| Literature DB >> 30544190 |
Angeline Chatelan1, Murielle Bochud1, Katherine L Frohlich2.
Abstract
High-income countries are experiencing an obesity epidemic that follows a socioeconomic gradient, affecting groups of lower socioeconomic status disproportionately. Recent clinical findings have suggested new perspectives for the prevention and treatment of obesity, using personalized dietary approaches. Precision nutrition (PN), also called personalized nutrition, has been developed to deliver more preventive and practical dietary advice than 'one-size-fits-all' guidelines. With interventions becoming increasingly plausible at a large scale thanks to artificial intelligence and smartphone applications, some have begun to view PN as a novel way to deliver the right dietary intervention to the right population. We argue that large-scale PN, if taken alone, might be of limited interest from a public health perspective. Building on Geoffrey Rose's theory regarding the differences in individual and population causes of disease, we show that large-scale PN can only address some individual causes of obesity (causes of cases). This individual-centred approach is likely to have a small impact on the distribution of obesity at a population level because it ignores the population causes of obesity (causes of incidence). The latter are embedded in the populations' social, cultural, economic and political contexts that make environments obesogenic. Additionally, the most socially privileged groups in the population are the most likely to respond to large-scale PN interventions. This could have the undesirable effect of widening social inequalities in obesity. We caution public health actors that interventions based only on large-scale PN are unlikely, despite current expectations, to improve dietary intake or reduce obesity at a population level.Entities:
Keywords: Precision nutrition; obesity; obesogenic environments; personalized nutrition; population interventions; social inequalities in health
Mesh:
Year: 2019 PMID: 30544190 PMCID: PMC6469305 DOI: 10.1093/ije/dyy274
Source DB: PubMed Journal: Int J Epidemiol ISSN: 0300-5771 Impact factor: 7.196
Potential sources of data for tailored nutritional advice in large-scale precision nutrition interventions
| Data | Aims of data collection | Methods to produce data | Infrastructures and tools to collect, analyse and store data |
|---|---|---|---|
| Eating behaviour | To evaluate:
Dietary intake (e.g. food consumption, use of nutrient supplements) Eating behaviour | Dietary assessment on several days using:
Online food diary Smartphone applications (self-description and quantification of consumed foods) Digital photography (semi-automatic identification and quantification of consumed foods) |
Dried blood spot testing Saliva swabs Stool kits Shipment material Local pharmacy networks Accelerometers Smartphone and other digital technologies Biobanks Linkage with electronic health records Biomedical laboratories Artificial intelligence etc. |
| Physical activity | To measure physical activity levelTo estimate energy expenditure | Accelerometry techniques using:
Wearable/portable devices (e.g. wristband) Online questionnaire | |
| Deep phenotyping | To assess:
Body composition Nutritional status Other risk factors for diet-related diseases | Anthropometric measurements (e.g. weight, waist circumference, bone densitometry) Clinical chemistry from various bio-samples (e.g. plasma, urine, saliva) to assess visceral fat distribution, insulin resistance, low-density lipoprotein cholesterol, nutrient deficiencies, etc. | |
| Nutrigenomics | To look for genetic variants associated with diet-related diseases and/or responsive to dietary changes | DNA extraction and genotyping of selected loci from whole-blood samples | |
| Microbiomics/ metagenomics | To understand the interplay between diet and gut microbiota | Faeces collection to sequence the microorganisms present in the gut for microbial profiling and detection of dysbiosis | |
| Metabolomics | To understand how the body metabolizes/uses nutrients | Complex chemical analyses from biosamples (e.g. serum, plasma, urine) using:
Nuclear magnetic resonance spectroscopy Mass spectrometry-based techniques |
Non-exhaustive list of determinants of obesity in individuals vs those of obese populations in most high-income countries
| Causes of cases: individual risk Why do some individuals in a population become obese? | Causes of incidence: population risk Why do some populations become obese whereas others do not? | |
|---|---|---|
| Common causes | Quantitative and qualitative imbalance in diet Lack of physical activity | |
| Distinctive causes |
Genetic predisposition Diseases, metabolic and endocrine disorders Medications associated with weight gain Lack of richness and diversity in gut microbiota Age Lack of food and nutrition literacy Psychological factors |
Food markets making high-energy and ultra-processed foods widely available, low-priced, delivered in large portion sizes, and/or prominently marketed Agricultural policies and subsidies promoting the production of less healthy foods Built environment and transportation policies promoting physical inactivity School and workplace environment not encouraging healthy eating and physical activity Loss of traditional culture around food, cooking and meals Values associated with slimness and fatness |
Figure 1.Impact of public health interventions on health. A. Intended effect of Rose’s population strategy on risk of exposure (i.e. large mean effect and unchanged standard deviation after the intervention). B. Desirable impact of public health interventions on dietary intake (i.e. large mean effect and decreased standard deviation after the intervention). C. Probable impact of large-scale precision nutrition on dietary intake (i.e. small mean effect and increased standard deviation after intervention). Solid line: distribution of risk/dietary intake before the intervention. Dashed line: distribution of risk/dietary intake after the intervention.