A novel DNA repair‐related nomogram predicts survival in low‐grade gliomas

Guanzhang Li(Capital Medical University), Fan Wu(Capital Medical University), Fan Zeng(Capital Medical University), You Zhai(Capital Medical University), Yuemei Feng(Capital Medical University), Yuanhao Chang(Capital Medical University), Di Wang(Capital Medical University), Tao Jiang(Capital Medical University), Wei Zhang(Capital Medical University)
CNS Neuroscience & Therapeutics
October 16, 2020
Cited by 27Open Access
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Abstract

AIMS: We aimed to create a tumor recurrent-based prediction model to predict recurrence and survival in patients with low-grade glioma. METHODS: This study enrolled 291 patients (188 in the training group and 103 in the validation group) with clinicopathological information and transcriptome sequencing data. LASSO-COX algorithm was applied to shrink predictive factor size and build a predictive recurrent signature. GO, KEGG, and GSVA analyses were performed for function annotations of the recurrent signature. The calibration curves and C-Index were assessed to evaluate the nomogram's performance. RESULTS: This study found that DNA repair functions of tumor cells were significantly enriched in recurrent low-grade gliomas. A predictive recurrent signature, built by the LASSO-COX algorithm, was significantly associated with overall survival and progression-free survival in low-grade gliomas. Moreover, function annotations analysis of the predictive recurrent signature exhibited that the signature was associated with DNA repair functions. The nomogram, combining the predictive recurrent signature and clinical prognostic predictors, showed powerful prognostic ability in the training and validation groups. CONCLUSION: An individualized prediction model was created to predict 1-, 2-, 3-, 5-, and 10-year survival and recurrent rate of patients with low-grade glioma, which may serve as a potential tool to guide postoperative individualized care.


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