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Integrative analysis of DNA methylation and gene expression in papillary renal cell carcinoma

机译:乳头状肾细胞癌DNA甲基化和基因表达的整合分析

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Patterns of DNA methylation are significantly altered in cancers. Interpreting the functional consequences of DNA methylation requires the integration of multiple forms of data. The recent advancement in the next-generation sequencing can help to decode this relationship and in biomarker discovery. In this study, we investigated the methylation patterns of papillary renal cell carcinoma (PRCC) and its relationship with the gene expression using The Cancer Genome Atlas (TCGA) multi-omics data. We found that the promoter and body of tumor suppressor genes, microRNAs and gene clusters and families, including cadherins, protocadherins, claudins and collagens, are hypermethylated in PRCC. Hypomethylated genes in PRCC are associated with the immune function. The gene expression of several novel candidate genes, including interleukin receptor IL17RE and immune checkpoint genes HHLA2, SIRPA and HAVCR2, shows a significant correlation with DNA methylation. We also developed machine learning models using features extracted from single and multi-omics data to distinguish early and late stages of PRCC. A comparative study of different feature selection algorithms, predictive models, data integration techniques and representations of methylation data was performed. Integration of both gene expression and DNA methylation features improved the performance of models in distinguishing tumor stages. In summary, our study identifies PRCC driver genes and proposes predictive models based on both DNA methylation and gene expression. These results on PRCC will aid in targeted experiments and provide a strategy to improve the classification accuracy of tumor stages.
机译:DNA甲基化的图案在癌症中显着改变。解释DNA甲基化的功能后果需要多种形式的数据集成。下一代测序中最近的进步可以帮助解码这种关系和生物标志物发现。在这项研究中,我们研究了使用癌症基因组地图集(​​TCGA)多OMICS数据的乳头状肾细胞癌(PRCC)的甲基化模式及其与基因表达的关系。我们发现,肿瘤抑制基因,微大RNA和基因簇和家庭的启动子和身体,包括钙糖蛋白,Protocadherins,Claudins和胶原蛋白,在PRCC中具有高甲基化。 PRCC中的低甲基化基因与免疫功能有关。几种新候选基因的基因表达,包括白细胞介素受体IL17和HHLA2,SiRPA和HAVCR2,具有与DNA甲基化显着相关性。我们还使用从单个和多OMICS数据中提取的功能开发机器学习模型,以区分PRCC的早期和晚期阶段。进行了不同特征选择算法,预测模型,数据集成技术和甲基化数据表示的比较研究。基因表达和DNA甲基化的整合特征在于在区分肿瘤阶段的模型的性能提高。总之,我们的研究鉴定了PRCC驱动基因,并提出了基于DNA甲基化和基因表达的预测模型。 PRCC的这些结果将有助于有针对性的实验,并提供提高肿瘤阶段的分类准确性的策略。

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