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Estimating small area population from health intervention campaign surveys and partially observed settlement data

Estimating small area population from health intervention campaign surveys and partially observed settlement data
Estimating small area population from health intervention campaign surveys and partially observed settlement data
Effective governance requires timely and reliable small area population counts. Geospatial modelling approaches which utilise bespoke microcensus surveys and satellite-derived settlement maps and other spatial datasets have been developed to fill population data gaps in countries where censuses are outdated and incomplete. However, logistics and costs of microcensus surveys and tree canopy or cloud cover obscuring settlements in satellite images limit its wider applications in tropical rural settings. Here, we present a two-step Bayesian hierarchical modelling approach that can integrate routinely collected health intervention campaign data and partially observed settlement data to produce reliable small area population estimates. Reductions in relative error rates were 32-73% in a simulation study, and ~32% when applied to malaria survey data in Papua New Guinea. The results highlight the value of demographic data routinely collected through health intervention campaigns or household surveys for improving small area population estimates, and how biases introduced by satellite data limitations can be overcome.
Bayes Theorem, Health Promotion, Humans, Malaria/epidemiology, Papua New Guinea/epidemiology, Rural Population/statistics & numerical data, Satellite Imagery
2041-1723
Nnanatu, Chibuzor Christopher
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Bonnie, Amy
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Joseph, Josiah
1d0c963d-cafc-447c-82ce-59ca99060a7b
Yankey, Ortis
9965d053-8afb-462f-b7fe-b270e21f2ec1
Cihan, Duygu
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Gadiaga, Assane
eada3464-b0a2-4aaa-b594-eff8182c2aee
Voepel, Hal
7330972a-c61c-4058-b52c-3669fadfcf70
Abbott, Thomas
8b1d4865-a634-4b8a-a39a-ff8842709edd
Chamberlain, Heather R
cb939de7-ac47-440e-aeb8-a2e36c110785
Tia, Mercedita
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Sander, Marielle
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Davis, Justin
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Lazar, Attila N
d7f835e7-1e3d-4742-b366-af19cf5fc881
Tatem, Andrew J
6c6de104-a5f9-46e0-bb93-a1a7c980513e
Nnanatu, Chibuzor Christopher
24be7c1b-a677-4086-91b4-a9d9b1efa5a3
Bonnie, Amy
2f08b4e7-768a-4aa0-8c4c-4d23f0b01311
Joseph, Josiah
1d0c963d-cafc-447c-82ce-59ca99060a7b
Yankey, Ortis
9965d053-8afb-462f-b7fe-b270e21f2ec1
Cihan, Duygu
7303a5e8-759e-422d-a35c-890fbb594110
Gadiaga, Assane
eada3464-b0a2-4aaa-b594-eff8182c2aee
Voepel, Hal
7330972a-c61c-4058-b52c-3669fadfcf70
Abbott, Thomas
8b1d4865-a634-4b8a-a39a-ff8842709edd
Chamberlain, Heather R
cb939de7-ac47-440e-aeb8-a2e36c110785
Tia, Mercedita
e70847c4-86d6-443f-a9d5-e46267a5b9a9
Sander, Marielle
c44e7bd1-dd77-48da-98be-cb0a33e856f6
Davis, Justin
452b30b2-5a38-4a79-9e77-1e13e3714e73
Lazar, Attila N
d7f835e7-1e3d-4742-b366-af19cf5fc881
Tatem, Andrew J
6c6de104-a5f9-46e0-bb93-a1a7c980513e

Nnanatu, Chibuzor Christopher, Bonnie, Amy, Joseph, Josiah, Yankey, Ortis, Cihan, Duygu, Gadiaga, Assane, Voepel, Hal, Abbott, Thomas, Chamberlain, Heather R, Tia, Mercedita, Sander, Marielle, Davis, Justin, Lazar, Attila N and Tatem, Andrew J (2025) Estimating small area population from health intervention campaign surveys and partially observed settlement data. Nature Communications, 16 (1), [4951]. (doi:10.1038/s41467-025-59862-4).

Record type: Article

Abstract

Effective governance requires timely and reliable small area population counts. Geospatial modelling approaches which utilise bespoke microcensus surveys and satellite-derived settlement maps and other spatial datasets have been developed to fill population data gaps in countries where censuses are outdated and incomplete. However, logistics and costs of microcensus surveys and tree canopy or cloud cover obscuring settlements in satellite images limit its wider applications in tropical rural settings. Here, we present a two-step Bayesian hierarchical modelling approach that can integrate routinely collected health intervention campaign data and partially observed settlement data to produce reliable small area population estimates. Reductions in relative error rates were 32-73% in a simulation study, and ~32% when applied to malaria survey data in Papua New Guinea. The results highlight the value of demographic data routinely collected through health intervention campaigns or household surveys for improving small area population estimates, and how biases introduced by satellite data limitations can be overcome.

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s41467-025-59862-4 - Version of Record
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Accepted/In Press date: 2 May 2025
Published date: 28 May 2025
Additional Information: © 2025. The Author(s).
Keywords: Bayes Theorem, Health Promotion, Humans, Malaria/epidemiology, Papua New Guinea/epidemiology, Rural Population/statistics & numerical data, Satellite Imagery

Identifiers

Local EPrints ID: 501620
URI: http://eprints.soton.ac.uk/id/eprint/501620
ISSN: 2041-1723
PURE UUID: 0af87df8-14dd-4261-b2dd-b8f573a950c3
ORCID for Chibuzor Christopher Nnanatu: ORCID iD orcid.org/0000-0002-5841-3700
ORCID for Amy Bonnie: ORCID iD orcid.org/0000-0002-8814-3828
ORCID for Ortis Yankey: ORCID iD orcid.org/0000-0002-0808-884X
ORCID for Hal Voepel: ORCID iD orcid.org/0000-0001-7375-1460
ORCID for Heather R Chamberlain: ORCID iD orcid.org/0000-0003-0828-6974
ORCID for Attila N Lazar: ORCID iD orcid.org/0000-0003-2033-2013
ORCID for Andrew J Tatem: ORCID iD orcid.org/0000-0002-7270-941X

Catalogue record

Date deposited: 04 Jun 2025 16:54
Last modified: 03 Sep 2025 02:05

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Contributors

Author: Chibuzor Christopher Nnanatu ORCID iD
Author: Amy Bonnie ORCID iD
Author: Josiah Joseph
Author: Ortis Yankey ORCID iD
Author: Duygu Cihan
Author: Assane Gadiaga
Author: Hal Voepel ORCID iD
Author: Thomas Abbott
Author: Mercedita Tia
Author: Marielle Sander
Author: Justin Davis
Author: Attila N Lazar ORCID iD
Author: Andrew J Tatem ORCID iD

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