A Data-Driven Analysis of Ward Capacity Strain Metrics That Predict Clinical Outcomes Among Survivors of Acute Respiratory Failure.
Rachel KohnMichael O HarhayGary E WeissmanRyan UrbanowiczWei WangGeorge L AnesiStefania ScottBrian BayesS Ryan GreysenScott D HalpernMeeta Prasad KerlinPublished in: Journal of medical systems (2023)
Supply-demand mismatch of ward resources ("ward capacity strain") alters care and outcomes. Narrow strain definitions and heterogeneous populations limit strain literature. Evaluate the predictive utility of a large set of candidate strain variables for in-hospital mortality and discharge destination among acute respiratory failure (ARF) survivors. In a retrospective cohort of ARF survivors transferred from intensive care units (ICUs) to wards in five hospitals from 4/2017-12/2019, we applied 11 machine learning (ML) models to identify ward strain measures during the first 24 hours after transfer most predictive of outcomes. Measures spanned patient volume (census, admissions, discharges), staff workload (medications administered, off-ward transports, transfusions, isolation precautions, patients per respiratory therapist and nurse), and average patient acuity (Laboratory Acute Physiology Score version 2, ICU transfers) domains. The cohort included 5,052 visits in 43 wards. Median age was 65 years (IQR 56-73); 2,865 (57%) were male; and 2,865 (57%) were white. 770 (15%) patients died in the hospital or had hospice discharges, and 2,628 (61%) were discharged home and 964 (23%) to skilled nursing facilities (SNFs). Ward admissions, isolation precautions, and hospital admissions most consistently predicted in-hospital mortality across ML models. Patients per nurse most consistently predicted discharge to home and SNF, and medications administered predicted SNF discharge. In this hypothesis-generating analysis of candidate ward strain variables' prediction of outcomes among ARF survivors, several variables emerged as consistently predictive of key outcomes across ML models. These findings suggest targets for future inferential studies to elucidate mechanisms of ward strain's adverse effects.
Keyphrases
- respiratory failure
- end stage renal disease
- healthcare
- machine learning
- ejection fraction
- mechanical ventilation
- chronic kidney disease
- extracorporeal membrane oxygenation
- newly diagnosed
- prognostic factors
- liver failure
- primary care
- peritoneal dialysis
- patient reported outcomes
- type diabetes
- emergency department
- adipose tissue
- case report
- hepatitis b virus
- artificial intelligence
- metabolic syndrome
- mental health
- aortic dissection
- pain management
- acute respiratory distress syndrome
- quality improvement
- chronic pain
- skeletal muscle
- electronic health record