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The impact of dairy product consumption on nutrient adequacy and weight of Head Start mothers

Published online by Cambridge University Press:  01 October 2009

Carol E O’Neil
Affiliation:
Louisiana State University AgCenter, Baton Rouge, LA, USA
Theresa A Nicklas*
Affiliation:
Children’s Nutrition Research Center, Department of Pediatrics, Baylor College of Medicine, 1100 Bates Avenue, Houston, TX 77030, USA
Yan Liu
Affiliation:
Children’s Nutrition Research Center, Department of Pediatrics, Baylor College of Medicine, 1100 Bates Avenue, Houston, TX 77030, USA
Frank A Franklin
Affiliation:
Department of Maternal and Child Health, UAB School of Public Health, University of Alabama at Birmingham, Birmingham, AL, USA
*
*Corresponding author: Email [email protected]
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Abstract

Objective

To assess the relationship of dairy product consumption on diet quality and weight of low-income women.

Setting

Head Start centres in Texas and Alabama, USA.

Design

Cross-sectional study. Women were divided into dairy consumption groups: ≤1, >1 to ≤2 and >2 servings/d. Nutrient intake/diet quality was determined by calculating the percentage meeting the Estimated Average Requirement, guidelines for fat and added sugar, and Mean Adequacy Ratio (MAR). Mean BMI was compared for the dairy consumption groups.

Subjects

Mothers with children in Head Start; 609 African-Americans (43 %), Hispanic-Americans (32 %) and European-Americans (24 %).

Results

Fifteen per cent of participants consumed >2 servings of dairy products and 57 % consumed ≤1 serving of dairy daily. Intakes of protein, vitamin D, riboflavin, P, Ca, K, Mg and Zn were significantly higher in those consuming >2 servings/d. Total SFA were higher and added sugars were lower in those consuming >2 servings of dairy products daily compared with those consuming ≤2 servings/d. Forty-one per cent of women consuming >2 servings of dairy daily had MAR scores under 85 compared with 94 % consuming ≤1 serving/d. Mean BMI was 30·36 kg/m2; there was no association between BMI and dairy product consumption.

Conclusions

Consumption of dairy products was low and was not associated with BMI in this low-income population. Higher levels of dairy product consumption were associated with higher MAR scores and improved intakes of Ca, K and Mg, which have been identified as shortfall nutrients in the diets of adults.

Type
Research Paper
Copyright
Copyright © The Authors 2008

The 2005 Dietary Guidelines for Americans recommend consumption of three servings of milk and milk products daily for most Americans(1). Coupled with other dietary sources of Ca, such as leafy green vegetables, beans and tofu, three servings of dairy should allow most women 19 to 50 years of age to meet their Ca requirement of 1000 mg/d(2). Consumption of dairy products has been associated with improved bone mineralization and reduced risk of osteoporosis(Reference Huth, DiRienzo and Miller3), prevention and treatment of hypertension(Reference Ruidavets, Bongard, Simon, Dallongeville, Ducimetire, Arveiler, Amouyel, Bingham and Ferrires4), and reduced risk of type 2 diabetes(Reference Beydoun, Gary, Caballero, Lawrence, Cheskin and Wang5), metabolic syndrome(Reference Beydoun, Gary, Caballero, Lawrence, Cheskin and Wang5) and stroke mortality(Reference Umesawa, Iso and Date6). Dairy foods may also have favourable effects on body weight and body composition(Reference Lin, Lyle, McCabe, McCabe, Weaver and Teegarden7, Reference Zemel, Richards, Milstead and Campbell8).

Since milk and other dairy products are considered nutrient-dense beverages/foods, consumption improves overall diet quality(Reference Fulgoni, Nicholls, Reed, Buckley, Kafer, Huth, DiRienzo and Miller9, Reference Ranganathan, Nicklas, Yang and Berenson10). Using data from the Continuing Survey of Food Intake for Individuals 1994–1996 (n 17 959), it was demonstrated that individuals in the highest quartiles of milk product intake had higher intakes of micronutrients than individuals in the lowest quartiles, except for vitamin C(Reference Weinberg, Berner and Groves11). Specifically, intakes of Ca, K, Mg, Zn, Fe, vitamin A, riboflavin and folate were higher in the highest quartiles of milk product consumption(Reference Weinberg, Berner and Groves11). In an intervention study designed to increase consumption of milk by 3 cups/d compared with usual diet, Barr et al.(Reference Barr, McCarron, Heaney, Dawson-Hughes, Berga, Stern and Oparil12) showed that, compared with controls, the intervention group consumed significantly more energy, protein, cholesterol, vitamins A, D and B12, riboflavin, pantothenate, Ca, P, Mg, Zn and K. Ca, K, Mg and vitamin A were identified as shortfall nutrients in the diets of adults(1).

Despite the health and nutrition advantages of consuming dairy products, intake of these foods by adults is low(Reference Fulgoni, Nicholls, Reed, Buckley, Kafer, Huth, DiRienzo and Miller9, Reference Deshmukh-Taskar, Nicklas, Yang and Berenson13, Reference Ma, Johns and Stafford14) and as many as 75 % of women fail to meet the recommendations for Ca intake(Reference Ma, Johns and Stafford14). There are ethnic differences in intake of dairy foods, with African-Americans and other ethnic minorities(Reference Fulgoni, Nicholls, Reed, Buckley, Kafer, Huth, DiRienzo and Miller9, Reference Arab, Carriquiry, Steck-Scott and Gaudet15) in particular having very low intakes compared with European-Americans(Reference Fulgoni, Nicholls, Reed, Buckley, Kafer, Huth, DiRienzo and Miller9, Reference Ma, Johns and Stafford14, Reference Jarvis and Miller16). Women in these ethnic groups may consume few dairy products because of real or perceived lactose intolerance(Reference Jackson and Savaiano17) or lack of nutrition knowledge and the belief that they are not at risk for osteoporosis(Reference Geller and Derman18, Reference Lara-Smalling, Shelton, Douglas and Rianon19). Diets of low-income women, especially those in the southern USA(Reference Monroe, O’Neil, Tiller and Smith20, Reference Champagne, Bogle, McGee, Yadrick, Allen, Kramer, Simpson, Gossett and Weber21), are very low in dairy products.

Head Start is a national programme designed to promote school readiness by enhancing social and cognitive development of children through educational, health, nutrition, social and other services to children from birth to 5 years of age and families with incomes below the poverty line(22). Despite the critical role that mothers with children in Head Start have in providing a healthy diet and modelling good dietary behaviours for their children, little is known about their diet(Reference Hoerr, Horodynski, Lee and Henry23). Overall, however, low-income women tend to have diets that compromise their health(Reference Monroe, O’Neil, Tiller and Smith20, Reference Champagne, Bogle, McGee, Yadrick, Allen, Kramer, Simpson, Gossett and Weber21). Females of low socio-economic status (SES) are more likely than middle- or high-SES females to report poor overall health(Reference Hoerr, Horodynski, Lee and Henry23), a chronic disease(Reference Rose24) or overweight/obesity(Reference Kumanyika25). Thus it is critical to understand their diet more fully prior to designing interventions to improve it. The purposes of the present study were to examine the association of different levels of dairy product consumption with nutrient intake, nutrient adequacy and BMI of a group of ethnically diverse low-income mothers with children participating in Head Start.

Design and methods

Design

A non-probability sample of participants was recruited from fifty-seven Head Start centres in Alabama and Texas. Inclusion criteria were: (i) being a non-pregnant mother 20 to 50 years of age; (ii) having a child enrolled in Head Start in his or her first year of participation; (iii) having an income at or below 100 % of the poverty index; and (iv) self-identifying race/ethnicity as African-American (AA), Hispanic-American (HA) or European-American (EA). There were 620 participants out of the original 757 interviewed who completed three days of dietary intakes. Women were excluded if they reported an average daily energy intake of <2512 kJ (<600 kcal; n 6) or >16 747 kJ (>4000 kcal; n 4)(Reference Hebert, Ebbeling, Matthews, Hurley, Yunsheng, Druker and Clemow26); and one subject was deleted because she reported consuming more than eleven servings of cheese. The final sample had 609 individuals.

Methods

The study was approved by the Institutional Review Boards of Baylor College of Medicine and University of Alabama at Birmingham. All subjects provided written informed consent prior to participating in the study. Three interviews (120, 30 and 60 min in length, respectively) were conducted with each participant at a Head Start centre over a two-week period. Data collectors trained and certified in dietary and anthropometric assessments conducted three sets of dietary recalls following standardized protocols and obtained heights, weights and demographic data, including marital status, level of education and race/ethnicity. For the HA participants, Spanish-speaking interviewers were available if needed.

Using the multiple-pass method, three 24 h dietary recalls, consisting of one weekend day and two non-consecutive weekdays, were collected on each participant(Reference Conway, Ingwersen, Vinyard and Moshfegh27). Two-dimensional food models were used to help participants describe portion sizes(Reference Posner, Smigleski, Duggal, Morgan, Cobb and Cupples28). Information about dietary supplements, including vitamins and minerals, was also collected, but was not used in the analyses. Two registered dietitians reviewed each recall for clarity, completeness and accuracy.

At the second interview, heights and weights were measured twice on each participant without shoes and dressed in light clothing(Reference Lohman, Roche and Martorell29). Weight was measured to the nearest 0·1 kg on a digital platform scale accurate to 500 kg within ±0·05 kg (Befour model PS-6600). Height was measured to the nearest 0·1 cm using the Shorr Adult Height Measuring Board. BMI (kg/m2), calculated from the means of the two weight and height measurements, is presented as mean with its standard error. In the present study BMI was adjusted for ethnicity, age and energy intake.

Diet quality analysis

Dietary data were analysed using the Nutrient Data System for Research (NDS-R) software version 5·0_35 (Nutrition Coordinating Center, University of Minnesota, Minneapolis, MN, USA). Diet quality was assessed by several methods: (i) nutrient adequacy and achieving less than the Estimated Adequate Intake (EAR) or Adequate Intake (AI) as appropriate; (ii) dietary intakes of fats, added sugars and Na in excess of dietary recommendations; (iii) Mean Adequacy Ratio (MAR) of eight nutrients; and (iv) food group intake.

Nutrient adequacy without supplements from foods and beverages was examined for protein, dietary fibre, n-3 fatty acids, vitamins A, D, E, B6 and C, niacin, riboflavin, thiamin, folate, Ca, Fe, K, Mg and Zn. Nutrient intakes were compared with the Dietary Reference Intakes (DRI) and the percentage meeting the EAR or AI as appropriate and reported by race/ethnicity. Nutrients of concern for excessively high intakes were fat, both total in grams and as a percentage of energy, SFA, MUFA, PUFA and trans fat, cholesterol, total and added sugars, and Na. Trans fat did not include conjugated linoleic acid.

The MAR of eight key nutrients was calculated as an indicator of overall nutrient adequacy, in addition to individual nutrient adequacy. The nutrient adequacy ratio, or percentage of the Recommended Dietary Allowances (RDA) consumed, was calculated for each nutrient and the resulting value truncated at 100 prior to averaging, so those consuming large amounts of food were not unfairly advantaged. Indicator nutrients selected for the MAR score were those that are good markers for fruit, vegetables, milk and whole grains, or are low in the diets of women of childbearing age: dietary fibre, vitamins A and C, folate, Ca, Fe, Zn and K. The MAR equals the sum of nutrient adequacy ratios divided by the number of nutrients considered. Since there is no consensus as to the best cut-off point for an MAR score, a score of 85 was selected as the cut-off point for adequacy because it fell between conservative and liberal scores of 100 to 67 used in previous studies(Reference Krebs-Smith and Clark30, Reference Hoerr, Tsuei, MS, Liu, Franklin and Nicklas31).

Mean intakes of foods and beverages of interest were reported as the five main food groups of fruit, vegetables, dairy, grains and meats. Legumes were counted in the vegetable group and nuts in the meat group. Dairy products included all fluid milks, cheese and yoghurt. The mean of three 24 h intakes of dairy products was divided into three groups according to dairy servings consumed per day: ≤1 serving, >1 to ≤2 servings, >2 servings. Food group serving sizes were from NDS-R version 5·0_35.

All statistical analyses were run using the Statistical Analysis Software (SAS) version 9·1·3 statistical software package (SAS Institute Inc., Cary, NC, USA). To estimate the degree of under-reporting, the ratio of energy intake (EI) to BMR was calculated using the Harris Benedict equation(Reference McGowan, Harrington, Kiely, Robson, Livingstone and Gibney32), assuming low levels of physical activity(Reference Jebb and Moore33). The percentage of participants with an EI:BMR < 1·30 was reported. Nutrient intakes were compared by the two age groups for which there are separate DRI, 19–30 years and 31–50 years, but no differences were found except for vitamins A, D and E and folate, with lower percentages of women aged 31–50 years meeting the EAR (P < 0·05). Because the main objective was to compare intakes by race/ethnicity and not by age, the age groups were combined for ease of data reporting. Differences in the percentage of mothers meeting the EAR by race/ethnicity were compared using the independent samples χ 2 test.

Means with their standard errors as well as frequency distributions of participant characteristics were calculated. ANOVA was conducted for detecting differences in dairy product consumption groups for continuous variables and the χ 2 test was used for categorical outcomes. For multiple comparisons, the least square means (LSMeans) were obtained with the LSMEANS statement of the procedure GLM (general linear model) in SAS, adjusted for age, ethnicity, BMI and energy intake. Data are presented as LSMeans with their standard errors. For linear trends, a P value of <0·05 was used. Since multiple comparisons were made, the Bonferroni correction was used to account for an increase in type 1 error; the initial level of significance was 0·05, which was then divided by the three groups of dairy consumption for a final level of significance of 0·0167.

Results

Population characteristics

Population characteristics and BMI data by dairy product consumption groups are shown in Table 1. The sample distribution by location and race/ethnicity was 32 % HA from urban Texas, 43 % AA from urban Texas and Alabama, and 24 % EA from rural Alabama (mean age: 29·5 years). Adjusted mean BMI was 30·36 kg/m2 and there was no difference among the dairy consumption groups. The urban AA women in Alabama had the highest prevalence of overweight and obesity, significantly higher than the rural EA women (data not shown).

Table 1 Population characteristics of a multi-ethnic population of mothers with children in Head Start centres in Texas and Alabama, USA

EI, energy intake; HA, Hispanic-Americans; AA, African-Americans; EA, European-Americans.

a,b,cMean values within a row with unlike superscript letters were significantly different (P < 0·05).

*Adjusted for ethnicity, age and energy intake.

The mean number of servings of dairy products consumed daily in the consumption groups were ≤1 serving, 0·52 (se 0·02); >1 to ≤2 servings, 1·42 (se 0·03); and >2 servings, 2·72 (se 0·05). Only 15 % of participants consumed >2 servings of dairy products daily and 57 % consumed ≤1 serving/d. Overall, 72 % of participants had EI:BMR<1·3; the percentage was highest (68 %) in the group consuming ≤1 serving of dairy daily and lowest (7 %) in the group consuming >2 servings/d.

Effect of dairy product consumption

The nutrients and diet quality indicators of concern for adequacy and excess by dairy product consumption groups are shown in Tables 2 and 3, respectively. Higher mean adjusted energy intakes were seen with higher intake of consumption of dairy products, and energy intake was highest (9276 kJ) in those consuming >2 servings/d. Mean MAR scores for diet quality, adjusted for energy, age, ethnicity and BMI, were lowest in those consuming ≤1 serving of dairy daily (65·2) as compared with those consuming >1 to ≤2 servings/d (71·9) and >2 servings/d (72·6). Only 41 % of women consuming >2 servings of dairy products daily had MAR scores under 85 compared with 94 % of women consuming ≤1 serving/d.

Table 2 The association of dairy product consumption with nutrient intake and nutrient adequacy in a multi-ethnic population of mothers with children in Head Start centres in Texas and Alabama, USA

LSMean, least square mean; EAR, Estimated Adequate Requirement; MAR, Mean Adequacy Ratio; AT, α-tocopherol equivalents.

a,b,cMean values within a row with unlike superscript letters were significantly different (P < 0·016 using a Bonferroni correction).

*Adjusted for age, BMI, ethnicity and energy intake.

†EAR or Adequate Intake for those nutrients without an EAR.

‡Adjusted for age, ethnicity and BMI only.

§MAR = percentage of the Recommended Dietary Allowance for each of eight nutrients (dietary fibre, vitamin A, vitamin C, folate, Ca, Fe, Zn and K) but truncated at 100 prior to averaging. The percentages with scores less than 85 are reported as % below EAR.

Table 3 The association of dairy product consumption with fat, cholesterol, carbohydrate and sodium intake in a multi-ethnic population of mothers with children in Head Start centres in Texas and Alabama, USA

LSMean, least square mean.

a,b,cMean values within a row with unlike superscript letters were significantly different (P < 0·016 using a Bonferroni correction).

*Adjusted for age, BMI, ethnicity and energy intake.

†Reference value for ‘high’ is any trans fat.

‡Adjusted for age, ethnicity and BMI only.

§Reference value is <35 % energy from fat.

∥Reference value is <10 % energy from SFA.

¶Reference value is <300 mg cholesterol.

**Reference value is <25 % energy from added sugars.

††Reference value is 2300 mg Na.

Compared with women consuming >1 serving of dairy products daily, mean intakes of thiamin and Fe were significantly lower in those consuming ≤1 serving/d (Table 2). Participants consuming >2 servings of dairy products daily had significantly higher intakes of protein, vitamin D, riboflavin, P, Ca, K, Mg and Zn than those consuming ≤2 servings/d. Overall, for most of the vitamins and minerals, participants consuming more dairy products had better nutrient intakes than those consuming less dairy products. In contrast, a higher percentage of women consuming >2 servings of dairy products daily exceeded the DRI for percentage of energy from SFA than those who consumed ≤1 serving/d.

Compared with participants consuming ≤2 servings of dairy products daily, mean intakes of SFA and percentage of energy from SFA were significantly higher in those consuming >2 servings/d (Table 3). Women consuming >2 servings of dairy products daily had significantly lower intakes of total added sugars and percentage of energy from added sugars compared with those consuming ≤2 servings/d.

Mean consumption of other food groups by dairy product consumption is presented in Table 4. There was a significant decrease in servings of sweetened beverages and meats consumed with higher consumption of dairy products. Consumption of ≤1 serving of dairy products daily was also associated with higher intakes of fried vegetables (and fried potatoes) and lower intakes of total fruit and ready-to-eat cereal (RTEC) compared with women consuming >2 servings/d.

Table 4 Mean consumption of food groups by dairy consumption groups in a multi-ethnic population of mothers with children in Head Start centres in Texas and Alabama, USA

LSMean, least square mean.

a,b,cMean values within a row with unlike superscript letters were significantly different (P < 0·016 using a Bonferroni correction).

*Food servings are based on serving sizes recommended in NDS-R (Nutrient Data System for Research software version 5·0_35; Nutrition Coordinating Center, University of Minnesota, Minneapolis, MN, USA) and adjusted for age, BMI, ethnicity and energy intake.

†The individual components of the grain category will not total to the number of servings in the overall grain group since there is duplication within the groups; for example, ready-to-eat cereals (RTEC) that are whole grains would have been counted in whole grains and in the RTEC group.

‡The individual components of the vegetable category will not total to the number of servings in the overall vegetable group since there is duplication within the groups; for example, fried potatoes presented as a group here are also included in the fried vegetable group.

§This group included sugar; syrup; honey; jam; jelly; preserves; sauces, sweet – regular; sauces, sweet – reduced-fat/reduced-calorie/fat-free; frosting or glaze; chocolate candy; non-chocolate candy; and miscellaneous desserts.

Discussion

Low-income women tend to have diets that compromise their health(Reference Monroe, O’Neil, Tiller and Smith20, Reference Champagne, Bogle, McGee, Yadrick, Allen, Kramer, Simpson, Gossett and Weber21, Reference Stuff, Horton, Bogle, Connell, Ryan, Zaghloul, Thornton, Simpson, Gossett and Szeto34), often make poor food choices that lead to dietary inadequacies, and tend to report poor overall health(Reference Hoerr, Horodynski, Lee and Henry23). They are, however, an understudied group and little is known about dairy intake of low-SES mothers, especially those participating in a Head Start programme.

In common with other studies that used self-reported dietary intake(Reference Goldberg, Black, Jebb, Cole, Murgatroyd, Coward and Prentice35), under-reporting of energy intake was seen. The under-reporting criterion of EI:BMR used in the present study was similar to others(Reference Krebs-Smith and Clark30, Reference Hoerr, Tsuei, MS, Liu, Franklin and Nicklas31) and was selected because Goldberg et al.(Reference Goldberg, Black, Jebb, Cole, Murgatroyd, Coward and Prentice35) calculated that the minimum energy requirement of EI:BMR < 1·35 was not consistent with usual dietary intake. Under-reporting is more common in females(Reference Novotny, Rumpler, Riddick, Hebert, Rhodes, Judd, Beor, McDowell and Briefel36), the overweight/obese(Reference Novotny, Rumpler, Riddick, Hebert, Rhodes, Judd, Beor, McDowell and Briefel36) and low-income individuals(Reference Bailey, Mitchell, Miller and Smicklas-Wright37, Reference Stallone, Brunner, Bingham and Marmot38). Our population was homogeneous for these variables, but the group with the lowest dairy intake showed the highest level of under-reporting. Even after energy adjustment, this group of women had the poorest intake of micronutrients. Investigators have shown that controlling for energy intake negates differences in micro- and macronutrient intake(Reference McGowan, Harrington, Kiely, Robson, Livingstone and Gibney32); however, after controlling for energy intake, under-reporters can be used in comparative analyses(Reference Devaney, Kim, Carriquiry and Camano-Garcia39). It is not clear why the group consuming ≤1 serving of dairy daily under-reported energy intake whereas the other groups of dairy consumption, especially the >2 serving/d group, appeared less likely to do so. Energy-dense, nutrient-poor foods tend to be the most likely foods to be under-reported(Reference Bailey, Mitchell, Miller and Smicklas-Wright37), so the data for dairy consumption should be fairly robust; however, it is probable that the women with low dairy intake did have an overall poorer diet.

A high percentage of low-income women in our study did not meet the number of servings of dairy recommended by the current Dietary Guidelines for Americans. Hispanic women had the highest average intake of dairy products, with 29 % consuming more than 2 servings daily; however, mean intake was still below the recommended number of 3 servings of dairy daily. Only 6 % of AA and 14 % of EA consumed at least 2 servings dairy/d. This is consistent with the findings of others(Reference Monroe, O’Neil, Tiller and Smith20).

Women in the present study were not asked why they did not consume more servings of dairy products; however, it has been postulated that AA women may consume few dairy products because of real or perceived lactose maldigestion(Reference Jackson and Savaiano17), the belief that they are not at risk for osteoporosis, the perception that ‘milk is for children’ or a preference for soft drinks rather than milk; cultural foodways and preferences learned early in life may also contribute to low dairy intake(Reference Jarvis and Miller16) seen in these groups.

That these women had low income may have also affected dairy intake. In a study of Canadian low-SES households, access to food retailers was a determinant of purchasing dairy foods(Reference Kirkpatrick and Tarasuk40). To our knowledge, this has not been looked at for consumption of dairy products in the southern USA; however, lack of accessibility and availability to other healthful foods, like fruit and vegetables, is one reason low-income individuals fail to purchase and consume these foods(Reference Rose and Richards41). Women with higher education levels, often used as a surrogate for income, have been shown to consume more dairy products than lower-income women(Reference Fulgoni, Nicholls, Reed, Buckley, Kafer, Huth, DiRienzo and Miller9). Lack of nutrition knowledge probably plays a role in the low dairy product consumption by the participants in the present study; women may be unaware of strategies associated with minimizing symptoms of lactose maldigestion. Participation in the Food Stamp Program, which should provide nutrition education about the importance of dairy foods in the diet, has been shown to lead to higher Ca intakes in AA women(Reference Rose and Richards41).

The present study showed that women with higher intakes of dairy products had significantly higher intakes of energy and nutrients, including protein, vitamin D, riboflavin, P, Ca, Mg, K and Zn, several of which have been identified as shortfall nutrients by the 2005 Dietary Guidelines Advisory Committee(1). Although intake of these nutrients improved with higher consumption of dairy products, only in the group with dairy consumption >2 servings/d did mean Ca intake meet the DRI for women in this age group. Overall nutrient adequacy for all dairy consumption groups was poor, although it is noteworthy that in the group consuming >2 servings/d, the percentage below the EAR was zero for protein, niacin, riboflavin, thiamin and P, suggesting that consumption of dairy foods makes a positive contribution to nutrient adequacy.

All dairy consumption groups exceeded the recommendations for percentage of energy from SFA in the diet(1). SFA (grams) and percentage of energy from SFA were highest in women consuming >2 servings of dairy products daily, whereas PUFA intake was the lowest. The levels of SFA consumed by the group consuming >2 servings dairy/d are higher than those recently reported(Reference Wang and Dixon42), and may reflect consumption of full-fat dairy. Since the most likely source of SFA in the diet of these women is full-fat dairy products, this suggests that women may need to be counselled to consume more low-fat or fat-free dairy foods as recommended by the 2005 Dietary Guidelines for Americans(1).

Food group consumption data showed that with higher dairy consumption there was a lower consumption of sweetened beverages and meats. Interestingly, the consumption of >1 serving of dairy products daily was associated with higher consumption of RTEC, suggesting that RTEC may be a way to increase dairy consumption, presumably fluid milk, in these women. Others have shown that RTEC consumed at breakfast is often accompanied by milk and that the overall impact on diet is positive with higher intakes of protein, Ca and vitamins A and D(Reference Song, Chun, Kerver, Cho, Chung and Chung43). This may be one reason why women with higher milk consumption have higher nutrient intakes. There are tantalizing hints that women consuming more dairy products have an overall healthier diet. Consumption of >2 servings of dairy products daily was associated with lower intakes of sweetened beverages and fried vegetables (including fried potatoes), and higher intakes of total fruit and RTEC.

Mean consumption of vegetables in all groups was unusually high with the mean exceeding the recommended number of cups. Our previous work has suggested that the high intake of fruits and vegetables by HA in this population contributed to the higher mean intake(Reference Hoerr, Tsuei, MS, Liu, Franklin and Nicklas31). Other studies have suggested that HA, even low-income HA, have better diet quality than other groups(Reference Dixon, Sundquist and Winkleby44, Reference Neuhauser, Thompson, Coronado and Solomon45). This finding suggests that some low-income individuals and groups can eat a healthful diet, and nutrition educators should explore their enabling factors.

In common with other studies of low-income women, the mean BMI of study participants(Reference Kumanyika25) was categorized as ‘obese’. Why low-income women are overweight/obese is not clear, but episodic eating patterns associated with Food Stamp Program participation(Reference Hoerr, Horodynski, Lee and Henry23, Reference Neuhauser, Thompson, Coronado and Solomon45, Reference Alaimo, Olson and Frongillo46), high-energy food choices(Reference Neuhauser, Thompson, Coronado and Solomon45, Reference Alaimo, Olson and Frongillo46), disordered eating(Reference Neuhauser, Thompson, Coronado and Solomon45, Reference Alaimo, Olson and Frongillo46) and stress(Reference Alaimo, Olson and Frongillo46) are potential reasons. Although accumulating evidence from epidemiology and intervention studies suggests that Ca-rich diets, especially those high in dairy foods, are associated with a lower body weight or BMI(Reference Umesawa, Iso and Date6, Reference Lin, Lyle, McCabe, McCabe, Weaver and Teegarden7, Reference Fulgoni, Nicholls, Reed, Buckley, Kafer, Huth, DiRienzo and Miller9) or enhance weight loss(Reference Fulgoni, Nicholls, Reed, Buckley, Kafer, Huth, DiRienzo and Miller9), not all studies have shown this association with weight loss(Reference Sailio-Lahteenkorva and Lahelma47, Reference Brooks, Rajeshwari, Nicklas, Yang and Berenson48). Barr et al.’s review of randomized trials also failed to provide convincing evidence that increased dairy products resulted in weight loss(Reference Barr, McCarron, Heaney, Dawson-Hughes, Berga, Stern and Oparil12). Once our data were controlled for energy intake, age and ethnicity, a relationship between dairy intake and an initial difference in BMI was no longer observed. Failure to show a relationship between dairy food consumption, Ca and weight has been observed in other populations of obese individuals(Reference Davies, Heaney, Recker, Lappe, Barger-Lux, Rafferty and Hinders49) and may result from an ‘anti-obesity’ effect of Ca/dairy foods being overwhelmed from excessive energy intake(Reference Davies, Heaney, Recker, Lappe, Barger-Lux, Rafferty and Hinders49). This is a consideration in this obese group, despite the relatively low reported energy intakes.

The present study is not without limitations. First, the cross-sectional study design does not provide the longitudinal data needed to determine if the higher levels of energy intake associated with higher levels of dairy consumption would lead to increased weight over time, or whether higher levels of dairy consumption would result in decreased weight over time. Moreover, no cause-and-effect relationships can be determined. A population from limited geographic areas was used; therefore, results may not be generalizable to a broader US population. Finally, physical activity, which contributes to the weight balance equation, was not measured.

In a multi-ethnic low-SES population, consumption of more than two servings of dairy products daily was associated with improved nutrient intake, including Ca, K and Mg – three shortfall nutrients in adults. Although overall nutrient intake and nutrient adequacy were improved with higher levels of dairy product consumption, nutrient adequacy was poor in this low-SES group. Data suggest that efforts should be made to increase consumption of dairy products in this population so that they approach the current dietary recommendations of three servings per day.

Acknowledgements

Sources of funding: This research was supported by funds from the National Cancer Institute, Grant No. RO1 CA102671. Partial support was received from the National Dairy Council, the US Department of Agriculture (USDA) Hatch Projects 940-36-3104 Project #93673 and LABO 93676 #0199070. This work is a publication of the USDA/Agricultural Research Service (ARS) Children’s Nutrition Research Center, Department of Pediatrics, Baylor College of Medicine in Houston, Texas and was also funded in part with federal funds from the USDA/ARS under Cooperative Agreement No. 58-6250-6-003. The contents of this publication do not necessarily reflect the views or policies of the USDA, nor does the mention of trade names, commercial products or organizations imply endorsement from the US government. The sponsors had no role in the design and conduct of the study; the collection, management, analysis and interpretation of the data; or the preparation and approval of the manuscript.

Conflict of interest declaration: The authors have no conflicts of interest.

Authorship responsibilities: C.E.O’N. directed implementation and was the principal author of the manuscript. T.A.N. conceptualized the study, helped with the editing and interpretation of the results. Y.L. helped with study conceptualization and conducted the statistical analyses. F.A.F. helped with the editing.

Acknowledgements: The authors thank Michelle Feese and Sheryl O. Hughes, project coordinators for each site, and Sandra Lopez, head interviewer and recruiter for the Hispanic participants. All were instrumental in the collection of these data. We also thank Bee Wong for help with the literature. We also extend special thanks to the children and parents of Head Start who participated in the study. Our special thanks to Pamelia Harris for formatting the manuscript.

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Figure 0

Table 1 Population characteristics of a multi-ethnic population of mothers with children in Head Start centres in Texas and Alabama, USA

Figure 1

Table 2 The association of dairy product consumption with nutrient intake and nutrient adequacy in a multi-ethnic population of mothers with children in Head Start centres in Texas and Alabama, USA

Figure 2

Table 3 The association of dairy product consumption with fat, cholesterol, carbohydrate and sodium intake in a multi-ethnic population of mothers with children in Head Start centres in Texas and Alabama, USA

Figure 3

Table 4 Mean consumption of food groups by dairy consumption groups in a multi-ethnic population of mothers with children in Head Start centres in Texas and Alabama, USA