Kineret: Israel’s Largest Hospital Network Transformed into the OMOP common data model for collaborative research
Nadav Rappoport, Guy Livne, Naama Perry Cohen, Nir Makover, Hadas Eshel-Geva, Hadar Kapach, Tomer Hadad, Yarin Alon, Robyn Rubin, Segev Chai, Shirell da Villa, Ohad Hochman, Ágnes Vathy-Fogarassy, Michal Rosen-Zvi, Michal Rosen-Zvi

TL;DR
Israel's Kineret initiative standardizes clinical data across hospitals using the OMOP model to support research and collaboration.
Contribution
The novel contribution is the implementation of a national healthcare data infrastructure using OMOP for multi-center and international research.
Findings
Six medical centers have been integrated into the Kineret data infrastructure with harmonized clinical data.
A secure cloud-based platform using ATLAS enables efficient data analysis and research collaboration.
The initiative supports both national and international healthcare research through standardized data access.
Abstract
Background In 2021, the Directorate of Government Medical Centers at the Israeli Ministry of Health launched the Kineret initiative to standardize clinical data across its network of public medical centers and facilitate its secondary use for research and innovation. The primary goals were to streamline data extraction, cleaning, and sharing processes, thereby enabling efficient reuse of clinical data for translational and collaborative research. The Directorate oversees a national network of 25 government healthcare institutions, including 11 general medical centers, 9 mental health centers, and 5 geriatric care facilities. Methods Following an evaluation of existing data models, the Observational Medical Outcomes Partnership Common Data Model (OMOP CDM) was selected as the standard framework for semantic harmonization across institutions. A dedicated instance of ATLAS, the OHDSI…
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Taxonomy
TopicsMachine Learning in Healthcare · Electronic Health Records Systems · Health, Environment, Cognitive Aging
