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Dietary patterns and risk of elevated C-reactive protein concentrations 12 years later

Published online by Cambridge University Press:  10 January 2013

Chantal Julia*
Affiliation:
Unité de Recherche en Epidémiologie Nutritionnelle (UREN), U557 Inserm/INRA/Cnam/Université Paris 13, 74 rue Marcel Cachin, F-93017Bobigny Cedex, France Public Health Department, Assistance Publique Hôpitaux de Paris (AP-HP), Hôpital Avicenne, Bobigny, France
Nathalie Meunier
Affiliation:
Clermont Université, Université d'Auvergne, Unité de Nutrition Humaine, BP 10448, F-63000Clermont-Ferrand, France
Mathilde Touvier
Affiliation:
Unité de Recherche en Epidémiologie Nutritionnelle (UREN), U557 Inserm/INRA/Cnam/Université Paris 13, 74 rue Marcel Cachin, F-93017Bobigny Cedex, France
Namanjeet Ahluwalia
Affiliation:
Unité de Recherche en Epidémiologie Nutritionnelle (UREN), U557 Inserm/INRA/Cnam/Université Paris 13, 74 rue Marcel Cachin, F-93017Bobigny Cedex, France
Vincent Sapin
Affiliation:
Laboratoire de Biochimie Médicale, Centre de Biologie, CHU Gabriel Mompied, Rue Montalembert, F63000Clermont-Ferrand, France
Isabelle Papet
Affiliation:
Clermont Université, Université d'Auvergne, Unité de Nutrition Humaine, BP 10448, F-63000Clermont-Ferrand, France INRA, UMR 1019, UNH, CRNH Auvergne, F-63000Clermont-Ferrand, France
Noël Cano
Affiliation:
Clermont Université, Université d'Auvergne, Unité de Nutrition Humaine, BP 10448, F-63000Clermont-Ferrand, France
Serge Hercberg
Affiliation:
Unité de Recherche en Epidémiologie Nutritionnelle (UREN), U557 Inserm/INRA/Cnam/Université Paris 13, 74 rue Marcel Cachin, F-93017Bobigny Cedex, France Public Health Department, Assistance Publique Hôpitaux de Paris (AP-HP), Hôpital Avicenne, Bobigny, France
Pilar Galan
Affiliation:
Unité de Recherche en Epidémiologie Nutritionnelle (UREN), U557 Inserm/INRA/Cnam/Université Paris 13, 74 rue Marcel Cachin, F-93017Bobigny Cedex, France
Emmanuelle Kesse-Guyot
Affiliation:
Unité de Recherche en Epidémiologie Nutritionnelle (UREN), U557 Inserm/INRA/Cnam/Université Paris 13, 74 rue Marcel Cachin, F-93017Bobigny Cedex, France
*
*Corresponding author: C. Julia, fax +33 148 388 931, email [email protected]
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Abstract

Inflammation mediates several chronic diseases. Micronutrients can act on inflammation, either through modulating cytokine production or by scavenging by-products of activated white cells. Identifying dietary patterns (DP) reflecting these mechanisms and relating them to inflammation is of interest. The objective of the study was to identify DP specifically associated with intakes of nutrients potentially involved in inflammatory processes in a middle-aged population and investigate long-term associations between these DP and C-reactive protein (CRP) status assessed several years later. Subjects included in the Supplementation in Vitamins and Mineral Antioxidants 2 cohort study, having available data on dietary assessment carried out in 1994–5 and CRP measurement in 2007–9, were included in the analysis. DP were extracted with reduced rank regression (RRR), using antioxidant micronutrients and PUFA as response variables. Associations between CRP measurements >3 mg/l and extracted DP were then examined with logistic regression models providing OR and 95 % CI. A total of 2031 subjects (53·2 % women, mean follow-up duration: 12·5 years) were included in the analyses. Of the four extracted DP, a DP with high loading values of vegetables and vegetable oils, leading to high intakes of antioxidant micronutrients and essential fatty acids, was significantly and negatively associated with risk of elevated CRP (OR 0·88; 95 % CI 0·78, 0·98). Conversely, a DP reflecting a high n-6:n-3 fatty acid intake ratio was positively and significantly associated with elevated CRP (adjusted OR 1·15; 95 % CI 1·00, 1·32). DP extracted with RRR provide support for further exploration of relationships between dietary behaviour and inflammation.

Type
Full Papers
Copyright
Copyright © The Authors 2012 

Inflammation has been implicated in the pathways of numerous diseases(Reference Calder, Albers and Antoine1). Besides chronic inflammatory conditions, such as rheumatoid arthritis or inflammatory bowel diseases, where inflammation is the primary mechanism of disease activity, low-grade chronic inflammation could be involved in the risk of obesity(Reference Hotamisligil2), cancer(Reference Coussens and Werb3) and atherosclerosis(Reference Libby4).

Regardless of the origin or the site of chronic inflammation, the response is stereotypical and involves overproduction of cytokines, chemokines, eicosanoids and matrix metalloproteinases(Reference Calder, Albers and Antoine1, Reference Rangel-Huerta, Aguilera and Mesa5). IL-6 and TNF-α are released by activated leucocytes at the site of inflammation and this in turn can stimulate systemic cytokine production. For instance, IL-6 induces C-reactive protein (CRP) by the liver(Reference Luster6). Elevated concentrations of cytokines act to amplify the inflammatory process, leading to tissue damage and clinical symptoms(Reference Calder, Albers and Antoine1). Besides, activated macrophages, monocytes and granulocytes produce free oxygen radicals(Reference Kehrer7). Over time, chronic inflammation results in the accumulation of oxidant species, gradually weakening the antioxidant defence systems(Reference Hensley, Robinson and Gabbita8).

Some micronutrients can act on inflammation, either by modulating primary mechanisms of cytokine production or through secondary processes by scavenging by-products of activated leucocytes. PUFA are implicated in the production of inflammatory mediators, eicosanoids, which include thromboxane, PG and leukotrienes. The principal source for eicosanoids is arachidonic acid and its precursor, linoleic acid. Diets rich in linoleic or arachidonic acid have the potential to increase inflammatory signals. n-3 PUFA can serve as alternate sources for eicosanoids, leading to the production of altered eicosanoids with less inflammatory capacity(Reference Calder9). Diets rich in n-3 PUFA display anti-inflammatory capacities, all the more if n-6 PUFA intake is low. Conversely, diets rich in n-6 and low in n-3 PUFA promote inflammation(Reference Simopoulos10).

The response to oxidant stress, such as the one observed in inflammatory processes, involves micronutrients such as vitamins C and E and carotenoids(Reference Conner and Grisham11, Reference Nordberg and Arner12). Vitamin C is involved in scavenging free oxygen radicals and protection against lipid peroxidation due to its high reducing power. Vitamin E is a potent chain-breaking antioxidant interrupting lipid peroxidation and preventing the propagation of free radical-initiated reactions(Reference Sies13). Carotenoids exhibit immunomodulatory activities, stimulate the phagocytic and bacteria-killing ability of peripheral blood neutrophils and peritoneal macrophages(Reference Chew14).

Traditional analysis in nutritional epidemiology, typically studying relationships between single nutrients and disease, does not allow us to capture the complexity of a subject's diet, as nutrients are not consumed individually, but in combination in the food matrix(Reference Hu15). Comprehensive approaches involving the assessment of dietary patterns (DP) have, therefore, stirred considerable interest in the scientific community, as they represent meaningful combinations of food consumption in the population(Reference Hu15).

Several studies have investigated the role of DP in inflammation processes(Reference Carter, Roberts and Salter16Reference Schulze, Hoffmann and Manson30), either using a priori-based approaches, through existing dietary score (describing Mediterranean diet) or a ‘dietary inflammatory index’(Reference Carter, Roberts and Salter16Reference Cavicchia, Steck and Hurley18), or exploratory analysis, such as principal components analysis (PCA)(Reference Anderson, Harris and Tylavsky19Reference Fung, Rimm and Spiegelman22, Reference Lopez-Garcia, Schulze and Fung26, Reference Nettleton, Steffen and Mayer-Davis29, Reference Nanri, Moore and Kono31, Reference Villegas, Xiang and Cai32). Besides, some have proposed DP associated with biological markers of inflammation to be intermediate factors of CVD or diabetes(Reference Centritto, Iacoviello and di20, Reference Heidemann, Hoffmann and Spranger23, Reference Hoffmann, Zyriax and Boeing25, Reference Schulze, Hoffmann and Manson30). However, to the best of our knowledge, no study has evaluated the long-term associations between DP reflecting pro- or anti-inflammatory nutrient intake and inflammation status assessed by serum CRP concentration.

The objective of the present study was to identify DP explaining variation in intakes of nutrients potentially involved in inflammatory processes in a middle-aged population and investigate the long-term associations between those DP and CRP status assessed several years later.

Methods

Study population

The study population was selected from the participants in the Supplementation in Vitamins and Mineral Antioxidants 2 (SU.VI.MAX2) study. The SU.VI.MAX study is a randomised, double-blind, placebo-controlled, primary prevention trial designed to evaluate the effect of supplementation of antioxidant vitamins and minerals at nutritional doses on the incidence of CVD and cancer(Reference Hercberg, Galan and Preziosi33). Subjects were enrolled in 1994–5 for a planned 8-year intervention trial. In 2007–9, subjects were invited to enroll into an additional follow-up study defining the SU.VI.MAX2 study(Reference Kesse-Guyot, Fezeu and Jeandel34). Subjects who accepted underwent a clinical examination and had blood drawn for biological tests. In the SU.VI.MAX2 study, a subsample selected on the basis of geographical criteria for operative and logistical aspects was included in the CRP study.

Both the SU.VI.MAX and the SU.VI.MAX2 studies were approved by the Ethics Committee for Studies with Human Subjects of the Paris-Cochin Hospital (nos. 706 and 2364, respectively) and the Comité National Informatique et Liberté (nos. 334641 and 907094, respectively). All subjects gave a written informed consent to participate in the study. This trial is registered under the trial registration code: clinicaltrials.gov: NCT00272428.

All subjects included in the CRP study were eligible for the present study, irrespective of whether they belonged to the placebo or the supplementation group of the initial SU.VI.MAX trial. Subjects having less than three dietary records in the first 2 years of the SU.VI.MAX study (1994–6) and subjects having missing data on anthropometric measurements (at baseline or at the beginning of the SU.VI.MAX2 study), socio-demographic, physical activity and tobacco use variables were excluded from the analyses.

Data collection

Dietary data assessment

Dietary assessment was carried out via repeated 24 h records (1994–6), collected by computerised questionnaires using the Minitel Telematic Network loaded with study-specific software, as described before(Reference Hercberg, Galan and Preziosi33). The Minitel was a small terminal widely used in France as an adjunct to the telephone. Days of the week for these records were randomised and fixed for each subject so that each day of the week and all seasons were covered. A validated instruction manual was used for coding food portions, including more than 250 generic items, corresponding to 1000 specific foods. A French food composition table was used to calculate nutrient contents(35). Foods were classified into forty-three food groups (See Supplemental Table 1, available online).

Table 1 Characteristics of the study population (Mean values and standard deviations; number of subjects and percentages)

SU.VI.MAX2, Supplementation in Vitamins and Mineral Antioxidants 2; CRP, C-reactive protein.

* P obtained from t tests for continuous variables and χ2 tests for categorical variables.

Inflammation measurement

Blood samples were drawn from the participants in the SU.VI.MAX2 study (2007–9), immediately centrifuged and frozen at − 80°C and stored. CRP concentrations were measured using an immunoturbidimetric assay (reagent: Tina quant C-reactive protein (latex) assay), with a detection limit of 1 mg/l for CRP. Intra-assay and inter-assay CV were 0·61 and 2·87 %, respectively.

Covariate assessment

Socio-demographic (marital status (single/cohabiting), educational level (primary, secondary or superior)), physical activity (subjects were asked to report if they regularly practised physical activity (yes or no) and if yes, if they practised the equivalent of ≥ 1 h walking/d (yes or no), herein coded as: irregular, < 1 h equivalent walking/d or ≥ 1 h equivalent walking/d) and smoking status (never smoked, former smoker or current smoker)) data were obtained through self-administered questionnaire at baseline (1994–6).

Anthropometric measurements were taken at a clinical examination 1 year after inclusion into the SU.VI.MAX study (1995–7) and at the SU.VI.MAX2 study (2007–9). The weight was measured in subjects in light clothing and with no shoes to the nearest 0·1 kg, and the height was measured to the nearest cm with a wall-mounted stadiometer in the same conditions.

Statistics

BMI was calculated as the weight (in kg) divided by the square of height (in m) and obesity was defined as BMI ≥ 30 kg/m2.

DP were extracted using reduced rank regression (RRR)(Reference Hoffmann, Schulze and Schienkiewitz36). RRR derives patterns from predictors to maximise the explained variation of a pre-defined set of responses. Responses chosen for RRR were nutrients that have been consistently associated with inflammation in the literature, i.e. PUFA (linoleic acid, α-linolenic acid, arachidonic acid, EPA, docosapentanoic acid and DHA) and antioxidant micronutrients (β-carotene, vitamin C and vitamin E). Food group consumption and nutrient intake used as predictors were energy-adjusted using the residual method(Reference Willett and Stampfer37). Sensitivity analysis using different numbers of response variables (especially different regrouping sets for fatty acids and tests including or excluding dietary fibres) indicated that the greatest explanation of the total variation in foods and in responses was obtained using linoleic acid, α-linolenic acid, arachidonic acid, very-long-chain n-3 PUFA (EPA, docosapentanoic acid and DHA combined), β-carotene, vitamin C and vitamin E. Results of sensitivity analyses are available online, in Supplemental Table 2. Factors explaining more than 5 % of the total explained variation in responses were retained in the analysis. Extracted DP scores were used as they appeared in the RRR.

CRP was categorised as ≤ 3 and >3 mg/l, according to the evidence in CVD risk(Reference Pearson, Mensah and Alexander38), and logistic regression models were applied to estimate OR (95 % CI) of high levels of inflammation across tertiles of DP scores. P for trend across DP was computed using DP scores as continuous variables. We first ran models testing crude associations, then models were adjusted in three ways: (1) sex, baseline age, educational level (primary/secondary/university), marital status (single/cohabiting), baseline smoking status (never smoker/former smoker/current smoker), baseline physical activity (irregular/ < 1 h equivalent walking/d/ ≥ 1 h equivalent walking/d), energy intake and number of dietary records available (initial supplementation allocation group had no effect on high levels of CRP, but for consistency, the variable was included in the adjustment procedure); (2) model 1+BMI at inclusion; (3) model 2+change in BMI during the follow-up. Interactions were tested between extracted DP and supplementation allocation group (antioxidant v. placebo) in the SU.VI.MAX study, obesity status at baseline, obesity status at SU.VI.MAX2 study and variation of obesity status with time.

Sensitivity analyses were performed in order to test the robustness of the present results. Data were re-analysed after excluding subjects with a history of cancer or CVD (myocardial infarction or stroke) during the dietary data collection period and obese subjects at baseline. All analyses were carried out using SAS software (version 9.1; SAS Institute, Inc.)

Results

Of the 6850 subjects enrolled in the SU.VI.MAX2 study, 3476 were included in the CRP study. Of these, 861 were excluded for insufficient number of dietary records, 502 for missing data on anthropometric measurements at baseline, forty-three for missing data on socio-demographic variables and thirty-nine for missing data on tobacco use or physical activity. The final sample, therefore, included 2031 subjects.

Characteristics of included subjects are displayed in Table 1. In particular, 53·2 % were women. Mean baseline age was 51·6 (sd 4·7) years for men and 48 (sd 6·2) years for women, with a mean follow-up duration of more than 12 years. In all, 52·2 % subjects were allocated to antioxidant supplementation in the initial trial. There were no differences between placebo and antioxidant groups in baseline characteristics (data not tabulated). Compared with those included in the sample, subjects excluded for insufficient dietary records or missing data were more frequently single. Included subjects did not differ otherwise from the excluded ones.

Mean number of dietary records available for each subject was 10.12 (sd 3.0), with a mean of 7.02 (sd 2.7) records on week days and 3.10 (sd 2.0) on week-end days. Seasonality was accounted for at the individual level, as a mean of 4.57 (sd 1.6) records per subject were available for the May–October period, while 5.55 (sd 2.0) records per subject were available for the November–April period.

Four factors were extracted with RRR, explaining 63·9 % of total variation of response variables and 13·2 % of variation of food groups. Correlation between extracted DP and nutrients intake and food groups loadings on the DP are presented in Tables 2 and 3. The first pattern (DP1) was positively correlated to intake of antioxidant micronutrients (vitamin C, vitamin E and β-carotene) and essential fatty acids (linoleic and α-linolenic acids). Food groups loading highly positively on this pattern were vegetables, olive oil and other vegetable oils and groups loading highly negatively were butter, wine and refined grains. The second pattern (DP2) was positively correlated to intake of arachidonic acid and very-long-chain n-3 PUFA. Food groups loading highly positively on this pattern were fatty fish, seafood, processed meat, organ meat, eggs and poultry. The third pattern (DP3) was positively correlated to intake of vitamin C, β-carotene and very-long-chain n-3 PUFA and negatively correlated to intake of linoleic acid, arachidonic acid and vitamin E. Food groups loading highly positively on this pattern were fruits and fruit juices and groups loading highly negatively on this pattern were vegetable oils poor in n-3 PUFA. The fourth pattern (DP4) was positively correlated to intake of arachidonic acid and vitamin C and negatively correlated to intake of long-chain n-3 PUFA and vitamin E. This pattern reflected a high n-6:n-3 PUFA intake ratio. Food groups loading highly positively on this pattern were processed meat, eggs and poultry and group loading highly negatively on this pattern was fatty fish (Tables 2 and 3).

Table 2 Explained variations of nutrients and food groups by extracted dietary pattern (DP)* (n 2031)

* DP obtained with reduced rank regression using antioxidant nutrients and PUFA as response variables in the procedure.

Table 3 Loadings of food groups in dietary pattern (DP)* scores (n 2031)

* DP obtained with reduced rank regression using antioxidant nutrients and PUFA as response variables in the procedure; loading values in the range of − 0.10 to 0.10 are not presented in the table.

See Supplementary Table S1 (available online) for food groupings.

Logistic regression showed that high CRP concentrations were negatively associated with DP1 and positively associated with DP4 assessed 13 years before in crude and multivariate models (Table 4). Associations between DP1 and high CRP concentrations were even strengthened after adjusting further on BMI and BMI change (models 2 and 3), whereas associations between DP4 and high CRP were weakened after adjusting for BMI and change in BMI. DP2 and DP3 were not significantly associated with high concentrations of CRP.

Table 4 Increased C-reactive protein (CRP) according to quartiles of extracted dietary patterns (DP)* (n 2031) (Odd ratios and 95 % confidence intervals)

* DP obtained with reduced rank regression using antioxidant nutrients and PUFA as response variables in the procedure.

Model 1 adjusted for sex, baseline age, level of education (primary/secondary/university), marital status (single/cohabiting), smoking status (never smoker/former smoker/current smoker), baseline physical activity (irregular/ < 1 h equivalent walking/d/ ≥ 1 h equivalent walking/d), energy intake, number of dietary records available and supplementation allocation group (antioxidant v. placebo).

Model 2 adjusted for model 1 variables+baseline BMI.

§ Model 3 adjusted for model 2 variables+change in BMI during follow-up.

Interactions between extracted DP and initial supplementation allocation group, obesity status at baseline, obesity status at SU.VI.MAX2 study or change in obesity status during follow-up were not significant. Exclusion of subjects having developed cancer or CVD during the 2-year period of dietary data collection or obese subjects at baseline did not substantially modify results (data not shown).

Discussion

In the present study, RRR was used to determine meaningful combinations of food intake that would explain as much of the variation of potentially pro- or anti-inflammatory nutrient intake as possible. Moreover, we were able to identify major food consumption patterns associated with inflammation: a DP rich in vegetables and vegetable oil (DP1), leading to a high intake of antioxidant micronutrients and essential fatty acids, showed preventive features against subsequent elevated CRP; conversely, a diet poor in fatty fish and rich in other animal products (DP4), leading to a high n-6:n-3 PUFA intake ratio, exhibited pro-inflammatory characteristics.

The negative association between a DP rich in vegetables and vegetable oil and inflammation is consistent with results from studies using PCA of food consumption in relation to inflammation(Reference Calder, Ahluwalia and Brouns39). Such studies have observed that DP correlated with high intakes of vegetables, fruits, fish and vegetable oils are negatively associated with CRP concentrations(Reference Centritto, Iacoviello and di20, Reference Esmaillzadeh, Kimiagar and Mehrabi21, Reference Lopez-Garcia, Schulze and Fung26, Reference Nettleton, Steffen and Mayer-Davis29, Reference Nanri, Moore and Kono31).

For instance, in the Nurses' Health Study, the ‘prudent pattern’ that positively correlated with consumption of fruit, vegetables, fish, poultry and whole grains was negatively associated with CRP and IL-6 concentrations in quintiles(Reference Lopez-Garcia, Schulze and Fung26). In the Multi-Ethnic study for Atherosclerosis, a DP with high loading values of vegetables, fish and soup (‘vegetables and fish’) was negatively, but not significantly, associated with CRP concentrations and with other inflammatory biomarkers (E-selectin and IL-6)(Reference Nettleton, Steffen and Mayer-Davis29). In a healthy Italian population, Centritto et al. (Reference Centritto, Iacoviello and di20) found that a pattern with high loading values for vegetables, olive oil, legumes, soups, fruit and fish (‘olive oil and vegetables’) was significantly negatively associated with CRP concentrations, even after adjustment for BMI.

DP described earlier share ‘healthy components’ with our DP1, such as certain food group loadings (vegetables or vegetable oils, in particular), but the DP extraction procedure is intended to investigate the observed correlated food group consumption, maximising explained variation of food intake(Reference Hoffmann, Schulze and Schienkiewitz36). As such, PCA-derived DP reflecting a ‘prudent’ or ‘healthy’ diet usually combines high intakes of fruits, vegetables, whole grains and fish, and it is not possible to determine which food groups mostly drive the negative association with inflammation. This might possibly explain why some PCA-derived patterns fail to associate significantly with inflammatory biomarkers in the literature. RRR procedure allows for analysing associations between food group consumption and inflammation beyond simple correlations as would PCA, stressing which component of a ‘healthy’ diet would directly relate to inflammation. The present results argue that vegetables and vegetable oil are probably responsible for the association between these ‘healthy’ patterns and inflammation.

The positive association between a diet with a high n-6:n-3 PUFA intake ratio and inflammation is not unexpected: the balance between n-6 and n-3 PUFA is of major importance in the production of inflammatory mediators(Reference Simopoulos10). The fact that the association of DP4 with high CRP is weakened after adjusting for BMI and BMI change, however, suggests that the effect of a high n-6:n-3 PUFA intake ratio on inflammation is probably mostly mediated by adiposity. Dietary fat composition has direct effects on adiposity and adipocyte metabolism(Reference Fernandez-Quintela, Churruca and Portillo40). In rodent models, dietary fat composition alters expression of neuropeptide genes involved in weight regulation(Reference Dziedzic, Szemraj and Bartkowiak41); diets rich in n-6 PUFA promote adiposity(Reference Massiera, Saint-Marc and Seydoux42), whereas diets rich in n-3 PUFA reduce adiposity(Reference Poudyal, Panchal and Diwan43, Reference Kopecky, Rossmeisl and Flachs44). The n-6:n-3 PUFA intake ratio in pregnant women has been found to make an impact on the adiposity of the child, and diets rich in n-6 PUFA increase adiposity in adults(Reference Donahue, Rifas-Shiman and Gold45, Reference Ailhaud, Guesnet and Cunnane46).

It is interesting to underline the fact that, whereas DP were significantly associated with elevated CRP, initial supplementation in the SU.VI.MAX trial study was not. This finding could be explained by three mechanisms: first, supplementation was conducted at nutritional doses. It is therefore possible that the associations between nutrient intake (taken as supplements) and inflammation would need a higher dosage to be proven. Second, the initial SU.VI.MAX trial ended in 2002, and subjects were not advised to take supplements at the disclosure of the results. It is therefore also possible that the improvement in nutritional status obtained with supplementation did not last up to the end of the follow-up, leaving associations with dietary intake perceptible. Third, it is possible that the global nutritional profile of food groups rather than the antioxidant compounds per se would be responsible of the observed effect.

To our knowledge, long-term associations between DP extracted using RRR and CRP concentrations examined in a longitudinal design have not been previously investigated. Inflammatory biomarkers are usually considered as intermediary factors between nutrition and CVD or diabetes. Therefore, studies using RRR to extract DP introduce CRP in combination with other risk factors for these diseases as response variables in the procedure, in order to analyse associations with prospective onset of CVD or diabetes(Reference Centritto, Iacoviello and di20, Reference Heidemann, Hoffmann and Spranger23, Reference Hoffmann, Zyriax and Boeing25, Reference Meyer, Doring and Herder27).

Introducing nutrients as response variables in the RRR procedure allowed us to explore the possible mechanisms through which food group consumption could act on inflammatory processes. RRR identified the components of a potential anti-inflammatory diet, relating them to current knowledge in the field. RRR in this perspective, therefore, contributes to new insights on the anti- or pro-inflammatory potential of the diet.

The present study is, however, subject to limitations. First, CRP was measured with a standard procedure, with a detection limit at < 1 mg/l, not allowing us to investigate low-grade inflammation. Second, CRP was not measured at baseline, and therefore subjects with high inflammation pre-existing at baseline could not be excluded. The present results could, therefore, reflect pre-existing associations between DP and CRP. However, sensitivity analysis excluding subjects susceptible to having a high CRP at baseline (subjects having declared cancer or CVD in the initial years of the study or obese subjects at baseline) did not significantly alter the present results.

Strengths of the present study include the use of detailed repeated dietary records (24 h records), allowing for an accurate and reliable analysis of nutrient intake, use of valid and original statistical analyses, investigation of the long-term associations between nutrition and inflammation and test of the robustness of the results in sensitivity analysis.

In conclusion, the present results show that DP specifically explaining variation in intakes of potentially pro- and anti-inflammatory nutrients can accurately predict high levels of inflammatory biomarkers several years later. However, the present results need to be reproduced in other populations in order to confirm our conclusions on the beneficial effects of a diet rich in vegetables and vegetable oils on inflammation.

Supplementary material

To view supplementary material for this article, please visit http://dx.doi.org/10.1017/S0007114512005636

Acknowledgements

The SU.VI.MAX2 study was funded by the ANR (no. ANR-05-PNRA-010), DGS (Ministry of Health) and was also supported by Médéric, Sodexo, Ipsen, MGEN and Pierre Fabre. Mederic and MGEN are French health insurance organisations that are complementary to the national health insurance system. Ipsen and Pierre Fabre are private pharmaceutical companies. They provided financial support for the overall implementation of the research project. Sodexo, a catering company, provided financial support for several teamwork events with researchers and study participants. Since French public research is independent, the sponsors were not involved in the analysis or interpretation of the findings. The authors report no conflicts of interest. C. J. developed the overall research plan, conducted research, performed statistical analyses, wrote the paper and had primary responsibility for final content. E. K.-G. participated in project conception, development of overall research plan, critically reviewed the manuscript and supervised research. N. M., M. T., N. A., V. S., I. P. and N. C. provided essential material and critically reviewed the manuscript. E. K.-G., S. H. and P. G. designed the SU.VI.MAX2 study, provided essential material and critically reviewed the manuscript. All authors read and approved the final manuscript.

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Figure 0

Table 1 Characteristics of the study population (Mean values and standard deviations; number of subjects and percentages)

Figure 1

Table 2 Explained variations of nutrients and food groups by extracted dietary pattern (DP)* (n 2031)

Figure 2

Table 3 Loadings of food groups in dietary pattern (DP)* scores (n 2031)†

Figure 3

Table 4 Increased C-reactive protein (CRP) according to quartiles of extracted dietary patterns (DP)* (n 2031) (Odd ratios and 95 % confidence intervals)

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