Department of Radiology, Shengjing Hospital of China Medical University, Shenyang, China.
Department of Nephrology, The First Affiliated Hospital of China Medical University, Shenyang, China.
Oncol Res. 2023 Dec 28;32(2):393-407. doi: 10.32604/or.2023.031134. eCollection 2023.
Advanced LUAD shows limited response to treatment including immune therapy. With the development of sequencing omics, it is urgent to combine high-throughput multi-omics data to identify new immune checkpoint therapeutic response markers. Using GSE72094 (n = 386) and GSE31210 (n = 226) gene expression profile data in the GEO database, we identified genes associated with lung adenocarcinoma (LUAD) death using tools such as "edgeR" and "maftools" and visualized the characteristics of these genes using the "circlize" R package. We constructed a prognostic model based on death-related genes and optimized the model using LASSO-Cox regression methods. By calculating the cell death index (CDI) of each individual, we divided LUAD patients into high and low CDI groups and examined the relationship between CDI and overall survival time by principal component analysis (PCA) and Kaplan-Meier analysis. We also used the "ConsensusClusterPlus" tool for unsupervised clustering of LUAD subtypes based on model genes. In addition, we collected data on the expression of immunomodulatory genes and model genes for each cohort and performed tumor microenvironment analyses. We also used the TIDE algorithm to predict immunotherapy responses in the CDI cohort. Finally, we studied the effect of PRKCD on the proliferation and migration of LUAD cells through cell culture experiments. The study utilized the TCGA-LUAD cohort (n = 493) and identified 2,901 genes that are differentially expressed in patients with LUAD. Through KEGG and GO enrichment analysis, these genes were found to be involved in a wide range of biological pathways. The study also used univariate Cox regression models and LASSO regression analyses to identify 17 candidate genes that were best associated with mortality prognostic risk scores. By comparing the overall survival (OS) outcomes of patients with different CDI values, it was found that increased CDI levels were significantly associated with lower OS rates. In addition, the study used unsupervised cluster analysis to divide 115 LUAD patients into two distinct clusters with significant differences in OS timing. Finally, a prognostic indicator called CDI was established and its feasibility as an independent prognostic indicator was evaluated by Cox proportional risk regression analysis. The immunotherapy efficacy was more sensitive in the group with high expression of programmed cell death models. Relationship between programmed cell death (PCD) signature models and drug reactivity. After evaluating the median inhibitory concentration (IC50) of various drugs in LUAD samples, statistically significant differences in IC50 values were found in cohorts with high and low CDI status. Specifically, Gefitinib and Lapatinib had higher IC50 values in the high-CDI cohort, while Olaparib, Oxaliplatin, SB216763, and Axitinib had lower values. These results suggest that individuals with high CDI levels are sensitive to tyrosine kinase inhibitors and may be resistant to conventional chemotherapy. Therefore, this study constructed a gene model that can evaluate patient immunotherapy by using programmed cell death-related genes based on muti-omics. The CDI index composed of these programmed cell death-related genes reveals the heterogeneity of lung adenocarcinoma tumors and serves as a prognostic indicator for patients.
高级 LUAD 对包括免疫疗法在内的治疗反应有限。随着测序组学的发展,迫切需要结合高通量多组学数据来识别新的免疫检查点治疗反应标志物。我们使用 GEO 数据库中的 GSE72094(n=386)和 GSE31210(n=226)基因表达谱数据,使用“edgeR”和“maftools”等工具识别与肺腺癌(LUAD)死亡相关的基因,并使用“circlize”R 包可视化这些基因的特征。我们基于死亡相关基因构建了一个预后模型,并使用 LASSO-Cox 回归方法对模型进行了优化。通过计算每个个体的细胞死亡指数(CDI),我们将 LUAD 患者分为高 CDI 和低 CDI 组,并通过主成分分析(PCA)和 Kaplan-Meier 分析检查 CDI 与总生存时间之间的关系。我们还使用“ConsensusClusterPlus”工具基于模型基因对 LUAD 亚型进行无监督聚类。此外,我们为每个队列收集了免疫调节基因和模型基因的表达数据,并进行了肿瘤微环境分析。我们还使用 TIDE 算法预测 CDI 队列中的免疫治疗反应。最后,我们通过细胞培养实验研究了 PRKCD 对 LUAD 细胞增殖和迁移的影响。该研究利用 TCGA-LUAD 队列(n=493),鉴定了 2901 个在 LUAD 患者中差异表达的基因。通过 KEGG 和 GO 富集分析,发现这些基因参与了广泛的生物学途径。该研究还使用单因素 Cox 回归模型和 LASSO 回归分析,鉴定了 17 个与死亡率预后风险评分最佳相关的候选基因。通过比较不同 CDI 值患者的总生存(OS)结局,发现 CDI 水平升高与 OS 率降低显著相关。此外,该研究使用无监督聚类分析将 115 名 LUAD 患者分为两个具有显著不同 OS 时间的不同集群。最后,建立了一个称为 CDI 的预后指标,并通过 Cox 比例风险回归分析评估了其作为独立预后指标的可行性。在表达程序性细胞死亡模型较高的组中,免疫治疗效果更敏感。程序性细胞死亡(PCD)模型与药物反应的关系。在评估 LUAD 样本中各种药物的中浓度抑制(IC50)值后,在 CDI 状态较高和较低的队列中发现 IC50 值存在统计学显著差异。具体来说,吉非替尼和拉帕替尼在高 CDI 组中的 IC50 值较高,而奥拉帕利、奥沙利铂、SB216763 和阿昔替尼的 IC50 值较低。这些结果表明,CDI 水平较高的个体对酪氨酸激酶抑制剂敏感,可能对常规化疗有耐药性。因此,本研究基于多组学构建了一个可以利用程序性细胞死亡相关基因评估患者免疫治疗的基因模型。由这些程序性细胞死亡相关基因组成的 CDI 指数揭示了肺腺癌肿瘤的异质性,并作为患者的预后指标。