Lv Zhenyang, Lei Ting
The Second Affiliated Hospital of Dalian Medical University, Dalian, Liaoning, 116000, People's Republic of China.
BMC Cancer. 2020 Jan 27;20(1):56. doi: 10.1186/s12885-019-6462-y.
Lung adenocarcinoma (LUAD) is one of the most common cancer types, threatening the human health around the world. However, the high heterogeneity and complexity of LUAD limit the benefits of targeted therapies. This study aimed to identify the key prognosis impacting genes and relevant subtypes for LUAD.
We recognized significant mutations and prognosis-relevant genes based on the omics data of 515 LUAD samples from The Cancer Genome Atlas. Mutation significance was estimated by MutSigCV. Prognosis analysis was based on the cox proportional hazards regression (Coxph) model. Specifically, the Coxph model was combined with a causal regulatory network to help reveal which genes play master roles among numerous prognosis impacting genes. Based on expressional profiles of the master genes, LUAD patients were clustered into different sub-types by a consensus clustering method and the importance of master genes were further evaluated by random forest.
Significant mutations did not influence the prognosis directly. However, a collection of prognosis relevant genes were recognized, where 75 genes like GAPDH and GGA2 which are involved in mTOR signaling, lysosome or other key pathways are further identified as the master ones. Interestingly, the master gene expressions help separate LUAD patients into two sub-types displaying remarkable differences in expressional profiles, prognostic outcomes and genomic mutations in certain genes, like SMARCA4 and COL11A1. Meanwhile, the subtypes were re-discovered from two additional LUAD cohorts based on the top-10 important master genes.
This study can promote precision treatment of LUAD by providing a comprehensive description on the key prognosis-relevant genes and an alternative way to classify LUAD subtypes.
肺腺癌(LUAD)是最常见的癌症类型之一,威胁着全球人类健康。然而,LUAD的高度异质性和复杂性限制了靶向治疗的效果。本研究旨在识别影响LUAD预后的关键基因及相关亚型。
我们基于来自癌症基因组图谱的515例LUAD样本的组学数据识别显著突变和与预后相关的基因。通过MutSigCV评估突变显著性。预后分析基于Cox比例风险回归(Coxph)模型。具体而言,将Coxph模型与因果调控网络相结合,以帮助揭示在众多影响预后的基因中哪些基因起主要作用。基于主要基因的表达谱,通过一致性聚类方法将LUAD患者聚类为不同亚型,并通过随机森林进一步评估主要基因的重要性。
显著突变并未直接影响预后。然而,识别出了一组与预后相关的基因,其中75个基因如参与mTOR信号传导、溶酶体或其他关键途径的GAPDH和GGA2等被进一步确定为主要基因。有趣的是,主要基因的表达有助于将LUAD患者分为两个亚型,这两个亚型在表达谱、预后结果和某些基因(如SMARCA4和COL11A1)的基因组突变方面表现出显著差异。同时根据前10个重要的主要基因在另外两个LUAD队列中重新发现了这些亚型。
本研究通过全面描述关键的预后相关基因以及提供一种对LUAD亚型进行分类的替代方法,可促进LUAD的精准治疗。