TY - JOUR
T1 - Biolink Model
T2 - A universal schema for knowledge graphs in clinical, biomedical, and translational science
AU - The Biomedical Data Translator Consortium
AU - Unni, Deepak R.
AU - Moxon, Sierra A.T.
AU - Bada, Michael
AU - Brush, Matthew
AU - Bruskiewich, Richard
AU - Caufield, J. Harry
AU - Clemons, Paul A.
AU - Dancik, Vlado
AU - Dumontier, Michel
AU - Fecho, Karamarie
AU - Glusman, Gustavo
AU - Hadlock, Jennifer J.
AU - Harris, Nomi L.
AU - Joshi, Arpita
AU - Putman, Tim
AU - Qin, Guangrong
AU - Ramsey, Stephen A.
AU - Shefchek, Kent A.
AU - Solbrig, Harold
AU - Soman, Karthik
AU - Thessen, Anne E.
AU - Haendel, Melissa A.
AU - Bizon, Chris
AU - Mungall, Christopher J.
AU - Acevedo, Liliana
AU - Ahalt, Stanley C.
AU - Alden, John
AU - Alkanaq, Ahmed
AU - Amin, Nada
AU - Avila, Ricardo
AU - Balhoff, Jim
AU - Baranzini, Sergio E.
AU - Baumgartner, Andrew
AU - Baumgartner, William
AU - Belhu, Basazin
AU - Brandes, MacKenzie
AU - Brandon, Namdi
AU - Burtt, Noel
AU - Byrd, William
AU - Callaghan, Jackson
AU - Cano, Marco Alvarado
AU - Carrell, Steven
AU - Celebi, Remzi
AU - Champion, James
AU - Chen, Zhehuan
AU - Chen, Mei Jan
AU - Chung, Lawrence
AU - Cohen, Kevin
AU - Conlin, Tom
AU - Corkill, Dan
N1 - Publisher Copyright:
© 2022 The Authors. Clinical and Translational Science published by Wiley Periodicals LLC on behalf of American Society for Clinical Pharmacology and Therapeutics.
PY - 2022/8
Y1 - 2022/8
N2 - Within clinical, biomedical, and translational science, an increasing number of projects are adopting graphs for knowledge representation. Graph-based data models elucidate the interconnectedness among core biomedical concepts, enable data structures to be easily updated, and support intuitive queries, visualizations, and inference algorithms. However, knowledge discovery across these “knowledge graphs” (KGs) has remained difficult. Data set heterogeneity and complexity; the proliferation of ad hoc data formats; poor compliance with guidelines on findability, accessibility, interoperability, and reusability; and, in particular, the lack of a universally accepted, open-access model for standardization across biomedical KGs has left the task of reconciling data sources to downstream consumers. Biolink Model is an open-source data model that can be used to formalize the relationships between data structures in translational science. It incorporates object-oriented classification and graph-oriented features. The core of the model is a set of hierarchical, interconnected classes (or categories) and relationships between them (or predicates) representing biomedical entities such as gene, disease, chemical, anatomic structure, and phenotype. The model provides class and edge attributes and associations that guide how entities should relate to one another. Here, we highlight the need for a standardized data model for KGs, describe Biolink Model, and compare it with other models. We demonstrate the utility of Biolink Model in various initiatives, including the Biomedical Data Translator Consortium and the Monarch Initiative, and show how it has supported easier integration and interoperability of biomedical KGs, bringing together knowledge from multiple sources and helping to realize the goals of translational science.
AB - Within clinical, biomedical, and translational science, an increasing number of projects are adopting graphs for knowledge representation. Graph-based data models elucidate the interconnectedness among core biomedical concepts, enable data structures to be easily updated, and support intuitive queries, visualizations, and inference algorithms. However, knowledge discovery across these “knowledge graphs” (KGs) has remained difficult. Data set heterogeneity and complexity; the proliferation of ad hoc data formats; poor compliance with guidelines on findability, accessibility, interoperability, and reusability; and, in particular, the lack of a universally accepted, open-access model for standardization across biomedical KGs has left the task of reconciling data sources to downstream consumers. Biolink Model is an open-source data model that can be used to formalize the relationships between data structures in translational science. It incorporates object-oriented classification and graph-oriented features. The core of the model is a set of hierarchical, interconnected classes (or categories) and relationships between them (or predicates) representing biomedical entities such as gene, disease, chemical, anatomic structure, and phenotype. The model provides class and edge attributes and associations that guide how entities should relate to one another. Here, we highlight the need for a standardized data model for KGs, describe Biolink Model, and compare it with other models. We demonstrate the utility of Biolink Model in various initiatives, including the Biomedical Data Translator Consortium and the Monarch Initiative, and show how it has supported easier integration and interoperability of biomedical KGs, bringing together knowledge from multiple sources and helping to realize the goals of translational science.
UR - http://www.scopus.com/inward/record.url?scp=85133600376&partnerID=8YFLogxK
U2 - 10.1111/cts.13302
DO - 10.1111/cts.13302
M3 - Article
C2 - 36125173
AN - SCOPUS:85133600376
SN - 1752-8054
VL - 15
SP - 1848
EP - 1855
JO - Clinical and Translational Science
JF - Clinical and Translational Science
IS - 8
ER -