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DISMIRA: Prioritization of disease candidates in miRNA-disease associations based on maximum weighted matching inference model and motif-based analysis

机译:DISMIRA:基于最大加权匹配推论模型和基于基序的分析,确定miRNA疾病关联中的疾病候选者优先级

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摘要

Background MicroRNAs (miRNAs) have increasingly been found to regulate diseases at a significant level. The interaction of miRNA and diseases is a complex web of multilevel interactions, given the fact that a miRNA regulates upto 50 or more diseases and miRNAs/diseases work in clusters. The clear patterns of miRNA regulations in a disease are still elusive. Methods In this work, we approach the miRNA-disease interactions from a network scientific perspective and devise two approaches - maximum weighted matching model (a graph theoretical algorithm which provides the result by solving an optimization equation of selecting the most prominent set of diseases) and motif-based analyses (which investigates the motifs of the miRNA-disease network and selects the most prominent set of diseases based on their maximum number of participation in motifs, thereby revealing the miRNA-disease interaction dynamics) to determine and prioritize the set of diseases which are most certainly impacted upon the activation of a group of queried miRNAs, in a miRNA-disease network. Results and Conclusion Our tool, DISMIRA implements the above mentioned approaches and presents an interactive visualization which helps the user in exploring the networking dynamics of miRNAs and diseases by analyzing their neighbors, paths and topological features. A set of miRNAs can be used in this analysis to get the associated diseases for the input group of miRs with ranks and also further analysis can be done to find key miRs or diseases, shortest paths etc.
机译:背景技术越来越发现MicroRNA(miRNA)在重要水平上调控疾病。 miRNA与疾病的相互作用是一个多层次相互作用的复杂网络,因为miRNA可以调节多达50种或更多的疾病,而miRNA /疾病则以簇的形式起作用。疾病中miRNA调控的清晰模式仍然难以捉摸。方法在这项工作中,我们从网络科学的角度探讨了miRNA-疾病的相互作用,并设计了两种方法-最大加权匹配模型(一种图论算法,通过求解选择最突出疾病集的优化方程来提供结果)和基于主题的分析(调查miRNA疾病网络的主题,并根据其在主题中的最大参与数量选择最突出的疾病集,从而揭示miRNA疾病相互作用的动态),以确定并确定疾病的优先级这在miRNA疾病网络中最肯定会影响一组查询的miRNA的激活。结果与结论我们的工具DISMIRA实现了上述方法,并提供了一个交互式可视化工具,可通过分析其邻居,路径和拓扑特征,帮助用户探索miRNA和疾病的网络动态。一组miRNA可以用于此分析中,以按等级获得输入miR输入组的相关疾病,还可以进行进一步分析以找到关键的miR或疾病,最短路径等。

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