Literature DB >> 27404288

The Nature and Variability of Automated Practice Alerts Derived from Electronic Health Records in a U.S. Nationwide Critical Care Research Network.

Cody Benthin1, Sonal Pannu2, Akram Khan1, Michelle Gong3.   

Abstract

RATIONALE: The nature, variability, and extent of early warning clinical practice alerts derived from automated query of electronic health records (e-alerts) currently used in acute care settings for clinical care or research is unknown.
OBJECTIVES: To describe e-alerts in current use in acute care settings at medical centers participating in a nationwide critical care research network.
METHODS: We surveyed investigators at 38 institutions involved in the National Institutes of Health-funded Clinical Trials Network for the Prevention and Early Treatment of Acute Lung Injury (PETAL) for quantitative and qualitative analysis.
MEASUREMENTS AND MAIN RESULTS: Thirty sites completed the survey (79% response rate). All sites used electronic health record systems. Epic Systems was used at 56% of sites; the others used alternate commercially available vendors or homegrown systems. Respondents at 57% of sites represented in this survey used e-alerts. All but 1 of these 17 sites used an e-alert for early detection of sepsis-related syndromes, and 35% used an e-alert for pneumonia. E-alerts were triggered by abnormal laboratory values (37%), vital signs (37%), or radiology reports (15%) and were used about equally for clinical decision support and research. Only 59% of sites with e-alerts have evaluated them either for accuracy or for validity.
CONCLUSIONS: A majority of the research network sites participating in this survey use e-alerts for early notification of potential threats to hospitalized patients; however, there was significant variability in the nature of e-alerts between institutions. Use of one common electronic health record vendor at more than half of the participating sites suggests that it may be possible to standardize e-alerts across multiple sites in research networks, particularly among sites using the same medical record platform.

Entities:  

Keywords:  acute respiratory distress syndrome; electronic health record alerts; sepsis; survey

Mesh:

Year:  2016        PMID: 27404288      PMCID: PMC5122489          DOI: 10.1513/AnnalsATS.201603-172BC

Source DB:  PubMed          Journal:  Ann Am Thorac Soc        ISSN: 2325-6621


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