...
首页> 外文期刊>BMC Bioinformatics >Mining a stroke knowledge graph from literature
【24h】

Mining a stroke knowledge graph from literature

机译:从文献中挖出卒中知识图

获取原文

摘要

Stroke has an acute onset and a high mortality rate, making it one of the most fatal diseases worldwide. Its underlying biology and treatments have been widely studied both in the “Western” biomedicine and the Traditional Chinese Medicine (TCM). However, these two approaches are often studied and reported in insolation, both in the literature and associated databases. To aid research in finding effective prevention methods and treatments, we integrated knowledge from the literature and a number of databases (e.g. CID, TCMID, ETCM). We employed a suite of biomedical text mining (i.e. named-entity) approaches to identify mentions of genes, diseases, drugs, chemicals, symptoms, Chinese herbs and patent medicines, etc. in a large set of stroke papers from both biomedical and TCM domains. Then, using a combination of a rule-based approach with a pre-trained BioBERT model, we extracted and classified links and relationships among stroke-related entities as expressed in the literature. We construct StrokeKG, a knowledge graph includes almost 46?k nodes of nine types, and 157?k links of 30 types, connecting diseases, genes, symptoms, drugs, pathways, herbs, chemical, ingredients and patent medicine. Our Stroke-KG can provide practical and reliable stroke-related knowledge to help with stroke-related research like exploring new directions for stroke research and ideas for drug repurposing and discovery.
机译:中风有急性发作和高死亡率,使其成为全世界最致命的疾病之一。其潜在的生物学和治疗在“西方”生物医学和中医(TCM)中被广泛研究。然而,这两种方法通常在文献和相关数据库中呈现和报告并报告。为了帮助研究寻找有效的预防方法和治疗,我们从文献中综合知识和许多数据库(例如CID,TCMID,ETCM)。我们雇用了一套生物医学挖掘(即命名实体)方法,以确定来自两组生物医学和中医结构域的大型中风纸中的基因,疾病,药物,化学品,症状,中草药和专利药物等。 。然后,使用具有预先训练的Biobert模型的基于规则的方法的组合,我们在文献中表达的中风相关实体中提取和分类链路和关系。我们构建了大量知识图,包括近46?K节点的九种类型,157 k〜k链接为30种,连接疾病,基因,症状,药物,途径,草药,化学,成分和专利药物。我们的中风KG可以提供实用和可靠的中风相关知识,以帮助有关的中风相关的研究,如探索中风研究和毒品重新扫描和发现思想的新方向。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号