...
首页> 外文期刊>Brazilian Journal of Medical and Biological Research >Differential gene expression profiles of hepatocellular carcinomas associated or not with viral infection
【24h】

Differential gene expression profiles of hepatocellular carcinomas associated or not with viral infection

机译:与病毒感染相关或不相关的肝细胞癌的差异基因表达谱

获取原文

摘要

Chronic hepatitis B (HBV) and C (HCV) virus infections are the most important factors associated with hepatocellular carcinoma (HCC), but tumor prognosis remains poor due to the lack of diagnostic biomarkers. In order to identify novel diagnostic markers and therapeutic targets, the gene expression profile associated with viral and non-viral HCC was assessed in 9 tumor samples by oligo-microarrays. The differentially expressed genes were examined using a z-score and KEGG pathway for the search of ontological biological processes. We selected a non-redundant set of 15 genes with the lowest P value for clustering samples into three groups using the non-supervised algorithm k-means. Fisher’s linear discriminant analysis was then applied in an exhaustive search of trios of genes that could be used to build classifiers for class distinction. Different transcriptional levels of genes were identified in HCC of different etiologies and from different HCC samples. When comparing HBV-HCC vs HCV-HCC, HBV-HCC/HCV-HCC vs non-viral (NV)-HCC, HBC-HCC vs NV-HCC, and HCV-HCC vs NV-HCC of the 58 non-redundant differentially expressed genes, only 6 genes (IKBKβ, CREBBP, WNT10B, PRDX6, ITGAV, and IFNAR1) were found to be associated with hepatic carcinogenesis. By combining trios, classifiers could be generated, which correctly classified 100% of the samples. This expression profiling may provide a useful tool for research into the pathophysiology of HCC. A detailed understanding of how these distinct genes are involved in molecular pathways is of fundamental importance to the development of effective HCC chemoprevention and treatment.
机译:慢性乙型肝炎(HBV)和丙型肝炎(HCV)感染是与肝细胞癌(HCC)相关的最重要因素,但是由于缺乏诊断性生物标志物,肿瘤的预后仍然很差。为了鉴定新的诊断标记和治疗靶标,通过寡微阵列在9个肿瘤样品中评估了与病毒性和非病毒性HCC相关的基因表达谱。使用z分数和KEGG途径检查差异表达的基因,以寻找本体生物学过程。我们选择了非冗余的15个具有最低P值的基因,以使用非监督算法k均值将样本分为三类。然后,费舍尔的线性判别分析被用于对三重基因的详尽搜索,这些基因可用于建立分类器以进行分类。在不同病因的HCC中以及从不同的HCC样品中鉴定出不同的基因转录水平。比较58个非冗余的HBV-HCC与HCV-HCC,HBV-HCC / HCV-HCC与非病毒(NV)-HCC,HBC-HCC与NV-HCC以及HCV-HCC与NV-HCC的差异表达的基因中,只有6个基因(IKBKβ,CREBBP,WNT10B,PRDX6,ITGAV和IFNAR1)与肝癌发生有关。通过组合三重奏,可以生成分类器,从而对100%的样本正确分类。该表达谱分析可以为研究HCC的病理生理学提供有用的工具。对这些不同基因如何参与分子途径的详细了解对于开发有效的HCC化学预防和治疗至关重要。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号