Ward Capacity Strain: A Novel Predictor of Delays in Intensive Care Unit Survivor Throughput

In prior research of intensive care units (ICUs) (2, 3) and emergency departments (EDs) (4), higher patient volume, turnover, and severity of illness have shown associations with patient outcomes (e.g., mortality), patient throughput, and care delivery (5-11). Variables included ward-level measures...

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Published inAnnals of the American Thoracic Society Vol. 16; no. 3; pp. 387 - 390
Main Authors Kohn, Rachel, Harhay, Michael O, Weissman, Gary E, Anesi, George L, Bayes, Brian, Greysen, S Ryan, Ratcliffe, Sarah J, Halpern, Scott D, Prasad Kerlin, Meeta
Format Journal Article
LanguageEnglish
Published United States American Thoracic Society 01.03.2019
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ISSN2329-6933
2325-6621
2325-6621
DOI10.1513/AnnalsATS.201809-621RL

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Summary:In prior research of intensive care units (ICUs) (2, 3) and emergency departments (EDs) (4), higher patient volume, turnover, and severity of illness have shown associations with patient outcomes (e.g., mortality), patient throughput, and care delivery (5-11). Variables included ward-level measures of patient volume (census, numbers of admissions and discharges), staff workload (presence of any off-ward transports and transfusions, and numbers of medications administered and respiratory therapy orders), and overall acuity (number of patients on telemetry, presence of any patients with quick Sequential Organ Failure Assessment >2 [24], and ICU transfers). To identify strain variables associated with longer admission wait times and to quantify the variance explained by ward capacity strain, we estimated two least absolute shrinkage and selection operator (LASSO) (25) regressions, a method for building parsimonious regression models that selects variables in descending order of variance explained and incorporates a penalty for adding more variables. [...]LASSO regression is only one of multiple penalized regression and alternate methods to identify predictors of ward admission wait times.
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Statistical Editor, AnnalsATS. Their participation complies with American Thoracic Society requirements for recusal from review and decisions for authored works.
ISSN:2329-6933
2325-6621
2325-6621
DOI:10.1513/AnnalsATS.201809-621RL