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A hospital demand and capacity intervention approach for COVID-19

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A hospital demand and capacity intervention approach for COVID-19. / Van Yperen, James; Campillo-Funollet, Eduard; Inkpen, Rebecca et al.
In: PLoS One, Vol. 18, No. 5, e0283350, 03.05.2023.

Research output: Contribution to Journal/MagazineJournal articlepeer-review

Harvard

Van Yperen, J, Campillo-Funollet, E, Inkpen, R, Memon, A, Madzvamuse, A & Ndeffo-Mbah, ML (ed.) 2023, 'A hospital demand and capacity intervention approach for COVID-19', PLoS One, vol. 18, no. 5, e0283350. https://doi.org/10.1371/journal.pone.0283350

APA

Van Yperen, J., Campillo-Funollet, E., Inkpen, R., Memon, A., Madzvamuse, A., & Ndeffo-Mbah, M. L. (Ed.) (2023). A hospital demand and capacity intervention approach for COVID-19. PLoS One, 18(5), Article e0283350. https://doi.org/10.1371/journal.pone.0283350

Vancouver

Van Yperen J, Campillo-Funollet E, Inkpen R, Memon A, Madzvamuse A, Ndeffo-Mbah ML, (ed.). A hospital demand and capacity intervention approach for COVID-19. PLoS One. 2023 May 3;18(5):e0283350. doi: 10.1371/journal.pone.0283350

Author

Van Yperen, James ; Campillo-Funollet, Eduard ; Inkpen, Rebecca et al. / A hospital demand and capacity intervention approach for COVID-19. In: PLoS One. 2023 ; Vol. 18, No. 5.

Bibtex

@article{79ffde4370a94f0d857c43fe07f983a7,
title = "A hospital demand and capacity intervention approach for COVID-19",
abstract = "The mathematical interpretation of interventions for the mitigation of epidemics in the literature often involves finding the optimal time to initiate an intervention and/or the use of the number of infections to manage impact. Whilst these methods may work in theory, in order to implement effectively they may require information which is not likely to be available in the midst of an epidemic, or they may require impeccable data about infection levels in the community. In reality, testing and cases data can only be as good as the policy of implementation and the compliance of the individuals, which implies that accurately estimating the levels of infections becomes difficult or complicated from the data that is provided. In this paper, we demonstrate a different approach to the mathematical modelling of interventions, not based on optimality or cases, but based on demand and capacity of hospitals who have to deal with the epidemic on a day to day basis. In particular, we use data-driven modelling to calibrate a susceptible-exposed-infectious-recovered-died type model to infer parameters that depict the dynamics of the epidemic in several regions of the UK. We use the calibrated parameters for forecasting scenarios and understand, given a maximum capacity of hospital healthcare services, how the timing of interventions, severity of interventions, and conditions for the releasing of interventions affect the overall epidemic-picture. We provide an optimisation method to capture when, in terms of healthcare demand, an intervention should be put into place given a maximum capacity on the service. By using an equivalent agent-based approach, we demonstrate uncertainty quantification on the likelihood that capacity is not breached, by how much if it does, and the limit on demand that almost guarantees capacity is not breached.",
keywords = "Research Article, Research and analysis methods, Physical sciences, Medicine and health sciences, People and places, Computer and information sciences",
author = "{Van Yperen}, James and Eduard Campillo-Funollet and Rebecca Inkpen and Anjum Memon and Anotida Madzvamuse and Ndeffo-Mbah, {Martial L}",
year = "2023",
month = may,
day = "3",
doi = "10.1371/journal.pone.0283350",
language = "English",
volume = "18",
journal = "PLoS One",
issn = "1932-6203",
publisher = "Public Library of Science",
number = "5",

}

RIS

TY - JOUR

T1 - A hospital demand and capacity intervention approach for COVID-19

AU - Van Yperen, James

AU - Campillo-Funollet, Eduard

AU - Inkpen, Rebecca

AU - Memon, Anjum

AU - Madzvamuse, Anotida

A2 - Ndeffo-Mbah, Martial L

PY - 2023/5/3

Y1 - 2023/5/3

N2 - The mathematical interpretation of interventions for the mitigation of epidemics in the literature often involves finding the optimal time to initiate an intervention and/or the use of the number of infections to manage impact. Whilst these methods may work in theory, in order to implement effectively they may require information which is not likely to be available in the midst of an epidemic, or they may require impeccable data about infection levels in the community. In reality, testing and cases data can only be as good as the policy of implementation and the compliance of the individuals, which implies that accurately estimating the levels of infections becomes difficult or complicated from the data that is provided. In this paper, we demonstrate a different approach to the mathematical modelling of interventions, not based on optimality or cases, but based on demand and capacity of hospitals who have to deal with the epidemic on a day to day basis. In particular, we use data-driven modelling to calibrate a susceptible-exposed-infectious-recovered-died type model to infer parameters that depict the dynamics of the epidemic in several regions of the UK. We use the calibrated parameters for forecasting scenarios and understand, given a maximum capacity of hospital healthcare services, how the timing of interventions, severity of interventions, and conditions for the releasing of interventions affect the overall epidemic-picture. We provide an optimisation method to capture when, in terms of healthcare demand, an intervention should be put into place given a maximum capacity on the service. By using an equivalent agent-based approach, we demonstrate uncertainty quantification on the likelihood that capacity is not breached, by how much if it does, and the limit on demand that almost guarantees capacity is not breached.

AB - The mathematical interpretation of interventions for the mitigation of epidemics in the literature often involves finding the optimal time to initiate an intervention and/or the use of the number of infections to manage impact. Whilst these methods may work in theory, in order to implement effectively they may require information which is not likely to be available in the midst of an epidemic, or they may require impeccable data about infection levels in the community. In reality, testing and cases data can only be as good as the policy of implementation and the compliance of the individuals, which implies that accurately estimating the levels of infections becomes difficult or complicated from the data that is provided. In this paper, we demonstrate a different approach to the mathematical modelling of interventions, not based on optimality or cases, but based on demand and capacity of hospitals who have to deal with the epidemic on a day to day basis. In particular, we use data-driven modelling to calibrate a susceptible-exposed-infectious-recovered-died type model to infer parameters that depict the dynamics of the epidemic in several regions of the UK. We use the calibrated parameters for forecasting scenarios and understand, given a maximum capacity of hospital healthcare services, how the timing of interventions, severity of interventions, and conditions for the releasing of interventions affect the overall epidemic-picture. We provide an optimisation method to capture when, in terms of healthcare demand, an intervention should be put into place given a maximum capacity on the service. By using an equivalent agent-based approach, we demonstrate uncertainty quantification on the likelihood that capacity is not breached, by how much if it does, and the limit on demand that almost guarantees capacity is not breached.

KW - Research Article

KW - Research and analysis methods

KW - Physical sciences

KW - Medicine and health sciences

KW - People and places

KW - Computer and information sciences

U2 - 10.1371/journal.pone.0283350

DO - 10.1371/journal.pone.0283350

M3 - Journal article

VL - 18

JO - PLoS One

JF - PLoS One

SN - 1932-6203

IS - 5

M1 - e0283350

ER -