Modelling the relationship between malaria prevalence as a measure of transmission and mortality across age groups

Abstract Background Parasite prevalence has been used widely as a measure of malaria transmission, especially in malaria endemic areas. However, its contribution and relationship to malaria mortality across different age groups has not been well investigated. Previous studies in a health and demogra...

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Main Authors: Sammy Khagayi, Meghna Desai, Nyaguara Amek, Vincent Were, Eric Donald Onyango, Christopher Odero, Kephas Otieno, Godfrey Bigogo, Stephen Munga, Frank Odhiambo, Mary J. Hamel, Simon Kariuki, Aaron M. Samuels, Laurence Slutsker, John Gimnig, Penelope Vounatsou
Format: Article
Language:English
Published: BMC 2019-07-01
Series:Malaria Journal
Subjects:
Online Access:http://link.springer.com/article/10.1186/s12936-019-2869-9
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language English
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author Sammy Khagayi
Meghna Desai
Nyaguara Amek
Vincent Were
Eric Donald Onyango
Christopher Odero
Kephas Otieno
Godfrey Bigogo
Stephen Munga
Frank Odhiambo
Mary J. Hamel
Simon Kariuki
Aaron M. Samuels
Laurence Slutsker
John Gimnig
Penelope Vounatsou
spellingShingle Sammy Khagayi
Meghna Desai
Nyaguara Amek
Vincent Were
Eric Donald Onyango
Christopher Odero
Kephas Otieno
Godfrey Bigogo
Stephen Munga
Frank Odhiambo
Mary J. Hamel
Simon Kariuki
Aaron M. Samuels
Laurence Slutsker
John Gimnig
Penelope Vounatsou
Modelling the relationship between malaria prevalence as a measure of transmission and mortality across age groups
Malaria Journal
Malaria
Mortality
Parasite prevalence
Bayesian spatio-temporal
Health and demographic surveillance system
author_facet Sammy Khagayi
Meghna Desai
Nyaguara Amek
Vincent Were
Eric Donald Onyango
Christopher Odero
Kephas Otieno
Godfrey Bigogo
Stephen Munga
Frank Odhiambo
Mary J. Hamel
Simon Kariuki
Aaron M. Samuels
Laurence Slutsker
John Gimnig
Penelope Vounatsou
author_sort Sammy Khagayi
title Modelling the relationship between malaria prevalence as a measure of transmission and mortality across age groups
title_short Modelling the relationship between malaria prevalence as a measure of transmission and mortality across age groups
title_full Modelling the relationship between malaria prevalence as a measure of transmission and mortality across age groups
title_fullStr Modelling the relationship between malaria prevalence as a measure of transmission and mortality across age groups
title_full_unstemmed Modelling the relationship between malaria prevalence as a measure of transmission and mortality across age groups
title_sort modelling the relationship between malaria prevalence as a measure of transmission and mortality across age groups
publisher BMC
series Malaria Journal
issn 1475-2875
publishDate 2019-07-01
description Abstract Background Parasite prevalence has been used widely as a measure of malaria transmission, especially in malaria endemic areas. However, its contribution and relationship to malaria mortality across different age groups has not been well investigated. Previous studies in a health and demographic surveillance systems (HDSS) platform in western Kenya quantified the contribution of incidence and entomological inoculation rates (EIR) to mortality. The study assessed the relationship between outcomes of malaria parasitaemia surveys and mortality across age groups. Methods Parasitological data from annual cross-sectional surveys from the Kisumu HDSS between 2007 and 2015 were used to determine malaria parasite prevalence (PP) and clinical malaria (parasites plus reported fever within 24 h or temperature above 37.5 °C). Household surveys and verbal autopsy (VA) were used to obtain data on all-cause and malaria-specific mortality. Bayesian negative binomial geo-statistical regression models were used to investigate the association of PP/clinical malaria with mortality across different age groups. Estimates based on yearly data were compared with those from aggregated data over 4 to 5-year periods, which is the typical period that mortality data are available from national demographic and health surveys. Results Using 5-year aggregated data, associations were established between parasite prevalence and malaria-specific mortality in the whole population (RRmalaria = 1.66; 95% Bayesian Credible Intervals: 1.07–2.54) and children 1–4 years (RRmalaria = 2.29; 1.17–4.29). While clinical malaria was associated with both all-cause and malaria-specific mortality in combined ages (RRall-cause = 1.32; 1.01–1.74); (RRmalaria = 2.50; 1.27–4.81), children 1–4 years (RRall-cause = 1.89; 1.00–3.51); (RRmalaria = 3.37; 1.23–8.93) and in older children 5–14 years (RRall-cause = 3.94; 1.34–11.10); (RRmalaria = 7.56; 1.20–39.54), no association was found among neonates, adults (15–59 years) and the elderly (60+ years). Distance to health facilities, socioeconomic status, elevation and survey year were important factors for all-cause and malaria-specific mortality. Conclusion Malaria parasitaemia from cross-sectional surveys was associated with mortality across age groups over 4 to 5 year periods with clinical malaria more strongly associated with mortality than parasite prevalence. This effect was stronger in children 5–14 years compared to other age-groups. Further analyses of data from other HDSS sites or similar platforms would be useful in investigating the relationship between malaria and mortality across different endemicity levels.
topic Malaria
Mortality
Parasite prevalence
Bayesian spatio-temporal
Health and demographic surveillance system
url http://link.springer.com/article/10.1186/s12936-019-2869-9
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spelling doaj-2a359f4e1bce47deb11b5063751d3ca42020-11-25T03:53:55ZengBMCMalaria Journal1475-28752019-07-0118111210.1186/s12936-019-2869-9Modelling the relationship between malaria prevalence as a measure of transmission and mortality across age groupsSammy Khagayi0Meghna Desai1Nyaguara Amek2Vincent Were3Eric Donald Onyango4Christopher Odero5Kephas Otieno6Godfrey Bigogo7Stephen Munga8Frank Odhiambo9Mary J. Hamel10Simon Kariuki11Aaron M. Samuels12Laurence Slutsker13John Gimnig14Penelope Vounatsou15Kenya Medical Research Institute-Center for Global Health ResearchMalaria Branch, Division of Parasitic Diseases and Malaria, Center for Global Health, Centers for Disease Control and PreventionKenya Medical Research Institute-Center for Global Health ResearchKenya Medical Research Institute-Center for Global Health ResearchKenya Medical Research Institute-Center for Global Health ResearchKenya Medical Research Institute-Center for Global Health ResearchKenya Medical Research Institute-Center for Global Health ResearchKenya Medical Research Institute-Center for Global Health ResearchKenya Medical Research Institute-Center for Global Health ResearchKenya Medical Research Institute-Center for Global Health ResearchMalaria Branch, Division of Parasitic Diseases and Malaria, Center for Global Health, Centers for Disease Control and PreventionKenya Medical Research Institute-Center for Global Health ResearchMalaria Branch, Division of Parasitic Diseases and Malaria, Center for Global Health, Centers for Disease Control and PreventionMalaria Branch, Division of Parasitic Diseases and Malaria, Center for Global Health, Centers for Disease Control and PreventionMalaria Branch, Division of Parasitic Diseases and Malaria, Center for Global Health, Centers for Disease Control and PreventionSwiss Tropical and Public Health InstituteAbstract Background Parasite prevalence has been used widely as a measure of malaria transmission, especially in malaria endemic areas. However, its contribution and relationship to malaria mortality across different age groups has not been well investigated. Previous studies in a health and demographic surveillance systems (HDSS) platform in western Kenya quantified the contribution of incidence and entomological inoculation rates (EIR) to mortality. The study assessed the relationship between outcomes of malaria parasitaemia surveys and mortality across age groups. Methods Parasitological data from annual cross-sectional surveys from the Kisumu HDSS between 2007 and 2015 were used to determine malaria parasite prevalence (PP) and clinical malaria (parasites plus reported fever within 24 h or temperature above 37.5 °C). Household surveys and verbal autopsy (VA) were used to obtain data on all-cause and malaria-specific mortality. Bayesian negative binomial geo-statistical regression models were used to investigate the association of PP/clinical malaria with mortality across different age groups. Estimates based on yearly data were compared with those from aggregated data over 4 to 5-year periods, which is the typical period that mortality data are available from national demographic and health surveys. Results Using 5-year aggregated data, associations were established between parasite prevalence and malaria-specific mortality in the whole population (RRmalaria = 1.66; 95% Bayesian Credible Intervals: 1.07–2.54) and children 1–4 years (RRmalaria = 2.29; 1.17–4.29). While clinical malaria was associated with both all-cause and malaria-specific mortality in combined ages (RRall-cause = 1.32; 1.01–1.74); (RRmalaria = 2.50; 1.27–4.81), children 1–4 years (RRall-cause = 1.89; 1.00–3.51); (RRmalaria = 3.37; 1.23–8.93) and in older children 5–14 years (RRall-cause = 3.94; 1.34–11.10); (RRmalaria = 7.56; 1.20–39.54), no association was found among neonates, adults (15–59 years) and the elderly (60+ years). Distance to health facilities, socioeconomic status, elevation and survey year were important factors for all-cause and malaria-specific mortality. Conclusion Malaria parasitaemia from cross-sectional surveys was associated with mortality across age groups over 4 to 5 year periods with clinical malaria more strongly associated with mortality than parasite prevalence. This effect was stronger in children 5–14 years compared to other age-groups. Further analyses of data from other HDSS sites or similar platforms would be useful in investigating the relationship between malaria and mortality across different endemicity levels.http://link.springer.com/article/10.1186/s12936-019-2869-9MalariaMortalityParasite prevalenceBayesian spatio-temporalHealth and demographic surveillance system