Data-driven modelling of IRCU patient flow during the COVID-19 pandemic
Metadatos
Mostrar el registro completo del ítemAutor
Navas-Ortega, Ana Carmen; Sánchez Martínez, José Antonio; García-Flores, Paula Isabel; Morales-Garcia, Concepcion; Fabregas, ReneEditorial
Elsevier
Materia
Intermediate respiratory care unit COVID-19 Non-invasive ventilation
Fecha
2025-06Referencia bibliográfica
Publisher version: Navas-Ortega, A. C., Sánchez-Martínez, J. A., García-Flores, P., Morales-García, C., & Fabregas, R. (2025). Data-driven modelling of IRCU patient flow during the COVID-19 pandemic. Computational and Structural Biotechnology Journal, 27, 4657-4667. https://doi.org/10.1016/j.csbj.2025.10.017
Patrocinador
Spanish Ministerio de Universidades and Next-Generation EU, María Zambrano-Senior grant; Consejería de Universidad, Investigación & Innovación & ERDF/EU Andalusia Program, C-EXP-265-UGR23; Spanish Ministerio de Ciencia, Innovación y Universidades, PID2022-137228OB I00; Project QUAL21-011Resumen
Intermediate Respiratory Care Units (IRCUs) are vital during crises like COVID-19. This study evaluated clinical outcomes and operational dynamics of a new Spanish IRCU with specialised staffing. A prospective cohort study (April-August 2021) included 249 adult patients with COVID-19 respiratory failure (UHVN IRCU, Granada). Data on demographics, Non-Invasive Ventilation (NIV), length of stay (LOS), and outcomes (ICU transfer, exitus, recovery) were analysed. Patient flow was simulated using a data-calibrated deterministic compartmental model (Ordinary Differential Equations, ODEs) that represented state transitions, and an empirical LOS-based stochastic convolution model that incorporated admission variability. The median age was 51; 31% of patients required NIV. NIV patients were older (median 61 vs 42, p<0.001). Overall, 8% needed ICU transfer; 3% experienced in-IRCU exitus. Notably, no ICU transfers or deaths occurred among 172 non-NIV patients. Of 77 high-risk NIV patients, 68% recovered in IRCU without ICU escalation. The ODE model, based on transition rates between patient states, reflected aggregate outcomes. Both modelling approaches demonstrated system strain during admission surges (partially mitigated by simulated improvements in care efficiency via parameter modulation) and yielded consistent peak occupancy estimates. This IRCU, with specialised staffing, effectively managed severe COVID-19. High recovery rates, especially for NIV patients, potentially eased ICU pressure. Dynamic modelling confirmed surge vulnerability but highlighted the benefits of care efficiency from modulated transition parameters. Findings underscore positive outcomes in this IRCU model and support such units in pandemic response.





