| Literature DB >> 36211501 |
Paula Hernández-Calderón1, Lara Wiedemann1, Alfonso Benítez-Páez1.
Abstract
The investigation of the human gut microbiome during recent years has permitted us to understand its relevance for human health at a systemic level, making it possible to establish different functional axes (e.g., the gut-brain, gut-liver, and gut-lung axes), which support the organ-like status conferred to this microecological component of our body. The human gut microbiota is extremely variable but modifiable via diet, a fact that allows targeting of microbes through defined dietary strategies to uncover cost-effective therapies to minimize the burden of non-communicable diseases such as pandemic obesity and overweight and its metabolic comorbidities. Nevertheless, randomly controlled dietary interventions regularly exhibit low to moderate degrees of success in weight control, making their implementation difficult in clinical practice. Here, we review the predictive value of the baseline gut microbiota configurations to anticipate the success of dietary interventions aimed at weight loss, mostly based on caloric restriction regimes and oral fiber supplementation. This emergent research concept fits into precision medicine by considering different diet patterns and adopting the best one, based on the individual microbiota composition, to reach significant adiposity reduction and improve metabolic status. We review the results from this fresh perspective of investigation, taking into account studies released very recently. We also discuss some future outlooks in the field and potential pitfalls to overcome with the aim of gaining knowledge in the field and achieving breakthroughs in personalized nutrition.Entities:
Keywords: dietary interventions; gut microbiota; metabolic disease; obesity; personalized nutrition; weight loss
Year: 2022 PMID: 36211501 PMCID: PMC9537590 DOI: 10.3389/fnut.2022.1006747
Source DB: PubMed Journal: Front Nutr ISSN: 2296-861X
Summary of human studies investigating the predictive potential of the baseline microbiota on dietary intervention success.
| Dietary pattern | Aim of the study | Study design | Technique | Subjects | Time | Population | Main findings | Reference |
| CR (deficit of 500 kcal/d) | Studying the role of the microbiome in weight loss and improved hepatic steatosis in response to a CRD | Randomized (R), single-blinded (SB), crossover controlled (CC) | 16S rRNA gene sequencing (V4 region) | 46 | 16 weeks | Overweight and obese adults BMI >27 kg/m2 | Significant baseline microbiome differences between patients who had at least 5% weight loss compared to the differences in those who did not. | ( |
| CR in the form of the Mediterranean and high-protein diet; crossover intervention | Identifying if different dietary patterns improve metabolic function in a different manner | R, CC | 16S rRNA gene sequencing | 16 | 21 days | Insulin-resistant obese (BMI 35–64 kg/m2) | 10 microbial genera turned out to be predictive of the difference in glycemic variability between the two diets. | ( |
| Intermittent calorie restriction (ICR; ∼75% deficit on two non-consecutive days/week) | Investigating whether ICR or CCR induced alterations in the gut microbiome and to what extent these were associated with overall weight loss irrespective of the dietary intervention | R | 16S rRNA gene sequencing (V4 region) | 147 | 50 weeks (12 weeks intervention, 12 weeks maintenance, 26 weeks follow-up) | Overweight and obese adults (BMI ≥25 and <40 kg/m2) | Higher Dorea abundance at baseline negatively correlated with weight loss during intervention. | ( |
| CR (∼34% deficit) | Examining how clinical measures and the gut microbiota change in response to a weight loss intervention and assessing the cross-sectional and longitudinal relationships between the clinical measures and the gut microbiota. | R, SB | 16S rRNA gene sequencing (V3–V4 region) | 59 | 3 months | Overweight and obese adults (BMI 27–45 kg/m2) | The abundance of Subdoligranulum was linearly associated with greater weight loss only among the IF group. | ( |
| CCR vs. IF (both with an energy deficit of 34%) | Identifying baseline multiomic predictors of weight loss and clinical outcomes within a behavioral-based weight loss trial | R | 16S rRNA gene sequencing (V3–V4 region) | 56 | 12 months | Healthy obese or overweight adults (BMI 27–45 kg/m2) | Coprococcus 3 and Ruminococcaceae NK4A214 were advantageous for weight loss. | ( |
| CR intervention with fiber supplementation (10 g/day inulin + 10 g/day resistant maltodextrin) | Identifying diet-microbiota-host interactions that could account for the metabolic health effects of a dietary intervention | R, DB, PC | Metagenomic shotgun sequencing | 80 | 12 weeks | Overweight and obese adults (BMI 25–40 kg/m2) with previous calorie restriction (−500 kcal/day) | Baseline abundances of | ( |
| CR with high-protein diet in the form of formula (810 kcal/day; 44% protein) | Investigating how the gut microbiota change during a total meal replacement low-energy diet (LED) and determining their associations with host response | R | 16S rRNA gene sequencing (V3–V4 region) | 211 | 8 weeks | Overweight adults (BMI >25 kg/m2) with prediabetes | The higher relative abundances of Clostridium sensu stricto 1, Ruminococcaceae UCG-003 and Parabacteroides at baseline positively correlated with fat loss, and Erysipelotrichaceae UCG-003 was negatively correlated. | ( |
| Low-carbohydrate diet (LCD) | Verifying the hypothesis that the gut microbiota contributes to the inconsistent outcome under an LCD | R | Metagenomic shotgun sequencing | 51 | 12 weeks | Overweight (BMI 24–28 kg/m2) and obese (BMI >28 kg/m2) adults | The high relative abundance of Bacteroidaceae, especially Bacteroides, at baseline was positively correlated with weight loss efficacy. | ( |
| LCD vs. LFD (limiting either carbohydrates or fat to ∼20 g/d) | Determining if the baseline microbiota composition/diversity is associated with weight-loss success | R | 16S rRNA gene sequencing | 49 | 12 months | Healthy overweight or obese (BMI 28–40 kg/m2) adults | The baseline microbiota composition was not predictive of weight loss. | ( |
| High-fiber (30 g/day) supplemented diet | The researchers hypothesized that (I) subjects with a higher Prevotella/Bacteroides ratio would improve body weight control on the AXOS supplemented diet compared to the PUFA-enriched diet and that (II) some species with AXOS-degrading capacity would specifically predict body weight changes | R, CC | Metagenomic shotgun sequencing | 29 | 4 weeks | Overweight and obese adults (BMI 25–40 kg/m2) | Subjects who controlled weight tended to have a lower abundance of | ( |
| Low-resistant starch intervention: 9.2 ± 1.1 g of resistant starch | Assessing baseline characteristics to predict the postprandial glucose response (PPGR) in individuals following an intervention of low- and high-resistant starch potatoes and developing a precision nutrition model to predict the PPGR in overweight women | R | 16S rRNA gene sequencing (V3–V4 region) | 30 | – | Overweight women (BMI 25–40 kg/m2) | Relative abundance of Faecalibacterium is negatively associated with glucose iAUC in both. | ( |
| Hypercaloric diet (excess of 1,000 kcal/day) rich in saturated fat, unsaturated fat or simple sugars | Studying (I) the effect of short-term overfeeding on the human gut microbiota in relation to baseline and overfeeding-induced liver steatosis and (II) whether the baseline microbiota composition is associated with the overfeeding-induced increase in liver fat | R | 16S rRNA gene sequencing (V3–V4 region) | 38 | 3 weeks | Overweight and obese adults (BMI 25–40 kg/m2) | Baseline prevalence and mean abundance of Desulfovibrionacea, especially the genus Bilophila, were significantly higher in subjects with an overfeeding-induced increase in the liver fat. | ( |
FIGURE 1Schematic results of all the clinical trials reviewed. Taxa in green indicate a positive predictive manner, and taxa in red indicate a negative predictive manner. Dietary interventions and their influence on obesity-related metabolic parameters with a focus on weight loss as well as the correlated gut microbiota taxa at the genus or species level. CR, caloric restriction; IF, intermittent fasting; LCD, low-carbohydrate diet.