Rare disease-based scientific annotation knowledge graph

Rare diseases (RDs) are naturally associated with a low prevalence rate, which raises a big challenge due to there being less data available for supporting preclinical and clinical studies. There has been a vast improvement in our understanding of RD, largely owing to advanced big data analytic appr...

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Veröffentlicht in:Frontiers in artificial intelligence 2022-08, Vol.5, p.932665-932665
Hauptverfasser: Zhu, Qian, Qu, Chunxu, Liu, Ruizheng, Vatas, Gunjan, Clough, Andrew, Nguyễn, Ðắc-Trung, Sid, Eric, Mathé, Ewy, Xu, Yanji
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Sprache:eng
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Zusammenfassung:Rare diseases (RDs) are naturally associated with a low prevalence rate, which raises a big challenge due to there being less data available for supporting preclinical and clinical studies. There has been a vast improvement in our understanding of RD, largely owing to advanced big data analytic approaches in genetics/genomics. Consequently, a large volume of RD-related publications has been accumulated in recent years, which offers opportunities to utilize these publications for accessing the full spectrum of the scientific research and supporting further investigation in RD. In this study, we systematically analyzed, semantically annotated, and scientifically categorized RD-related PubMed articles, and integrated those semantic annotations in a knowledge graph (KG), which is hosted in Neo4j based on a predefined data model. With the successful demonstration of scientific contribution in RD via the case studies performed by exploring this KG, we propose to extend the current effort by expanding more RD-related publications and more other types of resources as a next step.
ISSN:2624-8212
2624-8212
DOI:10.3389/frai.2022.932665