TY - JOUR
T1 - Expanding the use of mathematical modeling in healthcare epidemiology and infection prevention and control
AU - Grant, Rebecca
AU - Rubin, Michael
AU - Abbas, Mohamed
AU - Pittet, Didier
AU - Srinivasan, Arjun
AU - Jernigan, John A.
AU - Bell, Michael
AU - Samore, Matthew
AU - Harbarth, Stephan
AU - Slayton, Rachel B.
AU - Allegranzi, Benedetta
AU - Araos, Rafael
AU - Azzouz, Chedly
AU - Bemah, Philip
AU - Birgand, Gabriel
AU - Bootsma, Martin
AU - Borzykowski, Tcheun How
AU - Boszczowski, Icaro
AU - Buetti, Niccolò
AU - Carmeli, Yehuda
AU - Conly, John
AU - Cooper, Ben
AU - Cori, Anne
AU - Ruscio, Francesco Di
AU - Eyre, David
AU - Gasser, Michael
AU - Gastmeier, Petra
AU - Grad, Yonatan
AU - Graves, Nicholas
AU - Harris, Anthony
AU - Huang, Susan
AU - Hunter, Karima
AU - Jara, Alejandro
AU - Knight, Gwen
AU - Halpin, Alison Laufer
AU - Lessa, Fernanda
AU - Lipsitch, Marc
AU - Loeb, Mark
AU - Lofgren, Eric
AU - Marimuthu, Kalisvar
AU - McDonald, L. Clifford
AU - Okeke, Bonnie
AU - Park, Ben
AU - Quan, Glen Lelyn
AU - Reddy, Sujan
AU - Saito, Hiroki
AU - Schweizer, Marin
AU - Shenoy, Erica S.
AU - Stewardson, Andrew J.
AU - Timsit, Jean François
N1 - Publisher Copyright:
© The Author(s), 2024. Published by Cambridge University Press on behalf of The Society for Healthcare Epidemiology of America.
PY - 2024/8/1
Y1 - 2024/8/1
N2 - During the coronavirus disease 2019 pandemic, mathematical modeling has been widely used to understand epidemiological burden, trends, and transmission dynamics, to facilitate policy decisions, and, to a lesser extent, to evaluate infection prevention and control (IPC) measures. This review highlights the added value of using conventional epidemiology and modeling approaches to address the complexity of healthcare-associated infections (HAI) and antimicrobial resistance. It demonstrates how epidemiological surveillance data and modeling can be used to infer transmission dynamics in healthcare settings and to forecast healthcare impact, how modeling can be used to improve the validity of interpretation of epidemiological surveillance data, how modeling can be used to estimate the impact of IPC interventions, and how modeling can be used to guide IPC and antimicrobial treatment and stewardship decision-making. There are several priority areas for expanding the use of modeling in healthcare epidemiology and IPC. Importantly, modeling should be viewed as complementary to conventional healthcare epidemiological approaches, and this requires collaboration and active coordination between IPC, healthcare epidemiology, and mathematical modeling groups.
AB - During the coronavirus disease 2019 pandemic, mathematical modeling has been widely used to understand epidemiological burden, trends, and transmission dynamics, to facilitate policy decisions, and, to a lesser extent, to evaluate infection prevention and control (IPC) measures. This review highlights the added value of using conventional epidemiology and modeling approaches to address the complexity of healthcare-associated infections (HAI) and antimicrobial resistance. It demonstrates how epidemiological surveillance data and modeling can be used to infer transmission dynamics in healthcare settings and to forecast healthcare impact, how modeling can be used to improve the validity of interpretation of epidemiological surveillance data, how modeling can be used to estimate the impact of IPC interventions, and how modeling can be used to guide IPC and antimicrobial treatment and stewardship decision-making. There are several priority areas for expanding the use of modeling in healthcare epidemiology and IPC. Importantly, modeling should be viewed as complementary to conventional healthcare epidemiological approaches, and this requires collaboration and active coordination between IPC, healthcare epidemiology, and mathematical modeling groups.
UR - http://www.scopus.com/inward/record.url?scp=85203139515&partnerID=8YFLogxK
U2 - 10.1017/ice.2024.97
DO - 10.1017/ice.2024.97
M3 - Review article
C2 - 39228083
AN - SCOPUS:85203139515
SN - 0899-823X
VL - 45
SP - 930
EP - 935
JO - Infection control and hospital epidemiology
JF - Infection control and hospital epidemiology
IS - 8
ER -