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Extracting Electronic Health Record Data in a Practice-Based Research Network: Processes to Support Translational Research across Diverse Practice Organizations

CONTEXT: The widespread adoption of electronic health records (EHRs) offers significant opportunities to conduct research with clinical data from patients outside traditional academic research settings. Because EHRs are designed primarily for clinical care and billing, significant challenges are inh...

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Autores principales: Cole, Allison M., Stephens, Kari A., Keppel, Gina A., Estiri, Hossein, Baldwin, Laura-Mae
Formato: Online Artículo Texto
Lenguaje:English
Publicado: AcademyHealth 2016
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4827782/
https://www.ncbi.nlm.nih.gov/pubmed/27141519
http://dx.doi.org/10.13063/2327-9214.1206
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author Cole, Allison M.
Stephens, Kari A.
Keppel, Gina A.
Estiri, Hossein
Baldwin, Laura-Mae
author_facet Cole, Allison M.
Stephens, Kari A.
Keppel, Gina A.
Estiri, Hossein
Baldwin, Laura-Mae
author_sort Cole, Allison M.
collection PubMed
description CONTEXT: The widespread adoption of electronic health records (EHRs) offers significant opportunities to conduct research with clinical data from patients outside traditional academic research settings. Because EHRs are designed primarily for clinical care and billing, significant challenges are inherent in the use of EHR data for clinical and translational research. Efficient processes are needed for translational researchers to overcome these challenges. The Data QUEST Coordinating Center (DQCC), which oversees Data Query Extraction Standardization Translation (Data QUEST) – a primary-care, EHR data-sharing infrastructure – created processes that guide EHR data extraction for clinical and translational research across these diverse practices. We describe these processes and their application in a case example. CASE DESCRIPTION: The DQCC process for developing EHR data extractions not only supports researchers’ access to EHR data, but supports this access for the purpose of answering scientific questions. This process requires complex coordination across multiple domains, including the following: (1) understanding the context of EHR data; (2) creating and maintaining a governance structure to support exchange of EHR data; and (3) defining data parameters that are used in order to extract data from the EHR. We use the Northwest-Alaska Pharmacogenomics Research Network (NWA-PGRN) as a case example that focuses on pharmacogenomic discovery and clinical applications to describe the DQCC process. The NWA-PGRN collaborates with Data QUEST to explore ways to leverage primary-care EHR data to support pharmacogenomics research. FINDINGS: Preliminary analysis on the case example shows that initial decisions about how researchers define the study population can influence study outcomes. MAJOR THEMES AND CONCLUSIONS: The experience of the DQCC demonstrates that coordinating centers provide expertise in helping researchers understand the context of EHR data, create and maintain governance structures, and guide the definition of parameters for data extractions. This expertise is critical to supporting research with EHR data. Replication of these strategies through coordinating centers may lead to more efficient translational research. Investigators must also consider the impact of initial decisions in defining study groups that may potentially affect outcomes.
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spelling pubmed-48277822016-05-02 Extracting Electronic Health Record Data in a Practice-Based Research Network: Processes to Support Translational Research across Diverse Practice Organizations Cole, Allison M. Stephens, Kari A. Keppel, Gina A. Estiri, Hossein Baldwin, Laura-Mae EGEMS (Wash DC) Articles CONTEXT: The widespread adoption of electronic health records (EHRs) offers significant opportunities to conduct research with clinical data from patients outside traditional academic research settings. Because EHRs are designed primarily for clinical care and billing, significant challenges are inherent in the use of EHR data for clinical and translational research. Efficient processes are needed for translational researchers to overcome these challenges. The Data QUEST Coordinating Center (DQCC), which oversees Data Query Extraction Standardization Translation (Data QUEST) – a primary-care, EHR data-sharing infrastructure – created processes that guide EHR data extraction for clinical and translational research across these diverse practices. We describe these processes and their application in a case example. CASE DESCRIPTION: The DQCC process for developing EHR data extractions not only supports researchers’ access to EHR data, but supports this access for the purpose of answering scientific questions. This process requires complex coordination across multiple domains, including the following: (1) understanding the context of EHR data; (2) creating and maintaining a governance structure to support exchange of EHR data; and (3) defining data parameters that are used in order to extract data from the EHR. We use the Northwest-Alaska Pharmacogenomics Research Network (NWA-PGRN) as a case example that focuses on pharmacogenomic discovery and clinical applications to describe the DQCC process. The NWA-PGRN collaborates with Data QUEST to explore ways to leverage primary-care EHR data to support pharmacogenomics research. FINDINGS: Preliminary analysis on the case example shows that initial decisions about how researchers define the study population can influence study outcomes. MAJOR THEMES AND CONCLUSIONS: The experience of the DQCC demonstrates that coordinating centers provide expertise in helping researchers understand the context of EHR data, create and maintain governance structures, and guide the definition of parameters for data extractions. This expertise is critical to supporting research with EHR data. Replication of these strategies through coordinating centers may lead to more efficient translational research. Investigators must also consider the impact of initial decisions in defining study groups that may potentially affect outcomes. AcademyHealth 2016-03-29 /pmc/articles/PMC4827782/ /pubmed/27141519 http://dx.doi.org/10.13063/2327-9214.1206 Text en All eGEMs publications are licensed under a Creative Commons Attribution-Noncommercial-No Derivative Works 3.0 License http://creativecommons.org/licenses/by-nc-nd/3.0/
spellingShingle Articles
Cole, Allison M.
Stephens, Kari A.
Keppel, Gina A.
Estiri, Hossein
Baldwin, Laura-Mae
Extracting Electronic Health Record Data in a Practice-Based Research Network: Processes to Support Translational Research across Diverse Practice Organizations
title Extracting Electronic Health Record Data in a Practice-Based Research Network: Processes to Support Translational Research across Diverse Practice Organizations
title_full Extracting Electronic Health Record Data in a Practice-Based Research Network: Processes to Support Translational Research across Diverse Practice Organizations
title_fullStr Extracting Electronic Health Record Data in a Practice-Based Research Network: Processes to Support Translational Research across Diverse Practice Organizations
title_full_unstemmed Extracting Electronic Health Record Data in a Practice-Based Research Network: Processes to Support Translational Research across Diverse Practice Organizations
title_short Extracting Electronic Health Record Data in a Practice-Based Research Network: Processes to Support Translational Research across Diverse Practice Organizations
title_sort extracting electronic health record data in a practice-based research network: processes to support translational research across diverse practice organizations
topic Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4827782/
https://www.ncbi.nlm.nih.gov/pubmed/27141519
http://dx.doi.org/10.13063/2327-9214.1206
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