Cumulus: A federated EHR-based learning system powered by FHIR and AI

Author:

McMurry Andrew J.ORCID,Gottlieb Daniel I.ORCID,Miller Timothy A.ORCID,Jones James R.ORCID,Atreja AshishORCID,Crago Jennifer,Desai Pankaja M.ORCID,Dixon Brian E.ORCID,Garber MatthewORCID,Ignatov VladimirORCID,Kirchner Lyndsey A.,Payne Philip R. O.ORCID,Saldanha Anil J.ORCID,Shankar Prabhu R. V.ORCID,Solad Yauheni V.ORCID,Sprouse Elizabeth A.ORCID,Terry MichaelORCID,Wilcox Adam B.ORCID,Mandl Kenneth D.ORCID

Abstract

ABSTRACTObjectiveTo address challenges in large-scale electronic health record (EHR) data exchange, we sought to develop, deploy, and test an open source, cloud-hosted app ‘listener’ that accesses standardized data across the SMART/HL7 Bulk FHIR Access application programming interface (API).MethodsWe advance a model for scalable, federated, data sharing and learning. Cumulus software is designed to address key technology and policy desiderata including local utility, control, and administrative simplicity as well as privacy preservation during robust data sharing, and AI for processing unstructured text.ResultsCumulus relies on containerized, cloud-hosted software, installed within a healthcare organization’s security envelope. Cumulus accesses EHR data via the Bulk FHIR interface and streamlines automated processing and sharing. The modular design enables use of the latest AI and natural language processing tools and supports provider autonomy and administrative simplicity. In an initial test, Cumulus was deployed across five healthcare systems each partnered with public health. Cumulus output is patient counts which were aggregated into a table stratifying variables of interest to enable population health studies. All code is available open source. A policy stipulating that only aggregate data leave the institution greatly facilitated data sharing agreements.Discussion and ConclusionCumulus addresses barriers to data sharing based on (1) federally required support for standard APIs (2), increasing use of cloud computing, and (3) advances in AI. There is potential for scalability to support learning across myriad network configurations and use cases.

Publisher

Cold Spring Harbor Laboratory

Reference30 articles.

1. Office of the National Coordinator for Health Information Technology. Adoption of Electronic Health Records by Hospital Service Type 2019-2021, Health IT Quick Stat #60. Published April 2022. Accessed January 2024. https://www.healthit.gov/data/quickstats/adoption-electronic-health-records-hospital-service-type-2019-2021

2. Office of the National Coordinator for Health Information Technology. National Trends in Hospital and Physician Adoption of Electronic Health Records, Health IT Quick-Stat #61. Published March 2022. Accessed January 2024. https://www.healthit.gov/data/quickstats/national-trends-hospital-and-physician-adoption-electronic-health-records

3. Escaping the EHR Trap — The Future of Health IT

4. Push Button Population Health: The SMART/HL7 FHIR Bulk Data Access Application Programming Interface;npj Digital Medicine,2020

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