Socioeconomic and demographic determinants of birth weight in southern rural Ghana: Evidence from Dodowa Health and Demographic Surveillance System

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Study Justification:
– Low birth weight (LBW) is a significant factor affecting child morbidity and mortality worldwide.
– LBW results in substantial costs to the health sector and imposes a burden on society.
– Investigating the determinants of LBW in southern rural Ghana can provide valuable insights for addressing this issue.
Study Highlights:
– The study analyzed data from the Dodowa Health and Demographic Surveillance System (DHDSS) in southern rural Ghana.
– The incidence of LBW for the years 2011 to 2013 was 8.72%, 7.04%, and 7.52% respectively.
– Factors associated with higher likelihood of babies weighing ≥2.5kg at birth included maternal age, occupation, socioeconomic status, parity, and infant gender.
Study Recommendations:
– Improve access to healthcare services in the DHDSS area, especially during the wet seasons.
– Enhance antenatal care attendance and promote the intake of Intermittent Preventive Treatment (IPTp) for prevention of malaria in pregnancy.
– Implement interventions to address socioeconomic disparities and improve the overall socioeconomic status of women households.
– Provide support and resources for women with higher parity to ensure healthier birth weights.
– Consider gender-specific interventions to address the higher likelihood of male infants having birth weights ≥2.5kg.
Key Role Players:
– Dodowa Health and Demographic Surveillance System (DHDSS) team
– Health sector officials and policymakers
– Community leaders and organizations
– Maternal and child health specialists
– Public health researchers and experts
Cost Items for Planning Recommendations:
– Improving access to healthcare services: infrastructure development, transportation, staffing, equipment
– Enhancing antenatal care attendance: awareness campaigns, training for healthcare providers, monitoring and evaluation systems
– Promoting IPTp intake: education and counseling programs, provision of IPTp medication
– Addressing socioeconomic disparities: income generation programs, vocational training, social support services
– Supporting women with higher parity: targeted interventions, counseling services, maternal and child health programs
– Gender-specific interventions: research and program development, awareness campaigns, gender-sensitive healthcare services

The strength of evidence for this abstract is 7 out of 10.
The evidence in the abstract is moderately strong. The study utilized a large sample size (6777 mothers) and employed logistic regression to explore the associations between exposure variables and the outcome. The study also adjusted for confounding variables and presented odds ratios with confidence intervals. However, the abstract does not mention the representativeness of the sample or the generalizability of the findings. To improve the strength of the evidence, future studies could consider using a representative sample and conducting a prospective study design.

Background: Low birth weight (LBW) is one of the major factors affecting child morbidity and mortality worldwide. It also results in substantial costs to the health sector and imposes a significant burden on the society as a whole. This study seeks to investigate the determinants of low birth weight and the incidence of LBW in southern rural Ghana. Methods: Pregnancy, birth, demographic and socioeconomic information of 6777 mothers who gave birth in 2011, 2012, and 2013 and information on their babies were extracted from a database. The database of Dodowa Health and Demographic Surveillance System is a longitudinal follow-up of over 24,000 households. The incidence of LBW was calculated and the univariable and multivariable associations between exposure variables and outcome were explored using logistic regression. STATA 11 was used for the analyses. Result: The results revealed that 40.21% of the infants were not weighed at birth and the incidence of LBW for 2011 to 2013 was 8.72, 7.04 and 7.52% respectively. Women aged 20-24, 25-29, 30-34 years were more than twice more likely to have babies weighing ≥2.5kg compared to those 34years were more than three times more likely to have babies weighed ≥2.5kg (OR: 3.59, 95% CI:2.56-5.04). Mothers who were civil servants were 77% more likely to have babies weighed ≥2.5kg (OR: 1.77, 95% CI: 1.99-2.87) compared to those who were unemployed. After adjusting for other explanation variables, mothers from poorer households were 30% more likely to have babies who weighed ≥2.5kg (OR: 1.30, 95% CI: 1.01-1.66) compared to those from the poorest households. Women with parity2 and parity>3 were 30% and 81% more likely to have babies weighing ≥2.5kg (OR: 1.30, 95% CI: 1.03-1.63, OR: 1.81, 95% CI: 1.38-2.35) compared to those with parity1. Male infants were 52% more likely to weigh ≥2.5kg at birth (OR: 1.52, 95% CI: 1.32-1.76) compared to females. Conclusion: Our study revealed that having infant birth weight≥2.5kg is highly associated with socioeconomic status of women household, the gender of an infant, parity, occupation and maternal age.

Data for this study were extracted from the Dodowa Health and Demographic Surveillance System (DHDSS) site database. The DHDSS is located in the south-eastern part of Ghana and operates within the boundaries of the Shai-Osudoku and Ningo-Prampram districts [37]. The DHDSS site lies between latitude 5° 45′ south and 6° 05′ north and longitude 0° 05′ east and 0° 20′ west with a land area of 1528.9 km2. It is about 41 km from the national capital, Accra [37, 38]. The two districts are made up of a population of 115,754 people in 380 communities. There are 23,647 households living in a total land area of 1442 km2. The inhabitants are predominantly subsistence farmers, fishermen and petty traders [38]. Road networks in the DHDSS are usually inaccessible during the wet seasons, making access to health and other services a challenge. The DHDSS visits every household in the demographic surveillance area twice in a year to collect data on demographic, migration and other health indicators [38]. Health care services in the DHDSS are delivered by hospitals, health centres, CHPS zones, private facilities, clinics, maternity homes, mission clinics and quasi government clinics. The study population is made up of all babies born to resident women in the DHDSS and the study sample comprised 6777 babies born to women who were resident in the DHDSS from 1st January 2011 to 31st December 2013. All babies born to women who were not resident members of the DHDSS and those born outside the study period were excluded. The outcome variable for this study is birth weight which is binary recorded as: 1 “Birth Weigh <2.5 kg” and 0“Birth Weight ≥2.5 kg”. From the available data, eleven exposure variables were selected based on biological plausibility, the available literature and the potential to influence birth weight. These exposure variables include: infant’s gender, maternal age, maternal education, maternal occupation, parity and the intake of Intermittent Preventive Treatment (IPTp) for prevention of malaria in pregnancy. Others include whether this is the mothers first live birth or not, her marital status, antenatal (ANC) attendance, type of cooking fuel, and the wealth index. The wealth index (socioeconomic status) is a proxy measure of a household’s long term standard of living; it is based on social status, asset ownership, and availability of utilities, among others. The index measures were combined into a wealth index, using weights derived through principal component analysis (PCA) [39]. The proxies from the PCA were divided into five quintiles; poorest, very poor, poor, less poor and least poor. Maternal ages at delivery were calculated using the mothers’ and babies’ birthdates. The study used secondary data from the DHDSS. Birth weight variable which was captured from the health record book of the child during the DHDSS data collection period and exposure variables were extracted from the database of DHDSS. The associations between each exposure variable and birth weight were explored at the univariable level and those significant at p < 0.05 were entered together into a multiple logistic regression model. To ensure the assumption of independence of observations, all multiple births were excluded and assessment of clustering at household level was carried out and the assumption of independence was upheld. Collinearity between all variables and models fit with and without adjustment were checked using Pearson’s correlation matrix. All analyses were conducted in Stata version 11 and results were presented in the form of tables and summary statistics in odds ratios (OR), with 95 % confidence intervals (CI) and p-values.

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

1. Mobile Health (mHealth) Solutions: Develop mobile applications or text messaging services to provide pregnant women with information and reminders about prenatal care, nutrition, and healthy behaviors. This can help overcome barriers to accessing healthcare services in remote or underserved areas.

2. Telemedicine: Implement telemedicine programs that allow pregnant women to consult with healthcare providers remotely, reducing the need for travel and improving access to specialized care.

3. Community Health Workers: Train and deploy community health workers to provide education, support, and basic healthcare services to pregnant women in their communities. This can help bridge the gap between healthcare facilities and remote areas.

4. Transportation Solutions: Improve transportation infrastructure and services to ensure pregnant women can easily reach healthcare facilities for prenatal care, delivery, and postnatal care. This could include providing affordable transportation options or mobile clinics in areas with limited access to healthcare.

5. Financial Support: Implement programs that provide financial assistance or incentives to pregnant women, particularly those from low-income households, to encourage them to seek and receive adequate prenatal care.

6. Health Education Programs: Develop and implement comprehensive health education programs that target pregnant women and their families, focusing on the importance of prenatal care, nutrition, and healthy behaviors. This can help increase awareness and knowledge about maternal health and encourage women to seek appropriate care.

7. Strengthening Healthcare Systems: Invest in improving healthcare infrastructure, staffing, and equipment in rural and underserved areas to ensure that pregnant women have access to quality maternal healthcare services.

8. Data Collection and Analysis: Continuously collect and analyze data on maternal health outcomes, including birth weight, to identify trends, gaps, and areas for improvement. This can inform targeted interventions and policies to address specific challenges in improving access to maternal health.

It is important to note that the specific recommendations for improving access to maternal health should be tailored to the local context and needs of the community.
AI Innovations Description
The study titled “Socioeconomic and demographic determinants of birth weight in southern rural Ghana: Evidence from Dodowa Health and Demographic Surveillance System” provides valuable insights into the factors influencing low birth weight (LBW) in the region. Based on the findings, here is a recommendation that can be developed into an innovation to improve access to maternal health:

1. Mobile Health (mHealth) Intervention: Develop a mobile health application or SMS-based system that provides pregnant women with information and reminders about antenatal care visits, nutrition, and healthy practices during pregnancy. This intervention can help improve access to maternal health information and encourage women to seek timely and appropriate care.

The mHealth intervention can include features such as:
– Personalized reminders for antenatal care visits and recommended screenings.
– Nutritional guidance and tips for a healthy pregnancy.
– Information on the importance of regular check-ups and the potential risks of low birth weight.
– Access to a helpline or chatbot for immediate assistance and answers to common questions.
– Integration with the Dodowa Health and Demographic Surveillance System (DHDSS) database to provide tailored recommendations based on individual profiles and risk factors.

By leveraging mobile technology, this innovation can reach a wider population, including those in remote areas with limited access to healthcare facilities. It can empower pregnant women with knowledge and support, ultimately leading to improved maternal and child health outcomes, including a reduction in the incidence of low birth weight.
AI Innovations Methodology
Based on the provided description, here are some potential recommendations for improving access to maternal health:

1. Strengthening Antenatal Care (ANC) Services: Enhance the quality and availability of ANC services, including regular check-ups, health education, and screening for potential complications during pregnancy.

2. Improving Transportation Infrastructure: Invest in improving road networks and transportation services to ensure pregnant women can easily access healthcare facilities, especially in remote areas.

3. Increasing Awareness and Education: Implement community-based education programs to raise awareness about the importance of maternal health, including the benefits of ANC, skilled birth attendance, and postnatal care.

4. Enhancing Healthcare Facilities: Upgrade and equip healthcare facilities with necessary resources, including skilled healthcare professionals, medical equipment, and essential medicines for safe deliveries.

5. Promoting Maternal Health Insurance: Establish or expand health insurance schemes that specifically cover maternal health services, reducing financial barriers and improving access to quality care.

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 the key indicators that will be used to measure access to maternal health, such as the percentage of pregnant women receiving ANC, the percentage of deliveries attended by skilled birth attendants, or the percentage of women receiving postnatal care.

2. Collect baseline data: Gather baseline data on the selected indicators before implementing the recommendations. This can be done through surveys, interviews, or analysis of existing data sources.

3. Implement the recommendations: Introduce the recommended interventions and initiatives to improve access to maternal health. This may involve collaboration with local healthcare providers, government agencies, and community organizations.

4. Monitor and collect data: Continuously monitor the implementation of the recommendations and collect data on the selected indicators. This can be done through regular surveys, health facility records, or monitoring systems.

5. Analyze and compare data: Analyze the collected data to assess the impact of the recommendations on the selected indicators. Compare the post-intervention data with the baseline data to identify any improvements or changes in access to maternal health.

6. Evaluate and adjust: Evaluate the effectiveness of the implemented recommendations and identify areas for improvement. Based on the findings, make necessary adjustments to the interventions to further enhance access to maternal health.

7. Repeat the process: Continuously repeat the monitoring, analysis, and evaluation process to track the progress and make ongoing improvements to ensure sustained access to maternal health services.

By following this methodology, policymakers and healthcare providers can assess the impact of the recommendations and make informed decisions to further enhance access to maternal health.

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