Liu Yonghong, Lyu Guizhen
Dongguan Key Laboratory of Clinical Medical Test Diagnostic Technology for Oncology / Dongguan Molecular Diagnostic Technology and Infectious Disease Medical Test Engineering Research Center, Dong-guan Labway Medical Testing Laboratory Co., Ltd., Dongguan, 523429, China
Curr Med Chem. 2024 Sep 6. doi: 10.2174/0109298673314864240829064622.
The PANoptosis pathway is a recently identified mechanism of cellular death that involves the interaction and synchronization among cellular pyroptosis, apoptosis, and necrosis. More and more evidence suggests that PANoptosis is involved in the development and treatment of cancer. However, a comprehensive understanding of the influence of PANoptosis genes on prognostic value, tumor microenvironment characteristics, and therapeutic outcomes in patients with ovarian cancer (OC) remains incomplete.
The present work was designed to devise a PANoptosis signature for OC prognosis and explore its potential molecular function.
For this study, we obtained RNA sequencing and clinical data for ovarian cancer from the Cancer Genome Atlas (TCGA) and the GSE32062 cohort. Somatic variants of PANoptosis-related genes (PRGs) in OC were analyzed using GSCA. TCGA-OC and GSE32062 were used to construct training and validation cohorts for the model. Differential expression and correlation analyses were performed following the screening of genes with prognostic ability using univariate Cox analysis. Least Absolute Shrinkage nd Selection Operator (LASSO) regression was performed to construct PRG signature based on genes that were differentially expressed and correlated with prognosis. CIBER-SORT and ESTIMATE were used to analyze the relationship between the PRGs signature and immune infiltration. TIDE was used to analyze the relationship between the PRG signature and immune checkpoint genes. OncoPredict was used to analyze the relationship between the PRG signature and the drug sensitivity. Quantitative real-time PCR (qRT-PCR) was used to validate the expression of PRGs in OC.
The PRG signature was constructed using three prognostic genes (AIM2, APAF1, and ZBP1) in both TCGA-OC. The results showed that the PRGs signature had an AUC of 0.521, 0.546, and 0.598 in TCGA-OC and 0.620, 0.586, and 0.579 in GSE32062 to predict to predict OS at 1-, 3-, and 5-year intervals. Furthermore, a higher PRG signature risk score was significantly associated with shorter OS (HR = 1.693, 95% CI: 1.303 - 2.202, p = 8.34 × 10^-5 in TCGA-OC and HR = 1.63, 95% CI: 1.13 - 2.35, p = 0.009 in GSE32062). The risk score was identified as the independent prognostic factor for OC. Patients categorized according to their risk score exhibited notable variations in immune status, response to immunotherapy, and sensitivity to drugs. AIM2, APAF1, and ZBP1 were significantly aberrantly expressed in OC cell lines.
The PRG signature has the potential to serve as a prognostic predictor for OC and to provide new insights into OC treatment.
全程序性坏死途径是一种最近发现的细胞死亡机制,涉及细胞焦亡、凋亡和坏死之间的相互作用与同步。越来越多的证据表明,全程序性坏死参与癌症的发生发展及治疗。然而,对于全程序性坏死基因对卵巢癌(OC)患者预后价值、肿瘤微环境特征及治疗结果的影响,目前仍缺乏全面了解。
本研究旨在构建用于OC预后的全程序性坏死特征,并探索其潜在分子功能。
在本研究中,我们从癌症基因组图谱(TCGA)和GSE32062队列中获取了卵巢癌的RNA测序数据和临床数据。使用GSCA分析OC中全程序性坏死相关基因(PRGs)的体细胞变异。将TCGA-OC和GSE32062用于构建模型的训练和验证队列。在使用单变量Cox分析筛选具有预后能力的基因后,进行差异表达和相关性分析。采用最小绝对收缩和选择算子(LASSO)回归,基于差异表达且与预后相关的基因构建PRG特征。使用CIBER-SORT和ESTIMATE分析PRG特征与免疫浸润之间的关系。使用TIDE分析PRG特征与免疫检查点基因之间的关系。使用OncoPredict分析PRG特征与药物敏感性之间的关系。采用定量实时PCR(qRT-PCR)验证OC中PRGs的表达。
在TCGA-OC中,利用三个预后基因(AIM2、APAF1和ZBP1)构建了PRG特征。结果显示,PRG特征在TCGA-OC中预测1年、3年和5年总生存期(OS)的AUC分别为0.521、0.546和0.598,在GSE32062中分别为0.620、0.586和0.579。此外,较高的PRG特征风险评分与较短的OS显著相关(TCGA-OC中HR = 1.693,95%CI:1.303 - 2.202,p = 8.34×10^-5;GSE32062中HR = 1.63,95%CI:1.13 - 2.35,p = 0.009)。该风险评分被确定为OC的独立预后因素。根据风险评分分类的患者在免疫状态、免疫治疗反应和药物敏感性方面表现出显著差异。AIM2、APAF1和ZBP1在OC细胞系中显著异常表达。
PRG特征有潜力作为OC的预后预测指标,并为OC治疗提供新的见解。