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A GLO10 score for the prediction of prognosis in high grade gliomas.


ABSTRACT: Gliomas are the most common lethal brain tumours and remain great heterogeneity in terms of histopathology and clinical outcomes. Among them, glioblastomas are the most aggressive tumours that lead to a median of less than one-year survival in patients. Despite the little improvement of in diagnosis and treatments for last decades, there is an urgent need for prognostic markers to distinguish high- and low-risk patients before treatment.Here, we generated a list of genes associated with glioblastoma progressions and then performed a comprehensive statistical modelling strategy to derive a 10-gene (GLO10) score from genome wide expression profiles of a large glioblastoma cohort (n=844). Our study demonstrated that the GLO10 score could successfully distinguish high- and low-risk patients with glioblastomas regardless their traditional pathological factors. Validated in four independent cohorts, the utility of GLO10 score could provide clinicians a robust prognostic prediction tool to assess risk levels upfront treatments.

SUBMITTER: Chen F 

PROVIDER: S-EPMC5642606 | biostudies-literature | 2017 Sep

REPOSITORIES: biostudies-literature

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A GLO10 score for the prediction of prognosis in high grade gliomas.

Chen Feng F   Peng Peng P   Zhou Yi Y   Yang Zhen-Yu ZY   Zhang Hai-Quan HQ   Ao Xiang-Sheng XS   Zhou Da-Quan DQ   Xiang Chun-Xiang CX  

Oncotarget 20170810 41


Gliomas are the most common lethal brain tumours and remain great heterogeneity in terms of histopathology and clinical outcomes. Among them, glioblastomas are the most aggressive tumours that lead to a median of less than one-year survival in patients. Despite the little improvement of in diagnosis and treatments for last decades, there is an urgent need for prognostic markers to distinguish high- and low-risk patients before treatment.Here, we generated a list of genes associated with glioblas  ...[more]

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