Juice Plus Inflammaging and Cardiovascular Disease Prevention Study
NCT ID: NCT04003935
Last Updated: 2020-05-29
Study Results
The study team has not published outcome measurements, participant flow, or safety data for this trial yet. Check back later for updates.
Basic Information
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TERMINATED
22 participants
OBSERVATIONAL
2019-06-01
2020-05-27
Brief Summary
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Detailed Description
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There is a substantial amount of evidence to suggest that many foods, nutrients and non-nutrient food components modulate inflammation both acutely and chronically. Nutritional regimens with adequate intake of micronutrients, vegetables, and fruits, low in sugar and saturated fats, like the Mediterranean diet or a vegetarian dietary regimen, can reduce chronic inflammation and oxidative stress.
To date there is no data on multiyear clinical interventions assessing the effect of plant-based dietary supplements on low-grade inflammation, cardiovascular disease prevention and indicators of biological aging, including individuals' cognitive function. In this study, the investigators are thus exploring whether separate ingestions of two plant-based nutritional products over 2 years, are able to modulate biomarkers of low-grade inflammation and CVD prevention, plasma concentrations of micronutrients, upper respiratory tract- and gastro-intestinal symptoms, quality of life, indicators of biological aging, and cognitive function in an overweight/obese cohort of middle-aged, elderly people.
Volunteers expressing interest to take part in the study, will need to attend a screening visit where their eligibility will be assessed. For participants with confirmed eligibility, they will need to attend a baseline visit and consecutive study visits at 6, 12, 18 and 24 months. Markers of low-grade inflammation and CVD, micronutrients status, respiratory tract symptoms, gastrointestinal symptoms and quality of life will be assessed at baseline, 6, 12, 18 and 24 months. Bone quality and telomere length will be assessed at baseline, 12 and 24 months.
Propensity score approach:
Since this is a long-term trial and in order to maximize adherence to the ingestion of the products, volunteers will be allowed to choose their preferred nutritional product. Instead of using randomization, the investigators have chosen a propensity score (PS) approach which helps to reduce bias with regards to random significances. More specifically, for each participant an individual score based on certain parameters, likely to affect the primary outcomes, will be calculated and will be matched with another participant with the same PS across the three groups. PS matching will be implemented without replacement and setting the caliper equal to 0.025. Furthermore, to ensure an adequate number of matching PSs between groups, about a 3-fold number of subjects needed to enter the study, will be pre-screened.
Sample size:
With a sample size of 20 subjects per group (total sample size = 60), the disjunctive power for testing each primary endpoint (i.e., the probability of establishing a significant effect in supplementation-control or between-supplementation comparisons) is 78%, 51%, 97% for TNF-α, homocysteine and vitamin C (1st ranked parameter for each co-primary outcome), respectively.
In addition, it is estimated to have a maximum drop-out rate of 30% over 2 years. In order to ensure balanced distribution of subjects across the three different groups, the investigators will also stratify for gender and age. Based on this sample size calculation and in order to meet the stratification standards, 30 subjects will be recruited to be allocated to each group, corresponding to a total N of 90 subjects.
Statistical analysis:
Statistical analysis will be performed by using SPSS for Windows software, version 22.0. Metric data will be presented as mean ± SD. Statistical significance is set at P \< 0.05. The Shapiro-Wilk test will be used to determine normal distribution. To check homogeneity of variances the Levene test will be used. Comparisons of mean values of metric baseline data between the 3 groups will be done by analysis of variance, ANOVA.
If data are normally distributed and variance homogeneity is fulfilled, all metric analytes from blood (low-grade inflammation markers, CVD-prevention markers, micronutrients, telomer length, clinical chemistry etc) will be analyzed by one- and two-factorial (either 'time' or 'time x treatment') repeated measures analysis of variance (ANOVA) and co-variance (ANCOVA, e.g. diet/dietary inflammatory index (DII), exercise), within each group and between groups. Student's t-test for paired samples will be used for within group analysis as soon as 6-month data are available. For post-hoc analyses the Bonferroni(-Holm) correction and/or Tukey´s post-hoc test will be used.
If it is not possible to use metrical data, non-parametric tests will be used like the Friedman Test (within group) and the Kruskal Wallis test (between groups). If differences between groups reach significance the Tukey's post hoc test, the Bonferroni correction or the Bonferroni-Holm-method (for non-parametric data) will be used to determine the localization of the differences.
A comprehensive correlation analyses to compute relations within each outcome-category and between the different outcome-categories will be conducted, also the PS-categories will be included into these correlation analyses.
Conditions
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Study Design
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COHORT
PROSPECTIVE
Study Groups
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Control
Continuing habitual diet and lifestyle.
No interventions assigned to this group
Active 1
Ingestion of a macro- and micro-nutrient rich shake, otherwise continuing habitual diet and lifestyle.
Juice Plus+ Complete
Plant-based smoothie; maintaining habitual diet.
Active 2
Ingestion of an encapsulated vitamin and phytonutrient supplement, otherwise continuing habitual diet and lifestyle.
Juice Plus+ Premium
Fruit and vegetable juice concentrate; maintaining habitual diet.
Interventions
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Juice Plus+ Complete
Plant-based smoothie; maintaining habitual diet.
Juice Plus+ Premium
Fruit and vegetable juice concentrate; maintaining habitual diet.
Eligibility Criteria
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Inclusion Criteria
* age: 50 - 80 years
* post- or peri-menopausal
* Smokers and non-smokers
* BMI 25 to 40 kg/m2
* Dietary Inflammatory Index, DII: 0 to +10
* Fruit and vegetable intake \<4 servings/d
* Adherence to a 6-week "wash-out" period
* Since the intervals between blood drawings are long (6 months), a temporary intake (e.g for a few days, one or two weeks) of some excluded drugs and food supplements does not necessarily mean exclusion from the study
Exclusion Criteria
* Dietary Inflammatory Index, DII: - 0.1 to -10
* Subjects with any kind of food allergy or histamine intolerance
* Aversion to stop the intake of nutritional supplements and food, that could interfere with the study outcome
* Food supplements, functional foods and dietetic products with anti-inflammatory or redox-biological relevance like omega-3 fatty acids, plant/herbal extracts/concentrates, vitamin- and mineral supplements
* Fruit and vegetable intake \>3 servings per day
* Hypertension, starting with grade 2 according to the classification of the European Society of Hypertension: systolic blood pressure \> 160 mmHg, diastolic blood pressure \>100 mmHg
* Medication: any anti-inflammatory medication and medication with relevant antioxidant properties, blood pressure lowering medication, psychotropic drugs, immunosuppressives, cytostatics, anticoagulants, contraceptives, diuretics, pain medication
* Clinically relevant infectious disease
* Diabetes mellitus type I and type II
* Auto-immuno diseases
* Any stents and Coronary artery diseases (CAD)
* Cancer patients
* Pregnancy
50 Years
80 Years
ALL
Yes
Sponsors
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Medical University of Graz
OTHER
Green Beat
OTHER
Responsible Party
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Lamprecht Manfred PhD, PhD
Principal Investigator
Principal Investigators
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Manfred Lamprecht, PhD
Role: PRINCIPAL_INVESTIGATOR
Medical University of Graz
Locations
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Institute of Pathophysiology and Immunology
Graz, Styria, Austria
Green Beat
Graz, , Austria
Countries
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Other Identifiers
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31-242 ex 18/19
Identifier Type: -
Identifier Source: org_study_id
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