2020
DOI: 10.1101/2020.09.14.296889
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CROssBAR: Comprehensive Resource of Biomedical Relations with Deep Learning Applications and Knowledge Graph Representations

Abstract: Systemic analysis of available large-scale biological and biomedical data is critical for developing novel and effective treatment approaches against both complex and infectious diseases. Owing to the fact that different sections of the biomedical data is produced by different organizations/institutions using various types of technologies, the data are scattered across individual computational resources, without any explicit relations/connections to each other, which greatly hinders the comprehensive multi-omi… Show more

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Cited by 2 publications
(9 citation statements)
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“…The Hetionet project [41] developed concept types and relationship types specifically for knowledge representation for drug repurposing; these types were expanded in the Scalable Precision medicine Knowledge Engine (SPOKE) database [42, 43]. CROssBAR-DB [44] keeps its source datasets separate from one another and provides an interface for constructing a query-specific, integrated knowledge graph. The Reasoning Over Biomedical Objects linked in Knowledge Oriented Pathways (ROBOKOP) graph [45, 46] uses concept and relationship types from the Biolink metamodel.…”
Section: Introductionmentioning
confidence: 99%
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“…The Hetionet project [41] developed concept types and relationship types specifically for knowledge representation for drug repurposing; these types were expanded in the Scalable Precision medicine Knowledge Engine (SPOKE) database [42, 43]. CROssBAR-DB [44] keeps its source datasets separate from one another and provides an interface for constructing a query-specific, integrated knowledge graph. The Reasoning Over Biomedical Objects linked in Knowledge Oriented Pathways (ROBOKOP) graph [45, 46] uses concept and relationship types from the Biolink metamodel.…”
Section: Introductionmentioning
confidence: 99%
“…While both approaches have their strengths, from our work on the predecessor RTX-KG1 system and from the present work, we found that an ETL approach has significant advantages in terms of scalability, reproducibility, and reliability. In terms of automation frameworks, previous efforts have used general-purpose scripting languages [34, 36, 41, 42, 45, 49, 51], batch frameworks [44], declarative rule-based build frameworks [31, 33, 52], and parallel build systems such as Snakemake [53] (EpiGraphDB). Liu et al reported [52] choosing the Snakemake [53] build framework specifically because of its high performance (i.e., parallel capabilities).…”
Section: Introductionmentioning
confidence: 99%
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