药物作用机理知识图谱的构建

Jie Zhao, Aiyu Wang, Fangfang Su, Yanyan Chen, Honghai Feng
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引用次数: 2

摘要

背景:医学文献中含有大量药物成分作用机理的信息,手工整理几十篇甚至几百万篇的海量信息是不可能的。数据挖掘中的关系抽象方法可以用来提取药物的作用机理。方法:首先,收集中文期刊上有关该药作用机理的论文摘要77万篇;提出了一种识别药物作用机制的句型和语义要素的算法;该算法提取了相应的语义元素。最后,利用Neo4j工具建立知识图谱。结果:共发现药物作用机制30710种,建立药物作用机制关系57865种。该算法提取语义元素及其关系的召回率为0.59,准确率为0.86。结论:该算法能够准确、全面地提取语义元素及其关系。与DRKG等药物知识图谱相比,该药物作用机制知识图谱更全面地涵盖了大量的药物和作用机制,便于新药开发和药物作用机制的查询。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Construction of knowledge graph of drug-action mechanism
Background: Medical texts contain a large amount of information on the mechanism of action of drug ingredients, and it is impossible to manually collate the massive information in dozens or millions of papers. The method of relationship abstraction in data mining can be used to extract the mechanism of drug action. Methods: First, 770000 papers’ abstracts on the mechanism of the drug in Chinese journals were collected; an algorithm to identify the sentence patterns and semantic elements of the mechanism of drug action were developed; the corresponding semantic elements were extracted by this algorithm. Finally, a knowledge graph was established by the Neo4j tool. Results: A total of 30710 mechanisms of drug action were found, and 57865 drug-action mechanism relations were established. The recall rate of the algorithm to extract semantic elements and their relations was 0.59, the accuracy is 0.86. Conclusion: The algorithm can accurately and comprehensively extract semantic elements and their relationships. Comparison with drug knowledge graphs such as DRKG, this knowledge graph of drug-action mechanism covers a large number of drugs and mechanism of action more comprehensively, which can facilitate new drug development and query of drugs-action mechanism.
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