Individual level and community level factors affecting exclusive breast feeding among infants under-six months in Ethiopia using multilevel analysis

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Study Justification:
The study aimed to investigate the individual level and community level factors that affect exclusive breastfeeding (EBF) among infants under six months in Ethiopia. This research is important because EBF is the safest and healthiest option for infants in their first six months, and promoting EBF can help prevent infant mortality and morbidity. Previous studies have mainly focused on individual level determinants using basic regression models in specific areas, so this study fills a gap by examining both individual and community level factors using multilevel analysis.
Highlights:
– The study used data from the 2016 Ethiopian Demographic and Health Survey (EDHS) and included 1185 infants under six months of age.
– Multilevel logistic regression analysis was conducted to identify determinants of EBF at both the individual and community levels.
– The results showed that several factors were significantly associated with EBF. At the individual level, factors such as age of the infant, gender, infant comorbidities, household wealth index, and antenatal care were found to be determinants of EBF. At the community level, contextual region, community level of postnatal visit, and community level of maternal employment were identified as determinants.
– The study found that 46.8% of the variation in EBF was explained by the combined factors at the individual and community levels.
– The findings suggest that promoting and enhancing antenatal and postnatal care services utilization, especially in the pastoralist regions, can help improve EBF rates.
Recommendations:
Based on the study findings, the following recommendations are made:
– Promote and enhance antenatal and postnatal care services utilization among mothers.
– Provide additional support and education for mothers of infants with comorbid conditions.
– Focus on improving EBF rates in the pastoralist regions.
– Increase awareness and education about the benefits of EBF at both the individual and community levels.
Key Role Players:
To address the recommendations, the following key role players are needed:
– Ministry of Health: Responsible for developing and implementing policies and programs related to maternal and child health, including breastfeeding promotion.
– Health Care Providers: Involved in providing antenatal and postnatal care services and offering support and education to mothers.
– Community Health Workers: Play a crucial role in educating and supporting mothers in the community.
– Non-Governmental Organizations (NGOs): Can contribute by implementing breastfeeding promotion programs and providing resources and support to mothers.
Cost Items:
While the actual cost of implementing the recommendations is not provided, the following cost items should be considered in planning:
– Training and capacity building for health care providers and community health workers.
– Development and dissemination of educational materials and resources.
– Awareness campaigns and community outreach programs.
– Monitoring and evaluation of breastfeeding promotion programs.
– Research and data collection to assess the impact of interventions.
Please note that the provided information is based on the description of the study and the publication mentioned.

The strength of evidence for this abstract is 8 out of 10.
The evidence in the abstract is strong because it is based on a secondary data analysis using a large sample size from the 2016 Ethiopian Demographic and Health Survey. The study employed a multilevel logistic regression model to investigate individual and community level factors associated with exclusive breastfeeding. The results show statistically significant determinants at both levels, and the model explains a significant proportion of the variation in exclusive breastfeeding. To improve the evidence, it would be beneficial to include more details about the sampling procedure and data collection methods, as well as provide information on potential limitations and generalizability of the findings.

Background: Exclusive breastfeeding (EBF) is the safest and healthiest option of feeding among infants in the first 6 months throughout the world. Thus, promotion of EBF is essential to prevent complex infant health problems even at the adulthood level. But majority of previous studies focused on individual level determinants of EBF by using basic regression models in localized areas. This study aims to identify individual level and community level determinants of EBF which would be helpful to design appropriate strategies in reducing infant mortality and morbidity. Methods: It is a secondary data analysis using the 2016 Ethiopian Demographic and Health Survey (EDHS) data. A total of 1185 infants under 6 months of age were included in the analysis. Multilevel logistic regression model was employed to investigate factors significantly associated with EBF among under-six month’s infants in Ethiopia. Adjusted odds ratio (AOR) with 95% confidence interval (CI) was used to measure the association of variables whereas Intra cluster correlation (ICC), median odds ratio (MOR), and proportional change in variance (PCV) were used to measure random effects (variation). Result: In multilevel logistic regression; 4–5 months age infant (AOR = 0.04, 95%CI:0.02–0.07), female infants (AOR = 2.51, 95%CI:1.61–3.91), infant comorbidities (AOR = 0.35, 95%CI: 0.21–0.57), household wealth index (AOR = 10.34, 95%CI: 3.14–34.03) and antenatal care (AOR = 2.25, 95%CI:1.32–3.82) were determinants of EBF at individual level. Whereas, contextual region (AOR = 0.30, 95% CI: 0.10–0.87), community level of postnatal visit (AOR = 2.77, 95% CI: 1.26–6.58) and community level of maternal employment (AOR = 2.8, 95% CI: 1.21–6.47) were determinants of EBF at community level. The full model showed up with higher PCV; that is, 46.8% of variation of exclusive breastfeeding was explained by the combined factors at the individual and community levels. Similarly, it showed that the variation in EBF across communities remained statistically significant (ICC = 8.77% and variance = 0.32 with P  75% of women are utilizing ANC) [25]. Community level of PNC utilization was the proportion of women within specific cluster who visit PNC for some number of times. It was categorized as low (when≤50% of women utilized PNC) and high (when> 50% of women utilized PNC) [25]. Community level of media exposure was an aggregate respondent level of exposure for different types of media categorized as “50% = high media utilized communities” [25]. Community level of poverty was an aggregate wealth index categorized as “50% = Low poverty communities” [25]. Contextual region Ethiopia is demarcated for administrative purpose into 11 regions, which are classified as agrarian, pastoralist and city based according to the living status of the population. The regions Tigray, Amhara, Oromia, SNNP, Gambella, and Benshangul Gumuz were categorized as agrarian. Somali and Afar regions were grouped to form pastoralist region and Harari region, Addis Ababa and Dire Dawa city administrations were grouped to form city based populations [14, 25]. Community level of women education was the proportion of women in the community who have primary or higher education, which was categorized as low (when≤25% of women were educated), middle (when 25–75% of women were educated) and high ((when > 75% of women were educated) [25]. Community level of employment status was the proportion of women who were employed (had work) in the specific cluster. It was categorized as low (when≤50% of mothers employed) and high (when> 50% of mothers were employed) [24, 25]. Data cleaning was done to check for consistency. Sample weight was used in order to compensate for the unequal probability of selection between the strata that were geographically defined, as well as for non-responses. Weighing of individual interview produces the proper representation of exclusive breastfeeding and related factors. Coding, recoding and exploratory analysis was performed. Categorization was done for continuous variables using information from different literatures and re-categorization was done for categorical variables accordingly. For data analysis STATA version 14.1 was used. Descriptive statistics was used to present frequencies, with percentages in tables and using texts. Four models were considered in the multilevel analysis to determine the model that best fits the data; Model one (Null model) without explanatory variable was developed to evaluate the null hypothesis that there is no cluster level difference in exclusive breast feeding practice that specified only the random intercept and it presented the total variance in exclusive breastfeeding practice among clusters. Model two adjusted for individual variable which assume cluster level difference of exclusive breastfeeding practice is zero. Model three to evaluate community level factors by aggregate cluster difference of exclusive breastfeeding practice. Model four included both adjusted individual and community level factors. The log of the probability of Exclusive breast feeding was modeled using two-level multilevel model as follows [26, 27]: Where, i and j are the level 1 (individual) and level 2 (community) units, respectively; X and Z refer to individual and community-level variables, respectively; πij is the probability of exclusive breastfeeding for the ith infant in the jth community; the β’s is the fixed coefficients. Whereas, β0 is the intercept-the effect on the probability of exclusive breastfeeding use in the absence of influence of predictors and uj showed the random effect (effect of the community on exclusive breastfeeding) for the jth community and eij showed random errors at the individual levels. By assuming each community had different intercept (β0) and fixed coefficient (β), the clustered data nature and the within and between community variations was taken in to account. Multilevel logistic regression analysis was used to analyze the data since it is appropriate for DHS data as it had a hierarchical nature. Multilevel modeling was providing unexplained variation in exclusive breast feeding due to unobserved cluster factors called random effect. All models included a random intercept at the cluster level to capture the heterogeneity among clusters. The measures of association (fixed-effects) estimate the association between likelihood of infants to exclusively breast feeding as the AOR with 95% CI of various explanatory variables were expressed. The crude association between independent variables and dependent variable was done independently and variables having p ≤ 0.2 in Bi-variable analysis were used to select to fit multivariable analysis model. At multivariable analysis variables with p ≤ 0.05 with confidence interval not including the null value (OR = 1) were considered as statistically significant variables with EBF practice. The measures of variation (random-effects) were reported using Intra-cluster correlation (ICC), Median Odds Ratio (MOR) and Proportional Change in Variance (PCV). ICC was used to explain cluster variation while MOR is a measure of unexplained cluster heterogeneity [27]. The ICC shows the variation in exclusive breastfeeding of infants under-six months of age due to community characteristics. The higher the ICC (ICC > 5%), the more relevant was the community characteristics for understanding individual variation in exclusive breastfeeding of infants. The ICC can be calculated as follows: [ICC= δ2uδ2u+δ2e] where δ2u = between group variation, δ2e = with in group variation OR [ICC= δ2δ2+π23], where δ2 is the estimated variance of clusters [26]. The STATA software command can also compute the ICC value of each model. MOR is defined as the median value of the odds ratio between the area at highest likelihood and the area at lowest likelihood of exclusive breastfeeding when randomly picking out two areas and it measures the unexplained cluster heterogeneity; the variation between clusters by comparing two persons from two randomly chosen different clusters. MOR can be calculated using the formula [MOR = exp.(2xδ2+0.6745) ≈ exp(0.95δ)] [26]. In this study MOR shows the extent to which the individual probability of being exclusively breast fed is determined by residential area. The proportional change in variance [PCV= (VA − VB)/VA) *100] where VA = Variance of initial model and VB=Variance of model with more terms measures the total variation attributed by individual level and community level factors in the multilevel model [26]. PCV was computed for each model with respect to the empty model as a reference to show power of the factors in the model explains exclusive breastfeeding practice. Log likelihood test, Deviance Information Criteria (DIC) and Akaike Information Criteria (AIC) were used to estimate the goodness of fit of the adjusted final model in comparison to the preceding models (individual and community level models), the model with the highest value of Log likelihood test and with lowest values of DIC and AIC was considered to be the best fit model. We have checked the presence of multi-collinearity between explanatory variables using standard Error (SE), Variance inflation factor (VIF), variance correlation estimator (VCE) and goodness of fit (gof). VIF < 7.5, VCE < 0.8, gof < 0.05, and SE in the range ± 2 were considered as no multicollinearity among independent variable. All of the results showed that no multicollinearity among independent variables. Ethical clearance was obtained from the Ethical Review Committee of College of Medicine and Health Sciences, Wollo University with approval and supporting letter. Permission to access the data set was obtained from Measure DHS International Program. The data was only used for purpose of this study and not shared to the third party. All data used in this study were anonymous publicly available and aggregated secondary data with not having any personal identity. The data was fully available in the full DHS website (www.measuredhs.com).

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

1. Mobile Health (mHealth) Applications: Develop and implement mobile applications that provide information and support to pregnant women and new mothers. These apps can provide guidance on exclusive breastfeeding, nutrition, and maternal health care, as well as reminders for antenatal and postnatal care appointments.

2. Telemedicine Services: Establish telemedicine services that allow pregnant women and new mothers in remote areas to consult with healthcare professionals via video calls or phone calls. This can help address the lack of access to healthcare facilities and provide guidance on breastfeeding and other maternal health concerns.

3. Community Health Workers: Train and deploy community health workers to provide education and support to pregnant women and new mothers in their communities. These workers can conduct home visits, provide breastfeeding counseling, and refer women to appropriate healthcare services.

4. Maternal Health Clinics: Set up dedicated maternal health clinics in rural and underserved areas, staffed by trained healthcare professionals. These clinics can offer antenatal and postnatal care, breastfeeding support, and education on maternal and infant health.

5. Public Awareness Campaigns: Launch public awareness campaigns to promote the importance of exclusive breastfeeding and maternal health. These campaigns can use various media channels, such as radio, television, and social media, to reach a wide audience and provide information on the benefits of breastfeeding and available support services.

6. Financial Incentives: Introduce financial incentives, such as cash transfers or vouchers, to encourage pregnant women and new mothers to seek antenatal and postnatal care, including breastfeeding support. These incentives can help overcome financial barriers and increase access to essential healthcare services.

7. Partnerships with Non-Governmental Organizations (NGOs): Collaborate with NGOs that specialize in maternal and child health to implement programs and initiatives aimed at improving access to breastfeeding support and maternal healthcare services. These partnerships can leverage the expertise and resources of NGOs to reach more women in need.

It is important to note that the specific context and needs of the Ethiopian population should be taken into consideration when implementing these innovations.
AI Innovations Description
The study conducted in Ethiopia aimed to identify individual and community level factors affecting exclusive breastfeeding (EBF) among infants under six months of age. The study used data from the 2016 Ethiopian Demographic and Health Survey (EDHS) and included a total of 1185 infants.

The findings of the study revealed several determinants of EBF at both the individual and community levels. At the individual level, factors such as the age of the infant (4-5 months), female infants, infant comorbidities, household wealth index, and antenatal care were found to be significantly associated with EBF. At the community level, contextual region, community level of postnatal visit, and community level of maternal employment were identified as determinants of EBF.

The study also showed that 46.8% of the variation in exclusive breastfeeding was explained by the combined factors at the individual and community levels. The variation in EBF across communities remained statistically significant, indicating the importance of both individual and community level factors.

Based on the findings, the study recommends promoting and enhancing antenatal and postnatal care services utilization among mothers. Additionally, more emphasis should be given to infants with comorbid conditions and those living in pastoralist regions. These recommendations aim to improve access to maternal health and reduce infant mortality and morbidity.

It is important to note that the study was conducted in Ethiopia, which has a predominantly rural population. The findings may not be directly applicable to other settings, but the recommendations can serve as a starting point for developing innovations to improve access to maternal health in other contexts.
AI Innovations Methodology
The study you provided focuses on identifying individual and community-level factors that affect exclusive breastfeeding (EBF) among infants under six months in Ethiopia. The methodology used in this study is a secondary data analysis using the 2016 Ethiopian Demographic and Health Survey (EDHS) data.

Here is a brief description of the methodology used in the study:

1. Study Design: The study employed a community-based cross-sectional design to identify individual and community-level factors affecting EBF among infants under six months.

2. Sample Selection: A total of 1,185 infants under six months of age were included in the analysis. The sample was selected using a stratified two-stage cluster sampling technique, with enumeration areas (EAs) as the primary sampling units and households as the secondary sampling units.

3. Data Collection: The data used in the study was obtained from the 2016 EDHS, which was conducted from January 18 to June 27, 2016. A structured and pretested questionnaire was used for data collection during the survey.

4. Variables: The study considered various individual and community-level variables as potential determinants of EBF. Individual-level variables included infant-related factors, maternal socio-demographic factors, and obstetric and healthcare-associated factors. Community-level variables included contextual region, community media exposure, community wealth index, community women education, community ANC utilization, community level of employment, and community PNC utilization.

5. Data Analysis: Multilevel logistic regression analysis was used to analyze the data. Four models were considered to determine the best fit model. Model 1 (Null model) evaluated the null hypothesis of no cluster-level difference in EBF practice. Model 2 adjusted for individual-level variables, Model 3 evaluated community-level factors, and Model 4 included both adjusted individual and community-level factors. Adjusted odds ratios (AOR) with 95% confidence intervals (CI) were used to measure the association of variables. Measures of variation, such as Intra-cluster correlation (ICC), Median Odds Ratio (MOR), and Proportional Change in Variance (PCV), were used to assess random effects and explain cluster variation.

6. Ethical Considerations: Ethical clearance was obtained from the Ethical Review Committee of College of Medicine and Health Sciences, Wollo University. Permission to access the data set was obtained from Measure DHS International Program, and the data used in the study were anonymous and publicly available.

In conclusion, this study used a secondary data analysis approach to identify individual and community-level factors affecting EBF among infants under six months in Ethiopia. The methodology employed multilevel logistic regression analysis and various measures of variation to assess the impact of these factors on EBF practice. The findings of the study can be used to inform strategies aimed at promoting and enhancing antenatal and postnatal care services utilization, especially for mothers with comorbid conditions and those living in pastoralist regions.

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