Pang Chun, Gu Yuan, Ding Yuechao, Ma Chao, Yv Wei, Wang Qian, Meng Bo
Department of Hepato-Biliary-Pancreatic, Zhengzhou University, Zhengzhou, Henan Province, China.
Medicine (Baltimore). 2018 Dec;97(50):e13297. doi: 10.1097/MD.0000000000013297.
This study aimed to identify the underlying mechanisms in pancreatic cancer (PC) carcinogenesis and those as potential prognostic biomarkers, which can also be served as new therapeutic targets of PC.
Differentially expressed genes (DEGs) were identified between PC tumor tissues and adjacent normal tissue samples from a public GSE62452 dataset, followed by functional and pathway enrichment analysis. Then, protein-protein interaction (PPI) network was constructed and prognosis-related genes were screened based on genes in the PPI network, before which prognostic gene-related miRNA regulatory network was constructed. Functions of the prognostic gene in the network were enriched before which Kaplan-Meier plots were calculated for significant genes. Moreover, we predicted related drug molecules based on target genes in the miRNA regulatory network. Furthermore, another independent GSE60979 dataset was downloaded to validate the potentially significant genes.
In the GSE62452 dataset, 1017 significant DEGs were identified. Twenty-six important prognostic-related genes were found using multivariate Cox regression analysis. Through pathway enrichment analysis and miRNA regulatory analysis, we found that the 5 genes, such as Interleukin 22 Receptor Subunit Alpha 1 (IL22RA1), BCL2 Like 1 (BCL2L1), STAT1, MYC Proto-Oncogene (MYC), and Signal Transducer And Activator Of Transcription 2 (STAT2), involved in the Jak-STAT signaling pathway were significantly associated with prognosis. Moreover, the expression change of these 5 genes was further validated using another microarray dataset. Additionally, we identified camptothecin as an effective drug for PC.
IL22RA1, BCL2L1, STAT1, MYC, and STAT2 involved in the Jak-STAT signaling pathway may be significantly associated with prognosis of PC.
本研究旨在确定胰腺癌(PC)致癌作用的潜在机制以及作为潜在预后生物标志物的机制,这些机制也可作为PC的新治疗靶点。
从公开的GSE62452数据集中鉴定PC肿瘤组织与相邻正常组织样本之间的差异表达基因(DEG),随后进行功能和通路富集分析。然后构建蛋白质-蛋白质相互作用(PPI)网络,并基于PPI网络中的基因筛选预后相关基因,在此之前构建预后基因相关的miRNA调控网络。对网络中预后基因的功能进行富集,在此之前计算显著基因的Kaplan-Meier曲线。此外,我们基于miRNA调控网络中的靶基因预测相关药物分子。此外,下载另一个独立的GSE60979数据集以验证潜在的显著基因。
在GSE62452数据集中,鉴定出1017个显著的DEG。使用多变量Cox回归分析发现了26个重要的预后相关基因。通过通路富集分析和miRNA调控分析,我们发现参与Jak-STAT信号通路的白细胞介素22受体亚基α1(IL22RA1)、BCL2样1(BCL2L1)、信号转导和转录激活因子1(STAT1)、原癌基因MYC(MYC)和信号转导和转录激活因子2(STAT2)这5个基因与预后显著相关。此外,使用另一个微阵列数据集进一步验证了这5个基因的表达变化。此外,我们确定喜树碱是PC的有效药物。
参与Jak-STAT信号通路的IL22RA1、BCL2L1、STAT1、MYC和STAT2可能与PC的预后显著相关。