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首页> 外文期刊>Cancer science. >Systematic profiling of alternative splicing signature reveals prognostic predictor for prostate cancer
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Systematic profiling of alternative splicing signature reveals prognostic predictor for prostate cancer

机译:替代剪接签名的系统分析显示出前列腺癌的预后预测因子

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Alternative splicing (AS) provides the primary mechanism for producing protein diversity. There is growing evidence that AS is involved in the development and progression of cancers. The rapid accumulation of high‐throughput sequencing technologies and clinical data sets offers an opportunity to systematically profile the relationship between mRNA variants and clinical outcomes. However, there is a lack of systematic analysis of AS in prostate cancer: Download RNA‐seq data and clinical information from The Cancer Genome Atlas (TCGA) data portal. Evaluate RNA splicing patterns by SpliceSeq and calculate splicing percentage (PSI) values. Different expressions were identified as differently expressed AS events (DEAs) based on PSI values. Bioinformatics methods were used for further analysis of DEAs and their splicing networks. Kaplan‐Meier, Cox proportional regression, and unsupervised cluster analysis were used to assess the correlation between DEAs and clinical characteristics. In total, 43?834 AS events were identified, of which 1628 AS events were differentially expressed. The parental genes of these DEAs played a significant role in the regulation of prostate cancer‐related processes. In total, 226 DEAs events were found to be associated with disease‐free survival. Four clusters of molecules with different survival modes were revealed by unsupervised cluster analysis of DEAs. AS events may be important determinants of prognosis and bio‐modulation in prostate cancer. In this study, we established strong prognostic predictors, discovered a splicing network that may be a potential mechanism, and provided further validated therapeutic targets.
机译:替代剪接(AS)提供了生产蛋白质多样性的主要机制。越来越多的证据表明癌症的发展和进展涉及。高通量测序技术和临床数据集的快速累积提供了系统地思考mRNA变体与临床结果之间的关系的机会。然而,与前列腺癌中缺乏系统分析:从癌症基因组地图集(​​TCGA)数据门户网站下载RNA-SEQ数据和临床信息。通过拼接评估RNA剪接模式并计算拼接百分比(PSI)值。根据PSI值确定不同的表达式作为事件(DEAS)的不同表达式。生物信息学方法用于进一步分析枯萎病和剪接网络。 Kaplan-Meier,Cox比例回归和无监督的聚类分析用于评估饮食和临床特征之间的相关性。鉴定了43℃,43. 834,其中差异表达了1628年。这些困难的父母基因在治疗前列腺癌相关过程中发挥了重要作用。共有226个糖菜的事件与无病生存有关。通过对枯萎的无常规的聚类分析揭示了四种具有不同存活模式的四种分子簇。由于事件可能是前列腺癌预后和生物调制的重要决定因素。在这项研究中,我们建立了强的预测预测因子,发现了一种可以是潜在机制的剪接网络,并提供了进一步验证的治疗目标。

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