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首页> 外文期刊>BMC Bioinformatics >SemaTyP: a knowledge graph based literature mining method for drug discovery
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SemaTyP: a knowledge graph based literature mining method for drug discovery

机译:SemaTyP:基于知识图的文献挖掘方法,用于药物发现

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Drug discovery is the process through which potential new medicines are identified. High-throughput screening and computer-aided drug discovery/design are the two main drug discovery methods for now, which have successfully discovered a series of drugs. However, development of new drugs is still an extremely time-consuming and expensive process. Biomedical literature contains important clues for the identification of potential treatments. It could support experts in biomedicine on their way towards new discoveries. Here, we propose a biomedical knowledge graph-based drug discovery method called SemaTyP, which discovers candidate drugs for diseases by mining published biomedical literature. We first construct a biomedical knowledge graph with the relations extracted from biomedical abstracts, then a logistic regression model is trained by learning the semantic types of paths of known drug therapies’ existing in the biomedical knowledge graph, finally the learned model is used to discover drug therapies for new diseases. The experimental results show that our method could not only effectively discover new drug therapies for new diseases, but also could provide the potential mechanism of action of the candidate drugs. In this paper we propose a novel knowledge graph based literature mining method for drug discovery. It could be a supplementary method for current drug discovery methods.
机译:药物发现是识别潜在新药的过程。高通量筛选和计算机辅助药物发现/设计是目前成功发现一系列药物的两种主要药物发现方法。但是,新药的开发仍然是非常耗时且昂贵的过程。生物医学文献包含鉴定潜在治疗方法的重要线索。它可以支持生物医学专家迈向新发现。在这里,我们提出了一种基于生物医学知识图的药物发现方法,称为SemaTyP,该方法通过挖掘已发表的生物医学文献来发现疾病的候选药物。我们首先利用从生物医学摘要中提取的关系来构建生物医学知识图,然后通过学习生物医学知识图中存在的已知药物疗法的路径的语义类型来训练逻辑回归模型,最后使用学习的模型来发现药物新疾病的疗法。实验结果表明,我们的方法不仅可以有效地发现新疾病的新药疗法,而且可以提供候选药物的潜在作用机理。在本文中,我们提出了一种基于知识图的新颖文献挖掘方法进行药物开发。它可能是当前药物发现方法的补充方法。

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