Characterizing human mobility patterns in rural settings of sub-Saharan Africa
Characterizing human mobility patterns in rural settings of sub-Saharan Africa
Human mobility is a core component of human behavior and its quantification is critical for understanding its impact on infectious disease transmission, traffic forecasting, access to resources and care, intervention strategies, and migratory flows. When mobility data are limited, spatial interaction models have been widely used to estimate human travel, but have not been extensively validated in low- and middle-income settings. Geographic, sociodemographic, and infrastructure differences may impact the ability for models to capture these patterns, particularly in rural settings. Here, we analyzed mobility patterns inferred from mobile phone data in four Sub-Saharan African countries to investigate the ability for variants on gravity and radiation models to estimate travel. Adjusting the gravity model such that parameters were fit to different trip types, including travel between more or less populated areas and/or different regions, improved model fit in all four countries. This suggests that alternative models may be more useful in these settings and better able to capture the range of mobility patterns observed.
Meredith, Hannah R.
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Giles, John R.
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Perez-Saez, Javier
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Mande, Theophile
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Rinaldo, Andrea
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Mutembo, Simon
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Kabalo, Elliot N.
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Makungo, Kabondo
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Buckee, Caroline O.
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Tatem, Andrew J.
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Metcalf, C. Jessica E.
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Wesolowski, Amy
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17 September 2021
Meredith, Hannah R.
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Giles, John R.
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Perez-Saez, Javier
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Mande, Theophile
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Rinaldo, Andrea
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Mutembo, Simon
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Kabalo, Elliot N.
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Makungo, Kabondo
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Buckee, Caroline O.
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Tatem, Andrew J.
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Metcalf, C. Jessica E.
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Wesolowski, Amy
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Meredith, Hannah R., Giles, John R., Perez-Saez, Javier, Mande, Theophile, Rinaldo, Andrea, Mutembo, Simon, Kabalo, Elliot N., Makungo, Kabondo, Buckee, Caroline O., Tatem, Andrew J., Metcalf, C. Jessica E. and Wesolowski, Amy
(2021)
Characterizing human mobility patterns in rural settings of sub-Saharan Africa.
eLife, 10.
(doi:10.7554/eLife.68441).
Abstract
Human mobility is a core component of human behavior and its quantification is critical for understanding its impact on infectious disease transmission, traffic forecasting, access to resources and care, intervention strategies, and migratory flows. When mobility data are limited, spatial interaction models have been widely used to estimate human travel, but have not been extensively validated in low- and middle-income settings. Geographic, sociodemographic, and infrastructure differences may impact the ability for models to capture these patterns, particularly in rural settings. Here, we analyzed mobility patterns inferred from mobile phone data in four Sub-Saharan African countries to investigate the ability for variants on gravity and radiation models to estimate travel. Adjusting the gravity model such that parameters were fit to different trip types, including travel between more or less populated areas and/or different regions, improved model fit in all four countries. This suggests that alternative models may be more useful in these settings and better able to capture the range of mobility patterns observed.
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elife-68441-v1
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Accepted/In Press date: 21 August 2021
Published date: 17 September 2021
Identifiers
Local EPrints ID: 456060
URI: http://eprints.soton.ac.uk/id/eprint/456060
ISSN: 2050-084X
PURE UUID: d6140228-2a4b-435f-951c-463d6c120dda
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Date deposited: 25 Apr 2022 16:44
Last modified: 17 Mar 2024 03:29
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Contributors
Author:
Hannah R. Meredith
Author:
John R. Giles
Author:
Javier Perez-Saez
Author:
Theophile Mande
Author:
Andrea Rinaldo
Author:
Simon Mutembo
Author:
Elliot N. Kabalo
Author:
Kabondo Makungo
Author:
Caroline O. Buckee
Author:
C. Jessica E. Metcalf
Author:
Amy Wesolowski
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