Litcius/Paper detail

Data-Driven Nurse Staffing in the Neonatal Intensive Care Unit

Keith Feldman, Annie Rohan

2022MCN The American Journal of Maternal/Child Nursing13 citationsDOI

Abstract

ABSTRACT: The challenge of nurse staffing is amplified in the acute care neonatal intensive care unit (NICU) setting, where a wide range of highly variable factors affect staffing. A comprehensive overview of infant factors (severity, intensity), nurse factors (education, experience, preferences, team dynamics), and unit factors (structure, layout, shift length, care model) influencing pre-shift NICU staffing is presented, along with how intra-shift variability of these and other factors must be accounted for to maintain effective and efficient assignments. There is opportunity to improve workload estimations and acuity measures for pre-shift staffing using technology and predictive analytics. Nurse staffing decisions affected by intra-shift factor variability can be enhanced using novel care models that decentralize decision-making. Improving NICU staffing requires a deliberate, systematic, data-driven approach, with commitment from nurses, resources from the management team, and an institutional culture prioritizing patient safety.

Topics & Concepts

StaffingWorkloadNeonatal intensive care unitNursingIntensive care unitMedicineBusinessMedical emergencyIntensive care medicineComputer sciencePediatricsOperating systemHealthcare Technology and Patient MonitoringSepsis Diagnosis and TreatmentHemodynamic Monitoring and Therapy