ALIMUS—We are feeding! Study protocol of a multi-center, cluster-randomized controlled trial on the effects of a home garden and nutrition counseling intervention to reduce child undernutrition in rural Burkina Faso and Kenya

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Study Justification:
– Climate change has a significant impact on child nutritional status in sub-Saharan Africa.
– Agricultural and dietary diversification are potential strategies to address agricultural yield losses and nutrient deficits.
– However, rigorous impact evaluation of these strategies is lacking.
– The ALIMUS study aims to determine the potential of a home gardening and nutrition counseling program as a climate change adaptation strategy to improve child health in rural Burkina Faso and Kenya.
Highlights:
– The study is a multi-center, cluster-randomized controlled trial conducted in North-Western Burkina Faso and South-Eastern Kenya.
– The intervention involves the bio-diversification of horticultural home gardens and nutritional health counseling using the 7 Essential Nutrition Action messages by the World Health Organization.
– The primary health outcome measured is the height-for-age z-score, with secondary outcomes including other anthropometric indices, iron and zinc status, dietary behavior, malaria indicators, and household socioeconomic status.
– The study aims to establish the potential of the intervention to improve the nutritional status of young children in rural sub-Saharan Africa.
Recommendations:
– If the intervention proves to be effective, consider offering the program to control households as well.
– Collaborate closely with the local Ministries of Agriculture and Ministries of Health to support the intervention and ensure its sustainability.
– Disseminate the results of the study through peer-reviewed journals, international conferences, educational seminars, and engagement with local government representatives, civil society organizations, and community leaders.
Key Role Players:
– Health Research Center (CRSN) in Nouna, Burkina Faso
– Kenya Medical Research Institute (KEMRI)-Kisumu
– DEZLY Consulting (Burkina Faso)
– Nouna Agricultural Service (Burkina Faso)
– Centre for African Bio-Entrepreneurship (CABE) (Kenya)
– Local Ministries of Agriculture and Ministries of Health
Cost Items for Planning Recommendations:
– Procurement of inputs and equipment for home garden component
– Procurement of research equipment and consumables
– Payment of research personnel
– Training and supervision of garden leaders and community health volunteers
– Monitoring and evaluation activities
– Referral to health care facilities for appropriate treatment
– Dissemination of study results through publications, conferences, and seminars
Please note that the above cost items are examples and not actual costs. The actual budget will depend on various factors and should be determined through detailed planning and consultation with relevant stakeholders.

The strength of evidence for this abstract is 7 out of 10.
The evidence in the abstract is strong as it describes a multi-center, cluster-randomized controlled trial with a clear study protocol. The study aims to determine the potential of a home gardening and nutrition counseling program to improve child health in rural Burkina Faso and Kenya. The methods are well-described, including the recruitment process, intervention components, and outcome measures. The trial registration number is provided. However, to improve the evidence, the abstract could include more details on the sample size calculation, randomization process, and statistical analysis plan.

Background: Climate change heavily affects child nutritional status in sub-Saharan Africa. Agricultural and dietary diversification are promising tools to balance agricultural yield losses and nutrient deficits in crops. However, rigorous impact evaluation of such adaptation strategies is lacking. This project will determine the potential of an integrated home gardening and nutrition counseling program as one possible climate change adaptation strategy to improve child health in rural Burkina Faso and Kenya. Methods: Based on careful co-design with stakeholders and beneficiaries, we conduct a multi-center, cluster-randomized controlled trial with 2 × 600 households in North-Western Burkina Faso and in South-Eastern Kenya. We recruit households with children at the age of complementary feed introduction (6–24 months) and with access to water sources. The intervention comprises the bio-diversification of horticultural home gardens and nutritional health counseling, using the 7 Essential Nutrition Action messages by the World Health Organization. After 12-months of follow-up, we will determine the intervention effect on the primary health outcome height-for-age z-score, using multi-level mixed models in an intention-to-treat approach. Secondary outcomes comprise other anthropometric indices, iron and zinc status, dietary behavior, malaria indicators, and household socioeconomic status. Discussion: This project will establish the potential of a home gardening and nutrition counseling program to counteract climate change-related quantitative and qualitative agricultural losses, thereby improving the nutritional status among young children in rural sub-Saharan Africa. Trial registration: German Clinical Trials Register (DRKS) DRKS00019076. Registered on 27 July 2021.

ALIMUS will be conducted in the Nouna area of North-Western Burkina Faso and in the Siaya region of South-Eastern Kenya. We apply the multi-center, cluster-RCT within the Health and Demographic Surveillances Systems (HDSS) in Nouna, Burkina Faso and in Siaya, Kenya. Both were established in the early 1990s. The Nouna HDSS comprises of 59 contiguous villages in an area of 1775 km2 with a representative population of 115,000 inhabitants in 14,000 households [24, 25]. The Siaya HDSS is more population-dense; it contains 385 villages in an area of 700 km2 with 220,000 inhabitants in 54,869 households [26]. With regard to climatic and topological characteristics, the two study sites differ: Nouna experiences one rainy season per year (June to October), while there are two rainy seasons in Siaya (March to May and October to December). Average temperatures in Nouna (20–37 °C) are higher than those in the highlands of Siaya (17–35 °C). Concerning the population structure, both study sites are characterized by smallholder subsistence farming, which is complemented by cattle herding in the Nouna region and by fishing in the Siaya areas surrounding Lake Victoria. In North-West Burkina Faso, the major food crops are millet, sorghum, maize, peanuts, and sesame. In Western Kenya, they are maize, beans, sweet potatoes, sorghum, rice, and cassava. The typical diets in both regions are based on starchy staples and legumes [27]. Siaya and Nouna have similar proportions of child stunting, 26% vs. 21% respectively [28, 29]. The difference may be due to the high incidence of the human immunodeficiency virus (HIV) infection in Western Kenya (3/1000 person-years vs. 0.3/1000 person-years). In contrast, the prevalence of anemia is higher in Nouna (50% vs. 80%), possibly reflecting the poor micronutrient adequacy and the intense malaria transmission. In both study areas, malaria is endemic either during the rainy season (Nouna) or throughout the year (Siaya) with 30-50% of the children < 5 years being affected [30, 31]. In both study sites, the same eligibility criteria apply for participating households. A household is defined as “an independent socio-economic unit. Household members usually live in the same house or compound, pulling resources together to meet basic dietary and other vital needs under the authority of one person recognized as the head of the household” [25]. The eligibility criteria are as follows: location within a 5-km radius for Kenya and a 10-km radius for Burkina Faso of one of five local weather stations (Fig. 2), permanent residence in the HDSS area; access to at least 40 m2 land, access to water for implementing and sustaining a home garden, having a child at the age of supplementary feed introduction (6 to 24 months), and providing informed written consent by the caregiver. Map of the study villages in the Nouna Health and Demographic Surveillance System (HDSS), Burkina Faso (A) and the Kisumu HDSS, Kenya (B). Note: In the Kisumu HDSS, the villages are close together and, thus, separated by wider boundaries shown as polygons. All the villages located within the 5 km radii of the weather stations in the Kisumu HDSS are included in the study. In contrast, the villages in the Nouna HDSS, marked by black dots and blue diamonds, are widely spread; therefore, the weather stations cover a 10-km radii. Only some villages were randomly selected for inclusion in our study, which are marked with a blue diamond Prior to the program implementation, relevant authorities of the selected study villages (village chiefs and mayors) will be informed about the study aims and objectives by the Nouna CRSN and by the KEMRI-Kisumu. During the recruitment process, the participants will receive the participant information form, which will be read-out and explained to them. All questions will be answered by the project staff. All questionnaires, participant information forms, consent forms, and additional material will be made available in French for Burkina Faso and in English and Luo for Kenya. In addition, the interviewers will be trained to explain the content of the participant information forms in Djoula and Mooré in Burkina Faso and in Swahili in Kenya. All caregivers will give informed written consent. These items are part of the original consent form. This trial does not involve collecting biological specimens for storage. For the allocation of intervention arms, we apply simple randomization, treating the households as intervention clusters. At each site, the main data manager of the baseline survey produces a computer-generated sequence of households that are allocated to either the intervention group or the control group, applying the PPS approach. The implementation partners for home gardens (DEZLY Consulting, the Nouna Agricultural Service and CABE) and the lead dieticians for nutrition counseling use these lists of randomized households to implement the intervention components. As this is a behavior change trial, blinding the participants and or the implementation team is not possible. All participating households in the ALIMUS trial benefit from trimonthly follow-up visits by a research study team (not Community Health Volunteers (CHVs). During these follow-up visits, the study team takes anthropometric measures and examines iron and zinc status of the target child. We also assess signs and symptoms of clinical malaria and provide diagnostic tests if a child has fever, shivers, a headache, or diarrhea. In case of sickness, the child and the caregiver are referred to the nearest health care facility for appropriate treatment. For the control group, we provide standard information on healthy feeding practices. This comprises one group counseling session on the Essential Nutrition Action (ENA) messages, but no tailored individual sessions afterwards. During the group counseling, we hand-out an information leaflet corresponding to the ENA messages. The intervention program has two components: bio-diversification by means of home gardens and dietary diversification through behavior change communication. The intervention period will last for at least 1 year. For the home garden component, we apply the following definition. Home gardens are small plots (< 40 m2) located near the house for growing vegetables and/or fruits, primarily for the household’s own food consumption. For home garden implementation, we collaborate with three experienced local partner organizations. In Burkina Faso, we work with DEZLY Consulting, a consulting service organization (CSO), and the Nouna Agricultural Service, and in Kenya, we collaborate with the NGO Centre for African Bio-Entrepreneurship (CABE). The intervention activities by partner organizations comprise sensitization of community members, distributing inputs, and providing training to garden leaders. These garden leaders come from the participating communities with one garden leader being responsible for approximately 20 beneficiary households. They have experience in home gardening, are respected members of their communities, have independent means of transportation, and are committed to working as volunteers in this project. In two phases, garden leaders are trained by DEZLY Consulting and the Nouna Agricultural Service in Burkina Faso and by CABE in Kenya on theoretical and practical aspects of home gardening. The first phase (months 1 to 3) focuses on the establishment of the home gardens, while the second phase (months 9 to 12) concentrates on the long-term viability of the gardens and a potential market access through garden produce surplus. The training elements comprise the selection of garden types and horticultural crops, marking and fencing the gardens, seed production and multiplication, methods of manure creation and composting, soil preparation, weeding and plant protection, harvesting, and food storage. We purposefully employ only climate-friendly and durable inputs and processes, such as local products for fencing and construction, participatory selection of indigenous crops that meet the beneficiaries’ preferences and are not genetically engineered. We also exclusively collaborate with regional seed providers and use organic pesticides and fertilizers. For refresher trainings and trouble-shooting, two extension officers per study site will be appointed by DEZLY Consulting in collaboration with the local Agricultural Service in Burkina Faso, and by CABE in Kenya. In regard to the behavior change communication component, at each study site, one formally trained dietician is responsible for training and supervising CHVs. Each CHV provides nutrition counseling to about 20 households at each study site. CHVs are members of their communities appointed by the local authorities of the Ministry of Health. They have minimal training in maternal and child health or nursing and are of the same ethnic background as the ALIMUS beneficiaries. Half of the CHVs are males. The content of the nutrition counseling is sourced from the 7 ENA messages by the World Health Organization (WHO) [32]. These ENA messages are implemented in the form of the Infant and Young Child Feeding (IYCF) Cards by the Ministries of Health in Burkina Faso and Kenya. The 7 ENA messages comprise the following: (1) children’s nutritional needs (calories, protein, micronutrients), (2) breastfeeding practices, (3) complementary feeding practices, (4) nutritional care for sick and severely malnourished children, (5) prevention and control of anemia (zinc, iron), (6) prevention and control of vitamin A deficiency, and (7) prevention and control of iodine deficiency. Nutrition counseling is provided to the beneficiaries in group sessions at the beginning of the intervention and during individual sessions in the beneficiaries’ household every 2 months. Just as the different IYCF Cards target different age groups, the individual nutrition counseling sessions are also tailored to the feeding stages of the target child. The project team closely collaborates with the local Ministries of Agriculture and Ministries of Health. In case we will observe clinically relevant improvements in the nutritional status after 1 year of the intervention, we will seek their support for offering the program to the control households, too. Adherence to the intervention will be supported through regular contacts to the beneficiaries during training sessions on home gardening and individual nutrition counseling. We will closely monitor the uptake of inputs such as seeds and garden tools, as well as the participation in all sessions. No concomitant care prohibited. No provision of post-trial care. The ALIMUS trial targets as the primary outcome the height-for-age z-score (HAZ) of the target children after 12 months of follow-up according to the 2006 WHO Child Growth Standards [33]. Secondary outcomes comprise additional anthropometric z-scores (weight-for-height (WHZ) and weight-for-age (WAZ)) after the 12 months intervention period; measures of dietary behavior at endline, including energy intake, consumption of macronutrients and micronutrients, food group intakes, indices of dietary diversity, and exploratory dietary patterns; the nutritional status of iron and zinc measured by hand-held spectrometry at endline; the incidence of clinical malaria; and the socio-economic status of the household. At both study sites, each participant is followed-up for at least 1 year, with a possible extension of an additional year (Table 1). After community sensitization, eligibility screening and consent taking, we perform baseline examinations over the course of 3 months. We then randomize households and allocate them to either the intervention group (n = 300 at each site) or the control group (n = 300 at each site). In groups of 20 beneficiaries, the intervention group participants receive trainings in setting up their gardens by their respective garden leader and counseling sessions on healthy child feeding practices by CHVs. Every 2 months, garden leaders and CHVs actively visit the intervention households for guidance on home garden practices and individual dietary counseling. In 3 month intervals, we integrate anthropometric measurements and assessments of micronutrient status and clinical malaria into this schedule. After the first 6 months of the intervention, refresher trainings of the beneficiaries for home garden practices are conducted in the form of group sessions. After another 6 months (1 year since start), we conduct endline examinations for the primary and secondary outcomes among all study participants. In addition, we monitor inputs and outputs according to the three major impact pathways throughout the intervention phase. Activity timeline for the ALIMUS trial in rural Burkina Faso and Kenya aOnly for the intervention groups bOnly in Kenya In order to identify the required sample size for this RCT, we referred to the parallel group- or cluster-randomized trials (GRT) Sample Size Calculator of the USA National Institutes of Health (NIH) (https://researchmethodsresources.nih.gov/). The sample size was calculated based on the primary outcome child HAZ, assuming a group difference in mean HAZ ranging between 0.18 to 0.25. At a significance level of 0.05, a statistical power of 80%, an intra-class correlation coefficient (ICC) of 0.05, and with 2 children per household (=cluster), the sample size ranges from 135 households (difference in mean HAZ of 0.25) to 260 households (difference in mean HAZ of 0.18). Therefore, at each study site, we set the sample size to 300 households in the intervention group and 300 households in the control group, accounting for potential attrition and loss to follow-up. This sample size will allow the detection of a difference in the incidence of clinical malaria of 0.16 standard deviation (SD), under the same assumptions. The participants will be recruited within the two existing HDSS in Nouna, Burkina Faso, and in Siaya, Kenya. The recruitments will be conducted by the Health Research Center (CRSN) in Nouna and by the Kenya Medical Research Institute (KEMRI)-Kisumu. These institutions have long-standing expertise in conducting demographic and health surveys in the target populations, including community sensitization and data collection. For each study site, we will establish a sampling frame of 2000 households with children below 5 years of age and within a 5- or 10-km radius of local weather stations, respective of study site. These households will be selected with a probability proportional to population size (PPS), according to the latest census. Of these, we will recruit 600 households at each study site with children who fulfill the eligibility criteria. At each site, the main data manager of the baseline survey will produce a computer-generated sequence of households stratified by the 5 weather stations. Using PPS, the households will be randomized into either the intervention group or the control group. Study beneficiaries are selected through randomization via Stata using computer-generated random numbers. There is no human involvement, and the process is fully concealed from both study investigators and prospective participants during baseline measurements and until the study arm is assigned. Based on the randomization, the field supervisor will allocate the households to the intervention groups. The study group will be revealed at the same time to the participating households, the implementation team, and the field agents. As this is a behavior change intervention, neither blinding of the participants nor of the implementation team is feasible. The data analysts will be blinded. The study design is openly labeled, and so, unblinding will not be possible. Two quantitative surveys are conducted at baseline and endline of the ALIMUS trial. These surveys comprise questionnaire-based interviews on demographic and socioeconomic characteristics, medical history, dietary information, anthropometric measurements, micronutrient status through hand-held spectrometry, body temperature, and laboratory measurements for hemoglobin concentration (Hb) and malaria diagnosis. All project personnel are thoroughly trained and work according to Standard Operating Procedures (SOPs). The study team consists of field agents who conduct the questionnaire-based interviews and anthropometric examinations; laboratory technicians who perform the blood sample collection, body temperature and Hb measurements, hand-held spectrometry and malaria diagnosis; and a monitoring team who document monetary and opportunity costs of the intervention, knowledge gain, training and counseling activities, and garden yields. The data collection instruments and variables measured are presented in Table 2. Variables measured and data collection instruments in the ALIMUS trial 1. Mother’s education (categorical), mother’s occupation (categorical), mother’s marital status (categorical) 2. Number of people in the household (continuous) 3. Type of housing (roof, wall, ground), access to and type of water source (categorical), access to and type of toilet and electricity (categorical), availability of 14 household assets (yes/no), availability of 9 animals (yes/no) 4. Main source and amount of income (categorical and continuous), main type and amount of household expenditures (categorical and continuous) 1. Questionnaire 2. Questionnaire 3. Questionnaire 4. Questionnaire 1. Breastfeeding (starting age, ending age) 2. Complementary feeding (starting age) 3. Usual food intake 1. Questionnaire 2. Questionnaire 3. African-specific Food Propensity Questionnaire (AFPQ) 1. Anthropometry [length/height (cm), weight (kg), mid-upper arm circumference (cm)] 2. Food insecurity 3. Hemoglobin concentration (Hb) 4. Functional status of iron and zinc 1. Measuring board SECA 417; stadiometer SECA 213; weighing scale SECA 878 2. Household Food Insecurity Access Scale (HFIAS); Household Hunger Scale (HHS) [34, 35] 3. HemoCue Hb 201+, HemoCue, Germany 4. Hand-held spectrometer (Zell-Check®, 2019) 1. Body temperature (°C) 2. Self-reported history of fever in the past 48 h (yes/no) 3. Self-reported symptoms of malaria in the past 48 h (yes/no) 4. Malaria parasites (yes/no); parasite count (/μL) 1. Axillary measurement 2. Questionnaire 3. Questionnaire 4. Thick blood film and microscopy 1. Inputs to home gardens and nutrition counseling 2. Outputs from home gardens 3. Knowledge gain from home garden training and nutrition counseling 1. Assets and activity tracking cards 2. Garden diary 3. Qualitative interview guides The questionnaire-based modules were previously applied in a cohort study in the Nouna HDSS area [27] and are adapted to the purposes of the ALIMUS project. We assess the usual dietary intake among children using the African Food Propensity Questionnaire (AFPQ), which is a modified version of the Ghana-Food Propensity Questionnaire [36]. It queries the usual intake frequencies of 134 food groups in pre-defined portion sizes over the past 6 months. We use the West African Food Composition Table [37] and the Kenya Food Composition Tables [38] to translate food group intakes (g/d) into energy (kcal/d), macronutrients (energy), and micronutrients (mg/d). During physical examinations, we obtain all anthropometric measurements in light clothes. Length and height are measured to the nearest cm and weight to the nearest 100 g. For children who are < 85 cm, recumbent length is obtained. For mothers and for children who can stand alone and are ≥ 85 cm, we measure standing height. Body weight is measured on a mother-and-child weighing scale. We measure body temperature of the children using an automated forehead thermometer. Hand-held cutaneous spectroscopy is used to determine the functional status of zinc and iron of the children. This laser spectroscopic technique converts inelastically scattered light from human skin into the tissue content of micronutrient compounds [39]. For laboratory examinations, we collect capillary blood samples of children. Hb is measured by hand-held photometer, and malaria parasites are microscopically identified on Giemsa-stained (4%, 30 min, pH 7.2) thick blood films. We calculate parasite density by examining microscopy fields corresponding to 400 white blood cells (WBCs), assuming an average WBC count of 8000/μL. Asymptomatic malaria is defined as the absence of fever (< 37.5 °C) and the presence of any Plasmodium spc.; clinical malaria denotes any parasite density plus fever (≥ 37.5 °C) or a history of fever within the last 48 h; and severe malaria is defined according to WHO criteria [40]. For the process monitoring, we employ tracking cards to document project inputs and activities, including equipment and seeds, garden trainings, and nutrition counseling sessions. In addition, the extension officers record the horticultural outputs in garden diaries. We conduct in-depth interviews and apply a deductive analysis strategy using pre-defined knowledge categories for home gardening and child feeding practices. Adherence to the intervention will be supported through regular contacts to the beneficiaries during training sessions on home gardening and individual nutrition counseling. We will closely monitor the uptake of inputs such as seeds and garden tools, as well as the participation in all sessions. The data will be collected on tablets using the data entry software SurveySolutions (version 21.09, World Bank). The data will be checked daily by the field supervisors and weekly by the principal investigator. We ensure high data quality through regular de-briefings on the data collection and data entry procedures. The collected data will be stored securely as password-protected files (encrypted storage devices) and will be ultimately stored on the institutional cloud server at the Heidelberg Institute of Global Health (HIGH), Germany. We ensure complete confidentiality of the data. Informed consent forms, laboratory books, and other participant-related documents will be safely stored during study conduct at the HDSS research centers in Burkina Faso and Kenya. All data and samples will be pseudonymized for analysis. The research data will be stored securely and password-protected throughout the data collection and processing stages. A digital exchange platform (secured and encrypted) at the Heidelberg University Computing Center will be used for the ALIMUS trial. All data collected will be stored in Microsoft-SQL databases that have been designed based on the Reference Demographic Surveillance Data Model, facilitating productive cross-collaboration efforts. According to the rules of good scientific practice, research data of this project will be archived for at least 10 years. No genetic or molecular analysis of biological material is planned in this trial. Demographic, socio-economic, and nutritional and dietary as well as clinical characteristics of the study population will be presented as means and SDs for continuous normally distributed variables, as medians and interquartile ranges (IQRs) for skewed data, and as percentages and counts (N) for categorical data. We will use parametric hypothesis tests to compare cross-sectional baseline characteristics between the control and the intervention groups on both levels, namely households and participants. For the characterization of dietary practices, we will employ exploratory and hypothesis-based dietary pattern analyses. These comprise principal component analysis (PCA) for the data-driven dietary patterns and the construction of diet quality scores. The latter includes the dietary diversity score (DDS), the food variety score (FVS), the minimum dietary diversity (MDD), the minimum meal frequency (MMF), the minimum acceptable diet (MAD), and the mean adequacy ratios (MAR). The intervention effects will be determined using an intention-to-treat approach, and will be stratified by study site. We will model the primary outcome HAZ as the dependent variable and the intervention group as the independent variable in a multi-level linear regression analysis in order to obtain group-differences in mean HAZ at the end of the intervention period. The same regression analysis will be applied for all other continuous outcome variables measured at endline. For categorical outcome variables, we will use Cox regression; for the incidence of clinical malaria, we will employ negative binomial regression. We will adjust for potential imbalances in the baseline characteristics. In addition to adjustments, we will perform difference-in-differences (DID) analyses to control for unmeasured confounding. These DID estimates compare the change in outcome variables from endline to baseline examinations between the intervention and the control group [41]. For the budget impact analysis of the ALIMUS trial, we adhere to the Consolidated Health Economic Evaluation Reporting Standards (CHEERS) Statement [42] and will use the activity-based costing (ABC) approach. No interim analyses will be conducted. The results will only be analyzed at the end of the intervention (after 1 year). In addition to adjustments, we will perform difference-in-difference (DID) analyses to control for unmeasured confounding. These DID estimates compare the change in outcome variables from endline to baseline examinations between the intervention and the control group [41]. Also, we will conduct sub-group analysis according to age group of the children and by location of the weather station. We will conduct per protocol analysis and compare it the intention-to-treat analysis. The data can be made available by the principle investigators for research purposes only, upon an agreed analysis proposal, and after signing a data transfer agreement. This is a multi-center study designed and coordinated by three institutions: HIGH, Heidelberg University, Heidelberg, Germany; CRSN, Nouna, Burkina Faso; and KEMRI, Kisumu, Kenya. The trials are performed in the Nouna HDSS area, Burkina Faso, and in the Siaya HDSS area, Kenya. Day-to-day support for the trial is provided by one principal nutrition counselor and two home garden officers, respectively. They run daily debriefings with CHVs as well as with garden leaders. The principal nutrition counselors and the home garden officers are also the contact persons for the on-site finance officers of the local partner organizations. The finance officers at CABE and DEZLY are responsible for procurement of inputs and equipment for the home garden component, while the finance officers at CRSN and KEMRI take care of the procurement of research equipment and consumables and the payment of research personnel. The trial steering committee consists of three investigators, representing one of the three research institutions as well as two coordinating scientists, who virtually meet in bi-weekly intervals for overall management and trouble-shooting. A formal data monitoring committee (DMC) was not established as this is a low-risk intervention. However, each of the three research institutions allocates one independent data manager. This data manager will conduct plausibility checks, data cleaning, and analysis. The sponsors play no role in data management, analysis, and interpretation of findings. Thus, the data managers have no competing interests. During bi-weekly meetings, data managers will report their observations from plausibility checks and interim analysis to the steering committee. The implementation teams at each study site are equipped with monitoring tools to document referrals to the nearest health facility and the reasons for referral. We also capture reasons for lost to follow-up, including deaths. The steering committee and informal data monitoring team meet online bi-weekly to review the conduct of the trial. This includes the review of adherence to intervention components, logistical aspects, feedback from beneficiary households, completeness and quality of collected data, and adherence to milestones. Also, regular exchange about the trial progress is assured via phone calls and short messages. Any modifications to the study protocol, which may impact on the conduct of the study, potential benefit of the study participants or participant safety, including changes of study objectives, study design, participant population, sample size, study procedures, or essential administrative aspects, will require a formal amendment to the protocol. Amendments will be agreed upon by the principal study investigators and approved by the Ethics Committees in Heidelberg, Nouna, and Kisumu prior to implementation. Regular updates of the ALIMUS project will be presented on the project website www.cch-africa.de/climate-sensitive-nutrients/. Results of the ALIMUS trial will be published in peer-reviewed high-ranked journals, disseminated via international conferences, shared in educational seminars, and reported to relevant stakeholders. The study also aims to reach the policy community first through engaging with local government representatives, civil society organizations, and community leaders in Nouna and Siaya. In addition, we will exchange with international actors in the nutrition, agriculture, energy and climate sectors, and institutions dealing with family affairs and education.

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

1. Mobile Health (mHealth) Solutions: Develop and implement mobile applications or text messaging services to provide pregnant women and new mothers with information and reminders about prenatal care, nutrition, and postpartum care. These tools can also facilitate communication between healthcare providers and patients, allowing for remote consultations and monitoring.

2. Telemedicine: Establish telemedicine services to provide remote consultations and medical advice to pregnant women in rural areas. This can help overcome geographical barriers and improve access to specialized care, especially for high-risk pregnancies.

3. Community Health Workers: Train and deploy community health workers (CHWs) to provide maternal health education, counseling, and basic healthcare services in remote areas. CHWs can play a crucial role in identifying and referring high-risk pregnancies, promoting healthy behaviors, and providing support during pregnancy and postpartum.

4. Transportation Solutions: Develop innovative transportation solutions, such as mobile clinics or ambulances, to ensure that pregnant women have access to timely and safe transportation to healthcare facilities, particularly in areas with limited infrastructure.

5. Maternal Health Vouchers: Implement voucher programs that provide pregnant women with financial assistance to cover the costs of prenatal care, delivery, and postpartum care. These vouchers can be used at participating healthcare facilities, increasing access to quality maternal healthcare services.

6. Maternal Health Insurance: Establish or expand health insurance schemes that specifically cover maternal healthcare services. This can help reduce financial barriers and ensure that pregnant women have access to affordable and comprehensive care.

7. Public-Private Partnerships: Foster collaborations between public and private sectors to improve access to maternal health services. This can involve leveraging private sector resources and expertise to enhance healthcare infrastructure, service delivery, and health education programs.

8. Maternal Health Clinics: Set up dedicated maternal health clinics in rural areas, staffed by skilled healthcare providers who specialize in prenatal care, delivery, and postpartum care. These clinics can provide comprehensive services and serve as a hub for maternal health in the community.

9. Health Information Systems: Implement robust health information systems that capture and analyze data on maternal health indicators. This can help identify gaps in service delivery, monitor progress, and inform evidence-based decision-making for improving maternal health outcomes.

10. Maternal Health Education and Awareness Campaigns: Launch targeted education and awareness campaigns to promote maternal health practices, including prenatal care, nutrition, breastfeeding, and postpartum care. These campaigns can be conducted through various channels, such as community meetings, radio programs, and social media.

It’s important to note that the specific context and needs of the target population should be considered when implementing these innovations.
AI Innovations Description
The recommendation to improve access to maternal health based on the described study protocol is to implement a home gardening and nutrition counseling program in rural areas of Burkina Faso and Kenya. This program aims to address the impact of climate change on child nutritional status by promoting agricultural and dietary diversification. The intervention involves the establishment of horticultural home gardens and the provision of nutrition counseling based on the World Health Organization’s 7 Essential Nutrition Action messages.

The program will be implemented in collaboration with local partner organizations and community members. Garden leaders, who are experienced in home gardening and respected members of their communities, will be responsible for training and guiding beneficiary households in setting up and maintaining their home gardens. Community Health Volunteers will provide nutrition counseling to households, focusing on healthy child feeding practices.

The program will be evaluated through a multi-center, cluster-randomized controlled trial involving 2,600 households in Burkina Faso and Kenya. The primary health outcome measured will be the height-for-age z-score of children aged 6-24 months. Secondary outcomes include other anthropometric indices, iron and zinc status, dietary behavior, malaria indicators, and household socioeconomic status.

The trial will be conducted within existing Health and Demographic Surveillance Systems in the study areas, which have been established since the early 1990s. The eligibility criteria for participating households include location within a specified radius of local weather stations, permanent residence in the study area, access to land and water for home gardening, and having a child aged 6-24 months.

The intervention group will receive home garden inputs and nutrition counseling, while the control group will receive standard information on healthy feeding practices. Follow-up visits will be conducted regularly to monitor the progress of the intervention and provide necessary support and referrals for healthcare.

The study will employ various data collection methods, including questionnaire-based interviews, anthropometric measurements, laboratory examinations, and process monitoring. Data analysis will be conducted using multi-level regression models and intention-to-treat approach.

The results of the study will provide evidence on the potential of home gardening and nutrition counseling as a climate change adaptation strategy to improve child health and nutritional status in rural sub-Saharan Africa. If the intervention proves to be effective, it can be scaled up and implemented in other similar settings to improve access to maternal health and address the challenges posed by climate change.
AI Innovations Methodology
The ALIMUS study protocol aims to evaluate the potential impact of an integrated home gardening and nutrition counseling program on improving child health in rural Burkina Faso and Kenya. The study will be conducted as a multi-center, cluster-randomized controlled trial with 2 × 600 households in North-Western Burkina Faso and South-Eastern Kenya.

The intervention consists of two components: home gardening and nutrition counseling. The home gardening component involves the bio-diversification of horticultural home gardens, where small plots near the house are used to grow vegetables and fruits for household consumption. The nutrition counseling component utilizes the 7 Essential Nutrition Action messages by the World Health Organization to provide guidance on healthy child feeding practices.

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 will benefit from the recommendations, such as pregnant women or women of reproductive age.

2. Collect baseline data: Gather information on the current access to maternal health services, including availability, affordability, and utilization. This can be done through surveys, interviews, or existing data sources.

3. Develop a simulation model: Create a mathematical or statistical model that simulates the impact of the recommendations on access to maternal health. The model should consider factors such as the number of households reached, changes in behavior and practices, and potential barriers to implementation.

4. Input data: Input the baseline data into the simulation model, including information on the target population, current access to maternal health services, and any other relevant variables.

5. Define intervention scenarios: Define different scenarios based on the recommendations, such as increasing the number of home gardens or expanding nutrition counseling coverage. Each scenario should be quantifiable and measurable.

6. Simulate the impact: Run the simulation model using the defined intervention scenarios to estimate the potential impact on access to maternal health. The model should generate outputs such as the number of households reached, changes in utilization rates, and improvements in health outcomes.

7. Analyze results: Analyze the simulation results to assess the effectiveness of the recommendations in improving access to maternal health. Compare the different scenarios to identify the most effective interventions.

8. Validate the model: Validate the simulation model by comparing the simulated results with real-world data, if available. This will help ensure the accuracy and reliability of the model.

9. Communicate findings: Present the findings of the simulation study in a clear and concise manner, highlighting the potential benefits of the recommendations for improving access to maternal health. This can be done through reports, presentations, or other communication channels.

By following this methodology, researchers and policymakers can gain insights into the potential impact of innovations, such as home gardening and nutrition counseling, on improving access to maternal health. This information can guide decision-making and resource allocation to support effective interventions in maternal health.

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