Diabetes Care
HOME HELP FEEDBACK SUBSCRIPTIONS ARCHIVE SEARCH TABLE OF CONTENTS
 QUICK SEARCH:   [advanced]


     


This Article
Right arrow Abstract Freely available
Right arrow Full Text (PDF)
Right arrow Purchase Article
Right arrow View Shopping Cart
Right arrow Alert me when this article is cited
Right arrow Alert me if a correction is posted
Services
Right arrow Email this article to a friend
Right arrow Similar articles in this journal
Right arrow Similar articles in PubMed
Right arrow Alert me to new issues of the journal
Right arrow Download to citation manager
Right arrow Request Permissions
Citing Articles
Right arrow Citing Articles via HighWire
Right arrow Citing Articles via Google Scholar
Google Scholar
Right arrow Articles by Liese, A. D.
Right arrow Articles by Mayer-Davis, E. J.
Right arrow Search for Related Content
PubMed
Right arrow PubMed Citation
Right arrow Articles by Liese, A. D.
Right arrow Articles by Mayer-Davis, E. J.
Related Collections
Right arrowRelated Article
Right arrowEditorial
Social Bookmarking
 Add to CiteULike   Add to Del.icio.us   Add to Digg   Add to Reddit   Add to Technorati  
What's this?
Diabetes Care 28:2832-2838, 2005
© 2005 by the American Diabetes Association, Inc.


Clinical Care/Education/Nutrition
Original Article

Dietary Glycemic Index and Glycemic Load, Carbohydrate and Fiber Intake, and Measures of Insulin Sensitivity, Secretion, and Adiposity in the Insulin Resistance Atherosclerosis Study

Angela D. Liese, PHD, MPH1, Mandy Schulz, MSC, MSPH1,2, Fang Fang, MSC1, Thomas M.S. Wolever, MD, PHD3, Ralph B. D’Agostino, Jr, PHD4, Karen C. Sparks, MSPH1 and Elizabeth J. Mayer-Davis, PHD1,5

1 Department of Epidemiology and Biostatistics, Arnold School of Public Health, University of South Carolina, Columbia, South Carolina
2 Department of Epidemiology, German Institute of Human Nutrition, University of Potsdam, Potsdam-Rehbruecke, Germany
3 Department of Nutritional Sciences, University of Toronto, Toronto, Canada
4 Department of Public Health Sciences, Wake Forest University School of Medicine, Winston-Salem, North Carolina
5 Center for Research in Nutrition and Health Disparities, Arnold School of Public Health, University of South Carolina, Columbia, South Carolina

Address correspondence and reprint requests to Angela D. Liese, PhD, MPH, Department of Epidemiology and Biostatistics, Arnold School of Public Health, University of South Carolina, 800 Sumter St., Columbia, SC 29205. E-mail: liese{at}sc.edu


    ABSTRACT
 TOP
 ABSTRACT
 INTRODUCTION
 RESEARCH DESIGN AND METHODS
 RESULTS
 CONCLUSIONS
 References
 
OBJECTIVE—We studied the association of digestible carbohydrates, fiber intake, glycemic index, and glycemic load with insulin sensitivity (SI), fasting insulin, acute insulin response (AIR), disposition index, BMI, and waist circumference.

RESEARCH DESIGN AND METHODS—Data on 979 adults with normal (67%) and impaired (33%) glucose tolerance from the Insulin Resistance Atherosclerosis Study (1992–1994) were analyzed. Usual dietary intake was assessed via a 114-item interviewer-administered food frequency questionnaire from which nutrient intakes were estimated. Published glycemic index values were assigned to food items and average dietary glycemic index and glycemic load calculated per subject. SI and AIR were determined by frequently sampled intravenous glucose tolerance test. Disposition index was calculated by multiplying SI with AIR. Multiple linear regression modeling was employed.

RESULTS—No association was observed between glycemic index and SI, fasting insulin, AIR, disposition index, BMI, or waist circumference after adjustment for demographic characteristics or family history of diabetes, energy expenditure, and smoking. Associations observed for digestible carbohydrates and glycemic load, respectively, with SI, insulin secretion, and adiposity (adjusted for demographics and main confounders) were entirely explained by energy intake. In contrast, fiber was associated positively with SI and disposition index and inversely with fasting insulin, BMI, and waist circumference but not with AIR.

CONCLUSION—Carbohydrates as reflected in glycemic index and glycemic load may not be related to measures of insulin sensitivity, insulin secretion, and adiposity. Fiber intake may not only have beneficial effects on insulin sensitivity and adiposity, but also on pancreatic functionality.

Abbreviations: AIR, acute insulin response • FFQ, food frequency questionnaire • FSIGT, frequently sampled intravenous glucose tolerance test • HOMA-IR, homeostasis model assessment of insulin resistance • IRAS, Insulin Resistance Atherosclerosis Study


    INTRODUCTION
 TOP
 ABSTRACT
 INTRODUCTION
 RESEARCH DESIGN AND METHODS
 RESULTS
 CONCLUSIONS
 References
 
In the U.S., 52% of energy intake is consumed via carbohydrates (1). Carbohydrate-containing foods vary systematically with respect to their effects on postprandial glucose and insulin response, these differences being quantified in the glycemic index (2). Foods with higher glycemic index values elicit by definition an increased acute glucose and insulin response (3). Extending this concept to whole meals or the total diet, it is conceivable that the glycemic index characteristics of a diet may have an impact on glucose metabolism, including effects on insulin secretion and eventual insulin resistance.

The glycemic load is a concept mathematically derived from both glycemic index and the amount of carbohydrate intake and intended to represent the overall glycemic effect of a diet (4). The glycemic load has recently been shown to have physiologic meaning, as increases in dietary glycemic load resulted in predictable increases in glycemia and insulinemia (5). It is therefore informative to evaluate the concepts of glycemic index and glycemic load in parallel. In addition, digestible carbohydrates and fiber support understanding some of the functional attributes of glycemic index and glycemic load.

High–glycemic index diets have been linked, albeit inconsistently, with higher insulin levels (6,7) and an elevated risk of developing diabetes (4,8,9). No epidemiologic data, to our knowledge, exist on the relation of glycemic index to direct measures of insulin sensitivity (SI) and insulin secretion, both of which are involved in the pathogenesis of diabetes. The disposition index is based on the hyperbolic relation of insulin secretion to SI and expresses the ability of the pancreatic ß-cell to compensate for changes in SI by increasing insulin secretion (1012). The purpose of our study was to evaluate the relation of dietary glycemic index, glycemic load, and carbohydrate and fiber intake to measures of insulin sensitivity, insulin secretion, and adiposity in the Insulin Resistance Atherosclerosis Study (IRAS).


    RESEARCH DESIGN AND METHODS
 TOP
 ABSTRACT
 INTRODUCTION
 RESEARCH DESIGN AND METHODS
 RESULTS
 CONCLUSIONS
 References
 
Subject selection
The design of IRAS has been described in detail elsewhere (11). More than 1,600 participants were recruited at four clinical centers between 1992 and 1994 for the IRAS baseline exam. The goal was to obtain nearly equal representation of participants across glucose tolerance status (normal glucose tolerance, impaired glucose tolerance, and non–insulin-taking type 2 diabetes), ethnicity (African American, Hispanic, and non-Hispanic white), sex, and age (40–49 years, 50–59 years, and 60–69 years). All participants provided written informed consent as approved by their respective field center’s institutional review board.

Data collection
IRAS required a two-visit protocol, the first to determine glucose tolerance status and the second to measure SI. Participants were asked to fast for 12 h before each of the two visits, abstain from heavy exercise and alcohol for 24 h, and refrain from smoking the morning of the visit. A 2-h, 75-g oral glucose tolerance test (Orange-dex; Custom Laboratories, Baltimore, MD) was performed during the first visit, and World Health Organization criteria (13) were used to assign glucose tolerance status. Individuals currently taking oral hypoglycemic medications were classified as having type 2 diabetes regardless of the results of the oral glucose tolerance test.

SI and acute insulin response (AIR) were assessed using a 12-sample, insulin-enhanced, frequently sampled intravenous glucose tolerance test (FSIGT) (14,15) with minimal model analysis (16). Two modifications of the protocol were used: injection of insulin rather than tolbutamide (17) and a reduced number of plasma samples (12 rather than 30) (18). SI was calculated by mathematical modeling methods; the time course of plasma glucose was fit using nonlinear least squares methods with the plasma insulin values as a known input to the system (according to the method known as MINMOD, which was developed by Richard N. Bergman, Ph.D., in 1986) (19). AIR was calculated based on insulin levels through the 8-min blood samples before insulin infusion. Fasting plasma insulin was determined by radioimmunoassay (20).

Anthropometric measures were taken with the participant in lightweight clothing with shoes removed. Height and weight were measured in duplicate and recorded to the nearest 0.5 cm and 0.1 kg, respectively. BMI was calculated as weight (in kilograms) divided by the square of height (in meters) (2). Minimum waist circumference was measured using a flexible steel tape measure at the natural indentation or at a level midway between the iliac crest and the lower edge of the rib cage if no natural indentation was visible. Waist was recorded to the nearest 0.5 cm, and the mean of two measures within 1 cm of each other was used. Total energy expenditure was estimated based on an interviewer-administered, 1-year activity recall that incorporated activities current among IRAS participants, the details of which have been described (21).

Usual intake of diet was assessed by interview using a 1-year, semiquantitative, 114-item food frequency interview modified from the National Cancer Institute-Health History and Habits Questionnaire to include regional and ethnic food choices across the four clinical centers (22). Participants were asked to recall intake of foods and beverages over the past year. Validity and reproducibility of the IRAS food frequency questionnaire (FFQ) has been demonstrated (22). Interviewers were centrally trained and certified, and audiotapes of interviews were reviewed quarterly. Alcohol intake was evaluated separately using a frequency approach with additional questions about recent use and average lifetime use. Subjects were asked about their usual consumption of wine, beer, mixed drinks/mixers, and liquors. Frequency of consumption was expressed as servings per day standardized to a medium serving size.

Estimation of nutrients, glycemic index, and glycemic load
Daily nutrient and energy intake was estimated from the FFQ and the alcohol questionnaire using an expanded nutrient database (HHHQ-DIETSYS analysis software, version 3.0; National Cancer Institute, Bethesda, MD, 1993). All analyses of carbohydrates are based on digestible carbohydrates, which were calculated by subtracting fiber intake from total carbohydrate intake. We chose this approach to be in line with the approach to testing of glycemic index values of foods, where measurements are based only on the carbohydrates that are absorbable, i.e., the digestible fraction (2,23).

We assigned mean glycemic index values based on the white bread standard from published data (23) and other available resources (T.M.S.W, personal communication) to all 114 FFQ line items plus three items assessed in the exam I interview on alcohol consumption (beer, wine, liquors) plus several additional foods (that were identified in open-ended questions as being consumed more than once per week). Details of the glycemic index and glycemic load estimation procedures in our study have been published (24).

Average dietary glycemic index was computed by summing the products of the digestible carbohydrate content per serving for each item, multiplied by the average number of servings of that food per day, multiplied by its glycemic index, all divided by the total amount of digestible carbohydrate daily intake (25). The average dietary glycemic load was computed like the glycemic index but by dividing by 100 instead of the total digestible carbohydrate intake. Finally, the average dietary glycemic index and glycemic load values were converted to the glucose = 100 scale by multiplication with the factor 0.7.

Statistical analysis
Analyses were limited to 1,087 individuals with normal (66%) or impaired (34%) glucose tolerance, excluding individuals with diabetes at baseline because this might have altered their dietary behavior. We subsequently excluded 16 participants due to missing data on glycemic index or glycemic load, 79 with missing values for SI, 2 with missing fasting insulin, 4 with missing anthropometric data, and another 6 subjects with missing covariates. After model diagnostics, one outlier was excluded. This left 979 participants with complete data for analysis. Because the distribution of SI is skewed right and 58 individuals had an SI value of 0, we calculated the natural logarithm (log) after adding a constant 1 since the log of 0 cannot be taken. AIR and fasting insulin were also log transformed. For AIR, so that all values were positive before transformation, a constant of 20 was added. Given these logarithmic transformations, the disposition index, typically calculated as the product of AIR and SI, was created as the sum of log (AIR + 20) and log (SI + 1). With these transformations, the distributions of the resulting residual values for the models we fit approached normality, based on visual inspection of residual plots and normal probability plots. No transformations were necessary for BMI and waist. To evaluate the relation of the dietary exposures with measures of SI and adiposity, we conducted linear regression analyses because all variables under study were continuous in nature and no threshold effects were observed in descriptive analyses. Results were presented as ß coefficients and P values of the carbohydrate-related exposure variables. To evaluate our results in a manner directly comparable to previous work, we categorized the IRAS population into quintiles of carbohydrate intake, fiber intake, glycemic index, and glycemic load and estimated mean levels of SI and adiposity within those categories. Results of the categorical approach were entirely consistent with the linear approach and hence not shown.

We evaluated the impact of potential effect modifiers, including age-groups, ethnicity, sex, family history of diabetes, BMI (in categories), and glucose tolerance status by conducting stratified analyses and comparing the size and direction of the effect estimates. In addition, two-way interactions between exposures and effect-modifiers were examined. There was no evidence for significant interaction with the factors listed above, including level of overweight. The associations of carbohydrate-related exposures were first described at the unadjusted level and subsequently adjusted for confounders that were associated at the P < 0.05 level. The confounders in the most parsimonious models were age, sex, ethnicity/clinic, family history of diabetes, current smoking, and total energy expenditure (21). Education effects were not significant, and thus this variable was omitted from final models. Because we explicitly wanted to evaluate the contribution of demographic and lifestyle variables to the associations under study, we present this model second. In a third and final step, we additionally adjusted for total energy intake using the energy partition method, which controls for the noncarbohydrate contribution of correlated foods (26). We chose this approach over other methods because in the categorical analyses, the ensuing categories retained information on amount of total dietary intake, allowing us to parse out the contribution of carbohydrates from noncarbohydrate sources such as protein and fat. Subsequently, we repeated this analysis using the residual method for energy adjustment (27) to be able to compare our results directly with other studies. Our conclusions were unchanged. All analyses were performed using SAS version 8.2 (SAS Institute, Cary, NC).


    RESULTS
 TOP
 ABSTRACT
 INTRODUCTION
 RESEARCH DESIGN AND METHODS
 RESULTS
 CONCLUSIONS
 References
 
Descriptive characteristics of the IRAS population are shown in Table 1. The IRAS population consumed an average of 220 g/day of digestible carbohydrates and 17 g/day of fiber. The average glycemic index and glycemic load were 58 and 128 g/day, respectively. A higher SI value expresses increased insulin sensitivity, while a higher fasting insulin implies increased insulin resistance. A higher AIR indicates greater insulin secretion in response to glucose, and a higher disposition index implies increasing pancreatic functionality.


View this table:
[in this window]
[in a new window]
 
Table 1— Characteristics of participants with normal or impaired glucose tolerance in IRAS Exam I, 1992–1994 (n = 979)

 
Table 2 shows the relation of the total intake of digestible carbohydrates, fiber, glycemic index, and glycemic load to measures of SI, insulin secretion, and adiposity. A significant positive linear relationship was observed between carbohydrate intake and levels of fasting insulin, BMI, and waist circumference both in unadjusted models and after adjustment for age, sex, ethnicity/clinic, family history of diabetes, current smoking, and total energy expenditure. Consistent with this finding, an inverse association was observed between carbohydrate intake and SI. However, adjustment for total energy intake (from noncarbohydrate sources) completely explained the associations, a finding replicated using the residual method. The crude association of digestible carbohydrates and AIR was explained entirely by demographic and lifestyle correlates. After adjustment, no association was observed with either AIR or disposition index. When the final models were additionally adjusted for fiber intake, a small but significant positive association of digestible carbohydrates with fasting insulin and waist circumference emerged, as did an inverse association with SI (data not shown). For BMI, AIR, and disposition index, results remained unchanged.


View this table:
[in this window]
[in a new window]
 
Table 2— Association of digestible carbohydrate intake, fiber, glycemic index, and glycemic load with measures of SI, insulin secretion, and adiposity, IRAS Exam I, 1992–1994 (n = 979)

 
The association of dietary fiber intake and measures of SI, insulin secretion, and adiposity are shown in the second column of Table 2. Fiber was significantly associated with SI, fasting insulin, BMI, and waist circumference after full multivariate adjustment including total energy intake. For example, a 10-g-higher fiber intake was associated with a 1.88-cm-smaller waist circumference, a 0.80-kg/m2-lower BMI, a 0.08-pmol/ml-lower level of fasting insulin, and a 0.123-higher level of SI. While in the unadjusted analyses, increased fiber intake was associated with more insulin resistance and higher levels of adiposity; this was explained entirely by confounding due to energy intake. While there was no association of fiber with AIR, disposition index was related to fiber intake after full adjustment. To address the question to what extent the association of fiber with measures of SI could be explained by concurrent BMI, we additionally adjusted the final models for SI and fasting insulin for BMI (data not shown). Fiber continued to be significantly associated with increased SI after adjustment for BMI. However, the association with fasting insulin was markedly attenuated.

No association of glycemic index was observed with levels of SI, fasting insulin, AIR, disposition index, BMI, or waist circumference by linear regression analysis. Adjustment for relevant confounders including energy intake did not impact the findings. Additional adjustment for fiber intake, which in other studies had increased the strength of the associations, had no impact in our data.

In contrast, a significant, consistent, and linear relationship between glycemic load and outcome levels was observed that was positive for fasting insulin, BMI, and waist circumference and inverse for SI. This association was present both in the crude models and after multivariate adjustment. In parallel to the findings for total carbohydrate intake, additionally adjusting for total energy intake from noncarbohydrate sources (or alternatively with the residual method) entirely explained the association. There was no association of glycemic load with AIR or disposition index after taking into account demographic and lifestyle correlates. After additional adjustment for fiber intake, a small but significant negative association between glycemic load and SI and a positive association between glycemic load and waist emerged. No effect was seen on the relation with AIR, disposition index, and BMI.


    CONCLUSIONS
 TOP
 ABSTRACT
 INTRODUCTION
 RESEARCH DESIGN AND METHODS
 RESULTS
 CONCLUSIONS
 References
 
To our knowledge, the present study is the first to address the relation of glycemic index and glycemic load with a direct measure of insulin sensitivity determined by a FSIGT. No association of glycemic index, glycemic load, or carbohydrate intake was observed with SI or with fasting insulin levels taking into account total energy intake. Previously published reports have been based on indirect estimates of SI. The Zutphen Elderly study (6), focusing on glycemic index, observed no association with levels of fasting insulin. Two studies to date have used the homeostasis model assessment of insulin resistance (HOMA-IR) with contrasting results (7,28). Similar to our findings, Lau et al. (28) found no evidence of an association of glycemic index with HOMA-IR. The association with glycemic load was marginal and explained after adjusting for fiber. In contrast, McKeown et al. (7) reported positive associations of both glycemic index and glycemic load with HOMA-IR, independent of energy intake.

The suggestion that dietary glycemic index and load may be associated with insulin resistance–related diseases was initially supported by two epidemiologic studies reporting that high–glycemic index diets predicted the development of diabetes (4,8). The body of evidence that has since emerged is truly equivocal. Two negative prospective studies (29,30) demonstrated a lack of an association for both glycemic index and glycemic load. A total of three studies have shown positive associations (4,8,9), one showing consistent associations for both glycemic index and glycemic load (4), while in the other two only glycemic index was predictive of diabetes (8,9).

We also explored the relation of glycemic index, glycemic load, and carbohydrate intake to measures of insulin secretion and pancreatic functionality. No association of glycemic index, glycemic load, or carbohydrates was observed with AIR or disposition index. Previous work in our population on alcohol intake, fat intake, and physical activity similarly reported no impact of these behavioral factors on AIR or disposition index (31). A recent intervention study, however, observed a significant improvement in disposition index among individuals with impaired glucose tolerance randomized to a high-carbohydrate, low–glycemic index diet (32). Smaller improvements in SI did not reach statistical significance. In an animal model, high–glycemic index diets led to hypersecretion of insulin but did not impact SI (33).

Because insulin resistance is influenced by level of adiposity, we also focused on BMI and waist circumference. Glycemic index was not associated with BMI or waist circumference. While total carbohydrate intake and glycemic load were positively associated with higher levels of BMI and waist circumference, these associations were explained entirely by confounding due to correlated energy intake. To our knowledge, there are no published epidemiologic data with which to compare our data on glycemic index and adiposity. In contrast to our findings, experimental and intervention studies seem to imply health-promoting effects of low–glycemic index and glycemic load diets. In overweight populations, weight and fat loss was achieved after several months in the low–glycemic index group compared with the control groups (34,35). As recently reviewed, data from animal models and acute and short-term studies in humans support the concept that high–glycemic index diets affect appetite control, nutrient portioning, and therefore fat storage and promote weight gain (36).

The discrepancy between the experimental evidence on low–glycemic index intervention diets and our epidemiologic findings may be partially explained by the fact that the glycemic index distribution of observational populations is generally centered around the high–glycemic index diets of experiments. The median glycemic index in IRAS of 58 (glucose standard) is similar to averages in the high–glycemic index groups (37,38). Moreover, the level of low–glycemic index diets in experiments (e.g., 3941) (37,38) may be only seen in the most extreme tails of general populations. In IRAS, the absolute lowest glycemic index value was 45, i.e., well above typical low–glycemic index intervention diets. In other populations, the averages for the lowest glycemic index quintiles have ranged from 48 to 50 (29,30,39). Thus, diets consumed by free-living individuals may not approach the glycemic index values needed to achieve preventive potential.

Our data indicate that an increased fiber intake was associated with decreased levels of fasting insulin, waist circumference, and BMI. Additionally, we observed a significant positive relation with SI and disposition index, while no effect on AIR was observed. Of note is the importance of adjusting for caloric intake in this analysis. Ludwig et al. (40) have previously documented the relation of total dietary fiber with weight gain, central and overall adiposity, and fasting insulin levels. More recently, fiber intake, especially cereal fiber, was inversely related to the metabolic syndrome and HOMA-IR (7,41). Previous work has also shown that low cereal fiber intake increased the risk of type 2 diabetes (8,29). Unfortunately, our data do no allow us to differentiate between various sources of fiber. A recent study indicates that fiber may not be associated with insulin secretion as assessed by the insulinogenic index (41), a finding confirmed by the negative association with our AIR measure based on FSIGT. However, our study did observe an association with disposition index, which indicates that fiber may play a role in stimulating insulin secretion relative to levels of SI.

The role of fiber in the context of analyses relating glycemic index or glycemic load to health outcomes merits special consideration. While most naturally occurring foods high in viscous fiber (e.g., barley, legumes) are low in glycemic index due to reduced rate of carbohydrate absorption (42), foods containing processed fibers such as cereal fiber do not reduce glycemic response (e.g., white bread and wholemeal bread have very similar, rather high–glycemic index values). This raises the question of how to conceptualize fiber intake relative to glycemic index and glycemic load in statistical analyses. Most studies have treated fiber intake essentially as a confounder of glycemic index or glycemic load (7,29,30). Even though conceptually this may be an overadjustment (leading to a bias toward the null), several investigations reported an increase in the strength of their respective glycemic index outcome associations after adjustment for fiber (4,8). In addition, the joint effect of fiber intake and dietary glycemic index on heath outcomes was explored (4,8,9) by testing for statistical interactions. These findings are similarly difficult to interpret because of the interrelation of glycemic index and fiber (24).

Consistent with previous studies, the associations of total carbohydrate intake were not independent of energy intake (4,7,8,43). Because glycemic load is a function of both glycemic index and carbohydrate intake, the relative contribution of glycemic index depends on the amount of carbohydrates. In IRAS, with a narrow distribution of dietary glycemic index contrasting with a large amount of variation in total carbohydrates, in effect, carbohydrate intake plays a more important role in determining glycemic load, as we have shown (24). One would therefore expect to find similar results for glycemic load and carbohydrates, which, in fact, was the case in our study.

A methodological limitation of our study is that the IRAS FFQ, like most others, was not developed with glycemic index estimation in mind, thus no validation data for dietary glycemic index estimation exist. The IRAS FFQ was validated in a multiethnic subsample of the IRAS population with respect to nutrients including total carbohydrate intake and fractions of carbohydrates (fructose and starch) (22). Pearson correlation coefficients for FFQ carbohydrate estimates compared with eight 24-h recalls were moderate at r = 0.39 unadjusted (r = 0.37 adjusted for energy). However, they differed substantially across ethnic group and center, ranging from 0.25 in rural Hispanics and 0.39 in urban African Americans to 0.64 in urban non-Hispanic whites. These findings are highly comparable to other work indicating lower levels of validity in minority populations (44,45). It is therefore important to note that our conclusions were unchanged when we stratified our analyses on ethnic group.

In conclusion, our results demonstrate a remarkable degree of consistency in finding a lack of association of glycemic index, glycemic load, and carbohydrate intake with measures of insulin sensitivity, insulin secretion, and adiposity. Consistent with previous findings, fiber intake was positively associated with SI and inversely with adiposity and may additionally have a positive impact on pancreatic functionality.


    Acknowledgments
 
This study was supported by an American Diabetes Association Clinical Research Award to A.D.L. The IRAS study was supported by National Institutes of Health/National Heart, Lung, and Blood Institute Grants UO1 HL/17887, UO1 HL/17889, UO1 HL/17890, UO1 HL/17892, UO1 HL/17902, and DK29867.


    Footnotes
 
T.M.S.W. has received grants from Glycemic Index Testing and is on the boards of Glycemic Index Testing and Glycemic Index Laboratories.

A table elsewhere in this issue shows conventional and Système International (SI) units and conversion factors for many substances.

See accompanying editorial, p. 2978.

Received for publication May 24, 2005. Accepted for publication July 25, 2005.


    References
 TOP
 ABSTRACT
 INTRODUCTION
 RESEARCH DESIGN AND METHODS
 RESULTS
 CONCLUSIONS
 References
 

  1. Wright JD, Wang CY, Kennedy-Stephenson J, Ervin RB: Dietary intake of ten key nutrients for public health, United States: 1999–2000. Adv Data1 –4,2003
  2. Jenkins DJA, Wolever TMS, Taylor RH, Barker H, Fielden H, Baldwin JM, Bowling AC, Newman HC, Jenkins AL, Goff DV: Glycemic index of foods: a physiological basis for carbohydrate exchange. Am J Clin Nutr34 :362 –366,1981[Abstract/Free Full Text]
  3. Wolever TMS, Jenkins DJA, Jenkins AL, Josse RG: The glycemic index: methodology and clinical implications. Am J Clin Nutr54 :846 –854,1991[Abstract/Free Full Text]
  4. Salmerón J, Manson JE, Stampfer MJ, Colditz GA, Wing AL, Willett WC: Dietary fiber, glycemic load, and risk of non-insulin-dependent diabetes mellitus in women. JAMA277 :472 –477,1997[Abstract]
  5. Brand-Miller JC, Thomas M, Swan V, Ahmad ZI, Petocz P, Colagiuri S: Physiological validation of the concept of glycemic load in lean young adults. J Nutr133 :2728 –2732,2003[Abstract/Free Full Text]
  6. van Dam RM, Visscher AW, Feskens EJ, Verhoef P, Kromhout D: Dietary glycemic index in relation to metabolic risk factors and incidence of coronary heart disease: the Zutphen Elderly Study. Eur J Clin Nutr54 :726 –731,2000[Medline]
  7. McKeown NM, Meigs JB, Liu S, Saltzman E, Wilson PW, Jacques PF: Carbohydrate nutrition, insulin resistance, and the prevalence of the metabolic syndrome in the Framingham offspring cohort. Diabetes Care27 :538 –546,2004[Abstract/Free Full Text]
  8. Salmerón J, Ascherio A, Rimm EB, Colditz GA, Spiegelman D, Jenkins DJ, Stampfer MJ, Wing AL, Willett WC: Dietary fiber, glycemic load, and risk of NIDDM in men. Diabetes Care20 :545 –550,1997[Abstract]
  9. Schulze MB, Liu S, Rimm EB, Manson JE, Willett WC, Hu FB: Glycemic index, glycemic load, and dietary fiber intake and incidence of type 2 diabetes in younger and middle-aged women. Am J Clin Nutr80 :348 –356,2004[Abstract/Free Full Text]
  10. Bergman RN, Phillips LS, Cobelli C: Physiologic evaluation of factors controlling glucose tolerance in man: measurement of insulin sensitivity and beta-cell glucose sensitivity from the response to intravenous glucose. J Clin Invest68 :1456 –1467,1981
  11. Wagenknecht LE, Mayer EJ, Rewers M, Haffner S, Selby J, Borok GM, Henkin L, Howard G, Savage PJ, Saad MF: The insulin resistance atherosclerosis study (IRAS) objectives, design, and recruitment results. Ann Epidemiol5 :464 –472,1995[Medline]
  12. Kahn SE, Prigeon RL, McCulloch DK, Boyko EJ, Bergman RN, Schwartz MW, Neifing JL, Ward WK, Beard JC, Palmer JP, Porte D Jr: Quantification of the relationship between insulin sensitivity and beta-cell function in human subjects: evidence for a hyperbolic function. Diabetes42 :1663 –1672,1993[Abstract]
  13. World Health Organization: Diabetes Mellitus: Report of a WHO Study Group. Geneve, World Health Org.,1985 (Tech. Rep. Ser. no. 727)
  14. Bergman RN, Finegood DT, Ader M: Assessment of insulin sensitivity in vivo. Endocr Rev6 :45 –86,1985[Medline]
  15. Yang YJ, Youn JH, Bergman RN: Modified protocols improve insulin sensitivity estimation using the minimal model. Am J Physiol253 :E595 –E602,1987
  16. Pacini G, Bergman RN: MINMOD: a computer program to calculate insulin sensitivity and pancreatic responsivity from the frequently sampled intravenous glucose tolerance test. Comput Methods Programs Biomed23 :113 –122,1986[Medline]
  17. Welch S, Gebhart SS, Bergman RN, Phillips LS: Minimal model analysis of intravenous glucose tolerance test-derived insulin sensitivity in diabetic subjects. J Clin Endocrinol Metab71 :1508 –1518,1990[Abstract]
  18. Steil GM, Volund A, Kahn SE, Bergman RN: Reduced sample number for calculation of insulin sensitivity and glucose effectiveness from the minimal model: suitability for use in population studies. Diabetes42 :250 –256,1993[Abstract]
  19. Saad MF, Anderson RL, Laws A, Watanabe RM, Kades WW, Chen YD, Sands RE, Pei D, Savage PJ, Bergman RN: A comparison between the minimal model and the glucose clamp in the assessment of insulin sensitivity across the spectrum of glucose tolerance: Insulin Resistance Atherosclerosis Study. Diabetes43 :1114 –1121,1994[Abstract]
  20. Herbert V, Lau KS, Gottlieb CW, Bleicher SJ: Coated charcoal immunoassay of insulin. J Clin Endocrinol Metab25 :1375 –1384,1965[Medline]
  21. Mayer-Davis EJ, D’Agostino R Jr, Karter AJ, Haffner SM, Rewers MJ, Saad M, Bergman RN: Intensity and amount of physical activity in relation to insulin sensitivity: the Insulin Resistance Atherosclerosis Study. JAMA279 :669 –674,1998[Abstract/Free Full Text]
  22. Mayer-Davis EJ, Vitolins MZ, Carmichael SL, Hemphill S, Tsaroucha G, Rushing J, Levin S: Validity and reproducibility of a food frequency interview in a multi-cultural epidemiology study. Ann Epidemiol9 :314 –324,1999[Medline]
  23. Foster-Powell K, Holt SH, Brand-Miller JC: International table of glycemic index and glycemic load values:2002 . Am J Clin Nutr76 :5 –56, 2002[Abstract/Free Full Text]
  24. Schulz M, Liese AD, Mayer-Davis EJ, D’Agostino RB, Fang F, Sparks KC, and Wolever TM: Nutritional correlates of dietary glycemic index: new aspects from a population perspective. Br J Nutr94 :397 –406,2005[Medline]
  25. Wolever TM, Nguyen PM, Chiasson JL, Hunt JA, Josse RG, Palmason C, Rodger NW, Ross SA, Ryan EA, Tan MH: Determinants of diet glycemic index calculated retrospectively from diet records of 342 individuals with non-insulin-dependent diabetes mellitus. Am J Clin Nutr59 :1265 –1269,1994[Abstract/Free Full Text]
  26. Howe GR, Miller AB, Jain M: Re: "Total energy intake: implications for epidemiologic analyses". Am J Epidemiol124 :157 –159,1986[Free Full Text]
  27. Willett W, Stampfer MJ: Total energy intake: implications for epidemiologic analyses. Am J Epidemiol124 :17 –27,1986[Free Full Text]
  28. Lau C, Faerch K, Glumer C, Tetens I, Pedersen O, Carstensen B, Jorgensen T, Borch-Johnsen K: Dietary glycemic index, glycemic load, fiber, simple sugars, and insulin resistance: the Inter99 study. Diabetes Care28 :1397 –1403,2005[Abstract/Free Full Text]
  29. Stevens J, Ahn K, Juhaeri, Houston D, Steffan L, Couper D: Dietary fiber intake and glycemic index and incidence of diabetes in African-American and white adults: the ARIC study. Diabetes Care25 :1715 –1721,2002[Abstract/Free Full Text]
  30. Meyer KA, Kushi LH, Jacobs DR Jr, Slavin J, Sellers TA, Folsom AR: Carbohydrates, dietary fiber, and incident type 2 diabetes in older women. Am J Clin Nutr71 :921 –930,2000[Abstract/Free Full Text]
  31. Mayer-Davis EJ, Levin S, Bergman RN, D’Agostino RB Jr, Karter AJ, Saad MF: Insulin secretion, obesity, and potential behavioral influences: results from the Insulin Resistance Atherosclerosis Study (IRAS). Diabete Metab Res Rev17 :137 –145,2001
  32. Wolever TM, Mehling C: High-carbohydrate-low-glycaemic index dietary advice improves glucose disposition index in subjects with impaired glucose tolerance. Br J Nutr87 :477 –487,2002[Medline]
  33. Pawlak DB, Bryson JM, Denyer GS, Brand-Miller JC: High glycemic index starch promotes hypersecretion of insulin and higher body fat in rats without affecting insulin sensitivity. J Nutr131 :99 –104,2001[Abstract/Free Full Text]
  34. Spieth LE, Harnish JD, Lenders CM, Raezer LB, Pereira MA, Hangen SJ, Ludwig DS: A low-glycemic index diet in the treatment of pediatric obesity. Arch Pediatr Adolesc Med154 :947 –951,2000[Abstract/Free Full Text]
  35. Ebbeling CB, Leidig MM, Sinclair KB, Hangen JP, Ludwig DS: A reduced-glycemic load diet in the treatment of adolescent obesity. Arch Pediatr Adolesc Med157 :773 –779,2003[Abstract/Free Full Text]
  36. Brand-Miller JC, Holt SH, Pawlak DB, McMillan J: Glycemic index and obesity. Am J Clin Nutr76 :281S –285S,2002[Abstract/Free Full Text]
  37. Febbraio MA, Stewart KL: CHO feeding before prolonged exercise: effect of glycemic index on muscle glycogenolysis and exercise performance. J Appl Physiol81 :1115 –1120,1996[Abstract/Free Full Text]
  38. Wolever TM, Bentum-Williams A, Jenkins DJ: Physiological modulation of plasma free fatty acid concentrations by diet: metabolic implications in nondiabetic subjects. Diabetes Care18 :962 –970,1995[Abstract]
  39. Ford ES, Liu S: Glycemic index and serum high-density lipoprotein cholesterol concentration among US adults. Arch Intern Med161 :572 –576,2001[Abstract/Free Full Text]
  40. Ludwig DS, Pereira MA, Kroenke CH, Hilner JE, Van Horn L, Slattery ML, Jacobs DR Jr: Dietary fiber, weight gain, and cardiovascular disease risk factors in young adults. JAMA282 :1539 –1546,1999[Abstract/Free Full Text]
  41. Ylonen K, Saloranta C, Kronberg-Kippila C, Groop L, Aro A, Virtanen SM: Associations of dietary fiber with glucose metabolism in nondiabetic relatives of subjects with type 2 diabetes: the Botnia Dietary Study. Diabetes Care26 :1979 –1985,2003[Abstract/Free Full Text]
  42. Wolever TM, Jenkins DJ, Vuksan V, Josse RG, Wong GS, Jenkins AL: Glycemic index of foods in individual subjects. Diabetes Care13 :126 –132,1990[Abstract]
  43. Yang EJ, Kerver JM, Park YK: Carbohydrate intake and biomarkers of glycemic control among US adults: the third National Health and Nutrition Examination Survey (NHANES III). Am J Clin Nutr77 :1426 –1433,2003[Abstract/Free Full Text]
  44. Kristal A, Feng Z, Coates RJ, Oberman A, George V: Assocations of race/ethnicty, education, and dietary intevention with the validity and reliability of a food frequency questionnaire. Am J Epidemiol146 :856 ,1997[Abstract/Free Full Text]
  45. Liu K, Slattery M, Jacobs D, Cutter G, McDonald A, Van Horn L, Hilner JE, Caan B, Bragg C, Dyer A, Havlik R: A study of the reliability and comparative validity of the CARDIA dietary history. Ethn Dis4 :15 –27,1994[Medline]

Add to CiteULike CiteULike   Add to Del.icio.us Del.icio.us   Add to Digg Digg   Add to Reddit Reddit   Add to Technorati Technorati    What's this?

Related Articles:

Do Glycemic Index, Glycemic Load, and Fiber Play a Role in Insulin Sensitivity, Disposition Index, and Type 2 Diabetes?
Xavier Pi-Sunyer
Diabetes Care 2005 28: 2978-2979. [Extract] [Full Text] [PDF]

Do Glycemic Index, Glycemic Load, and Fiber Play a Role in Insulin Sensitivity, Disposition Index, and Type 2 Diabetes?
Xavier Pi-Sunyer
Diabetes Care 2005 28: 2978-2979. [Extract] [Full Text] [PDF]



This article has been cited by other articles:


Home page
Am. J. Clin. Nutr.Home page
H. Du, D. L van der A, M. M. van Bakel, C. J. van der Kallen, E. E Blaak, M. M. van Greevenbroek, E. H. Jansen, G. Nijpels, C. D. Stehouwer, J. M Dekker, et al.
Glycemic index and glycemic load in relation to food and nutrient intake and metabolic risk factors in a Dutch population
Am. J. Clinical Nutrition, March 1, 2008; 87(3): 655 - 661.
[Abstract] [Full Text] [PDF]


Home page
Am. J. Clin. Nutr.Home page
G. Riccardi, A. A Rivellese, and R. Giacco
Role of glycemic index and glycemic load in the healthy state, in prediabetes, and in diabetes
Am. J. Clinical Nutrition, January 1, 2008; 87(1): 269S - 274S.
[Abstract] [Full Text] [PDF]


Home page
Diabetes CareHome page
American Diabetes Association
Nutrition Recommendations and Interventions for Diabetes: A position statement of the American Diabetes Association
Diabetes Care, January 1, 2008; 31(Supplement_1): S61 - S78.
[Full Text] [PDF]


Home page
Am. J. Clin. Nutr.Home page
H. Kan, J. Stevens, G. Heiss, R. Klein, K. M Rose, and S. J London
Dietary fiber intake and retinal vascular caliber in the Atherosclerosis Risk in Communities Study
Am. J. Clinical Nutrition, December 1, 2007; 86(6): 1626 - 1632.
[Abstract] [Full Text] [PDF]


Home page
Arch Intern MedHome page
R. Villegas, S. Liu, Y.-T. Gao, G. Yang, H. Li, W. Zheng, and X. O. Shu
Prospective Study of Dietary Carbohydrates, Glycemic Index, Glycemic Load, and Incidence of Type 2 Diabetes Mellitus in Middle-aged Chinese Women
Arch Intern Med, November 26, 2007; 167(21): 2310 - 2316.
[Abstract] [Full Text] [PDF]


Home page
Am. J. Clin. Nutr.Home page
J. N Davis, K. E Alexander, E. E Ventura, L. A Kelly, C. J Lane, C. E Byrd-Williams, C. M Toledo-Corral, C. K Roberts, D. Spruijt-Metz, M. J Weigensberg, et al.
Associations of dietary sugar and glycemic index with adiposity and insulin dynamics in overweight Latino youth
Am. J. Clinical Nutrition, November 1, 2007; 86(5): 1331 - 1338.
[Abstract] [Full Text] [PDF]


Home page
DOC NewsHome page
Weight Loss Requires Drop in Calories, Not Low GI
DOC News, November 1, 2007; 4(11): 4 - 4.
[Full Text]


Home page
Am. J. Clin. Nutr.Home page
A. Mosdol, D. R Witte, G. Frost, M. G Marmot, and E. J Brunner
Dietary glycemic index and glycemic load are associated with high-density-lipoprotein cholesterol at baseline but not with increased risk of diabetes in the Whitehall II study
Am. J. Clinical Nutrition, October 1, 2007; 86(4): 988 - 994.
[Abstract] [Full Text] [PDF]


Home page
Am. J. Clin. Nutr.Home page
K. Murakami, S. Sasaki, Y. Takahashi, K. Uenishi, M. Yamasaki, H. Hayabuchi, T. Goda, J. Oka, K. Baba, K. Ohki, et al.
Hardness (difficulty of chewing) of the habitual diet in relation to body mass index and waist circumference in free-living Japanese women aged 18-22 y
Am. J. Clinical Nutrition, July 1, 2007; 86(1): 206 - 213.
[Abstract] [Full Text] [PDF]


Home page
Arch Intern MedHome page
K. J. Mukamal, I. Kawachi, M. Miller, and E. B. Rimm
Body Mass Index and Risk of Suicide Among Men
Arch Intern Med, March 12, 2007; 167(5): 468 - 475.
[Abstract] [Full Text] [PDF]


Home page
AMERICAN JOURNAL OF LIFESTYLE MEDICINEHome page
M. J. Franz
The Evidence Is In: Lifestyle Interventions Can Prevent Diabetes
American Journal of Lifestyle Medicine, March 1, 2007; 1(2): 113 - 121.
[Abstract] [PDF]


Home page
Eur Heart JHome page
A. D. Liese, T. Gilliard, M. Schulz, R. B. D'Agostino Jr, and T. M.S. Wolever
Carbohydrate nutrition, glycaemic load, and plasma lipids: the Insulin Resistance Atherosclerosis Study
Eur. Heart J., January 1, 2007; 28(1): 80 - 87.
[Abstract] [Full Text] [PDF]


Home page
Diabetes CareHome page
American Diabetes Association
Nutrition Recommendations and Interventions for Diabetes: A position statement of the American Diabetes Association
Diabetes Care, January 1, 2007; 30(suppl_1): S48 - S65.
[Full Text] [PDF]


Home page
Diabetes CareHome page
C. Zhang, S. Liu, C. G. Solomon, and F. B. Hu
Dietary Fiber Intake, Dietary Glycemic Load, and the Risk for Gestational Diabetes Mellitus
Diabetes Care, October 1, 2006; 29(10): 2223 - 2230.
[Abstract] [Full Text] [PDF]


Home page
Am. J. Clin. Nutr.Home page
C. Lau, U. Toft, I. Tetens, B. Richelsen, T. Jorgensen, K. Borch-Johnsen, and C. Glumer
Association between dietary glycemic index, glycemic load, and body mass index in the Inter99 study: is underreporting a problem?
Am. J. Clinical Nutrition, September 1, 2006; 84(3): 641 - 645.
[Abstract] [Full Text] [PDF]


Home page
Diabetes CareHome page
American Diabetes Association
Nutrition Recommendations and Interventions for Diabetes-2006: A position statement of the American Diabetes Association.
Diabetes Care, September 1, 2006; 29(9): 2140 - 2157.
[Full Text] [PDF]


Home page
J. Lipid Res.Home page
K. McAuley and J. Mann
Thematic review series: Patient-Oriented Research. Nutritional determinants of insulin resistance
J. Lipid Res., August 1, 2006; 47(8): 1668 - 1676.
[Abstract] [Full Text] [PDF]


Home page
Diabetes CareHome page
A. W. Barclay and J. C. Brand-Miller
Validity of Glycemic Index Estimates in the Insulin Resistance Atherosclerosis Study: Response to Liese et al.
Diabetes Care, July 1, 2006; 29(7): 1718 - 1719.
[Full Text] [PDF]


Home page