Prevention of mother-to-child transmission of HIV was added to standard antenatal care (ANC) in 2000 for Colombians enrolled in the two national health insurance schemes, the ‘subsidized regime’ (covering poor citizens) and the ‘contributory regime’ (covering salaried citizens with incomes above the poverty threshold), which jointly covered 80% of the total Colombian population as of 2007. This article examines integration of HIV testing in ANC through the relationship between ordering an HIV test with the type of health insurance, including lack of health insurance, using data from the nationally representative 2005 Colombia Demographic and Health Survey. Overall, health-care providers ordered an HIV test for only 35% of the women attending ANC. We regressed the order of an HIV test during ANC on health systems characteristics (type of insurance and type of ANC provider), women’s characteristics (age, wealth, educational attainment, month of pregnancy at first antenatal visit, HIV knowledge, urban vs. rural residence and sub-region of residence) and children’s characteristics (birth order and birth year). Women enrolled in the subsidized regime were significantly less likely to be offered and receive an HIV test in ANC than women without any health insurance (adjusted odds ratio = 0.820, P < 0.001), when controlling for the other independent variables. Wealth, urban residence, birth year of the child and the type of health-care provider seen during the ANC visit were significantly associated with providers ordering an HIV test for a woman (all P < 0.05). Our findings suggest that enrolment in the subsidized regime reduced access to HIV testing in ANC. Additional research is needed to elucidate the mechanisms through which the potential effect of health insurance coverage on HIV testing in ANC occurs and to examine whether enrolment in the subsidized regime has affected access to other essential health services. © 2013 The Author. All rights reserved.
We used the ENDS 2005 for our analyses. The nationally representative sample of the ENDS 2005 included 38 143 women in 37 211 households. The selected households were located in 3935 clusters in 208 municipalities of 33 Colombian departments. The ENDS 2005 was a stratified, two-stage cluster sample survey. The household response rate was 88%, and the individual response rate from the selected households was 92%. Of the 38 143 women aged 13–49 years who were interviewed, 11 062 received ANC for a birth between the years 2000 and 2005. For this analysis, we analyzed data for only those women who responded to a survey question about whether an HIV test was ordered during their ANC visit. The selection process outlined in Figure 1 resulted in a final sample of 10 596 women. Statistical analysis was conducted using STATA version 11 (StataCorp, College Station, TX, USA). Sample selection. Our outcome variable was a binary indicator capturing whether an HIV test was ordered during an ANC visit of a woman’s most recent birth (for all births occurring between 2000 and 2005). In estimating the summary statistics (Tables 1–3), we used the standard Demographic and Health Survey sampling weights to account for the fact that the probabilities of being selected into the survey sample differed across different groups of women. Characteristics of sample Characteristics of HIV test order Characteristics of insurance types We conducted univariate and multivariate regression analysis. We included indicator variables for insurance type, capturing separately the two most common types of health insurance (contributive and subsidized, 26% and 34% of the sample, respectively), a category for all other forms of health insurance (8%), and the uninsured (31%). In the regression analysis, we controlled for potential confounders including types of health provider administering ANC visits (physician, nurse, midwife or other health provider) and the month of pregnancy where a woman attended her first antenatal visit. The analysis also controlled for other maternal characteristics including age, urban vs. rural residence, educational attainment, wealth (based on principal component analysis of data on household assets following the standard DHS protocol), knowledge of HIV, sub-region of residence, and child’s characteristics including birth year and birth order. These health system, maternal, and child characteristics were included in the analysis to control for potential confounders of any relationship between health insurance and the outcome variable. All values, confidence intervals and P values are based on standard errors that are adjusted for clustering at the level of the DHS cluster. In the regression estimation, we followed the recommendation by Dumouchel and Duncan (1983) and Deaton (1997) and estimated regression coefficients both with and without using sampling weights in the estimation. The differences between the two sets of regression coefficient estimates were small (all unweighted coefficient estimates were within ±10% of the weighted coefficient estimates), indicating that the regressions were homogenous across the groups of women with different probabilities to be included in the sample. In this case, both the weighted and the unweighted regression estimators are unbiased, but the unweighted estimator is more efficient. The regression results in Table 4 thus show the results of the unweighted regression estimations. Multiple logistic regression analysis of ordering an HIV test
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