Validation of an Intensive Care Unit Data Mart for Research and Quality Improvement

被引:0
作者
Christina Boncyk
Pamela Butler
Karen McCarthy
Robert E. Freundlich
机构
[1] Vanderbilt University Medical Center,Department of Anesthesiology
[2] Vanderbilt University Medical Center,Critical Illness, Brain Dysfunction, and Survivorship (CIBS) Center
[3] Vanderbilt University Medical Center,Department of Biomedical Informatics
来源
Journal of Medical Systems | / 46卷
关键词
Electronic health record; Intensive care unit; Quality improvement; ICU; Data mart;
D O I
暂无
中图分类号
学科分类号
摘要
Data derived from the electronic health record (EHR) is frequently extracted using undefined approaches that may affect the accuracy of collected variables. Further, efforts to assess data accuracy often suffer from limited collaboration between clinicians and data analysts who perform the extraction. In this manuscript, we describe the methodology behind creation of a structured, rigorously derived intensive care unit (ICU) data mart based on data automatically and routinely derived from the EHR. This ICU data mart includes high-quality data elements commonly used for quality improvement and research purposes. These data elements were identified by physicians working closely with data analysts to iteratively develop and refine algorithmic definitions for complex outcomes and risk factors. We contend that this methodology can be reproduced and applied across other institution or to other clinical domains to create high quality data marts, inclusive of complex outcomes data.
引用
收藏
相关论文
共 40 条
  • [1] Brundin-Mather R(2018)Secondary EMR data for quality improvement and research: A comparison of manual and electronic data collection from an integrated critical care electronic medical record system J Crit Care. 47 295-301
  • [2] Soo A(2013)Use of health IT for higher-value critical care N Engl J Med. 368 594-597
  • [3] Zuege DJ(2014)Clinical benefits of electronic health record use: national findings Health Serv Res. 49 392-404
  • [4] Niven DJ(2015)Exploiting big data for critical care research Curr Opin Crit Care. 21 467-472
  • [5] Fiest K(2012)Development of a clinical data warehouse from an intensive care clinical information system Comput Methods Programs Biomed. 105 22-30
  • [6] Doig CJ(2010)Informatics infrastructure for syndrome surveillance, decision support, reporting, and modeling of critical illness Mayo Clin Proc. 85 247-254
  • [7] Chen LM(2016)A systematic approach to creation of a perioperative data warehouse Anesth Analg. 122 1880-1884
  • [8] Kennedy EH(2005)Development of a data warehouse at an academic health system: knowing a place for the first time Acad Med. 80 1019-1025
  • [9] Sales A(2006)Crossing the quality chasm: the role of information technology departments Am J Med Qual. 21 382-393
  • [10] Hofer TP(2022)We know what we want, it's just not there J Clin Transl Sci. 6 e9-undefined