Microbiota at multiple body sites during pregnancy in a rural tanzanian population and effects of Moringa-supplemented probiotic yogurt

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Study Justification:
– The nutritional status of pregnant women is important for healthy outcomes and is a concern for a large proportion of the world’s population.
– The role of the microbiota in pregnancy and nutrition is a promising area of study with potential health implications.
– Maternal and infant death and morbidity in many African countries are associated with malnutrition.
– This study aims to assess the influence of probiotic yogurt supplemented with Moringa plant on the health and microbiotas of pregnant women in Tanzania.
Study Highlights:
– The study involved 56 pregnant women in Tanzania.
– The women were divided into two groups: one group received probiotic yogurt daily, and the other group received no intervention.
– Samples from various body sites were analyzed using 16S rRNA gene sequencing.
– The consumption of yogurt increased the abundance of beneficial bacteria in the newborn feces.
– The microbiota of the oral cavity and GI tract remained stable over pregnancy, while the vaginal microbiota showed an increase in diversity leading up to and after birth.
– The study suggests that daily micronutrient-supplemented probiotic yogurt is a safe and affordable food for pregnant women in rural Tanzania.
Recommendations:
– Further studies should be conducted to investigate the long-term health effects of probiotic yogurt consumption during pregnancy.
– The impact of probiotic yogurt on the microbiota of pregnant women at different body sites should be explored.
– The potential benefits of probiotic yogurt on maternal and infant health outcomes should be investigated in larger, controlled trials.
Key Role Players:
– Medical Research Coordinating Committee of the National Institute for Medical Research (Mwanza, Tanzania)
– Health Sciences Research Ethics Board at Western University (London, Canada)
– Study participants (pregnant women)
– Study translators
– Study employees responsible for delivering yogurt
Cost Items for Planning Recommendations:
– Research staff salaries
– Laboratory equipment and supplies
– DNA extraction kits
– Sequencing services
– Statistical analysis software
– Nutritional analysis software
– Transportation costs for delivering yogurt
– Data storage and management

The strength of evidence for this abstract is 7 out of 10.
The evidence in the abstract is relatively strong, but there are some areas for improvement. The study design is open-label, which may introduce bias. Additionally, the sample size is small, and the study was conducted in a specific population, which limits generalizability. To improve the evidence, a randomized controlled trial with a larger sample size and a more diverse population could be conducted.

The nutritional status of pregnant women is vital for healthy outcomes and is a concern for a large proportion of the world’s population. The role of the microbiota in pregnancy and nutrition is a promising new area of study with potential health ramifications. In many African countries, maternal and infant death and morbidity are associated with malnutrition. Here, we assess the influence of probiotic yogurt containing Lactobacillus rhamnosus GR-1, supplemented with Moringa plant as a source of micronutrients, on the health and oral, gut, vaginal, and milk microbiotas of 56 pregnant women in Tanzania. In an open-label study design, 26 subjects received yogurt daily, and 30 were untreated during the last two trimesters and for 1 month after birth. Samples were analyzed using 16S rRNA gene sequencing, and dietary recalls were recorded. Women initially categorized as nourished or undernourished consumed similar calories and macronutrients, which may explain why there was no difference in the microbiota at any body site. Consumption of yogurt increased the relative abundance of Bifidobacterium and decreased Enterobacteriaceae in the newborn feces but had no effect on the mother’s microbiota at any body site. The microbiota of the oral cavity and GI tract remained stable over pregnancy, but the vaginal microbiota showed a significant increase in diversity leading up to and after birth. In summary, daily micronutrient-supplemented probiotic yogurt provides a safe, affordable food for pregnant women in rural Tanzania, and the resultant improvement in the gut microbial profile of infants is worthy of further study.

The study protocol was approved and received ethical clearance from both the Medical Research Coordinating Committee of the National Institute for Medical Research (Mwanza, Tanzania), as well as from the Health Sciences Research Ethics Board at Western University (London, Canada). The study was registered with clinicaltrials.gov ({“type”:”clinical-trial”,”attrs”:{“text”:”NCT02021799″,”term_id”:”NCT02021799″}}NCT02021799). Participants provided written consent, and in the case where they could not write, a thumbprint was obtained before sample collection and subsequent analysis. Women who were attending the antenatal clinic at Nyerere Dispensary in Buswelu, district of Ilemela, Mwanza Region, Tanzania, were recruited into the study if they were between the ages of 18 and 40, as well as between the gestational ages of 12 and 24 weeks. Gestational age was determined by last menstrual period as identified in the participant’s clinic records. To confirm, or if last menstrual period was unavailable, approximation of gestational age was based upon measurement of fundal height. Originally, participants were further grouped into states of nutritional status (nourished or undernourished) based upon having a mid-upper-arm circumference (MUAC) of <235 mm if undernourished, and deviations from expected weight for gestational age (25). Since this was a pilot study, sample size was based on participant availability. Subjects were randomly assigned (using a random number generator) to the intervention group (produced fresh daily yogurt containing ∼1010 CFU Lactobacillus rhamnosus GR-1 per 250 g unit confirmed by regular quality control tests, and 4.3 g of dried ground Moringa oleifera leaves), or control group (no intervention). Administration of the yogurt amounted to 13% required daily intake of protein (9.95 g), 39% calcium (385 mg), 35% vitamin A (269 retinol activity equivalents), 81% vitamin B2 (1.1 mg), and 4% iron (1.2 mg). The probiotic group received 250 g of yogurt 6 days a week from the time of recruitment until exiting the study, which occurred 1 week to 1 month postpartum. Due to a lack of cold storage available to most participants, yogurt was delivered daily by a study employee who observed and recorded compliance. Participants in the probiotic group consumed yogurt for an average of 88 days ± 31 the standard deviation (SD), while the control group had no form of intervention. At the initial and monthly follow-up visits from recruitment until birth, which occurred between August 2012 and April 2013, weight was measured to the nearest 0.1 kg using an analogue scale, and the MUAC was measured to 1 mm using a tape measure. A physical examination was also performed at these visits, which included measurement of blood pressure, heart rate, and general medical history. Two vaginal swabs were collected at the midpoint of the vagina using CultureSwab polyester-tipped swabs (BD Biosciences, Mississauga, Ontario, Canada); one was used for evaluation of bacterial vaginosis (BV) by Nugent Scoring (26), while the second was used for microbial DNA extraction. Fecal samples and saliva samples were also collected in sterile collection containers and frozen at −80C until analysis. A midstream urine sample was analyzed for urinary tract infection using a multitest dipstick system (Rapid Response Urine Dipstick; BTNX Urinalysis, Laja Pharmacy, Mwanza, Tanzania). Hemoglobin levels were determined using a HemoCue Hb 201+ analyser (HemoCue, Ängelholm, Sweden). Blood samples were collected from all participants at the first, middle, and final visits in Vacutainer tubes containing potassium EDTA (BD Biosciences, Mississauga, Ontario, Canada). Plasma was separated from the samples before being frozen at −80°C until analysis. Vitamin A levels were determined by high-pressure liquid chromatography, while the total plasma protein levels were determined by a colorimetric biuret assay by the London Health Sciences Laboratory Services Group (London, Ontario, Canada). The first postpartum visits occurred at 3 days after birth, and the final visit occurred 1 week to 1 month after the first postpartum visit. The same information and samples were collected as during the follow-up visits; however, a human milk sample was collected in sterile collection containers from the mother and stored at −80°C until analysis. Anthropometric data were collected from the infant, including weight, as measured on an analogue baby scale to the nearest 0.1 kg, whereas head circumference, length, and MUAC were measured using a tape measure to the nearest 0.1 cm. In addition, the sex of the infant, the place of birth, and whether the baby was born vaginally or by caesarean section were recorded. Fecal samples were collected from the infant's diaper, and infant saliva samples were collected using a BBL CultureSwab (BD Diagnostics, Mississauga, Ontario, Canada) and stored at −80°C until analysis. Forty-eight-hour dietary recall interviews were conducted by a trained study translator at each visit. Information from these interviews was analyzed for nutritional content and caloric intake using the ESHA Food Processor SQL (v9.8), which provides access to an extensive database of comprehensive nutrition information to allow evaluation of a subject's diet and fitness. Although this program utilizes North American food composition tables, nutritional data for local Tanzanian foods and recipes were inputted into the software from Tanzanian food composition tables prepared by Muhimbli University of Health and Allied Sciences, the Tanzania Food and Nutrition Center, and the Harvard School of Public Health (27). In addition, when serving sizes per se, or sizes of specific food items were not clearly stated in the interview, the average portion quantity, as outlined by the Tanzanian Food Composition Tables, was used. Nutritional data for Moringa were obtained (M. Broin, unpublished data) and put into ESHA. The average intake of calories, protein, fat, carbohydrates, saturated fatty acids, monounsaturated fatty acids, polyunsaturated fatty acids, calcium, vitamin A, folate, and zinc were calculated over the 48-h period to determine daily consumption. The same was done for the 48-h dietary recalls collected at the first postpartum and final visits to obtain a value representing the daily average intake of the above-listed nutrients postpartum. DNA was extracted from all samples using the PowerSoil-htp 96 Well Soil DNA isolation kit from MoBio (Carlsbad, CA) according to the manufacturer's protocol, with modifications as outlined by the Earth Microbiome Project (version 4_13). Approximately 250 mg of fecal sample, 500 μl of saliva and 500 μl of breast milk were used for the extractions. Samples were sequenced by amplifying the V4 hypervariable region of the 16S rRNA gene using the bacterial/archaeal primers 515F and 806R according to previously described methods (28) and modified for the Illumina MiSeq platform. Obtained reads were quality filtered and demultiplexed using the open-source software QIIME (split_libraries_fast.py with default parameters for Illumina sequencing) (29). A total of 974 samples were sequenced, yielding 15,596,127 sequences total with an average of 16,012 sequences ± 11,840 SD per sample. Samples that generated fewer than 1,000 sequences after quality filtering were discarded. The remaining sequences were then binned into operational taxonomic units (OTUs) using closed-reference OTU picking based on 97% identity using the May 2013 build from the Greengenes reference database (30). Demultiplexed reads and associated metadata were deposited in the Qiita and EBI databases available through study ID 2024 (http://qiita.ucsd.edu). All statistical analyses were carried out in R using unpaired Welch's t tests with Benjamini Hochberg's false discovery rate (FDR) method with a q 1% of the total data set (vaginal heat map [see Fig. 6C]) or >0.01% (entire data set [see Fig. 3]). For association of individual genera with yogurt/control treatment in infant fecal samples, the data set was filtered to include only infant fecal samples, summarized to the genus level and genera were only kept if they represented a minimum 0.1% of the total reads. Significantly differentially abundant genera were determined by comparing groups using ALDEx2 (v0.99.2) (31, 32) by Wilcoxon rank-sum test with FDR correction of centered log-ratio transformed data using 1,000 Monte-Carlo instances drawn from the Dirichlet distribution with a minimally informative uniform prior of 0.5. Taxa that had zero counts in all samples were removed. This approach accurately estimates the range of technical variation inherent in microbiome data sets for all taxa, including those where some samples contained a zero, and some where they contained a positive count (31, 32). Heat map of all samples (n = 974) at the genus level. Samples were UPGMA (unweighted pair-group method with arithmetic averages) clustered be weighted UniFrac distances showing strong clustering of samples by body site (as indicated in the lower heat map). (A) Time series of vaginal samples shows increasing diversity and leading up to and after birth. Nugent score based on microscopy (wherein 0 to 3 is considered normal, 4 to 6 intermediate, and 7 to 10 is a state of microbial dysbiosis referred to as BV) is also displayed. (B) Comparison of Shannon’s diversity shows an increase within 10 days after birth. (C) Heat map of genera composing >1% of vaginal organisms shows a loss of lactobacilli and an increase in BV-associated organisms such as Prevotella. The breast milk samples collected at the final visit for all women in the study were analyzed for fat, protein, and lactose content. From the calculated lactose amount, the total carbohydrates were estimated. A total of 12 milk samples were excluded from this analysis due to the provider being HIV positive. Data were obtained for nine participants from the control group and six participants from the probiotic yogurt group. Samples were homogenized for 10 s prior to the removal of a 500-μl aliquot for DNA extraction using a sonicator (VCX 130; Chemical Instruments AB, Sollentuna, Sweden). The remaining sample (approximately 500 μl to 1 ml) was used for nutrient analysis. The lactose content was measured as described by Fusch et al. (33). Fat was extracted from the milk using Mojonnier ether extraction and then gravimetrically analyzed to get the total fat content (34). The protein content of the breast milk was determined as per the methods of Choi et al. (34). The true protein content was determined by subtracting the nonprotein nitrogen from the total nitrogen and multiplying this by 6.25 (35).

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

1. Probiotic Yogurt Supplementation: The study found that daily consumption of probiotic yogurt containing Lactobacillus rhamnosus GR-1, supplemented with Moringa plant as a source of micronutrients, improved the gut microbial profile of infants. This innovation can be further developed and implemented to provide pregnant women with a safe and affordable food option that promotes maternal and infant health.

2. Mobile Health (mHealth) Applications: Utilizing mobile health applications can improve access to maternal health information and services. These apps can provide pregnant women with personalized nutrition advice, reminders for prenatal appointments, and access to telemedicine consultations with healthcare providers.

3. Community Health Workers: Training and deploying community health workers can help improve access to maternal health services in rural areas. These workers can provide education on nutrition, prenatal care, and hygiene practices, as well as assist with referrals to healthcare facilities for further care.

4. Telemedicine Services: Implementing telemedicine services can help overcome geographical barriers and improve access to specialized maternal health care. Pregnant women in remote areas can consult with obstetricians and other specialists through video calls, ensuring they receive the necessary care and guidance.

5. Nutritional Supplements: Developing and distributing affordable and culturally appropriate nutritional supplements specifically designed for pregnant women can help address malnutrition and improve maternal health outcomes. These supplements can be fortified with essential vitamins, minerals, and macronutrients to support healthy pregnancies.

6. Maternal Health Education Programs: Implementing comprehensive maternal health education programs can empower women with knowledge about proper nutrition, prenatal care, and hygiene practices. These programs can be delivered through community workshops, mobile apps, or educational materials distributed in healthcare facilities.

7. Improved Healthcare Infrastructure: Investing in the improvement of healthcare infrastructure, particularly in rural areas, can enhance access to maternal health services. This includes building and equipping healthcare facilities, ensuring the availability of skilled healthcare providers, and establishing referral systems for high-risk pregnancies.

8. Public-Private Partnerships: Collaborations between public and private sectors can help improve access to maternal health services. This can involve partnerships with private healthcare providers to expand service coverage, as well as collaborations with private companies to develop innovative solutions for maternal health challenges.

9. Maternal Health Financing: Developing and implementing innovative financing mechanisms, such as microinsurance or community-based health financing schemes, can help make maternal health services more affordable and accessible to vulnerable populations.

10. Maternal Health Monitoring Systems: Implementing robust maternal health monitoring systems can help identify gaps in access and quality of care. These systems can collect data on maternal health indicators, track progress, and inform evidence-based decision-making for targeted interventions.

It is important to note that the implementation of these innovations should be context-specific and consider the local healthcare infrastructure, cultural practices, and socioeconomic factors to ensure effectiveness and sustainability.
AI Innovations Description
Based on the description provided, the recommendation to improve access to maternal health is to develop and promote the use of probiotic yogurt supplemented with Moringa plant as a source of micronutrients for pregnant women in rural areas. This recommendation is based on a study conducted in Tanzania, which found that daily consumption of this yogurt improved the gut microbial profile of infants. The yogurt provided a safe and affordable food option for pregnant women, and the supplementation with Moringa plant ensured the intake of essential micronutrients. Further research and promotion of this innovation can help improve maternal health outcomes in areas with limited access to healthcare resources.
AI Innovations Methodology
The study described focuses on the potential impact of probiotic yogurt supplemented with Moringa plant on the health and microbiota of pregnant women in Tanzania. The goal is to improve access to maternal health by providing a safe and affordable food option that can positively influence the gut microbial profile of infants.

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

1. Define the objectives: Clearly define the specific outcomes that are desired from the recommendations. For example, the objectives could include reducing maternal and infant morbidity and mortality rates, improving nutritional status during pregnancy, and enhancing the diversity and composition of the microbiota.

2. Identify key indicators: Determine the key indicators that will be used to measure the impact of the recommendations. These indicators could include maternal and infant health outcomes, such as rates of preterm birth, low birth weight, and maternal and infant mortality. Other indicators could include changes in nutritional status, microbiota composition, and dietary intake.

3. Collect baseline data: Gather baseline data on the current state of maternal health, nutritional status, and microbiota composition in the target population. This can be done through surveys, medical records, and laboratory analysis.

4. Design intervention: Develop a detailed plan for implementing the recommendations, including the provision of probiotic yogurt supplemented with Moringa plant to pregnant women in the target population. Consider factors such as dosage, frequency, and duration of intervention.

5. Implement intervention: Carry out the intervention according to the designed plan. Ensure proper distribution and monitoring of the probiotic yogurt to the pregnant women in the study.

6. Collect post-intervention data: After the intervention period, collect data on the outcomes and indicators identified in step 2. This can involve conducting follow-up surveys, medical examinations, and laboratory analysis.

7. Analyze data: Analyze the collected data to assess the impact of the recommendations on improving access to maternal health. Use statistical methods to compare the baseline and post-intervention data and determine if there are significant changes in the desired outcomes and indicators.

8. Interpret results: Interpret the results of the data analysis to understand the implications of the recommendations. Identify any limitations or challenges encountered during the study that may have influenced the outcomes.

9. Draw conclusions and make recommendations: Based on the findings, draw conclusions about the effectiveness of the recommendations in improving access to maternal health. Make recommendations for further actions or modifications to the intervention based on the results.

By following this methodology, researchers and policymakers can gain insights into the potential impact of the recommendations on improving access to maternal health and make informed decisions about their implementation.

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