Global estimation of neonatal mortality using a Bayesian hierarchical splines regression model

<b>Background</b>: In recent years, much of the focus in monitoring child mortality has been on assessing changes in the under-5 mortality rate (U5MR). However, as the U5MR decreases, the share of neonatal deaths (within the first month) tends to increase, warranting increased efforts in...

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Main Authors: Monica Alexander, Leontine Alkema
Format: Article
Language:English
Published: Max Planck Institute for Demographic Research 2018-01-01
Series:Demographic Research
Online Access:https://www.demographic-research.org/volumes/vol38/15/
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spelling doaj-1024880a02064ccda498df0e5cef0f3d2020-11-25T00:24:43ZengMax Planck Institute for Demographic ResearchDemographic Research1435-98712018-01-01381510.4054/DemRes.2018.38.153490Global estimation of neonatal mortality using a Bayesian hierarchical splines regression modelMonica Alexander0Leontine Alkema1University of California, BerkeleyNational University of Singapore<b>Background</b>: In recent years, much of the focus in monitoring child mortality has been on assessing changes in the under-5 mortality rate (U5MR). However, as the U5MR decreases, the share of neonatal deaths (within the first month) tends to increase, warranting increased efforts in monitoring the neonatal mortality rate (NMR) in addition to the U5MR. <b>Objective</b>: Data on neonatal deaths comes from a range of sources across different countries, with the amount of data available and the quality of data varying widely. Our objective in estimating the NMR globally is to combine all data sources available to obtain accurate estimates, be able to project mortality levels, and have some indication of the uncertainty in the estimates and projections. <b>Methods</b>: We present a new model for estimating the NMR for countries worldwide, using a Bayesian hierarchical model framework. <b>Contribution</b>: Our modeling approach offers an intuitive way to share information across different countries and time points, and incorporates different sources of error into the estimates. It also improves on previous modeling approaches by allowing for trends observed in NMR to be more driven by the data available, rather than trends in covariates.https://www.demographic-research.org/volumes/vol38/15/
collection DOAJ
language English
format Article
sources DOAJ
author Monica Alexander
Leontine Alkema
spellingShingle Monica Alexander
Leontine Alkema
Global estimation of neonatal mortality using a Bayesian hierarchical splines regression model
Demographic Research
author_facet Monica Alexander
Leontine Alkema
author_sort Monica Alexander
title Global estimation of neonatal mortality using a Bayesian hierarchical splines regression model
title_short Global estimation of neonatal mortality using a Bayesian hierarchical splines regression model
title_full Global estimation of neonatal mortality using a Bayesian hierarchical splines regression model
title_fullStr Global estimation of neonatal mortality using a Bayesian hierarchical splines regression model
title_full_unstemmed Global estimation of neonatal mortality using a Bayesian hierarchical splines regression model
title_sort global estimation of neonatal mortality using a bayesian hierarchical splines regression model
publisher Max Planck Institute for Demographic Research
series Demographic Research
issn 1435-9871
publishDate 2018-01-01
description <b>Background</b>: In recent years, much of the focus in monitoring child mortality has been on assessing changes in the under-5 mortality rate (U5MR). However, as the U5MR decreases, the share of neonatal deaths (within the first month) tends to increase, warranting increased efforts in monitoring the neonatal mortality rate (NMR) in addition to the U5MR. <b>Objective</b>: Data on neonatal deaths comes from a range of sources across different countries, with the amount of data available and the quality of data varying widely. Our objective in estimating the NMR globally is to combine all data sources available to obtain accurate estimates, be able to project mortality levels, and have some indication of the uncertainty in the estimates and projections. <b>Methods</b>: We present a new model for estimating the NMR for countries worldwide, using a Bayesian hierarchical model framework. <b>Contribution</b>: Our modeling approach offers an intuitive way to share information across different countries and time points, and incorporates different sources of error into the estimates. It also improves on previous modeling approaches by allowing for trends observed in NMR to be more driven by the data available, rather than trends in covariates.
url https://www.demographic-research.org/volumes/vol38/15/
work_keys_str_mv AT monicaalexander globalestimationofneonatalmortalityusingabayesianhierarchicalsplinesregressionmodel
AT leontinealkema globalestimationofneonatalmortalityusingabayesianhierarchicalsplinesregressionmodel
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