Risk-adjusted policies to minimise perioperative staffing shortages during a pandemic: An agent-based simulation study

Epidemiol Infect. 2023 Apr 3:151:e66. doi: 10.1017/S0950268823000511.

Abstract

Healthcare workers' (HCWs) safety and availability to care for patients are critical during a pandemic such as the one caused by severe acute respiratory syndrome coronavirus 2. Among providers of different specialities, it is critical to protect those working in hospital settings with a high risk of infection. Using an agent-based simulation model, various staffing policies were developed and simulated for 90 days using data from the largest health systems in South Carolina. The model considers staffing policies that include geographic segregation, interpersonal contact limits, and a combination of factors, including the patient census, transmission rates, vaccination status of providers, hospital capacity, incubation time, quarantine period, and interactions between patients and providers. Comparing the existing practices to various risk-adjusted staffing policies, model predictions show that restricted teaming and rotating schedules significantly (p-value <0.01) reduced weekly HCW unavailability and the number of infected HCWs by 22% and 38%, respectively, when the vaccination rates among HCWs were lower (<75%). However, as the vaccination rate increases, the benefits of risk-adjusted policies diminish; and when 90% of HCWs were vaccinated, there were no significant (p-value = 0.09) benefits. Although these simulated outcomes are specific to one health system, our findings can be generalised to other health systems with multiple locations.

Keywords: COVID-19; health policy; infectious disease control; modelling; public health.

MeSH terms

  • COVID-19* / prevention & control
  • Contact Tracing
  • Health Personnel
  • Health Policy*
  • Humans
  • Pandemics* / prevention & control
  • Public Health
  • Vaccination
  • Workforce*