Utilization of key preventive measures for pregnancy complications and malaria among women in Jimma Zone, Ethiopia

listen audio

Study Justification:
– The study aimed to investigate the factors influencing the uptake of maternal health services and interventions by pregnant women in Jimma Zone, Ethiopia.
– The study focused on the utilization of key preventive measures for pregnancy complications and malaria, which contribute to the high burden of maternal morbidity and mortality in Ethiopia.
– The findings of the study would provide valuable insights into the barriers and determinants of antenatal care (ANC) attendance, insecticide-treated net (ITN) ownership and use, and the prevalence of malaria infection among pregnant women.
Study Highlights:
– 84% of interviewed women reported receiving at least one ANC visit during their last pregnancy, while only 47% reported attending four or more ANC visits.
– Common reasons for not attending ANC included lack of awareness of its importance, distance to health facility, and unavailability of transportation.
– 48% of women reported owning an ITN during their last pregnancy, and 55% of them reported always sleeping under it.
– ANC attendance was found to be a significant determinant of ITN ownership and use.
– The self-reported prevalence of malaria infection during pregnancy was low (1.4%) across the three districts.
– Young, uneducated, and unemployed women presented higher odds of malaria infection during their last pregnancy.
Recommendations for Lay Reader:
– More efforts are needed to improve access to ANC services and increase ANC attendance among pregnant women in Jimma Zone.
– Emphasizing the importance of ANC and addressing the barriers such as lack of awareness, distance, and transportation could help increase ANC utilization.
– ANC services should include promotion and provision of ITNs to improve ITN ownership and use among pregnant women.
– Intensive programmatic efforts are required to reach ANC non-users and address the gaps in ITN ownership and use.
Recommendations for Policy Maker:
– Allocate resources and implement targeted interventions to improve access to ANC services and increase ANC attendance among pregnant women in Jimma Zone.
– Strengthen health education and awareness campaigns to promote the importance of ANC and address misconceptions and barriers.
– Improve transportation infrastructure and availability to overcome the distance barrier for pregnant women seeking ANC.
– Ensure the availability and distribution of ITNs to pregnant women as part of ANC services.
– Enhance malaria prevention strategies targeting young, uneducated, and unemployed women to reduce the prevalence of malaria infection during pregnancy.
Key Role Players:
– Ministry of Health: Responsible for policy development, resource allocation, and coordination of maternal health services.
– Health Extension Workers (HEWs): Provide community-based health education and support for pregnant women.
– Primary Health Care Units (PHCUs): Deliver maternal health services at the community level.
– Non-Governmental Organizations (NGOs): Implement programs and interventions to improve maternal health outcomes.
– Community Leaders and Volunteers: Engage in community mobilization and awareness campaigns.
Cost Items for Planning Recommendations:
– Health education and awareness campaigns: Printing materials, media advertisements, community outreach activities.
– Transportation infrastructure improvement: Road construction, maintenance, and public transportation services.
– Provision of ITNs: Procurement, distribution, and monitoring of ITNs.
– Training and capacity building for health workers: Workshops, seminars, and skill development programs.
– Monitoring and evaluation: Data collection, analysis, and reporting.
– Program coordination and management: Staff salaries, office expenses, and logistical support.

The strength of evidence for this abstract is 7 out of 10.
The evidence in the abstract is strong, as it is based on a community-based cross-sectional survey with a large sample size. The study uses multivariable logistic regression models to identify determinants of antenatal care attendance, insecticide-treated net ownership and use, and the prevalence and predictors of malaria infection among pregnant women. The study provides important insights into the factors influencing the uptake of maternal health services and interventions in Ethiopia. However, to improve the evidence, the abstract could include more information on the sampling strategy, data collection methods, and statistical analysis techniques used in the study.

Background: In Ethiopia, malaria infections and other complications during pregnancy contribute to the high burden of maternal morbidity and mortality. Preventive measures are available, however little is known about the factors influencing the uptake of maternal health services and interventions by pregnant women in Ethiopia. Methods: We analyzed data from a community-based cross-sectional survey conducted in 2016 in three rural districts of Jimma Zone, Ethiopia, with 3784 women who had a pregnancy outcome in the year preceding the survey. We used multivariable logistic regression models accounting for clustering to identify the determinants of antenatal care (ANC) attendance and insecticide-treated net (ITN) ownership and use, and the prevalence and predictors of malaria infection among pregnant women. Results: Eighty-four percent of interviewed women reported receiving at least one ANC visit during their last pregnancy, while 47% reported attending four or more ANC visits. Common reasons for not attending ANC included women’s lack of awareness of its importance (48%), distance to health facility (23%) and unavailability of transportation (14%). Important determinants of ANC attendance included higher education level and wealth status, woman’s ability to make healthcare decisions, and pregnancy intendedness. An estimated 48% of women reported owning an ITN during their last pregnancy. Of these, 55% reported to have always slept under it during their last pregnancy. Analysis revealed that the odds of owning and using ITNs were respectively 2.07 (95% CI: 1.62-2.63) and 1.73 (95% CI: 1.32-2.27) times higher among women who attended at least one ANC visit. The self-reported prevalence of malaria infection during pregnancy was low (1.4%) across the three districts. We found that young, uneducated, and unemployed women presented higher odds of malaria infection during their last pregnancy. Conclusion: ANC and ITN uptake during pregnancy in Jimma Zone fall below the respective targets of 95 and 90% set in the Ethiopian Health Sector Transformation Plan for 2020, suggesting that more intensive programmatic efforts still need to be directed towards improving access to these health services. Reaching ANC non-users and ITN ownership and use as part of ANC services could be emphasized to address these gaps.

For the purpose of this study, we used data from a community-based cross-sectional survey that was conducted from October 2016 to January 2017 as part of the baseline evaluation of a larger cluster-randomized controlled trial to address barriers to safe motherhood options in Jimma Zone, Ethiopia (ClinicalTrials.gov identifier: {“type”:”clinical-trial”,”attrs”:{“text”:”NCT03299491″,”term_id”:”NCT03299491″}}NCT03299491), as described by Ouedraogo et al. (2019) [12]. Only women who had a pregnancy outcome (i.e. live birth, stillbirth, assisted abortion, miscarriage) in the year preceding the survey were eligible to participate. It was determined that 24 primary health care units (PHCUs) or clusters, and a total of 3840 women would be required for the trial’s baseline evaluation. The sample size calculation for the trial was based on detecting a 17% difference in the primary outcome (skilled birth attendance) between the intervention and control arms. A two-stage sampling strategy was used. We first randomly selected 24 primary health care units (PHCUs) or clusters from the 26 available in the three study districts (Gomma, Kersa, and Seka Chekorsa). From each PHCU catchment area, we then randomly selected 160 eligible women to achieve the target sample size of 3840. Eligible women were randomly selected for face-to-face interviews using a random number generator after conducting a listing exercise with HEWs, village leaders and members of the health development army. We sought informed consent for each woman after explaining the purpose of the survey and the risks and benefits associated with participation. Of the eligible women, 1.5% women (N = 56) refused to participate. No replacement was made for women who refused to participate. Trained interviewers used computer tablets to administer the questionnaire in the local language at the woman’s household. If no woman was available for the interview on the first attempt, the household was revisited on a later date. If no respondent was available after two attempts, the household was replaced by a randomly selected alternate. Survey questions ascertained socio-demographic characteristics of the participants and their maternal health services usage before, during and after pregnancy. The survey was conducted in three Woredas or districts of Jimma Zone: Gomma, Kersa, and Seka Chekorsa. Jimma Zone is situated in Oromiya region, approximately 7 h west by road from Ethiopia’s capital Addis Ababa. Oromiya is one of the regions in Ethiopia where the utilization of maternal and child health services remains suboptimal. The three districts in the study area had a population of approximately 260,000 in 2016. Maternal health services are provided at 26 health centers and 110 rural health posts located in these districts. Nationally, the 2016 EDHS reported that 48% of women who had a live birth in the 5 years before the survey did not attend ANC services [3]. Skilled birth attendance among the 2016 EDHS participants was also low, with only 20% of live births in the 5 years preceding the survey taking place in a health facility [3]. According to the 2015 Ethiopia National Malaria Indicator Survey, 58% of households had at least one ITN and 42% of pregnant women slept under an ITN in Oromiya region [13]. The primary malaria species of epidemiological importance in Ethiopia are Plasmodium falciparum and P. vivax, accounting for approximately 70 and 30% of the malaria cases, respectively [7]. The risk of malaria infection depends on the altitude, with the greatest risk of infection occurring below 2000 m [7]. In Gomma district, the altitude ranges from 1380 to 1680 m, compared to 1740–2660 m in Kersa district and 1580–2560 m in Seka Chekorsa [14]. The three chosen areas have similar climatic conditions, with a main rainy season occurring from June to August [14]. A short rainy season is also observable in February and March [14]. The incidence of malaria infection is typically greatest during both the rainy seasons while lower infection is observed during the rest of the year [7]. To ascertain ANC attendance in the three districts, women were asked whether they attended ANC during their last pregnancy and how many times they visited a health facility for ANC. Participants who reported not attending ANC were asked why they did not attend. To determine ITN ownership and utilization among the recruited sample, women were asked whether their household owned any ITN during their last pregnancy and how frequently they slept under an ITN during their last pregnancy (never, sometimes, often, always). We re-categorized the utilization of ITN to capture women who always used an ITN during last pregnancy and those who did not always use an ITN (never, sometimes and often). Finally, women were asked to report whether they were diagnosed with malaria during their last pregnancy. We considered the following socio-demographic variables: age (15–18 years, 19–24 years, 25–34 years, and 35–49 years), marital status (not married, married), ethnic group (Oromo, Amhara, Others), employment status (not employed, self-employed, employed), level of education (no education, primary, secondary, higher), decision-making about health care (husband or family member, self, jointly with husband), exposure to different media sources (not at all, at least once a week, more than once a week), frequency of contact with HEWs (not at all, less than once a month, once or more times a month), household size (≤4, 5–8, ≥9 household members), children in the household (≤3, 4–6, ≥7), reproductive history (i.e. total number of live births, miscarriages, stillbirths, and neonatal death), and last pregnancy intendedness. For employment status, the ‘not employed’ category included individuals who identified as housewives, students and unemployed s, while those identifying as farmers were categorized as self-employed. Following the steps defined by the DHS group, we used a principal component analysis (PCA) to construct a household wealth index combining households’ ownership of various durable assets (e.g. electricity, radio, television, refrigerator, mobile phone)), housing construction (type of materials used for floor, roof and exterior wall), type of toilet facilities, sources of water supply, and type of fuel used for cooking [15]. PCA is a statistical method that reduces a specified number of variables into a smaller number of dimensions or principal components [16]. Briefly, PCA allowed us to extract a principal component from our selected variables as a measure of socio-economic status and derive factor scores for the considered variables. Using the factor scores as weights for each variable, an overall score for each household was subsequently obtained, which can be interpreted as the household-specific wealth score. Based on their wealth score, the households were then divided into five equal quintiles (poorest, poorer, middle, wealthier, wealthiest). All the data were synchronized to a cloud server using Open Data Kit and we exported CSV files for data management and analysis. We performed all analyses using SAS statistical software version 9.4. We assessed the distribution of each variable through frequency tables. We used chi-square and Fisher’s exact tests, as appropriate, to explore associations between the variables and determine differences in proportions. Differences in means were assessed using t-tests. We considered a two-sided p-value of 0.05 as the level of statistical significance. Using unadjusted and adjusted logistic regression models, we generated odds ratio (ORs) and corresponding 95% confidence intervals to identify significant predictors of first ANC visit attendance. We considered all the aforementioned socio-demographic characteristics (i.e. age, marital status, employment status, level of education, decision-making about health care, exposure to television and radio, frequency of contact with HEWs, reproductive history, and last pregnancy intendedness) as potential predictors of ANC attendance in univariable analyses, and retained all significant variables (p > 0.05) in the multivariable models. We conducted a sub-group analysis among women who attended any ANC visit, to identify whether the participants who attended at least four ANC visits differed from women who attended three or fewer ANC visits with regards to their socio-demographic characteristics. We used multivariable logistic regression analyses to assess the relationship between ANC attendance (no attendance, at least one visit) and ITN ownership and utilization. We considered age, marital and occupation status, education status, household wealth, and whether the dwelling was sprayed with insecticide in the last year as potential confounders and effect modifiers. Confounding was assessed by looking at the strength of the association between each variable, and ANC attendance and ITN ownership and utilization. Effect modification was investigated by introducing interaction terms between main predictors and potential effect modifiers into the regression models. We similarly assessed the main predictors of malaria infection during pregnancy using logistic regression models, considering socio-demographic factors, ITN utilization and IRS as potential predictors. For the analyses of ITN ownership and use, and malaria in pregnancy, we performed subgroup analyses considering only women living within the catchment area of PHCUs at an altitude below 2000 m, where the risk of malaria is known to be higher. Our analysis considered the complex cross-sectional survey sampling design, wherein women were clustered within PHCUs, as failure to do so can lead to incorrect inferences [17]. We therefore incorporated clustering of the data in all the analyses through logistic regressions with random intercept models, using the PROC GLIMMIX function in SAS 9.4. We also ran model diagnostics, including assessment of the distribution of the residuals and random effects.

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

1. Mobile health (mHealth) interventions: Develop and implement mobile phone-based applications or text messaging services to provide pregnant women with information about the importance of antenatal care (ANC), the availability of healthcare services, and reminders for ANC visits. This can help address the lack of awareness and improve attendance rates.

2. Transportation solutions: Explore innovative transportation options such as community-based transportation services or partnerships with ride-sharing companies to address the issue of distance and unavailability of transportation. This can help pregnant women overcome barriers to accessing healthcare facilities for ANC visits.

3. Community health worker (CHW) engagement: Strengthen the role of community health workers in educating and mobilizing pregnant women to attend ANC visits and promoting the use of insecticide-treated nets (ITNs). CHWs can provide personalized counseling and support, address misconceptions, and help overcome cultural and social barriers.

4. Integration of ANC and ITN services: Emphasize the importance of ITN ownership and use as part of ANC services. Provide ITNs during ANC visits and educate pregnant women about the benefits of using ITNs to prevent malaria during pregnancy. This can increase ITN ownership and utilization rates among pregnant women.

5. Targeted interventions for vulnerable populations: Develop targeted interventions for young, uneducated, and unemployed women who are at higher risk of malaria infection during pregnancy. These interventions can include tailored education, counseling, and support to improve ANC attendance, ITN ownership, and utilization.

6. Public-private partnerships: Collaborate with private sector organizations, such as mobile network operators, to leverage their resources and expertise in reaching pregnant women with health information and services. This can help expand the reach and impact of maternal health interventions.

7. Continuous monitoring and evaluation: Implement a robust monitoring and evaluation system to track the progress and impact of maternal health interventions. Regular data collection and analysis can help identify gaps, measure the effectiveness of interventions, and inform evidence-based decision-making for further improvements.

These innovations, if implemented effectively, can contribute to improving access to maternal health services and reducing maternal morbidity and mortality in Jimma Zone, Ethiopia.
AI Innovations Description
Based on the information provided, the following recommendation can be developed into an innovation to improve access to maternal health:

1. Strengthening awareness campaigns: Develop targeted awareness campaigns to educate pregnant women about the importance of antenatal care (ANC) visits and the use of insecticide-treated nets (ITNs) during pregnancy. These campaigns should address common reasons for not attending ANC, such as lack of awareness, distance to health facilities, and transportation issues.

2. Improving transportation infrastructure: Work towards improving transportation infrastructure in rural areas to address the issue of distance to health facilities. This can include initiatives such as providing transportation vouchers or establishing mobile health clinics to bring maternal health services closer to communities.

3. Integrating ANC services with ITN distribution: Emphasize the importance of ITN ownership and use as part of ANC services. Ensure that every pregnant woman attending ANC receives an ITN and is educated on its proper use to prevent malaria infection during pregnancy.

4. Empowering women in decision-making: Promote women’s ability to make healthcare decisions by providing information and support. This can be done through community-based interventions that empower women to actively participate in their own maternal health care.

5. Strengthening healthcare infrastructure: Invest in improving healthcare infrastructure, particularly in rural areas, to ensure that quality ANC services are available and accessible to all pregnant women. This can include increasing the number of health centers and rural health posts, as well as training and deploying skilled healthcare providers.

6. Collaboration and coordination: Foster collaboration and coordination among various stakeholders, including government agencies, non-governmental organizations, and community leaders, to collectively address the barriers to accessing maternal health services. This can involve joint planning, resource sharing, and monitoring of progress towards improving access to maternal health.

By implementing these recommendations, it is expected that access to maternal health services, including ANC and ITN utilization, will improve, leading to a reduction in maternal morbidity and mortality rates in Jimma Zone, Ethiopia.
AI Innovations Methodology
Based on the provided description, here are some potential recommendations to improve access to maternal health:

1. Increase awareness: Develop targeted educational campaigns to raise awareness about the importance of antenatal care (ANC) and the use of insecticide-treated nets (ITNs) during pregnancy. These campaigns should focus on addressing misconceptions and highlighting the benefits of these interventions.

2. Improve transportation: Address the issue of distance to health facilities and unavailability of transportation by implementing strategies such as mobile clinics or transportation vouchers to facilitate access to ANC services for pregnant women.

3. Strengthen health infrastructure: Invest in improving the availability and quality of health facilities in rural areas to ensure that pregnant women have access to essential maternal health services.

4. Enhance community engagement: Engage community health workers and local leaders to promote ANC attendance and ITN use within their communities. This can be done through community meetings, home visits, and peer support groups.

5. Integrate ANC and ITN services: Emphasize the importance of ITN ownership and use as part of ANC services. This can be achieved by providing ITNs during ANC visits and educating pregnant women on proper ITN usage.

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 to measure the impact, such as ANC attendance rates, ITN ownership and utilization rates, and prevalence of malaria infection during pregnancy.

2. Baseline data collection: Collect baseline data on the selected indicators from the target population using surveys or other data collection methods. This data will serve as a reference point for comparison.

3. Implement interventions: Implement the recommended interventions, such as awareness campaigns, transportation initiatives, infrastructure improvements, and community engagement activities.

4. Post-intervention data collection: After a sufficient period of time, collect data on the same indicators from the target population to assess the impact of the interventions. This data will allow for a comparison with the baseline data and determine the effectiveness of the interventions.

5. Data analysis: Analyze the collected data using appropriate statistical methods to determine the changes in the selected indicators. This analysis will provide insights into the impact of the interventions on improving access to maternal health.

6. Evaluation and adjustment: Evaluate the results of the analysis and make any necessary adjustments to the interventions based on the findings. This iterative process will help refine the interventions and optimize their impact.

By following this methodology, it will be possible to simulate the impact of the recommended interventions on improving access to maternal health and assess their effectiveness in addressing the identified gaps.

Share this:
Facebook
Twitter
LinkedIn
WhatsApp
Email