| Literature DB >> 22093084 |
Benn K D Sartorius1, Kurt Sartorius, Tobias F Chirwa, Sharon Fonn.
Abstract
BACKGROUND: Many sub-Saharan countries are confronted with persistently high levels of infant mortality because of the impact of a range of biological and social determinants. In particular, infant mortality has increased in sub-Saharan Africa in recent decades due to the HIV/AIDS epidemic. The geographic distribution of health problems and their relationship to potential risk factors can be invaluable for cost effective intervention planning. The objective of this paper is to determine and map the spatial nature of infant mortality in South Africa at a sub district level in order to inform policy intervention. In particular, the paper identifies and maps high risk clusters of infant mortality, as well as examines the impact of a range of determinants on infant mortality. A Bayesian approach is used to quantify the spatial risk of infant mortality, as well as significant associations (given spatial correlation between neighbouring areas) between infant mortality and a range of determinants. The most attributable determinants in each sub-district are calculated based on a combination of prevalence and model risk factor coefficient estimates. This integrated small area approach can be adapted and applied in other high burden settings to assist intervention planning and targeting.Entities:
Mesh:
Year: 2011 PMID: 22093084 PMCID: PMC3250938 DOI: 10.1186/1476-072X-10-61
Source DB: PubMed Journal: Int J Health Geogr ISSN: 1476-072X Impact factor: 3.918
Figure 1District level infant mortality rates with 95% confidence intervals and significant high or low districts, South Africa, 2007. Dashed line represents the national average i.e. SMR = 1; upward triangles represent sub-districts which are not significantly different from SMR = 1 but that are not equivalent based on an equivalency test using a critical SMR range of 0.8-1.25; ISRDP = rural development district; Metro = metropolitan; province abbreviations: EC (Eastern Cape), FS (Free State), GT (Gauteng), KZ (Kwa-Zulu Natal), LI (Limpopo), MPU (Mpumalanga), NW (North West), NC (Northern Cape), WC (Western Cape).
Figure 2Bayesian zero-inflated Poisson (ZIP) model (baseline model containing only a constant and the conditional autoregressive parameters - see Appendix 1) showing increasing infant mortality risk by sub-district, South Africa, 2007. Note: asterisk indicate sub-districts in which the SMR was significantly above 1 based on an exceedance probability of >0.9.
Univariate and Bayesian multivariable infant mortality risk factor analysis, South Africa, 2007
| Indicator | Univariate analysis | Multivariable analysis | ||
|---|---|---|---|---|
| Proportion of previous siblings that have died | 1.135 (1.13,1.141) | <0.001 | 1.032 (0.989,1.081) | 0.088 |
| Proportion of mothers that have died | 1.108 (1.104,1.113) | <0.001 | 1.034 (1,1.073) | 0.025 |
| HIV antenatal sero-prevalence iii in 2007 | 1.035 (1.034,1.037) | <0.001 | 1.017 (1,1.037) | 0.022 |
| Ratio of male to female infants | 1.042 (1.041,1.043) | <0.001 | 1.021 (1.013,1.029) | <0.001 |
| Gini-coefficient for income inequality | 1.017 (1.016,1.019) | <0.001 | 1.003 (0.994,1.014) | 0.266 |
| Proportion of females with no schooling | 1.031 (1.03,1.032) | <0.001 | v | --- |
| Poor basic service delivery iv | 1.009 (1.009,1.009) | <0.001 | v | --- |
| Combined lack of female schooling and basic service delivery indicators | 1.012 (1.011,1.012) | <0.001 | 1.003 (0.993,1.002) | 0.912 |
| Constant (b0) | --- | --- | -1.198 (-1.664,-0.727) | --- |
| σ2ε (unstructured sub-district heterogeneity) | --- | --- | 0.446 (0.352,0.552) | --- |
| σ2φ (spatially structured heterogeneity) | --- | --- | 0.015 (0,0.142) | --- |
i: Incorporated an unstructured sub-district random effect and a structured normal CAR spatial random effect;ii: Bayesian credibility interval; iii: District level; iv: includes lack of basic service (water, toilet and rubbish disposal) and increasing ratio of infants to clinics within the sub-district
v: in multivariable model we have combined lack of female schooling with poor basic service delivery as they are strongly correlated (ρ = 0.5633, p < 0.01)
Figure 3Risk indicators with highest attributable fractions (impact) in significantly high risk infant mortality sub-districts, South Africa, 2007.
Figure 4Map of South Africa, with provinces and neighbouring countries.