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Small area population denominators for improved disease surveillance and response

Small area population denominators for improved disease surveillance and response
Small area population denominators for improved disease surveillance and response
The Covid-19 pandemic has highlighted the value of strong surveillance systems in supporting our abilities to respond rapidly and effectively in mitigating the impacts of infectious diseases. A cornerstone of such systems is basic subnational scale data on populations and their demographics, which enable the scale of outbreaks to be assessed, risk to specific groups to be determined and appropriate interventions to be designed. Ongoing weaknesses and gaps in such data have however been highlighted by the pandemic. These can include outdated or inaccurate census data and a lack of administrative and registry systems to update numbers, particularly in low and middle income settings. Efforts to design and implement globally consistent geospatial modelling methods for the production of small area demographic data that can be flexibly integrated into health-focussed surveillance and information systems have been made, but these often remain based on outdated population data or uncertain projections. In recent years, efforts have been made to capitalise on advances in computing power, satellite imagery and new forms of digital data to construct methods for estimating small area population distributions across national and regional scales in the absence of full enumeration. These are starting to be used to complement more traditional data collection approaches, especially in the delivery of health interventions, but barriers remain to their widespread adoption and use in disease surveillance and response. Here an overview of these approaches is presented, together with discussion of future directions and needs.
COVID-19/epidemiology, Data Collection, Disease Outbreaks, Humans, Pandemics, Population Surveillance/methods
1755-4365
Tatem, A. J.
6c6de104-a5f9-46e0-bb93-a1a7c980513e
Tatem, A. J.
6c6de104-a5f9-46e0-bb93-a1a7c980513e

Tatem, A. J. (2022) Small area population denominators for improved disease surveillance and response. Epidemics, 40, [100597]. (doi:10.1016/j.epidem.2022.100597).

Record type: Review

Abstract

The Covid-19 pandemic has highlighted the value of strong surveillance systems in supporting our abilities to respond rapidly and effectively in mitigating the impacts of infectious diseases. A cornerstone of such systems is basic subnational scale data on populations and their demographics, which enable the scale of outbreaks to be assessed, risk to specific groups to be determined and appropriate interventions to be designed. Ongoing weaknesses and gaps in such data have however been highlighted by the pandemic. These can include outdated or inaccurate census data and a lack of administrative and registry systems to update numbers, particularly in low and middle income settings. Efforts to design and implement globally consistent geospatial modelling methods for the production of small area demographic data that can be flexibly integrated into health-focussed surveillance and information systems have been made, but these often remain based on outdated population data or uncertain projections. In recent years, efforts have been made to capitalise on advances in computing power, satellite imagery and new forms of digital data to construct methods for estimating small area population distributions across national and regional scales in the absence of full enumeration. These are starting to be used to complement more traditional data collection approaches, especially in the delivery of health interventions, but barriers remain to their widespread adoption and use in disease surveillance and response. Here an overview of these approaches is presented, together with discussion of future directions and needs.

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Accepted/In Press date: 13 June 2022
e-pub ahead of print date: 17 June 2022
Published date: September 2022
Additional Information: Funding Information: AJT is supported by funding from the Bill & Melinda Gates Foundation ( OPP1106427 , OPP1032350 , OPP1134076 , OPP1094793 ), the Clinton Health Access Initiative, the UK Foreign, Commonwealth and Development Office (UK-FCDO), the Wellcome Trust ( 106866/Z/15/Z , 204613/Z/16/Z ), the National Institutes of Health ( R01AI160780 ), and the EU H2020 ( MOOD 874850 ). Publisher Copyright: © 2022
Keywords: COVID-19/epidemiology, Data Collection, Disease Outbreaks, Humans, Pandemics, Population Surveillance/methods

Identifiers

Local EPrints ID: 468942
URI: http://eprints.soton.ac.uk/id/eprint/468942
ISSN: 1755-4365
PURE UUID: 20a2faca-1244-4030-a3d4-81c572dd8384
ORCID for A. J. Tatem: ORCID iD orcid.org/0000-0002-7270-941X

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Date deposited: 01 Sep 2022 17:03
Last modified: 18 Mar 2024 03:22

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