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Disease Related Knowledge Summarization Based on Deep Graph Search

机译:基于深度图搜索的疾病相关知识总结

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The volume of published biomedical literature on disease related knowledge is expanding rapidly. Traditional information retrieval (IR) techniques, when applied to large databases such as PubMed, often return large, unmanageable lists of citations that do not fulfill the searcher’s information needs. In this paper, we present an approach to automatically construct disease related knowledge summarization from biomedical literature. In this approach, firstly Kullback-Leibler Divergence combined with mutual information metric is used to extract disease salient information. Then deep search based on depth first search (DFS) is applied to find hidden (indirect) relations between biomedical entities. Finally random walk algorithm is exploited to filter out the weak relations. The experimental results show that our approach achieves a precision of 60% and a recall of 61% on salient information extraction forCarcinoma of bladderand outperforms the method of Combo.
机译:关于疾病相关知识的已出版生物医学文献的数量正在迅速增加。当将传统的信息检索(IR)技术应用于诸如PubMed之类的大型数据库时,通常会返回无法满足搜索者信息需求的大量无法管理的引用列表。在本文中,我们提出了一种从生物医学文献中自动构建与疾病相关的知识摘要的方法。在这种方法中,首先将Kullback-Leibler Divergence与互信息量度相结合来提取疾病显着信息。然后应用基于深度优先搜索(DFS)的深度搜索来查找生物医学实体之间的隐藏(间接)关系。最后利用随机游走算法滤除弱关系。实验结果表明,我们的方法在针对膀胱癌的显着信息提取上可达到60%的精度和61%的召回率,优于Combo方法。

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