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Plasmodium falciparum parasite prevalence in East Africa: Updating data for malaria stratification

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Plasmodium falciparum parasite prevalence in East Africa: Updating data for malaria stratification. / Alegana, Victor A.; Macharia, Peter M.; Muchiri, Samuel et al.
In: PLOS Global Public Health, Vol. 1, No. 12, e0000014, 07.12.2021.

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Harvard

Alegana, VA, Macharia, PM, Muchiri, S, Mumo, E, Oyugi, E, Kamau, A, Chacky, F, Thawer, S, Molteni, F, Rutazanna, D, Maiteki-Sebuguzi, C, Gonahasa, S, Noor, AM, Snow, RW & Ashton, R (ed.) 2021, 'Plasmodium falciparum parasite prevalence in East Africa: Updating data for malaria stratification', PLOS Global Public Health, vol. 1, no. 12, e0000014. https://doi.org/10.1371/journal.pgph.0000014

APA

Alegana, V. A., Macharia, P. M., Muchiri, S., Mumo, E., Oyugi, E., Kamau, A., Chacky, F., Thawer, S., Molteni, F., Rutazanna, D., Maiteki-Sebuguzi, C., Gonahasa, S., Noor, A. M., Snow, R. W., & Ashton, R. (Ed.) (2021). Plasmodium falciparum parasite prevalence in East Africa: Updating data for malaria stratification. PLOS Global Public Health, 1(12), Article e0000014. https://doi.org/10.1371/journal.pgph.0000014

Vancouver

Alegana VA, Macharia PM, Muchiri S, Mumo E, Oyugi E, Kamau A et al. Plasmodium falciparum parasite prevalence in East Africa: Updating data for malaria stratification. PLOS Global Public Health. 2021 Dec 7;1(12):e0000014. doi: 10.1371/journal.pgph.0000014

Author

Bibtex

@article{49d79740a2fe4be1aaceff96d3654ad0,
title = "Plasmodium falciparum parasite prevalence in East Africa: Updating data for malaria stratification",
abstract = "The High Burden High Impact (HBHI) strategy for malaria encourages countries to use multiple sources of available data to define the sub-national vulnerabilities to malaria risk, including parasite prevalence. Here, a modelled estimate of Plasmodium falciparum from an updated assembly of community parasite survey data in Kenya, mainland Tanzania, and Uganda is presented and used to provide a more contemporary understanding of the sub-national malaria prevalence stratification across the sub-region for 2019. Malaria prevalence data from surveys undertaken between January 2010 and June 2020 were assembled form each of the three countries. Bayesian spatiotemporal model-based approaches were used to interpolate space-time data at fine spatial resolution adjusting for population, environmental and ecological covariates across the three countries. A total of 18,940 time-space age-standardised and microscopy-converted surveys were assembled of which 14,170 (74.8%) were identified after 2017. The estimated national population-adjusted posterior mean parasite prevalence was 4.7% (95% Bayesian Credible Interval 2.6–36.9) in Kenya, 10.6% (3.4–39.2) in mainland Tanzania, and 9.5% (4.0–48.3) in Uganda. In 2019, more than 12.7 million people resided in communities where parasite prevalence was predicted ≥ 30%, including 6.4%, 12.1% and 6.3% of Kenya, mainland Tanzania and Uganda populations, respectively. Conversely, areas that supported very low parasite prevalence (<1%) were inhabited by approximately 46.2 million people across the sub-region, or 52.2%, 26.7% and 10.4% of Kenya, mainland Tanzania and Uganda populations, respectively. In conclusion, parasite prevalence represents one of several data metrics for disease stratification at national and sub-national levels. To increase the use of this metric for decision making, there is a need to integrate other data layers on mortality related to malaria, malaria vector composition, insecticide resistance and bionomic, malaria care-seeking behaviour and current levels of unmet need of malaria interventions.",
keywords = "Research Article, Medicine and health sciences, Biology and life sciences, People and places",
author = "Alegana, {Victor A.} and Macharia, {Peter M.} and Samuel Muchiri and Eda Mumo and Elvis Oyugi and Alice Kamau and Frank Chacky and Sumaiyya Thawer and Fabrizio Molteni and Damian Rutazanna and Catherine Maiteki-Sebuguzi and Samuel Gonahasa and Noor, {Abdisalan M.} and Snow, {Robert W.} and Ruth Ashton",
year = "2021",
month = dec,
day = "7",
doi = "10.1371/journal.pgph.0000014",
language = "English",
volume = "1",
journal = "PLOS Global Public Health",
issn = "2767-3375",
publisher = "Public Library of Science",
number = "12",

}

RIS

TY - JOUR

T1 - Plasmodium falciparum parasite prevalence in East Africa

T2 - Updating data for malaria stratification

AU - Alegana, Victor A.

AU - Macharia, Peter M.

AU - Muchiri, Samuel

AU - Mumo, Eda

AU - Oyugi, Elvis

AU - Kamau, Alice

AU - Chacky, Frank

AU - Thawer, Sumaiyya

AU - Molteni, Fabrizio

AU - Rutazanna, Damian

AU - Maiteki-Sebuguzi, Catherine

AU - Gonahasa, Samuel

AU - Noor, Abdisalan M.

AU - Snow, Robert W.

A2 - Ashton, Ruth

PY - 2021/12/7

Y1 - 2021/12/7

N2 - The High Burden High Impact (HBHI) strategy for malaria encourages countries to use multiple sources of available data to define the sub-national vulnerabilities to malaria risk, including parasite prevalence. Here, a modelled estimate of Plasmodium falciparum from an updated assembly of community parasite survey data in Kenya, mainland Tanzania, and Uganda is presented and used to provide a more contemporary understanding of the sub-national malaria prevalence stratification across the sub-region for 2019. Malaria prevalence data from surveys undertaken between January 2010 and June 2020 were assembled form each of the three countries. Bayesian spatiotemporal model-based approaches were used to interpolate space-time data at fine spatial resolution adjusting for population, environmental and ecological covariates across the three countries. A total of 18,940 time-space age-standardised and microscopy-converted surveys were assembled of which 14,170 (74.8%) were identified after 2017. The estimated national population-adjusted posterior mean parasite prevalence was 4.7% (95% Bayesian Credible Interval 2.6–36.9) in Kenya, 10.6% (3.4–39.2) in mainland Tanzania, and 9.5% (4.0–48.3) in Uganda. In 2019, more than 12.7 million people resided in communities where parasite prevalence was predicted ≥ 30%, including 6.4%, 12.1% and 6.3% of Kenya, mainland Tanzania and Uganda populations, respectively. Conversely, areas that supported very low parasite prevalence (<1%) were inhabited by approximately 46.2 million people across the sub-region, or 52.2%, 26.7% and 10.4% of Kenya, mainland Tanzania and Uganda populations, respectively. In conclusion, parasite prevalence represents one of several data metrics for disease stratification at national and sub-national levels. To increase the use of this metric for decision making, there is a need to integrate other data layers on mortality related to malaria, malaria vector composition, insecticide resistance and bionomic, malaria care-seeking behaviour and current levels of unmet need of malaria interventions.

AB - The High Burden High Impact (HBHI) strategy for malaria encourages countries to use multiple sources of available data to define the sub-national vulnerabilities to malaria risk, including parasite prevalence. Here, a modelled estimate of Plasmodium falciparum from an updated assembly of community parasite survey data in Kenya, mainland Tanzania, and Uganda is presented and used to provide a more contemporary understanding of the sub-national malaria prevalence stratification across the sub-region for 2019. Malaria prevalence data from surveys undertaken between January 2010 and June 2020 were assembled form each of the three countries. Bayesian spatiotemporal model-based approaches were used to interpolate space-time data at fine spatial resolution adjusting for population, environmental and ecological covariates across the three countries. A total of 18,940 time-space age-standardised and microscopy-converted surveys were assembled of which 14,170 (74.8%) were identified after 2017. The estimated national population-adjusted posterior mean parasite prevalence was 4.7% (95% Bayesian Credible Interval 2.6–36.9) in Kenya, 10.6% (3.4–39.2) in mainland Tanzania, and 9.5% (4.0–48.3) in Uganda. In 2019, more than 12.7 million people resided in communities where parasite prevalence was predicted ≥ 30%, including 6.4%, 12.1% and 6.3% of Kenya, mainland Tanzania and Uganda populations, respectively. Conversely, areas that supported very low parasite prevalence (<1%) were inhabited by approximately 46.2 million people across the sub-region, or 52.2%, 26.7% and 10.4% of Kenya, mainland Tanzania and Uganda populations, respectively. In conclusion, parasite prevalence represents one of several data metrics for disease stratification at national and sub-national levels. To increase the use of this metric for decision making, there is a need to integrate other data layers on mortality related to malaria, malaria vector composition, insecticide resistance and bionomic, malaria care-seeking behaviour and current levels of unmet need of malaria interventions.

KW - Research Article

KW - Medicine and health sciences

KW - Biology and life sciences

KW - People and places

U2 - 10.1371/journal.pgph.0000014

DO - 10.1371/journal.pgph.0000014

M3 - Journal article

VL - 1

JO - PLOS Global Public Health

JF - PLOS Global Public Health

SN - 2767-3375

IS - 12

M1 - e0000014

ER -