Chen Yuan, Xu Ruiyuan, Ruze Rexiati, Yang Jinshou, Wang Huanyu, Song Jianlu, You Lei, Wang Chengcheng, Zhao Yupei
Department of General Surgery, State Key Laboratory of Complex Severe and Rare Diseases, Peking Union Medical College Hospital, Chinese Academy of Medical Sciences, Peking Union Medical College, Beijing, 100023, People's Republic of China.
Cancer Cell Int. 2021 Jun 5;21(1):291. doi: 10.1186/s12935-021-01928-6.
Pancreatic cancer (PC) is a highly fatal and aggressive disease with its incidence and mortality quite discouraging. An effective prediction model is urgently needed for the accurate assessment of patients' prognosis to assist clinical decision-making.
Gene expression data and clinicopathological data of the samples were acquired from The Cancer Genome Atlas (TCGA), Genotype-Tissue Expression (GTEx), and Gene Expression Omnibus (GEO) databases. Differential expressed genes (DEGs) analysis, univariate Cox regression analysis, least absolute shrinkage and selection operator (LASSO) regression analysis, random forest screening and multivariate Cox regression analysis were applied to construct the risk signature. The effectiveness and independence of the model were validated by time-dependent receiver operating characteristic (ROC) curve, Kaplan-Meier (KM) survival analysis and survival point graph in training set, test set, TCGA entire set and GSE57495 set. The validity of the core gene was verified by immunohistochemistry and our own independent cohort. Meanwhile, functional enrichment analysis of DEGs between the high and low risk groups revealed the potential biological pathways. Finally, CMap database and drug sensitivity assay were utilized to identify potential small molecular drugs as the risk model-related treatments for PC patients.
Four histone modification-related genes were identified to establish the risk signature, including CBX8, CENPT, DPY30 and PADI1. The predictive performance of risk signature was validated in training set, test set, TCGA entire set and GSE57495 set, with the areas under ROC curve (AUCs) for 3-year survival were 0.773, 0.729, 0.775 and 0.770 respectively. Furthermore, KM survival analysis, univariate and multivariate Cox regression analysis proved it as an independent prognostic factor. Mechanically, functional enrichment analysis showed that the poor prognosis of high-risk population was related to the metabolic disorders caused by inadequate insulin secretion, which was fueled by neuroendocrine aberration. Lastly, a cluster of small molecule drugs were identified with significant potentiality in treating PC patients.
Based on a histone modification-related gene signature, our model can serve as a reliable prognosis assessment tool and help to optimize the treatment for PC patients. Meanwhile, a cluster of small molecule drugs were also identified with significant potentiality in treating PC patients.
胰腺癌(PC)是一种高度致命且侵袭性强的疾病,其发病率和死亡率令人沮丧。迫切需要一种有效的预测模型来准确评估患者的预后,以辅助临床决策。
从癌症基因组图谱(TCGA)、基因型-组织表达(GTEx)和基因表达综合数据库(GEO)获取样本的基因表达数据和临床病理数据。应用差异表达基因(DEG)分析、单变量Cox回归分析、最小绝对收缩和选择算子(LASSO)回归分析、随机森林筛选和多变量Cox回归分析来构建风险特征。通过时间依赖的受试者工作特征(ROC)曲线、Kaplan-Meier(KM)生存分析和训练集、测试集、TCGA全集和GSE57495集中的生存点图验证模型的有效性和独立性。通过免疫组织化学和我们自己的独立队列验证核心基因的有效性。同时,对高风险组和低风险组之间的DEG进行功能富集分析,揭示潜在的生物学途径。最后,利用CMap数据库和药物敏感性试验确定潜在的小分子药物作为PC患者风险模型相关的治疗方法。
确定了四个与组蛋白修饰相关的基因来建立风险特征,包括CBX8、CENPT、DPY30和PADI1。在训练集、测试集、TCGA全集和GSE57495集中验证了风险特征的预测性能,3年生存率的ROC曲线下面积(AUC)分别为0.773、0.729、0.775和0.770。此外,KM生存分析、单变量和多变量Cox回归分析证明其为独立的预后因素。从机制上讲,功能富集分析表明高风险人群的不良预后与胰岛素分泌不足引起的代谢紊乱有关,而神经内分泌异常加剧了这种紊乱。最后,确定了一组在治疗PC患者方面具有显著潜力的小分子药物。
基于与组蛋白修饰相关的基因特征,我们的模型可以作为一种可靠的预后评估工具,有助于优化PC患者的治疗。同时,还确定了一组在治疗PC患者方面具有显著潜力的小分子药物。