A comparison of all-cause and cause-specific mortality by household socioeconomic status across seven INDEPTH network health and demographic surveillance systems in sub-Saharan Africa
A comparison of all-cause and cause-specific mortality by household socioeconomic status across seven INDEPTH network health and demographic surveillance systems in sub-Saharan Africa
Publication Date
20192019
Author
Prevalence and Factors Associated With Initiation of Isoniazid Preventive Therapy among Children Aged Below Five Years in Kisumu County
Prevalence and Factors Associated With Initiation of Isoniazid Preventive Therapy among Children Aged Below Five Years in Kisumu County
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ABSTRACT
Background: Understanding socioeconomic disparities in all-cause and cause-specific mortality can help inform prevention and treatment strategies.
Objectives: To quantify cause-specific mortality rates by socioeconomic status across seven
health and demographic surveillance systems (HDSS) in five countries (Ethiopia, Kenya,
Malawi, Mozambique, and Nigeria) in the INDEPTH Network in sub-Saharan Africa.
Methods: We linked demographic residence data with household survey data containing
living standards and education information we used to create a poverty index. Person-years
lived and deaths between 2003 and 2016 (periods varied by HDSS) were stratified in each
HDSS by age, sex, year, and number of deprivations on the poverty index (0–8). Causes of
death were assigned to each death using the InterVA-4 model based on responses to verbal
autopsy questionnaires. We estimated rate ratios between socioeconomic groups (2–4 and
5–8 deprivations on our poverty index compared to 0–2 deprivations) for specific causes of
death and calculated life expectancy for the deprivation groups.
Results: Our pooled data contained almost 3.5 million person-years of observation and 25,038
deaths. All-cause mortality rates were higher among people in households with 5–8 deprivations
on our poverty index compared to 0–2 deprivations, controlling for age, sex, and year (rate ratios
ranged 1.42 to 2.06 across HDSS sites). The poorest group had consistently higher death rates in
communicable, maternal, neonatal, and nutritional conditions (rate ratios ranged 1.34–4.05) and
for non-communicable diseases in several sites (1.14–1.93). The disparities in mortality between
5–8 deprivation groups and 0–2 deprivation groups led to lower life expectancy in the higherdeprivation groups by six years in all sites and more than 10 years in five sites.
Conclusions: We show large disparities in mortality on the basis of socioeconomic status
across seven HDSS in sub-Saharan Africa due to disparities in communicable disease mortality
and from non-communicable diseases in some sites. Life expectancy gaps between socioeconomic groups within sites were similar to the gaps between high-income and lowermiddle-income countries. Prevention and treatment efforts can benefit from understanding
subpopulations facing higher mortality from specific conditions.