Local level inequalities in the use of hospital-based maternal delivery in rural South Africa

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Study Justification:
– The study aims to address global concerns regarding geographical and socio-economic inequalities in access to and use of maternal delivery services.
– The study focuses on understanding how local-level socio-economic inequalities are related to the uptake of maternal health care in rural South Africa.
– By examining the relative distribution of socio-economic status (SES) among those needing maternal delivery services and those using them, the study provides insights into the barriers faced by the poorest women in accessing these services.
Highlights:
– The study found that women in the lowest SES quintile were significantly under-represented in the hospital user population, compared to the population in need of delivery services.
– Exit interviews revealed affordability constraints associated with hospital delivery as a potential barrier to access.
– The findings emphasize the need for alternative strategies to make maternal delivery services accessible to the poorest women within overall poor communities, in order to decrease socioeconomic inequalities in utilization of these services.
Recommendations:
– Develop and implement alternative strategies to improve access to hospital-based maternal delivery services for the poorest women in rural South Africa.
– Address affordability constraints associated with hospital delivery, such as exploring options for financial support or subsidies.
– Consider community-based approaches to maternal health care that can reach women who face geographical and socio-economic barriers to accessing hospital services.
Key Role Players:
– Local health authorities and policymakers
– Community health workers
– Non-governmental organizations (NGOs) working in maternal health
– Health facility administrators and staff
– Researchers and academics in the field of maternal health
Cost Items for Planning Recommendations:
– Funding for financial support or subsidies to make hospital-based maternal delivery services more affordable for the poorest women.
– Resources for training and supporting community health workers to provide maternal health care in rural areas.
– Investment in infrastructure and equipment to improve the capacity of health facilities to provide comprehensive emergency obstetric care.
– Research funding for further studies and evaluations of alternative strategies to improve access to maternal delivery services in rural South Africa.

The strength of evidence for this abstract is 8 out of 10.
The evidence in the abstract is strong because it is based on a study that used both population-based surveillance and facility-based clinical record data. The study compared the socio-economic status (SES) distributions of households with a birth in the previous year to the SES distributions of women who had delivered in hospitals in two rural sub-districts of South Africa. The findings show significant under-representation of women in the lowest SES quintile in the hospital user population, relative to the need for delivery services. The study also includes exit interviews that provide additional evidence on potential barriers to access. To improve the evidence, the abstract could provide more details on the sample size and methodology used in the study.

Background: There is global concern with geographical and socio-economic inequalities in access to and use of maternal delivery services. Little is known, however, on how local-level socio-economic inequalities are related to the uptake of needed maternal health care. We conducted a study of relative socio-economic inequalities in use of hospital-based maternal delivery services within two rural sub-districts of South Africa. Methods: We used both population-based surveillance and facility-based clinical record data to examine differences in the relative distribution of socio-economic status (SES), using a household assets index to measure wealth, among those needing maternal delivery services and those using them in the Bushbuckridge sub-district, Mpumalanga, and Hlabisa sub-district, Kwa-Zulu Natal. We compared the SES distributions in households with a birth in the previous year with the household SES distributions of representative samples of women who had delivered in hospitals in these two sub-districts. Results: In both sub-districts, women in the lowest SES quintile were significantly under-represented in the hospital user population, relative to need for delivery services (8% in user population vs 21% in population in need; p < 0.001 in each sub-district). Exit interviews provided additional evidence on potential barriers to access, in particular the affordability constraints associated with hospital delivery. Conclusions: The findings highlight the need for alternative strategies to make maternal delivery services accessible to the poorest women within overall poor communities and, in doing so, decrease socioeconomic inequalities in utilisation of maternal delivery services.

We conducted an analysis of inequality in utilization of hospital-based maternal delivery services in the Bushbuckridge and Hlabisa health sub-districts of Mpumalanga and Kwa-Zulu Natal Provinces, respectively. These two sub-districts were chosen because they both have HDSS providing population-level data on SES, births, and location of delivery. In the analysis, the SES of households with a birth in a woman 18 years or older in the previous year, obtained from HDSS data, was compared with the household SES, obtained from a representative sample of women, 18 years or older, who had delivered in hospitals in the two sub-districts. In 2009, 90.4% and 79.4% of maternal deliveries in Bushbuckridge and Hlabisa, respectively, took place in the formal health system (i.e. with skilled attendance). Of these, the vast majority (95% in Bushbuckridge and 92% in Hlabisa) occurred in hospital facilities [[9]]; hence the decision to conduct interviews at hospitals. Pregnancies that terminated in abortions or where the outcome was unknown were not included in the analysis. The Agincourt HDSS (AHDSS) consists of an annual census of approximately 107500 people (as of May 2013) in an area of Bushbuckridge [[10]]. The following data were extracted from the AHDSS for the year 2007 from the 10,511 households with complete socio-economic data: number of pregnancies and their outcomes, maternal age and education, household characteristics, namely type of material used to construct the house walls and roof, access to water, toilet type, fuel used to cook, and ownership of assets such as a TV, fridge, stove, radio, landline telephone, vehicle, bicycle, and livestock. The 1,527 households with a woman over 18 years of age who had delivered in the preceding year were defined as the households needing maternal health services. The Africa Centre Demographic Information System (ACDIS) collects similar data on approximately 85,000 people in an area of Hlabisa [[11]]. Data from this database were extracted for 2009 on 8,448 households with complete socio-economic data and the subset of 1,491 households with a woman over 18 years of age who had delivered in the preceding year. Additional data on ownership of the following assets were available from this census: bed-nets, bed, block-maker, car battery, hot plate, kettle, gas cooker, kombi (vehicle), sink, motorcycle, primus stove, sofa, sewing machine, table and chairs, DVD player and wheelbarrow. Household characteristics and assets from both datasets were used to estimate an SES measure for each household in the two populations. We use Multiple Correspondence Analysis (MCA) to create an SES index. MCA, an extension of Correspondence Analysis, is used to measure the relationships between several categorical variables. MCA aims to decrease high dimensional data space through finding dimensions that capture the largest amount of information common to all the variables [[12]]. The SES index was computed separately for each sub-district using the HDSS population data on access to basic services (water, electricity, sanitation), type of house, and the household assets listed above. We only use the index formed by the first dimension identified in MCA, as this index already captures a very large proportion of the common information between the socioeconomic variables (79% and 74% in Bushbuckridge and Hlabisa, respectively). Once the continuous SES index was constructed for each sub-district, households were ranked by SES and grouped into quintiles ranging from lowest to highest SES. We use this relative measure of socioeconomic status, SES quintiles, to allow comparison of SES gradients across the two sub-districts included in our analyses. The absolute values of the continuous indices cannot be directly compared because their meanings differ in the communities. We conducted patient exit interview surveys in women over 18 years of age delivering in one of the three hospitals in the two sub-districts (two in Bushbuckridge and one in Hlabisa) during the study period. Based on a Chi-squared Goodness-of-Fit test, we estimated that a sample of 300 women per sub-district would be required to detect SES differences with 80% power. In Bushbuckridge the sample was distributed proportional to the number of deliveries in each of the two hospitals. Respondents were recruited systematically at the time of discharge from the post-natal ward until the required sample size was achieved in each facility. Trained interviewers carried out the exit interviews in the local language of the respondent, collecting socio-economic data, as well as additional access variables related to the geographic accessibility, financial affordability, and cultural acceptability of hospital delivery services. During the course of the survey, a structured quality inventory on health systems inputs, processes and outputs was also completed in each hospital to measure the hospital capacity for comprehensive emergency obstetric care. Data were collected over a period of 15 months, from June 2008 through September 2009. Ethical clearance for this study was obtained from the Universities of Cape Town, Witwatersrand and KwaZulu Natal, and provincial and local Departments of Health authorized the study. Written, informed consent was obtained from each participant in the exit interviews. The SES distribution of the population in each sub-district, categorised into quintiles, was used to compare the SES distributions of the women needing and using maternal delivery services. We determined first the proportion of women in each quintile in need of maternal delivery services and then the proportion of women in each quintile who actually used these services. In this way these SES distributions are directly comparable. In order to test for trends and associations between those needing maternal delivery services and those who used these services, the Partitions of Pearson’s Chi-squared test for ordered columns, a contingency table analysis of ordered categorical variables (such as quintiles), was conducted [[13]].

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

1. Mobile clinics: Implementing mobile clinics that travel to rural areas can provide maternal health services to women who may not have easy access to hospitals or healthcare facilities.

2. Telemedicine: Using telecommunication technology, such as video conferencing, to connect healthcare professionals with pregnant women in remote areas can provide access to prenatal care and consultations without the need for travel.

3. Community health workers: Training and deploying community health workers who can provide basic maternal health services, education, and support in rural areas can help bridge the gap in access to healthcare.

4. Financial assistance programs: Implementing programs that provide financial assistance or subsidies for maternal health services can help alleviate the affordability constraints associated with hospital delivery.

5. Transportation services: Establishing transportation services, such as ambulances or transportation vouchers, specifically for pregnant women in rural areas can help overcome geographical barriers and ensure timely access to maternal health services.

6. Health education and awareness campaigns: Conducting targeted health education and awareness campaigns in rural communities can help increase knowledge about the importance of maternal health and encourage women to seek appropriate care.

7. Improving infrastructure: Investing in the improvement of healthcare infrastructure, such as building or upgrading hospitals and clinics in rural areas, can help increase access to maternal health services.

8. Partnerships with local organizations: Collaborating with local organizations, such as community-based groups or non-governmental organizations, can help leverage existing resources and networks to improve access to maternal health services.

9. Data-driven decision making: Using data and research findings, like the analysis conducted in the provided description, to inform policy and program development can help identify specific areas of need and guide targeted interventions to improve access to maternal health.
AI Innovations Description
The recommendation to improve access to maternal health based on the study is to implement alternative strategies that make maternal delivery services accessible to the poorest women within overall poor communities. This would help decrease socioeconomic inequalities in the utilization of maternal delivery services. Additionally, addressing affordability constraints associated with hospital delivery is crucial in removing barriers to access. By developing innovative solutions that focus on improving access for the most vulnerable populations, maternal health outcomes can be improved and inequalities reduced.
AI Innovations Methodology
To improve access to maternal health, here are some potential recommendations:

1. Mobile health clinics: Implementing mobile health clinics that travel to rural areas can provide essential maternal health services to women who may not have easy access to healthcare facilities. These clinics can offer prenatal care, vaccinations, and delivery services.

2. Telemedicine: Utilizing telemedicine technology can connect pregnant women in remote areas with healthcare professionals who can provide virtual consultations and monitor their health remotely. This can help address the lack of healthcare providers in rural areas.

3. Community health workers: Training and deploying community health workers who can provide basic maternal health services, education, and referrals in rural communities can help bridge the gap in access to healthcare.

4. Financial incentives: Providing financial incentives, such as cash transfers or subsidies, to pregnant women in low-income communities can help alleviate the financial burden associated with accessing maternal health services.

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

1. Define the target population: Identify the specific population group (e.g., pregnant women in rural areas) that will be the focus of the simulation.

2. Collect baseline data: Gather data on the current access to maternal health services in the target population, including factors such as distance to healthcare facilities, availability of healthcare providers, and utilization rates.

3. Model the interventions: Develop a simulation model that incorporates the recommended interventions, taking into account factors such as the number of mobile health clinics, the coverage of telemedicine services, the number of community health workers, and the financial incentives provided.

4. Simulate the impact: Run the simulation model to estimate the potential impact of the interventions on improving access to maternal health services. This can include metrics such as the increase in the number of women receiving prenatal care, the reduction in travel distance to healthcare facilities, and the improvement in overall utilization rates.

5. Sensitivity analysis: Conduct sensitivity analysis to assess the robustness of the simulation results by varying key parameters, such as the effectiveness of the interventions or the population size.

6. Interpret and communicate the results: Analyze the simulation results and present them in a clear and concise manner, highlighting the potential benefits and limitations of the recommended interventions. This information can be used to inform decision-making and prioritize interventions for implementation.

It is important to note that the methodology described above is a general framework and may need to be adapted based on the specific context and available data.

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