Type 2 diabetes (T2D) is characterised by the loss of β cell function and insulin sensitivity (IS), and is a multifactorial abnormality with a strong genetic component to its aetiology; however, there are several recognised environmental influences as well( Reference Wareham, Franks and Harding 1 ). Epidemiological studies and clinical trials have examined the roles of lifestyle and dietary factors (e.g. fat intake) in diabetes prevention( Reference Hu, van Dam and Liu 2 , Reference Lopez, Bermudez and Pacheco 3 ). Total fat and SFA intakes were positively associated with T2D risk( Reference van Dam, Stampfer and Willett 4 ). It has been suggested that insulin resistance (IR) is a postprandial phenomenon linked to acute dietary fat metabolism( Reference Pedrini, Niederwanger and Kranebitter 5 ). Animal studies have demonstrated that the type of fat in the diet affects IS by changing the fatty acid composition of membrane lipids( Reference Huang, Wahlqvist and Li 6 ). Such phenomena support findings of studies linking the nature of dietary fats to dysfunctions in insulin secretion and increased risk of T2D( Reference van Dam, Stampfer and Willett 4 , Reference Vessby, Tengblad and Lithell 7 – Reference Maedler, Oberholzer and Bucher 9 ).
Recent genome-wide association studies have identified several genes associated with T2D and glucose and/or insulin levels( Reference Saxena, Voight and Lyssenko 10 , Reference Saxena, Voight and Zeggini 11 ). These individual variants confer relatively small increments in risk, however, and when combined explain only a small proportion of familial clustering, leading many to question how the remaining ‘missing’ heritability can be explained( Reference Manolio, Collins and Cox 12 ). It is proposed that gene–environment interaction may explain the missing heritability of T2D( Reference Manolio, Collins and Cox 12 ). In the past decade, gene–gene and gene–environment interactions have documented to play critical roles in the aetiology of diabetes( Reference Wareham, Franks and Harding 1 ). A growing body of research indicates that dietary fat may modify the genetic association with T2D-related traits( Reference Ruchat, Elks and Loos 13 – Reference Qi, Bray and Smith 17 ).
However, it remains unclear to what extent dietary fat intake could influence insulin secretion and resistance, and much less is known about the relationship between dietary fat and diabetes in children, compared with adults, especially during puberty and in developing countries. This study aimed to estimate the genetic and environmental influence on dietary fat intake, IS and IR as well as to determine the correlations among these phenotypes using data collected from Chinese child twins.
Methods
Study sample and data collection
We used the baseline data collected from 622 twins aged 7–15 years (n 311 pairs, monozygotic (MZ):dizygotic (DZ)≈1:1, male:female≈1:1) at Jiaxing, Zhejiang Province, south-eastern China during 2009. The study protocol was reviewed and approved by the Institutional Review Boards of The Johns Hopkins University Bloomberg School of Public Health and Jiaxing Maternity and Child Health Care Hospital in Jiaxing, China.
All twins and their mothers visited one of three clinics closest to their home on a designated weekend morning for data collection. Physical and medical examinations, including collection of fasting blood samples, were performed by research physicians and nurses with specific training for this study. Instruments were calibrated before use at each session. Mothers completed a questionnaire about their family background and about their children.
Anthropometric measures
Subjects were measured by trained research staff following standard protocols. Barefoot height (in cm to nearest 0·1) was measured using a wall-mounted stadiometer (Yiwu Fengkuang); two readings were recorded and averaged for analysis. Participants were weighed without shoes and with light clothes to the nearest 0·1 kg using a digital scale integrated into a bioelectric impedance analyzer system (Yiwu Fengkuang). BMI was calculated as weight (kg)/height (m)2.
Dietary intake assessment
Food consumption was assessed using a 145-item, self-administered FFQ, which measured children’s food intakes during the previous 12 months. This FFQ was initially designed for children in Beijing and was validated against four 24-h recalls; the FFQ showed good reliability and moderate validity( Reference Wang 18 ). Subjects provided information on the type and amount of food consumed. Children were also provided with two-dimensional colourful pictures of measuring plates and bowls to facilitate estimation of portion size. Standardised interviews were conducted when necessary to help children better understand the questionnaire. All interviewers were required to follow a standardised protocol for data collection. Energy and nutrient intakes were calculated using the Nutrition Data Systems established by the China Centers for Disease Control and Prevention( Reference Yang 19 ).
Assessment of fasting serum glucose, insulin and basal insulin resistance and sensitivity measurements
Fasting serum glucose was measured by the glucose oxidase method. Insulin was examined by electrochemiluminescence immunoassay. Homoeostasis model of assessment–insulin resistance (Homa-IR) and the quantitative insulin sensitivity check index (Quicki) were calculated on the basis of the following formulae: HOMA-IR=fasting insulin (µU/ml)×fasting glucose (mmol/l)/22·5; Quicki=1/(log (fasting insulin (µU/ml))+log (fasting glucose (mg/dl))).
Zygosity
MZ and DZ twin status was ascertained by nineteen questions covered in the maternal questionnaire. These questions were adapted from a validated Taiwan twin similarity questionnaire( Reference Chen, Chang and Wu 20 ) and based on other related studies( Reference Ooki and Asaka 21 ), which asked about the children’s degree of physical similarity and frequency of identity confusion. The accuracy rate of the validated questionnaire was over 95 % for self-reports of adolescent twins and their mothers compared with results based on DNA diagnosis( Reference Chen, Chang and Wu 20 ). Only one twin pair was asked to answer these questions directly because their mother did not answer them.
Statistical analysis
Descriptive analyses were conducted to calculate mean values and standard deviations for all continuous phenotypes. Fasting serum glucose, insulin, Homa-IR and the Quicki index were continuous variables, and were summarised as means with standard errors. ANOVA was conducted to compare the differences between two or more groups for all continuous variables. Similarity was estimated by intra-class correlations (ICC) in MZ and DZ, which were calculated from a random-effects one-way ANOVA model. Shrout–Fleiss ICC were calculated for MZ and DZ twins separately using SAS 9.2 (SAS Institute).
Second, the data were analysed using quantitative genetic models for twin data. Twin studies are based on the assumption that MZ twins are genetically identical at the sequence level, and DZ twins have 50 % of their genes shared by identical-by-descent. Thus, differences between MZ co-twins may be due to environmental effects, whereas differences between DZ co-twins are due to genetic and environmental effects. Under the above assumptions, four sources of variation can be interpreted as latent and standardised variance components using the structural equation models: additive genetic (A, additive effects of genes at multiple, independent genes), non-additive genetic (D, interactions between alleles at the same locus (dominance) or on different loci (epistasis)), common environmental (C, environmental effects shared by twins reared in the same family) and unique environmental effects (E, environmental effects unique to the individual). MZ pairs are assumed to share the same A and D genetic variances; DZ pairs are assumed to share one-half of the additive variance and one-quarter of the dominance variance. The C variance is assumed to be the same for both MZ and DZ twin pairs. Maximum likelihood methods were used to fit this general model and to estimate heritability of glucose, insulin, Homa-IR and the Quicki index. Heritability, which represents the proportion of variation in a quantitative trait due to genetic variation, was defined as the proportion of genetic variance to total phenotypic variance. Models were fit using Mx statistical package( Reference Neale 22 ).
Third, we started the genetic modelling by running univariate models for glucose, insulin, Homa-IR and the Quicki index separately to estimate genetic and environmental influences and to find the best model for each trait. A likelihood ratio test (LRT) was used to test whether a significantly poorer fit was obtained when removing parameters. The LRT should follow a χ 2 distribution, where a small χ 2 and a high P value indicate a good fit. Parsimony was assessed by means of the Akaike information criterion, and the model with the lowest Akaike information criterion was selected as the most parsimonious model. Estimates of variance components were derived from the best-fitting model and presented with 95 % CI.
Fourth, we then estimated pairwise genetic and environmental correlations between these quantitative phenotypes using full Cholesky decomposition. Genetic correlation is an estimate of the additive genetic effect that is shared between the pair of traits. For example, height and weight could both be heritable, but their genetic correlation can tell you whether they are likely to share the same genes. In this context, the correlations between dietary fat and each quantitative phenotype (glucose, insulin, Homa-IR and the Quicki index) were partitioned into an additive genetic correlation (r A), which represents common genes controlling these phenotypes, and an environmental correlation (r E), representing non-genetic, environmental factors common to dietary fat intake and the quantitative phenotypes. This bivariate heritability, which is a measure of the extent to which shared genetic influence generates a correlation between two traits, was calculated using the multivariate analysis module in the MX package.
Finally, a gene–diet interaction model was fit. The moderator factor (dietary fat intake) was denoted as M. This factor is presumed to affect the mean trait value (β M ) but also modify the effects of genetic (β X ) and environmental factors (β Y and β Z ) on the trait. This model implies that dietary fat can affect the four quantitative phenotypes (glucose, insulin, Homa-IR and the Quicki index) and their variances.
Results
Characteristics of dietary fat, insulin, glucose and insulin resistance
There were no systematic differences in means and variances of dietary fat intake, fasting serum glucose, fasting insulin, Homa-IR and the Quicki index between the MZ and the DZ twins (Table 1). The within-pair ICC for all traits were higher among MZ twins than among DZ twins, indicating that genetic factors are more important for glucose, insulin, Homa-IR and the Quicki index. The DZ correlation for dietary fat was nearly half of the corresponding MZ correlation, suggesting no presence of dominance (D) effects. Correlations for insulin, Homa-IR and the Quicki index within opposite-sex pairs were lower than within same-sex DZ pairs, suggesting the possible presence of sex-specific genetic effects (Table 1).
Homa-IR, homoeostasis model assessment-insulin resistance; Quicki, quantitative insulin sensitivity check index; MZ, monozygotic; DZ, dizygotic; SDZ, same-sex dizygotic; ODZ, opposite-sex dizygotic.
Correlations between dietary fat and fasting serum glucose, insulin, homoeostasis model of assessment-insulin resistance and the Quicki index
Dietary fat intake was significantly positively (but weakly) correlated with glucose (r 0·101, P=0·013), insulin (r 0·157, P=0·001) and Homa-IR (r −0·163, P<0·001), whereas dietary fat intake was negatively correlated with the Quicki index (r −0·163, P<0·001) in the entire sample. To test for possible sex difference, analyses of the trait relationships were also conducted separately by sex. We observed similar patterns of correlation in female twins, but no significant correlations among male twins were found (Table 2).
Homa-IR, homoeostasis model assessment-insulin resistance; Quicki, quantitative insulin sensitivity check index.
* Adjusted for age, sex, BMI, total energy.
† Adjusted for age, BMI, total energy.
Genetic and environmental correlations between these traits
We started our genetic modelling by estimating the best model for dietary fat intake, fasting serum glucose, insulin, Homa-IR and the Quicki index. The additive genetic/specific environment (AE) model offered the best fit for all of these traits: dropping common environmental (C) effect from the model had virtually no effect on model fit either. Fig. 1 summarises the proportions of phenotypic variance for all the traits explained by additive genetic and unique environmental factors under the best-fitting AE model. Estimated heritabilities for dietary fat intake, fasting serum glucose, insulin, Homa-IR and the Quicki index were 52, 70, 70, 63 and 55 %, respectively.
Fig. 1 also shows the model-based genetic and environmental correlations for these traits, as estimated from Cholesky models. The bivariate heritability is a measure of the extent to which shared genetic factors may influence two quantitative phenotypes and generates an estimated correlation for two traits. Our results showed that dietary fat intake and fasting serum insulin were significantly correlated (r 0·157), with a genetic correlation (r A 0·20; 95 % CI 0·08, 0·43). Dietary fat intake and glucose (r A 0·12; 95 % CI 0·01, 0·40), Homa-IR (r A 0·22; 95 % CI 0·10, 0·50) and the Quicki index (r A −0·22; 95 % CI −0·40, 0·04) all showed strong estimated genetic correlations. The environmental correlation was not significant (r E −0·07; 95 % CI −0·21, 0·07). The calculated bivariate heritabilities of dietary fat and insulin, fasting glucose, Homa-IR and the Quicki index were 0·121, 0·073, 0·125 and 0·118, respectively (Fig. 1).
Gene–environmental interactions on these type 2 diabetes-related traits
Finally, we tested dietary fat intake as a moderator of genetic and/or environmental effects on quantitative measures of T2D-related traits including glucose, insulin, Homa-IR and the Quicki index (Table 3). Fat intake significantly modified additive genetic effects on these T2D-related traits. The estimated additive genetic variance decreased, whereas the unique environmental variance increased with increasing dietary fat in determining insulin and the Quicki index (Fig. 2). This indicates that genetic factors play a less important role in determining insulin levels and the Quicki index in subjects with high dietary fat intakes compared with lower intakes. In contrast, the estimated additive genetic variance was increased, whereas the unique environmental variance decreased with increasing dietary fat intake from analyses of glucose and Homa-IR (Fig. 2). This suggests that genetic factors may play a more important role in determining glucose and Homa-IR levels among subjects with high dietary fat intakes compared with lower intakes.
Homa-IR, homoeostasis model assessment-insulin resistance; Quicki, quantitative insulin sensitivity check index.
* Additive genetic and specific correlations were based on re-parameterisation of Cholesky decomposition model.
Discussion
The present study provided unique insights about how dietary fat intake is associated with quantitative phenotypes related to T2D (including insulin, glucose, Homa-IR and the Quicki index) in Chinese children. To our knowledge, this is the first report to estimate genetic and environmental correlations between dietary fat intake and T2D-related traits in children. Our results suggest that genetic factors contribute to a significant proportion of the total variance in IR, IS and fat intake among Chinese children. Phenotypic correlations between dietary fat intake and quantitative traits related to T2D are mediated by common genetic factors.
Our results provide further evidence for the role of genes in controlling IR, IS and glucose metabolism. Our results are consistent with previous evidences showing estimated heritability for peripheral IS (h 2 0·53) and non-oxidative glucose metabolism (h 2 0·50) in young people, supporting the notion that there are both genetic and environmental aetiological factors controlling insulin action and non-oxidative glucose metabolism( Reference Poulsen, Levin and Petersen 23 ). Our findings lend further support for a major genetic component in the aetiology of insulin secretion.
Previous epidemiological studies have found that dietary fat intake is positively associated with T2D risk, blood insulin and glucose( Reference Vessby 24 , Reference Mayer-Davis, Monaco and Hoen 25 ). We previously found that high total fatty acids were positively associated with diabetes-related quantitative traits in Chinese( Reference Huang, Bhulaidok and Cai 26 , Reference Huang, Wahlqvist and Xu 27 ). Our findings in Chinese child twins further supported this result. Dietary fat intake was significantly positively correlated with glucose, insulin and Homa-IR levels. The potential mechanisms through which dietary fat influence IS levels were elucidated( Reference Galbo, Perry and Jurczak 28 – Reference Kim, Fillmore and Sunshine 33 ). In rodents, a high-fat diet increased the concentration of diacylglycerol in muscles and activated novel protein kinase C (PKC)( Reference SchmitzPeiffer, Browne and Oakes 32 ). Thus, the accumulation of diacylglycerol impaired activation of the insulin receptor( Reference Samuel, Petersen and Shulman 30 ). Similarly, infusion of lipid for 5 h caused IR in muscles associated with accumulation of intracellular diacylglycerol and specific activation of PKC( Reference Griffin, Marcucci and Cline 34 ). A study in mice without PKCθ showed the importance of activation of novel PKC and serine phosphorylation of insulin receptor substrate 1 (IRS1) for development of IR( Reference Kim, Fillmore and Sunshine 33 ). On the other hand, IR can also be attributed to lipid-induced defects in the insulin signalling pathway originating from a reduction in tyrosine phosphorylation of IRS1, which plays a key role in transmitting signals from the insulin and insulin-like growth factor-1 receptors to intracellular pathways phosphoinositide 3 kinase and protein kinase B (PI3K/Akt) and Erk mitogen-activated protein (MAP) kinase pathways( Reference Yu, Chen and Cline 35 ).
Homa-IR and fasting insulin levels showed high genetic correlations. Homa-IR and IS yielded moderate estimated genetic correlations, suggesting that these two quantitative traits are influenced, at least in part, by different genes( Reference Rasmussen-Torvik, Pankow and Jacobs 36 ). In addition, the correlations between dietary fat intake and T2D-related traits may also be mediated by shared genetic influences. Thus, to elucidate the mechanism, we conducted a bivariate analysis using Cholesky models in the present study. The estimated bivariate heritability reflects the extent to which shared genetic factors underlie a correlation between two quantitative traits. Our results showed that dietary fat intake and fasting serum insulin were significantly correlated, with common genetic factors creating a correlation. Overall 77 % of this phenotypic correlation was mediated by the shared genetic factors. In the same way, genetic factors also appear to underlie the correlations between dietary fat intake and glucose, Homa-IR and Quicki levels. Our results provide further evidence of some role of genetic factors in mediating phonotypic correlations between dietary fat and T2D-related traits.
Considering the evidence for gene–environment interactions in the aetiology of diabetes, we further investigated the effects of genetic and environmental interactions on T2D-related traits. The present study indicates that dietary fat significantly modified additive genetic effects on glucose, insulin, Homa-IR and Quicki levels. High dietary fat intake may accentuate the genetic influence in determining blood glucose and Homa-IR. In contrast, high dietary fat intake may attenuate the genetic influence in determining blood insulin and the Quicki index. Our findings can be supported by previous evidences that suggest a possible interaction between Pro12Ala polymorphism of PPARG2 (a recognised candidate gene for T2D) and dietary MUFA, such that obese people with the Ala-12 allele have higher Homa-IR values, especially if their intake of MUFA is low( Reference Soriguer, Morcillo and Cardona 37 ). Dietary fat intake modifies the effects of −514(C/T) polymorphism on HDL-cholesterol concentrations and its subclasses. Specifically, in the Framingham Study, TT subjects displayed impaired adaptation to high animal fat diets, which could in turn result in higher cardiovascular and diabetes risk( Reference Ordovas, Corella and Demissie 38 ). Therefore, our study together with previous studies further supported the hypothesis that IR results from the interaction between genetic and environmental factors.
In conclusion, genetic factors contribute to a significant proportion of the total variance in T2D-related traits among Chinese children. These associations between dietary fat intake and T2D-related traits are mostly mediated by genetic influences. Future longitudinal studies are needed to test the related causal relationships.
Acknowledgements
The authors thank all the study participants for their support. The authors thank Drs Zhu Li, Hua Chen, Yexuan Tao and Xia Liu for their efforts to develop the study as well as Dr Hong Xue and Vivian Wang for their assistance in managing some related research human subject protection issues. The authors also thank Drs Duo Li and Mark L. Wahlqvist from Zhejiang University for their comments on an early draft of the manuscript to help improve it. The content of this article is solely the responsibility of the authors and does not necessarily represent the official views of the funder.
The project including data collection and analysis was supported in part by research grants from the National Institutes of Institute of Diabetes and Digestive and Kidney (P60DK0079637), Health Eunice Kennedy Shriver National Institute of Child Health and Human Development and the Office of the Director, National Institutes of Health (U54 HD070725), the Nestle Foundation, and the Faculty Innovation Fund and Procter & Gamble Fellowship from the Johns Hopkins Bloomberg School of Public Health. The funders had no role in the design, analysis or writing of this article.
T. H. and Y. W. formulated the research question(s); T. H., T. B. and Y. W. designed the study; T. H., H. L. and W. Z. carried out the study; T. H. analysed the data and wrote the article.
The authors declare that there are no conflicts of interest.