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KG-COVID-19: a framework to produce customized knowledge graphs for COVID-19 response
Justin T Reese; Deepak R Unni; Tiffany J Callahan; Luca Cappelletti; Vida Ravanmehr; Seth Carbon; Tommaso Fontana; Hannah Blau; Nicolas Matentzoglu; Nomi L Harris; Monica C Munoz-Torres; Peter N Robinson; Marcin P Joachimiak; Christopher J Mungall.
Affiliation
  • Justin T Reese; Division of Environmental Genomics and Systems Biology, Lawrence Berkeley National Laboratory
  • Deepak R Unni; Division of Environmental Genomics and Systems Biology, Lawrence Berkeley National Laboratory
  • Tiffany J Callahan; Computational Bioscience Program, Department of Pharmacology, University of Colorado Anschutz School of Medicine
  • Luca Cappelletti; Department of Computer Science, University of Milano
  • Vida Ravanmehr; The Jackson Laboratory for Genomic Medicine
  • Seth Carbon; Division of Environmental Genomics and Systems Biology, Lawrence Berkeley National Laboratory
  • Tommaso Fontana; Dipartimento di Elettronica, Informazione e Bioingegneria, Politecnico di Milano
  • Hannah Blau; The Jackson Laboratory for Genomic Medicine
  • Nicolas Matentzoglu; Independent Semantic Technology Contractor
  • Nomi L Harris; Division of Environmental Genomics and Systems Biology, Lawrence Berkeley National Laboratory
  • Monica C Munoz-Torres; Department of Environmental and Molecular Toxicology. Oregon State University
  • Peter N Robinson; The Jackson Laboratory for Genomic Medicine
  • Marcin P Joachimiak; Division of Environmental Genomics and Systems Biology, Lawrence Berkeley National Laboratory
  • Christopher J Mungall; Division of Environmental Genomics and Systems Biology, Lawrence Berkeley National Laboratory
Preprint in En | PREPRINT-BIORXIV | ID: ppbiorxiv-254839
ABSTRACT
Integrated, up-to-date data about SARS-CoV-2 and coronavirus disease 2019 (COVID-19) is crucial for the ongoing response to the COVID-19 pandemic by the biomedical research community. While rich biological knowledge exists for SARS-CoV-2 and related viruses (SARS-CoV, MERS-CoV), integrating this knowledge is difficult and time consuming, since much of it is in siloed databases or in textual format. Furthermore, the data required by the research community varies drastically for different tasks - the optimal data for a machine learning task, for example, is much different from the data used to populate a browsable user interface for clinicians. To address these challenges, we created KG-COVID-19, a flexible framework that ingests and integrates biomedical data to produce knowledge graphs (KGs) for COVID-19 response. This KG framework can also be applied to other problems in which siloed biomedical data must be quickly integrated for different research applications, including future pandemics. BIGGER PICTUREAn effective response to the COVID-19 pandemic relies on integration of many different types of data available about SARS-CoV-2 and related viruses. KG-COVID-19 is a framework for producing knowledge graphs that can be customized for downstream applications including machine learning tasks, hypothesis-based querying, and browsable user interface to enable researchers to explore COVID-19 data and discover relationships.
License
cc0
Full text: 1 Collection: 09-preprints Database: PREPRINT-BIORXIV Language: En Year: 2020 Document type: Preprint
Full text: 1 Collection: 09-preprints Database: PREPRINT-BIORXIV Language: En Year: 2020 Document type: Preprint