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Multiple Imputation to Correct for Nonresponse Bias: Application in Non-Communicable Disease Risk Factors Survey

BACKGROUND: This study was carried out to use multiple imputation (MI) in order to correct for the potential nonresponse bias in measurements related to variable fasting blood glucose (FBS) in non-communicable disease risk factors survey conducted in Iran in 2007. METHODS: Five multiple imputation m...

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Autores principales: Miri, Hamid Heidarian, Hassanzadeh, Jafar, Rajaeefard, Abdolreza, Mirmohammadkhani, Majid, Angali, Kambiz Ahmadi
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Canadian Center of Science and Education 2016
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4803978/
https://www.ncbi.nlm.nih.gov/pubmed/26234966
http://dx.doi.org/10.5539/gjhs.v8n1p133
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author Miri, Hamid Heidarian
Hassanzadeh, Jafar
Rajaeefard, Abdolreza
Mirmohammadkhani, Majid
Angali, Kambiz Ahmadi
author_facet Miri, Hamid Heidarian
Hassanzadeh, Jafar
Rajaeefard, Abdolreza
Mirmohammadkhani, Majid
Angali, Kambiz Ahmadi
author_sort Miri, Hamid Heidarian
collection PubMed
description BACKGROUND: This study was carried out to use multiple imputation (MI) in order to correct for the potential nonresponse bias in measurements related to variable fasting blood glucose (FBS) in non-communicable disease risk factors survey conducted in Iran in 2007. METHODS: Five multiple imputation methods as bootstrap expectation maximization, multivariate normal regression, univariate linear regression, MI by chained equation, and predictive mean matching were applied to impute variable fasting blood sugar. To make FBS consistent with normality assumption natural logarithm (Ln) and Box-Cox (BC) transformations were used prior to imputation. Measurements from which we intended to remove nonresponse bias included mean of FBS and percentage of those with high FBS. RESULTS: For mean of FBS results didn’t considerably change after applying MI methods. Regarding the prevalence of high blood sugar all methods on original scale tended to increase the estimates except for predictive mean matching that along with all methods on BC or Ln transformed data didn’t change the results. CONCLUSIONS: FBS-related measurements didn’t change after applying different MI methods. It seems that nonresponse bias was not an important challenge regarding these measurements. However use of MI methods resulted in more efficient estimations. Further studies are encouraged on accuracy of MI methods in these settings.
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spelling pubmed-48039782016-04-21 Multiple Imputation to Correct for Nonresponse Bias: Application in Non-Communicable Disease Risk Factors Survey Miri, Hamid Heidarian Hassanzadeh, Jafar Rajaeefard, Abdolreza Mirmohammadkhani, Majid Angali, Kambiz Ahmadi Glob J Health Sci Articles BACKGROUND: This study was carried out to use multiple imputation (MI) in order to correct for the potential nonresponse bias in measurements related to variable fasting blood glucose (FBS) in non-communicable disease risk factors survey conducted in Iran in 2007. METHODS: Five multiple imputation methods as bootstrap expectation maximization, multivariate normal regression, univariate linear regression, MI by chained equation, and predictive mean matching were applied to impute variable fasting blood sugar. To make FBS consistent with normality assumption natural logarithm (Ln) and Box-Cox (BC) transformations were used prior to imputation. Measurements from which we intended to remove nonresponse bias included mean of FBS and percentage of those with high FBS. RESULTS: For mean of FBS results didn’t considerably change after applying MI methods. Regarding the prevalence of high blood sugar all methods on original scale tended to increase the estimates except for predictive mean matching that along with all methods on BC or Ln transformed data didn’t change the results. CONCLUSIONS: FBS-related measurements didn’t change after applying different MI methods. It seems that nonresponse bias was not an important challenge regarding these measurements. However use of MI methods resulted in more efficient estimations. Further studies are encouraged on accuracy of MI methods in these settings. Canadian Center of Science and Education 2016-01 2015-05-15 /pmc/articles/PMC4803978/ /pubmed/26234966 http://dx.doi.org/10.5539/gjhs.v8n1p133 Text en Copyright: © Canadian Center of Science and Education http://creativecommons.org/licenses/by/3.0/ This is an open-access article distributed under the terms and conditions of the Creative Commons Attribution license (http://creativecommons.org/licenses/by/3.0/).
spellingShingle Articles
Miri, Hamid Heidarian
Hassanzadeh, Jafar
Rajaeefard, Abdolreza
Mirmohammadkhani, Majid
Angali, Kambiz Ahmadi
Multiple Imputation to Correct for Nonresponse Bias: Application in Non-Communicable Disease Risk Factors Survey
title Multiple Imputation to Correct for Nonresponse Bias: Application in Non-Communicable Disease Risk Factors Survey
title_full Multiple Imputation to Correct for Nonresponse Bias: Application in Non-Communicable Disease Risk Factors Survey
title_fullStr Multiple Imputation to Correct for Nonresponse Bias: Application in Non-Communicable Disease Risk Factors Survey
title_full_unstemmed Multiple Imputation to Correct for Nonresponse Bias: Application in Non-Communicable Disease Risk Factors Survey
title_short Multiple Imputation to Correct for Nonresponse Bias: Application in Non-Communicable Disease Risk Factors Survey
title_sort multiple imputation to correct for nonresponse bias: application in non-communicable disease risk factors survey
topic Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4803978/
https://www.ncbi.nlm.nih.gov/pubmed/26234966
http://dx.doi.org/10.5539/gjhs.v8n1p133
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