South African Bioinformatics Institute and SAMRC Unit for Bioinformatics Capacity Development, University of the Western Cape, Bellville, 7535, Western Cape, 7530, South Africa.
BMC Cancer. 2018 Apr 3;18(1):377. doi: 10.1186/s12885-018-4103-5.
Gene expression can be employed for the discovery of prognostic gene or multigene signatures cancer. In this study, we assessed the prognostic value of a 35-gene expression signature selected by pathway and machine learning based methods in adjuvant therapy-linked glioblastoma multiforme (GBM) patients from the Cancer Genome Atlas.
Genes with high expression variance was subjected to pathway enrichment analysis and those having roles in chemoradioresistance pathways were used in expression-based feature selection. A modified Support Vector Machine Recursive Feature Elimination algorithm was employed to select a subset of these genes that discriminated between rapidly-progressing and slowly-progressing patients.
Survival analysis on TCGA samples not used in feature selection and samples from four GBM subclasses, as well as from an entirely independent study, showed that the 35-gene signature discriminated between the survival groups in all cases (p<0.05) and could accurately predict survival irrespective of the subtype. In a multivariate analysis, the signature predicted progression-free and overall survival independently of other factors considered.
We propose that the performance of the signature makes it an attractive candidate for further studies to assess its utility as a clinical prognostic and predictive biomarker in GBM patients. Additionally, the signature genes may also be useful therapeutic targets to improve both progression-free and overall survival in GBM patients.
基因表达可用于发现预后基因或多基因特征癌症。在这项研究中,我们评估了通过基于途径和机器学习的方法选择的 35 个基因表达特征在癌症基因组图谱中辅助治疗相关胶质母细胞瘤(GBM)患者中的预后价值。
对高表达方差的基因进行途径富集分析,选择那些在化学放射抵抗途径中起作用的基因进行基于表达的特征选择。采用改进的支持向量机递归特征消除算法选择一组能够区分快速进展和缓慢进展患者的基因子集。
对未用于特征选择的 TCGA 样本以及来自四个 GBM 亚型和一个完全独立研究的样本进行生存分析,结果表明,35 个基因特征在所有情况下均能区分生存组(p<0.05),并且无论亚型如何,都能准确预测生存。在多变量分析中,该特征独立于其他考虑因素预测无进展生存期和总生存期。
我们认为该特征的性能使其成为进一步研究的有吸引力的候选者,以评估其作为 GBM 患者临床预后和预测生物标志物的效用。此外,该特征基因也可能是改善 GBM 患者无进展生存期和总生存期的有用治疗靶点。