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Summary

Description

Figure 9. Overall architecture of our radiation oncology learning health system (RO-LHS) infrastructure. Here we have the data captured at care delivery from the three data sources and the informatics layer to extract, transform, and load this data based on standard taxonomy and ontologies into the RO-LHS core data repository. This repository is the RDF graph database that stores the data with established definitions and relationships based on the standard terminology and ontology. The data listed in the RO-LHS is made available for subsequent applications such as quality measure analysis, cohort identification, continuous quality improvement, and building ML models that can be applied back to the care delivery to improve care, thus completing the loop for an effective learning health system.

Source

Kapoor, Rishabh; Sleeman IV, William C.; Ghosh, Preetam; Palta, Jatinder (2023). "Infrastructure tools to support an effective radiation oncology learning health system". Journal of Applied Clinical Medical Physics 24 (10): e14127. doi:10.1002/acm2.14127. 

Date

2023

Author

Kapoor, Rishabh; Sleeman IV, William C.; Ghosh, Preetam; Palta, Jatinder

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Creative Commons Attribution 4.0 International

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