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A local space–time kriging approach applied to a national outpatient malaria data set

Increases in the availability of reliable health data are widely recognised as essential for efforts to strengthen health-care systems in resource-poor settings worldwide. Effective health-system planning requires comprehensive and up-to-date information on a range of health metrics and this require...

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Detalles Bibliográficos
Autores principales: Gething, P.W., Atkinson, P.M., Noor, A.M., Gikandi, P.W., Hay, S.I., Nixon, M.S.
Formato: Texto
Lenguaje:English
Publicado: Pergamon Press 2007
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2677680/
https://www.ncbi.nlm.nih.gov/pubmed/19424510
http://dx.doi.org/10.1016/j.cageo.2007.05.006
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author Gething, P.W.
Atkinson, P.M.
Noor, A.M.
Gikandi, P.W.
Hay, S.I.
Nixon, M.S.
author_facet Gething, P.W.
Atkinson, P.M.
Noor, A.M.
Gikandi, P.W.
Hay, S.I.
Nixon, M.S.
author_sort Gething, P.W.
collection PubMed
description Increases in the availability of reliable health data are widely recognised as essential for efforts to strengthen health-care systems in resource-poor settings worldwide. Effective health-system planning requires comprehensive and up-to-date information on a range of health metrics and this requirement is generally addressed by a Health Management Information System (HMIS) that coordinates the routine collection of data at individual health facilities and their compilation into national databases. In many resource-poor settings, these systems are inadequate and national databases often contain only a small proportion of the expected records. In this paper, we take an important health metric in Kenya (the proportion of outpatient treatments for malaria (MP)) from the national HMIS database and predict the values of MP at facilities where monthly records are missing. The available MP data were densely distributed across a spatiotemporal domain and displayed second-order heterogeneity. We used three different kriging methodologies to make cross-validation predictions of MP in order to test the effect on prediction accuracy of (a) the extension of a spatial-only to a space–time prediction approach, and (b) the replacement of a globally stationary with a locally varying random function model. Space–time kriging was found to produce predictions with 98.4% less mean bias and 14.8% smaller mean imprecision than conventional spatial-only kriging. A modification of space–time kriging that allowed space–time variograms to be recalculated for every prediction location within a spatially local neighbourhood resulted in a larger decrease in mean imprecision over ordinary kriging (18.3%) although the mean bias was reduced less (87.5%).
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spelling pubmed-26776802009-05-06 A local space–time kriging approach applied to a national outpatient malaria data set Gething, P.W. Atkinson, P.M. Noor, A.M. Gikandi, P.W. Hay, S.I. Nixon, M.S. Comput Geosci Article Increases in the availability of reliable health data are widely recognised as essential for efforts to strengthen health-care systems in resource-poor settings worldwide. Effective health-system planning requires comprehensive and up-to-date information on a range of health metrics and this requirement is generally addressed by a Health Management Information System (HMIS) that coordinates the routine collection of data at individual health facilities and their compilation into national databases. In many resource-poor settings, these systems are inadequate and national databases often contain only a small proportion of the expected records. In this paper, we take an important health metric in Kenya (the proportion of outpatient treatments for malaria (MP)) from the national HMIS database and predict the values of MP at facilities where monthly records are missing. The available MP data were densely distributed across a spatiotemporal domain and displayed second-order heterogeneity. We used three different kriging methodologies to make cross-validation predictions of MP in order to test the effect on prediction accuracy of (a) the extension of a spatial-only to a space–time prediction approach, and (b) the replacement of a globally stationary with a locally varying random function model. Space–time kriging was found to produce predictions with 98.4% less mean bias and 14.8% smaller mean imprecision than conventional spatial-only kriging. A modification of space–time kriging that allowed space–time variograms to be recalculated for every prediction location within a spatially local neighbourhood resulted in a larger decrease in mean imprecision over ordinary kriging (18.3%) although the mean bias was reduced less (87.5%). Pergamon Press 2007-10 /pmc/articles/PMC2677680/ /pubmed/19424510 http://dx.doi.org/10.1016/j.cageo.2007.05.006 Text en © 2007 Elsevier Ltd. https://creativecommons.org/licenses/by/3.0/ Open Access under CC BY 3.0 (https://creativecommons.org/licenses/by/3.0/) license
spellingShingle Article
Gething, P.W.
Atkinson, P.M.
Noor, A.M.
Gikandi, P.W.
Hay, S.I.
Nixon, M.S.
A local space–time kriging approach applied to a national outpatient malaria data set
title A local space–time kriging approach applied to a national outpatient malaria data set
title_full A local space–time kriging approach applied to a national outpatient malaria data set
title_fullStr A local space–time kriging approach applied to a national outpatient malaria data set
title_full_unstemmed A local space–time kriging approach applied to a national outpatient malaria data set
title_short A local space–time kriging approach applied to a national outpatient malaria data set
title_sort local space–time kriging approach applied to a national outpatient malaria data set
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2677680/
https://www.ncbi.nlm.nih.gov/pubmed/19424510
http://dx.doi.org/10.1016/j.cageo.2007.05.006
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