Construction and application of knowledge graph of Treatise on Febrile Diseases

Q3 Medicine Digital Chinese Medicine Pub Date : 2022-12-01 DOI:10.1016/j.dcmed.2022.12.006
Dongbo LIU, Changfa WEI, Shuaishuai XIA, Junfeng YAN (Professor)
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引用次数: 0

Abstract

Objective

To establish the knowledge graph of “disease-syndrome-symptom-method-formula” in Treatise on Febrile Diseases (Shang Han Lun,《伤寒论》) for reducing the fuzziness and uncertainty of data, and for laying a foundation for later knowledge reasoning and its application.

Methods

Under the guidance of experts in the classical formula of traditional Chinese medicine (TCM), the method of “top-down as the main, bottom-up as the auxiliary” was adopted to carry out knowledge extraction, knowledge fusion, and knowledge storage from the five aspects of the disease, syndrome, symptom, method, and formula for the original text of Treatise on Febrile Diseases, and so the knowledge graph of Treatise on Febrile Diseases was constructed. On this basis, the knowledge structure query and the knowledge relevance query were realized in a visual manner.

Results

The knowledge graph of “disease-syndrome-symptom-method-formula” in the Treatise on Febrile Diseases was constructed, containing 6 469 entities and 10 911 relational triples, on which the query of entities and their relationships can be carried out and the query result can be visualized.

Conclusion

The knowledge graph of Treatise on Febrile Diseases systematically realizes its digitization of the knowledge system, and improves the completeness and accuracy of the knowledge representation, and the connection between “disease-syndrome-symptom-treatment-formula”, which is conducive to the sharing and reuse of knowledge can be obtained in a clear and efficient way.

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《伤寒论》知识图谱的构建与应用
目的建立《伤寒论》中“病-证-证-法-方”的知识图谱,减少数据的模糊性和不确定性,为后续的知识推理和应用奠定基础。方法在中医经典方剂专家的指导下,采用“自上而下为主,自下而上为辅”的方法,对《伤寒论》原文从病、证、证、法、方五个方面进行知识提取、知识融合、知识存储,构建《伤寒论》知识图谱。在此基础上,以可视化的方式实现了知识结构查询和知识关联查询。结果构建了《温病论》“病-证-证-法-方”知识图谱,包含6 469个实体和10 911个关系三元组,可对实体及其关系进行查询,并实现查询结果的可视化。结论《伤寒论》知识图谱系统地实现了知识体系的数字化,提高了知识表示的完整性和准确性,实现了“病-证-证-治-方”之间的联系,有利于知识的清晰、高效的共享和重用。
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来源期刊
Digital Chinese Medicine
Digital Chinese Medicine Medicine-Complementary and Alternative Medicine
CiteScore
1.80
自引率
0.00%
发文量
126
审稿时长
63 days
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