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Approaches to quantify the contribution of multiple anemia risk factors in children and women from cross-sectional national surveys

BACKGROUND: Attributable fractions (AF) of anemia are often used to understand the multifactorial etiologies of anemia, despite challenges interpreting them in cross-sectional studies. We aimed to compare different statistical approaches for estimating AF for anemia due to inflammation, malaria, and...

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Autores principales: Ko, Yi-An, Williams, Anne M., Peerson, Janet M., Luo, Hanqi, Flores-Ayala, Rafael, Wirth, James P., Engle-Stone, Reina, Young, Melissa F., Suchdev, Parminder S.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10022287/
https://www.ncbi.nlm.nih.gov/pubmed/36962596
http://dx.doi.org/10.1371/journal.pgph.0001071
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author Ko, Yi-An
Williams, Anne M.
Peerson, Janet M.
Luo, Hanqi
Flores-Ayala, Rafael
Wirth, James P.
Engle-Stone, Reina
Young, Melissa F.
Suchdev, Parminder S.
author_facet Ko, Yi-An
Williams, Anne M.
Peerson, Janet M.
Luo, Hanqi
Flores-Ayala, Rafael
Wirth, James P.
Engle-Stone, Reina
Young, Melissa F.
Suchdev, Parminder S.
author_sort Ko, Yi-An
collection PubMed
description BACKGROUND: Attributable fractions (AF) of anemia are often used to understand the multifactorial etiologies of anemia, despite challenges interpreting them in cross-sectional studies. We aimed to compare different statistical approaches for estimating AF for anemia due to inflammation, malaria, and micronutrient deficiencies including iron, vitamin A, vitamin B12, and folate. METHODS: AF were calculated using nationally representative survey data among preschool children (10 countries, total N = 7,973) and nonpregnant women of reproductive age (11 countries, total N = 15,141) from the Biomarkers Reflecting Inflammation and Nutrition Determinants of Anemia (BRINDA) project. We used the following strategies to calculate AF: 1) Levin’s formula with prevalence ratio (PR) in place of relative risk (RR), 2) Levin’s formula with odds ratio (OR) in place of RR, and 3) average (sequential) AF considering all possible removal sequences of risk factors. PR was obtained by 1) modified Poisson regression with robust variance estimation, 2) Kleinman-Norton’s approach, and 3) estimation from OR using Zhang-Yu’s approach. Survey weighted country-specific analysis was performed with and without adjustment for age, sex, socioeconomic status, and other risk factors. RESULTS: About 20–70% of children and 20–50% of women suffered from anemia, depending on the survey. Using OR yielded the highest and potentially biased AF, in some cases double those using PR. Adjusted AF using different PR estimations (Poisson regression, Kleinman-Norton, Zhang-Yu) were nearly identical. Average AF estimates were similar to those using Levin’s formula with PR. Estimated anemia AF for children and women were 2–36% and 3–46% for iron deficiency, <24% and <12% for inflammation, and 2–36% and 1–16% for malaria. Unadjusted AF substantially differed from adjusted AF in most countries. CONCLUSION: AF of anemia can be estimated from survey data using Levin’s formula or average AF. While different approaches exist to estimate adjusted PR, Poisson regression is likely the easiest to implement. AF are a useful metric to prioritize interventions to reduce anemia prevalence, and the similarity across methods provides researchers flexibility in selecting AF approaches.
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spelling pubmed-100222872023-03-17 Approaches to quantify the contribution of multiple anemia risk factors in children and women from cross-sectional national surveys Ko, Yi-An Williams, Anne M. Peerson, Janet M. Luo, Hanqi Flores-Ayala, Rafael Wirth, James P. Engle-Stone, Reina Young, Melissa F. Suchdev, Parminder S. PLOS Glob Public Health Research Article BACKGROUND: Attributable fractions (AF) of anemia are often used to understand the multifactorial etiologies of anemia, despite challenges interpreting them in cross-sectional studies. We aimed to compare different statistical approaches for estimating AF for anemia due to inflammation, malaria, and micronutrient deficiencies including iron, vitamin A, vitamin B12, and folate. METHODS: AF were calculated using nationally representative survey data among preschool children (10 countries, total N = 7,973) and nonpregnant women of reproductive age (11 countries, total N = 15,141) from the Biomarkers Reflecting Inflammation and Nutrition Determinants of Anemia (BRINDA) project. We used the following strategies to calculate AF: 1) Levin’s formula with prevalence ratio (PR) in place of relative risk (RR), 2) Levin’s formula with odds ratio (OR) in place of RR, and 3) average (sequential) AF considering all possible removal sequences of risk factors. PR was obtained by 1) modified Poisson regression with robust variance estimation, 2) Kleinman-Norton’s approach, and 3) estimation from OR using Zhang-Yu’s approach. Survey weighted country-specific analysis was performed with and without adjustment for age, sex, socioeconomic status, and other risk factors. RESULTS: About 20–70% of children and 20–50% of women suffered from anemia, depending on the survey. Using OR yielded the highest and potentially biased AF, in some cases double those using PR. Adjusted AF using different PR estimations (Poisson regression, Kleinman-Norton, Zhang-Yu) were nearly identical. Average AF estimates were similar to those using Levin’s formula with PR. Estimated anemia AF for children and women were 2–36% and 3–46% for iron deficiency, <24% and <12% for inflammation, and 2–36% and 1–16% for malaria. Unadjusted AF substantially differed from adjusted AF in most countries. CONCLUSION: AF of anemia can be estimated from survey data using Levin’s formula or average AF. While different approaches exist to estimate adjusted PR, Poisson regression is likely the easiest to implement. AF are a useful metric to prioritize interventions to reduce anemia prevalence, and the similarity across methods provides researchers flexibility in selecting AF approaches. Public Library of Science 2022-10-13 /pmc/articles/PMC10022287/ /pubmed/36962596 http://dx.doi.org/10.1371/journal.pgph.0001071 Text en https://creativecommons.org/publicdomain/zero/1.0/This is an open access article, free of all copyright, and may be freely reproduced, distributed, transmitted, modified, built upon, or otherwise used by anyone for any lawful purpose. The work is made available under the Creative Commons CC0 (https://creativecommons.org/publicdomain/zero/1.0/) public domain dedication.
spellingShingle Research Article
Ko, Yi-An
Williams, Anne M.
Peerson, Janet M.
Luo, Hanqi
Flores-Ayala, Rafael
Wirth, James P.
Engle-Stone, Reina
Young, Melissa F.
Suchdev, Parminder S.
Approaches to quantify the contribution of multiple anemia risk factors in children and women from cross-sectional national surveys
title Approaches to quantify the contribution of multiple anemia risk factors in children and women from cross-sectional national surveys
title_full Approaches to quantify the contribution of multiple anemia risk factors in children and women from cross-sectional national surveys
title_fullStr Approaches to quantify the contribution of multiple anemia risk factors in children and women from cross-sectional national surveys
title_full_unstemmed Approaches to quantify the contribution of multiple anemia risk factors in children and women from cross-sectional national surveys
title_short Approaches to quantify the contribution of multiple anemia risk factors in children and women from cross-sectional national surveys
title_sort approaches to quantify the contribution of multiple anemia risk factors in children and women from cross-sectional national surveys
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10022287/
https://www.ncbi.nlm.nih.gov/pubmed/36962596
http://dx.doi.org/10.1371/journal.pgph.0001071
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