Inequities in utilization of maternal health interventions in Namibia: Implications for progress towards MDG 5 targets

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Study Justification:
– Inequities in the utilization of maternal health services hinder progress towards the MDG 5 target of reducing maternal mortality.
– Despite increased investments in the health sector, Namibia’s maternal mortality ratio has increased.
– Monitoring equity in maternal health services is important to allocate resources effectively and achieve MDG 5 targets.
Study Highlights:
– Data from the Namibia Demographic and Health Survey 2006-07 was analyzed to measure socio-economic inequalities in maternal health utilization.
– Regions with higher human development indices have higher rates of delivery by skilled health providers.
– Women with post-secondary education have a seven times higher rate of caesarean section compared to women with no education.
– Urban areas have a 30% higher rate of delivery by skilled providers compared to rural areas.
– The rich use public health facilities 30% more than the poor for child delivery.
Study Recommendations:
– Addressing inequities in access to maternal health services is crucial to reduce maternal mortality.
– Inequities favoring the educated, urban areas, regions with high human development indices, and the wealthy need to be addressed.
– Tackling social determinants of health through multi-sectoral approaches is necessary.
– Recommendations from the Commission on Social Determinants of Health should be implemented.
Key Role Players:
– Ministry of Health and Social Services
– Ministry of Education
– Ministry of Urban and Rural Development
– Regional Health Directorates
– Non-governmental organizations working in maternal health
Cost Items for Planning Recommendations:
– Training programs for healthcare providers
– Infrastructure development in rural areas
– Outreach programs to reach underserved populations
– Awareness campaigns and education materials
– Monitoring and evaluation systems for equity in maternal health services

The strength of evidence for this abstract is 8 out of 10.
The evidence in the abstract is strong because it is based on data from the Namibia Demographic and Health Survey 2006-07. The study uses various measures such as rate-ratios, concentration curves, and concentration indices to analyze the inequities in the utilization of maternal health services. The findings show clear disparities in access to maternal health services based on socio-economic factors. To improve the evidence, the study could provide more details on the methodology used and the specific results of the analysis.

Background. Inequities in the utilization of maternal health services impede progress towards the MDG 5 target of reducing the maternal mortality ratio by three quarters, between 1990 and 2015. In Namibia, despite increasing investments in the health sector, the maternal mortality ratio has increased from 271 per 100,000 live births in the period 1991-2000 to 449 per 100,000 live births in 1998-2007. Monitoring equity in the use of maternal health services is important to target scarce resources to those with more need and expedite the progress towards the MDG 5 target. The objective of this study is to measure socio-economic inequalities in access to maternal health services and propose recommendations relevant for policy and planning. Methods. Data from the Namibia Demographic and Health Survey 2006-07 are analyzed for inequities in the utilization of maternal health. In measuring the inequities, rate-ratios, concentration curves and concentration indices are used. Results. Regions with relatively high human development index have the highest rates of delivery by skilled health service providers. The rate of caesarean section in women with post secondary education is about seven times that of women with no education. Women in urban areas are delivered by skilled providers 30% more than their rural counterparts. The rich use the public health facilities 30% more than the poor for child delivery. Conclusion. Most of the indicators such as delivery by trained health providers, delivery by caesarean section and postnatal care show inequities favoring the most educated, urban areas, regions with high human development indices and the wealthy. In the presence of inequities, it is difficult to achieve a significant reduction in the maternal mortality ratio needed to realize the MDG 5 targets so long as a large segment of society has inadequate access to essential maternal health services and other basic social services. Addressing inequities in access to maternal health services should not only be seen as a health systems issue. The social determinants of health have to be tackled through multi-sectoral approaches in line with the principles of Primary Health Care and the recommendations of the Commission on Social Determinants of Health. © 2010 Zere et al; licensee BioMed Central Ltd.

Equity may be defined from three perspectives: equity in health; equity in health provision; and equity in health financing. The focus of this study is equity in health provision. Following Whitehead’s seminal definition [16], equity in health is defined as the absence of systematic inequalities in health (or in the major social determinants of health) among people that have different positions in a social hierarchy. Maldistribution of health care is one of the social determinants of health. Equity in health care provision may therefore be defined as the absence of socio-economic inequalities in access to available maternal health services [4,17,18]. Three steps are followed in measuring equity in access to maternal health services: (i) identification of the intervention whose distribution is to be measured (e.g. antenatal care); (ii) classification of the population (women) by an indicator of socio-economic status; and (iii) measuring/quantifying the degree of inequality. The social stratifiers used in the current study are household wealth as derived from asset indices; mother’s education; place of residence (urban/rural); and geographical region as there is a spatial dimension to the distribution of poverty and human development in the country [12]. The study uses information from the Namibia demographic and health survey 2006-2007. The variables measured include antenatal and postnatal checkup, delivery and caesarean section. The health concentration curve and index as well as rate-ratios are used in measuring inequities. The concentration curve plots the cumulative proportion of the pregnant and parturient women ranked by their household wealth against the cumulative proportion of the health care variable (e.g. antenatal care). In other words, concentration curves capture the use of health interventions, cumulatively for each wealth quintile [19]. To demonstrate the use of the concentration curve, the case of use of modern contraception by women is presented in Figure ​Figure11 using hypothetical data. Concentration curve: use of modern contraception. In the absence of wealth-related inequality in the use of modern contraception, the concentration curve overlaps with the diagonal line (line of equality). This implies that there are no inequities in the use of modern contraception. A concentration curve that lies below the diagonal line signifies the presence of inequities favouring the rich, i.e. there is a disproportionately higher rate of contraceptive use among the wealthiest groups than the poorest. When the concentration curve lies above the line of equality, there is inequity favouring the poor, i.e. more women in the poorest group use modern contraception compared to the wealthiest. The degree of inequity becomes more when the concentration curve is further from the line of equality. Concentration curves are a good graphical illustration to identify whether socioeconomic inequality in some health sector variable exists and whether it is more pronounced at one point in time than another or in one country than another. However, they don’t quantify the magnitude of inequality for convenient comparison across many time periods, countries, regions, or whatever may be chosen for comparison. The concentration index that is computed from the concentration curve quantifies the degree of socio-economic inequality in a health variable and assumes values between -1 and +1. Its value is negative when the concentration curve is above the diagonal and positive when the curve is below the diagonal. In the absence of inequities (the concentration curve coinciding with the diagonal), the value of the concentration index is zero. From grouped data, the concentration index (C) is computed in a spreadsheet programme using the formula [20]: Where p is the cumulative percent of the sample ranked by economic status (in this case the cumulative percentage of pregnant/parturient mothers ranked by wealth); L(p) is the corresponding concentration curve ordinate (e.g. cumulative percentage of caesarean section); and T is the number of socioeconomic groups (in this case T = 5, as there are five wealth quintiles) To test for the statistical significance of the concentration index, standard errors can be computed using the formula given in Kakwani et al [21]. Data is analyzed using STATA 10 statistical software.

Title: Inequities in utilization of maternal health interventions in Namibia: Implications for progress towards MDG 5 targets
Description: This study examines the disparities in access to maternal health services in Namibia and its impact on achieving the Millennium Development Goal (MDG) 5 target of reducing maternal mortality. The study analyzes data from the Namibia Demographic and Health Survey 2006-07 to measure socio-economic inequalities in the utilization of maternal health services. The findings reveal inequities favoring women with higher education, those living in urban areas, regions with higher human development indices, and the wealthy. These inequities hinder the reduction of maternal mortality and the achievement of MDG 5 targets. The study emphasizes the need to address these inequities through targeted interventions, strengthening health systems, multi-sectoral collaboration, financial support, community engagement, and data-driven decision making. By implementing these recommendations, access to maternal health services can be improved, contributing to the achievement of MDG 5 targets.
AI Innovations Description
Based on the information provided, the study highlights inequities in the utilization of maternal health services in Namibia, which hinder progress towards achieving the MDG 5 target of reducing maternal mortality. The study suggests that addressing these inequities is crucial for improving access to maternal health services and achieving the desired outcomes.

To develop an innovation to improve access to maternal health in Namibia, the following recommendations can be considered:

1. Targeted interventions: Develop targeted interventions that focus on reaching vulnerable and marginalized populations, such as women with low education, those living in rural areas, and those from low-income households. These interventions should aim to increase awareness, improve access, and provide quality maternal health services to these populations.

2. Strengthen health systems: Enhance the capacity and quality of health systems, particularly in regions with lower human development indices. This can be achieved by investing in infrastructure, training healthcare providers, and ensuring the availability of essential maternal health supplies and equipment.

3. Multi-sectoral collaboration: Adopt a multi-sectoral approach to address the social determinants of health that contribute to inequities in access to maternal health services. Collaborate with other sectors such as education, transportation, and social welfare to address underlying factors such as education levels, transportation barriers, and poverty that affect access to maternal health services.

4. Financial support: Provide financial support mechanisms, such as subsidies or conditional cash transfers, to reduce financial barriers and improve affordability of maternal health services for disadvantaged populations.

5. Community engagement: Engage communities and local leaders in promoting maternal health and addressing cultural and social barriers that may hinder access to services. This can be done through community awareness campaigns, involving community health workers, and fostering community participation in decision-making processes related to maternal health.

6. Data-driven decision making: Strengthen data collection and monitoring systems to track progress and identify areas of inequity. Regularly analyze and disseminate data on maternal health indicators, including disaggregated data by socio-economic status, education, and geographic location, to inform evidence-based decision making and resource allocation.

By implementing these recommendations, it is possible to develop innovative strategies that can improve access to maternal health services in Namibia and contribute to the achievement of MDG 5 targets.
AI Innovations Methodology
To simulate the impact of the main recommendations on improving access to maternal health in Namibia, the following methodology can be considered:

1. Targeted interventions: Develop a simulation model that incorporates targeted interventions aimed at reaching vulnerable and marginalized populations. This model can simulate the impact of interventions such as awareness campaigns, mobile health clinics, and community health workers on increasing access to maternal health services for these populations. The model can use data on population demographics, geographic distribution, and socio-economic status to estimate the potential reach and effectiveness of these interventions.

2. Strengthen health systems: Develop a simulation model that assesses the impact of strengthening health systems on improving access to maternal health services. This model can incorporate data on health infrastructure, healthcare provider capacity, and availability of essential supplies and equipment. By simulating different scenarios, such as increasing the number of healthcare facilities, training more healthcare providers, and ensuring the availability of necessary supplies, the model can estimate the potential impact on improving access to maternal health services.

3. Multi-sectoral collaboration: Develop a simulation model that explores the impact of multi-sectoral collaboration on addressing social determinants of health and improving access to maternal health services. This model can incorporate data on education levels, transportation infrastructure, and poverty rates to simulate the potential impact of collaboration with other sectors. By simulating different scenarios, such as implementing transportation subsidies, improving educational opportunities, and implementing poverty reduction programs, the model can estimate the potential impact on improving access to maternal health services.

4. Financial support: Develop a simulation model that assesses the impact of financial support mechanisms on improving access to maternal health services. This model can incorporate data on household income levels, healthcare costs, and financial support programs. By simulating different scenarios, such as providing subsidies or conditional cash transfers, the model can estimate the potential impact on reducing financial barriers and improving affordability of maternal health services.

5. Community engagement: Develop a simulation model that explores the impact of community engagement on improving access to maternal health services. This model can incorporate data on community demographics, cultural and social barriers, and community participation. By simulating different scenarios, such as community awareness campaigns, involvement of community health workers, and community participation in decision-making processes, the model can estimate the potential impact on improving access to maternal health services.

6. Data-driven decision making: Develop a simulation model that assesses the impact of data-driven decision making on improving access to maternal health services. This model can incorporate data on maternal health indicators, socio-economic status, and geographic location. By simulating different scenarios, such as regular data collection and analysis, dissemination of data to inform decision making, and resource allocation based on data, the model can estimate the potential impact on improving access to maternal health services.

By using these simulation models, policymakers and stakeholders can assess the potential impact of implementing the main recommendations on improving access to maternal health services in Namibia. These models can provide valuable insights and inform evidence-based decision making for the development of innovative strategies to address inequities and achieve the desired outcomes.

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