBM classification was established and three subclasses (GPA, GPB, and GPC) were identified, which have different molecular features both in bulk samples and at single-cell resolution. A robust GBM poor pro  ...[more]

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