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Cancer Survival Analysis using RNA Sequencing and Clinical Data

机译:使用RNA测序和临床数据的癌症存活分析

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Survival outcomes were assessed in cancer patients from whom cancer tissue was analyzed with Illumina Hi-Seq ribonucleic acid (RNA) sequencing (RNA-Seq) (accessible on National Cancer Institute Genomic Data Commons (GDC) and The Cancer Genome Atlas (TCGA)). Cancer-relevant genes with the most significant correlations with the clinical outcome of overall survival were assessed in Kaplan Meier survival analysis plots. In addition, clinical variables as well as the interaction of clinical variables and cancer relevant genes were assessed in survival analysis. Results show that TP53, BRCA1, NBN, MADIL1, and EP300 were significant predictors of overall survival for prostate cancer patients. While these genes and clinical variables (Gleason Score group and biochemical recurrence) were significant predictors of overall survival when assessed separately, the combination of gene levels along with Gleason score groups provided the most predictive power for overall survival. In this study, cancer-relevant genes predicted survival outcomes, although various genes may interact with genes currently known to contribute to cancer. These findings indicate that multiple cancer types should be assessed together to determine which genes are relevant for cancer in general and for specific cancer types. Future studies will assess all RNA sequencing results available on the Genomic Data Commons, including those not yet associated with cancer. These findings have implications for assessing gene-gene interactions and gene-environment interactions prostate cancer as well as for other types of cancer.
机译:用Illumina Hi-Seq核糖核酸(RNA-SEQ)分析癌组织(RNA-SEQ)的癌症组织(RNA-SEQ)的癌症患者中评估生存结果(在国家癌症学院基因组数据公共原(GDC)和癌症基因组地图集(​​TCGA)) 。在Kaplan Meier生存分析图中评估了癌症相关基因与总生存的临床结果中的相关性最显着相关。此外,在存活分析中评估了临床变量以及临床变量和癌症相关基因的相互作用。结果表明,TP53,BRCA1,NBN,Madil1和EP300是前列腺癌患者整体存活的重要预测因子。虽然这些基因和临床变量(GLEASEN得分组和生化复发)分别评估时的总体存活率是显着的预测因子,但基因水平与GLEASES评分组的组合提供了总体存活的最预测的力量。在这项研究中,癌症相关基因预测存活结果,尽管各种基因可以与目前已知有助于癌症的基因相互作用。这些发现表明,应共同评估多种癌症类型,以确定哪种基因与癌症一般和特异性癌症类型相关。未来的研究将评估基因组数据共享可获得的所有RNA测序结果,包括尚未与癌症相关的结果。这些发现对评估基因 - 基因相互作用和基因 - 环境相互作用前列腺癌以及其他类型的癌症有影响。

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