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miRsig: a consensus-based network inference methodology to identify pan-cancer miRNA-miRNA interaction signatures

机译:miRsig:一种基于共识的网络推断方法可鉴定泛癌miRNA-miRNA相互作用的特征

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摘要

Decoding the patterns of miRNA regulation in diseases are important to properly realize its potential in diagnostic, prog- nostic, and therapeutic applications. Only a handful of studies computationally predict possible miRNA-miRNA interactions; hence, such interactions require a thorough investigation to understand their role in disease progression. In this paper, we design a novel computational pipeline to predict the common signature/core sets of miRNA-miRNA interactions for different diseases using network inference algorithms on the miRNA-disease expression profiles; the individual predictions of these algorithms were then merged using a consensus-based approach to predict miRNA-miRNA associations. We next selected the miRNA-miRNA associations across particular diseases to generate the corresponding disease-specific miRNA-interaction networks. Next, graph intersection analysis was performed on these networks for multiple diseases to identify the common signature/core sets of miRNA interactions. We applied this pipeline to identify the common signature of miRNA-miRNA inter- actions for cancers. The identified signatures when validated using a manual literature search from PubMed Central and the PhenomiR database, show strong relevance with the respective cancers, providing an indirect proof of the high accuracy of our methodology. We developed miRsig, an online tool for analysis and visualization of the disease-specific signature/core miRNA-miRNA interactions, available at: .
机译:解码疾病中的miRNA调控模式对于正确地实现其在诊断,预后和治疗应用中的潜力至关重要。只有少数研究在计算上预测了可能的miRNA-miRNA相互作用。因此,这种相互作用需要彻底研究以了解其在疾病进展中的作用。在本文中,我们设计了一种新颖的计算流水线,使用针对miRNA疾病表达谱的网络推断算法来预测不同疾病的miRNA-miRNA相互作用的共同特征/核心集;然后,使用基于共识的方法合并这些算法的各个预测,以预测miRNA-miRNA的关联。接下来,我们选择跨特定疾病的miRNA-miRNA关联,以产生相应的疾病特异性miRNA相互作用网络。接下来,在这些网络上针对多种疾病进行图相交分析,以识别miRNA相互作用的共同特征/核心集。我们应用了该流程来确定miRNA-miRNA相互作用对癌症的共同特征。使用从PubMed Central和PhenomiR数据库进行的人工文献检索对已确认的特征进行验证后,表明它们与各自的癌症密切相关,从而间接证明了我们方法的高精度。我们开发了miRsig,这是一种用于分析和可视化疾病特异性特征/核心miRNA-miRNA相互作用的在线工具,网址为:。

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