A Probabilistic Model for Analyzing Summary Birth History Data
Katie Wilson, Jon Wakefield

TL;DR
This paper introduces a computationally efficient probabilistic model that combines summary and full birth history data to improve subnational under-five mortality estimates, addressing data sparsity in low-resource settings.
Contribution
It develops a novel model-based approach that propagates errors and integrates various data sources without high computational costs.
Findings
Model performs well on simulated data.
Applied successfully to Malawi survey and census data.
Enables more accurate subnational mortality estimates.
Abstract
BACKGROUND There is an increasing demand for high quality subnational estimates of under-five mortality. In low and middle income countries, where the burden of under-five mortality is concentrated, vital registration is often lacking and household surveys, which provide full birth history data, are often the most reliable source. Unfortunately, these data are spatially sparse and so data are pulled from other sources to increase the available information. Summary birth histories represent a large fraction of the available data, and provide numbers of births and deaths aggregated over time, along with the mother's age. OBJECTIVE Specialized methods are needed to leverage this information, and previously the Brass method, and variants, have been used. We wish to develop a model-based approach that can propagate errors, and make the most efficient use of the data. Further, we strive…
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Taxonomy
TopicsGlobal Maternal and Child Health · Insurance, Mortality, Demography, Risk Management · Global Health Care Issues
