Background: Almost all maternal deaths and related morbidities occur in low-income countries. Childbirth supervised by a skilled provider in a health facility is a key intervention to prevent maternal and perinatal morbidity and mortality. Our study aimed to establish the factors associated with health facility utilization during childbirth in Uganda. Methods: We used the Uganda Demographic and Health Survey 2016 data of 10,152 women aged 15 to 49 years. The study focused on their most recent live birth in 5 years preceding the survey. We applied multistage stratified sampling to select study participants and we conducted multivariable logistic regression to establish the factors associated with health facility utilization during childbirth, using SPSS (version 25). Results: The proportion of women who gave birth at a health facility was 76.6% (7780/10,152: (95% confidence interval, CI, 75.8–77.5). The odds of women aged 15–19 years giving birth at health facilities were twice as those of women aged 40 to 49 years (adjusted odds ratio, AOR = 2.29; 95% CI: 1.71–3.07). Residing in urban areas and attending antenatal care (ANC) were associated with health facility use. The odds of women in the northern region of Uganda using health facilities were three times of those of women in the central region (AOR = 3.13; 95% CI: 2.15–4.56). Women with tertiary education (AOR = 4.96; 95% CI: 2.71–9.11) and those in the richest wealth quintile (AOR = 4.55; 95% CI: 3.27–6.32) had higher odds of using a health facility during child birth as compared to those with no education and those in the poorest wealth quintile, respectively. Muslims, Baganda, women exposed to mass media and having no problem with distance to health facility had higher odds of utilizing health facilities during childbirth as compared to Catholic, non Baganda, women not exposed to mass media and those having challenges with distance to access healthcare. Conclusion: Health facility utilization during childbirth was high and it was associated with decreasing age, increasing level of education and wealth index, urban residence, Northern region of Uganda, ANC attendance, exposure to mass media, tribe, religion and distance to the nearby health facility. We recommend that interventions to promote health facility childbirths in Uganda target the poor, less educated, and older women especially those residing in rural areas with less exposure to mass media.
We used secondary data of the 2016 nationally representative Uganda Demographic and Health Survey (UDHS) collected from June to December 2016 [8]. The survey was implemented by the Uganda Bureau of Statistics (UBOS) with the technical assistance of Inner City Fund (ICF) International through the USAID-supported MEASURE DHS project [8]. The survey inquired about household members’ and individual characteristics using household questionnaire, women’s questionnaire, men’s questionnaire and biomarker questionnaire [8]. The current study analyzed data that was collected using the women’s questionnaire part of the survey. Women who had given informed consent were asked about the place of delivery for their most recent live birth in the 5 years preceding the survey [8]. Uganda has a tiered health system, from the highest level of national tertiary referral hospitals to the lowest at the community [17, 18]. It is a mixed health system where public and private health providers co-exist [18]. Over 25 years ago, Uganda adopted a decentralized approach to service delivery with local government at districts overseeing, managing and mobilizing resources for service delivery, including healthcare services [18]. The Ugandan government abolished user fees in 2001 in all public health facilities. However, the health service delivery and utilization still face multiple challenges including inadequate staffing, low pay, shortage of medicines and poor infrastructure [18]. UDHS employed two-stage cluster sampling technique where the census enumeration areas were the primary sampling units while households were the second stage of sampling [8]. The enumeration areas were selected from the 2014 population and housing census sample frame [8]. Women aged 15 to 49 years who were either permanent residents or spent the night preceding the survey in the selected household were eligible for inclusion in the Uganda’s demographic health survey 2016 [8]. Of the 18,506 women who consented and filled in the questionnaires, 10,152 responded to the question about place of child birth considering their most recent live birth in the 5 years preceding the survey [8]. Health facility delivery was defined as birth that occurred inside a health facility, whether private or government. Childbirth outside a health facility was defined as birth that occurred outside a health facility including at the home of the woman’s, relatives’, or traditional birth attendants’ on the way to the health facility. Birth outside health facility was coded as zero (0) while health facility delivery was coded as one (1). In this study, we conceptualized the factors associated with decision making regarding the place of childbirth by the mother using a conceptual framework heavily influenced by Andersen’s behavioral model of health service use. Borrowing from this theoretical framework, we developed a conceptual framework (See Fig. 1). Additionally, only variables that are collected in the routine DHS were examined in our study. According to our conceptual framework, utilization of health facility during child birth could be a function of three categories of factors, namely: predisposing factors (socio-demographic factors), enabling factors (e.g., wealth index) and healthcare needs [19–21]. The predisposing factors in the conceptual framework are: age, level of education, region of residence, place of residence, religion, marital status, household size, sex of household head and tribe. Wealth index, working status, exposure to mass media, problems seeking permission and distance to the nearest health facility as an indicator of access were considered as enabling factors, while visiting the health facility for antenatal care was included in the model as a proxy for the perceived need, as illustrated in Fig. Fig.11. Conceptual framework for the factors associated with health facility utilization for childbirth Maternal age was categorized as; (15–19 years, 20–29 years, 30–39 years, 40–49 years) [22]. Wealth index is a measure of relative household economic status and was calculated by UDHS from information on household asset ownership using Principal Component Analysis, which was further categorized into poorest, poorer, middle, richer and richest quintiles [8]. Place of Residence was categorized into urban and rural. Region was categorized into four; Northern (Teso, Karamoja, Lango, Acholi, West Nile), Central (Kampala, Central 1 and Central 2), Eastern (Busoga, Bugishu and Bukedi) and Western (Tooro, Ankole, Bunyoro and Kigezi) [23]. Level of Education was categorized into no education, primary education, secondary and tertiary education. Household Size was categorized as less than six members and six and above members (based on the national average and the dataset average of six members per household). Sex of household head was categorized as male or female, working status categorized as: not working and working while marital status as married (this included those in formal and informal unions) and not married. ANC attendance was categorized as yes (for any woman who attended ANC regardless of the frequency) and no (for those who did not attend ANC at all). Religion was categorized as Muslims, Anglican, Catholics, Pentecostal, and others while tribe was categorized as Acholi, Baganda, Bagisu, Bakiga, Banyankole, Basoga, Langi, Itesot and others. Problems with access to care (either seeking permission or distance to health facility) were categorized as big problem and no big problem while exposure to any of the three-mass media avenues (TV, radio, and newspapers) was categorized as yes and no and whether pregnancy was wanted was categorized as no, later and then. In order to account for the multi-stage cluster study design, we used complex sample package of SPSS (version 25.0) statistical software and adjusted the data using sampling weights, primary sampling units, and strata. We carried out the weighted count to account for the unequal probability sampling in different strata and to ensure representativeness of the survey results at the national and regional level. We performed Chi-square tests to determine the association between the independent variables and the outcome variable (place of childbirth). Logistic regression analyses were conducted to determine the strength of associations between independent variables and the outcome variable, after adjusting for extraneous variables. Before multivariable logistic regression, each exposure/predictor (independent variable) was assessed separately for its association with the outcome variable using bivariate logistic regression by reviewing the crude odds ratio (COR), 95% confidence interval (CI) and p-values. The conceptual framework was relied upon to select variables for the multivariable logistic regression. Additionally, independent variables with a p-value ≤0.20 at the bivariate analysis [24] were included in the final multivariable logistic regression model to assess the independent effect of each variable on the outcome variable. All variables in the model were assessed for collinearity. The highest variance inflation factor (VIF) observed was 1.96. Adjusted odds ratios (AOR), 95% confidence intervals (CI) and p-values were calculated with statistical significance level set at p-value < 0.05. Sensitivity analysis was conducted with the multivariable model by examining each mass medium and parameter of access to healthcare for their individual effects on place of childbirth.
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