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Establishing Reliable miRNA-Cancer Association Network Based on Text-Mining Method

机译:基于文本挖掘方法建立可靠的miRNA癌症关联网络

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Associating microRNAs (miRNAs) with cancers is an important step of understanding the mechanisms of cancer pathogenesis and finding novel biomarkers for cancer therapies. In this study, we constructed a miRNA-cancer association network (miCancerna) based on more than 1,000 miRNA-cancer associations detected from millions of abstracts with the text-mining method, including 226 miRNA families and 20 common cancers. We further prioritized cancer-related miRNAs at the network level with the random-walk algorithm, achieving a relatively higher performance than previous miRNA disease networks. Finally, we examined the top 5 candidate miRNAs for each kind of cancer and found that 71% of them are confirmed experimentally. miCancerna would be an alternative resource for the cancer-related miRNA identification.
机译:将MicroRNA(miRNA)与癌症相关是理解癌症发病机制和寻找癌症疗法的新生物标志物的重要步骤。在这项研究中,我们构建了一种基于从数百万摘要检测到的文本挖掘方法的超过1,000 miRNA癌症关联的miRNA-癌症协会网络(MICANCER),其中包括226个MiRNA家族和20个常见癌症。我们通过随机播放算法在网络水平下进一步优先考虑与癌症相关的MIRNA,比以前的miRNA疾病网络实现相对较高的性能。最后,我们检查了每种癌症的前5名候选MiRNA,发现它们中的71%是通过实验证实的。 Micanterna将是癌症相关的miRNA鉴定的替代资源。

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