Cross-sectional study to predict subnational levels of health workers’ knowledge about severe malaria treatment in Kenya

Author:

Machini BeatriceORCID,Achia Thomas NO,Chesang Jacqueline,Amboko Beatrice,Mwaniki Paul,Kipruto Hillary

Abstract

ObjectivesThis study applied a Bayesian hierarchical ecological spatial model beyond predictor analysis to test for the best fitting spatial effects model to predict subnational levels of health workers’ knowledge of severe malaria treatment policy, artesunate dosing, and preparation.SettingCounty referral government and major faith-based hospitals across 47 counties in Kenya in 2019.Design and participantsA secondary analysis of cross-sectional survey data from 345 health workers across 89 hospitals with inpatient departments who were randomly selected and interviewed.Outcome measuresThree ordinal outcome variables for severe malaria treatment policy, artesunate dose and preparation were considered, while 12 individual and contextual predictors were included in the spatial models.ResultsA third of the health workers had high knowledge levels on artesunate treatment policy; almost three-quarters had high knowledge levels on artesunate dosing and preparation. The likelihood of having high knowledge on severe malaria treatment policy was lower among nurses relative to clinicians (adjusted OR (aOR)=0.48, 95% CI 0.25 to 0.87), health workers older than 30 years were 61% less likely to have high knowledge about dosing compared with younger health workers (aOR=0.39, 95% CI 0.22 to 0.67), while health workers exposed to artesunate posters had 2.4-fold higher odds of higher knowledge about dosing compared with non-exposed health workers (aOR=2.38, 95% CI 1.22 to 4.74). The best model fitted with spatially structured random effects and spatial variations of the knowledge level across the 47 counties exhibited neighbourhood influence.ConclusionsKnowledge of severe malaria treatment policies is not adequately and optimally available among health workers across Kenya. The factors associated with the health workers’ level of knowledge were cadre, age and exposure to artesunate posters. The spatial maps provided subnational estimates of knowledge levels for focused interventions.

Funder

Global Fund to Fight AIDS, Tuberculosis, and Malaria to support malaria

Publisher

BMJ

Subject

General Medicine

Reference46 articles.

1. World Health Organization . World malaria report. World Health Organization, 2020, 2019.

2. Division of national malaria programme (dNMP), Kenya national Bureau of statistics (KNBS), ICF international . Kenya malaria indicator survey 2020. Rockville; Nairobi, 2021.

3. Ministry of Health . National guidelines for diagnosis, treatment and prevention of malaria for health workers in Kenya. Nairobi, Kenya: Division of National Malaria Programme, 2015.

4. World Health Organization . Guidelines for the treatment of malaria. World Health Organization, 2015.

5. Predictors of health workers' knowledge about artesunate-based severe malaria treatment recommendations in government and faith-based hospitals in Kenya;Machini;Malar J,2020

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