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Substitution of meat and fish with vegetables or potatoes and risk of myocardial infarction

Published online by Cambridge University Press:  24 October 2016

Anne M. L. Würtz*
Affiliation:
Section for Epidemiology, Department of Public Health, Aarhus University, DK-8000 Aarhus C, Denmark
Mette D. Hansen
Affiliation:
Section for Epidemiology, Department of Public Health, Aarhus University, DK-8000 Aarhus C, Denmark
Anne Tjønneland
Affiliation:
Danish Cancer Society Research Center, DK-2100 Copenhagen Ø, Denmark
Eric B. Rimm
Affiliation:
Department of Medicine, Channing Division of Network Medicine, Brigham and Women’s Hospital, Harvard Medical School, Boston, MA 02115, USA Departments of Epidemiology and Nutrition, Harvard T.H. Chan School of Public Health, Boston, MA 02115, USA
Erik B. Schmidt
Affiliation:
Department of Cardiology, Center for Cardiovascular Research, Aalborg University Hospital, DK-9000 Aalborg, Denmark
Kim Overvad
Affiliation:
Section for Epidemiology, Department of Public Health, Aarhus University, DK-8000 Aarhus C, Denmark Department of Cardiology, Center for Cardiovascular Research, Aalborg University Hospital, DK-9000 Aalborg, Denmark
Marianne U. Jakobsen
Affiliation:
Section for Epidemiology, Department of Public Health, Aarhus University, DK-8000 Aarhus C, Denmark
*
*Corresponding author: A. M. L. Würtz, fax +45 8613 1580, email amlw@ph.au.dk
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Abstract

Red meat has been suggested to be adversely associated with risk of myocardial infarction (MI), whereas vegetable consumption has been found to be protective. The aim of this study was to investigate substitutions of red meat, poultry and fish with vegetables or potatoes for MI prevention. We followed up 29 142 women and 26 029 men in the Danish Diet, Cancer and Health study aged 50–64 years with no known history of MI at baseline. Diet was assessed by a validated 192-item FFQ at baseline. Adjusted Cox proportional hazard models were used to calculate hazard ratios (HR) and 95 % CI for MI associated with specified food substitutions of 150 g/week. During a median follow-up of 13·6 years, we identified 656 female and 1694 male cases. Among women, the HR for MI when replacing red meat with vegetables was 0·94 (95 % CI 0·90, 0·98). Replacing fatty fish with vegetables was associated with a higher risk of MI (HR 1·23; 95 % CI 1·05, 1·45), whereas an inverse, statistically non-significant association was found for lean fish (HR 0·93; 95 % CI 0·83, 1·05). Substituting poultry with vegetables was not associated with risk of MI (HR 1·00; 95 % CI 0·90, 1·11). Findings for substitution with potatoes were similar to findings for vegetables. Among men, a similar pattern was observed, but the associations were weak and mostly statistically non-significant. This study suggests that replacing red meat with vegetables or potatoes is associated with a lower risk of MI, whereas replacing fatty fish with vegetables or potatoes is associated with a higher risk of MI.

Type
Full Papers
Copyright
Copyright © The Authors 2016 

Myocardial infarction (MI) remains a leading cause of morbidity and mortality in Western countries, and diet is an important modifiable risk factor. Dietary changes usually imply changing the dietary composition rather than the total energy intake( Reference Willett, Howe and Kushi 1 ). Thus, most observational studies on intake of specific foods and risk of MI include total energy intake in the statistical models. As foods may be beneficial, neutral or harmful in relation to MI development, the association with MI depends not only on the specific food item of interest but also on other foods in the diet that may be replaced by this food item. Studies on foods should therefore specify these substitutions in the statistical models. This will ensure a clear interpretation of the findings, which can easily be translated into dietary guidelines for the general population( Reference Astrup, Dyerberg and Elwood 2 ). A study illustrating the importance of specifying the substitutions was conducted by Bernstein et al.( Reference Bernstein, Sun and Hu 3 ): substitution of one daily serving of fish with dairy products was associated with a higher risk of CHD, whereas substitution of one daily serving of red meat with dairy products was associated with a lower risk of CHD.

In observational studies with no specified food substitutions, red meat consumption, particularly processed red meat, has been associated with a higher risk of MI( Reference Bernstein, Sun and Hu 3 Reference Takata, Shu and Gao 6 ), whereas vegetable consumption has been associated with a lower risk of MI( Reference Dauchet, Amouyel and Hercberg 7 , Reference Dauchet, Amouyel and Dallongeville 8 ). Substituting red meat with vegetables may therefore be beneficial for prevention of MI. In addition to red meat, poultry and fish are other major animal dietary protein sources. An inverse association between fish consumption and MI has been suggested( Reference Kris-Etherton, Harris and Appel 9 Reference He, Song and Daviglus 12 ), whereas no association between poultry consumption and MI has been observed( Reference Bernstein, Sun and Hu 3 , Reference Takata, Shu and Gao 6 , Reference Sinha, Cross and Graubard 13 ). In a meal context, starchy foods such as potatoes constitute a major component besides protein-rich foods and vegetables, and substitutions with potatoes might therefore also be relevant.

We conducted a follow-up study to investigate substitutions of red meat, poultry and fish with vegetables or potatoes for MI prevention. As meat processing( Reference Micha, Wallace and Mozaffarian 4 ), content of n-3 PUFA in fish( Reference De Caterina 14 ) and bioactive components in different vegetables may be important for the association with MI( Reference Slavin and Lloyd 15 ), we also looked into substitutions between subgroups of these foods.

Methods

Study design and population

The Diet, Cancer and Health study was initiated in the period between December 1993 and May 1997 by inviting 79 729 women and 80 996 men, of whom 57 053 consented to participate. All were 50–64 years old, living in the greater Copenhagen and Aarhus areas, born in Denmark and not previously registered in the Danish Cancer Registry. The protocols for the Diet, Cancer and Health study and for the present substudy were approved by the regional ethics committees on human studies in Aarhus and Copenhagen and by the Danish Data Protection Agency, and all participants gave their written informed consent. A detailed description of the Diet, Cancer and Health cohort has been published previously( Reference Tjonneland, Olsen and Boll 16 ).

Exposure assessment

The habitual diet over the past 12 months was assessed using a 192-item, semi-quantitative FFQ filled in by the study participants before their visit to one of the two study centres in Copenhagen and Aarhus. The FFQ was designed for this study and validated against two 7-d weighed diet records( Reference Overvad, Tjonneland and Haraldsdottir 17 , Reference Tjonneland, Overvad and Haraldsdottir 18 ). It was found to be a useful instrument for categorising individuals according to their intake of nutrients and energy( Reference Tjonneland, Overvad and Haraldsdottir 18 ). The average consumption of foods and beverages was reported by the participants in twelve response categories ranging from ‘never’ to ‘eight times or more per day’. The FFQ was processed by optical scanning to check for reading errors and missing information. Any uncertainty was clarified with the study participant at the visit, and no missing values were accepted. The daily intake of food items was calculated using FoodCalc( Reference Lauritsen 19 ) and sex-specific portion sizes( Reference Haraldsdottir, Tjonneland and Overvad 20 , Reference Tjonneland, Haraldsdottir and Overvad 21 ). The FFQ covered intakes of single meat and fish items and a few mixed dishes such as stew. In total, thirty-five questions covered intakes of red meat, including both unprocessed and processed red meat. Unprocessed red meat included fresh and minced beef, veal, pork and lamb. Processed red meat included red meat items that had undergone processing such as smoking, salting or curing. This included various kinds of sausage, salami, smoked or cooked ham, other cold cuts, bacon and liver pate. A total of four questions covered intake of poultry and included chicken and turkey, whereas twenty-four questions covered intake of fish and shellfish. Total fish included all unprocessed and processed fish and shellfish and was further subdivided into two groups according to the content of n-3 PUFA: fish with a low content of n-3 PUFA (≤1 g/100 g) included lean white fish, canned tuna, sardines, shellfish and cod roe, and fish with a high content of n-3 PUFA (>1 g/100 g) included salmon, trout, herring, fresh and canned mackerel, and lumpfish roe. A total of twenty-five questions covered intake of vegetables, including single vegetable items and a few mixed dishes such as salad and vegetable patties. In addition, the vegetable content from standard recipes such as stew contributed small amounts. Vegetable intake was grouped according to botanical and culinary definitions: fruiting vegetables (cucumber, aubergine, green pepper, red pepper, tomato, zucchini, avocado, green beans, green peas, maize), leafy vegetables (spinach, lettuce), root vegetables (carrot, celeriac, ginger), cabbage (cauliflower, broccoli, red cabbage, white cabbage, kale, Brussels sprouts), mushrooms (champignon, chanterelle), onion (onion, garlic) and stalk vegetables/sprouts (leek, bean sprouts, chives, asparagus, bamboo shoots, rhubarb). Because of the limited intake of leafy vegetables, mushrooms, onions and stalk vegetables/sprouts, these vegetables were combined into one group named ‘other vegetables’. A total of eight questions covered the intake of potatoes, including boiled, baked, roasted, fried and mashed potatoes, and they were combined into one potato group, not including potato chips.

Covariates

At study entry, the participants filled in a lifestyle questionnaire containing questions on health status, social factors, lifestyle habits and reproductive factors. They provided information on smoking habits, physical activity, length of schooling, medical history, hypertension, hypercholesterolaemia and diabetes mellitus; women provided information on menopausal status and use of hormone replacement therapy as well. The lifestyle questionnaire was checked for reading errors, and all unclear or missing information was clarified with the study participants. Trained laboratory technicians recorded the participants’ height, weight and waist circumference. Information on alcohol consumption, total energy intake and intake of other foods was obtained from the FFQ.

Case ascertainment

The outcome measure was incident non-fatal and fatal MI. Participants registered with a first-time discharge diagnosis of MI or cardiac arrest believed to be caused by an MI (International Classification of Diseases, 8th revision, codes 410–410.99 and 427.27, and International Classification of Diseases, 10th revision, codes I21.0-I21.9 and I46.0-I46.9) were identified in the Danish National Patient Register and in the Danish Cause of Death Register using the unique ten-digit civil registration number assigned to all Danish citizens by the Central Population Register. From baseline through 2003, the medical records of potential cases were reviewed, and the cases were validated according to MI criteria set by the American Heart Association and the European Society of Cardiology for use in epidemiological studies( Reference Luepker, Apple and Christenson 22 ). From 1 January 2004 through 31 December 2009, participants with an MI diagnosis from a hospital ward were accepted as cases without further validation, as the positive predictive value of these register diagnoses from hospital wards was found to be above 92 %( Reference Joensen, Jensen and Overvad 23 ). Other potential cases were validated by review of diagnoses and procedure codes in the National Patient Register and the Cause of Death Register. Information on vital status and emigration was obtained by linkage with the Danish Civil Registration System.

Exclusions

According to the intention-to-include criteria, participants diagnosed with cancer but not registered in the Danish Cancer Registry because of processing delay before baseline were subsequently excluded. In addition, we excluded participants with a diagnosis of MI or cardiac arrest before enrolment and participants with missing information on potential confounders.

Statistical methods

The study participants were followed up from the date of study entry until the date of MI diagnosis, emigration, death, loss to follow-up or 31 December 2009, whichever occurred first. Hazard ratios (HR) and 95 % CI for MI were calculated using Cox proportional hazards regression with age as the underlying time scale. The observation time was calculated as the time between study entry and end of follow-up for each participant. The analyses were carried out separately for women and men.

Baseline characteristics of the study participants are summarised using medians and 80 % central ranges for continuous variables and proportions for categorical variables. To illustrate the intake of meat and fish items according to low and high intake of vegetables and potatoes, we created radar charts presenting the percentage-wise difference in median intake of each meat and fish item among women and men in the first and fifth quintiles of intake of total vegetables and of potatoes relative to the median intake of the particular meat and fish item among the entire study population of each sex. For descriptive purposes, intakes of meat, fish, vegetables and potatoes were energy adjusted using the residual method( Reference Willett and Stampfer 24 ).

We investigated intakes of 150 g/week, reflecting a usual serving size of meat or fish, for each food item in unspecified and specified substitution models. The specified substitution was introduced into the statistical models by inclusion of a variable made up by the sum of red meat, poultry, fish, vegetables and potatoes in addition to each of these food groups separately, except for the food group to be replaced. As the total amount of red meat, poultry, fish, vegetables and potatoes was held constant by the sum variable, a 150 g/week higher intake of one of the food groups introduced separately into the model implied a concomitant 150 g/week lower intake of the specific food group excluded from the model. This means that we specified substitutions of 150 g/week. In sensitivity analyses, we also investigated unspecified and specified substitutions in kcal/week.

All associations were investigated with adjustment for total energy intake (kcal/week; continuous) (model 1a) and further adjustment for BMI (kg/m2; continuous), waist circumference (cm; continuous), alcohol abstinence (yes, no), alcohol intake (g/d; continuous), smoking status and amount (never, former, current<15 g tobacco/d, current 15–25 g tobacco/d and current>25 g tobacco/d), leisure time physical activities (dichotomised; < or ≥3·5 h/week) and duration of schooling (<8, 8–10, >10 years) as a measure of socio-economic status, in addition to menopausal status (premenopausal, postmenopausal, unknown) and use of hormone replacement therapy (never, former, current) among women (model 1b). The continuous variables BMI, waist circumference and alcohol intake were entered using restricted cubic splines with three knots. We further adjusted for the following food and beverage groups: fruits, sweets, soft drinks, lean dairy products, fatty dairy products, potato chips, refined cereals, wholegrain cereals and nuts (all g/week; continuous) (model 2). Linearity of the exposure variables was tested using restricted cubic splines and was found to be appropriate. The proportional hazards assumption was explored using the Schoenfeld residuals and graphical assessment. No major violations of the assumptions were identified. To investigate potential effect modification, we initially carried out analyses separately for participants with and without a baseline history of hypertension (yes, no, don’t know), hypercholesterolaemia (yes, no, don’t know) and/or diabetes mellitus (yes, no, don’t know). No substantial differences were found, and we therefore adjusted for these conditions in an additional model (results not shown).

All analyses were performed in Stata versions 13 and 14 (StataCorp LP).

Results

In total, 57 053 participants (29 875 women and 27 178 men) consented to participate, corresponding to 35 % of those invited. Among these participants, 567 with a cancer diagnosis before baseline, not initially registered, and 900 with a previous diagnosis of MI were excluded. Furthermore, forty-two participants missing a complete baseline examination and 373 with missing information on potential confounders were excluded. These exclusions left 29 142 female and 26 029 male participants in the present study.

During a median follow-up time of 13·6 years for women and 13·5 years for men, 656 female and 1694 male cases were identified. Baseline characteristics of cohort members and cases are presented in Table 1. Among both women and men, cases were older, had a slightly higher BMI, a larger waist circumference, were more likely to be alcohol abstainers and had a lower alcohol intake compared with cohort members. Furthermore, cases were more likely to be smokers, had a lower level of physical activity and had a shorter length of schooling compared with cohort members. In addition, a higher proportion among cases than among cohort members had a self-reported diagnosis of hypertension, hypercholesterolaemia or diabetes mellitus at baseline. Among women, cases were more likely to be postmenopausal than cohort members, but no differences were observed with regard to use of hormone replacement therapy. The energy-adjusted intakes of red meat, fish, poultry, vegetables and potatoes are presented in Table 2. Radar charts illustrating the intakes of meat and fish items according to low and high intakes of total vegetables and according to low and high intakes of potatoes are presented in the online Supplementary Fig. S1.

Table 1 Baseline characteristics of the cohort and cases in the Diet, Cancer and Health study (Medians and 10th–90th percentiles (p10–p90) or proportions)

* Among women.

Among users.

Table 2 Energy-adjusted intakes of red meat, fish, poultry, potatoes and vegetables among cohort and cases in the Diet, Cancer and Health study (Medians and 10th–90th percentiles (p10–p90))

The HR and 95 % CI for the incidence of MI associated with the intake of 150 g/week of each food item separately are presented in Table 3. Among women, intake of total red meat was associated with a statistically significant higher risk of MI in models adjusted for age, total energy and other established risk factors for MI (model 1b) (HR 1·06; 95 % CI 1·01, 1·10). This association was primarily accounted for by unprocessed red meat (HR 1·08; 95 % CI 1·02, 1·14). Intake of fatty fish (HR 0·82; 95 % CI 0·70, 0·95), but not lean fish (HR 1·00; 95 % CI 0·90, 1·11), was associated with a statistically significant lower risk of MI. No statistically significant associations were found for poultry, total vegetables or potatoes. Among men, the associations were weak and mostly statistically non-significant. The pattern of associations for red meat and fish were in the same direction as for women, but the direct association between total red meat and MI was accounted for by processed rather than unprocessed red meat.

Table 3 Myocardial infarction per 150 g/week higher intake of meat, fish, vegetables or potatoes in the Diet, Cancer and Health study (Hazard ratios (HR) and 95 % confidence intervals)

* Adjusted for age and total energy.

Model 1a was further adjusted for alcohol abstinence, alcohol intake, BMI, waist circumference, smoking status, physical activity, duration of schooling, menopausal status and use of hormone replacement therapy.

Model 1b was further adjusted mutually for the investigated food items and for fruits, sweets, soft drinks, lean dairy products, fatty dairy products, potato chips, refined cereals, wholegrain cereals and nuts.

§ Model 1a was further adjusted for alcohol abstinence, alcohol intake, BMI, waist circumference, smoking status, physical activity and duration of schooling.

Table 4 shows the HR and 95 % CI for the incidence of MI per 150 g/week higher intake of vegetables or potatoes and a concomitant 150 g/week lower intake of a specified type of red meat, fish or poultry. The results from the age- and energy-adjusted models (model 1a) were slightly attenuated when further adjusted for MI risk factors (model 1b). Among women, substituting total vegetables for total red meat was associated with a statistically significant lower risk of MI (HR 0·94; 95 % CI 0·90, 0·98). For subgroups of red meat, only substitution of vegetables for unprocessed red meat was statistically significantly associated with MI (HR 0·91; 95 % CI 0·86, 0·98). The HR for substitution of vegetables for processed red meat was 0·99 (95 % CI 0·89, 1·09). No statistically significant association was found when substituting total vegetables for total fish (HR 1·05; 95 % CI 0·96, 1·14) or lean fish (HR 0·93; 95 % CI 0·83, 1·05). However, replacement of fatty fish with vegetables was associated with a higher risk of MI (HR 1·23; 95 % CI 1·05, 1·45). We found no association with MI when total vegetables replaced poultry (HR 1·00; 95 % CI 0·90, 1·11). The pattern of replacements of meat or fish items with potatoes was similar to that of meat and fish items replaced with vegetables. The pattern of associations after adjustment for other foods and food groups associated with MI (model 2) was the same as in model 1b. The same pattern of associations was observed with further adjustment for baseline history of hypertension, hypercholesterolaemia and diabetes mellitus (results not shown). Substitutions of meat or fish with vegetable subgroups among women are shown in Fig. 1. Root and fruiting vegetables seemed to be the primary contributors to the findings for total vegetables.

Fig. 1 Hazard ratios and 95 % CI for the replacements of red meat, poultry or fish with vegetable subgroups among women adjusted for age, total energy, alcohol abstinence, alcohol intake, BMI, waist circumference, smoking status, physical activity, duration of schooling, menopausal status and use of hormone replacement therapy. Veg., vegetable.

Table 4 Myocardial infarction associated with substitution of 150 g/week of red meat, poultry or fish with vegetables or potatoes in the Diet, Cancer and Health study (Hazard ratios (HR) and 95 % confidence intervals)

* Adjusted for age and total energy.

Model 1a was further adjusted for alcohol abstinence, alcohol intake, BMI, waist circumference, smoking status, physical activity, duration of schooling, menopausal status and use of hormone replacement therapy.

Model 1b was further adjusted for fruits, sweets, soft drinks, lean dairy products, fatty dairy products, potato chips, refined cereals, wholegrain cereals and nuts.

§ Model 1a was further adjusted for alcohol abstinence, alcohol intake, BMI, waist circumference, smoking status, physical activity and duration of schooling.

Among men (Table 4), the associations between substitutions of vegetables and potatoes for meat or fish and risk of MI were weak and in general statistically non-significant. These findings did, however, indicate a pattern similar to that of women except for total red meat, where the association seemed to be driven by processed red meat. Substitutions of meat or fish with vegetable subgroups among men are shown in Fig. 2. As for women, the findings for total vegetables seemed primarily to be accounted for by the subgroups of root and fruiting vegetables.

Fig. 2 Hazard ratios and 95 % CI for the replacements of red meat, poultry or fish with vegetable subgroups among men adjusted for age, total energy, alcohol abstinence, alcohol intake, BMI, waist circumference, smoking, physical activity and duration of schooling. Veg., vegetable.

Overall, the findings for unspecified and specified substitutions in kcal/week were similar to those in g/week (see online Supplementary Tables S2–S5).

Discussion

In this long-term, follow-up study, we found a lower risk of MI among women when replacing red meat with vegetables or potatoes. Replacing fatty fish with vegetables or potatoes in contrast was associated with a higher risk of MI. Among men, a similar pattern was observed, but the associations were less likely to be statistically significant.

Individuals usually alter their intake of specific foods primarily by changing the dietary composition rather than by changing the total energy intake unless physical activity or body weight is changed considerably( Reference Willett, Howe and Kushi 1 ). In the specified substitution models, we compared participants who had an identical total energy intake and an identical intake of the total sum of red meat, fish, poultry, vegetables and potatoes, but for whom the intake of each of the individual food groups differed. Inclusion of the sum of red meat, fish, poultry, vegetables and potatoes as well as each of these food groups separately in the statistical models except for the food group to be replaced allowed us to estimate substitutions. This is different from most other studies, as the consumption of these foods has typically been investigated without specifying the replaced food items. In line with previous studies, we also presented risk estimates for the food items one by one without specifying the substitutions. Total energy was included as a covariate in the models, and unspecified substitution models were therefore created( Reference Willett, Howe and Kushi 1 ). Interpretation of these models is not straightforward. The higher intake of the investigated food item is at the expense of other energy-providing food items not included in the model. These food items could be beneficial, neutral or harmful in relation to MI. In other words, the health impact of a specific food item cannot be isolated from that of other foods it replaces, and it is therefore important to specify the substitutions.

When investigating substitutions, there are several choices of unit with consequences for the interpretation of the findings. The results presented in this study are based on substitutions of food intakes of 150 g/week, corresponding to one serving size of meat. However, substitution between protein-rich foods and foods such as vegetables and potatoes might merely be a matter of the relative contribution of each food group to the meal – that is, smaller servings of meat and larger servings of vegetables and potatoes – rather than a complete substitution of one food group with another. When investigating substitutions of similar amounts of foods with different density – for example, meat v. vegetables – the volume of the foods substituted differs. This is, however, of minor importance when only small amounts of foods are being substituted. Furthermore, because of differences in energy density of foods, for example, caused by differences in water content, holding total energy constant when investigating substitutions of foods in grams entails a minor unspecified residual substitution of energy from other foods. We also investigated substitutions of equal amounts of energy from the different foods. This ensures no residual substitution due to differences in energy density, but the amounts of the two foods substituted differ according to differences in the energy density of the foods investigated. The patterns of results for substitutions in energy/week were overall similar to those in g/week. A third choice is substitution of servings (volume or weight specific), as applied in the study by Bernstein et al.( Reference Bernstein, Sun and Hu 3 ). The same issue with unspecified substitution occurs with varying energy density of the substituted foods when using servings. An additional potential cause of differences in energy content between the foods being substituted is the difference in serving sizes, unique for each food item of interest.

Statistically, there are several options for modelling substitutions. In the present study, we included a sum variable that contained all the food groups to be substituted between in addition to each of these food groups separately, except for the food group to be replaced. Thereby, we obtained the HR and corresponding 95 % CI for the substitutions directly in the output from the Cox model. Another method to obtain substitution estimates is to include all food groups to be substituted between in the same model with no sum variable( Reference Bernstein, Sun and Hu 3 , Reference Muraki, Imamura and Manson 25 ). From the output, the difference between the β-coefficients of two food groups is used to estimate the HR for the substitution between these two food groups. The variance of each food group and the covariance of the two food groups are used to calculate the corresponding 95 % CI. These two methods to obtain HR and 95 % CI for substitutions are equivalent, which is evident from the re-parametrisation in the online Supplementary Material S6.

Because of inclusion criteria, participants of higher socio-economic status were slightly over-represented in the study cohort( Reference Tjonneland, Olsen and Boll 16 ). However, within the cohort, there was substantial exposure variation. The follow-up of participants in the study was nearly complete, which reduces the concern for selection bias. However, censoring due to death from other causes with disease aetiology similar to that of MI may have introduced selection bias, and the true associations may thus have been underestimated. For example, participants who were censored due to death from other atherosclerotic diseases such as stroke most likely also had a higher risk of MI due to similarities in the underlying aetiology.

The dietary information was obtained from self-administered FFQ, which are affected by random measurement error. This generally leads to underestimation of the true association and to loss of statistical power. Furthermore, differential reporting of different foods cannot be excluded, and potential systematic under- and over-reporting could bias the estimates( Reference Heitmann and Lissner 26 , Reference Heitmann and Lissner 27 ). The comprehensive information on intake of subtypes of food groups enabled us to investigate subgroup-specific associations. Although FFQ may reflect the habitual eating pattern and we aimed to assess the long-term association between different food choices and development of MI, repeated measures would have been preferred over a single baseline measure. Multiple measures would have allowed us to correct some measurement error, and dietary intake might have changed during follow-up. The use of complete registries for information on diagnosis of MI in addition to the confirmation and validation of each case of MI minimises the risk of misclassification of the outcome. As the diagnoses of MI were established independently of the dietary information, information bias is unlikely to have affected our results.

The detailed information on potential confounders limits the risk of residual confounding, but confounding from risk factors of MI not taken into consideration cannot be excluded. Adjusting our models for established risk factors of MI weakened the risk estimates, indicating confounding from these risk factors. In the food substitution models not adjusted for other foods (model 1b), the underlying dietary pattern associated with different choices of meat, fish, vegetables or potatoes was allowed to vary accordingly. Thus, the food items substituted may be considered as indicators of the underlying dietary patterns. By contrast, in model 2, further adjusted for selected foods and food groups, only the meat, fish, vegetable and potato items specified in the substitution models and the dietary factors not adjusted for were allowed to vary, thereby restricting the underlying dietary patterns. Thus, in model 2, the food substitution per se was investigated, but the findings may not easily be applied to a meal context. However, in model 1b, confounding from other dietary factors cannot be excluded. In addition, the unspecified residual substitution occurring because of differences in energy density of the foods being substituted is restricted by adjustment for other dietary factors. Therefore, the interpretation of findings differs between models with and without adjustment for other foods, even though the overall pattern of associations in the two models was similar.

In the Nurses’ Health Study of US female nurses, Bernstein et al.( Reference Bernstein, Sun and Hu 3 ) found no association with CHD when one daily serving of red meat, poultry or fish was replaced with one serving of beans. Likewise, in a study of US women and men, Haring et al.( Reference Haring, Gronroos and Nettleton 28 ) found no association with CHD when one serving of red meat, processed meat, poultry or fish and seafood was replaced with one serving of legumes. Because of a limited intake of beans and other legumes, we were not able to explore these substitutions specifically in the present study.

Because of differences in method of preparation and contents of specific fats, Na, nitrites and other additives, we hypothesised that replacement of processed red meat with vegetables or potatoes would be more beneficial than replacement of unprocessed red meat( Reference Micha, Wallace and Mozaffarian 4 ). This pattern was only recognised among men, and our results did not confirm this hypothesis among women. For fish, we found that replacement of lean fish with vegetables or potatoes was inversely associated with MI among both women and men, but was not statistically significant, whereas the results for fatty fish replaced with these foods suggested direct associations with MI. This could be explained by the higher content in fatty fish of n-3 PUFA with their presumed beneficial effects on CHD( Reference De Caterina 14 ). Our findings among men were weaker and less likely to be statistically significant than our findings among women. This could be explained by differences in the baseline hazard. As men have a higher baseline risk of MI than women, the associations on a relative scale are expected to be weaker.

In conclusion, replacing red meat with vegetables or potatoes was associated with a lower risk of MI, and replacing fatty fish with vegetables or potatoes was associated with a higher risk of MI. Studies on individual dietary changes over time and subsequent risk of MI would add additional value to elucidate the role of food substitutions in the risk of future MI.

Acknowledgements

The authors thank the Danish Cancer Society and the staff of the Diet, Cancer and Health study for the collection and administration of data.

This work is part of the project ‘Diet and prevention of ischemic heart disease: a translational approach’ (DIPI, www.dipi.dk), which is supported by the Danish Council for Strategic Research (today, Innovation Fund Denmark) (Contract 0603-00488B). One-third of the fellowship was granted by the Graduate School of Health, Aarhus University. The primary data collection was funded by the Danish Cancer Society. The funding agencies had no role in the study design, analysis or writing of this article.

The authors’ contributions are as follows: A. M. L. W., K. O. and M. U. J. contributed to the study design; A. T. and K. O. collected the data; A. M. L. W. performed the statistical analyses; A. M. L. W., M. D. H., A. T., E. B. R., E. B. S., K. O. and M. U. J. were involved in the interpretation of the data and critical revision of the manuscript; A. M. L. W. wrote the manuscript. A. M. L. W. had primary responsibility for the final content. All authors read and approved the final version of the manuscript.

The authors declare that there are no conflicts of interest.

Supplementary material

For supplementary material/s referred to in this article, please visit http://dx.doi.org/doi:10.1017/S0007114516003500

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Figure 0

Table 1 Baseline characteristics of the cohort and cases in the Diet, Cancer and Health study (Medians and 10th–90th percentiles (p10–p90) or proportions)

Figure 1

Table 2 Energy-adjusted intakes of red meat, fish, poultry, potatoes and vegetables among cohort and cases in the Diet, Cancer and Health study (Medians and 10th–90th percentiles (p10–p90))

Figure 2

Table 3 Myocardial infarction per 150 g/week higher intake of meat, fish, vegetables or potatoes in the Diet, Cancer and Health study (Hazard ratios (HR) and 95 % confidence intervals)

Figure 3

Fig. 1 Hazard ratios and 95 % CI for the replacements of red meat, poultry or fish with vegetable subgroups among women adjusted for age, total energy, alcohol abstinence, alcohol intake, BMI, waist circumference, smoking status, physical activity, duration of schooling, menopausal status and use of hormone replacement therapy. Veg., vegetable.

Figure 4

Table 4 Myocardial infarction associated with substitution of 150 g/week of red meat, poultry or fish with vegetables or potatoes in the Diet, Cancer and Health study (Hazard ratios (HR) and 95 % confidence intervals)

Figure 5

Fig. 2 Hazard ratios and 95 % CI for the replacements of red meat, poultry or fish with vegetable subgroups among men adjusted for age, total energy, alcohol abstinence, alcohol intake, BMI, waist circumference, smoking, physical activity and duration of schooling. Veg., vegetable.

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