College of Bioinformatics Science and Technology, Harbin Medical University, China.
Mol Oncol. 2023 Nov;17(11):2472-2490. doi: 10.1002/1878-0261.13499. Epub 2023 Aug 8.
High heterogeneity in genome and phenotype of cancer populations made it difficult to apply population-based common driver genes to the diagnosis and treatment of cancer individuals. Characterizing and identifying the personalized driver mechanism for glioblastoma multiforme (GBM) individuals were pivotal for the realization of precision medicine. We proposed an integrative method to identify the personalized driver gene sets by integrating the profiles of gene expression and genetic alterations in cancer individuals. This method coupled genetic algorithm and random walk to identify the optimal gene sets that could explain abnormality of transcriptome phenotype to the maximum extent. The personalized driver gene sets were identified for 99 GBM individuals using our method. We found that genomic alterations in between one and seven driver genes could maximally and cumulatively explain the dysfunction of cancer hallmarks across GBM individuals. The driver gene sets were distinct even in GBM individuals with significantly similar transcriptomic phenotypes. Our method identified MCM4 with rare genetic alterations as previously unknown oncogenic genes, the high expression of which were significantly associated with poor GBM prognosis. The functional experiments confirmed that knockdown of MCM4 could significantly inhibit proliferation, invasion, migration, and clone formation of the GBM cell lines U251 and U118MG, and overexpression of MCM4 significantly promoted the proliferation, invasion, migration, and clone formation of the GBM cell line U87MG. Our method could dissect the personalized driver genetic alteration sets that are pivotal for developing targeted therapy strategies and precision medicine. Our method could be extended to identify key drivers from other levels and could be applied to more cancer types.
癌症群体的基因组和表型存在高度异质性,使得将基于人群的常见驱动基因应用于癌症个体的诊断和治疗变得困难。对胶质母细胞瘤(GBM)个体的特征和识别个性化驱动机制对于实现精准医学至关重要。我们提出了一种综合方法,通过整合癌症个体的基因表达谱和遗传改变谱来识别个性化的驱动基因集。该方法结合遗传算法和随机游走,以识别能够最大程度地解释转录组表型异常的最佳基因集。我们使用该方法为 99 名 GBM 个体鉴定了个性化的驱动基因集。我们发现,一个到七个驱动基因之间的基因组改变可以最大限度地、累积地解释 GBM 个体之间癌症特征的功能障碍。即使在转录组表型显著相似的 GBM 个体中,驱动基因集也是不同的。我们的方法鉴定了具有罕见遗传改变的 MCM4 作为先前未知的致癌基因,其高表达与 GBM 预后不良显著相关。功能实验证实,敲低 MCM4 可显著抑制 U251 和 U118MG 两种 GBM 细胞系的增殖、侵袭、迁移和克隆形成,而过表达 MCM4 可显著促进 U87MG 细胞系的增殖、侵袭、迁移和克隆形成。我们的方法可以剖析对制定靶向治疗策略和精准医学至关重要的个性化驱动遗传改变集。我们的方法可以扩展到从其他水平识别关键驱动因素,并可应用于更多的癌症类型。