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      Incrementally Transforming Electronic Medical Records into the Observational Medical Outcomes Partnership Common Data Model: A Multidimensional Quality Assurance Approach

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          Abstract

          Background  The development and adoption of health care common data models (CDMs) has addressed some of the logistical challenges of performing research on data generated from disparate health care systems by standardizing data representations and leveraging standardized terminology to express clinical information consistently. However, transforming a data system into a CDM is not a trivial task, and maintaining an operational, enterprise capable CDM that is incrementally updated within a data warehouse is challenging.

          Objectives  To develop a quality assurance (QA) process and code base to accompany our incremental transformation of the Department of Veterans Affairs Corporate Data Warehouse health care database into the Observational Medical Outcomes Partnership (OMOP) CDM to prevent incremental load errors.

          Methods  We designed and implemented a multistage QA) approach centered on completeness, value conformance, and relational conformance data-quality elements. For each element we describe key incremental load challenges, our extract, transform, and load (ETL) solution of data to overcome those challenges, and potential impacts of incremental load failure.

          Results  Completeness and value conformance data-quality elements are most affected by incremental changes to the CDW, while updates to source identifiers impact relational conformance. ETL failures surrounding these elements lead to incomplete and inaccurate capture of clinical concepts as well as data fragmentation across patients, providers, and locations.

          Conclusion  Development of robust QA processes supporting accurate transformation of OMOP and other CDMs from source data is still in evolution, and opportunities exist to extend the existing QA framework and tools used for incremental ETL QA processes.

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          Author and article information

          Journal
          Appl Clin Inform
          Appl Clin Inform
          10.1055/s-00035026
          Applied Clinical Informatics
          Georg Thieme Verlag KG (Stuttgart · New York )
          1869-0327
          October 2019
          23 October 2019
          : 10
          : 5
          : 794-803
          Affiliations
          [1 ] VA Salt Lake City Health Care System, Salt Lake City, Utah, United States
          [2 ] Department of Internal Medicine, Division of Epidemiology, University of Utah, Salt Lake City, Utah, United States
          [3 ] Vanderbilt University Medical Center, Nashville, Tennessee, United States
          [4 ] Tennessee Valley Healthcare System, Nashville, Tennessee, United States
          Author notes
          Address for correspondence Kristine E. Lynch, PhD Department of Internal Medicine, Division of Epidemiology, University of Utah, VA Informatics and Computing Infrastructure VA Salt Lake City Health Care System, 500 Foothill Drive, Salt Lake City, UT 84148 United States Kristine.Lynch@ 123456hsc.utah.edu
          Article
          PMC6811349 PMC6811349 6811349 190103ra
          10.1055/s-0039-1697598
          6811349
          31645076
          b4965cde-2baa-49d6-afbb-29276bde3875
          © Thieme Medical Publishers
          History
          : 26 April 2019
          : 08 August 2019
          Funding
          Funding This work was supported using resources and facilities at the VA Salt Lake City Health Care System and the VA Informatics and Computing Infrastructure (VINCI), VA HSR RES 13–457.
          Categories
          Research Article

          common data models,data quality,electronic medical records

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