Departments of Neurosurgery, Peking Union Medical College Hospital, Chinese Academy of Medical Sciences and Peking Union Medical College, Beijing, China.
Cancer Med. 2020 Dec;9(24):9266-9281. doi: 10.1002/cam4.3530. Epub 2020 Oct 13.
The prognosis of lower-grade glioma (LGG) differs from that of other grades gliomas. Although lots of studies on the prognostic biomarkers of LGG have been reported, few have significant clinical impact. Alternative splicing (AS) events can affect cell function by splicing precursor mRNA. Therefore, a prognostic model for LGG based on AS events are important to establish.
RNA sequencing, clinical, and AS event data of 510 LGG patients from the TCGA database were downloaded. Univariate Cox regression analysis was used to screen out prognostic-related AS events and LASSO regression and multivariate Cox regression were used to establish prognostic risk scores for patients in the training set (n = 340). After validation, a nomogram model was established based on the AS signature and clinical information, which was able to predict 1-, 3-, and 5-year survival rates. Finally, considering the regulatory effect of splicing factors (SFs) on AS events, an AS-SF regulatory network was analyzed.
The most common AS event was exon skipping and the least was mutually exclusive exons. All the seven AS events were related to the prognosis of LGG patients, regardless of whether they were separated or considered as a whole event (integrated AS event), and the integrated AS event had the most significant correlation. After further inclusion of clinical indicators, eight factors were screened out: age, new event, KPS, WHO grade, treatment, integrated AS signature, IDH1 and TP53 mutation status, and a nomogram model was established. The study also constructed an AS-SF regulatory network.
The AS events and clinical factors that can predict the prognosis of LGG patients were screened, and a prognostic prediction model was established. The results of this study can play an important role in clinical work to better evaluate the prognosis of patients and impact treatment options.
低级别胶质瘤(LGG)的预后与其他级别胶质瘤不同。尽管已经有很多关于 LGG 预后生物标志物的研究,但很少有研究具有显著的临床影响。选择性剪接(AS)事件可以通过剪接前体 mRNA 来影响细胞功能。因此,建立基于 AS 事件的 LGG 预后模型非常重要。
从 TCGA 数据库中下载了 510 例 LGG 患者的 RNA 测序、临床和 AS 事件数据。采用单因素 Cox 回归分析筛选出与预后相关的 AS 事件,然后采用 LASSO 回归和多因素 Cox 回归建立训练集(n=340)患者的预后风险评分。验证后,根据 AS 特征和临床信息建立列线图模型,能够预测 1、3 和 5 年生存率。最后,考虑剪接因子(SFs)对 AS 事件的调控作用,分析了 AS-SF 调控网络。
最常见的 AS 事件是外显子跳跃,最少的是互斥外显子。所有七种 AS 事件都与 LGG 患者的预后有关,无论它们是分开的还是作为一个整体事件(综合 AS 事件)考虑,综合 AS 事件相关性最强。进一步纳入临床指标后,筛选出 8 个因素:年龄、新发事件、KPS、WHO 分级、治疗、综合 AS 特征、IDH1 和 TP53 突变状态,并建立了一个列线图模型。该研究还构建了一个 AS-SF 调控网络。
筛选出了可以预测 LGG 患者预后的 AS 事件和临床因素,并建立了预后预测模型。本研究的结果可以在临床工作中发挥重要作用,以更好地评估患者的预后并影响治疗选择。