| Literature DB >> 31121812 |
Jessica R Biesiekierski1, Jonna Jalanka2,3, Heidi M Staudacher4.
Abstract
Dietary intervention is a challenge in clinical practice because of inter-individual variability in clinical response. Gut microbiota is mechanistically relevant for a number of disease states and consequently has been incorporated as a key variable in personalised nutrition models within the research context. This paper aims to review the evidence related to the predictive capacity of baseline microbiota for clinical response to dietary intervention in two specific health conditions, namely, obesity and irritable bowel syndrome (IBS). Clinical trials and larger predictive modelling studies were identified and critically evaluated. The findings reveal inconsistent evidence to support baseline microbiota as an accurate predictor of weight loss or glycaemic response in obesity, or as a predictor of symptom improvement in irritable bowel syndrome, in dietary intervention trials. Despite advancement in quantification methodologies, research in this area remains challenging and larger scale studies are needed until personalised nutrition is realistically achievable and can be translated to clinical practice.Entities:
Keywords: dietary intervention; gastrointestinal symptoms; irritable bowel syndrome; microbiota; obesity; personalised nutrition
Mesh:
Substances:
Year: 2019 PMID: 31121812 PMCID: PMC6566829 DOI: 10.3390/nu11051134
Source DB: PubMed Journal: Nutrients ISSN: 2072-6643 Impact factor: 5.717
Summary of recent trials reporting on the association between baseline gut microbiota composition and association with clinical response in obesity.
| Study | Study Design | No. of Subjects | Clinical Condition | Dietary Intervention | Control | Key Findings | Ref. |
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| Cotillard et al., 2013 | Non-randomised clinical trial | 49 (f = 41, m = 8) | Obesity ( | 6-week energy-restricted high-protein diet followed by a 6-week weight-maintenance diet | - | Responders: Higher gene richness (where responders were those with marked improvement of adipose tissue and systemic inflammation). | [ |
| Dao et al., 2016 | Non-randomised clinical trial | 49 (f = 41, m = 8) | Obesity and overweight | 3-week calorie restriction | - | Responders: Higher gene richness and | [ |
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| Kong et al., 2013 | Network modelling | 50 (f = 42, m = 8) | Obesity and overweight | 6-week energy-restricted, high-protein diet followed by maintenance phase | - | Responders: Baseline microbiota not identified as a predictor. Non-responders: High | [ |
| Korpela et al., 2014 | Predictive modelling | 78 (f = 40, m = 38) | 3 cohorts with obesity | 3 different types of dietary interventions varying in carbohydrate quality and quantity | - | Responders: High abundance of | [ |
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| Kovatcheva-Datchary et al., 2015 | RCT, crossover | 39 (f = 33, m = 6) | Healthy | 3-day barley kernel-based bread | 3-day white wheat flour bread | Responders: Higher | [ |
| Korem et al., 2017 | RCT, crossover | 20 (f = 11, m = 9) | Healthy | 1 week of 3× 145 g whole-grain sourdough/day | 1 week of 3× 110 g refined white bread/day | Responders: Specific microbial signature (especially abundances of | [ |
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| Zeevi et al., 2015 | Machine learning algorithm | 800 (f = 480, m = 320) | Healthy (assessing glycaemic response) | 1-week usual diet with one standardised meal with 50 g available carbohydrate/day | - | Responders: Proteobacteria, Enterobacteriaceae and Actinobacteria were associated with elevated PPGRs. Non-responders: Clostridia and Prevotellaceae associated with lower PPGRs. | [ |
| Mendes-Soares et al., 2019 | Same modelling framework as Zeevi et al., 2015 [ | 327 (f = 255, m = 72) | Healthy (assessing glycaemic response) | 6-day usual diet including four standardised meals with 50 g available carbohydrate | - | Baseline microbiota combined with other physiological characteristics was more predictive of PPGR than using only calorie or carbohydrate content of foods. | [ |
PPGR, postprandial glycaemic response; RCT, randomised clinical trial.
Summary of recent trials reporting on the association between baseline gut microbiota composition and association with clinical response in IBS.
| Study | Study Design | No. of Subjects | IBS Sub-Type | Dietary Intervention | Control | Key Findings | Ref. |
|---|---|---|---|---|---|---|---|
| Chumpitazi et al., 2014 | Dietary advice uncontrolled trial | 8 children (f = 4, m = 4) | Paediatric Rome III; all IBS subtypes included | Low FODMAP | - | Responders: Greater richness and diversity compared at baseline compared with non-responders. Greater abundance of | [ |
| Halmos et al., 2015 | Crossover feeding RCT | 27 (f = 21, m = 6) | Rome III, all IBS subtypes included | Low FODMAP | Typical Australian diet | No baseline microbiota differences identified between responders and non-responders. | [ |
| Chumpitazi et al., 2015 | Crossover feeding RCT | 33 children (f = 22, m = 11) | Paediatric Rome III; all IBS subtypes included | Low FODMAP | American childhood diet | Responders: Greater abundances for a range of saccharolytic taxa including within the family Bacteroidoidaceae and order Clostridiales (e.g., | [ |
| Bennet et al., 2018 | Dietary advice RCT | 61 (f = 51, m = 10), 33 low FODMAP | Rome III; all IBS subtypes included | Low FODMAP | Traditional IBS diet | Responders: Increased abundance of | [ |
| Valeur et al., 2018 | Dietary advice uncontrolled trial | 61 (f = 54, m = 7) | Rome III, all IBS subtypes included | Low FODMAP | - | Responders: Greater abundance of | [ |
IBS, irritable bowel syndrome; RCT, randomised clinical trial.