Background: Integrating early mobility (EM) expert consensus recommendations into an algorithm that uses electronic health record (EHR) data provides an opportunity for ICU nurse decision support.
Objective: This study aimed to compare clinical differences in ICU EM algorithm domains among patients with and without documented EM and examine discordance between algorithm classification and documented EM.
Methods: Secondary analysis of EHR data from adults admitted to the ICU from one health system's electronic data warehouse. We extracted demographic, clinical, and EM data for up to the first three days after ICU admission and applied the algorithm to classify patients as low/high-risk by clinical domain (respiratory, cardiovascular, neurological, activity order, overall) each day. We used the Wilcoxon rank sum test or Fisher's exact test to compare clinical criteria and algorithm classification between patients with and without documented EM.
Results: From a total of 4,088 patients, documented EM increased each ICU day. Patients with EM were more likely to be classified by the algorithm as low-risk than those who stayed in bed each day. While a large proportion of low-risk patients remained in bed each day (813 day 1; 920 day 2; 881 day 3), some patients classified as high-risk had documented EM.
Conclusions: A significant portion of patients identified as overall low-risk by the algorithm remained in bed, while some high-risk patients achieved EM. Variability between risk definitions and documented patient activity exists and understanding additional factors that nurses use to support EM decision-making is needed.
Implications For Clinical Practice: EHR data can be used with a mobility algorithm to classify patients at low and high-risk for ICU EM. In the future, with additional refinements, an algorithm may augment clinician decision-making.
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http://dx.doi.org/10.1016/j.iccn.2024.103845 | DOI Listing |
BMC Med Inform Decis Mak
January 2025
Renaissance Computing Institute, University of North Carolina at Chapel Hill, Chapel Hill, North Carolina, USA.
Electronic health records (EHRs) provide a rich source of observational patient data that can be explored to infer underlying causal relationships. These causal relationships can be applied to augment medical decision-making or suggest hypotheses for healthcare research. In this study, we explored a large-scale EHR dataset on patients with asthma or related conditions (N = 14,937).
View Article and Find Full Text PDFCleft Palate Craniofac J
January 2025
Division of Plastic, Maxillofacial, and Oral Surgery, Department of Surgery, Duke University Health System, Durham, NC, USA.
To evaluate the feasibility of using the National Patient-Centered Clinical Research Network (PCORnet) as a source of electronic health record (EHR) data for cleft outcomes research. Exploratory retrospective analysis of multi-year, administrative and clinical, structured data stored in PCORnet. Academic institution with an ACPA-approved cleft and craniofacial team.
View Article and Find Full Text PDFAppl Clin Inform
January 2025
Anesthesiology/Institute for Informatics, Washington University in Saint Louis, Saint Louis, United States.
Objective To develop a measure of Health Information Exchange (HIE) for characterizing the density of inter-hospital HIE connections and identify regional characteristics associated with HIE network density Materials and Methods HIE network density was measured as the proportion of hospital pairs within a region that are connected through HIE. The 2022 American Hospital Association's Information Technology Supplement survey was used to calculate HIE network density for US hospital referral regions (HRRs). Bivariate tests and multivariable regression were used to characterize hospital, electronic health record (EHR) vendor, and resident characteristics associated with HIE network density.
View Article and Find Full Text PDFAnn Surg
January 2025
Department of Molecular Medicine and Surgery, Karolinska Institutet, Stockholm, Sweden.
Objective: To assess performance of an algorithm for automated grading of surgery-related adverse events (AEs) according to Clavien-Dindo (C-D) classification.
Summary Background Data: Surgery-related AEs are common, lead to increased morbidity for patients, and raise healthcare costs. Resource-intensive manual chart review is still standard and to our knowledge algorithms using electronic health record (EHR) data to grade AEs according to C-D classification have not been explored.
EJIFCC
December 2024
National Reference Laboratory, Abu Dhabi, UAE.
Background: An increasing number of wearable medical devices are being used for personal monitoring and professional health care purposes. These mobile health devices collect a variety of biometric and health data but do not routinely connect to a patient's electronic health record (EHR) or electronic medical record (EMR) for access by a patient's health care team.
Methods: The International Federation of Clinical Chemistry and Laboratory Medicine (IFCC) Committee on Mobile Health and Bioengineering in Laboratory Medicine (C-MHBLM) developed consensus recommendations for consideration when interfacing mobile health devices to an EHR/EMR.
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