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Analyzing data from the digital healthcare exchange platform for surveillance of antibiotic prescriptions in primary care in urban Kenya: A mixed-methods study

BACKGROUND: Knowledge of antibiotic prescription practices in low- and middle-income countries is limited due to a lack of adequate surveillance systems. OBJECTIVE: To assess the prescription of antibiotics for the treatment of acute respiratory tract infections (ARIs) in primary care. METHOD: An ex...

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Autores principales: Mekuria, Legese A., de Wit, Tobias FR, Spieker, Nicole, Koech, Ramona, Nyarango, Robert, Ndwiga, Stanley, Fenenga, Christine J., Ogink, Alice, Schultsz, Constance, van’t Hoog, Anja
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6762089/
https://www.ncbi.nlm.nih.gov/pubmed/31557170
http://dx.doi.org/10.1371/journal.pone.0222651
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author Mekuria, Legese A.
de Wit, Tobias FR
Spieker, Nicole
Koech, Ramona
Nyarango, Robert
Ndwiga, Stanley
Fenenga, Christine J.
Ogink, Alice
Schultsz, Constance
van’t Hoog, Anja
author_facet Mekuria, Legese A.
de Wit, Tobias FR
Spieker, Nicole
Koech, Ramona
Nyarango, Robert
Ndwiga, Stanley
Fenenga, Christine J.
Ogink, Alice
Schultsz, Constance
van’t Hoog, Anja
author_sort Mekuria, Legese A.
collection PubMed
description BACKGROUND: Knowledge of antibiotic prescription practices in low- and middle-income countries is limited due to a lack of adequate surveillance systems. OBJECTIVE: To assess the prescription of antibiotics for the treatment of acute respiratory tract infections (ARIs) in primary care. METHOD: An explanatory sequential mixed-methods study was conducted in 4 private not-for-profit outreach clinics located in slum areas in Nairobi, Kenya. Claims data of patients who received healthcare between April 1 and December 27, 2016 were collected in real-time through a mobile telephone-based healthcare data and payment exchange platform (branded as M-TIBA). These data were used to calculate the percentage of ARIs for which antibiotics were prescribed. In-depth interviews were conducted among 12 clinicians and 17 patients to explain the quantitative results. RESULTS: A total of 49,098 individuals were registered onto the platform, which allowed them to access healthcare at the study clinics through M-TIBA. For 36,210 clinic visits by 21,913 patients, 45,706 diagnoses and 85,484 medication prescriptions were recorded. ARIs were the most common diagnoses (17,739; 38.8%), and antibiotics were the most frequently prescribed medications (21,870; 25.6%). For 78.5% (95% CI: 77.9%, 79.1%) of ARI diagnoses, antibiotics were prescribed, most commonly amoxicillin (45%; 95% CI: 44.1%, 45.8%). These relatively high levels of prescription were explained by high patient load, clinician and patient perceptions that clinicians should prescribe, lack of access to laboratory tests, offloading near-expiry drugs, absence of policy and surveillance, and the use of treatment guidelines that are not up-to-date. Clinicians in contrast reported to strictly follow the Kenyan treatment guidelines. CONCLUSION: This study showed successful quantification of antibiotic prescription and the prescribing pattern using real-world data collected through M-TIBA in private not-for-profit clinics in Nairobi.
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spelling pubmed-67620892019-10-13 Analyzing data from the digital healthcare exchange platform for surveillance of antibiotic prescriptions in primary care in urban Kenya: A mixed-methods study Mekuria, Legese A. de Wit, Tobias FR Spieker, Nicole Koech, Ramona Nyarango, Robert Ndwiga, Stanley Fenenga, Christine J. Ogink, Alice Schultsz, Constance van’t Hoog, Anja PLoS One Research Article BACKGROUND: Knowledge of antibiotic prescription practices in low- and middle-income countries is limited due to a lack of adequate surveillance systems. OBJECTIVE: To assess the prescription of antibiotics for the treatment of acute respiratory tract infections (ARIs) in primary care. METHOD: An explanatory sequential mixed-methods study was conducted in 4 private not-for-profit outreach clinics located in slum areas in Nairobi, Kenya. Claims data of patients who received healthcare between April 1 and December 27, 2016 were collected in real-time through a mobile telephone-based healthcare data and payment exchange platform (branded as M-TIBA). These data were used to calculate the percentage of ARIs for which antibiotics were prescribed. In-depth interviews were conducted among 12 clinicians and 17 patients to explain the quantitative results. RESULTS: A total of 49,098 individuals were registered onto the platform, which allowed them to access healthcare at the study clinics through M-TIBA. For 36,210 clinic visits by 21,913 patients, 45,706 diagnoses and 85,484 medication prescriptions were recorded. ARIs were the most common diagnoses (17,739; 38.8%), and antibiotics were the most frequently prescribed medications (21,870; 25.6%). For 78.5% (95% CI: 77.9%, 79.1%) of ARI diagnoses, antibiotics were prescribed, most commonly amoxicillin (45%; 95% CI: 44.1%, 45.8%). These relatively high levels of prescription were explained by high patient load, clinician and patient perceptions that clinicians should prescribe, lack of access to laboratory tests, offloading near-expiry drugs, absence of policy and surveillance, and the use of treatment guidelines that are not up-to-date. Clinicians in contrast reported to strictly follow the Kenyan treatment guidelines. CONCLUSION: This study showed successful quantification of antibiotic prescription and the prescribing pattern using real-world data collected through M-TIBA in private not-for-profit clinics in Nairobi. Public Library of Science 2019-09-26 /pmc/articles/PMC6762089/ /pubmed/31557170 http://dx.doi.org/10.1371/journal.pone.0222651 Text en © 2019 Mekuria et al http://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Mekuria, Legese A.
de Wit, Tobias FR
Spieker, Nicole
Koech, Ramona
Nyarango, Robert
Ndwiga, Stanley
Fenenga, Christine J.
Ogink, Alice
Schultsz, Constance
van’t Hoog, Anja
Analyzing data from the digital healthcare exchange platform for surveillance of antibiotic prescriptions in primary care in urban Kenya: A mixed-methods study
title Analyzing data from the digital healthcare exchange platform for surveillance of antibiotic prescriptions in primary care in urban Kenya: A mixed-methods study
title_full Analyzing data from the digital healthcare exchange platform for surveillance of antibiotic prescriptions in primary care in urban Kenya: A mixed-methods study
title_fullStr Analyzing data from the digital healthcare exchange platform for surveillance of antibiotic prescriptions in primary care in urban Kenya: A mixed-methods study
title_full_unstemmed Analyzing data from the digital healthcare exchange platform for surveillance of antibiotic prescriptions in primary care in urban Kenya: A mixed-methods study
title_short Analyzing data from the digital healthcare exchange platform for surveillance of antibiotic prescriptions in primary care in urban Kenya: A mixed-methods study
title_sort analyzing data from the digital healthcare exchange platform for surveillance of antibiotic prescriptions in primary care in urban kenya: a mixed-methods study
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6762089/
https://www.ncbi.nlm.nih.gov/pubmed/31557170
http://dx.doi.org/10.1371/journal.pone.0222651
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