Prevalence and determinants of unintended childbirth in Ethiopia

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Study Justification:
– The study aims to assess the prevalence and determinants of unintended childbirth in Ethiopia.
– It is important to understand the factors contributing to unintended childbirth in order to develop effective family planning programs and strategies.
– The study provides valuable information on the burden of unintended childbirth and the need for better access to contraceptive services.
Highlights:
– The study found that nearly one in three births in Ethiopia is unintended, with two-thirds of these being mistimed.
– Young, unmarried, higher wealth, high parity, and ethnic majority women, as well as those with less than secondary education and large household size, are more likely to experience unintended childbirth.
– The study highlights the need for targeted family planning programs and strategies to improve access to contraceptive services, raise educational levels, and provide information and communication to affected groups.
Recommendations:
– Develop and implement targeted family planning programs to address the high prevalence of unintended childbirth.
– Strengthen and improve access to contraceptive services, particularly in rural areas where contraceptive use is low.
– Focus on raising educational levels, especially among young women and those with less than secondary education.
– Provide information and communication on family planning and contraception to affected groups, including young, unmarried, multipara, and those with less than secondary education.
– Conduct further research on the consequences of unintended pregnancy and childbirth to inform future interventions.
Key Role Players:
– Ethiopian Central Statistical Agency (CSA)
– ICF International
– MEASURE DHS project
– Policy makers and government officials
– Healthcare providers and organizations
– Non-governmental organizations (NGOs) working in the field of reproductive health
Cost Items for Planning Recommendations:
– Development and implementation of targeted family planning programs
– Training and capacity building for healthcare providers
– Distribution of contraceptive methods and supplies
– Educational campaigns and materials
– Research and data collection on unintended childbirth and its consequences
– Monitoring and evaluation of interventions
– Collaboration and coordination among key role players

The strength of evidence for this abstract is 8 out of 10.
The evidence in the abstract is based on a secondary analysis of data from the 2011 nationally representative Ethiopia Demographic and Health Survey. The study used a large sample size of 16,515 women and employed multivariate logistic regression to analyze the data. The study found a relatively high prevalence of unintended childbirth in Ethiopia and identified several socioeconomic and demographic factors associated with unintended childbirth. The study provides valuable insights into the factors contributing to unintended childbirth in Ethiopia. However, to improve the strength of the evidence, the study could have included more recent data and conducted a longitudinal analysis to assess changes in the prevalence of unintended childbirth over time. Additionally, the study could have included qualitative research to further explore the consequences of unintended pregnancy and childbirth.

Background: Ethiopia’s population policy specifically aims to reduce TFR from 7.7 to 4.0 and to increasecontraceptive use from 4.0% to 44.0% between 1990 and 2015. In 2011, the use of contraceptive methodsincreased seven-fold from 4.0% to 27%; and the TFR declined by 38% to 4.8. The use of modern contraceptives is,however, much higher in the capital Addis Ababa (56%) and other urban areas but very low in rural areas (23%) farbelow the national average (27%). In 2011, one in four Ethiopian women had an unmet need for contraception.The main aim of this study was to assess the pattern and examine the socioeconomic and demographic correlatesof unintended childbirth among women 15-49 years in Ethiopia. Methods: Data from the 2011 nationally representative Ethiopia Demographic and Health Survey are used. Itcovered 16,515 women of which 7,759 had at least one birth and thus included for this study. Multivariate logisticregression is used to see the net effects of each explanatory variable over the outcome variable.Results: The study found that nearly one in three (32%) births was unintended; and about two-thirds of these weremistimed. The regression model shows that the burden of unintended births in Ethiopia falls more heavily onyoung, unmarried, higher wealth, high parity, and ethnic majority women and those with less than secondary educationand with large household size. These variables showed statistical significance with the outcome variable.Conclusion: The study found a relatively high prevalence of unintended childbirth in Ethiopia and this implies high levelsof unmet need for child spacing and limiting. There is much need for better targeted family planning programs andstrategies to strengthen and improve access to contraceptive services, to raise educational levels, and related informationand communication particularly for those affected groups including young, unmarried, multipara, and those with less thansecondary level of education. Further quantitative and qualitative research on the consequences of unintended pregnancyand childbirth related to prenatal and perinatal outcomes are vital to document process of change in the problemovertime.

The data for this paper were drawn from the 2011 nationally representative Ethiopia Demographic and Health Survey (EDHS). This is a secondary analysis of data. Authorization was obtained from the ICF International to download data from the Demographic and Health surveys (DHS) on-line archive and analyze and present findings. The survey was implemented by the Ethiopian Central Statistical Agency (CSA) with the technical assistance of ICF International through the MEASURE DHS project. The survey enquires about household members’ and individual characteristics using Household Questionnaire, Woman’s Questionnaire and Man’s Questionnaire. Individual women of reproductive age (15-49 years) were interviewed face to face on their background characteristics as well as on fertility and family planning behaviour, child mortality, adult and maternal mortality, nutritional status of women and children, the utilization of maternal and child health services, knowledge of HIV/AIDS and prevalence of HIV/AIDS and anaemia [11]. The sample was weighted to make the survey base more accurately representative of the population from which the sample was taken. Thus the descriptive analyses for this paper were based on weighted figures. However, since the multivariate analyses preserve the one respondent-one-response relationship, data were not weighted. The present analysis is restricted to last born children in the five years preceding the survey. EDHS tries to assess the level of unwanted fertility among women age 15-49 through a series of survey questions asked about each of the children born to them in the preceding five years (including current pregnancy). Women were asked about their last birth whether they wanted it then, wanted later, or did not want to have any more children at all. The term “wanted” permits identifying those mistimed pregnancies or births that occurred sooner than desired. In this study, if the birth or pregnancy was wanted then, it was considered to be intended; if it was wanted but at a later time, it was considered to be mistimed, and if it was not wanted at the time of conception, it was considered to be unwanted [11]. The dependent variable of interest in this study is therefore measured as a two-outcome variable and coded as intended birth, if the last childbirth occurred at a time when the woman wanted it, and unintended birth, if the pregnancy or last childbirth occurred at a time when the woman would have wanted it later or did not want it at all. Hence, unintended birth is estimated as the proportion of births resulting from unintended pregnancies. Both bivariate and multivariate analyses were done to determine the presence of statistically significant associations and strength of associations between explanatory variables and the dependent variable. For this study, p-value of 0.05 was considered as significant level. The multivariate models (adjusted odds ratio) included variables that were significantly associated with the dependent variable (p-value < 0.05) in the bivariate analyses or crude odds ratios. The Hosmer and Lemeshow goodness of fit test showed P-value of 0.89 and Nagelkerke R Square value was 0.63 for the final model which shows that our data fairly fits with the logistic regression model. Multi-collinearities were also checked among selected variables including age versus parity, educational status versus working status, and educational status versus wealth index. The Variance Inflation Factor (VIF) and adjusted R2 values for each of the pairs ranged from 1.01- 1.31 and 0.001-0.011 respectively. Commonly, a VIF of 10 and above or a Tolerance (1-R2) of close to zero would be a concern for multi-collinearity. A wide range of predictor variables were considered in this study including woman's educational level (no education, primary, and secondary or higher education), working status (whether the woman was working at the time of data collection for remuneration), age (years), marital status (never in union/married, currently married, formerly married), parity (children ever born), wealth index (poor, middle, rich), religion (Orthodox Christian, Muslim, Catholic, Protestant, and Traditional), ethnicity (Tigraway, Oromo, Amhara, Guragie, Somalie, Afar, etc.), history of abortion, woman’s decision-making autonomy, and exposure to media. Exposure to media was categorized as adequate if the woman reads newspaper/magazine or listens radio or watches television at least once a week; inadequate if the woman reads newspaper/magazine, listens radio or watches television less than once a week. In the 2011 EDHS questions were asked on women’s participation in specific household decisions including on spending respondent’s earnings, household purchases, visits to family and respondent’s healthcare. The decision-making autonomy of women at household level was also considered among the independent variables including decision on own healthcare, large household purchases and visits to relatives. However, we couldn’t include them in the final model due to large missing or invalid values of up to 15% of the sample size. Other variables treated related to antenatal care, fertility and contraception include history of abortion, current contraceptive use, and knowledge of any contraceptive method. Type of place of residence was used as a control variable.

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

1. Mobile Health (mHealth) Solutions: Develop mobile applications or SMS-based systems to provide information and reminders about prenatal care, family planning, and maternal health services. This can help reach women in rural areas with limited access to healthcare facilities.

2. Community Health Workers: Train and deploy community health workers to provide education, counseling, and basic maternal health services in remote areas. These workers can also help identify and refer high-risk pregnancies to appropriate healthcare facilities.

3. Telemedicine: Establish telemedicine networks to connect healthcare providers in urban areas with pregnant women in rural areas. This can enable remote consultations, monitoring, and diagnosis, reducing the need for women to travel long distances for prenatal care.

4. Mobile Clinics: Set up mobile clinics that travel to underserved areas, providing comprehensive maternal health services including prenatal care, family planning, and postnatal care. This can help overcome geographical barriers and reach women who cannot easily access healthcare facilities.

5. Public-Private Partnerships: Foster collaborations between the government, private sector, and non-profit organizations to improve access to maternal health services. This can involve leveraging private sector resources and expertise to expand healthcare infrastructure and services.

6. Financial Incentives: Implement financial incentives, such as conditional cash transfers or vouchers, to encourage pregnant women to seek prenatal care and deliver in healthcare facilities. This can help address financial barriers and increase utilization of maternal health services.

7. Health Education and Awareness Campaigns: Conduct targeted health education campaigns to raise awareness about the importance of prenatal care, family planning, and skilled birth attendance. This can help dispel myths and misconceptions, and encourage women to seek appropriate care.

8. Strengthening Health Systems: Invest in improving healthcare infrastructure, staffing, and supply chains to ensure the availability and quality of maternal health services. This can involve training healthcare providers, upgrading facilities, and ensuring the availability of essential medicines and equipment.

It is important to note that the implementation of these innovations should be tailored to the specific context and needs of Ethiopia, taking into account cultural, social, and economic factors. Additionally, ongoing monitoring and evaluation should be conducted to assess the effectiveness and impact of these interventions.
AI Innovations Description
Based on the information provided, the recommendation to improve access to maternal health in Ethiopia is to implement better targeted family planning programs and strategies. This includes strengthening and improving access to contraceptive services, raising educational levels, and providing related information and communication particularly for young, unmarried, multipara (women who have given birth to two or more children), and those with less than a secondary level of education. Additionally, conducting further quantitative and qualitative research on the consequences of unintended pregnancy and childbirth related to prenatal and perinatal outcomes is vital to document the process of change in the problem over time.
AI Innovations Methodology
Based on the information provided, here are some potential recommendations for improving access to maternal health in Ethiopia:

1. Strengthen and expand family planning programs: Given the high prevalence of unintended childbirth, there is a need to improve access to contraceptive services and raise awareness about family planning methods. This can be achieved through targeted campaigns, community outreach programs, and partnerships with local healthcare providers.

2. Increase educational opportunities: Since lower educational levels are associated with higher rates of unintended childbirth, efforts should be made to improve access to education, particularly for women in rural areas. This can include building schools, providing scholarships, and implementing programs that encourage girls’ enrollment and retention in schools.

3. Improve healthcare infrastructure in rural areas: Access to quality maternal healthcare services is crucial for reducing unintended childbirth. Investing in healthcare infrastructure, such as building and staffing health clinics in rural areas, can help ensure that women have access to prenatal care, skilled birth attendants, and emergency obstetric care.

4. Address socio-cultural barriers: Socio-cultural factors, such as early marriage and gender inequality, can contribute to unintended childbirth. Addressing these barriers requires community engagement and awareness campaigns to challenge harmful norms and promote gender equality.

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

1. Define indicators: Identify key indicators that measure access to maternal health, such as the percentage of women receiving prenatal care, the percentage of births attended by skilled birth attendants, and the percentage of women using modern contraceptives.

2. Collect baseline data: Gather data on the current status of these indicators in Ethiopia, using existing surveys and reports. This will provide a baseline against which the impact of the recommendations can be measured.

3. Develop a simulation model: Create a simulation model that incorporates the potential impact of the recommendations on the identified indicators. This model should take into account factors such as population size, geographical distribution, and existing healthcare infrastructure.

4. Input data and run simulations: Input the baseline data into the simulation model and run multiple simulations to estimate the potential impact of the recommendations. Adjust the parameters of the model based on the expected outcomes of each recommendation.

5. Analyze results: Analyze the results of the simulations to determine the potential improvements in access to maternal health that could be achieved through the recommended interventions. This can include quantifying the expected increase in the percentage of women receiving prenatal care or the decrease in the percentage of unintended childbirths.

6. Validate and refine the model: Validate the simulation model by comparing the simulated results with real-world data, where available. Refine the model based on feedback and additional data sources to improve its accuracy and reliability.

7. Communicate findings: Present the findings of the simulation study in a clear and concise manner, highlighting the potential impact of the recommendations on improving access to maternal health. This information can be used to inform policy decisions and guide the allocation of resources towards the most effective interventions.

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