Department of Urology, Sichuan Provincial People’s Hospital, School of Medicine, University of Electronic Science and Technology of China, Chengdu, China.
Department of Gastrointestinal Surgery, Sichuan Provincial People’s Hospital, University of Electronic Science and Technology of China, Chengdu, China.
Aging (Albany NY). 2024 Jun 10;16(11):10016-10032. doi: 10.18632/aging.205915.
A growing number of studies reveal that alternative splicing (AS) is associated with tumorigenesis, progression, and metastasis. Systematic analysis of alternative splicing signatures in renal cancer is lacking. In our study, we investigated the AS landscape of kidney renal clear cell carcinoma (KIRC) and identified AS predictive model to improve the prognostic prediction of KIRC. We obtained clinical data and gene expression profiles of KIRC patients from the TCGA database to evaluate AS events. The calculation results for seven types of AS events indicated that 46276 AS events from 10577 genes were identified. Next, we applied Cox regression analysis to identify 5864 prognostic-associated AS events. We used the Metascape database to verify the potential pathways of prognostic-associated AS. Moreover, we constructed KIRC prediction systems with prognostic-associated AS events by the LASSO Cox regression model. AUCs demonstrated that these prediction systems had excellent prognostic accuracy simultaneously. We identified 34 prognostic associated splicing factors (SFs) and constructed homologous regulatory networks. Furthermore, experiments were performed to validate the favorable effect of SFs FMR1 in KIRC. In conclusion, we overviewed AS events in KIRC and identified AS-based prognostic models to assist the survival prediction of KIRC patients. Our study may provide a novel predictive signature to improve the prognostic prediction of KIRC, which might facilitate KIRC patient counseling and individualized management.
越来越多的研究表明,可变剪接(AS)与肿瘤发生、进展和转移有关。系统分析肾细胞癌的可变剪接特征尚缺乏。在本研究中,我们研究了肾透明细胞癌(KIRC)的 AS 图谱,并确定了 AS 预测模型,以提高 KIRC 的预后预测。我们从 TCGA 数据库中获得了 KIRC 患者的临床数据和基因表达谱,以评估 AS 事件。七种 AS 事件的计算结果表明,从 10577 个基因中鉴定出了 46276 个 AS 事件。接下来,我们应用 Cox 回归分析来识别 5864 个与预后相关的 AS 事件。我们使用 Metascape 数据库来验证与预后相关的 AS 的潜在途径。此外,我们通过 LASSO Cox 回归模型,使用与预后相关的 AS 事件构建了 KIRC 预测系统。AUC 表明,这些预测系统同时具有出色的预后准确性。我们确定了 34 个与预后相关的剪接因子(SFs),并构建了同源调节网络。此外,还进行了实验来验证 SFs FMR1 在 KIRC 中的有利作用。总之,我们综述了 KIRC 中的 AS 事件,并确定了基于 AS 的预后模型,以协助 KIRC 患者的生存预测。我们的研究可能为提高 KIRC 的预后预测提供一个新的预测特征,这可能有助于 KIRC 患者的咨询和个体化管理。