Prevalence of institutional delivery and its correlates amongst women of reproductive age in Mozambique: A cross-sectional analysis

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Study Justification:
– The study aims to investigate the prevalence of professional healthcare delivery services in Mozambique and identify their sociodemographic correlates.
– This information is crucial for understanding the current state of maternal and child healthcare in the country and for developing strategies to reduce maternal and child mortality rates.
– The study aligns with the Sustainable Development Goals (SDG 3.1) and the efforts to improve healthcare services in Mozambique.
Study Highlights:
– The prevalence of health facility delivery services in Mozambique was found to be 70.7%, while the prevalence of C-section delivery was 5.6%.
– There was a difference in the use of professional birthing services between urban and rural areas.
– Factors such as educational status, wealth quintiles, ethnicity, and antenatal care visits were found to be associated with the use of facility delivery services.
Study Recommendations:
– Increase access to professional healthcare delivery services, especially in rural areas, to ensure that more women have access to safe and effective childbirth services.
– Improve educational opportunities and promote awareness about the benefits of facility delivery services to encourage more women to utilize these services.
– Strengthen antenatal care programs and promote regular ANC visits, as they were found to be significant predictors of facility delivery services.
Key Role Players:
– Ministry of Health (MISAU)
– National Statistical Institute (Instituto Nacional de Estatística)
– United States Agency for International Development (USAID)
– Inner City Fund (ICF) International
Cost Items for Planning Recommendations:
– Infrastructure development for health facilities and transportation systems to improve access to healthcare services.
– Training and capacity building for healthcare providers to ensure quality care during childbirth.
– Educational campaigns and awareness programs to promote the benefits of facility delivery services.
– Strengthening antenatal care programs and providing resources for regular ANC visits.
– Data collection and analysis for monitoring and evaluation of the impact of interventions.
Please note that the provided cost items are general suggestions and may vary based on specific needs and priorities identified by policymakers.

The strength of evidence for this abstract is 7 out of 10.
The evidence in the abstract is moderately strong, but there are some areas for improvement. The study used cross-sectional data from a large sample size, which enhances the reliability of the findings. The study also employed multivariate regression analysis to identify sociodemographic correlates. However, the study could be strengthened by providing more details about the data collection methods, such as the training of interviewers and the quality control measures implemented. Additionally, the abstract could benefit from including information about the limitations of the study, such as potential biases or confounding factors. To improve the evidence, future studies could consider using longitudinal data to establish causal relationships and conducting qualitative research to gain a deeper understanding of the factors influencing the use of childbirth services in Mozambique.

Background: The healthcare system in Mozambique is striving to reduce the high maternal and child mortality rates and stay on par with the Sustainable Development Goals (SDG 3.1). A key strategy to curb maternal and child mortality is to promote the use of professional childbirth services proven to be highly effective in averting maternal deaths. Currently, little is known about the use of childbirth services in Mozambique. The present study investigated the prevalence of professional healthcare delivery services and identified their sociodemographic correlates. Methods: This study used cross-sectional data on 7080 women aged 15-49 years who reported having a child during the past 5 years. The data were collected from the 2011Mozambique Demographic and Health Survey. The outcome variables were the choice of childbirth services that included 1) place of delivery (respondent’s home versus health facility), and mode of delivery (caesarean section versus vaginal birth). Data were analyzed using descriptive and multivariate regression methods. Results: The prevalence of health facility and C-section delivery was 70.7 and 5.6%, respectively. There was a difference in the use of professional birthing services between urban and rural areas. Having better educational status and living in households of higher wealth quintiles showed a positive association with the use of facility delivery services among both urban and rural residents. Regarding ethnicity, women of Portugais [2.688,1.540,4.692], Cindau [1.876,1.423,2.474] and Xichangana [1.557,1.215,1.996] had relatively higher odds of using facility delivery services than others. Antenatal care (ANC) visits were a significant predictor of facility delivery services both in urban [OR = 1.655, 95%CI = 1.235,2.218] and rural [OR = 1.265, 95%CI = 1.108,1.445] areas. Among rural women, ANC visit was a significant predictor of C-section delivery [1.570,1.042,2.365]. Conclusion: More than a quarter of the women in Mozambique were not using health facility delivery services, with the prevalence being noticeably lower in the rural areas.

Data for this study were collected from the sixth round of Mozambique Demographic and Health Survey. The survey was conducted by the National Statistical Institute (Instituto Nacional de Estatística) and the Ministry of Health (MISAU). The work was finally supported by United States Agency for International Development of the United America (USAID) with Inner City Fund (ICF) International providing technical assistance. Sample population included eligible men (15–54 years) and women (15–49 years) residing in households in urban and rural areas, excluding institutions such as hospitals, hotels, dorms. Data collection was done through direct interviews using a tablet-type computer (Computer-Assisted Personal Interview) system and this process lasted from June 2011 to November 2011. Sampling was done using multistage cluster technique which involves stratifying the provinces into primary sampling units (PSUs), and then selecting of households each PSUs. Of the 13,964 households initially selected, a total of 13,718 women were finally interviewed, resulting in a 99% response rate. These details are available from the final report of Mozambique 2011 DHS and available here: https://dhsprogram.com/publications/publication-FR266-DHS-Final-Reports.cfm. The outcome variables of interest were: 1) place of delivery: home versus health facility, 2) use of c-section: yes versus no. The selection of explanatory variables was guided by Andersen’s Behavioural Model of Health Service utilization which postulates that healthcare utilization is a function of three major factors: 1) predisposing factors, 2) enabling factors and 3) need factors [22]. For this study, the data were secondary and hence the selection of the explanatory variables in line with the behavioral model was not completely possible. Based on the availability in the dataset, the following are included in the analysis: Age (15–19, 20–24, 25–29, 30–34, 35–39, 40–44, 45–49); Residency (Urban, Rural); Education (No Education, Primary, Secondary, Higher); Husband’s education (No Education, Primary, Secondary, Higher); Occupation (Not Working, Professional/Technical/Managerial, Agricultural – Self Employed); Wealth quintile (Poorest, Poorer, Middle, Richer, Richest); Electronic Media Access (No, Yes); Heard of Family Planning (FP) on the internet (No, Yes); Religion (Islam, Other); Ethnicity (Emakhuwa, Portugais, Xichangana, Cisena, Elomwe, Cindau, Xitswa, Other); Parity (1–5, > 5); Sex of Household Head (Male, Female); Last Child Wanted (Wanted Then, Wanted No More); Place of Delivery (Home, Health facility). Data were analyzed with Stata version 14. Dataset was cleaned by applying the inclusion criteria: experience of at least 1 childbirth in the preceding 5 years. As the surveys used cluster sampling techniques, all analyses were adjusted for this by using the svy command [23]. This command uses the information on sampling weight, strata, and primary sampling unit provided with the datasets. Sample characteristics were described as frequencies and percentages. Prevalence of using facility delivery and C-section (for total, urban and rural sample) was presented as bar charts. The predictors of facility delivery and C-section were measured using multivariate analysis. As both of the variables were dichotomous, we used binary logistic regression models and the results expressed using odds ratios (OR) with 95% confidence intervals (CIs). Each of the outcome variables was analyzed separately for the pooled, urban and rural participants. Model fit statistics were run after the regression analyses using the variance inflation factor (VIF) command. No multi-collinearity was detected as VIF values were below 10 for all the models. All tests were two-tailed and were considered significant at alpha value of 5%.

Based on the provided description, here are some potential innovations that could be recommended to improve access to maternal health in Mozambique:

1. Mobile Health (mHealth) Solutions: Implementing mobile health technologies, such as text messaging and mobile apps, to provide pregnant women with important health information, appointment reminders, and access to teleconsultations with healthcare providers.

2. Community Health Workers (CHWs): Expanding the role of community health workers to provide maternal health services, including antenatal care, education, and support, especially in rural areas where access to healthcare facilities is limited.

3. Telemedicine: Establishing telemedicine networks to connect remote healthcare facilities with specialized healthcare providers, enabling pregnant women in underserved areas to receive expert advice and consultations without having to travel long distances.

4. Transportation Support: Developing transportation systems or programs to provide pregnant women with safe and reliable transportation to healthcare facilities for antenatal care visits and delivery, particularly in rural areas with limited transportation options.

5. Maternal Waiting Homes: Establishing maternal waiting homes near healthcare facilities to accommodate pregnant women who live far away, allowing them to stay closer to the facility as they approach their due dates, reducing the risk of delays in accessing care during labor and delivery.

6. Financial Incentives: Implementing financial incentives, such as conditional cash transfers or vouchers, to encourage pregnant women to seek and utilize maternal health services, particularly for those from low-income backgrounds who may face financial barriers to accessing care.

7. Quality Improvement Initiatives: Implementing quality improvement initiatives in healthcare facilities to ensure that maternal health services are provided in a safe, respectful, and culturally sensitive manner, thereby increasing women’s trust and confidence in the healthcare system.

8. Health Education and Awareness Campaigns: Conducting targeted health education and awareness campaigns to increase knowledge and awareness about the importance of skilled birth attendance, antenatal care, and the availability of maternal health services, particularly in rural and marginalized communities.

It is important to note that the specific implementation and effectiveness of these innovations would require further research, planning, and collaboration with relevant stakeholders in Mozambique’s healthcare system.
AI Innovations Description
Based on the description provided, the recommendation to improve access to maternal health in Mozambique would be to focus on the following strategies:

1. Increase awareness and education: Implement targeted campaigns to raise awareness about the importance of professional childbirth services and the benefits of delivering in a health facility. This can be done through community outreach programs, radio broadcasts, and educational materials.

2. Improve access to healthcare facilities: Invest in expanding and upgrading healthcare facilities, particularly in rural areas where access is limited. This includes ensuring that facilities have adequate staffing, equipment, and supplies to provide quality maternal health services.

3. Enhance transportation infrastructure: Improve transportation infrastructure, especially in rural areas, to facilitate access to healthcare facilities. This can involve building or repairing roads, providing transportation subsidies, or implementing mobile health clinics to reach remote communities.

4. Strengthen antenatal care services: Emphasize the importance of regular antenatal care visits and provide incentives for women to attend these visits. Antenatal care visits can serve as an entry point for promoting facility-based deliveries and identifying high-risk pregnancies.

5. Address socioeconomic barriers: Address socioeconomic barriers that prevent women from accessing maternal health services, such as poverty, low education levels, and cultural beliefs. This can be done through targeted interventions that address these specific barriers, such as providing financial assistance for transportation or offering culturally sensitive healthcare services.

6. Collaborate with community leaders and traditional birth attendants: Engage with community leaders and traditional birth attendants to promote the use of professional childbirth services. This can involve training traditional birth attendants on safe delivery practices and encouraging them to refer women to healthcare facilities for deliveries.

7. Monitor and evaluate progress: Establish a robust monitoring and evaluation system to track progress in improving access to maternal health services. This will help identify gaps and areas for improvement, allowing for targeted interventions and adjustments to strategies.

By implementing these recommendations, Mozambique can work towards reducing maternal and child mortality rates and improving access to quality maternal health services.
AI Innovations Methodology
Based on the provided description, here are some potential recommendations to improve access to maternal health in Mozambique:

1. Strengthening healthcare infrastructure: Invest in building and upgrading healthcare facilities, particularly in rural areas where access is limited. This includes ensuring the availability of essential equipment, supplies, and trained healthcare professionals.

2. Community-based interventions: Implement community outreach programs to raise awareness about the importance of maternal health and promote the use of professional childbirth services. This can involve training community health workers to provide basic antenatal care, educate women on safe delivery practices, and facilitate referrals to healthcare facilities.

3. Financial incentives: Introduce financial incentives, such as conditional cash transfers or maternity vouchers, to encourage women to seek professional healthcare services during pregnancy and childbirth. This can help alleviate the financial barriers that often prevent women from accessing maternal health services.

4. Mobile health (mHealth) solutions: Utilize mobile technology to improve access to maternal health information and services. This can include sending SMS reminders for antenatal care appointments, providing access to teleconsultations with healthcare providers, and delivering educational content on maternal and child health.

To simulate the impact of these recommendations on improving access to maternal health, a methodology could be developed as follows:

1. Define the indicators: Identify key indicators that reflect access to maternal health, such as the percentage of women delivering in healthcare facilities, the percentage of women receiving antenatal care, and the percentage of women undergoing cesarean sections.

2. Collect baseline data: Gather data on the current status of these indicators in Mozambique. This can be obtained from existing surveys, such as the Mozambique Demographic and Health Survey, or through targeted data collection efforts.

3. Develop a simulation model: Create a mathematical or statistical model that incorporates the various recommendations and their potential impact on the selected indicators. This model should consider factors such as population demographics, healthcare infrastructure, and socioeconomic conditions.

4. Input intervention scenarios: Define different scenarios that represent the implementation of the recommendations. This can involve varying the scale and intensity of each intervention, as well as considering their combined effects.

5. Run simulations: Apply the simulation model to each intervention scenario and simulate the impact on the selected indicators. This can be done by adjusting the relevant parameters in the model and observing the resulting changes in the indicators.

6. Analyze results: Evaluate the outcomes of the simulations to determine the effectiveness of each intervention scenario in improving access to maternal health. Compare the results across different scenarios to identify the most promising strategies.

7. Refine and iterate: Based on the findings, refine the simulation model and intervention scenarios as needed. Repeat the simulations to further explore the potential impact of different combinations of interventions and optimize the recommendations.

By following this methodology, policymakers and stakeholders can gain insights into the potential impact of different innovations and interventions on improving access to maternal health in Mozambique. This can inform decision-making and resource allocation to maximize the effectiveness of efforts in this area.

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