Cargando…

Validation of MINORMIX Approach for Estimation of Low Birthweight Prevalence Using a Rural Nepal Dataset

BACKGROUND: The Global Nutrition Target of reducing low birthweight (LBW) by ≥30% between 2012 and 2025 has led to renewed interest in producing accurate, population-based, national LBW estimates. Low- and middle-income countries rely on household surveys for birthweight data. These data are frequen...

Descripción completa

Detalles Bibliográficos
Autores principales: Chang, Karen T, Carter, Emily D, Mullany, Luke C, Khatry, Subarna K, Cousens, Simon, An, Xiaoyi, Krasevec, Julia, LeClerq, Steven C, Munos, Melinda K, Katz, Joanne
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Oxford University Press 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8891178/
https://www.ncbi.nlm.nih.gov/pubmed/34888667
http://dx.doi.org/10.1093/jn/nxab417
_version_ 1784661813530460160
author Chang, Karen T
Carter, Emily D
Mullany, Luke C
Khatry, Subarna K
Cousens, Simon
An, Xiaoyi
Krasevec, Julia
LeClerq, Steven C
Munos, Melinda K
Katz, Joanne
author_facet Chang, Karen T
Carter, Emily D
Mullany, Luke C
Khatry, Subarna K
Cousens, Simon
An, Xiaoyi
Krasevec, Julia
LeClerq, Steven C
Munos, Melinda K
Katz, Joanne
author_sort Chang, Karen T
collection PubMed
description BACKGROUND: The Global Nutrition Target of reducing low birthweight (LBW) by ≥30% between 2012 and 2025 has led to renewed interest in producing accurate, population-based, national LBW estimates. Low- and middle-income countries rely on household surveys for birthweight data. These data are frequently incomplete and exhibit strong “heaping.” Standard survey adjustment methods produce estimates with residual bias. The global database used to report against the LBW Global Nutrition Target adjusts survey data using a new MINORMIX (multiple imputation followed by normal mixture) approach: 1) multiple imputation to address missing birthweights, followed by 2) use of a 2-component normal mixture model to account for heaping of birthweights. OBJECTIVES: To evaluate the performance of the MINORMIX birthweight adjustment approach and alternative methods against gold-standard measured birthweights in rural Nepal. METHODS: As part of a community-randomized trial in rural Nepal, we measured “gold-standard” birthweights at birth and returned 1–24 mo later to collect maternally reported birthweights using standard survey methods. We compared estimates of LBW from maternally reported data derived using: 1) the new MINORMAX approach; 2) the previously used Blanc–Wardlaw adjustment; or 3) no adjustment for missingness or heaping against our gold standard. We also assessed the independent contribution of multiple imputation and curve fitting to LBW adjustment. RESULTS: Our gold standard found 27.7% of newborns were LBW. The unadjusted LBW estimate based on maternal report with simulated missing birthweights was 14.5% (95% CI: 11.6, 18.0%). Application of the Blanc–Wardlaw adjustment increased the LBW estimate to 20.6%. The MINORMIX approach produced an estimate of 26.4% (95% CI: 23.5, 29.3%) LBW, closest to and with bounds encompassing the measured point estimate. CONCLUSIONS: In a rural Nepal validation dataset, the MINORMIX method generated a more accurate LBW estimate than the previously applied adjustment method. This supports the use of the MINORMIX method to produce estimates for tracking the LBW Global Nutrition Target.
format Online
Article
Text
id pubmed-8891178
institution National Center for Biotechnology Information
language English
publishDate 2021
publisher Oxford University Press
record_format MEDLINE/PubMed
spelling pubmed-88911782022-03-04 Validation of MINORMIX Approach for Estimation of Low Birthweight Prevalence Using a Rural Nepal Dataset Chang, Karen T Carter, Emily D Mullany, Luke C Khatry, Subarna K Cousens, Simon An, Xiaoyi Krasevec, Julia LeClerq, Steven C Munos, Melinda K Katz, Joanne J Nutr Community and International Nutrition BACKGROUND: The Global Nutrition Target of reducing low birthweight (LBW) by ≥30% between 2012 and 2025 has led to renewed interest in producing accurate, population-based, national LBW estimates. Low- and middle-income countries rely on household surveys for birthweight data. These data are frequently incomplete and exhibit strong “heaping.” Standard survey adjustment methods produce estimates with residual bias. The global database used to report against the LBW Global Nutrition Target adjusts survey data using a new MINORMIX (multiple imputation followed by normal mixture) approach: 1) multiple imputation to address missing birthweights, followed by 2) use of a 2-component normal mixture model to account for heaping of birthweights. OBJECTIVES: To evaluate the performance of the MINORMIX birthweight adjustment approach and alternative methods against gold-standard measured birthweights in rural Nepal. METHODS: As part of a community-randomized trial in rural Nepal, we measured “gold-standard” birthweights at birth and returned 1–24 mo later to collect maternally reported birthweights using standard survey methods. We compared estimates of LBW from maternally reported data derived using: 1) the new MINORMAX approach; 2) the previously used Blanc–Wardlaw adjustment; or 3) no adjustment for missingness or heaping against our gold standard. We also assessed the independent contribution of multiple imputation and curve fitting to LBW adjustment. RESULTS: Our gold standard found 27.7% of newborns were LBW. The unadjusted LBW estimate based on maternal report with simulated missing birthweights was 14.5% (95% CI: 11.6, 18.0%). Application of the Blanc–Wardlaw adjustment increased the LBW estimate to 20.6%. The MINORMIX approach produced an estimate of 26.4% (95% CI: 23.5, 29.3%) LBW, closest to and with bounds encompassing the measured point estimate. CONCLUSIONS: In a rural Nepal validation dataset, the MINORMIX method generated a more accurate LBW estimate than the previously applied adjustment method. This supports the use of the MINORMIX method to produce estimates for tracking the LBW Global Nutrition Target. Oxford University Press 2021-12-09 /pmc/articles/PMC8891178/ /pubmed/34888667 http://dx.doi.org/10.1093/jn/nxab417 Text en © The Author(s) 2021. Published by Oxford University Press on behalf of the American Society for Nutrition. 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 reuse, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Community and International Nutrition
Chang, Karen T
Carter, Emily D
Mullany, Luke C
Khatry, Subarna K
Cousens, Simon
An, Xiaoyi
Krasevec, Julia
LeClerq, Steven C
Munos, Melinda K
Katz, Joanne
Validation of MINORMIX Approach for Estimation of Low Birthweight Prevalence Using a Rural Nepal Dataset
title Validation of MINORMIX Approach for Estimation of Low Birthweight Prevalence Using a Rural Nepal Dataset
title_full Validation of MINORMIX Approach for Estimation of Low Birthweight Prevalence Using a Rural Nepal Dataset
title_fullStr Validation of MINORMIX Approach for Estimation of Low Birthweight Prevalence Using a Rural Nepal Dataset
title_full_unstemmed Validation of MINORMIX Approach for Estimation of Low Birthweight Prevalence Using a Rural Nepal Dataset
title_short Validation of MINORMIX Approach for Estimation of Low Birthweight Prevalence Using a Rural Nepal Dataset
title_sort validation of minormix approach for estimation of low birthweight prevalence using a rural nepal dataset
topic Community and International Nutrition
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8891178/
https://www.ncbi.nlm.nih.gov/pubmed/34888667
http://dx.doi.org/10.1093/jn/nxab417
work_keys_str_mv AT changkarent validationofminormixapproachforestimationoflowbirthweightprevalenceusingaruralnepaldataset
AT carteremilyd validationofminormixapproachforestimationoflowbirthweightprevalenceusingaruralnepaldataset
AT mullanylukec validationofminormixapproachforestimationoflowbirthweightprevalenceusingaruralnepaldataset
AT khatrysubarnak validationofminormixapproachforestimationoflowbirthweightprevalenceusingaruralnepaldataset
AT cousenssimon validationofminormixapproachforestimationoflowbirthweightprevalenceusingaruralnepaldataset
AT anxiaoyi validationofminormixapproachforestimationoflowbirthweightprevalenceusingaruralnepaldataset
AT krasevecjulia validationofminormixapproachforestimationoflowbirthweightprevalenceusingaruralnepaldataset
AT leclerqstevenc validationofminormixapproachforestimationoflowbirthweightprevalenceusingaruralnepaldataset
AT munosmelindak validationofminormixapproachforestimationoflowbirthweightprevalenceusingaruralnepaldataset
AT katzjoanne validationofminormixapproachforestimationoflowbirthweightprevalenceusingaruralnepaldataset