| Literature DB >> 25398084 |
Daiva E Nielsen1, Ahmed El-Sohemy1.
Abstract
BACKGROUND: Proponents of consumer genetic tests claim that the information can positively impact health behaviors and aid in chronic disease prevention. However, the effects of disclosing genetic information on dietary intake behavior are not clear.Entities:
Mesh:
Year: 2014 PMID: 25398084 PMCID: PMC4232422 DOI: 10.1371/journal.pone.0112665
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Prevalence of risk alleles in intervention group (n = 92) and associated risk.
| Dietary Component | Gene | Risk Allele Non-Risk Allele | Associated Risk | |
| n (%) | ||||
| Caffeine |
| 48 (52) | 44 (48) | Increased risk of myocardial infarction and hypertension when consuming above 200 mg of caffeine/day |
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| ≤400 mg/day for other adults | ||||
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| Vitamin C |
| 52 (57) | 40 (43) | Increased risk of serum ascorbic acid deficiency when consuming below the RDA for vitamin C |
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| RDA for men: ≥90 mg/day | ||||
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| Added Sugars |
| 41 (45) | 51 (55) | Increased risk of over-consuming sugars |
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| Sodium |
| 64 (70) | 28 (30) | Increased risk of sodium-sensitive hypertension when consuming above the AI for sodium |
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RDA: Recommended dietary allowance.
UL: Tolerable upper intake level.
AI: Adequate intake.
Figure 1Consolidated standards of reporting trials (CONSORT) diagram and subject flow through the trial.
Participant characteristics.
| Intervention(n = 92) | Control(n = 46) | p-value | |
| n (%) | |||
| Age (years) | 27±3 | 26±3 | 0.82 |
| Female | 69 (75) | 37 (80) | 0.48 |
| Ethnicity | |||
| Caucasian | 59 (64) | 24 (52) | 0.18 |
| East Asian | 19 (21) | 12 (26) | 0.47 |
| South Asian | 9 (10) | 6 (13) | 0.56 |
| Other | 5 (5) | 4 (9) | 0.46 |
| Education | |||
| Some college or undergraduate training | 9 (10) | 8 (17) | 0.20 |
| College or undergraduate degree | 50 (54) | 22 (48) | 0.47 |
| Graduate degree | 33 (36) | 16 (35) | 0.90 |
*Values shown are mean ± standard deviation.
Changes in dietary intake after 3-months and 12-months.
| Baseline (n = 133) | 3-months (n = 130) | 12-months (n = 123) | |||||||
| n | Mean ± SEM | p-value | n | Mean change ± SEM | p-value | n | Mean change ± SEM | p-value | |
| Caffeine (mg/day) | |||||||||
| Intervention risk | 46 | 181.4±16.8 | 0.82 | 45 | –3.0±14.8 | 0.61 | 41 | –18.9±18.8 | 0.92 |
| Intervention non-risk | 44 | 194.8±17.8 | 0.92 | 43 | –24.7±15.3 | 0.66 | 41 | 1.5±19.4 | 0.99 |
| Control | 43 | 183.5±16.3 | 42 | –7.3±14.8 | 41 | –0.3±17.8 | |||
| Vitamin C (mg/day) | |||||||||
| Intervention risk | 50 | 197.3±33.6 | 0.85 | 49 | 49.5±37.6 | 0.99 | 45 | 36.6±43.1 | 0.73 |
| Intervention non-risk | 40 | 226.2±35.1 | 0.96 | 39 | –13.9±38.4 | 0.22 | 37 | –58.4±43.5 | 0.42 |
| Control | 43 | 220.0±31.9 | 42 | 44.1±37.1 | 41 | –21.4±40.1 | |||
| Added sugars (%e/day) | |||||||||
| Intervention risk | 38 | 8.9±0.8 | 0.99 | 37 | –0.9±0.9 | 0.18 | 33 | 0.4±0.9 | 0.98 |
| Intervention non-risk | 52 | 8.3±0.7 | 0.54 | 51 | 0.5±0.8 | 0.99 | 49 | –0.4±0.8 | 0.85 |
| Control | 43 | 9.3±0.7 | 42 | 0.6±0.8 | 41 | –0.4±0.8 | |||
| Sodium (mg/day) | |||||||||
| Intervention risk | 63 | 2144.5±124.4 | 0.51 | 62 | –143.0±109.0 | 0.20 | 56 | –287.3±114.1 | 0.008 |
| Intervention non-risk | 27 | 2224.9±171.0 | 0.31 | 26 | 97.8±145.6 | 0.97 | 26 | –244.2±150.2 | 0.11 |
| Control | 43 | 2000.8±131.2 | 42 | 82.2±119.2 | 41 | 129.8±118.2 | |||
p-values are for log-transformed values.
Results are adjusted for ethnicity.