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A Simulation Model for Predicting Hospital Occupancy for Covid-19 Using Archetype Analysis

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Date 2023 Jun 5
PMID 37275436
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Abstract

COVID-19 pandemic has sent millions of people to hospitals worldwide, exhausting on many occasions the capacity of healthcare systems to provide care patients required to survive. Although several epidemiological research works have contributed a variety of models and approaches to anticipate the pandemic spread, very few have tried to translate the output of these models into hospital service requirements, particularly in terms of bed occupancy, a key question for hospital managers. This paper proposes a tool for predicting the current and future occupancy associated with COVID-19 patients of a hospital to help managers make informed decisions to maximize the availability of hospitalization and intensive care unit (ICU) beds and ensure adequate access to services for confirmed COVID-19 patients. The proposed tool uses a discrete event simulation approach that uses archetypes (i.e., empirical models of trajectories) extracted from empirical analysis of actual patient trajectories. Archetypes can be fitted to trajectories observed in different regions or to the particularities of current and forthcoming variants using a rather small amount of data. Numerical experiments on realistic instances demonstrate the accuracy of the tool's predictions and illustrate how it can support managers in their daily decisions concerning the system's capacity and ensure patients the access the resources they require.

References
1.
Berger T . Feedback control of the COVID-19 pandemic with guaranteed non-exceeding ICU capacity. Syst Control Lett. 2022; 160:105111. PMC: 8709805. DOI: 10.1016/j.sysconle.2021.105111. View

2.
Palmer R, Fulop N, Utley M . A systematic literature review of operational research methods for modelling patient flow and outcomes within community healthcare and other settings. Health Syst (Basingstoke). 2019; 7(1):29-50. PMC: 6452842. DOI: 10.1057/s41306-017-0024-9. View

3.
Zhou F, Yu T, Du R, Fan G, Liu Y, Liu Z . Clinical course and risk factors for mortality of adult inpatients with COVID-19 in Wuhan, China: a retrospective cohort study. Lancet. 2020; 395(10229):1054-1062. PMC: 7270627. DOI: 10.1016/S0140-6736(20)30566-3. View

4.
Klein M, Cheng C, Lii E, Mao K, Mesbahi H, Zhu T . COVID-19 Models for Hospital Surge Capacity Planning: A Systematic Review. Disaster Med Public Health Prep. 2020; 16(1):390-397. PMC: 7643009. DOI: 10.1017/dmp.2020.332. View

5.
Lam S, Pourghaderi A, Abdullah H, Nguyen F, Siddiqui F, Ansah J . An Agile Systems Modeling Framework for Bed Resource Planning During COVID-19 Pandemic in Singapore. Front Public Health. 2022; 10:714092. PMC: 9157760. DOI: 10.3389/fpubh.2022.714092. View