Department of Thoracic Surgery, Jinjiang Municipal Hospital, Quanzhou, Fujian Province 362200, China.
Department of Thoracic Surgery, The Second Clinical College of Fujian Medical University, Quanzhou, Fujian Province 362000, China.
Biomed Res Int. 2020 Dec 31;2020:8832739. doi: 10.1155/2020/8832739. eCollection 2020.
The acquisition of invasive tumor cell behavior is considered to be the cornerstone of the metastasis cascade. Thus, genetic markers associated with invasiveness can be stratified according to patient prognosis. In this study, we aimed to identify an invasive genetic trait and study its biological relevance in lung adenocarcinoma.
250 TCGA patients with lung adenocarcinoma were used as the training set, and the remaining 250 TCGA patients, 500 ALL TCGA patients, 226 patients with GSE31210, 83 patients with GSE30219, and 127 patients with GSE50081 were used as the verification data sets. Subtype classification of all TCGA lung adenocarcinoma samples was based on invasion-associated genes using the R package ConsensusClusterPlus. Kaplan-Meier curves, LASSO (least absolute contraction and selection operator) method, and univariate and multivariate Cox analysis were used to develop a molecular model for predicting survival.
As a consequence, two molecular subtypes for LUAD were first identified from all TCGA all data sets which were significant on survival time. C1 subtype with poor prognosis has higher clinical characteristics of malignancy, higher mutation frequency of KRAS and TP53, and a lower expression of immune regulatory molecules. 2463 differentially expressed invasion genes between C1 and C2 subtypes were obtained, including 580 upregulation genes and 1883 downregulation genes. Functional enrichment analysis found that upregulated genes were associated with the development of tumor pathways, while downregulated genes were more associated with immunity. Furthermore, 5-invasion gene signature was constructed based on 2463 genes, which was validated in four data sets. This signature divided patients into high-risk and low-risk groups, and the LUDA survival rate of the high-risk group is significantly lower than that of the low-risk group. Multivariate Cox analysis revealed that this gene signature was an independent prognostic factor for LUDA. Compared with other existing models, our model has a higher AUC.
In this study, two subtypes were identified. In addition, we developed a 5-gene signature prognostic risk model, which has a good AUC in the training set and independent validation set and is a model with independent clinical characteristics. Therefore, we recommend using this classifier as a molecular diagnostic test to assess the prognostic risk of patients with LUDA.
侵袭性肿瘤细胞行为的获得被认为是转移级联的基石。因此,可以根据患者的预后对与侵袭性相关的遗传标记进行分层。在这项研究中,我们旨在确定一种侵袭性遗传特征,并研究其在肺腺癌中的生物学相关性。
250 例 TCGA 肺腺癌患者作为训练集,其余 250 例 TCGA 患者、500 例 ALL TCGA 患者、226 例 GSE31210 患者、83 例 GSE30219 患者和 127 例 GSE50081 患者作为验证数据集。使用 R 包 ConsensusClusterPlus 根据与侵袭相关的基因对所有 TCGA 肺腺癌样本进行亚类分类。使用 Kaplan-Meier 曲线、LASSO(最小绝对收缩和选择算子)方法以及单变量和多变量 Cox 分析,开发用于预测生存的分子模型。
因此,首先从所有 TCGA 全数据集识别出两种 LUAD 分子亚型,这些亚型在生存时间上具有显著差异。C1 亚型预后不良,具有更高的临床恶性特征、更高的 KRAS 和 TP53 突变频率以及更低的免疫调节分子表达。在 C1 和 C2 亚型之间获得了 2463 个差异表达的侵袭基因,包括 580 个上调基因和 1883 个下调基因。功能富集分析发现,上调基因与肿瘤通路的发展有关,而下调基因与免疫的关系更为密切。此外,基于 2463 个基因构建了 5 个侵袭基因特征,在四个数据集进行了验证。该特征将患者分为高危和低危组,高危组的 LUDA 生存率明显低于低危组。多变量 Cox 分析表明,该基因特征是 LUDA 的独立预后因素。与其他现有模型相比,我们的模型具有更高的 AUC。
在这项研究中,鉴定了两种亚型。此外,我们开发了一个 5 基因签名预后风险模型,该模型在训练集和独立验证集中具有良好的 AUC,并且是具有独立临床特征的模型。因此,我们建议将该分类器用作分子诊断测试,以评估 LUDA 患者的预后风险。