Inequalities in caesarean section in Burundi: Evidence from the Burundi Demographic and Health Surveys (2010-2016)

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Study Justification:
– The study aims to address the gap in providing caesarean section (CS) services to different population groups in Burundi.
– It investigates the magnitude and change of inequality in CS coverage over a 7-year period.
– The study uses a high-quality equity analysis approach to provide evidence on disparities in CS coverage.
Study Highlights:
– Disparity in CS coverage was present in both survey years (2010 and 2016) and increased over time.
– Wealthy women, women with higher education, women living in urban areas, and certain regions had higher CS coverage.
– Burundi did not make progress in ensuring equity in CS coverage between 2010 and 2016.
Study Recommendations:
– Launch interventions to promote justified use of CS among all subpopulations.
– Discourage overuse of CS among high-income, more educated women, and urban dwellers.
Key Role Players:
– Ministry of Health: Responsible for implementing interventions and policies to address CS coverage disparities.
– Healthcare providers: Involved in delivering CS services and ensuring equitable access.
– Community leaders and organizations: Engage in raising awareness and promoting equitable access to CS services.
– Non-governmental organizations (NGOs): Provide support and resources for implementing interventions.
Cost Items for Planning Recommendations:
– Training and capacity building for healthcare providers.
– Awareness campaigns and community engagement activities.
– Infrastructure and equipment for healthcare facilities.
– Monitoring and evaluation systems to track progress and impact of interventions.
– Research and data collection to inform evidence-based interventions.
Note: The actual cost of implementing these recommendations will depend on the specific context and resources available in Burundi.

The strength of evidence for this abstract is 8 out of 10.
The evidence in the abstract is strong, as it is based on data from the Burundi Demographic and Health Surveys (BDHS) conducted in 2010 and 2016. The study used a high-quality equity analysis approach and calculated relative and absolute summary measures to assess disparities in caesarean section (CS) coverage. The findings show that there is a significant disparity in CS coverage, which systematically favors wealthy women, women with higher education, women living in urban areas, and certain regions. The study concludes that there has been no progress in ensuring equity in CS coverage between 2010 and 2016. To improve the evidence, it would be beneficial to include more recent data and conduct further analysis to identify the underlying factors contributing to the disparities and potential interventions to address them.

Background: Despite caesarean section (CS) being a lifesaving intervention, there is a noticeable gap in providing this service, when necessary, between different population groups within a country. In Burundi, there is little information about CS coverage inequality and the change in provision of this service over time. Using a high-quality equity analysis approach, we aimed to document both magnitude and change of inequality in CS coverage in Burundi over 7 years to investigate disparities. Methods: For this study, data were extracted from the 2010 and 2016 Burundi Demographic and Health Surveys (BDHS) and analyzed through the recently updated Health Equity Assessment Toolkit (HEAT) of the World Health Organization. CS delivery was disaggregated by four equity stratifiers, namely education, wealth, residence and sub-national region. For each equity stratifier, relative and absolute summary measures were calculated. We built a 95% uncertainty interval around the point estimate to determine statistical significance. Main findings: Disparity in CS was present in both survey years and increased over time. The disparity systematically favored wealthy women (SII = 10.53, 95% UI; 8.97, 12.10), women who were more educated (PAR = 8.89, 95% UI; 8.51, 9.26), women living in urban areas (D = 12.32, 95% UI; 9.00, 15.63) and some regions such as Bujumbura (PAR = 11.27, 95% UI; 10.52, 12.02). Conclusions: Burundi had not recorded any progress in ensuring equity regarding CS coverage between 2010 and 2016. It is important to launch interventions that promote justified use of CS among all subpopulations and discourage overuse among high income, more educated women and urban dwellers.

Home to over 11 million people, Burundi is the third most densely populated country in sub-Saharan Africa (SAA) with an estimated 463 inhabitants per km2 [23], and an increasing population that is expected to double by 2040 [18]. Plagued by political uncertainty and violence, the country is poor and severely fragile in terms of its security, economy, society, politics and environment [24]. Although the under-five child mortality rate in Burundi has gradually decreased from 156.4 deaths per 1000 live births in 2000 to 58.5 deaths per 1000 in 2018 [25], it is still over twice the target of less than 25 per 1000 set by the UN 2030 Agenda [26]. The maternal mortality ratio per 100,000 live births has also dropped in Burundi over the past two decades from 1010 deaths per 100,000 live births in 2000 to 538 deaths per 100,000 live births in 2017 and still above the UN 2030 Agenda target of less than 70 deaths per 100,000 by 2030 [26, 27]. Although under-five child and maternal mortality rates have improved over the past two decades in Burundi, they continue to be higher than target indicators [28]. Furthermore, the 2015 political crisis hampered service delivery, particularly affecting maternal and child health services during this time [28]. Significant disparities in coverage and utilization due to socioeconomic status (i.e. financial barriers) and access (i.e. rurality, transport) to maternal and child health services continue in Burundi [28]. The 2010 and 2016 Burundi Demographic and Health Surveys (BDHS) were used in this study. DHS uses a stratified two-stage cluster design where the first stage includes Enumeration Areas (EA) selected through a Probability Proportional to Size approach where large more representative EAs have a higher chance of being in the sample than the small EAs. In the second stage, a random sample of households are drawn from the selected EAs. The household surveys collected data on maternal reproductive and child health in Burundi representative at the national, residence and regional level [29]. Even though the BDHS was carried out in 1987, 2010 and 2016, the 1987 BDHS is not available in the WHO HEAT software; therefore, we confined our analysis to the 2010 and 2016 rounds. Detailed information regarding the BDHS study design are published elsewhere for 2010 [30] and 2016 [31]. A total sample of 24,520 women participated in the 2010 BDHS, of whom 16,778 had a birth in the last 5 years, and 375 births were through CS while remaining 7323 did not have a CS [30]. In 2016, a total sample of 45,419 women were surveyed, of whom 32, 312 had birthed a child and answered the question whether the child was born by caesarean section; 786 had a caesarean and 12,321 did not have a caesarian [31]. CS is defined as the percentage of births delivered by caesarean section among all live births in the 5 years prior to the surveys for the last birth and the next-to-last birth. The question asked: “Was (name) delivered by caesarean, that is, did they cut your belly open to take the baby out?”; the answer options provided were “yes” or “no” [30, 31]. CS was the outcome variable of interest and inequality was measured according to the four equity stratifiers: economic status, education, place of residence, and subnational region. Economic status was approximated through wealth index and is classified into five quintiles: poorest, poor, middle, rich and richest. Wealth index is a standard socioeconomic variable in the DHS and we used the variable as it is. Using a statistical data reduction technique, Principal Component Analysis, wealth index is computed based on household assets and possessions following methods introduced by the Rutstein SO and Johnson K [5]. Educational status is categorized as no education, primary, secondary or higher; place of residence as urban versus rural, and the sub-national region included five and 18 regions in 2010 and 2016 surveys, respectively. Education and wealth have a natural ordering and are known as ordered equity stratifiers whereas place of residence and regions are non-ordered equity stratifiers. The type of summary measures to be calculated are partly determined by whether or not the equity stratifiers are ordered or not [21]. Using the recently updated WHO’s HEAT software (2019 update) [22], we analyzed the socioeconomic and area-based CS disparities. The inequality analysis was completed by, first, disaggregating CS according to the above-mentioned dimensions of inequality and, subsequently interpreting the findings derived from summary measures. Then, we calculated absolute inequality summary measures that included Difference (D), Population Attributable Risk (PAR), and Slope Index of Inequality (SII). These measures were calculated for the four equity stratifiers; for the wealth and education dimensions of inequality, we calculated all of the three inequality measures, and for the region and place of residence, we only calculated the D and PAR. The detailed methods regarding calculation and interpretation of the measures used in the study have been detailed elsewhere [21]. Since CS is a favorable indicator (i.e. a lifesaving measure), positive values of a measure show disproportionate use of the service among the advantaged sub-groups, while negative values indicate that disadvantaged groups are using the service most. The higher their absolute value, the greater the inequality. Zero value for the measures show absence of inequality. D is a simple measure that shows absolute difference between two categories. The other two (PAR, SII), on the other hand, are weighted complex measures of inequality and take into account sizes of all the subpopulations used in the calculation, thereby producing more robust estimates that could represent the entire subpopulation [20, 21]. SII was computed for education and wealth equity stratifiers as it requires an ordered variable. Each point estimate is accompanied by an Uncertainty Interval (95%UI) to identify CS disparities that are statistically significant and to determine whether or not the inequality changed with time. For all inequality measures, the lower and upper bounds of the UI must not contain zero for CS inequality to exist. We assessed the trend of inequality for each summary measure by referring to the UIs for the different survey years; if the UIs did not overlap, inequality existed. The findings were presented per the recommendation of the Strengthening Reporting of Observational studies in Epidemiology (STROBE) reporting guidelines [32]. The demographic health surveys are available publicly and ethics approvals were completed by institutions that commissioned, funded, and managed the surveys. DHS surveys are approved by Inner City Fund (ICF) International and an in-country Institutional Review Board (IRB) to ensure protocols are in compliance with the U.S. Department of Health and Human Services regulations for the protection of human subjects.

Based on the provided information, here are some potential innovations that could be used to improve access to maternal health in Burundi:

1. Mobile Health (mHealth) Solutions: Implementing mobile health technologies, such as SMS reminders for prenatal care appointments and educational messages about maternal health, can help reach women in remote areas and improve access to information and services.

2. Community Health Workers: Training and deploying community health workers who can provide basic maternal health services, including antenatal care, postnatal care, and education, can help bridge the gap in access to healthcare in rural areas.

3. Telemedicine: Establishing telemedicine services that allow pregnant women in remote areas to consult with healthcare professionals through video calls can provide timely advice and guidance, reducing the need for travel to healthcare facilities.

4. Transportation Support: Developing transportation networks or programs that provide affordable and accessible transportation options for pregnant women to reach healthcare facilities can help overcome geographical barriers and improve access to maternal health services.

5. Financial Incentives: Introducing financial incentives, such as conditional cash transfers or subsidies, for pregnant women to seek and complete antenatal care visits and facility-based deliveries can help reduce financial barriers and increase utilization of maternal health services.

6. Maternal Waiting Homes: Establishing maternal waiting homes near healthcare facilities can provide a safe and comfortable place for pregnant women to stay during the final weeks of pregnancy, ensuring they are close to the facility when labor begins.

7. Quality Improvement Initiatives: Implementing quality improvement initiatives in healthcare facilities to enhance the availability and quality of maternal health services, including emergency obstetric care, can help ensure that women receive the necessary care when complications arise.

8. Public Awareness Campaigns: Conducting public awareness campaigns to educate communities about the importance of maternal health, the available services, and the benefits of seeking care can help reduce cultural and social barriers that prevent women from accessing healthcare.

9. Strengthening Health Systems: Investing in the overall strengthening of health systems, including infrastructure, staffing, and supply chain management, can improve the capacity of healthcare facilities to provide maternal health services effectively and efficiently.

10. Research and Data Collection: Conducting further research and data collection on maternal health disparities and access barriers can help inform evidence-based interventions and policies to address the specific needs of different population groups within Burundi.

It is important to note that the specific implementation and effectiveness of these innovations would require further assessment and consideration of the local context and resources available in Burundi.
AI Innovations Description
Based on the information provided, the following recommendation can be developed into an innovation to improve access to maternal health in Burundi:

Launch interventions that promote justified use of caesarean sections (CS) among all subpopulations and discourage overuse among high-income, more educated women, and urban dwellers.

This recommendation is based on the findings that there is a disparity in CS coverage in Burundi, with wealthier women, more educated women, women living in urban areas, and certain regions having higher access to CS. The disparity has increased over time, indicating a lack of progress in ensuring equity in CS coverage.

To address this issue, interventions can be developed to ensure that CS is provided based on medical necessity rather than socioeconomic factors. This can be achieved through:

1. Strengthening healthcare provider training: Provide training to healthcare providers on evidence-based guidelines for determining when a CS is medically necessary. This will help ensure that CS is only performed when it is the safest option for the mother and baby.

2. Improving access to healthcare facilities: Increase the availability and accessibility of healthcare facilities equipped to perform CS, particularly in rural areas. This can be done by establishing or upgrading existing facilities and improving transportation infrastructure to facilitate timely access to healthcare.

3. Enhancing awareness and education: Conduct awareness campaigns to educate women and communities about the appropriate use of CS and the potential risks associated with unnecessary procedures. This can help dispel misconceptions and empower women to make informed decisions about their maternal healthcare.

4. Strengthening healthcare systems: Improve the overall healthcare system in Burundi by addressing issues such as staffing shortages, inadequate resources, and weak referral systems. This will help ensure that all women, regardless of their socioeconomic status or geographic location, have equal access to quality maternal healthcare services.

By implementing these interventions, Burundi can work towards reducing the disparities in CS coverage and improving access to maternal health services for all women in the country.
AI Innovations Methodology
Based on the provided information, here are some potential recommendations to improve access to maternal health in Burundi:

1. Strengthen healthcare infrastructure: Invest in improving healthcare facilities, particularly in rural areas, to ensure that pregnant women have access to quality maternal health services.

2. Increase availability of skilled healthcare providers: Train and deploy more skilled healthcare providers, such as doctors, midwives, and nurses, especially in underserved areas, to ensure that women have access to skilled care during pregnancy, childbirth, and postpartum.

3. Enhance transportation services: Improve transportation infrastructure and services to facilitate access to healthcare facilities, particularly in remote areas where pregnant women may face challenges in reaching healthcare facilities in a timely manner.

4. Promote community-based interventions: Implement community-based interventions, such as mobile clinics and community health workers, to provide essential maternal health services and education to women in their own communities.

5. Address financial barriers: Develop and implement strategies to reduce financial barriers to maternal healthcare, such as providing subsidies or health insurance coverage for maternal health services, to ensure that cost does not hinder access to care.

To simulate the impact of these recommendations on improving access to maternal health, a methodology could include the following steps:

1. Data collection: Gather data on the current state of maternal health access in Burundi, including information on healthcare infrastructure, availability of skilled healthcare providers, transportation services, and financial barriers.

2. Baseline assessment: Analyze the existing data to establish a baseline for maternal health access indicators, such as the percentage of women receiving antenatal care, skilled birth attendance, and access to emergency obstetric care.

3. Intervention design: Develop a simulation model that incorporates the potential interventions mentioned above. This model should consider factors such as population distribution, healthcare facility locations, transportation networks, and financial resources.

4. Data input: Input relevant data into the simulation model, including information on the implementation of interventions, such as the number of healthcare facilities upgraded, the number of skilled healthcare providers trained and deployed, and improvements in transportation services.

5. Simulation and analysis: Run the simulation model to assess the impact of the interventions on maternal health access indicators. Analyze the results to determine the potential improvements in access to maternal health services, such as increased utilization of antenatal care, skilled birth attendance, and access to emergency obstetric care.

6. Sensitivity analysis: Conduct sensitivity analysis to assess the robustness of the simulation results by varying key parameters, such as the coverage of interventions, population growth rates, and financial resources.

7. Policy recommendations: Based on the simulation results, provide policy recommendations on the most effective interventions to improve access to maternal health in Burundi. Consider the feasibility, cost-effectiveness, and sustainability of the recommended interventions.

It is important to note that the methodology described above is a general framework and may require further customization based on the specific context and available data in Burundi.

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