Using a relational database to improve mortality and length of stay for a department of surgery: A comparative review of 5200 patients

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Abstract

The emphasis on high-quality care has spawned the development of quality programs, most of which focus on broad outcome measures across a diverse group of providers. Our aim was to investigate the clinical outcomes for a department of surgery with multiple service lines of patient care using a relational database. Mortality, length of stay (LOS), patient safety indicators (PSIs), and hospital-acquired conditions were examined for each service line. Expected values for mortality and LOS were derived from University HealthSystem Consortium regression models, whereas expected values for PSIs were derived from Agency for Healthcare Research and Quality regression models. Overall, 5200 patients were evaluated from the months of January through May of both 2011 (n = 2550) and 2012 (n = 2650). The overall observed-to-expected (O/E) ratio of mortality improved from 1.03 to 0.92. The overall O/E ratio for LOS improved from 0.92 to 0.89. PSIs that predicted mortality included postoperative sepsis (O/E:1.89), postoperative respiratory failure (O/E:1.83), postoperative metabolic derangement (O/E:1.81), and postoperative deep vein thrombosis or pulmonary embolus (O/E:1.8). Mortality and LOS can be improved by using a relational database with outcomes reported to specific service lines. Service line quality can be influenced by distribution of frequent reports, group meetings, and service line-directed interventions. Copyright Southeastern Surgical Congress. All rights reserved.

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Ang, D. N., & Behrns, K. E. (2013). Using a relational database to improve mortality and length of stay for a department of surgery: A comparative review of 5200 patients. American Surgeon, 79(7), 706–710. https://doi.org/10.1177/000313481307900715

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