| Literature DB >> 29661161 |
Gary Joseph1, Inácio C M da Silva2, Günther Fink3, Aluisio J D Barros2, Cesar G Victora2.
Abstract
BACKGROUND: Having high-quality data available by 2020, disaggregated by income, is one of the Sustainable Development Goals (SGD). We explored how well coverage with skilled birth attendance (SBA) is predicted by asset-based wealth quintiles and by absolute income.Entities:
Keywords: Birth attendance; Household income; Institutional delivery; Low and middle-income countries
Mesh:
Year: 2018 PMID: 29661161 PMCID: PMC5902965 DOI: 10.1186/s12884-018-1734-0
Source DB: PubMed Journal: BMC Pregnancy Childbirth ISSN: 1471-2393 Impact factor: 3.007
Linear regression analyses to investigate how well relative quintiles, actual mean wealth index scores and absolute income (per quintile) predict SBA coverage (N = 1465 observations)
| SBA prevalence (coefficients expressed as percent point) | |||||||
|---|---|---|---|---|---|---|---|
| Analysis level | Cross-country analysis | Within country analysis | |||||
| Model 1 | Model2 | Model 3 | Model 4 | Model 5 | Model 6 | Model 7 | |
| Asset quintile 1 | 0 (reference) | 0 (reference) | 0 (reference) | ||||
| Asset quintile 2 | 10.19 (1.05) | 10.19 (1.17) | 2.18 (3.93) | ||||
| Asset quintile 3 | 18.66 (1.80) | 18.66 (2.02) | 5.36 (6.53) | ||||
| Asset quintile 4 | 28.60 (2.23) | 28.60 (2.49) | 9.98 (9.23) | ||||
| Asset quintile 5 | 40.04 (2.56) | 40.04 (2.86) | 11.79 (14.02) | ||||
| Mean wealth scores | 6.97 (1.82) | 6.85 (3.29) | |||||
| Log incomea | 19.13 (1.24) | 18.38 (1.31) | 12.78 (6.13) | ||||
| Survey specific intercepts | NO | NO | NO | YES | YES | YES | YES |
| R-squared | 0.220 | 0.128 | 0.516 | 0.877 | 0.777 | 0,879 | 0,881 |
Robust standard errors in parentheses are clustered at the country level
aIncome is expressed in 2011 purchasing power parity-adjusted international dollars. Model 1 and model 4: cross-country and within-country prediction of SBA coverage according to wealth quintiles. Model 2 and model 5: cross-country and within-country prediction of SBA coverage according to actual mean wealth scores. Model 3 and model 6: cross-country and within-country prediction of SBA coverage according to household income. Model 7: within-country prediction of SBA coverage according to wealth quintiles and household income
Fig. 1SBA coverage by log absolute income. Each dot is one quintile in each survey
Fig. 2SBA coverage in Namibia, Ethiopia and Nigeria according to a wealth quintiles and b absolute income in the most recent survey
Fig. 3Five countries with increases in SBA coverage > = 40 percentage points over time: Burkina Faso, Cambodia, Egypt, Nepal and Rwanda
Fig. 4Four countries with increases in SBA coverage < 10 percentage points over 10 or more years: Chad, Ethiopia, Nigeria and Tanzania
Fig. 5Two countries with no progress in household income over 10 or more years but with increase in SBA coverage (Bolivia, Haiti)