Multilevel time series modelling of antenatal care coverage in Bangladesh at disaggregated administrative levels

Sumonkanti Das, Jan van den Brakel, Harm Jan Boonstra, Stephen Haslett

    Research output: Book/ReportCommissioned reportpeer-review

    Abstract

    Multilevel time series (MTS) models are applied to estimate trends in time series of antenatal care coverage at several administrative levels in Bangladesh, based on repeated editions of the Bangladesh Demographic and Health Survey (BDHS) within the period 19942014. MTS models are expressed in an hierarchical Bayesian framework and fitted using Markov Chain Monte Carlo simulations. The models account for varying time lags of three or four years between the editions of the BDHS and provide predictions for the intervening years as well. It is proposed to apply crosssectional FayHerriot (FH) models to the survey years separately at district level, which is the most detailed regional level. Time series of these small domain predictions at the district level and their variancecovariance matrices are used as input series for the MTS models. Spatial correlations among districts, random intercept and slope at the district level, and different trend models at district level and higher regional levels are examined in the MTS models to borrow strength over time and space. Trend estimates at district level are obtained directly from the model outputs, while trend estimates at higher regional and national levels are obtained by aggregation of the district level predictions, resulting in a numerically consistent set of trend estimates.
    Original languageEnglish
    Place of PublicationThe Hague
    Commissioning bodyStatistics Netherlands
    Publication statusPublished - 2021

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