Maternal and child supplementation with lipid-based nutrient supplements, but not child supplementation alone, decreases self-reported household food insecurity in some settings

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Study Justification:
– The study aimed to investigate whether providing lipid-based nutrient supplements (LNSs) to women during pregnancy and postpartum, and/or to their children, would impact self-reported household food insecurity in Malawi, Ghana, and Bangladesh.
– The study is important because it addresses the potential benefits of LNSs in improving household food security, which is a critical issue in many low-income settings.
Highlights:
– The study found that providing LNSs to women during pregnancy and the first 6 months postpartum, and/or to their children from 6 to 18-24 months, resulted in lower self-reported household food insecurity in some settings.
– In the DYAD-M trial in Malawi, households receiving LNSs had food insecurity scores that were 14% lower compared to non-LNS households.
– In the RDNS trial in Bangladesh, food insecurity scores were 17% lower during pregnancy and the first 6 months postpartum, and 15% lower from 6 to 24 months postpartum, in LNS households compared to non-LNS households.
Recommendations:
– The study suggests that providing LNSs to mothers and their children during the “first 1000 days” (from pregnancy to 2 years of age) may improve household food security in some settings.
– Policy makers could consider investing in LNSs as a strategy to promote child growth and development, with the additional benefit of improving household food security.
Key Role Players:
– Researchers and scientists involved in nutrition and public health
– Government officials and policymakers in the areas of health and nutrition
– Non-governmental organizations (NGOs) working in maternal and child health
– Community health workers and healthcare providers
– Local farmers and food producers
Cost Items for Planning Recommendations:
– Production and distribution of LNSs
– Training and capacity building for healthcare providers and community health workers
– Monitoring and evaluation of LNS programs
– Awareness campaigns and education materials for mothers and caregivers
– Research and data collection on the impact of LNSs on child growth and household food security
– Collaboration and coordination between different stakeholders and organizations

The strength of evidence for this abstract is 7 out of 10.
The evidence in the abstract is rated 7 because it provides results from multiple randomized trials and includes statistical analysis. However, the abstract does not provide detailed information about the study designs, sample sizes, or specific statistical methods used. To improve the evidence, the abstract could include more information about the study designs, sample sizes, and statistical methods used, as well as any limitations or potential biases in the studies.

Background: It is unknown whether self-reported measures of household food insecurity change in response to foodbased nutrient supplementation. Objective: We assessed the impacts of providing lipid-based nutrient supplements (LNSs) to women during pregnancy and postpartum and/or to their children on self-reported household food insecurity in Malawi [DOSE and DYAD trial in Malawi (DYAD-M)], Ghana [DYAD trial in Ghana (DYAD-G)], and Bangladesh [Rang-Din Nutrition Study (RDNS) trial]. Methods: Longitudinal household food-insecurity data were collected during 3 individually randomized trials and 1 clusterrandomized trial testing the efficacy or effectiveness of LNSs (generally 118 kcal/d). Seasonally adjusted Household Food Insecurity Access Scale (HFIAS) scores were constructed for 1127 DOSE households, 732 DYAD-M households, 1109 DYAD-G households, and 3671 RDNS households. The impact of providing LNSs to women during pregnancy and the first 6 mo postpartum and/or to their children from 6 to 18-24 mo on seasonally adjusted HFIAS scores was assessed by using negative binomial models (DOSE, DYAD-M, and DYAD-G trials) and mixed-effect negative binomial models (RDNS trial). Results: In the DOSE and DYAD-G trials, seasonally adjusted HFIAS scores were not different between the LNS and non-LNS groups. In the DYAD-M trial, the average household food-insecurity scores were 14% lower (P = 0.01) in LNS households than in non-LNS households. In the RDNS trial, compared with non-LNS households, food-insecurity scores were 17% lower (P = 0.02) during pregnancy and the first 6 mo postpartum and 15% lower (P = 0.02) at 6-24 mo postpartum in LNS households. Conclusions: The daily provision of LNSs to mothers and their children throughout much of the ”first 1000 d” may improve household food security in some settings, which could be viewed as an additional benefit that may accrue in households should policy makers choose to invest in LNSs to promote child growth and development.

The study designs for the 4 randomized trials have been described elsewhere in detail (12, 15, 18, 20) and are summarized in Table 1. The DOSE trial was designed to test the efficacy of various doses and formulations of LNSs for promoting child growth. Rolling enrollment of children was conducted from November 2009 to May 2011. At ∼6 mo of age, children were randomly assigned to 1 of 5 intervention groups or a delayed-intervention control group. Children in the intervention groups received daily LNSs for 12 mo in one of the following doses and formulations: 1) 10 g LNS containing milk powder, 2) 20 g LNS without milk powder, 3) 20 g LNS containing milk powder, 4) 40 g LNS without milk powder, or 5) 40 g LNS containing milk powder. The delayed-intervention control group received no supplementation during the 12-mo intervention period. All children in the trial, regardless of intervention group, received weekly morbidity surveillance and referral by study staff. Study designs1 A pair of randomized controlled trials known as the DYAD trials were conducted in Malawi (DYAD-M) and Ghana (DYAD-G) to test the efficacy of LNSs provided to women during pregnancy and the first 6 mo postpartum and to children from 6 to 18 mo of age on birth outcomes and child growth. Rolling enrollment of pregnant women who were at 10 times in the past 4 wk. The HFIAS score, a measure of the degree of food insecurity ranging from 0 to 27, was then calculated as the simple sum of the frequency-of-occurrence responses, where “never” was 0 points, “rarely” was 1 point, “sometimes” was 2 points, and “often” was 3 points. After the HFIAS questions were administered, respondents were then asked about strategies used to cope with food insecurity. The specific coping strategies were developed by using a subset of the generic strategies (23) and locally adapted through focus group discussions conducted at each site. The full text of the coping strategy questions, which were administered at each round of food-security data collection for the DOSE, DYAD-M, and DYAD-G trials and at 2 rounds of food-security data collection for RDNS, are available in Supplemental Methods 2. For the DOSE, DYAD-M, and DYAD-G trials (and to a much lesser extent for the RDNS trial), at each round of food-security data collection, there was substantial variation in the actual timing of data collection visits relative to when the visits were scheduled to occur. To compare food-security observations across households with a similar duration of exposure to the intervention in our analyses, instead of grouping food-security observation by round of data collection, observations were grouped by period, where each period represented a block of time relative to the age of the child enrolled in the trial (Table 2). Food-security data collection periods and sample sizes1 Women and children were randomly allocated to intervention groups across seasons during the rolling enrollment periods of each trial, but to account for possible imbalances across seasons in subsequent periods of food-security data collection, a seasonally adjusted HFIAS score was constructed. Seasons were identified using cropping calendars and personal communication with local contacts at each site, and seasons were defined as season by year (e.g., the lean season in 1 y was coded separately from the lean season in the following year) to allow for annual variation in seasonal food insecurity. With periods defined as in Table 2 corresponding to the child’s age, the seasonally adjusted HFIAS score for household i in season s and period p, was then defined in Equation 1 as: where was the average HFIAS score within the control group (IFA group in the case of the DYAD trials) in season s, and was the average HFIAS score within the control group (IFA group for DYAD trials) in period p. To preserve the integer nature of the score, seasonally adjusted HFIAS scores were rounded to the nearest integer, and negative scores were rounded to zero. The analyses were conducted by intent-to-treat and were performed separately for each trial. RDNS data from periods 1 and 2 were also analyzed separately from periods 3–5 because the combined intervention groups (described in Table 1) differed between the 2 sets of periods. Households with missed food-security visits were included in the analysis for all time points where data were available. In cases in which a food-security visit occurred far off schedule, resulting in 2 observations for the same household in one period, the visit closest to the scheduled date during that period was retained, and the other observation was dropped from the analysis. Analyses were conducted by using Stata 14 (StataCorp). The seasonally -adjusted HFIAS scores are essentially count data, and for all trials the distribution of scores was positively skewed. The effects of the DOSE, DYAD-M, and DYAD-G interventions on household food insecurity were therefore estimated by using negative binomial models with a household-level robust variance estimation to account for repeated measures. The RDNS models were estimated by using mixed-effect negative binomial models with random effects at 3 levels to account for the cluster design and the repeated measures: households nested within community health worker work areas, work areas nested within regional unions, and unions. All models included fixed effects for the period of food-security data collection. For the DOSE, DYAD-M, and DYAD-G trials, the scheduled baseline round of food-security data collection was done after random assignment for many, but not all, households, so the baseline round was omitted from those analyses. The baseline round was collected before random assignment for all RDNS households and was therefore included in all of the RDNS analyses as a covariate control. For all analyses, when the null hypothesis of no difference between intervention groups was rejected (P 2 intervention groups, P values for post hoc pairwise comparisons of PSRs were adjusted for multiple comparisons by using Sidak’s method (24). Interaction terms between intervention group and period of data collection were used to assess differences in the effect of intervention group by period and were further examined by estimating the group marginal means for each period. Models that included an additional set of prespecified baseline covariates were estimated to determine whether adjusting for the additional covariates improved the precision of the estimated effects (25). Baseline covariates were included in the fully adjusted models if they were associated with the seasonally adjusted HFIAS score at the 10% level of significance in bivariate analyses. For all trials, season of food-security data collection, maternal age, and level of education and household electrification were included in fully adjusted models. For DOSE, maternal marital status and household distance to a main market were also included in fully adjusted models. DYAD-M and DYAD-G adjustment covariates also included maternal parity and household distance to a main market, and DYAD-M additionally included maternal marital status. In addition to the baseline seasonally adjusted HFIAS score, which was included in all RDNS models, RDNS fully adjusted models also included maternal parity and maternal BMI (in kg/m2). Effect modification by each baseline covariate was assessed by including a group-by-covariate interaction term. When seasonally adjusted HFIAS scores were significantly different between intervention groups, secondary analyses of individual HFIAS questions and food-insecurity coping strategies were performed to understand the drivers of the effect. Responses to individual HFIAS questions as well as responses to questions about specific food-insecurity coping strategies were coded as dichotomous variables and analyzed by using logistic models with household-level robust variance or mixed-effect logistic models with random effects of union, cluster, and household.

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The study mentioned in the description explores the impact of providing lipid-based nutrient supplements (LNSs) to women during pregnancy and postpartum, as well as to their children, on self-reported household food insecurity in Malawi, Ghana, and Bangladesh. The results showed that providing LNSs to women during pregnancy and the first 6 months postpartum, and/or to their children from 6 to 18-24 months, can decrease self-reported household food insecurity in some settings.

Based on this study, here are some potential innovations that could be considered to improve access to maternal health:

1. Implementing LNS programs: Based on the findings of the study, implementing programs that provide LNSs to pregnant women and their children could be an effective way to improve access to maternal health. These programs could be integrated into existing healthcare systems or community-based initiatives.

2. Scaling up LNS production: To ensure widespread access to LNSs, there could be a focus on scaling up production and distribution of these supplements. This could involve partnerships with local manufacturers, ensuring quality control, and establishing efficient supply chains.

3. Community-based education and awareness: To increase the uptake of LNSs, community-based education and awareness campaigns could be conducted. These campaigns could provide information on the benefits of LNSs, how to access them, and how to incorporate them into daily diets.

4. Integration with antenatal care services: LNS provision could be integrated into existing antenatal care services. This would ensure that pregnant women have access to LNSs during their pregnancy and postpartum period, as well as receive other essential healthcare services.

5. Targeted interventions for vulnerable populations: The study found that LNS provision had a greater impact on reducing food insecurity in certain settings. Therefore, targeted interventions could be designed for vulnerable populations, such as those living in rural areas or with limited access to nutritious food.

6. Research and innovation: Continued research and innovation in the field of maternal health could lead to the development of new and improved interventions. This could include exploring alternative nutrient supplementation options, optimizing dosage and formulation, and identifying other factors that contribute to food insecurity during pregnancy and postpartum.

It is important to note that these recommendations are based on the specific findings of the mentioned study and may need to be adapted to the local context and resources available in different settings.
AI Innovations Description
The recommendation from the study is to provide lipid-based nutrient supplements (LNSs) to women during pregnancy and postpartum, as well as to their children, to improve access to maternal health. The study found that the provision of LNSs to mothers and their children can decrease self-reported household food insecurity in some settings. This suggests that providing LNSs can improve household food security, which is an important factor in ensuring access to adequate nutrition for pregnant women and their children. By investing in LNSs as a supplement, policy makers can promote child growth and development while also addressing food insecurity.
AI Innovations Methodology
Based on the provided description, the study examines the impact of providing lipid-based nutrient supplements (LNSs) to women during pregnancy and postpartum, as well as to their children, on self-reported household food insecurity in Malawi, Ghana, and Bangladesh. The study found that the provision of LNSs to mothers and their children may improve household food security in some settings.

To simulate the impact of these recommendations on improving access to maternal health, a methodology could be developed as follows:

1. Define the target population: Identify the specific population group that would benefit from improved access to maternal health. This could include pregnant women, postpartum women, or both.

2. Identify the key barriers to access: Determine the main factors that currently limit access to maternal health services in the target population. This could include factors such as geographical distance, lack of transportation, financial constraints, cultural beliefs, or limited availability of healthcare facilities.

3. Develop interventions: Based on the findings of the study, design interventions that address the identified barriers to access. For example, if geographical distance is a barrier, interventions could include establishing mobile clinics or providing transportation vouchers. If financial constraints are a barrier, interventions could include subsidizing the cost of maternal health services or providing financial assistance for transportation.

4. Simulate the impact: Use a modeling approach to simulate the impact of the interventions on improving access to maternal health. This could involve creating a mathematical model that incorporates factors such as population size, geographical distribution, healthcare infrastructure, and the effectiveness of the interventions. The model can then be used to estimate the potential increase in access to maternal health services resulting from the interventions.

5. Evaluate the outcomes: Assess the outcomes of the simulated interventions, such as the increase in the number of women accessing maternal health services, the reduction in maternal mortality rates, or improvements in maternal and child health outcomes. This evaluation can help determine the effectiveness of the interventions and guide decision-making on implementing them in real-world settings.

It is important to note that the methodology described above is a general framework and would need to be adapted and tailored to the specific context and resources available in each setting. Additionally, the simulation results should be interpreted with caution and validated through real-world implementation and evaluation.

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