Mathematical modeling as a tool for policy decision making: Applications to the COVID-19 pandemic

Publikation: Bidrag til bog/antologi/rapportBidrag til bog/antologiForskningfagfællebedømt

Standard

Mathematical modeling as a tool for policy decision making : Applications to the COVID-19 pandemic. / Panovska-Griffiths, J.; Kerr, C. C.; Waites, W.; Stuart, R. M.

Handbook of Statistics. Elsevier, 2021. s. 291-326 (Handbook of Statistics, Bind 44).

Publikation: Bidrag til bog/antologi/rapportBidrag til bog/antologiForskningfagfællebedømt

Harvard

Panovska-Griffiths, J, Kerr, CC, Waites, W & Stuart, RM 2021, Mathematical modeling as a tool for policy decision making: Applications to the COVID-19 pandemic. i Handbook of Statistics. Elsevier, Handbook of Statistics, bind 44, s. 291-326. https://doi.org/10.1016/bs.host.2020.12.001

APA

Panovska-Griffiths, J., Kerr, C. C., Waites, W., & Stuart, R. M. (2021). Mathematical modeling as a tool for policy decision making: Applications to the COVID-19 pandemic. I Handbook of Statistics (s. 291-326). Elsevier. Handbook of Statistics Bind 44 https://doi.org/10.1016/bs.host.2020.12.001

Vancouver

Panovska-Griffiths J, Kerr CC, Waites W, Stuart RM. Mathematical modeling as a tool for policy decision making: Applications to the COVID-19 pandemic. I Handbook of Statistics. Elsevier. 2021. s. 291-326. (Handbook of Statistics, Bind 44). https://doi.org/10.1016/bs.host.2020.12.001

Author

Panovska-Griffiths, J. ; Kerr, C. C. ; Waites, W. ; Stuart, R. M. / Mathematical modeling as a tool for policy decision making : Applications to the COVID-19 pandemic. Handbook of Statistics. Elsevier, 2021. s. 291-326 (Handbook of Statistics, Bind 44).

Bibtex

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title = "Mathematical modeling as a tool for policy decision making: Applications to the COVID-19 pandemic",
abstract = "The coronavirus disease 2019 (COVID-19) pandemic highlighted the importance of mathematical modeling in advising scientific bodies and informing public policy making. Modeling allows a flexible theoretical framework to be developed in which different scenarios around spread of diseases and strategies to prevent it can be explored. This work brings together perspectives on mathematical modeling of infectious diseases, highlights the different modeling frameworks that have been used for modeling COVID-19 and illustrates some of the models that our groups have developed and applied specifically for COVID-19. We discuss three models for COVID-19 spread: the modified Susceptible-Exposed-Infected-Recovered model that incorporates contact tracing (SEIR-TTI model) and describes the spread of COVID-19 among these population cohorts, the more detailed agent-based model called Covasim describing transmission between individuals, and the Rule-Based Model (RBM) which can be thought of as a combination of both. We showcase the key methodologies of these approaches, their differences as well as the ways in which they are interlinked. We illustrate their applicability to answer pertinent questions associated with the COVID-19 pandemic such as quantifying and forecasting the impacts of different test-trace-isolate (TTI) strategies.",
keywords = "Agent-based models, COVID-19, Epidemiological modeling, Rule-based models, SEIR models",
author = "J. Panovska-Griffiths and Kerr, {C. C.} and W. Waites and Stuart, {R. M.}",
year = "2021",
doi = "10.1016/bs.host.2020.12.001",
language = "English",
series = "Handbook of Statistics",
publisher = "Elsevier",
pages = "291--326",
booktitle = "Handbook of Statistics",
address = "Netherlands",

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RIS

TY - CHAP

T1 - Mathematical modeling as a tool for policy decision making

T2 - Applications to the COVID-19 pandemic

AU - Panovska-Griffiths, J.

AU - Kerr, C. C.

AU - Waites, W.

AU - Stuart, R. M.

PY - 2021

Y1 - 2021

N2 - The coronavirus disease 2019 (COVID-19) pandemic highlighted the importance of mathematical modeling in advising scientific bodies and informing public policy making. Modeling allows a flexible theoretical framework to be developed in which different scenarios around spread of diseases and strategies to prevent it can be explored. This work brings together perspectives on mathematical modeling of infectious diseases, highlights the different modeling frameworks that have been used for modeling COVID-19 and illustrates some of the models that our groups have developed and applied specifically for COVID-19. We discuss three models for COVID-19 spread: the modified Susceptible-Exposed-Infected-Recovered model that incorporates contact tracing (SEIR-TTI model) and describes the spread of COVID-19 among these population cohorts, the more detailed agent-based model called Covasim describing transmission between individuals, and the Rule-Based Model (RBM) which can be thought of as a combination of both. We showcase the key methodologies of these approaches, their differences as well as the ways in which they are interlinked. We illustrate their applicability to answer pertinent questions associated with the COVID-19 pandemic such as quantifying and forecasting the impacts of different test-trace-isolate (TTI) strategies.

AB - The coronavirus disease 2019 (COVID-19) pandemic highlighted the importance of mathematical modeling in advising scientific bodies and informing public policy making. Modeling allows a flexible theoretical framework to be developed in which different scenarios around spread of diseases and strategies to prevent it can be explored. This work brings together perspectives on mathematical modeling of infectious diseases, highlights the different modeling frameworks that have been used for modeling COVID-19 and illustrates some of the models that our groups have developed and applied specifically for COVID-19. We discuss three models for COVID-19 spread: the modified Susceptible-Exposed-Infected-Recovered model that incorporates contact tracing (SEIR-TTI model) and describes the spread of COVID-19 among these population cohorts, the more detailed agent-based model called Covasim describing transmission between individuals, and the Rule-Based Model (RBM) which can be thought of as a combination of both. We showcase the key methodologies of these approaches, their differences as well as the ways in which they are interlinked. We illustrate their applicability to answer pertinent questions associated with the COVID-19 pandemic such as quantifying and forecasting the impacts of different test-trace-isolate (TTI) strategies.

KW - Agent-based models

KW - COVID-19

KW - Epidemiological modeling

KW - Rule-based models

KW - SEIR models

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U2 - 10.1016/bs.host.2020.12.001

DO - 10.1016/bs.host.2020.12.001

M3 - Book chapter

AN - SCOPUS:85100430946

T3 - Handbook of Statistics

SP - 291

EP - 326

BT - Handbook of Statistics

PB - Elsevier

ER -

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