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Synergy of BMI and family history on diabetes: the Humboldt Study

Published online by Cambridge University Press:  26 August 2009

Yue Chen*
Affiliation:
Department of Epidemiology and Community Medicine, Faculty of Medicine, University of Ottawa, 451 Smyth Road, Ottawa, Ontario, Canada, K1H 8M5
Donna C Rennie
Affiliation:
Institute of Agricultural Rural and Environmental Health, University of Saskatchewan, Saskatoon, Saskatchewan, Canada College of Nursing, University of Saskatchewan, Saskatoon, Saskatchewan, Canada
James A Dosman
Affiliation:
Institute of Agricultural Rural and Environmental Health, University of Saskatchewan, Saskatoon, Saskatchewan, Canada
*
*Corresponding author: Email ychen@uottawa.ca
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Abstract

Objective

To examine the joint effect of family history and BMI on diabetes.

Design

Cross-sectional study.

Setting

A rural community in Saskatchewan, Canada.

Subjects

The analysis was based on data from 2081 adults, 18–79 years of age, who participated in the Humboldt Study conducted in 2003. Doctor-diagnosed diabetes and family history of diabetes of biological parents and siblings were self-reported. Body weight and height were objectively measured. The interaction of family history and BMI on diabetes was assessed on an additive scale.

Results

The prevalence of diabetes was 7·9 %, and BMI and history of diabetes were two important predictors. The adjusted prevalence ratios were 1·76 (95 % CI 1·37, 2·27) and 2·59 (95 % CI 2·05, 3·31) for those with a BMI of 25·0–29·9 kg/m2 and of at least 30 kg/m2, respectively, compared with a BMI of less than 25 kg/m2, and was 2·41 (95 % CI 2·08, 2·80) for those with a family history of diabetes v. those without. The data indicated an additive interaction of family history and BMI on diabetes.

Conclusions

When exposed to both family history and overweight/obesity, individuals would have an increased risk that was greater than the sum of their single effects. Reduction of BMI would also reduce the risk of diabetes associated family history.

Type
Research Paper
Copyright
Copyright © The Authors 2009

Type 2 diabetes has increased rapidly internationally. Type 2 diabetes is a complex disorder, and both genetic and environmental factors play an important role in the disease development. Family history of diabetes increases the risk of type 2 diabetes(Reference Carlsson, Midthjell and Grill1Reference Bjornholt, Erikssen, Liestol, Jervell, Thaulow and Erikssen6). The more cases of diabetes found in a family, the younger the age of onset of type 2 diabetes(Reference Molyneaux, Constantino and Yue7). Family history of type 2 diabetes is associated with decreased insulin sensitivity and an impaired balance between insulin sensitivity and insulin secretion(Reference Arslanian, Bacha, Saad and Gungor8). A number of genes have been identified to be associated with type 2 diabetes(Reference Jafar-Mohammadi and McCarthy9Reference Das and Rao11).

The prevalence of type 2 diabetes is predicted to increase to epidemic proportions in the coming decades, primarily due to lifestyle changes(Reference Gable, Sanderson and Humphries12). A rapid increase in worldwide prevalence of obesity is believed to be a main reason(Reference Lorenzo, Serrano-Rios, Martinez-Larrad, Gonzalez-Villalpando, Williams, Gabriel, Stem and Haffner13). The increase in diabetes prevalence over recent decades has disproportionately comprised persons with high levels of obesity(Reference Gregg, Cheng, Narayan, Thompson and Williamson14Reference Smyth and Heron17).

There is increasing evidence for interactions between obesity and genetic factors in the development of diabetes(Reference Johnson, Williams and Spruill18). Obesity modifies the effects of the Asp905Tyr variant of PPP1R3A on risk of type 2 diabetes and insulin sensitivity(Reference Mammarella, Creati and Staniscia19). Obesity is associated with type 2 diabetes only among individuals with high serum γ-glutamyltransferase (GGT) activity, not in those with low serum GGT(Reference Lim, Lee, Park, Jin and Jacobs20). A family history of type 2 diabetes is associated with lower sensitivity to activated protein C in overweight and obese premenopausal women(Reference Pannacciulli, De Mitrio, Sciaraffia, Giorgino and De Pergola21). Family history reflects genetic susceptibility in addition to other factors, e.g. common environmental exposures, and we hypothesise that a family history of diabetes modifies the association between obesity and type 2 diabetes and that overweight/obesity is more strongly associated with type 2 diabetes among those with a family history than those without a family history of the disease.

Methods

We conducted a cross-sectional study in the town of Humboldt, Saskatchewan, in 2003. The target population of the study was all the town residents 6 years of age or more and was conducted among children (6–17 years) and adults (18–79 years), separately; the present analysis was based on data from adult residents only. A total of 2090 adult residents, 18–79 years of age (71 % of the target population), participated in the study, and the study methods have been detailed in earlier reports(Reference Chen, Rennie, Cormier and Dosman22, Reference Chen, Rennie, Cormier and Dosman23). Briefly, canvassers contacted all households within the town and surrounding areas and asked all eligible adult subjects in each home to participate in the study and to complete a written consent of participation. A questionnaire left by the canvassers was completed in the home by each subject and returned during a pre-arranged clinic visit. Written informed consent was obtained from each participant. The present study was approved by the University of Saskatchewan Research Ethics Board.

Respondents who answered the following question affirmatively were considered as having diabetes: ‘Has a doctor ever said you had diabetes?’ Family history of diabetes was obtained by asking questions if their biological parents/sibling had diabetes. Weight was measured to the nearest 0·1 kg using a calibrated hospital spring scale with subjects dressed in normal indoor clothing without shoes. Height in centimetres was measured against a wall using a fixed tape measure with participants standing shoeless on a hard surface. BMI was calculated as weight (kg)/height2 (m2). Subjects were grouped into three categories based on BMI (<25·0, 25·0–29·9 and ≥30 kg/m2). Adults with a BMI of 25·0–29·9 kg/m2 were considered to be overweight and those with a BMI ≥30 kg/m2 were defined as being obese.

Participants in the low education category did not proceed beyond secondary school; the high education category included subjects admitted to college or university, as well as those with a post-secondary school certificate or diploma. Subjects were classified into low- (<$50 000) and high-income (≥$50 000) groups based on total household income. Current smokers were participants who reported smoking every day or almost everyday, and had smoked at least twenty packs during their lifetime. Ex-smokers were those who were regular smokers but, at the time of the survey, had quit for at least 6 months. A regular drinker was defined as a person who drank alcoholic beverages at least once per week, on average.

The relationships between BMI, family history and diabetes were examined among 2081 adults aged 18–79 years, who provided information on BMI, family history and diabetes. We calculated the prevalence of diabetes according to various risk factors. Log-binomial regression model was used to estimate unadjusted and adjusted prevalence ratio (PR) for associations among BMI, family history and diabetes(Reference Deddens and Petersen24). The maximum likelihood estimations of PR were obtained and likelihood ratio CI were used for statistical inference. We also used a log-binomial regression model to evaluate the departures from additivity after adjustment for potential confounders. Indicator terms from each category of joint exposure were constructed in the model. People who were exposed neither to overweight/obesity nor to family history were defined as the reference category. Five indicator terms dealing with the joint effects of overweight/obesity and family history were built into the model. They indicate either the presence of each exposure and the absence of the other or the presence of joint exposure. We used the method developed by Zou(Reference Zou25) to estimate the additive effect of family history and BMI on the prevalence of diabetes. Relative excess risk of interaction (RERI), attributable proportion of interaction and Rothman’s synergy index were calculated to access deviation from the additive model(Reference Zou25).

Results

There were more female than male participants, 56 % v. 44 %. The participants had an average age of 51·9 (sd 15·8) years. The prevalence of doctor-diagnosed diabetes was 7·9 % in adults aged 18–79 years. Table 1 shows the characteristics of the study population associated with the prevalence of diabetes. Age, socio-economic status, smoking and alcohol drinking were significantly associated with the crude prevalence of diabetes.

Table 1 Prevalence of diabetes according to characteristics of the study population 18–79 years of age, the Humboldt Study, 2003

The prevalence increased significantly with BMI (Table 2). Of the participants, 23·0 % of the participants reported that at least one of their parents had diabetes and 12·5 % reported that at least one of their siblings had the disease. Overall, 29·7 % of the subjects had one or more diabetic parents or siblings. The prevalence of doctor-diagnosed diabetes was significantly higher among those with a family history of diabetes compared with those without (Table 2).

Table 2 Prevalence of diabetes associated with BMI and family history in adults 18–79 years of age, the Humboldt Study, 2003

A logistic regression model was first utilised to assess the impact of BMI, family history and individual characteristics on diabetes. Non-significant variables including sex, education, income and smoking status were excluded from further analysis. A log-binomial regression model was then used to assess the independent effect of BMI and family history on the prevalence of doctor-diagnosed diabetes. After controlling for age, alcohol drinking and family history, the adjusted PR for those with a BMI of at least 30 kg/m2 and a BMI of 25·0–29·9 kg/m2, compared with a BMI of less than 25 kg/m2, was 2·59 (95 % CI 1·05, 3·31) and 1·76 (95 % CI 1·37, 2·27), respectively (Table 3). After controlling for age, alcohol drinking and BMI, the adjusted PR was 2·41 (95 % CI 2·08, 2·80) for those with a family history compared with those without (Table 3).

Table 3 Unadjusted and adjustedFootnote * prevalence ratios (PR) and 95 % CI for diabetes in relation to BMI and family history in adults 18–79 years of age, the Humboldt Study, 2003

* Adjusted for age, alcohol drinking and family history for BMI associated with diabetes, and adjusted for age, alcohol drinking and BMI for family history associated with diabetes.

Figure 1 shows that the prevalence of doctor-diagnosed diabetes increased with BMI more rapidly in those with a family history of diabetes than those without a family history. It seems that those with a family history are more susceptible to diabetes due to overweight/obesity.

Fig. 1 Prevalence of diabetes by family history and BMI in adults aged 18–79 years (, normal; , overweight; , obese)

A log-binomial regression model was used to evaluate the departures from additivity for BMI and family history associated with diabetes, after adjustment for age and alcohol drinking. The risk of diabetes was approximately three-fold higher for those who either had family history or were obese before adjustment (Table 4). For those who had both family history and obesity, the PR was 5·70 (95 % CI 3·98, 8·17; Table 4). The RERI was 1·92, and 85 % of the diabetes risk was attributed to the synergy between overweight/obesity and family history. The combined effect of overweight/obesity and family history accounted for 36 % of those subjects who developed diabetes.

Table 4 AdjustedFootnote * prevalence ratios (PR) and 95 % CI for the combined effects of BMI and family history on diabetes in adults 18–79 years of age, the Humboldt Study, 2003

* Adjusted for age and alcohol drinking.

Discussion

Obesity is a major determinant of type 2 diabetes, and a number of studies have confirmed the association between obesity and type 2 diabetes(Reference Wild and Byrne26). BMI, waist circumference and waist-to-hip ratio are all associated with type 2 diabetes(Reference Vazquez, Duval, Jacobs and Silventoinen27). Based on data from thirty-two studies, the pooled relative risks for incident diabetes were 1·87 (95 % CI 1·67, 2·10), 1·87 (95 % CI 1·58, 2·20) and 1·88 (95 % CI 1·61, 2·19) per sd of BMI, waist circumference and waist-to-hip ratio(Reference Vazquez, Duval, Jacobs and Silventoinen27). A combined analysis of twenty-seven studies from the Asia Pacific region, which included 154 989 subjects with 1 244 793 person-years of follow-up, has shown that each 2 kg/m2 reduction of BMI is associated with a 27 % (23–30 %) lower risk of diabetes(Reference Ni Mhurchu, Parag, Nakamura, Patel, Rodgers and Lam28). Lost weight after gastric bypass surgery reduces the risk of diabetes(Reference Wild and Byrne26).

It is clear that obesity is associated with an increased risk of developing insulin resistance and type 2 diabetes. In obese individuals, adipose tissue releases increased amounts of NEFA, glycerol, hormones, adiponectin, resistin, TNF-α and IL-6, and results in an impairment of insulin sensitivity, development of insulin resistance and dysfunction of pancreatic islet β-cells(Reference Kahn, Hull and Utzschneider15, Reference Keller16).

Family history of diabetes has been recognised as an important risk factor for diabetes. Family history of diabetes is significantly associated with the risk of diabetes(Reference Valdez, Yoon, Liu and Khoury2, Reference Annis, Caulder, Cook and Duquette29) and has an exponential impact on ageing-associated increase in the risk of diabetes(Reference Shirakawa, Ozono, Kasagi, Oshima, Kamada and Kambe30). Our study indicated that family history was associated with a higher risk of diabetes in adults 18–79 years of age. Siblings’ status of diabetes tended to have a greater impact on the prevalence of diabetes than that of parents, but the difference was not statistically significant. They were merged in the analysis of interaction with overweight/obesity.

It has been found that declines in insulin sensitivity and in the disposition index, and increases in fasting glucose are significantly influenced by a maternal history of type 2 diabetes(Reference Kelly, Lane, Weigensberg, Koebnick, Roberts, Davis, Toledo-Corral, Shaibi and Goran31). In children, family history of type 2 diabetes is associated with decreased insulin sensitivity and clearance(Reference Arslanian, Bacha, Saad and Gungor8).

Although there is strong evidence for both family history and obesity being important determinants of type 2 diabetes, it has not been well understood if family history and obesity synergistically influence diabetes. In an earlier cross-sectional study of 3128 men and 4821 women aged 35–56 years, combined exposure to a family history of diabetes and lifestyle-related risk factors, including obesity, had a greater effect on type 2 diabetes than any of these factors alone. The additive interaction was statistically significant for a family history of diabetes and obesity in women with prediabetes, but not in others(Reference Hilding, Eriksson, Agardh, Grill, Ahlbom, Efendic and Ostenson4). In our study, we asked questions about family history of their biological father, mother and siblings and one-third of the study population had at least one of the relatives having the disease. The synergistic effect of family history and overweight/obesity was statistically significant, indicated by the indices of synergism.

The mechanisms for possible synergistic influence of a family history of diabetes and obesity on prevalent type 2 diabetes need to be further explored. Family history scores based on the diabetes status of the participants’ parents and older siblings were found to be significantly correlated with reduced insulin sensitivity and increased subcutaneous and visceral fat in families from San Antonio and Los Angeles, but not in the leaner Hispanic families from San Luis Valley(Reference Mitchell, Zaccaro, Wagenknecht, Scherzinger, Bergman, Haffner, Hokanson, Norris, Rott and Saad32). The authors of the study believed that the lack of an association between family history score and insulin resistance/fat accumulation in leaner families is likely due to a suppression of the expression of transmitted diabetes genes in leaner, more physically active populations(Reference Mitchell, Zaccaro, Wagenknecht, Scherzinger, Bergman, Haffner, Hokanson, Norris, Rott and Saad32). If this speculation is true, it may explain our observation that family history has a larger influence on diabetes in the overweight/obese than normal weight populations.

There are several limitations for the study. First, it is a cross-sectional study and we are not able to make any firm inclusion about causality. Second, the study is relatively small and only limited variables are included in the log-binomial regression model. This approach allowed us to produce PR estimates and to provide more accurate estimates for BMI and family history synergism. Third, the diagnosis of diabetes was self-reported, although validated questions were used in the survey.

Since type 2 diabetes poses substantial burdens of medical care and financial resources for individual patients, their families and society as a whole, prevention and control of the disease is of great importance. Family history represents valuable information on genetic and common environmental exposures. Family history can be a useful screening tool to identify people at high risk for diabetes(Reference Hariri, Yoon, Moonesinghe, Valdez and Khoury5, Reference Annis, Caulder, Cook and Duquette29, Reference Hariri, Yoon, Qureshi, Valdez, Scheuner and Khoury33) and is considered as a promising public health tool to fight the growing epidemic of diabetes(Reference Harrison, Hindorff, Kim, Wines, Bowen, McGrath and Edwards34). The validity and utility of using family history as a screening tool can be largely improved by combining with BMI or other measures of adiposity, which will help in identifying high-risk groups and developing targeted intervention programmes.

Acknowledgements

The present study was supported by a grant from the Canadian Institutes of Health Research (200203MOP-100752-POP-CCAA-11829). None of the authors had a personal or financial conflict of interest with any aspect of this research. All authors contributed to the conception and design of the study; D.C.R. and J.A.D. supervised the data collection; Y.C. performed the statistical analysis; and all authors contributed to the writing of the manuscript.

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Figure 0

Table 1 Prevalence of diabetes according to characteristics of the study population 18–79 years of age, the Humboldt Study, 2003

Figure 1

Table 2 Prevalence of diabetes associated with BMI and family history in adults 18–79 years of age, the Humboldt Study, 2003

Figure 2

Table 3 Unadjusted and adjusted* prevalence ratios (PR) and 95 % CI for diabetes in relation to BMI and family history in adults 18–79 years of age, the Humboldt Study, 2003

Figure 3

Fig. 1 Prevalence of diabetes by family history and BMI in adults aged 18–79 years (, normal; , overweight; , obese)

Figure 4

Table 4 Adjusted* prevalence ratios (PR) and 95 % CI for the combined effects of BMI and family history on diabetes in adults 18–79 years of age, the Humboldt Study, 2003