Infectious disease surveillance needs for the United States: lessons from Covid-19
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Author(s)
Type
Journal Article
Abstract
The COVID-19 pandemic has highlighted the need to upgrade systems for infectious disease surveillance and forecasting and modeling of the spread of infection, both of which inform evidence-based public health guidance and policies. Here, we discuss requirements for an effective surveillance system to support decision making during a pandemic, drawing on the lessons of COVID-19 in the U.S., while looking to jurisdictions in the U.S. and beyond to learn lessons about the value of specific data types. In this report, we define the range of decisions for which surveillance data are required, the data elements needed to inform these decisions and to calibrate inputs and outputs of transmission-dynamic models, and the types of data needed to inform decisions by state, territorial, local, and tribal health authorities. We define actions needed to ensure that such data will be available and consider the contribution of such efforts to improving health equity.
Date Issued
2024-07-15
Date Acceptance
2024-06-18
Citation
Frontiers in Public Health, 2024, 12
ISSN
2296-2565
Publisher
Frontiers Media S.A.
Journal / Book Title
Frontiers in Public Health
Volume
12
Copyright Statement
© 2024 Lipsitch, Bassett, Brownstein, Elliott,
Eyre, Grabowski, Hay, Johansson, Kissler,
Larremore, Layden, Lessler, Lynfield,
MacCannell, Madoff, Metcalf, Meyers, Ofori,
Quinn, Bento, Reich, Riley, Rosenfeld,
Samore, Sampath, Slayton, Swerdlow,
Truelove, Varma and Grad. This is an
open-access article distributed under the
terms of the Creative Commons Attribution
License (CC BY). The use, distribution or
reproduction in other forums is permitted,
provided the original author(s) and the
copyright owner(s) are credited and that the
original publication in this journal is cited, in
accordance with accepted academic
practice. No use, distribution or reproduction
is permitted which does not comply with
these terms.
Eyre, Grabowski, Hay, Johansson, Kissler,
Larremore, Layden, Lessler, Lynfield,
MacCannell, Madoff, Metcalf, Meyers, Ofori,
Quinn, Bento, Reich, Riley, Rosenfeld,
Samore, Sampath, Slayton, Swerdlow,
Truelove, Varma and Grad. This is an
open-access article distributed under the
terms of the Creative Commons Attribution
License (CC BY). The use, distribution or
reproduction in other forums is permitted,
provided the original author(s) and the
copyright owner(s) are credited and that the
original publication in this journal is cited, in
accordance with accepted academic
practice. No use, distribution or reproduction
is permitted which does not comply with
these terms.
License URL
Identifier
https://www.ncbi.nlm.nih.gov/pubmed/39076420
Subjects
COVID-19
Humans
Pandemics
Population Surveillance
Public Health
SARS-CoV-2
United States
COVID-19
infectious diseases
mathematical model
pandemic
public health
surveillance and forecast system
Publication Status
Published
Coverage Spatial
Switzerland
Article Number
1408193
Date Publish Online
2024-07-15