Association between type of birth attendants and neonatal mortality: Evidence from a National survey

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Study Justification:
This study aimed to investigate the relationship between the type of birth attendant and neonatal mortality in Lesotho. Despite Lesotho having high childhood mortality rates, there has been limited research on this specific topic. By examining the data from the 2014 Lesotho Demographic and Health Survey, this study provides valuable insights into the impact of birth attendants on neonatal mortality. The findings of this study can inform policies and interventions aimed at reducing neonatal mortality rates in Lesotho.
Highlights:
– The study found that 5.3% of births attended by non-SBAs (Skilled Birth Attendants) resulted in neonatal mortality, compared to 2.8% of births attended by SBAs.
– Regardless of socio-demographic characteristics, the risk of neonatal mortality was significantly higher with non-SBAs compared to SBAs in Lesotho.
– The study highlights the importance of scaling up access and uptake of SBAs in Lesotho to reduce neonatal mortality rates.
Recommendations:
Based on the study findings, the following recommendations are made:
– Implement policies to scale up access to Skilled Birth Attendants at delivery, particularly for mothers who currently rely on non-SBAs.
– Ensure that the cost of accessing Skilled Birth Attendants is not a barrier for mothers, by considering policies that provide SBA services at no cost.
– Strengthen training programs for healthcare professionals, particularly doctors, nurses, and midwives, to improve their skills in providing safe and effective delivery care.
– Increase awareness among mothers about the importance of skilled birth attendance and the potential risks associated with non-SBAs.
Key Role Players:
To address the recommendations, the involvement of the following key role players is crucial:
– Lesotho Ministry of Health: Responsible for implementing policies and programs related to maternal and child health.
– Healthcare professionals: Doctors, nurses, and midwives who provide delivery care services.
– Community health workers: Involved in raising awareness and providing education on the importance of skilled birth attendance.
– Non-governmental organizations (NGOs): Organizations working in the field of maternal and child health, which can support the implementation of policies and interventions.
Cost Items:
While the actual cost of implementing the recommendations is not provided, the following cost items should be considered in planning:
– Training programs for healthcare professionals: Costs associated with organizing and conducting training sessions, including materials and facilitators.
– Infrastructure and equipment: Investments in healthcare facilities, including the necessary equipment and supplies for safe deliveries.
– Awareness campaigns: Costs related to developing and implementing campaigns to raise awareness among mothers about the importance of skilled birth attendance.
– Monitoring and evaluation: Resources needed to monitor the implementation of policies and interventions, as well as to evaluate their effectiveness.
Please note that the specific costs associated with each item would need to be determined through a detailed budgeting process.

Background: Although Lesotho has one of the highest childhood mortality levels in Southern Africa, there has been limited research on the link between type of birth attendant and neonatal mortality in Lesotho. This study examined the relationship between type of birth attendant and neonatal mortality while controlling for socio-demographic characteristics of mothers in Lesotho Methods: The study used data from the children’s file of 2014 Lesotho Demographic and Health Survey data. Kaplan-Meier method was used to estimate neonatal mortality rate and Cox proportional hazard regression model was used to assess the association between type of birth attendant and neonatal mortality. Results: Result shows that 5.3% of all births attended to by non-SBAs resulted into neonatal mortality compared to 2.8% of those attended to by SBA. Result further shows that regardless of socio-demographic characteristics, the risks of neonatal mortality were significantly higher with non-SBAs compared to SBA in Lesotho (HR: 2.00, CI: 1.31-3.06). Conclusion: The risk of neonatal mortality is two times higher among children delivered by Non-SBA. Scale-up in access and uptake of SBA is recommended in Lesotho. Thus, Policy on scale-up access to SBA at delivery at no costs need to be put in place.

This study used a cross-sectional data, which was drawn from the children recode file of the 2014 Lesotho Demographic and Health Survey (LDHS). The LDHS was implemented by the Lesotho Ministry of Health (MOH), while technical assistance was provided by Inner City Fund (ICF) Macro through the MEASURE DHS program, a USAID-funded project. The sample for the 2014 LDHS was selected from a list of enumeration areas using the 2006 Lesotho Population and Housing Census (PHC) which was provided by the Lesotho Bureau of Statistics (BOS). Using probability proportional to size (PPS), 400 clusters of Enumeration Areas (EA) were drawn from the census sample frame, comprising of 118 and 282 clusters from urban and rural areas respectively. The LDHS’s children recode file contains information related to the child’s pregnancy and birth, postnatal care and immunization and health of children of women born in the last five years preceding the survey. The data for the mother of each child is also included. This is because, children’s information was collected from women aged 15–49 years (i.e. information about children were included in the woman’s questionnaire). Information such as, sex of the child, month and year of birth of the child, child’s survival status, age of child and age at death of child if the child had died among others. This research made used of DHS dataset, which is publicly available; however, mailed consent was provided to the authors as per DHS protocol. Detailed information regarding procedures and questionnaires are reported elsewhere http://www.dhsprogram.com/ The outcome variable for the study is neonatal mortality which is measured as the death of a child during the first 28 days of life. The question of whether a child was dead or alive was answered by mothers in the survey. The child’s survival status and the age at death in days are combined to generate the outcome variable and make it amenable to survival analysis. Specifically, children known to have died in the first 28 days of their lives are our interest in this study and are regarded as the event, while children who are still alive after 28 days at the time of the survey are treated as censored observations. The study population is made up of infants born to mothers who had live birth within five years preceding the survey. The explanatory variable of interest in this study is birth attendant type which is dichotomized into SBA and non-SBA. SBA includes doctors, nurses and midwives, while non-SBA includes, traditional healers, relatives or friends, others, and by self. The socio-demographic variables we controlled for in the present study are variables that have been found to be associated with neonatal mortality from existing literatures 7. These control variables include maternal age (categorized as less than 25 years, 25–34 years and 35–49 years), maternal place of residence (categorized as urban and rural), maternal education (categorized as no education & primary education, and secondary & higher education), marital status (categorized as ever married and never married), and maternal wealth index (categorized as poor, middle and rich as opposed to the original measurement of poorest, poorer, middle, richer and richest from the DHS). At the univariate level of analysis, a descriptive statistic using percentage distribution are used to describe the levels of neonatal mortality in Lesotho as well as all the predictor variables as reported by mothers. We also used the Kaplan-Meier curve to estimate neonatal mortality rate. For the multivariate analysis, the Cox proportional regression model was used to examine the effect of birth attendant type on neonatal death while controlling for the mother’s socio-demographic variables. The assumption of the model is that the hazard ratio is constant over time and only covariates (such as education of mother, place of residence, and age of mother, marital status, occupation, and wealth index) that satisfy the assumption of the model are used. Stata 14 was used to analyzed the data and results are interpreted by using Hazard Ratio (HR) with level of significance set at p<0.05 and confidence intervals (CI) of 95%. The Cox model is written as: h(t) = h0 (t) × exp{b1x1 + b2x2 +…+ bpxp} Where the hazard function h(t) is the dependent variable, which is dependent on a set of p covariate (x1,x2,…, xp whose impact is measured by the size of the respective coefficients. (b1, b2,…, bp. The term h0 is the baseline hazard, which gives the value of the hazard if all the xi are equal to zero.

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

1. Mobile Health (mHealth) Solutions: Develop mobile applications or text messaging services to provide pregnant women with important health information, reminders for prenatal visits, and access to emergency services.

2. Telemedicine: Implement telemedicine programs that allow pregnant women in remote areas to consult with healthcare professionals through video calls, ensuring access to prenatal care and medical advice.

3. Community Health Workers: Train and deploy community health workers who can provide basic prenatal care, education, and referrals to pregnant women in underserved areas.

4. Transportation Solutions: Establish transportation services or partnerships to ensure that pregnant women have reliable and affordable transportation to healthcare facilities for prenatal visits and delivery.

5. Maternal Waiting Homes: Set up maternal waiting homes near healthcare facilities to accommodate pregnant women who live far away, providing them with a safe place to stay before delivery and reducing the risk of complications during transportation.

6. Financial Incentives: Introduce financial incentives, such as conditional cash transfers or vouchers, to encourage pregnant women to seek prenatal care and deliver at healthcare facilities.

7. Public Awareness Campaigns: Launch public awareness campaigns to educate communities about the importance of prenatal care, safe delivery practices, and the availability of healthcare services for pregnant women.

8. Strengthening Health Systems: Invest in improving healthcare infrastructure, staffing, and equipment to ensure that healthcare facilities are adequately equipped to provide quality maternal health services.

9. Partnerships and Collaboration: Foster partnerships between government agencies, non-profit organizations, and private sector entities to leverage resources and expertise in addressing maternal health challenges.

10. Data-driven Decision Making: Utilize data from national surveys, like the Lesotho Demographic and Health Survey, to inform evidence-based policies and interventions that target specific maternal health needs and disparities.

These innovations can help improve access to maternal health services, reduce neonatal mortality rates, and promote better health outcomes for mothers and their babies.
AI Innovations Description
Based on the study’s findings, the following recommendation can be developed into an innovation to improve access to maternal health:

1. Scale-up access and utilization of skilled birth attendants (SBAs): The study found that neonatal mortality was significantly higher among births attended by non-SBAs compared to those attended by SBAs. Therefore, it is recommended to prioritize the training and deployment of skilled birth attendants, such as doctors, nurses, and midwives, in Lesotho. This can be achieved through initiatives such as increasing the number of skilled birth attendants in rural areas, providing incentives for healthcare professionals to work in maternal health, and strengthening the capacity of existing healthcare facilities.

2. Implement policies for free access to skilled birth attendants: The study suggests that policy interventions should be put in place to ensure that access to skilled birth attendants is available at no cost to women in Lesotho. This can help remove financial barriers that prevent women from seeking skilled care during childbirth. Policies could include providing free antenatal care, delivery services, and postnatal care, as well as covering the costs of transportation to healthcare facilities.

3. Improve maternal education and awareness: The study highlights the importance of maternal education in reducing neonatal mortality. Therefore, efforts should be made to improve maternal education levels and raise awareness about the benefits of skilled birth attendance. This can be achieved through community-based education programs, targeted campaigns, and partnerships with local organizations and community leaders.

4. Strengthen healthcare infrastructure and referral systems: In order to improve access to skilled birth attendants, it is crucial to strengthen healthcare infrastructure and referral systems. This includes ensuring that healthcare facilities are adequately equipped and staffed, improving transportation networks to facilitate timely referrals, and establishing effective communication channels between healthcare providers at different levels of the healthcare system.

5. Conduct further research and monitoring: The study highlights the need for more research on the link between type of birth attendant and neonatal mortality in Lesotho. Continued monitoring and evaluation of maternal health programs and interventions can help identify areas for improvement and ensure that resources are allocated effectively.

By implementing these recommendations, Lesotho can work towards reducing neonatal mortality and improving access to maternal health services.
AI Innovations Methodology
Based on the provided information, here are some potential recommendations to improve access to maternal health:

1. Increase the number of skilled birth attendants (SBAs): This can be achieved by training and deploying more doctors, nurses, and midwives to areas with limited access to maternal healthcare.

2. Improve transportation infrastructure: Enhancing transportation networks, especially in rural areas, can help pregnant women reach healthcare facilities more easily and quickly during emergencies.

3. Strengthen community-based healthcare services: Implementing programs that provide prenatal and postnatal care, as well as education on maternal health, within local communities can improve access for women who may face barriers in accessing formal healthcare facilities.

4. Enhance telemedicine and mobile health initiatives: Utilizing technology, such as telemedicine and mobile health applications, can provide remote access to healthcare professionals and information, allowing pregnant women to receive guidance and support even in areas with limited healthcare resources.

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

1. Define the indicators: Determine specific indicators that measure access to maternal health, such as the number of skilled birth attendants per capita, the percentage of pregnant women receiving prenatal care, or the average distance to the nearest healthcare facility.

2. Collect baseline data: Gather data on the current state of access to maternal health, including the chosen indicators, from reliable sources such as national surveys, health records, or population data.

3. Model the impact: Use statistical or mathematical models to simulate the potential impact of the recommendations on the chosen indicators. This can involve estimating changes in the indicators based on the expected effects of each recommendation.

4. Validate the model: Validate the model by comparing the simulated results with real-world data or expert opinions to ensure its accuracy and reliability.

5. Analyze the results: Interpret the simulated results to understand the potential impact of the recommendations on improving access to maternal health. This can involve identifying areas or populations that would benefit the most from each recommendation and assessing the overall effectiveness of the proposed interventions.

6. Refine and iterate: Based on the analysis, refine the recommendations and iterate the simulation process to further optimize the strategies for improving access to maternal health.

It is important to note that the methodology described above is a general framework and can be adapted and customized based on the specific context and data availability of the study.

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