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Substitutions between dairy products and risk of stroke: results from the European Investigation into Cancer and Nutrition-Netherlands (EPIC-NL) cohort

Published online by Cambridge University Press:  19 June 2019

Anne Sofie D. Laursen*
Affiliation:
Research Unit for Epidemiology, Department of Public Health, Aarhus University, 8000 Aarhus, Denmark
Ivonne Sluijs
Affiliation:
Julius Center for Health Sciences and Primary Care, University Medical Center Utrecht, Utrecht University, 3584 Utrecht, The Netherlands
Jolanda M. A. Boer
Affiliation:
Centre for Nutrition, Prevention and Health Services, National Institute for Public Health and the Environment (RIVM), 3720 Bilthoven, The Netherlands
W. M. Monique Verschuren
Affiliation:
Julius Center for Health Sciences and Primary Care, University Medical Center Utrecht, Utrecht University, 3584 Utrecht, The Netherlands Centre for Nutrition, Prevention and Health Services, National Institute for Public Health and the Environment (RIVM), 3720 Bilthoven, The Netherlands
Yvonne T. van der Schouw
Affiliation:
Julius Center for Health Sciences and Primary Care, University Medical Center Utrecht, Utrecht University, 3584 Utrecht, The Netherlands
Marianne U. Jakobsen
Affiliation:
Research Unit for Epidemiology, Department of Public Health, Aarhus University, 8000 Aarhus, Denmark Division for Diet, Disease Prevention and Toxicology, National Food Institute, Technical University of Denmark, 2800 Kongens Lyngby, Denmark
*
*Corresponding author: Anne Sofie D. Laursen, email [email protected]
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Abstract

The association between intake of different dairy products and the risk of stroke remains unclear. We therefore investigated substitutions between dairy product subgroups and risk of stroke. We included 36 886 Dutch men and women. Information about dairy product intake was collected through a FFQ. Dairy products were grouped as low-fat milk, whole-fat milk, buttermilk, low-fat yogurt, whole-fat yogurt, cheese and butter. Incident stroke cases were identified in national registers. We used Cox proportional hazards regression to calculate associations for substitutions between dairy products with the rate of stroke. During a median follow-up of 15·2 years we identified 884 stroke cases (503 ischaemic and 244 haemorrhagic). Median intake of total dairy products was four servings/d. Low-fat yogurt substituted for whole-fat yogurt was associated with a higher rate of ischaemic stroke (hazard ratio (HR) = 2·58 (95 % CI 1·11, 5·97)/serving per d). Whole-fat yogurt as a substitution for any other subgroup was associated with a lower rate of ischaemic stroke (HR between 0·33 and 0·36/serving per d). We did not observe any associations for haemorrhagic stroke. In conclusion, whole-fat yogurt as a substitution for low-fat yogurt, cheese, butter, buttermilk or milk, regardless of fat content, was associated with a lower rate of ischaemic stroke.

Type
Full Papers
Copyright
© The Authors 2019 

The Dietary Approaches to Stop Hypertension (DASH) diet(Reference Appel, Moore and Obarzanek1) is recommended for stroke prevention(Reference Goldstein, Bushnell and Adams2). The diet prescribes a high daily intake of low-fat dairy products, while restricting the intake of regular-fat or high-fat dairy products. However, a study that compared a modified DASH diet, including whole-fat dairy products and no low-fat dairy products, with the original DASH diet observed a similar beneficial effect on blood pressure as with the original DASH diet(Reference Chiu, Bergeron and Williams3). Also, the modified DASH diet was found to reduce plasma TAG and very-low-density lipoprotein cholesterol concentrations without increasing low-density lipoprotein cholesterol(Reference Chiu, Bergeron and Williams3), a potentially beneficial improvement in lipid profile. Most studies on dairy products and the risk of stroke have investigated intakes of total dairy products, total milk or dairy products categorised as either low-fat or whole-fat(Reference Louie, Flood and Burlutsky4Reference Praagman, Franco and Ikram8). However, dairy products comprise a range of individual product types with individual nutritional properties(Reference Gaucheron9), and therefore these categorisations may be too broad. For instance, in a recent meta-analysis of eighteen follow-up studies investigating dairy product intake and the risk of stroke, it was observed that the intake of total whole-fat dairy products was associated with a lower risk of stroke, while the intake of whole-fat milk was associated with a higher risk of stroke(Reference de Goede, Soedamah-Muthu and Pan10). Moreover, the intake of total fermented dairy products, including cheese, was associated with a marginally statistically non-significant lower risk of stroke(Reference de Goede, Soedamah-Muthu and Pan10). The authors thus call for future research with detailed information about product type and fat content. The studies included in this meta-analysis all investigated differences in the intake of total dairy products or dairy product subgroups while adjusting for total energy intake, thus holding it constant. Once energy intake is held constant, individuals with different intakes of dairy products will also differ in other non-specified energy-providing foods. Hence, these studies do not address whether one type of dairy product is to be preferred over another. Using specified food substitution analyses allows for a direct comparison between different types of dairy products. Only one previous study has investigated substitutions between dairy products and the risk of stroke, and observed that whole-fat yogurt products as a substitution for low-fat yogurt products, cheese or milk, regardless of fat content, was associated with a lower rate of stroke(Reference Laursen, Dahm and Johnsen11), but these results have yet to be confirmed by other studies.

Our aim was to investigate the associations for substitutions between dairy product subgroups with incident stroke in a Dutch cohort that habitually consume large quantities and varieties of dairy products.

Methods

Study population

We used data from the Dutch participants of the European Investigation into Cancer and Nutrition (EPIC-NL), which has previously been described(Reference Beulens, Monninkhof and Verschuren12). The EPIC-NL cohort comprised two cohorts – Prospect and MORGEN (Monitoring Project on Risk Factors for Chronic Diseases). The Prospect study included 17 357 women aged 49–70 years, and the MORGEN study included 22 654 men and women aged 21–64 years. All participants were recruited from 1993 to 1997, and the protocols for the cohorts were designed in collaboration, yielding compatible infrastructure. The studies complied with the Declaration of Helsinki and were approved by local medical ethical committees. All participants gave informed consent to participate in the study(Reference Beulens, Monninkhof and Verschuren12).

Of the 40 011 recruited participants, we excluded 1763 participants, who did not give permission to register linkage for vital status or disease occurrence or for whom the cause of death was missing, and another 453 participants, who reported having had a stroke prior to enrolment. Furthermore, we excluded participants in the top and bottom 0·5 % of the ratio of energy intake to estimated basal metabolic rate (n 352) and those with missing exposure or covariate information (n 557), yielding a study sample of 36 886 men and women (online Supplementary Fig. S1).

Dietary assessment

Information about food intake was obtained through a semi-quantitative FFQ with seventy-nine main items covering habitual consumption of 178 foods. Intake of dairy products was specifically addressed in items regarding breakfast cereals; butter and cheese eaten on bread; milk and yogurt for drinking; dairy products used in coffee; butter used for cooking; and dairy-based desserts.

The reproducibility and validity of the questionnaire has been investigated(Reference Ocke, Bueno-de-Mesquita and Goddijn13). The Spearman rank correlation coefficients for the validity assessed by comparison with twelve 24-h diet recalls were 0·64 and 0·38 for cheese among men and women, respectively, and 0·71 and 0·79 for milk and milk products among men and women, respectively.

For the present study we divided dairy product intake into the following groups: (1) low-fat milk (skimmed and semi-skimmed milk, <2 % fat), (2) whole-fat milk (whole-fat, raw and powdered milk, ≥3 % fat), (3) buttermilk, (4) low-fat yogurt products (skimmed and semi-skimmed regular and drink yogurt, <2 % fat, curd), (5) whole-fat yogurt products (regular and drink yogurt, ≥3 % fat), (6) cheese and (7) butter. The dairy product intake was expressed in servings/d and in kcal/d. For milk and yogurt products the serving size was 200 g; and for cheese and butter it was 20 and 6 g, respectively. We did not include the intake of custard, whipped cream and chocolate milk in the analyses.

Stroke ascertainment

Stroke cases were defined according to the International Classification of Diseases, 10th Edition, as codes I60–I66. Data on stroke occurrence were obtained through a standardised register for hospital discharge diagnoses administered by the Dutch Centre for Health Care Information since 1990. The register was linked to the cohort participants on the basis of birth date, sex, postal code and general practitioner by a validated probabilistic method as previously described(Reference Beulens, Monninkhof and Verschuren12,Reference Herings, Bakker and Stricker14) . Information about vital status was collected via municipal registries. Subsequently, primary and secondary causes of death were obtained through linkage with data from Statistics Netherlands. The stroke cases were classified as ischaemic or haemorrhagic. Participants were followed until the date of an incident stroke, death from another cause, loss to follow-up or were censored at 31 December 2010, whichever came first.

Covariate information

Baseline characteristics were collected using a self-administered questionnaire except for blood pressure and anthropometrical measurements, which were collected at a physical examination.

Educational attainment was categorised as low (primary up to intermediate vocational education), intermediate (intermediate vocational education and higher secondary education) or high (higher vocational education and university). BMI was calculated as weight divided by height-squared (kg/m2). Physical activity level was defined as inactive, moderately inactive, moderately active or active, according to the Cambridge Physical Activity Index(Reference Dalmeijer, Struijk and van der Schouw7,Reference Beulens, Monninkhof and Verschuren12,Reference Wareham, Jakes and Rennie15) . Hypertension was defined on the basis of either self-reported physician-diagnosed hypertension, self-reported use of antihypertensive medication, systolic blood pressure ≥140 mmHg or diastolic blood pressure ≥90 mmHg at the baseline examination. Hypercholesterolaemia and previous myocardial infarction were self-reported. Prevalent diabetes mellitus was collected through self-report and linkage with hospital discharge diagnosis registers and was verified by the general practitioner(Reference Sluijs, van der and Beulens16). Information about alcohol intake and intake of food groups other than dairy foods was collected with the FFQ. We also calculated a modified version of the Dutch Healthy Diet index 2015 (DHD2015) in order to adjust for overall diet quality(Reference Looman, Feskens and de Rijk17). The index measures adhered to the 2015 dietary guidelines from the Dutch Health Council(Reference Kromhout, Spaaij and de Goede18). With the data available, we were able to include thirteen of the fifteen original indicators: fruit, vegetables, wholegrain products, legumes, nuts, dairy products, fish, tea, fat and oils, red meat, processed meat, sweetened beverages and fruit juices and alcohol. The dairy product component, however, was excluded because dairy products are our main exposure.

Statistical analyses

The associations for substitutions between subgroups of dairy products and the rate of total, ischaemic and haemorrhagic stroke were investigated using Cox proportional hazard regression with age as the underlying time scale and adjusted for cohort (as stratum variable).

The substitution model (model 1) included the intake of all individual subgroups of dairy products (servings/d) except the dairy product subgroup to be substituted (i.e. six out of seven subgroups were included in the model) and a variable representing the total number of servings of dairy products and total energy intake (kcal/d). It follows that the hazard ratio (HR) for each dairy product subgroup in the model can be interpreted as the difference in the rate of stroke for one serving/d higher intake of the subgroups included in the model and a concomitant lower intake of the subgroup left out of the model. Using the same analytical approach, we also analysed isoenergetic substitutions of 100 kcal/d (418 kJ/d). The substitution analyses were adjusted as follows: education (categorical), BMI-adjusted waist circumference (residuals of waist circumference regressed on BMI) (continuous), smoking (categorical), physical activity (categorical), alcohol intake (5-knot spline) (model 2) and DHD2015 (continuous) (model 3). We further adjusted the analyses for the potential intermediate conditions such as hypertension, hypercholesterolaemia, diabetes mellitus and myocardial infarction at baseline in a separate model (model 4).

The assumption of independent delayed entry was investigated by including the date of enrolment in the models. As no association between the date of enrolment and stroke was found, the assumption was deemed satisfied. The proportional hazards assumption tested with Schoenfeld residuals was satisfied. In order to determine departures from linearity in the substitution models, we plotted martingale residuals against the dairy product subgroup variables and included a LOWESS smooth and found no departure from linearity.

We further investigated potential effect modification between dairy product variables and the covariates sex, age, BMI-adjusted waist circumference, smoking, alcohol, physical activity and DHD2015. We used likelihood ratio tests where we compared models (model 3) with and without interaction terms for the respective dairy product and covariate variables. We found no indication of effect modification (P values between 0·07 and 0·99).

We performed sensitivity analyses where participants diagnosed with hypertension, hypercholesterolaemia, diabetes mellitus or myocardial infarction at baseline were excluded, as the treatment for these conditions include dietary changes. These analyses were only performed for total and ischaemic stroke due to limited cases of haemorrhagic stroke. All analyses were performed using Stata 13.1 (StataCorp).

Results

During a median follow-up of 15·2 years we identified 884 stroke cases, including 503 ischaemic, 244 haemorrhagic and 137 unclassified types. Participant characteristics across quintiles of dairy product subgroups are given in Table 1 and online Supplementary Tables S1S6. While there were no pronounced differences in characteristics between quintiles of low-fat milk intake (Table 1), participants with a high intake of whole-fat milk or butter were more likely to be men, current smokers and have a higher alcohol intake (online Supplementary Tables S1 and S6). For both low-fat and whole-fat yogurt, those with high intakes compared with the lowest were more likely to be women and drink less alcohol and less likely to be current smokers or physically inactive. Moreover, participants with a high intake of yogurt had higher intakes of fruit and vegetables and lower intakes of red and processed meat compared with participants with the lowest intake (online Supplementary Tables S3 and S4).

Table 1. Participant characteristics in the European Investigation into Cancer and Nutrition-Netherlands (EPIC-NL) cohort (n 36 886)

(Medians and 80 % central ranges; numbers of participants; percentages)

Q, quintile.

For ischaemic stroke, we did not observe an association for low-fat milk as a substitution for whole-fat milk (HR = 0·97 (95 % CI 0·73, 1·30)), whereas low-fat yogurt products as a substitution for whole-fat yogurt products were associated with a higher rate (HR = 2·58 (95 % CI 1·11, 5·97)). Also, whole-fat yogurt products as a substitution for milk, buttermilk, cheese or butter were associated with a lower rate of ischaemic stroke (low-fat milk: HR = 0·34 (95 % CI 0·15, 0·75); whole-fat milk: HR = 0·33 (95 % CI 0·14, 0·74); buttermilk: HR = 0·35 (95 % CI 0·16, 0·78); cheese: HR = 0·35 (95 % CI 0·16, 0·77); butter: HR = 0·36 (95 % CI 0·16, 0·79)) (Table 2). We did not observe any association for substitutions between dairy product subgroups with the rate of total or haemorrhagic stroke (online Supplementary Table S7 and Table 3).

Table 2. Associations for one serving/d substitutions between dairy products and risk of ischaemic stroke in the European Investigation into Cancer and Nutrition-Netherlands (EPIC-NL) cohort*

(Hazard ratios (HR) and 95 % confidence intervals)

* Model 1 was adjusted for energy intake and cohort (stratum variable). Model 2 was additionally adjusted for education, BMI-adjusted waist circumference, smoking, physical activity and alcohol. Model 3 was additionally adjusted for the Dutch Health Diet Index 2015. Model 4 was additionally adjusted for baseline hypertension, hypercholesterolaemia, diabetes mellitus and myocardial infarction.

Table 3. Associations for one serving/d substitutions between dairy products and risk of haemorrhagic stroke in the European Investigation into Cancer and Nutrition-Netherlands (EPIC-NL) cohort*

(Hazard ratios (HR) and 95 % confidence intervals)

* Model 1 was adjusted for energy intake and cohort (stratum variable). Model 2 was additionally adjusted for education, BMI-adjusted waist circumference, smoking, physical activity and alcohol. Model 3 was additionally adjusted for the Dutch Health Diet Index 2015. Model 4 was additionally adjusted for baseline hypertension, hypercholesterolaemia, diabetes mellitus and myocardial infarction.

When we repeated the analyses without the participants who reported a history of hypertension, hypercholesterolaemia, diabetes mellitus or myocardial infarction at baseline, the patterns of associations remained the same, although the results did not reach statistical significance (online Supplementary Tables S8 and S9).

When isoenergetic substitutions of 100 kcal/d (418 kJ/d) were performed, we observed similar patterns of associations as for substitutions of servings (online Supplementary Tables S10S12).

Discussion

In this prospective cohort study we observed that the intake of whole-fat yogurt products as a substitution for all other dairy product subgroups was associated with a lower rate of ischaemic stroke. We did not observe any associations for substitutions between dairy products and the rate of total or haemorrhagic stroke.

Our study has important strengths but also limitations. We had detailed information about the intake of several types of dairy products, which enabled us to directly compare individual diary product subgroups. We collected data on dairy product intake using a validated FFQ(Reference Beulens, Monninkhof and Verschuren12). The correlation coefficients for the validity assessed by comparison with twelve 24-h diet recalls were 0·64 and 0·38 for men and women, respectively, for cheese and 0·71 and 0·79 for men and women, respectively, for milk and milk products, indicating that some non-differential misclassification of dairy product intake may be present. In the validation study, milk and yogurt were grouped together, and therefore, we do not know the validity for individual types of milk and yogurt. Although an FFQ is a suitable instrument to measure habitual diet in large-scale studies, the use of only one measurement may yield less precise risk estimates because the participants may have changed their diet during follow-up. The stroke diagnoses were identified by register linkage(Reference Herings, Bakker and Stricker14) but were not individually validated; thus, non-differential misclassification of the outcome is possible(Reference McCormick, Bhole and Lacaille19).

Despite elaborate model adjustment, residual confounding from unknown or unmeasured stroke risk factors and misclassification of covariates may still be present. However, given the magnitude of the associations after adjustment for lifestyle and dietary risk factors, residual confounding is unlikely to fully explain the inverse association of whole-fat yogurt as a substitution for other dairy products.

One other study has investigated substitutions between dairy product subgroups with the rate of stroke(Reference Laursen, Dahm and Johnsen11). That study suggested that whole-fat yogurt substituted for low-fat yogurt, cheese, buttermilk or milk, regardless of fat content, was associated with a lower rate of ischaemic stroke, while no associations were observed for haemorrhagic stroke, which is in line with the results from the present study. The lack of association for substitutions between dairy product subgroups with haemorrhagic stroke could be due to a different aetiology of haemorrhagic compared with ischaemic stroke. However, both studies are likely underpowered to detect small associations, and therefore, strong conclusions from those analyses cannot be drawn. Several prospective studies investigating dairy product intake and risk of stroke have been published(Reference Louie, Flood and Burlutsky4Reference Praagman, Franco and Ikram8,Reference Goldbohm, Chorus and Galindo Garre20,Reference Larsson, Mannisto and Virtanen21) . These studies, however, did not specify a food substitution and, therefore, investigated the association of intake of dairy products in place of other non-specified energy-providing foods. Because what you choose to eat in place of a given dairy product may be population-specific and may affect the association, the studies are not readily comparable, and they do not directly address whether one type of dairy product is to be preferred over another.

Our results suggest that whole-fat yogurt may be a better alternative to other dairy products for the prevention of ischaemic stroke. In a randomised crossover study that compared the regular DASH diet with a modified high-fat DASH diet, including whole-fat dairy products rather than low-fat dairy products, similar beneficial effects on blood pressure were observed for both diets as well as favourable effects on the lipid profile with the high-fat DASH diet(Reference Chiu, Bergeron and Williams3). The compared diets had similar total energy contents but differed in the energy content provided by dairy foods. Consequently, the diets also differed in other energy-providing foods, in this case, particularly fruit juices and sugar from sweets. Therefore, the observed effects cannot solely be attributed to whole-fat dairy products because it is a joint effect of a higher intake of whole-fat dairy products and lower intake of fruit juices and sugars. In our study, the observed associations also represent a joint association, namely, the comparison of two specified dairy subgroups. However, when we compare equal serving sizes of products differing in energy content or foods with different serving sizes, a difference in energy from other non-specified foods will remain unexplained by the model, but this unexplained residual energy is much smaller than if we had not specified substitutions. In order to address the influence of unexplained residual energy intake in our analyses, we also performed isoenergetic substitution analyses of 100 kcal/d (418 kJ/d), which roughly corresponds to the energy content of a glass of low-fat milk. The results from these analyses did not markedly differ from the results based on servings, which implies that unexplained energy intake may not be a major issue in the analyses of servings. This is perhaps because the difference in energy content of equal servings of milk and yogurt is relatively small in the light of the total daily energy intake. Also, despite a large difference in energy density between milk products and cheese and butter, this difference is compensated for by the large difference in serving size. Consequently, in the case of substitution of dairy products, the two analytical approaches are comparable. This may, however, not always be the case. For instance 100 kcal/d (418 kJ/d) isoenergetic substitutions between spinach and regular-fat cheese will approximately compare 400 g of spinach with 30 g of cheese. While such an analysis is not confounded by a difference in energy intake of other foods, it does not reflect the choices of substitution made in the population. Thus, both analytical approaches hold important information but have limitations.

Multiple mechanisms might explain why whole-fat yogurt products appear to be a better alternative than other dairy products. Dairy fat contains conjugated linoleic acid, which has been proposed to have beneficial health effects related to atherosclerosis, such as changes in body fat, lipid profile and blood pressure(Reference Dilzer and Park22,Reference DiRienzo23) . Conjugated linoleic acid is formed in the rumen and mammary gland of the cow and, to a lesser extent, endogenously in humans by the conversion of vaccenic acid in dairy fat(Reference Collomb, Schmid and Sieber24Reference Turpeinen, Mutanen and Aro26). Fermented milk products, such as yogurt, contain probiotic cultures, such as lactobacilli and bifidobacteria, that may further increase the content of conjugated linoleic acid through the conversion of linoleic acid(Reference Andrade, Ascenção and Gullón27). In addition, different probiotic cultures may also individually exert anti-atherosclerotic effects(Reference DiRienzo23). Therefore, our results may reflect a synergistic effect of high fat content and the presence of probiotic bacteria. The fat content alone does not appear to explain the found associations, as we did not find an association for the substitution between low-fat and whole-fat milk. Similarly, the presence of probiotic bacteria alone does not appear to explain the found associations, as we did not find an association for the substitution of low-fat yogurt for low-fat milk. Furthermore, milk intake has been positively associated with urinary 8-iso-PGF2α, a biomarker of oxidative stress, whereas fermented milk intake has been negatively associated with 8-iso-PGF2α (Reference Michaëlsson, Wolk and Langenskiöld28), offering an additional possible explanation for why whole-fat yogurt products as a substitution for milk are associated with a lower rate of ischaemic stroke in our study.

In conclusion, we observed that the substitution of whole-fat yogurt products for low-fat yogurt products, cheese, butter, buttermilk or milk, regardless of fat content, was associated with a lower rate of ischaemic but not haemorrhagic stroke.

Supplementary material

For supplementary material/s referred to in this article, please visit https://doi.org/10.1017/S0007114519000564

Acknowledgements

The EPIC-NL study was supported by the ‘Europe Against Cancer’ Programme of the European Commission; Dutch Ministry of Health, Welfare and Sports; Netherlands Organisation for Health Research and Development; and World Cancer Research Fund. I. S. reports grants from Unilever Research and Development, Vlaardingen, The Netherlands.

A. S. D. L. and M. U. J. designed the study; A. S. D. L. analysed the data; A. S. D. L., M. U. J., I. S. and Y. v. d. S. interpreted the data. A. S. D. L. wrote the manuscript. J. M. A. B. and W. M. M. V. provided input to the manuscript. All authors read and approved the final version of the manuscript.

The authors declare that there are no conflicts of interest.

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Figure 0

Table 1. Participant characteristics in the European Investigation into Cancer and Nutrition-Netherlands (EPIC-NL) cohort (n 36 886)(Medians and 80 % central ranges; numbers of participants; percentages)

Figure 1

Table 2. Associations for one serving/d substitutions between dairy products and risk of ischaemic stroke in the European Investigation into Cancer and Nutrition-Netherlands (EPIC-NL) cohort*(Hazard ratios (HR) and 95 % confidence intervals)

Figure 2

Table 3. Associations for one serving/d substitutions between dairy products and risk of haemorrhagic stroke in the European Investigation into Cancer and Nutrition-Netherlands (EPIC-NL) cohort*(Hazard ratios (HR) and 95 % confidence intervals)

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