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Using family planning service statistics to inform model-based estimates of modern contraceptive prevalence

The annual assessment of Family Planning (FP) indicators, such as the modern contraceptive prevalence rate (mCPR), is a key component of monitoring and evaluating goals of global FP programs and initiatives. To that end, the Family Planning Estimation Model (FPEM) was developed with the aim of produ...

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Autores principales: Cahill, Niamh, Sonneveldt, Emily, Emmart, Priya, Williamson, Jessica, Mbu, Robinson, Fodjo Yetgang, Airy Barrière, Dambula, Isaac, Azambuja, Gizela, Mahumane Govo, Alda Antonio, Joshi, Binod, Felix, Sayinzoga, Makashaka, Clarisse, Ndaruhutse, Victor, Serucaca, Joel, Madzima, Bernard, Muzavazi, Brighton, Alkema, Leontine
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8555841/
https://www.ncbi.nlm.nih.gov/pubmed/34714856
http://dx.doi.org/10.1371/journal.pone.0258304
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author Cahill, Niamh
Sonneveldt, Emily
Emmart, Priya
Williamson, Jessica
Mbu, Robinson
Fodjo Yetgang, Airy Barrière
Dambula, Isaac
Azambuja, Gizela
Mahumane Govo, Alda Antonio
Joshi, Binod
Felix, Sayinzoga
Makashaka, Clarisse
Ndaruhutse, Victor
Serucaca, Joel
Madzima, Bernard
Muzavazi, Brighton
Alkema, Leontine
author_facet Cahill, Niamh
Sonneveldt, Emily
Emmart, Priya
Williamson, Jessica
Mbu, Robinson
Fodjo Yetgang, Airy Barrière
Dambula, Isaac
Azambuja, Gizela
Mahumane Govo, Alda Antonio
Joshi, Binod
Felix, Sayinzoga
Makashaka, Clarisse
Ndaruhutse, Victor
Serucaca, Joel
Madzima, Bernard
Muzavazi, Brighton
Alkema, Leontine
author_sort Cahill, Niamh
collection PubMed
description The annual assessment of Family Planning (FP) indicators, such as the modern contraceptive prevalence rate (mCPR), is a key component of monitoring and evaluating goals of global FP programs and initiatives. To that end, the Family Planning Estimation Model (FPEM) was developed with the aim of producing survey-informed estimates and projections of mCPR and other key FP indictors over time. With large-scale surveys being carried out on average every 3–5 years, data gaps since the most recent survey often exceed one year. As a result, survey-based estimates for the current year from FPEM are often based on projections that carry a larger uncertainty than data informed estimates. In order to bridge recent data gaps we consider the use of a measure, termed Estimated Modern Use (EMU), which has been derived from routinely collected family planning service statistics. However, EMU data come with known limitations, namely measurement errors which result in biases and additional variation with respect to survey-based estimates of mCPR. Here we present a data model for the incorporation of EMU data into FPEM, which accounts for these limitations. Based on known biases, we assume that only changes in EMU can inform FPEM estimates, while also taking inherent variation into account. The addition of this EMU data model to FPEM allows us to provide a secondary data source for informing and reducing uncertainty in current estimates of mCPR. We present model validations using a survey-only model as a baseline comparison and we illustrate the impact of including the EMU data model in FPEM. Results show that the inclusion of EMU data can change point-estimates of mCPR by up to 6.7 percentage points compared to using surveys only. Observed reductions in uncertainty were modest, with the width of uncertainty intervals being reduced by up to 2.7 percentage points.
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spelling pubmed-85558412021-10-30 Using family planning service statistics to inform model-based estimates of modern contraceptive prevalence Cahill, Niamh Sonneveldt, Emily Emmart, Priya Williamson, Jessica Mbu, Robinson Fodjo Yetgang, Airy Barrière Dambula, Isaac Azambuja, Gizela Mahumane Govo, Alda Antonio Joshi, Binod Felix, Sayinzoga Makashaka, Clarisse Ndaruhutse, Victor Serucaca, Joel Madzima, Bernard Muzavazi, Brighton Alkema, Leontine PLoS One Research Article The annual assessment of Family Planning (FP) indicators, such as the modern contraceptive prevalence rate (mCPR), is a key component of monitoring and evaluating goals of global FP programs and initiatives. To that end, the Family Planning Estimation Model (FPEM) was developed with the aim of producing survey-informed estimates and projections of mCPR and other key FP indictors over time. With large-scale surveys being carried out on average every 3–5 years, data gaps since the most recent survey often exceed one year. As a result, survey-based estimates for the current year from FPEM are often based on projections that carry a larger uncertainty than data informed estimates. In order to bridge recent data gaps we consider the use of a measure, termed Estimated Modern Use (EMU), which has been derived from routinely collected family planning service statistics. However, EMU data come with known limitations, namely measurement errors which result in biases and additional variation with respect to survey-based estimates of mCPR. Here we present a data model for the incorporation of EMU data into FPEM, which accounts for these limitations. Based on known biases, we assume that only changes in EMU can inform FPEM estimates, while also taking inherent variation into account. The addition of this EMU data model to FPEM allows us to provide a secondary data source for informing and reducing uncertainty in current estimates of mCPR. We present model validations using a survey-only model as a baseline comparison and we illustrate the impact of including the EMU data model in FPEM. Results show that the inclusion of EMU data can change point-estimates of mCPR by up to 6.7 percentage points compared to using surveys only. Observed reductions in uncertainty were modest, with the width of uncertainty intervals being reduced by up to 2.7 percentage points. Public Library of Science 2021-10-29 /pmc/articles/PMC8555841/ /pubmed/34714856 http://dx.doi.org/10.1371/journal.pone.0258304 Text en © 2021 Cahill et al https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution License (https://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
Cahill, Niamh
Sonneveldt, Emily
Emmart, Priya
Williamson, Jessica
Mbu, Robinson
Fodjo Yetgang, Airy Barrière
Dambula, Isaac
Azambuja, Gizela
Mahumane Govo, Alda Antonio
Joshi, Binod
Felix, Sayinzoga
Makashaka, Clarisse
Ndaruhutse, Victor
Serucaca, Joel
Madzima, Bernard
Muzavazi, Brighton
Alkema, Leontine
Using family planning service statistics to inform model-based estimates of modern contraceptive prevalence
title Using family planning service statistics to inform model-based estimates of modern contraceptive prevalence
title_full Using family planning service statistics to inform model-based estimates of modern contraceptive prevalence
title_fullStr Using family planning service statistics to inform model-based estimates of modern contraceptive prevalence
title_full_unstemmed Using family planning service statistics to inform model-based estimates of modern contraceptive prevalence
title_short Using family planning service statistics to inform model-based estimates of modern contraceptive prevalence
title_sort using family planning service statistics to inform model-based estimates of modern contraceptive prevalence
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8555841/
https://www.ncbi.nlm.nih.gov/pubmed/34714856
http://dx.doi.org/10.1371/journal.pone.0258304
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