Department of Gynaecology, the 2nd Afliated Hospital of Kunming Medical University, Kunming, Yunnan, China.
J Ovarian Res. 2021 Sep 15;14(1):120. doi: 10.1186/s13048-021-00866-1.
Ovarian cancer(OC) is the gynecological tumor with the highest mortality rate, effective biomarkers are of great significance in improving its prognosis. In recent years, there have been many studies on alternative splicing (AS) events, and the role of AS events in tumor has become a focus of attention.
Data were downloaded from the TCGA database and Univariate Cox regression analysis was performed to determine AS events associated with OC prognosis.Eight prognostic models of OC were constructed in R package, and the accuracy of the models were evaluated by the time-dependent receiver operating characteristic (ROC) curves.Eight types of survival curves were drawn to evaluate the differences between the high and low risk groups.Independent prognostic factors of OC were analyzed by single factor independent analysis and multi-factor independent prognostic analysis.Again, Univariate Cox regression analysis was used to analyze the relationship between splicing factors(SF) and AS events, and Gene Ontology(GO) and Kyoto Encyclopedia of Genes and Genomes(KEGG) enrichment analysis were performed on OS-related SFs to understand the pathways.
Univariate Cox regression analysis showed that among the 15,278 genes, there were 31,286 overall survival (OS) related AS events, among which 1524 AS events were significantly correlated with OS. The area under the time-dependent receiver operating characteristic curve (AUC) of AT and ME were the largest and the RI was the smallest,which were 0.757 and 0.68 respectively. The constructed models have good value for the prognosis assessment of OC patients. Among the eight survival curves, AP was the most significant difference between the high and low risk groups, with a P value of 1.61e - 1.The results of single factor independent analysis and multi-factor independent prognostic analysis showed that risk score calculated by the model and age could be used as independent risk factors.According to univariate COX regression analysis,109 SFs were correlated with AS events and adjusted in two ways: positive and negative.
SFs and AS events can directly or indirectly affect the prognosis of OC patients. It is very important to find effective prognostic markers to improve the survival rate of OC.
卵巢癌(OC)是死亡率最高的妇科肿瘤,有效的生物标志物对改善其预后具有重要意义。近年来,替代剪接(AS)事件的研究很多,AS 事件在肿瘤中的作用成为研究热点。
从 TCGA 数据库下载数据,采用单因素 Cox 回归分析确定与 OC 预后相关的 AS 事件。使用 R 软件包构建 8 种 OC 预后模型,通过时间依赖性接受者操作特征(ROC)曲线评估模型的准确性。绘制 8 种生存曲线,评估高低风险组之间的差异。通过单因素独立分析和多因素独立预后分析对 OC 的独立预后因素进行分析。再次,使用单因素 Cox 回归分析分析剪接因子(SF)与 AS 事件的关系,对与 OS 相关的 SF 进行基因本体(GO)和京都基因与基因组百科全书(KEGG)富集分析,了解通路。
单因素 Cox 回归分析显示,在 15278 个基因中,有 31286 个总生存(OS)相关的 AS 事件,其中 1524 个 AS 事件与 OS 显著相关。AT 和 ME 的时间依赖性 ROC 曲线下面积(AUC)最大,RI 最小,分别为 0.757 和 0.68。构建的模型对 OC 患者的预后评估具有良好的价值。在 8 种生存曲线中,AP 高低风险组之间差异最显著,P 值为 1.61e-1。单因素独立分析和多因素独立预后分析结果显示,模型计算的风险评分和年龄可以作为独立危险因素。根据单因素 COX 回归分析,109 个 SF 与 AS 事件相关,并以两种方式进行调整:阳性和阴性。
SF 和 AS 事件可以直接或间接影响 OC 患者的预后。寻找有效的预后标志物对提高 OC 患者的生存率非常重要。