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Sociodemographic and lifestyle characteristics are associated with antioxidant intake and the consumption of their dietary sources during pregnancy

Published online by Cambridge University Press:  01 December 2008

Liisa Uusitalo*
Affiliation:
Tampere School of Public Health, University of Tampere, Tampere, Finland Department of Health Promotion and Chronic Disease Prevention, National Public Health Institute, Mannerheimintie 166, 00300 Helsinki, Finland
Ulla Uusitalo
Affiliation:
Department of Health Promotion and Chronic Disease Prevention, National Public Health Institute, Mannerheimintie 166, 00300 Helsinki, Finland
Marja-Leena Ovaskainen
Affiliation:
Department of Health Promotion and Chronic Disease Prevention, National Public Health Institute, Mannerheimintie 166, 00300 Helsinki, Finland
Sari Niinistö
Affiliation:
Department of Health Promotion and Chronic Disease Prevention, National Public Health Institute, Mannerheimintie 166, 00300 Helsinki, Finland Department of Public Health, University of Helsinki, Helsinki, Finland
Carina Kronberg-Kippilä
Affiliation:
Department of Health Promotion and Chronic Disease Prevention, National Public Health Institute, Mannerheimintie 166, 00300 Helsinki, Finland
Liisa Marjamäki
Affiliation:
Tampere School of Public Health, University of Tampere, Tampere, Finland
Suvi Ahonen
Affiliation:
Tampere School of Public Health, University of Tampere, Tampere, Finland Tampere University Hospital Research Unit, Tampere, Finland
Mike G Kenward
Affiliation:
Department of Epidemiology and Population Health, Medical Statistics Unit, London School of Hygiene & Tropical Medicine, London, UK
Mikael Knip
Affiliation:
Hospital for Children and Adolescents, HUS, Finland Department of Pediatrics, Tampere University Hospital, Tampere, Finland The Juvenile Diabetes Research Foundation (JDRF) Center for Prevention of Type 1 Diabetes in Finland, Turku, Oulu and Tampere, Finland
Riitta Veijola
Affiliation:
Department of Pediatrics, University of Oulu, Oulu, Finland
Suvi M Virtanen
Affiliation:
Tampere School of Public Health, University of Tampere, Tampere, Finland Department of Health Promotion and Chronic Disease Prevention, National Public Health Institute, Mannerheimintie 166, 00300 Helsinki, Finland Tampere University Hospital Research Unit, Tampere, Finland
*
*Corresponding author: Email [email protected]
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Abstract

Objective

To analyse the associations of selected sociodemographic and lifestyle factors with the intake of antioxidant nutrients and consumption of their main dietary sources among pregnant women.

Design

A population-based cohort study. Dietary intake during pregnancy was assessed by a self-administered FFQ one to three months after the delivery.

Setting

Type 1 Diabetes Prediction and Prevention (DIPP) Project.

Subjects

Subjects comprised 3730 women (70·1 % of those invited) who entered the DIPP Nutrition Study after delivering a child at increased genetic risk for type 1 diabetes at the university hospitals in Oulu and Tampere, Finland, 1997–2002.

Results

All sociodemographic and lifestyle factors studied showed significant associations with antioxidant intake in multiple regression models adjusting for all other factors. Older and more educated women tended to have higher intake of most antioxidants. Parity was positively associated with retinol intake and inversely with vitamin C intake. Smokers had lower intakes of most antioxidants. Only the partner’s education was positively associated with high intake of fruits, whereas own education was positively associated with berry consumption. Vegetable consumption was positively associated with partner’s education except for women with academic education, who tended to have high vegetable consumption irrespective of partner’s education.

Conclusions

Young women, smokers and those with a low education are at risk for low antioxidant intake and non-optimal food choices during pregnancy.

Type
Research Paper
Copyright
Copyright © The Authors 2008

Pregnancy is a period of increased oxidative stress for the new coming mother(Reference Chen and Scholl1). Deficiencies of antioxidant nutrients have been associated with complications of pregnancy(Reference McArdle and Ashworth2, Reference Henriksen3). During pregnancy, the fetus is relatively protected from free radicals in the uterine environment, but faces increased oxidative action at birth(Reference Robles, Palomino and Robles4). Antioxidant status of the newborn is influenced by maternal dietary intake(Reference Gazala, Sarov, Hershkovitz, Edvardson, Sklan, Katz, Friger and Gorodischer5Reference Gonzalez-Corbella, Lopez-Sabater, Castellote-Bargallo, Campoy-Folgoso and Rivero-Urgell11). The health implications of antioxidant supply during early life are a relatively novel field of research. The role of dietary antioxidants during fetal life and early childhood in the development of type 1 diabetes and allergies is a focus of the Nutrition Study of the Type 1 Diabetes Prediction and Prevention (DIPP) Project. In recent studies, maternal vitamin E intake was inversely associated with responses to allergens(Reference Devereux, Barker and Seaton12), wheezing(Reference Litonjua, Rifas-Shiman, Ly, Tantisira, Rich-Edwards, Camargo, Weiss, Gillman and Gold13, Reference Devereux, Turner, Craig, McNeill, Martindale, Harbour, Helms and Seaton14) and asthma(Reference Devereux, Turner, Craig, McNeill, Martindale, Harbour, Helms and Seaton14) in the offspring. Higher intake of Zn during pregnancy was associated with lower risk of wheezing(Reference Litonjua, Rifas-Shiman, Ly, Tantisira, Rich-Edwards, Camargo, Weiss, Gillman and Gold13) and asthma(Reference Devereux, Turner, Craig, McNeill, Martindale, Harbour, Helms and Seaton14) in children.

Food consumption and nutrient intake have been shown to differ by social circumstances. In general, higher socio-economic status tends to be associated with healthier food choices(Reference Groth, Fagt and Brondsted15Reference De Irala-Estevez, Groth, Johansson, Oltersdorf, Prättälä and Martinez-Gonzales17) and higher nutrient intakes(Reference Shimakawa, Sorlie, Carpenter, Dennis, Tell, Watson and Williams18, Reference Roos, Prättälä, Lahelma, Kleemola and Pietinen19). The consequences of dietary differences during pregnancy may reach the next generation. In the present study, we analysed the effects of selected sociodemographic and lifestyle factors on the intake of antioxidant nutrients in a large cohort of pregnant Finnish women. We expected social disadvantages to be associated with a lower antioxidant intake during pregnancy. Because the influence of sociodemographic and lifestyle factors on antioxidant intake is mediated on the level of food choices, we also analysed their associations with the consumption of the main dietary sources of antioxidant nutrients.

Subjects and methods

Subjects

In the DIPP Project, a prospective population-based cohort study(Reference Kupila, Muona and Simell20), all newborn infants from the areas of three university hospitals in Finland are screened for HLA DQB1-conferred susceptibility to type 1 diabetes using cord blood samples(Reference Ilonen, Reijonen, Herva, Sjöroos, Iitiä, Lövgren, Veijola, Knip and Åkerblom21). All infants carrying increased genetic susceptibility are invited to a follow-up study on diabetes-associated autoantibodies, growth, viral infections and nutrition. Procedures were approved by the local ethics committees. The families signed informed written consents. The present series comprises the mothers of at-risk children born between December 1997 and December 2002 at Oulu University Hospital and between October 1997 and December 2002 at Tampere University Hospital. In this analysis baseline dietary data from 3730 mothers (70·1 % of the mothers invited) were available (Table 1).

Table 1 Characteristics of pregnant women who delivered a child at increased genetic risk for type 1 diabetes at the University Hospital of Oulu or Tampere, Finland, 1997–2002

†The distribution of those who provided dietary data was statistically significantly different from those who did not (Pearson’s χ 2 test): P ≤ 0·001.

‡Information missing, because data were collected on the FFQ form.

Dietary methods

Dietary intake during pregnancy was assessed postnatally by a self-administered, semi-quantitative, 181-item FFQ, which has been validated specifically for the present study against 10 d food records in a sample of pregnant Finnish women(Reference Erkkola, Karppinen, Javanainen, Räsänen, Knip and Virtanen22). Also in the validation study the questionnaire was completed after the delivery. The validity of the questionnaire for antioxidant nutrients was, in general, good; correlation coefficients between the two methods ranged from 0·45 for Zn to 0·71 for retinol. The only exception was vitamin E, for which the correlation was only 0·22. The FFQ was designed to assess the entire diet over the last month before the beginning of maternity leave, i.e. the 8th month of pregnancy. The portion sizes were based on natural units and commonly used portions identified in earlier Finnish dietary studies. The mothers received the FFQ by mail, and returned it at the first visit to the study centre three months after the delivery. A trained study doctor or nurse checked the FFQ and, if required, completed it in cooperation with the mother. All the returned FFQ forms were checked by a trained nutritionist. If there were ten or more food items with missing frequency data, the FFQ was rejected (n 52). FFQ data were entered into a data file at a commercial data-entry service. Food consumption data were split into ingredients using information of the recipe composition for composite dishes and foods in the Finnish food composition database (FCDB)(23). Daily intakes of energy, retinol, β-carotene, vitamin C, vitamin E, Se, Zn and Mn were calculated by using the FCDB and in-house software of the National Public Health Institute. Retinol, although less well known as an antioxidant than its precursor β-carotene, is capable of inhibiting free radical reactions(Reference Livrea and Tesoriere24) and was therefore included in the study. Nutrients from vitamin and mineral supplements were not included in the calculations of nutrient intake in the present analyses.

As food groups to be analysed, we selected the main dietary sources of each antioxidant nutrient among the present study population(25). The major sources of retinol were organ meats, milk products and butter. β-Carotene came mainly from vegetables. Juice was the major source of vitamin C, followed by vegetables and fruits. Vitamin E was supplied mainly by vegetable oils, cereal products and margarine. The most important sources of Se and Zn were meat, milk and cereal products, and Se was supplied also by fish. Mn was provided mainly by cereal products, and also by berries.

The use of dietary supplements during the entire pregnancy was queried in a separate question on the FFQ form. The supplements which contained antioxidant nutrients were grouped into the following types: (i) vitamin A or A/D supplements or cod liver oil; (ii) β-carotene supplements; (iii) vitamin C supplements; (iv) vitamin E or vegetable oil supplements; (v) multivitamin and mineral supplements; and (vi) mineral supplements with Mn, Se or Zn. However, due to small numbers of users in all supplement groups except for multivitamin and mineral supplements, a combined variable representing the use of any of these types of dietary supplements was used in the statistical model.

Sociodemographic and lifestyle characteristics

Information on general education (comprehensive school education and upper secondary general education), vocational education and age of both parents was registered by a structured questionnaire completed after the delivery. In preliminary single covariate analyses, vocational education was more closely associated with dietary factors than general education, and was used in the multiple covariate models. Vocational education was coded as none, vocational school or course (up to level 3 in the International Standard Classification of Education 1997(26); typical qualifications e.g. hairdresser and construction worker), upper secondary vocational education (levels 3 and 4; e.g. nurse, technician) and academic (levels 5 and 6; e.g. doctor, school teacher). Information on the number of earlier deliveries (parity), home municipality and maternal smoking during pregnancy was received from the Medical Birth Registries of the Oulu and Tampere University Hospitals. Home municipality was coded as urban, semi-urban or rural according to the classification of Statistics Finland(27). Smoking during pregnancy was registered on a three-class scale (non-smoker/quit smoking during the first trimester/smoker). As the number of quitters was small, they were aggregated with smokers. Maternal height and weight measured at the first antenatal examination were enquired on the FFQ form. BMI was calculated as weight (kg) divided by the square of height (m2).

Statistical methods

We did not have sociodemographic data on the families who refused to participate in the study. To assess the degree of selection, we compared the sociodemographic and health-related characteristics of those mothers whose child entered the DIPP study, but who did not provide dietary data (n 501), with the mothers who provided dietary data by the χ 2 test.

Several of the food groups showed clear non-normality, even after logarithmic transformation (ln(x + 0·01)). Derived binary variables were therefore used as outcomes in multiple logistic regression analysis, with an ‘event’ defined as a variable in the highest observed quartile. All of the explanatory variables were categorical, and coded as binary indicator variables. The use of antioxidant supplements was analysed by a similar multiple logistic regression model, the dependent variable being the use of any dietary supplement with antioxidant nutrients at any time during the pregnancy.

The intakes of all antioxidant nutrients were close to normal distribution after ln(x + 0·01) transformation. Antioxidant intakes were adjusted for energy intake by the residual method, using ln(x + 0·01)-transformed variables in the models(Reference Willett28). The associations of sociodemographic and lifestyle variables with antioxidant intake were analysed by multiple linear regression models, with the ln(x + 0·01)-transformed energy-adjusted intake of each antioxidant as the dependent variable and the categorical sociodemographic and lifestyle variables as the explanatory variables. The predicted intakes were calculated by exponentiating the values of the linear predictor produced by the model (0·01 subtracted).

Explanatory variables measured on an ordinal scale (age, parity, education and BMI) were tested for linear trend by treating them as continuous variables in the multiple regression models, one at a time. The interactions of own and partner’s education on the food consumption variables were also tested. Regression models were tested for model assumptions and fit. Of the 3730 subjects, 504 (13·5 %) were excluded from statistical models because they had missing information in at least one explanatory variable. Thus the effective sample size was 3226 (60·6 % of those invited to the study). Statistical analyses were performed using the SPSS for Windows statistical software package version 9·0 (SPSS Inc., Chicago, IL, USA).

Results

Women who did not provide dietary data differed from those who did in terms of age, parity, region, degree of urbanization, and by own and partner’s education (Table 1). Women ≥35 years old, with two or more children, from the northern region, living in a rural community and having no vocational education were under-represented among those providing FFQ data, whereas women expecting their first child and with academic education in the family were over-represented.

The intakes of β-carotene, vitamin E, Se, Zn and Mn increased linearly with age (Table 2), as did also the use of dietary supplements containing antioxidant nutrients (Fig. 1). Age group showed strong positive associations with the consumption of fish and shellfish and vegetable oils, and it was also positively associated with the consumption of butter, cereal products, vegetables, fruits and berries. On the contrary, high consumption of milk products and juice was more common among the younger pregnant women. Women who were younger than 25 years were most likely to have a high consumption of margarine (Table 3).

Table 2 Sociodemographic and lifestyle factors as predictors for energy-adjusted daily intake of antioxidant nutrients by multiple linear regression models among pregnant Finnish women (n 3226) participating in the Type 1 Diabetes Prediction and Prevention (DIPP) Project. Each column is based on a single model with all explanatory variables controlled for simultaneously

Mean values were significantly different from those of the reference category: *P ≤ 0·05, **P ≤ 0·01, ***P ≤ 0·001.

†Adjusted for degree of urbanization of the home municipality and region of birth (Oulu v. Tampere area).

‡Reference category.

§P for linear trend ≤0·05.

Fig. 1 Odds ratios with their 95 % confidence intervals represented by horizontal bars for the consumption of dietary supplements containing antioxidant nutrients among pregnant Finnish women (n 3226) participating in the Type 1 Diabetes Prediction and Prevention (DIPP) Project, adjusted for degree of urbanization of the home municipality and region of birth (Oulu v. Tampere area). On average, 43 % had consumed these supplements at some time point during the entire pregnancy. †P for linear trend ≤0·05

Table 3 Sociodemographic and lifestyle factors as predictors for the consumption of foods by multiple logistic regression models among pregnant Finnish women (n 3226) participating in the Type 1 Diabetes Prediction and Prevention (DIPP) Project. Each column is based on a single model with all explanatory variables controlled for simultaneously

Significantly different from the reference category: *P ≤ 0·05, **P ≤ 0·01, ***P ≤ 0·001.

†Adjusted for degree of urbanization of the home municipality and region (Oulu v. Tampere area).

‡Reference category.

§P for linear trend ≤0·05.

Parity was positively associated with the intake of retinol, and inversely with vitamin C intake. High consumption of organ meats, total meat products, butter, margarine and berries increased with the number of previous deliveries, whereas fruit and juice consumption was inversely associated with parity. Women expecting their first child were more likely to use antioxidant supplements than those with one or two previous deliveries.

The pregnant mother’s own education level was inversely associated with retinol intake, while the positive association between education level and β-carotene intake was stronger for partner’s education than own education. Both own and partner’s education showed independent positive associations with the intakes of vitamin E, Se, Zn and Mn, but the associations were stronger for own education level. Own education level was positively associated with the consumption of fish and shellfish and berries, and inversely associated with the consumption of organ meats, milk products and margarine. On the contrary, fruit consumption was positively associated with partner’s education, but not with own education. There was an interaction between own and partner’ education (P = 0·04, data not shown) indicating that vegetable consumption was positively associated with partner’s education except for women with academic education, who tended to have high vegetable consumption irrespective of partner’s education. Interactions terms of own and partner’s education were not significant for any other food group (P > 0·05). The use of antioxidant supplements showed a linear positive association with own but not partner’s education.

Women who had smoked during pregnancy had a higher intake of retinol, but lower intakes of β-carotene, vitamin C, vitamin E, Zn and Mn than non-smokers. Smokers tended to consume more organ meats, total meat products, margarine and juice than non-smokers. Smokers were unlikely to have a high consumption of berries and fruit. BMI measured at the first antenatal examination was positively associated with the intakes of Se and Zn, and inversely with Mn intake. BMI showed a linear positive association with the consumption of meat products, and a strong inverse linear association with berry consumption. BMI was inversely associated with the use of antioxidant supplements.

Discussion

All analysed sociodemographic and lifestyle factors were independently associated with the intake of antioxidant nutrients during pregnancy. Age, level of education and smoking status were the most important predictors of antioxidant intake, while the associations with parity and BMI were less consistent. Young age, low education level and smoking predicted a low antioxidant intake compared with other women.

The principal strengths of our study are the large, population-based cohort, use of an FFQ assessing total dietary intake and validated specially for the target population group, and a broad selection of explanatory variables. The population recruited consists of mothers of all newborn infants born at two university hospitals in Finland, selected only on the basis of genetic susceptibility for type 1 diabetes in the child. Because virtually all children in Finland are born in public hospitals (E Vuori, STAKES, personal communication), the women invited in the study are likely to be an unbiased sample of all new mothers in the catchment areas of the two university hospitals, concerning their social position. The validation study showed that our FFQ overestimated the intakes of most foods and nutrients, but ranked subjects reasonably well according to their dietary intakes(Reference Erkkola, Karppinen, Javanainen, Räsänen, Knip and Virtanen22). Because the intake figures of antioxidant nutrients are probably overestimates, we did not compare them with recommended dietary intakes.

A potential limitation of our study is selective response rate according to sociodemographic and lifestyle factors. The FFQ, as a method requiring average levels of written and numerical comprehension, may be unsuitable for the most disadvantaged respondents(Reference Turrell and Najman29). The bias is likely to produce underestimates of the true differences between population groups(Reference Mathews, Yudkin, Smith and Neil30). The groups with a high proportion of non-responders tend to be those with less healthy dietary habits. The responders to a dietary questionnaire are likely to be more health-conscious than the non-responders, and consequently to be more similar to the groups with higher response rates in terms of their food consumption. Our study sample was biased towards higher education and smaller number of children. It is likely that the true gradient in dietary choices by education level and parity is even larger than our results suggest. On the contrary, the response rate was lowest in women aged 35 years or older, who also had the most healthful diets. In this age group, our results may be overestimates of the true differences.

The intake of most antioxidant nutrients increased linearly with age, as did the consumption of wholesome foods with a high nutrient density. The positive association of age with β-carotene resulted from the high consumption of vegetables. The positive association of age with vitamin E intake is explained by the consumption of vegetable oils, cereal products, fish and vegetables, with Se by fish and cereal products, and with Mn by cereal products and berries. Zn was supplied mainly by milk, cereal and meat products, but of these only the consumption of cereal products was associated with age. Vitamin C intake did not differ by age group in spite of the positive association of age and fruit consumption. This is explained by the inverse association of age with the consumption of juice. The present findings are in line with previous research on pregnant women; age has been shown to be positively related to the consumption of vegetables(Reference Bodnar and Siega-Riz31) and to dietary intakes of β-carotene, vitamin C and Zn(Reference Mathews, Yudkin, Smith and Neil30).

The high retinol intake of multiparous women was explained by their high consumption of meat products. Specifically, the most important source of retinol in the present study was liver, the consumption of which was discouraged in the Finnish dietary guidelines for pregnant women because of the teratogenic effect of high retinol intake(Reference Hasunen, Kalavainen, Keinonen, Lagström, Lyytikäinen, Nurttila, Peltola and Talvia32). The lower vitamin C intake of multiparous women resulted from the inverse associations of parity with the consumption of fruits and juice. Similarly, in an earlier study, primiparous women consumed more fruit than others(Reference Bodnar and Siega-Riz31).

Education was positively associated with the intakes of β-carotene and vitamin A, but not with vitamin E and Zn among Austrian pregnant women. Vitamin C intake was highest in the mid-education group(Reference Freisling, Elmadfa and Gall33). Vitamin C intake has been positively associated with education(Reference Erkkola, Karppinen, Järvinen, Knip and Virtanen34) and with husband’s occupation. Husband’s occupation also correlated positively with the intakes of Zn and carotene, but not with vitamins A and E(Reference Wynn, Wynn, Doyle and Crawford35). In the present study, education level was one of the most important determinants of antioxidant intake. Retinol was the only one of the analysed nutrients that was inversely associated with education, reflecting the higher liver consumption of less educated women. The associations of own and partner’s education with food consumption were not uniform. Partner’s education was a better predictor of fruit consumption of the pregnant mother, while own education was positively associated with the consumption of berries. Vegetable consumption was, in general, more closely associated with partner’s education than own, but this did not apply to academic women; they tended to be high vegetable consumers even if the education level of their partner was low. Unfortunately we did not have information on income, but the contrasting relationships of own and partner’s education with food consumption may result from a complex interplay of education and family income. Education develops habits, skills, resources and abilities that enable people to create a lifestyle that promotes health, while income indicates available economic resources(Reference Mirowsky and Ross36) and can have effects on health which are independent of education(Reference Freisling, Elmadfa and Gall33, Reference Rahkonen, Arber, Lahelma, Martikainen and Silventoinen37). We speculate that woman’s own education is associated with an inclination to consume healthy foods, while the education of the male parent is probably a more important determinant of available economic resources, especially in families with young children. Economic considerations might explain why fruit and vegetable consumption is more dependent on partner’s than own education. There is plenty of evidence showing that fruits and vegetables are often considered expensive(Reference Attree38, Reference Dittus, Hillers and Beerman39) and that their consumption tends to be associated with income(Reference Laaksonen, Prättälä, Helasoja, Uutela and Lahelma16, Reference Bodnar and Siega-Riz31, Reference Axelson40). Among vegetables, however, also low-price alternatives can be found, and this could in part enable the high vegetable consumption of academic women irrespective of their partner’s education. On the contrary, it is a common practice in Finland to pick berries for free, and this may explain why the pregnant mother’s berry consumption is independent of partner’s education level.

The diets of smokers were relatively poor of antioxidant nutrients compared with non-smokers, the only exceptions being retinol and Se. The high retinol supply resulted from the consumption of organ meats. Smokers tended to be high consumers of meat products, resulting in similar Se intake to non-smokers. Smokers also had high consumption of margarine and juice, but still their intakes of vitamin E and vitamin C were lower than those of non-smokers. Smoking was inversely associated with vegetable and berry consumption, which accounts for the low intakes of β-carotene and Mn. Similar findings have been reported for vegetables, retinol(Reference Rogers, Emmett, Baker and Golding41), carotene, vitamin C(Reference Mathews, Yudkin, Smith and Neil30, Reference Rogers, Emmett, Baker and Golding41), vitamin E(Reference Rogers, Emmett, Baker and Golding41) and Zn(Reference Mathews, Yudkin, Smith and Neil30, Reference Rogers, Emmett, Baker and Golding41), unadjusted for other factors. In the study by Mathews et al.(Reference Mathews, Yudkin, Smith and Neil30), the association between smoking and Zn intake was not significant after adjustment for age.

Among all of the explanatory variables tested, BMI measured at the beginning of the pregnancy seemed the least important predictor. The differences in antioxidant intake were small. The high consumption of meat products was reflected in the positive associations with Se and Zn, and the low berry consumption in the inverse association with Mn. There are at least two possible explanations for the weak associations between BMI and food consumption. Women who were overweight in early pregnancy may have changed their diets towards recommendations, or BMI may be more closely associated with physical activity than with dietary habits. Similarly, neither pre-pregnancy weight nor current BMI was associated with the intake of antioxidant nutrients during pregnancy in an earlier study(Reference Mathews, Yudkin, Smith and Neil30).

We analysed the combined effect of several sociodemographic and lifestyle factors on the intake of antioxidant nutrients, and found a substantial degree of variation in the individual intakes of β-carotene, Mn, retinol and vitamin C. For β-carotene, there was almost a threefold difference between the lowest and the highest intake predicted by the multiple regression model. However, the intake patterns were not uniform for different antioxidants. Retinol showed the most distinct pattern, as, unlike all of the other antioxidants, it was positively associated with parity and smoking, and inversely associated with education. These associations were explained by the higher liver consumption of the women who already had children, smoked during pregnancy or had a low education.

The supplemental consumption of antioxidant nutrients tended to further accentuate the sociodemographic differences in intake, since the same factors were associated with both high dietary intake and supplement use. Age and own level of education were positively associated with the use of dietary supplements containing antioxidant nutrients, whereas parity and BMI were inversely associated with supplement use. In Austrian(Reference Freisling, Elmadfa and Gall33) and Finnish(Reference Erkkola, Karppinen, Järvinen, Knip and Virtanen34) populations of pregnant women, neither age nor education was significantly associated with dietary supplement use. The sample size in our study is considerably larger than in the two earlier studies, which may account for the differing results. In all three studies, multivitamin preparations were among the most frequently used supplement types. In Finnish dietary guidelines for pregnant women, multivitamin supplements are recommended only in connection with a very inadequate diet. Supplements with vitamin A should not be used during pregnancy(Reference Hasunen, Kalavainen, Keinonen, Lagström, Lyytikäinen, Nurttila, Peltola and Talvia32).

In conclusion, young women, smokers and those with a low level of education in the family are at risk for low intake of antioxidant nutrients during pregnancy. The significance of this finding is emphasized by the fact that foods rich in antioxidant nutrients tend to be foods with a high density of other nutrients and dietary fibre as well, with a low content of refined sugar and often with a low content of saturated fat. Correspondingly, a low dietary intake of antioxidant nutrients may often indicate a refined, energy-dense diet. In fact, fruits, vegetables, berries, wholegrain cereal products, margarine, fish and low-fat milk products, all of which are important sources of antioxidant nutrients, are recommended in the Finnish dietary guidelines for pregnant women. In the maternal care system, attention should be paid to nutritional counselling and guiding recommended food choices among the vulnerable groups. However, Travers(Reference Travers42) has stated that ‘as long as professional practice continues to place primary emphasis on changing individuals without consideration of the context within which they work, the potential remains high for victim blaming on the part of professionals, and guilt on the individual who is unable to live up to expectations’. In further research, the effect of economic resources, along with other social constraints, on the food choices of families with children should be addressed.

Acknowledgements

None of the authors had financial or personal interests in any company or organization sponsoring the research at the time the research was done. The work was supported by the Academy of Finland (grants 63672, 79685,79686, 80846, 201988, 210632), the Finnish Diabetes Association, the Finnish Diabetes Research Foundation, the Finnish Pediatric Research Foundation, the Häme Foundation of the Finnish Culture Fund, the Juho Vainio Foundation, the Yrjö Jahnsson Foundation, Medical Research Funds of Turku, Oulu and Tampere University Hospitals, the Juvenile Diabetes Research Foundation (grants 197032, 4-1998-274, 4-1999-731, 4-2001-435), the Novo Nordisk Foundation and EU Biomed 2 (BMH4-CT98-3314), Doctoral Programs for Public Health, and the Jalmari and Rauha Ahokas Foundation.

L.U. designed the analyses, wrote the manuscript, performed the statistical analyses and processed the data. U.U. designed the analyses, processed the data and evaluated the results. M.-L.O. designed the analyses and evaluated the results. S.N., C.K.-K. and S.A. processed the data and evaluated the results. L.M. processed the data. M.G.K. evaluated the results. M.K. designed the study and evaluated the results. R.V. processed the data. S.M.V. designed the study and evaluated the results.

We thank the DIPP research staff for excellent collaboration. We express our gratitude to the families who participated in the study.

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Figure 0

Table 1 Characteristics of pregnant women who delivered a child at increased genetic risk for type 1 diabetes at the University Hospital of Oulu or Tampere, Finland, 1997–2002

Figure 1

Table 2 Sociodemographic and lifestyle factors as predictors for energy-adjusted daily intake of antioxidant nutrients by multiple linear regression models among pregnant Finnish women (n 3226) participating in the Type 1 Diabetes Prediction and Prevention (DIPP) Project. Each column is based on a single model with all explanatory variables controlled for simultaneously

Figure 2

Fig. 1 Odds ratios with their 95 % confidence intervals represented by horizontal bars for the consumption of dietary supplements containing antioxidant nutrients among pregnant Finnish women (n 3226) participating in the Type 1 Diabetes Prediction and Prevention (DIPP) Project, adjusted for degree of urbanization of the home municipality and region of birth (Oulu v. Tampere area). On average, 43 % had consumed these supplements at some time point during the entire pregnancy. †P for linear trend ≤0·05

Figure 3

Table 3 Sociodemographic and lifestyle factors as predictors for the consumption of foods by multiple logistic regression models among pregnant Finnish women (n 3226) participating in the Type 1 Diabetes Prediction and Prevention (DIPP) Project. Each column is based on a single model with all explanatory variables controlled for simultaneously