| Literature DB >> 30875721 |
Theresa Drabsch1, Christina Holzapfel2.
Abstract
Various studies showed that a "one size fits all" dietary recommendation for weight management is questionable. For this reason, the focus increasingly falls on personalised nutrition. Although there is no precise and uniform definition of personalised nutrition, the inclusion of genetic variants for personalised dietary recommendations is more and more favoured, whereas scientific evidence for gene-based dietary recommendations is rather limited. The purpose of this article is to provide a science-based viewpoint on gene-based personalised nutrition and weight management. Most of the studies showed no clinical evidence for gene-based personalised nutrition. The Food4Me study, e.g., investigated four different groups of personalised dietary recommendations based on dietary guidelines, and physiological, clinical, or genetic parameters, and resulted in no difference in weight loss between the levels of personalisation. Furthermore, genetic direct-to-consumer (DTC) tests are widely spread by companies. Scientific organisations clearly point out that, to date, genetic DTC tests are without scientific evidence. To date, gene-based personalised nutrition is not yet applicable for the treatment of obesity. Nevertheless, personalised dietary recommendations on the genetic landscape of a person are an innovative and promising approach for the prevention and treatment of obesity. In the future, human intervention studies are necessary to prove the clinical evidence of gene-based dietary recommendations.Entities:
Keywords: dietary recommendation; direct-to-consumer test; gene-based; gene–diet interaction; genotype; nutrigenetics; obesity; personalised nutrition; weight loss
Mesh:
Year: 2019 PMID: 30875721 PMCID: PMC6471589 DOI: 10.3390/nu11030617
Source DB: PubMed Journal: Nutrients ISSN: 2072-6643 Impact factor: 5.717
Figure 1Aspects of personalised nutrition.
Examples of studies investigating associations between genetic variants, dietary intake, and weight change.
| Study | Investigated SNPs | Intervention | Result | Reference |
|---|---|---|---|---|
| NUGENOB | 42 SNPs at 26 genetic loci | Ten-week dietary intervention based on two hypocaloric diets of 600 kcal/d each and percentage of energy derived from fat of 20–25% (low fat) or 40–45% (high fat) | No SNP–diet interaction on weight change | Sorensen et al. (2006) [ |
| DiOGenes | 651 SNPs at 69 genetic loci | Five different ad libitum diets consisting of different glycaemic indices (GI) and contents of dietary protein (P): low P/low GI vs. low P/high GI vs. high P/.ow GI vs. high P/high GI vs. control diet | No SNP–diet interaction on weight change | Larsen et al. (2012) [ |
| Food4Me | 5 SNPs at 5 genetic loci ( | Four different diet groups: | No significant difference of weight change between risk and non-risk allele carriers; level of personal dietary advice had no effect on weight change | Celis-Morales et al. (2015) [ |
| DIETFITS | 3 SNPs at 3 genetic loci ( | Low-fat diet or a low-carbohydrate diet | Similar weight change between groups independent of genetic pattern | Gardner et al. (2018) [ |
Examples for studies investigating associations between genetic variants, dietary intake and weight change. ADRB2, adrenoreceptor beta 2; ApoE(e4), apolipoprotein E (e4); DIETFITS, the Diet Intervention Examining the Factors Interacting with Treatment Success randomised clinical trial; DiOGenes, the Diet, Obesity, and Genes study; FABP2, fatty-acid-binding protein 2; FADS1, fatty-acid desaturase 1; FTO, fat mass and obesity associated; MTHFR, methylenetetrahydrofolate reductase; NUGENOB, Nutrient–Gene Interactions in Human Obesity: Implications for Dietary Guidelines; PPARG, peroxisome proliferator-activated receptor-gamma; SNP, single nucleotide polymorphism; TCF7L2, transcription factor 7 like 2.
Examples of companies offering gene-based dietary recommendations for weight loss.
| Company | Genetic Approach | Dietary Recommendation Based on | Homepage |
|---|---|---|---|
| Pathway Genomics | SNPs at genetic loci such as | Genetic profile matched to a low-fat, low-carbohydrate, Mediterranean or balanced diet, including genetic risks for metabolic health factors (e.g., blood sugar, lipids) |
|
| Thinner Gene | SNPs at genetic loci such as | Genetic profile and sensitivity for carbohydrates, fats, and proteins matched with healthy food and fat control |
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| Genetic Balance | SNPs at genetic loci associated with fat and carbohydrate metabolism | Genetic make-up matched to good or bad burning of carbohydrates or fats |
|
| Bodykey by NUTRILITE | SNPs at genetic loci such as | Genetic profile matched to diets with different macronutrient compositions |
|
| Nutrigenes | 100 SNPs at genetic loci such as | Genetic predisposition to food and nutrient needs, intolerances and sensitivities |
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| My Kirée | Eight genetic loci associated with body weight | Genetic profile for fat or carbohydrate sensitivity, including supplementation with fat and carbohydrate blockers |
|
All homepages were visited on 25th January 2019. ADIPOQ, adiponectin, C1Q, and collagen domain containing; ADRB2/3, adrenoceptor beta 2/3; APOA2/5, apolipoprotein A2/5; FABP2, fatty-acid-binding protein 2; FADS1, fatty-acid desaturase 1; FTO, fat mass and obesity associated; IRS1, insulin receptor substrate 1; LIPC, lipase C, hepatic type; MC4R, melanocortin 4 receptor; PLIN, perilipin 1; PPARG, peroxisome proliferator-activated receptor-gamma; TCF7L2, transcription factor 7 like 2.
Figure 2Schematic workflow of a commercially available gene-based dietary recommendation. DNA, deoxyribonucleic acid.