Key Laboratory Experimental Teratology of the Ministry of Education, Department of Biochemistry and Molecular Biology, School of Basic Medical Sciences, Cheeloo College of Medicine, Shandong University, Jinan, Shandong, 250012, China.
Department of Infectious Disease, Central Hospital Affiliated to Shandong First Medical University, Jinan, Shandong, 250013, China.
J Cancer Res Clin Oncol. 2023 Oct;149(13):11351-11368. doi: 10.1007/s00432-023-05000-w. Epub 2023 Jun 28.
Lung adenocarcinoma (LUAD) seriously threatens people's health worldwide. Programmed cell death (PCD) plays a critical role in regulating LUAD growth and metastasis as well as in therapeutic response. However, currently, there is a lack of integrative analysis of PCD-related signatures of LUAD for accurate prediction of prognosis and therapeutic response.
The bulk transcriptome and clinical information of LUAD were obtained from TCGA and GEO databases. A total of 1382 genes involved in regulating 13 various PCD patterns (apoptosis, necroptosis, pyroptosis, ferroptosis, cuproptosis, netotic cell death, entotic cell death, lysosome-dependent cell death, parthanatos, autophagy-dependent cell death, oxeiptosis, alkaliptosis and disulfidptosis) were included in the study. Weighted gene co-expression network analysis (WGCNA) and differential expression analysis were performed to identify PCD-associated differential expression genes (DEGs). An unsupervised consensus clustering algorithm was used to explore the potential subtypes of LUAD based on the expression profiles of PCD-associated DEGs. Univariate Cox regression analysis, Least Absolute Shrinkage and Selection Operator (LASSO) regression, Random Forest (RF) analysis and stepwise multivariate Cox analysis were performed to construct a prognostic gene signature. The "oncoPredict" algorithm was utilized for drug-sensitive analysis. GSVA and GSEA were utilized to perform function enrichment analysis. MCPcounter, quanTIseq, Xcell and ssGSEA algorithms were used for tumor immune microenvironment analysis. A nomogram incorporating PCDI and clinicopathological characteristics was established to predict the prognosis of LUAD patients.
Forty PCD-associated DEGs related to LUAD were obtained by WGCNA analysis and differential expression analysis, followed by unsupervised clustering to identify two LUAD molecular subtypes. A programmed cell death index (PCDI) with a five-gene signature was established by machine learning algorithms. LUAD patients were then divided into a high PCDI group and a low PCDI group using the median PCDI as a cutoff. Survival and therapeutic analysis revealed that the high PCDI group had a poor prognosis and was more sensitive to targeted drugs but less sensitive to immunotherapy compared to the low PCDI group. Further enrichment analysis showed that B cell-related pathways were significantly downregulated in the high PCDI group. Accordingly, the decreased tumor immune cell infiltration and the lower tumor tertiary lymphoid structure (TLS) scores were also found in the high PCDI group. Finally, a nomogram with reliable predictive performance PCDI was constructed by incorporating PCDI and clinicopathological characteristics, and a user-friendly online website was established for clinical reference ( https://nomogramiv.shinyapps.io/NomogramPCDI/ ).
We performed the first comprehensive analysis of the clinical relevance of genes regulating 13 PCD patterns in LUAD and identified two LUAD molecular subtypes with distinct PCD-related gene signature which indicated differential prognosis and treatment sensitivity. Our study provided a new index to predict the efficacy of therapeutic interventions and the prognosis of LUAD patients for guiding personalized treatments.
肺腺癌(LUAD)严重威胁着全球人类的健康。程序性细胞死亡(PCD)在调节 LUAD 的生长和转移以及治疗反应方面起着关键作用。然而,目前对于 LUAD 的 PCD 相关特征缺乏综合分析,无法准确预测预后和治疗反应。
从 TCGA 和 GEO 数据库中获取 LUAD 的批量转录组和临床信息。共纳入了 1382 个参与调节 13 种不同 PCD 模式(细胞凋亡、坏死性凋亡、细胞焦亡、铁死亡、铜死亡、坏死性细胞死亡、内噬性细胞死亡、溶酶体依赖性细胞死亡、Parthanatos、自噬依赖性细胞死亡、氧化细胞死亡、碱细胞死亡和二硫细胞死亡)的基因。通过加权基因共表达网络分析(WGCNA)和差异表达分析,确定与 PCD 相关的差异表达基因(DEGs)。基于 PCD 相关 DEGs 的表达谱,采用无监督共识聚类算法探索 LUAD 的潜在亚型。单因素 Cox 回归分析、最小绝对收缩和选择算子(LASSO)回归、随机森林(RF)分析和逐步多因素 Cox 分析用于构建预后基因特征。利用“oncoPredict”算法进行药物敏感性分析。GSVA 和 GSEA 用于功能富集分析。MCPcounter、quanTIseq、Xcell 和 ssGSEA 算法用于肿瘤免疫微环境分析。建立包含 PCDI 和临床病理特征的列线图,以预测 LUAD 患者的预后。
通过 WGCNA 分析和差异表达分析获得了与 LUAD 相关的 40 个 PCD 相关 DEGs,随后进行无监督聚类以鉴定出两种 LUAD 分子亚型。通过机器学习算法建立了一个包含五个基因的程序性细胞死亡指数(PCDI)。然后,通过中位数 PCDI 作为截止值,将 LUAD 患者分为高 PCDI 组和低 PCDI 组。生存和治疗分析表明,高 PCDI 组的预后较差,对靶向药物更敏感,但对免疫治疗的敏感性较低。进一步的富集分析表明,高 PCDI 组的 B 细胞相关通路显著下调。相应地,在高 PCDI 组中发现肿瘤免疫细胞浸润减少,肿瘤三级淋巴结构(TLS)评分较低。最后,通过纳入 PCDI 和临床病理特征构建了具有可靠预测性能的 PCDI 列线图,并建立了一个用户友好的在线网站供临床参考(https://nomogramiv.shinyapps.io/NomogramPCDI/)。
我们首次全面分析了调节 13 种 PCD 模式的基因在 LUAD 中的临床相关性,并确定了两种具有不同 PCD 相关基因特征的 LUAD 分子亚型,其预示着不同的预后和治疗敏感性。我们的研究提供了一个新的指标来预测治疗干预的疗效和 LUAD 患者的预后,为指导个体化治疗提供了依据。