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Pathway Based Human Disease Clustering and Similarity Analysis Tool Using Frequent Structure Mining

机译:基于途径的人类疾病聚类和相似性分析工具使用频繁的结构挖掘

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Methods in establishing and understanding human disease similarity are in continuous development as the result from these methods may provide new insights in the field of medicine. Furthermore being able to mine and visualize frequent subgraphs enables the users to view the shared components and relations among the specified diseases. Through the use of a graph mining algorithm called FP-GraphMiner and the pathway database of Kyoto Encyclopedia of Genes and Genomes(KEGG), graph representation and frequent subgraph mining on human diseases is now possible. Disease Similarity Analyzer is a tool which aims to show disease similarity using hierarchical clustering and visualize frequent substructures in human disease pathways using FP-GraphMiner algorithm.
机译:建立和理解人类疾病相似性的方法是在持续发展中,因为这些方法的结果可能在医学领域提供新的见解。此外,能够挖掘和可视化频繁的子图,使用户能够查看指定疾病之间的共享组件和关系。通过使用称为FP-Graphminer的图形挖掘算法和基因和基因组(Kegg)的京都百科全书的路径数据库,现在可以进行图表表示和频繁的亚映射。疾病相似性分析仪是一种工具,旨在使用分层聚类和使用FP-Graphminer算法可视化人类疾病途径中的频繁子结构的疾病相似性。

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