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Nutrient Intakes Linked to Better Health Outcomes Are Associated with Higher Diet Costs in the US

  • Anju Aggarwal ,

    anjuagg@uw.edu

    Affiliations Center for Public Health Nutrition, School of Public Health, University of Washington, Seattle, Washington, United States of America, Center for Human Nutrition, Department of International Health, Johns Hopkins Bloomberg School of Public Health, Baltimore, Maryland, United States of America

  • Pablo Monsivais,

    Affiliations Center for Public Health Nutrition, School of Public Health, University of Washington, Seattle, Washington, United States of America, United Kingdom Clinical Research Collaboration Centre for Diet and Activity Research, Cambridge Institute of Public Health, Cambridge, United Kingdom

  • Adam Drewnowski

    Affiliation Center for Public Health Nutrition, School of Public Health, University of Washington, Seattle, Washington, United States of America

Abstract

Purpose

Degrees of nutrient intake and food groups have been linked to differential chronic disease risk. However, intakes of specific nutrients may also be associated with differential diet costs and unobserved differences in socioeconomic status (SES). The present study examined degrees of nutrient intake, for every key nutrient in the diet, in relation to diet cost and SES.

Methods

Socio-demographic data for a stratified random sample of adult respondents in the Seattle Obesity Study were obtained through telephone survey. Dietary intakes were assessed using food frequency questionnaire (FFQ) (n = 1,266). Following standard procedures, nutrient intakes were energy-adjusted using the residual method and converted into quintiles. Diet cost for each respondent was estimated using Seattle supermarket retail prices for 384 FFQ component foods.

Results

Higher intakes of dietary fiber, vitamins A, C, D, E, and B12, beta carotene, folate, iron, calcium, potassium, and magnesium were associated with higher diet costs. The cost gradient was most pronounced for vitamin C, beta carotene, potassium, and magnesium. Higher intakes of saturated fats, trans fats and added sugars were associated with lower diet costs. Lower cost lower quality diets were more likely to be consumed by lower SES.

Conclusion

Nutrients commonly associated with a lower risk of chronic disease were associated with higher diet costs. By contrast, nutrients associated with higher disease risk were associated with lower diet costs. The cost variable may help somewhat explain why lower income groups fail to comply with dietary guidelines and have highest rates of diet related chronic disease.

Introduction

Observational studies on diets and health have linked the consumption of individual nutrients with chronic disease risk [1][13]. Lower intakes of dietary fiber [14][19], folate [8], [20], carotenoids [21], vitamins A, C, and E [7], calcium [20], [22], [23], and potassium [19], [24], [25] have all been linked with a higher risk of chronic disease in a dose-dependent manner [26]. By contrast, higher intakes of sugars, saturated fats and trans fats have been linked with a higher risk of heart disease [27][30], obesity, and diabetes [31][33]. In many such studies, nutrient intakes were adjusted for energy using the method of residuals and the participants were divided into quintiles [6][8], [10], [13], [17], [19], [21], [30]. To account for the possibility that people with higher nutrient intakes differed in profound yet unobserved ways from those with lower nutrient intakes, many studies adjusted for socioeconomic status (SES) using proxy indicators such as smoking and physical activity [1], [2], [4], [6], [7], [17], [24], [25]. Promoting the consumption of beneficial nutrients while limiting the intake of added sugars and fats is a standard dietary guidance in US [26], [34].

However, such dietary guidelines may not be feasible until factors underlying differential nutrient intakes are taken into account. Once such potential factor may be diet cost. Recent studies, mostly from outside US, have found links between nutrient intakes and estimated individual-level diet cost [35][39]. Lower energy-adjusted diet cost was associated with lower intakes of protein, fiber, and some key vitamins and minerals, raising the issues of nutrient adequacy of diets of lower-income groups. Within the US, there are limited data on the relation between diet quality and diet cost, particularly at the level of every nutrient in the diet [40], [41]. Further, there has been a controversy whether lower cost diets are truly selected by lower income groups.

The purpose of the present study was to examine if degree of nutrient intakes commonly associated with lower disease risk and improved health outcomes would be associated with higher diet costs. Conversely, whether degree of nutrient intakes commonly associated with adverse health outcomes would be associated with lower diet cost. The cost gradient might help explain why lower income groups have least nutrient adequate diets and are at higher risk for chronic disease including obesity and diabetes.

The present study followed standard procedures of estimating and defining each nutrient intake [42]. Nutrient intakes were adjusted for energy using the method of residuals and the participants were divided into quintiles. The primary hypotheses were that the recommended nutrients, notably dietary fiber, vitamins and minerals, would be associated with higher diet costs whereas nutrients to limit, notably sugars and fat, would be associated with lower diet costs. The secondary hypothesis was that lower-cost lower-quality diets would be more likely to be consumed by lower SES respondents.

Methods

Ethics Statement

All the study protocols and study instruments were approved by Institutional Review Board (IRB) at University of Washington.

Participant Sample

Methods and procedures for the Seattle Obesity Study (S.O.S.) have been published [43], [44]. The S.O.S. used a stratified area-based sampling to ensure adequate representation by income range and race/ethnicity. The sampling procedures and survey administration were modeled on the Behavioral Risk Factors Surveillance System (BRFSS) telephone surveys conducted by state and local health departments. Randomly generated telephone numbers were matched with residential addresses using commercial databases. All the potential respondents were sent a pre-notification letter followed by the telephone call. Once the contact was made, an adult member of the household was randomly selected as the respondent using CATI (computer assisted telephone interview) program. All the study procedures were explained to the selected respondent and a verbal consent to participate in the study was obtained. A 20 min telephone survey was then administered to 2,001 study respondents by trained and computer assisted interviewers.

Dietary intake assessment.

At the completion of the telephone survey, each of the 2,001 respondents was asked for their verbal consent to complete a written dietary questionnaire. Both the scripts used to obtain verbal consent for completing the telephone survey and FFQ were provided to IRB at the University of Washington and were approved. 95% of the survey participants (n = 1,903) who agreed were mailed a food frequency questionnaire (FFQ) developed by the Fred Hutchinson Cancer research Center (FHCRC) [45][48]. Participants recorded the frequency of consumption of foods and beverages listed in the FFQ along with the portion size. Completion rate was 69% (n = 1,318). Of these, 52 questionnaires were excluded based on extreme calorie intakes (<500 or >5000 kcal/day) and other missing data leaving a final sample of 1,266 (804 women and 462 men). FFQ respondents were compared to those who did not respond to FFQs. FFQ respondents were more likely to married (53% vs. 45%), college-educated (57% vs. 51%) and retired (28% vs.14%). No significant differences were seen by other SES characteristics, diet variables or health outcomes.

Analyses of dietary data obtained from FFQ yielded dietary energy (kcal), the weight of foods, beverages, and drinking water (g), and the estimated daily intakes of over 45 macro- and micronutrients. Data from all foods and caloric beverages was used for present analyses. Details on computation of these variables from FFQ have been published [40].

Measures of dietary intake

Nutrients of interest were vitamins A, C, D, E, B12, beta carotene, folate iron, calcium, potassium, magnesium, and fiber. Following past studies, the nutrient residual model was used to adjust for energy [49] and study participants were then split into 5 equal groups or quintiles [3], [7], [8], [13], [19], [21]. Intakes of saturated fats, trans fat and added sugar were expressed as percent calories and participants were divided into quintiles.

The monetary value of the reported diets ($/day) was then calculated for each respondent. Lowest retail price at which a given food item was available in the area was attached to each of the 384 component foods in the FFQ database. Most of the respondents (88%) reported using supermarkets as their primary store for food shopping. Hence, prices were collected from three most commonly reported supermarkets, which also represented over 60% of the retail grocery market in the area. The detailed methodology has already been published [40], [50]. All food prices were adjusted for yield, that is preparation and waste, and were expressed in dollars per 100 g of edible portion [51]. The USDA had used analogous procedures to create the Center for Nutrition Policy and Promotion food prices database [52]

Demographic and Socioeconomic Measures

Self-reported data on age, gender, race/ethnicity and household size were obtained during the phone survey. Education was measured in 6 categories ranging from “never attended” to “college graduates”. Income was measured from “less than $10,000” to “greater than $100,000” per year. For analytical purpose, higher education was defined as college graduates or higher. Higher income was defined as those with annual household income ≥50,000. Past studies noted that income and education reflected different aspects of SES and were not a proxy for each other [44], [53][55]. Hence, an index of both income and education was created as an indicator of SES. Higher SES was defined as those with annual household income ≥50,000 and who were at least college graduates.

Statistical Analyses

Multivariable regressions with robust standard errors were used to examine associations of degree of nutrient intakes with diet cost. For vitamins and minerals, dietary intakes were energy-adjusted using the residual method and then converted into quintiles. For fats and added sugar, percent of total calories obtained from each were computed and then converted into quintiles. Covariates included age, gender, race/ethnicity and total calorie intake. Mean diet cost was expressed at mean age (56 years) and mean calorie intake (1800 Kcal/d) for the sample. Trend tests were conducted. These analyses were also repeated after stratifying by gender. All the diet cost values obtained were standardized at 100% of the bottom quintile for each nutrient.

The association between degree of nutrient intakes and SES was examined using multivariable regression for dichotomous outcome. Logistic regression models were used to examine the proportion of higher SES by quintiles of energy-adjusted nutrient intakes, after taking age, gender, race/ethnicity and household size into account. Proportions were expressed at mean age (56 years) and mean calorie intake (1800 Kcal/d) for the sample.

To examine the association between SES and diet cost, multivariable regressions for dichotomous outcome were used. Diet cost, energy-adjusted using the method of residuals and converted into quintiles, was used as the independent variable. Proportion of higher SES was used as the dependent variable. Following past studies, higher SES was defined in all three ways – combined higher income and higher education, only higher income, and only higher education. Covariates for each included age, gender, race/ethnicity, household size and total calorie intake. Proportions of higher SES were expressed at mean age (56 years) and mean calorie intake (1800 kcal/d) for the sample.

All analyses were conducted using STATA 10.0 and p-value of 0.05 was used to indicate statistical significance.

Results

Participant characteristics

The characteristics of the sample are presented in Table 1. The majority of S.O.S participants were women (64%). Mean age was 56±14 y. The sample was predominantly White (85%), with 4% African Americans and 7% Asians. More than half of the participants (62%) had an annual household income ≥$50,000, and 57% were college graduates. Based on combined SES index, respondents with higher SES (using both income ≥50,000 and at least college graduates) were 43%. Mean calorie intakes from all foods and beverages were 1700±666 Kcal/d for women and 1982±771 Kcal/d for men.

Quintiles of energy-adjusted nutrient intakes and diet cost

Table 2 shows the relation between energy-adjusted nutrient intakes and diet cost. For vitamins A, C, D, E, B12, beta carotene, folate iron, calcium, potassium, magnesium, and fiber, lower quintiles of nutrient intakes were associated with significantly lower diet costs. The differences between the lowest and the highest quintile ranged from 9% to 40% after adjusting for calories and other covariates. The most pronounced differences were seen for vitamin C, beta carotene, potassium and magnesium. The lowest cost gradient was observed for vitamins D and E, folate, iron and calcium. The trends were all significant, with P for linear trend <0.0001 for each nutrient.

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Table 2. Mean diet cost by quintiles of energy-adjusted nutrient intakes, adjusting for other covariates.1

https://doi.org/10.1371/journal.pone.0037533.t002

On the other hand, persons in highest quintile of intakes for saturated fats, trans fats and added sugar had significantly lower diet costs, as compared to those in the lowest intake quintiles. The difference across extreme quintiles was as high as 23%. The trends were all significant, with P for linear trend <0.0001.

Separate analyses of nutrient intakes with diet cost by gender are presented in Figure 1 and 2. The trends for men and women were all in the same direction; however the effects for most of the nutrients were stronger for women than for men.

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Figure 1. Diet cost by quintiles of energy-adjusted nutrient intakes, among men: results from multivariable regression.

https://doi.org/10.1371/journal.pone.0037533.g001

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Figure 2. Diet cost by quintiles of energy-adjusted nutrient intakes, among women: results from multivariable regression.

https://doi.org/10.1371/journal.pone.0037533.g002

Quintiles of energy-adjusted nutrient intakes and socioeconomic factors

Table 3 shows that energy-adjusted nutrient intakes also followed a strong SES gradient. Persons consuming diets in the lower quintiles of vitamin C, E, beta carotene, potassium, magnesium and fiber were significantly more likely to be from lower income and education groups, as compared to persons in the higher quintile of nutrient intakes. By contrast, those in higher quintiles of saturated and trans fats were associated with significantly lower SES. The trends were all significant with p-value <0.0001.

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Table 3. Proportion of higher SES1 by quintiles of energy-adjusted nutrient intakes2, adjusting for other covariates.3

https://doi.org/10.1371/journal.pone.0037533.t003

Quintiles of energy-adjusted diet cost and socioeconomic factors

Table 4 shows the association between energy-adjusted diet cost and measures of SES, after adjusting for covariates. Persons in lower quintiles of diet cost were significantly less likely to be from higher SES. The trends remained the same for all SES indicators: income, education or combined. The trends were all significant with P<0.0001.

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Table 4. Proportion of higher SES by quintiles of energy-adjusted diet cost, adjusting for covariates.1

https://doi.org/10.1371/journal.pone.0037533.t004

Discussion

Observational studies have established consistent associations between degrees of nutrient intakes and health outcomes. The present study, for the first time, examined degrees of nutrient intakes, for every key nutrient in the diet, in relation to estimated diet cost and participant SES. The study took care to follow standard epidemiological adjustment and stratification techniques.

There were significant findings. First, lower intakes of beneficial nutrients were associated with lower diet costs. Study respondents with lowest intakes of dietary fiber, vitamins A, C, D, E, and B12, beta carotene, folate, iron, calcium, potassium, and magnesium were also those who had lowest estimated diet costs. Coincidentally, some of these nutrients have been identified as nutrients of concern by the 2010 Dietary Guidelines [26], [34]. By contrast, higher intakes of fats and added sugars, typically associated with adverse health outcomes, were associated with lower diet costs. These are the nutrients to limit, as identified by the 2010 dietary guidelines [26]. Based on current eating habits, compliance with dietary guidelines is likely to entail higher diet costs for the consumer.

Second, persons with lower cost lower quality diets were more likely to be from lower SES groups. These findings are consistent with the existing literature on SES and diet quality [56] and diet cost [40], [44].

However, not all beneficial nutrients were equally expensive. The most pronounced positive gradient with diet cost was seen for vitamin C, beta carotene, potassium and magnesium – nutrients primarily obtained from fruits and vegetables. By contrast, calcium and vitamin D showed a weaker associations with diet cost, likely because milk and milk products are relatively inexpensive [57], [58]. Iron and folate also showed a weak association with diet cost, which may reflect the ubiquity and relatively low cost of grain products fortified with iron and folate. Further, gender differences were observed in some of these associations. Women with higher intakes of certain beneficial nutrients such as potassium and magnesium tend to have significantly higher diet costs as compared to men. This could be attributed to overall higher intakes of such nutrients per kcal among women than men, and that women also tend to choose more expensive sources of such nutrients. A recent study based on national level health survey found that women tend to have higher consumption of fruits and vegetables while men consume more meats [59]. Consistent findings were obtained in the present sample (results not shown).

There is clearly a need to identify and promote inexpensive food sources of key nutrients in order to improve the dietary quality of lower SES groups. A recent analysis of the 4 shortfall nutrients in the US diets showed that, in the context of current eating habits, complying with potassium guidelines was a particular challenge [60].

The present study had certain limitations. First, estimates of nutrient intakes and diet cost were each based on FFQs, which has certain known biases [42], [61], [62]. However, it is a useful tool to make comparisons across subjects and has been widely used in nutritional epidemiological studies. Second, diet cost estimates do not represent actual expenditures made by the study sample. Instead, these represent the lowest monetary value of the diet at which foods were available in the key retail supermarkets in the Puget Sound area. This method of estimating diet cost, in fact, offered certain advantages: a) it did not allow variation in diet cost, among individuals, simply due to differences in price of the same food item across stores, or due to differences in the amount spent while eating out, b) the use of retail food prices to calculate individual diet cost is the only method of estimating diet cost in the existing literature [40], [50], [63][66] and opens the door to individual level studies on diet cost, diet quality and health. Third, the average calorie intakes observed in the present sample were lower. However, this could be attributed to higher proportion of older adults (mean age of the present sample was 56 years) as these values were comparable to calorie intake estimates observed in National Health and Nutrition Examination Surveys (NHANES, 2001–08) and other health studies for that age, particularly for women. Fourth, the present study was based on cross sectional data, hence, associations observed between SES, diet cost and nutrient intakes cannot be causally interpreted.

Nonetheless, the present findings have implications for future research. First, diet cost variable ought to be taken into account in future studies on diets and disease risk. Second, further research is needed to identify cheaper ways of promoting beneficial nutrients to the consumer, particularly among lower income and lower education group.

Author Contributions

Conceived and designed the experiments: AA PM AD. Performed the experiments: AA PM AD. Analyzed the data: AA. Contributed reagents/materials/analysis tools: AA PM AD. Wrote the paper: AA PM AD.

References

  1. 1. Osganian SK, Stampfer MJ, Rimm E, Spiegelman D, Hu FB, et al. (2003) Vitamin C and risk of coronary heart disease in women. J Am Coll Cardiol. 42(2): 246–52.
  2. 2. Rimm EB, Stampfer MJ, Ascherio A, Giovannucci E, Colditz GA, et al. (1993) Vitamin E consumption and the risk of coronary heart disease in men. N Engl J Med. 328(20): 1450–6.
  3. 3. Stampfer MJ, Hennekens CH, Manson JE, Colditz GA, Rosner B, et al. (1993) Vitamin E consumption and the risk of coronary disease in women. N Engl J Med. 328(20): 1444–9.
  4. 4. Sun Q, Ma J, Campos H, Hankinson SE, Manson JE, et al. (2007) A prospective study of trans fatty acids in erythrocytes and risk of coronary heart disease. Circulation. 115(14): 1858–65.
  5. 5. Forman JP, Giovannucci E, Holmes MD, Bischoff-Ferrari HA, Tworoger SS, et al. (2007) Plasma 25-hydroxyvitamin D levels and risk of incident hypertension. Hypertension. 49(5): 1063–9.
  6. 6. Martinez ME, Giovannucci EL, Colditz GA, Stampfer MJ, Hunter DJ, et al. (1996) Calcium, vitamin D, and the occurrence of colorectal cancer among women. J Natl Cancer Inst. 88(19): 1375–82.
  7. 7. Cho E, Spiegelman D, Hunter DJ, Chen WY, Zhang SM, et al. (2003) Premenopausal intakes of vitamins A, C, and E, folate, and carotenoids, and risk of breast cancer. Cancer Epidemiol Biomarkers Prev. 12(8): 713–20.
  8. 8. Rimm EB, Willett WC, Hu FB, Sampson L, Colditz GA, et al. (1998) Folate and vitamin B6 from diet and supplements in relation to risk of coronary heart disease among women. JAMA. 279(5): 359–64.
  9. 9. Giovannucci E, Liu Y, Rimm EB, Hollis BW, Fuchs CS, et al. (2006) Prospective study of predictors of vitamin D status and cancer incidence and mortality in men. J Natl Cancer Inst. 98(7): 451–9.
  10. 10. Khaw KT, Bingham S, Welch A, Luben R, Wareham N, et al. (2001) Relation between plasma ascorbic acid and mortality in men and women in EPIC-Norfolk prospective study: a prospective population study. European Prospective Investigation into Cancer and Nutrition. Lancet. 357(9257): 657–63.
  11. 11. He K, Merchant A, Rimm EB, Rosner BA, Stampfer MJ, et al. (2004) Folate, vitamin B6, and B12 intakes in relation to risk of stroke among men. Stroke. 35(1): 169–74.
  12. 12. Ng K, Wolpin BM, Meyerhardt JA, Wu K, Chan AT, et al. (2009) Prospective study of predictors of vitamin D status and survival in patients with colorectal cancer. Br J Cancer. 101(6): 916–23. PMCID. 2743349 p.
  13. 13. Kushi LH, Folsom AR, Prineas RJ, Mink PJ, Wu Y, et al. (1996) Dietary antioxidant vitamins and death from coronary heart disease in postmenopausal women. N Engl J Med. 334(18): 1156–62.
  14. 14. Kromhout D, Bosschieter EB, de Lezenne Coulander C (1982) Dietary fibre and 10-year mortality from coronary heart disease, cancer, and all causes. The Zutphen study. Lancet. 2(8297): 518–22.
  15. 15. Burkitt DP, Walker AR, Painter NS (1972) Effect of dietary fibre on stools and the transit-times, and its role in the causation of disease. Lancet. 2(7792): 1408–12.
  16. 16. Trowell H (1978) Diabetes mellitus and dietary fiber of starchy foods. Am J Clin Nutr. 31(10 Suppl). pp. S53–S7.
  17. 17. Jacobs DR , Meyer KA, Kushi LH, Folsom AR (1998) Whole-grain intake may reduce the risk of ischemic heart disease death in postmenopausal women: the Iowa Women's Health Study. Am J Clin Nutr. 68(2): 248–57.
  18. 18. Jenkins DJ, Axelsen M, Kendall CW, Augustin LS, Vuksan V, et al. (2000) Dietary fibre, lente carbohydrates and the insulin-resistant diseases. Br J Nutr. 83: Suppl 1S157–63.
  19. 19. Ascherio A, Rimm EB, Hernan MA, Giovannucci EL, Kawachi I, et al. (1998) Intake of potassium, magnesium, calcium, and fiber and risk of stroke among US men. Circulation. 98(12): 1198–204.
  20. 20. Fletcher RH, Fairfield KM (2002) Vitamins for chronic disease prevention in adults: clinical applications. JAMA. 287(23): 3127–9.
  21. 21. Cui X, Rosner B, Willett WC, Hankinson SE (2010) Antioxidant intake and risk of endometrial cancer: Results from the Nurses' Health Study. Int J Cancer.
  22. 22. Yang H, Huang LZ (1999) Calcium and chronic diseases. Sheng Li Ke Xue Jin Zhan. 30(2): 123–8.
  23. 23. McCarron DA, Lipkin M, Rivlin RS, Heaney RP (1990) Dietary calcium and chronic diseases. Med Hypotheses. 31(4): 265–73.
  24. 24. Khaw KT, Barrett-Connor E (1987) Dietary potassium and stroke-associated mortality. A 12-year prospective population study. N Engl J Med. 316(5): 235–40.
  25. 25. Bazzano LA, He J, Ogden LG, Loria C, Vupputuri S, et al. (2001) Dietary potassium intake and risk of stroke in US men and women: National Health and Nutrition Examination Survey I epidemiologic follow-up study. Stroke. 32(7): 1473–80.
  26. 26. US Department of Agriculture (2010) The total diet: Combining nutrients, consuming food. Dietary Guidelines for Americans, 2010. Government Printing Office; Washington DC.
  27. 27. Hu FB, Stampfer MJ, Manson JE, Rimm E, Colditz GA, et al. (1997) Dietary fat intake and the risk of coronary heart disease in women. N Engl J Med. 337(21): 1491–9.
  28. 28. Ascherio A, Rimm EB, Giovannucci EL, Spiegelman D, Stampfer M, et al. (1996) Dietary fat and risk of coronary heart disease in men: cohort follow up study in the United States. BMJ. 313(7049): 84–90. PMCID. 2351515 p.
  29. 29. Mozaffarian D, Ascherio A, Hu FB, Stampfer MJ, Willett WC, et al. (2005) Interplay between different polyunsaturated fatty acids and risk of coronary heart disease in men. Circulation. 111(2): 157–64. PMCID. 1201401 p.
  30. 30. Hu FB, Stampfer MJ, Rimm E, Ascherio A, Rosner BA, et al. (1999) Dietary fat and coronary heart disease: a comparison of approaches for adjusting for total energy intake and modeling repeated dietary measurements. Am J Epidemiol. 149(6): 531–40.
  31. 31. Schulze MB, Manson JE, Ludwig DS, Colditz GA, Stampfer MJ, et al. (2004) Sugar-sweetened beverages, weight gain, and incidence of type 2 diabetes in young and middle-aged women. JAMA. 292(8): 927–34.
  32. 32. Bray GA, Nielsen SJ, Popkin BM (2004) Consumption of high-fructose corn syrup in beverages may play a role in the epidemic of obesity. Am J Clin Nutr. 79(4): 537–43.
  33. 33. Elliott SS, Keim NL, Stern JS, Teff K, Havel PJ (2002) Fructose, weight gain, and the insulin resistance syndrome. Am J Clin Nutr. 76(5): 911–22.
  34. 34. US Department of Agriculture (2005) Adequate nutrients with calorie needs: Dietary Guidelines for Americans, 2005. Government printing office; Washington, DC.
  35. 35. Andrieu E, Darmon N, Drewnowski A (2006) Low-cost diets: more energy, fewer nutrients. Eur J Clin Nutr. 60(3): 434–6.
  36. 36. Darmon N, Briend A, Drewnowski A (2004) Energy-dense diets are associated with lower diet costs: a community study of French adults. Public Health Nutr. 7(1): 21–7.
  37. 37. Maillot M, Darmon N, Vieux F, Drewnowski A (2007) Low energy density and high nutritional quality are each associated with higher diet costs in French adults. Am J Clin Nutr. 86(3): 690–6.
  38. 38. Cade J, Upmeier H, Calvert C, Greenwood D (1999) Costs of a healthy diet: analysis from the UK Women's Cohort Study. Public Health Nutr. 2(4): 505–12.
  39. 39. Drewnowski A, Darmon N, Briend A (2004) Replacing fats and sweets with vegetables and fruits–a question of cost. Am J Public Health. 94(9): 1555–9.
  40. 40. Monsivais P, Drewnowski A (2009) Lower-energy-density diets are associated with higher monetary costs per kilocalorie and are consumed by women of higher socioeconomic status. J Am Diet Assoc. 109(5): 814–22.
  41. 41. Townsend MS, Aaron GJ, Monsivais P, Keim NL, Drewnowski A (2009) Less-energy-dense diets of low-income women in California are associated with higher energy-adjusted diet costs. Am J Clin Nutr. 89(4): 1220–6.s.
  42. 42. Willett W (1998) Nutritional Epidemiology. Second ed. New York: Oxford University Press.
  43. 43. Monsivais P, Aggarwal A, Drewnowski A (2010) Are socio-economic disparities in diet quality explained by diet cost? J Epidemiol Community Health. doi:10.1136/jech.2010.122333.
  44. 44. Aggarwal A, Monsivais P, Cook AJ, Drewnowski A (2011) Does diet cost mediate the relation between socioeconomic position and diet quality? Eur J Clin Nutr. 2011 Sep; 65(9): 1059–66.
  45. 45. White E, Patterson RE, Kristal AR, Thornquist M, King I, et al. (2004) VITamins And Lifestyle cohort study: study design and characteristics of supplement users. Am J Epidemiol. 159(1): 83–93.
  46. 46. Patterson RE, Kristal AR, Tinker LF, Carter RA, Bolton MP, et al. (1999) Measurement characteristics of the Women's Health Initiative food frequency questionnaire. Ann Epidemiol. 9(3): 178–87.
  47. 47. Neuhouser ML, Kristal AR, McLerran D, Patterson RE, Atkinson J (1999) Validity of short food frequency questionnaires used in cancer chemoprevention trials: results from the Prostate Cancer Prevention Trial. Cancer Epidemiol Biomarkers Prev. 8(8): 721–5.
  48. 48. Prentice RL, Caan B, Chlebowski RT, Patterson R, Kuller LH, et al. (2006) Low-fat dietary pattern and risk of invasive breast cancer: the Women's Health Initiative Randomized Controlled Dietary Modification Trial. JAMA. 295(6): 629–42.
  49. 49. Willett W, Meir S (1998) Implications of total energy intake for epidemiologic analyses. 2nd ed. In: Willett W, ed. Nutritional Epidemiology. New York: Oxford University Press; 273–301:
  50. 50. Monsivais P, Drewnowski A (2007) The rising cost of low-energy-density foods. J Am Diet Assoc. 107(12): 2071–6.
  51. 51. Holcomb G, Cutrufelli R, Lema L (2004) USDA Cooking Yield Database, Plan Product Release. Report No. 102 p.
  52. 52. Carlson A, M Lino, Juan W (2008) Development of the CNPP Prices Database. Washington, DC: USDA.
  53. 53. Turrell G, Hewitt B, Patterson C, Oldenburg B (2003) Measuring socio-economic position in dietary research: is choice of socio-economic indicator important? Public Health Nutr. 6(2): 191–200.
  54. 54. Galobardes B, Morabia A, Bernstein MS (2001) Diet and socioeconomic position: does the use of different indicators matter? Int J Epidemiol. 30(2): 334–40.
  55. 55. Popkin BM, Siega-Riz AM, Haines PS (1996) A comparison of dietary trends among racial and socioeconomic groups in the United States. N Engl J Med. 335(10): 716–20.
  56. 56. Darmon N, Drewnowski A (2008) Does social class predict diet quality? Am J Clin Nutr. 87(5): 1107–17.
  57. 57. Sources of Calcium among the US Population, 2005–06. Risk factor monitoring and methods branch web site. Applied Research Program. National Cancer Institute. http://riskfactor.cancer.gov/diet/foodsources/calcium/. Updated December 21, (2010) Accessed October 10, 2011.
  58. 58. Drewnowski A (2010) The cost of US foods as related to their nutritive value. Am J Clin Nutr. PMCID. 2954450 p.
  59. 59. Rehm CD, Monsivais P, Drewnowski A (2011) The quality and monetary value of diets consumed by adults in the United States. Am J Clin Nutr 94(5): 1333–9.
  60. 60. Monsivais P, Aggarwal A, Drewnowski A (2011) Following federal guidelines to increase nutrient consumption may lead to higher food costs for consumers. Health Aff (Millwood). 30(8): 1471–7.
  61. 61. Drewnowski A (2001) Diet image: a new perspective on the food-frequency questionnaire. Nutr Rev. 59(11): 370–2.
  62. 62. Kristal AR, Peters U, Potter JD (2005) Is it time to abandon the food frequency questionnaire? Cancer Epidemiol Biomarkers Prev. 14(12): 2826–8.
  63. 63. Drewnowski A, Monsivais P, Maillot M, Darmon N (2007) Low-energy-density diets are associated with higher diet quality and higher diet costs in French adults. J Am Diet Assoc. 107(6): 1028–32.
  64. 64. Schroder H, Marrugat J, Covas MI (2006) High monetary costs of dietary patterns associated with lower body mass index: a population-based study. Int J Obes (Lond). 30(10): 1574–9.
  65. 65. Waterlander WE, de Haas WE, van Amstel I, Schuit AJ, Twisk JW, et al. (2010) Energy density, energy costs and income- how are they related? Public Health Nutr. pp. 1–10.
  66. 66. Murakami K, Miyake Y, Sasaki S, Tanaka K, Ohya Y, et al. (2009) Monetary diet cost is associated with not only favorable but also unfavorable aspects of diet in pregnant Japanese Women: The Osaka Maternal and Child Health Study. Environ Health Insights. 3: 27–35. PMCID.