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  5. Construction of a Linked Data Set of COVID-19 Knowledge Graphs: Development and Applications

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Article
English
2022

Construction of a Linked Data Set of COVID-19 Knowledge Graphs: Development and Applications

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0 Files

English
2022
JMIR Medical Informatics
Vol 10 (5)
DOI: 10.2196/37215

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Haofen Wang
Haofen Wang

Tongji University

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Haofen Wang
Huifang Du
Guilin Qi
+3 more

Abstract

With the continuous spread of COVID-19, information about the worldwide pandemic is exploding. Therefore, it is necessary and significant to organize such a large amount of information. As the key branch of artificial intelligence, a knowledge graph (KG) is helpful to structure, reason, and understand data.To improve the utilization value of the information and effectively aid researchers to combat COVID-19, we have constructed and successively released a unified linked data set named OpenKG-COVID19, which is one of the largest existing KGs related to COVID-19. OpenKG-COVID19 includes 10 interlinked COVID-19 subgraphs covering the topics of encyclopedia, concept, medical, research, event, health, epidemiology, goods, prevention, and character.In this paper, we introduce the key techniques exploited in building COVID-19 KGs in a top-down manner. First, the schema of the modeling process for each KG in OpenKG-COVID19 is described. Second, we propose different methods for extracting knowledge from open government sites, professional texts, public domain-specific sources, and public encyclopedia sites. The curated 10 COVID-19 KGs are further linked together at both the schema and data levels. In addition, we present the naming convention for OpenKG-COVID19.OpenKG-COVID19 has more than 2572 concepts, 329,600 entities, 513 properties, and 2,687,329 facts, and the data set will be updated continuously. Each COVID-19 KG was evaluated, and the average precision was found to be above 93%. We have developed search and browse interfaces and a SPARQL endpoint to improve user access. Possible intelligent applications based on OpenKG-COVID19 for further development are also described.A KG is useful for intelligent question-answering, semantic searches, recommendation systems, visualization analysis, and decision-making support. Research related to COVID-19, biomedicine, and many other communities can benefit from OpenKG-COVID19. Furthermore, the 10 KGs will be continuously updated to ensure that the public will have access to sufficient and up-to-date knowledge.

How to cite this publication

Haofen Wang, Huifang Du, Guilin Qi, Huajun Chen, Wei Hu, Zhuo Chen (2022). Construction of a Linked Data Set of COVID-19 Knowledge Graphs: Development and Applications. JMIR Medical Informatics, 10(5), pp. e37215-e37215, DOI: 10.2196/37215.

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Publication Details

Type

Article

Year

2022

Authors

6

Datasets

0

Total Files

0

Language

English

Journal

JMIR Medical Informatics

DOI

10.2196/37215

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