Abstract:
Understanding characteristics of population groups vulnerable to catastrophic health
expenditures and impoverishment due to health expenditures is important for designing
financial protection programs and policies. This thesis developed a model for assessing the
effect of household and neighborhood characteristics on the extent of catastrophic health
expenditures and impoverishment due to health expenditures. The study used data from a
cross-sectional survey conducted between April 2016 to April 2017 among 12447
households in Malawi. The outcome variables were the incidence of catastrophic health
expenditures and impoverishment effects of health expenditures. Descriptive statistics such
as proportions and means were used to describe characteristics of the sampled households.
Moran I statistic was used to test for spatial dependence in impoverishment. Multilevel
logistic model was developed to assess the effects of household and neighborhood
characteristics on catastrophic health expenditures. Spatial multilevel logistic model was
developed to assess the effects of household and neighborhood characteristics on
impoverishment. Decomposition analysis was used to decompose socio-economic inequality
in catastrophic health expenditures into its determinants. The thesis used simulation analysis
to compare spatial multilevel model to multilevel and single level models in terms of overall
model fit and performance of the parameter estimates. The analysis showed that 1.37% of
the households incurred catastrophic expenditures. Visiting mission health facility,
hospitalization, larger household size, higher socioeconomic status, living in central region
and rural areas increased the odds of facing catastrophic expenditures. Majority of inequality
in catastrophic expenditures is due to income, urban-rural and regional inequalities. 1.6% of
Malawians were impoverished due to health expenditures. Lower socio-economic status,
hospitalizations, chronic illnesses, residency in rural area increased the odds of
impoverishment. There were significant spatial variations in impoverishment with higher
spatial effects clustering in central region districts. Multilevel logistic model and spatial
multilevel models provided the best fit to the data and unbiased estimated parameters. There
is need design better prepayment mechanisms to protect vulnerable population groups and
ensure progress towards universal health coverage. Policies aiming to reduce inequalities in
health expenditures should simultaneously aim to reduce income, urban-rural and regional
inequalities. Researchers using data from complex survey design in modelling health
expenditures and its implications on household welfare should account for neighborhood
and spatial dependence in the data.
Description:
The article analyzes factors contributing to catastrophic health expenditures and impoverishment in Malawi. Using survey data, it identifies hospitalization, household size, rural residency, and regional disparities as key factors. It calls for improved financial protection policies to address income and regional inequalities.