Affiliation:
1. Department of Anesthesiology, Montefiore Medical Center Albert Einstein College of Medicine New York USA
2. Albert Einstein College of Medicine New York USA
3. Department of Epidemiology & Population Health (Biostatistics) Albert Einstein College of Medicine New York USA
4. Department of Anesthesiology and Perioperative Medicine, Center of Advanced Clinical Research University of Chile Santiago Chile
5. Department of Anesthesia, Critical Care, and Pain Medicine, Massachusetts General Hospital Harvard Medical School Boston Massachusetts USA
Abstract
AbstractBackground/AimsTraditional manual methods of extracting anesthetic and physiological data from the electronic health record rely upon visual transcription by a human analyst that can be labor‐intensive and prone to error. Technical complexity, relative inexperience in computer coding, and decreased access to data warehouses can deter investigators from obtaining valuable electronic health record data for research studies, especially in under‐resourced settings. We therefore aimed to develop, pilot, and demonstrate the effectiveness and utility of a pragmatic data extraction methodology.MethodsExpired sevoflurane concentration data from the electronic health record transcribed by eye was compared to an intermediate preprocessing method in which the entire anesthetic flowsheet narrative report was selected, copy‐pasted, and processed using only Microsoft Word and Excel software to generate a comma‐delimited (.csv) file. A step‐by‐step presentation of this method is presented. Concordance rates, Pearson correlation coefficients, and scatterplots with lines of best fit were used to compare the two methods of data extraction.ResultsA total of 1132 datapoints across eight subjects were analyzed, accounting for 18.9 h of anesthesia time. There was a high concordance rate of data extracted using the two methods (median concordance rate 100% range [96%, 100%]). The median time required to complete manual data extraction was significantly longer compared to the time required using the intermediate method (240 IQR [199, 482.5] seconds vs 92.5 IQR [69, 99] seconds, p = .01) and was linearly associated with the number of datapoints (rmanual = .97, p < .0001), whereas time required to complete data extraction using the intermediate approach was independent of the number of datapoints (rintermediate = −.02, p = .99).ConclusionsWe describe a pragmatic data extraction methodology that does not require additional software or coding skills intended to enhance the ease, speed, and accuracy of data collection that could assist in clinician investigator‐initiated research and quality/process improvement projects.
Funder
National Center for Advancing Translational Sciences
National Institute on Drug Abuse
National Institutes of Health
Subject
Anesthesiology and Pain Medicine,Pediatrics, Perinatology and Child Health