Context mining and graph queries on giant biomedical knowledge graphs

被引:0
作者
Jens Dörpinghaus
Andreas Stefan
Bruce Schultz
Marc Jacobs
机构
[1] Federal Institute for Vocational Education and Training (BIBB),
[2] Fraunhofer Institute for Algorithms and Scientific Computing SCAI,undefined
[3] Bonn-Rhein-Sieg University of Applied Sciences,undefined
[4] German Center for Neurodegenerative Diseases (DZNE),undefined
来源
Knowledge and Information Systems | 2022年 / 64卷
关键词
Current research information systems; Knowledge graphs; Graph embeddings; Semantic search; Complexity; NLP; Graph theory;
D O I
暂无
中图分类号
学科分类号
摘要
Contextual information is widely considered for NLP and knowledge discovery in life sciences since it highly influences the exact meaning of natural language. The scientific challenge is not only to extract such context data, but also to store this data for further query and discovery approaches. Classical approaches use RDF triple stores, which have serious limitations. Here, we propose a multiple step knowledge graph approach using labeled property graphs based on polyglot persistence systems to utilize context data for context mining, graph queries, knowledge discovery and extraction. We introduce the graph-theoretic foundation for a general context concept within semantic networks and show a proof of concept based on biomedical literature and text mining. Our test system contains a knowledge graph derived from the entirety of PubMed and SCAIView data and is enriched with text mining data and domain-specific language data using Biological Expression Language. Here, context is a more general concept than annotations. This dense graph has more than 71M nodes and 850M relationships. We discuss the impact of this novel approach with 27 real-world use cases represented by graph queries. Storing and querying a giant knowledge graph as a labeled property graph is still a technological challenge. Here, we demonstrate how our data model is able to support the understanding and interpretation of biomedical data. We present several real-world use cases that utilize our massive, generated knowledge graph derived from PubMed data and enriched with additional contextual data. Finally, we show a working example in context of biologically relevant information using SCAIView.
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页码:1239 / 1262
页数:23
相关论文
共 52 条
[1]  
Ashburner M(2000)Gene ontology: tool for the unification of biology Nat Genet 25 25-297
[2]  
Ball CA(2019)Consensus qsar modeling of toxicity of pharmaceuticals to different aquatic organisms: ranking and prioritization of the drugbank database compounds Ecotoxicol Environ Saf 168 287-18
[3]  
Blake JA(2004)The data, information, knowledge, wisdom chain: the metaphorical link Intergovernmental Oceanographic Commiss 26 1-70
[4]  
Botstein D(1987)Management support systems: towards integrated knowledge management Hum Syst Manag 7 59-9
[5]  
Butler H(1989)From data to wisdom J Appl Syst Anal 16 3-180
[6]  
Cherry JM(2007)The wisdom hierarchy: representations of the DIKW hierarchy J Inf Sci 33 163-116
[7]  
Davis AP(1963)Medical subject headings Bull Med Libr Assoc 51 114-3
[8]  
Dolinski K(2018)Research trend visualization by mesh terms from pubmed Int J Environ Res Public Health 15 1113-246
[9]  
Dwight SS(2007)Knowledge organization systems (kos) standards Proc Assoc Inf Sci Technol 44 1-1169
[10]  
Eppig JT(2014)Ado: a disease ontology representing the domain knowledge specific to Alzheimer’s disease Alzheimer’s Dementia 10 238-60