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Interaction between genes and lifestyle factors on obesity

Nutrition Society Silver Medal Lecture

Published online by Cambridge University Press:  30 January 2008

Amelia Marti*
Affiliation:
School of Pharmacy, University of Navarra, Pamplona, Spain
Miguel Angel Martinez-González
Affiliation:
School of Pharmacy, University of Navarra, Pamplona, Spain
J. Alfredo Martinez
Affiliation:
School of Pharmacy, University of Navarra, Pamplona, Spain
*
*Corresponding author: Dr Amelia Marti, fax +34 948 425649, email amarti@unav.es
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Abstract

Obesity originates from a failure of the body-weight control systems, which may be affected by changing environmental influences. Basically, the obesity risk depends on two important mutually-interacting factors: (1) genetic variants (single-nucleotide polymorphisms, haplotypes); (2) exposure to environmental risks (diet, physical activity etc.). Common single-nucleotide polymorphisms at candidate genes for obesity may act as effect modifiers for environmental factors. More than 127 candidate genes for obesity have been reported and there is evidence to support the role of twenty-two genes in at least five different populations. Gene–environment interactions imply that the synergy between genotype and environment deviates from either the additive or multiplicative effect (the underlying model needs to be specified to appraise the nature of the interaction). Unravelling the details of these interactions is a complex task. Emphasis should be placed on the accuracy of the assessment methods for both genotype and lifestyle factors. Appropriate study design (sample size) is crucial in avoiding false positives and ensuring that studies have enough power to detect significant interactions, the ideal design being a nested case–control study within a cohort. A growing number of studies are examining the influence of gene–environmental interactions on obesity in either epidemiological observational or intervention studies. Positive evidence has been obtained for genes involved in adiposity, lipid metabolism or energy regulation such as PPARγ2 (Pro12Ala), β-adrenoceptor 2 (Gln27Glu) or uncoupling proteins 1, 2 and 3. Variants on other genes relating to appetite regulation such as melanocortin and leptin receptors have also been investigated. Examples of some recently-identified interactions are discussed.

Information

Type
Research Article
Copyright
Copyright © The Authors 2008
Figure 0

Table 1. Multivariate conditional logistic regression model of risk factors for childhood obesity (modified from Ochoa et al.(42))

Figure 1

Fig. 1. Obesity risk linked to the single-nucleotide polymorphism Gln27Glu of the β-adrenoceptor 2 gene depends on carbohydrate (CHO) consumption. Natural logarithms of the OR (LnOR) of being obese for women with (□) and without (▲) the polymorphism (logistic regression model) according to the intake of CHO (% energy) and adjusting for age and physical activity during leisure time (metabolic equivalent-hours/week). For interaction, P=0·056. (From Martínez et al.(44).)

Figure 2

Table 2. Obesity risk linked to the Pro12Ala polymorphism of the PPARγ2 gene depends on carbohydrate (CHO) consumption (from Marti et al.(39))

Figure 3

Table 3. Obesity risk linked to the single-nucleotide polymorphism Trp64Arg of the β-adrenoceptor 3 (ADRB3) gene depends on physical activity (PA) levels (from Marti et al.(49))

Figure 4

Fig. 2. Obesity risk linked to the single-nucleotide polymorphism Gln27Glu of the β-adrenoceptor 2 gene depends on physical activity levels. (A) The change in the magnitude of the association between the Gln27 allele (•, Gln27; ■, Glu27) and the obesity risk is dependent on the exposure to physical activity (metabolic equivalent-hours per week:time spent sitting down during leisure time; M/S). (B) Average BMI for subjects with (///) and without (□) the Glu27 polymorphism. Values are means with their standard errors represented by vertical bars. The table shows coefficients obtained with the multivariate logistic regression model using obesity (BMI>30 kg/m2) as the outcome and represent the independent effects for recreational energy expenditure (M/S), age and the Glu27 polymorphism and a product term assessing the effect modification of the polymorphism by M/S. (From Corbalán et al.(50).)

Figure 5

Fig. 3. Obesity risk linked to the single-nucleotide polymorphism Gln27Glu of the β-adrenoceptor 2 gene depends on the time spent watching television (TV) in Spanish children and adolescents aged 5–18 years with a BMI of >97th percentile of the Spanish BMI reference data for age and gender(52). MET, energy expended during each specific activity: RMR; (▲), Carriers; (•), non-carriers. (From Ochoa et al.(51).)