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Diet quality of a population sample from coastal north-east Spain evaluated by a Mediterranean adaptation of the Diet Quality Index (DQI)

Published online by Cambridge University Press:  23 June 2009

Isabel Bondia-Pons
Affiliation:
Department of Nutrition and Food Science, Reference Centre in Food Technology, Faculty of Pharmacy, University of Barcelona, Av. Joan XXIII s/n, E-08028 Barcelona, Spain CIBER Epidemiología y Salud Pública (CIBERESP), Spain
Jordi Mayneris-Perxachs
Affiliation:
CIBER Epidemiología y Salud Pública (CIBERESP), Spain
Lluís Serra-Majem
Affiliation:
Department of Clinical Sciences, Center for Health Sciences, University of Las Palmas de Gran Canaria, Las Palmas, Spain
Ana I Castellote
Affiliation:
Department of Nutrition and Food Science, Reference Centre in Food Technology, Faculty of Pharmacy, University of Barcelona, Av. Joan XXIII s/n, E-08028 Barcelona, Spain CIBER Epidemiología y Salud Pública (CIBERESP), Spain
Abel Mariné
Affiliation:
Department of Nutrition and Food Science, Reference Centre in Food Technology, Faculty of Pharmacy, University of Barcelona, Av. Joan XXIII s/n, E-08028 Barcelona, Spain
M Carmen López-Sabater*
Affiliation:
Department of Nutrition and Food Science, Reference Centre in Food Technology, Faculty of Pharmacy, University of Barcelona, Av. Joan XXIII s/n, E-08028 Barcelona, Spain CIBER Epidemiología y Salud Pública (CIBERESP), Spain
*
*Corresponding author: Email mclopez@ub.edu
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Abstract

Objective

To assess the adherence to the Mediterranean dietary pattern in the population from a coastal region from north-east Spain and its relationship to diseases, applying the Mediterranean Diet Quality Index (M-DQI) validated by the use of several biomarkers.

Design

Cross-sectional nutrition survey.

Setting

Population-based random sample derived from the Catalan Nutrition Survey.

Subjects

A total of 621 healthy adults.

Results

The Catalan representative sample presented a mean M-DQI score of 6·6 (sd 2·3, median 7, range 0–14). The percentage of adherence to the Mediterranean diet was 53 %; 10 % of subjects showed high adherence to the Mediterranean diet, while only 2 % were categorized as poorest adherence. The plasma fatty acid profile of the Catalan sample progressed with perfect regularity throughout the index ranges. Both EPA and DHA presented a significant correlation to the M-DQI (r = −0·410 for EPA and −0·360 for DHA). A significant increase in palmitic, oleic and α-linolenic acids and a significant decrease in stearic, linoleic and arachidonic acids content were also observed. The mean values for the M-DQI according to the clinical characteristics of the Catalan sample were also calculated.

Conclusions

The M-DQI has been demonstrated a suitable tool for assessment of an individual’s nutritional status according to the Mediterranean dietary pattern and for clinical purposes. Although the current diet followed in Catalonia seems to agree with the main characteristics of the Mediterranean diet, the promotion of the Mediterranean pattern should be reinforced in the Catalan population, especially among young people.

Type
Research Paper
Copyright
Copyright © The Authors 2009

The Mediterranean diet (MD) is an eating pattern characterized by a lifestyle and culture that has been reported to contribute to better health and quality of life for those who adhere to it(Reference Serra-Majem, Ngo de la Cruz, Ribas and Tur1Reference Giugliano, Ceriello and Esposito10). Among its advantages, recent findings from large cohort studies suggest that a high degree of adherence to the MD is associated with a significant reduction in mortality(Reference Knoops, de Groot, Fidanza, Alberti-Fidanza, Kromhout and van Staveren11Reference Mitrou, Kipnis and Thiébaut13). Moreover, some intervention studies have demonstrated that adoption of a Mediterranean-type diet reduces several cardiovascular risk factors in subjects at risk or mortality in patients after a first cardiac event(Reference Serra-Majem, Roman and Estruch14, Reference Lairon15). The main components characterizing this dietary pattern are a high intake of vegetables, fruits, pulses, olive oil and non-refined cereals; a low intake of meat and saturated fats; a moderately high intake of fish (depending on the proximity to the sea); a low-to-moderate intake of dairy products; and a regular but moderate intake of ethanol, primarily in the form of wine and generally during meals(Reference Willett, Sacks, Trichopoulou, Drescher, Ferro-Luzzi, Helsing and Trichopoulos16).

Unfortunately, epidemiological evidence also suggests that dietary patterns in Mediterranean countries are changing rapidly, the main trends being a considerable increase in total energy availability; a notable increased consumption of fat, particularly that of animal origin; and a significant fall in energy availability from carbohydrates(Reference Garcia-Closas, Berenguer and González17Reference Chen and Marques-Vidal19). A departure from the traditional diet might therefore be accompanied by the loss of its protective effects on health(Reference Kant20, Reference Trichopoulos and Lagiou21). This hypothesis justifies the extensive work done by several authors in devising methods to evaluate the adherence of a population to a Mediterranean diet pattern (MDP). Among these methods, the MD indices are created a priori based on current nutrition knowledge and attempt to make a global, general and qualitative evaluation of the quality of a diet(Reference Knoops, de Groot, Fidanza, Alberti-Fidanza, Kromhout and van Staveren11, Reference Bach, Serra-Majem, Carrasco, Roman, Ngo, Bertomeu and Obrador22Reference Arvaniti and Panagiotakos24). With this purpose, Gerber and colleagues successfully devised a dietary quality index suitable for evaluation of the MDP(Reference Gerber, Scali, Michaud, Durand, Astre, Dallongeville and Romon25). This index, known as the Mediterranean Dietary Quality Index (M-DQI), was performed with the well-known Diet Quality Index (DQI) based on dietary guidelines developed in the 1990s by Patterson et al.(Reference Patterson, Haines and Popkin26) but incorporating the principal characteristics of the MD. One of the advantages of the M-DQI was its validation with four biological markers in a representative population sample from the French Mediterranean. Biomarkers of intake have largely been used to validate methods to estimate nutrient/food intake (24 h recall, etc.) and provide a more objective and complementary measure of dietary intake(Reference Bingham27). However, such biomarkers have not been used to describe dietary patterns until recently(Reference Gerber, Scali, Michaud, Durand, Astre, Dallongeville and Romon25, Reference Hann, Rock, King and Drewnowski28Reference Sofi, Gori, Marcucci, Innocenti, Dini, Genise, Abbate, Surrenti and Casini36). The M-DQI, applied in representative samples of the French(Reference Scali, Richard and Gerber37) and the Croatian population(Reference Satalic, Baric, Keser and Maric38), has not yet been applied to a Spanish Mediterranean population.

Therefore, the aim of the present study was to assess the quality of the diet of Catalonia, a Spanish coastal region, by using the M-DQI. In addition, to better understand and validate the utility of measures of overall diet with nutritional status and health, we compared the M-DQI with several nutritional and clinical biomarkers. The global fatty acid (FA) profile was used as a biomarker of intake. Moreover, established biomarkers of risk of CVD and obesity were also considered.

Subjects and methods

Subjects

The subjects were a subgroup of a larger sample (1600 subjects) randomly recruited in Catalonia, a coastal Mediterranean region in north-east Spain, for a cross-sectional nutritional survey(Reference Juncà, Guillén, Aragay, Brugulat, Castell, Séculi, Medina and Tresserras39). The sampling technique included stratification according to geographical area and municipality size, age and sex of inhabitants. The participation rate (65 %) in the present study can be regarded as representative of the adult population in Catalonia. Blood analysis and physiological and anthropometric measurements were obtained from 670 participants in a clinical session after informed consent. Only people who did not under-report their energy intake (ratio of energy intake to BMR ≥ 1·14, according to the Goldberg cut-off(Reference Goldberg, Black, Jebb, Cole, Murgatroyd, Coward and Prentice40)) were considered for analysis. From the resulting 641 Catalans, twenty did not fast for >12 h before blood sampling and were excluded. The final sample consisted of 621 subjects, 261 men and 360 women. The study protocol was approved by the regional ethics committee, following the Declaration of Helsinki 1975 standards.

Lifestyle assessment and anthropometry

Smoking status was assessed by questionnaire during a face-to-face interview. Height (m) weight (kg), waist and hip circumferences (cm), and blood pressure (mmHg) were measured during the clinical session and BMI was calculated as weight (in kilograms) divided by the square of height (in metres). Height was determined using a mobile anthropometer to the nearest millimetre. Body weight (in underwear) was determined to the nearest 100 g using a digital scale. Waist and hip circumference (WC and HC) were measured using a non-stretchable measuring tape to the nearest centimetre. WC was measured at the navel in men, and midway between the bottom of the ribs and the top of the hip bone in women. HC was measured at the tip of the hip bone in men, and at the widest point between the hips and the buttocks in women. Blood pressure (BP) was measured twice with a mercury sphygmomanometer after a minimum of 10 min rest in the seated position.

The cut-off limits proposed by the International Diabetes Federation (2005) for the metabolic syndrome definition in relation to WC, HC, BP and HDL cholesterol (HDL-C) were applied to the present work(Reference Alberti, Zimmet and Shaw41). Only those diseases previously diagnosed and treated by a physician were taken into account for evaluation of the clinical characteristics of the Catalan sample. Furthermore, clinical characteristics pertaining to less than 15 % of the sample were not considered for the analyses.

Nutrition data

Data on food intake were obtained using an FFQ previously validated(Reference Martin-Moreno, Boyle, Gorgojo, Maisonneuve, Fernandez-Rodriguez, Salvini and Willett42) and applied to other studies and surveys of the Spanish population(Reference Serra-Majem, Armas-Navarro and Ribas-Barba43, Reference Tur, Romaguera and Pons44). The FFQ, which asked the subject to recall average use over the past year, consisted of ninety-two items. The FFQ was arranged by food type and meal pattern. Frequency categories were based on the number of times that items were consumed per day, week or month. Daily consumption in grams was determined by dividing the reported intake by the frequency in days. Food values were converted into nutrient values by validated software developed by CESNID (the Centre for Superior Studies in Nutrition and Dietetics), which is based on Spanish tables of food composition(Reference Cervera45).

Mediterranean Diet Quality Index

The M-DQI(Reference Gerber, Scali, Michaud, Durand, Astre, Dallongeville and Romon25) is an adaptation of the DQI(Reference Patterson, Haines and Popkin26) to evaluate the MDP. The M-DQI was intended to describe food consumption in relationship to prevention of chronic diseases. Therefore, it includes variables present in the diet of the Mediterranean population that are assumed to be either healthy or unhealthy. An explanation for the selection of variables has been reported previously(Reference Gerber, Scali, Michaud, Durand, Astre, Dallongeville and Romon25). A score from 0 to 2 is assigned to each of the seven food/nutrient groups according to the recommendations, when existing, or otherwise using the population intake tertiles (adjusted by energy) to assign cut-off points (Table 1). Each group score decreases with higher intake of the corresponding food/nutrient if current guidelines consider it as beneficial for health, while it increases with higher intake if it is considered unhealthy. The group scores were summed to give a total score for the M-DQI, ranging from 0 (maximum adherence to MDP) to 14 (minimum adherence to MDP). The lower the M-DQI value, the healthier is the diet. We classified the scores as follows: good (0–3), medium–good (4–7), medium–poor (8–11) and poor (12–14). For the fish variable, both white and fatty fish were included. The cereal group consisted of all kinds of bread, pasta and breakfast cereals. Both cooked and raw red, yellow and green vegetables and all fresh fruit form the fruit and vegetables (F&V) group. Non-components of the M-DQI also evaluated were alcohol (including beer, wine, liquor and spirits), red wine, pulses, pastries (including all kind of cakes, cookies and sweets), dairy products (including all types of milk and yoghurts, but not cheese) and cheese. The percentage of adherence to the MD was calculated as:

Table 1 Construction of the Mediterranean Diet Quality Index (M-DQI) score and distribution of component sub-scores among a representative sample (n 621) from Catalonia, north-east Spain

F&V, fruit and vegetables.

†Score based on the recommendations of the National Research Council and the American Heart Association.

‡Score based on population intake tertiles derived using intake of Mediterranean components adjusted by energy.

Plasma fatty acid analysis

Blood samples were collected after the subjects had fasted for 12 h. Plasma was stored at −80°C before being analysed. For analyses, 100 μl plasma samples containing 20 μg tridecanoic acid (used as the internal standard) were saponified with sodium methylate. Then, samples were esterified with boron trifluoride–methanol at 100°C. After cooling to 25°C, fatty acid methyl esters (FAME) were isolated by adding n-hexane. Then, the FA profile was determined by fast-GC(Reference Bondia-Pons, Castellote and López-Sabater46). Analyses were performed on a Shimadzu GC-2010 gas chromatograph (Kyoto, Japan) equipped with a flame ionization detector and a Shimadzu AOC-20i auto-injector. Separation of FAME was carried out on a capillary column (10 m × 0·1 mm internal diameter) coated with a SGE-BPX70 cross-linked stationary phase (70 % cyanopropyl polysilphenylene-siloxane, 0·2 μm film thickness) from SGE Europe Ltd (Milton Keynes, UK). Results were expressed as relative percentages of total FA.

Statistical analysis

Analyses were performed with the SPSS statistical software package version 12·0 (SPSS Inc., Chicago, IL, USA). Data are presented as means and standard deviations. Kolmogorov–Smirnov tests were carried out to check normality of variables. ANOVA and the Duncan test (for variables with three or more categories) were used to determine effect comparisons among groups for numeric variables following normality, whereas associations between categorical variables were tested with a χ 2 test. Correlations were carried out using the Spearman rank correlation. For all analyses, biomarker concentrations were log-transformed to improve normality and two-sided significance was determined at P < 0·05.

Results

The mean age of the Catalan sample was 47·0 (sd 15·3) years. Of the participants, 15 % were older than 65 years and 17 % were younger than 30 years. Anthropometric and clinical characteristics of the participants are shown in Table 2. Men showed a higher prevalence of risk values for BMI, TAG, glucose and ratio of systolic to diastolic BP (SBP/DBP) than women. Among diagnosed pathologies, only depression/anxiety and rheumatoid arthritis had prevalence higher than 15 %. Women suffered more from rheumatoid arthritis, depression/anxiety and thyroid alterations than did men, whereas men suffered more from diabetes and myocardial infarction.

Table 2 Prevalence (expressed as %) of anthropometric and clinical characteristics according to sex among a representative sample (n 621) from Catalonia, north-east Spain

WC, waist circumference; WHR, waist:hip ratio; HDL-C, HDL cholesterol; SBP, systolic blood pressure; DBP, diastolic blood pressure.

χ 2 test.

‡Cut-off limits: BMI ≥ 25 kg/m2.

§Cut-off limits: WC > 102 cm in men; WC > 88 cm in women.

||Cut-off limits: WHR > 1·00 in men; WHR > 0·90 in women.

¶Involved in the International Diabetes Federation definition of the metabolic syndrome (2005), with the exception of smokers.

††Cut-off limits: HDL-C < 1·0 mmol/l in men; HDL-C < 1·3 mmol/l in women.

‡‡Cut-off limits: TAG > 1·7 mmol/l.

§§Cut-off limits: fasting plasma glucose > 5·6 mmol/l or previously diagnosed type 2 diabetes.

||||Cut-off limits: SBP/DBP ≥ 130/85 mmHg or treatment of previously diagnosed hypertension.

Mean daily consumption, adjusted to energy intake, for each of the seven components of the M-DQI according to sex is shown in Table 3. As expected, the consumption of olive oil, fish, F&V and cereals increased with perfect regularity with higher adherence to the MD in both genders. Conversely, the consumption of less desirable nutrients and foods decreased regularly with higher adherence to the MD. Higher MDQ-I scores were significantly associated with a lower consumption of pulses only in women, while the opposite trend was found for dairy products but only in men (Table 4). The MDQ-I for all subjects progressed significantly parallel to cheese consumption with one irregularity for the higher scores. However, there was no significant variation for cheese or total alcohol consumption across MDQ-I categories in both genders. Men and women with a higher adherence to the MD presented a significantly lower consumption of pastries, but a higher consumption of red wine.

Table 3 Intake values (adjusted by energy) across the Mediterranean Diet Quality Index (M-DQI) categories according to sex among a representative sample (n 621) from Catalonia, north-east Spain

F&V, fruit and vegetables.

a,b,c,dMean values within a row with unlike superscript letters were significantly different (P < 0·05, Duncan test). In all cases the P value for the linear trend (two-factor ANOVA) was <0·001.

n total 59 (9·5 %); n men 25 (9·6 %); n women 34 (9·4 %).

n total 339 (54·6 %); n men 139 (53·3 %); n women 200 (55·6 %).

§n total 212 (34·2 %); n men 93 (35·6 %); n women 119 (33·1 %).

||n total 11 (1·7 %); n men 4 (1·5 %); n women 7 (1·9 %).

Table 4 Intake values (adjusted by energy) across the Mediterranean Diet Quality Index (M-DQI) categories according to sex among a representative sample (n 621) from Catalonia, north-east Spain

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

n total 59 (9·5 %); n men 25 (9·6 %); n women 34 (9·4 %).

n total 339 (54·6 %); n men 139 (53·3 %); n women 200 (55·6 %).

§n total 212 (34·2 %); n men 93 (35·6 %); n women 119 (33·1 %).

||n total 11 (1·7 %); n men 4 (1·5 %); n women 7 (1·9 %).

¶Two-factor ANOVA.

††Not including cheese.

Correlation coefficients with the M-DQI were calculated for the intake of macronutrients and some micronutrients (Table 5). Significant correlations were found for all macronutrients except for PUFA intake. Vitamins B12, C, E and folic acid, and Na, Ca, K, Mg and Fe were the vitamins and minerals significantly correlating with the M-DQI. The coefficients of correlations for the seven components of the index were all significant (P < 0·001). In addition, pulses, cheese, pastries and red wine significantly correlated with the M-DQI, but not dairy products or alcoholic beverages. Generally, women had a higher consumption of SFA and dairy products, while men consumed more meat, cereals, pulses and alcoholic beverages.

Table 5 Daily intakes and correlation coefficients (r) with Mediterranean Dietary Quality Index (M-DQI) score according to dietetic parameters and biomarkers among a representative sample (n 621) from Catalonia, north-east Spain

CHO, carbohydrate; F&V, fruit and vegetables; AA, arachidonic acid; WHR, waist:hip ratio; SBP, systolic blood pressure; DBP, diastolic blood pressure; TC, total cholesterol; LDL-C, LDL cholesterol; HDL-C, HDL cholesterol.

Mean values were significantly different from those of men (one-way ANOVA) or significant r value: *P < 0·05, **P < 0·01, ***P < 0·001.

†Expressed as percentage of total fatty acids; only those fatty acids that correlated with the M-DQI are shown.

From the FA profile, only stearic, oleic, linoleic and α-linolenic acids, and arachidonic acid (AA), EPA and DHA correlated significantly with the M-DQI. Men showed a higher BMI and waist:hip ratio than women. Regarding biomarkers of CVD, the mean HDL-C concentration was higher in women than in men. In contrast, mean concentrations of LDL-C, TAG, glucose and both SPB and DBP were higher in men. Furthermore, only total cholesterol (TC), LDL-C, SBP and DBP correlated significantly with the M-DQI.

Gerber et al. used the amounts of EPA and DHA in erythrocytes as biomarkers of intake to validate the M-DQI(Reference Gerber, Scali, Michaud, Durand, Astre, Dallongeville and Romon25). As expected, both FA decreased significantly as the M-DQI index range increased (Table 6). The same occurred with palmitic, oleic and α-linolenic acids. Stearic, linoleic and AA, as well as the n-6:n-3 ratio variation, increased significantly as the M-DQI index range increased – contrary to the aforementioned FA. No other significant changes were observed for the rest of the plasma FA profile.

Table 6 Plasma fatty acid levels (percentage of total fatty acids) across the Mediterranean Diet Quality Index (M-DQI) categories among a representative sample (n 621) from Catalonia, north-east Spain

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

n total 59 (9·5 %); n men 25 (9·6 %); n women 34 (9·4 %).

n total 339 (54·6 %); n men 139 (53·3 %); n women 200 (55·6 %).

§n total 212 (34·2 %); n men 93 (35·6 %); n women 119 (33·1 %).

||n total 11 (1·7 %); n men 4 (1·5 %); n women 7 (1·9 %).

¶The unique fatty acids for which P for trend was <0·05 (one-way ANOVA).

In complementary correlation analyses, associations between foods and biomarkers were also examined. Oleic acid, α-linolenic acid, EPA and DHA were found to be reliable biomarkers of protective foods such as olive oil, nuts and fish, respectively; while palmitic acid, stearic acid and AA were associated with less healthful foods such as meat (data not shown).

Table 7 shows the clinical biomarkers of disease across the M-DQI categories according to sex. All variables progressed with perfect regularity throughout the index ranges for both sexes, but for the majority of the markers, the change in the mean value was significant only for the extreme ranges of the MDQ-I (0–3 v. 12–14).

Table 7 Clinical markers across the Mediterranean Diet Quality Index (M-DQI) categories according to sex among a representative sample (n 621) from Catalonia, north-east Spain

WHR, waist:hip ratio; SBP, systolic blood pressure; DBP, diastolic blood pressure; TC, total cholesterol; LDL-C, LDL cholesterol; HDL-C, HDL cholesterol.

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

n total 59 (9·5 %); n men 25 (9·6 %); n women 34 (9·4 %).

n total 339 (54·6 %); n men 139 (53·3 %); n women 200 (55·6 %).

§n total 212 (34·2 %); n men 93 (35·6 %); n women 119 (33·1 %).

||n total 11 (1·7 %); n men 4 (1·5 %); n women 7 (1·9 %).

¶Two-factor ANOVA.

The curve for the distribution of subjects according to M-DQI value (Fig. 1) showed that the median M-DQI score was 7 for both genders; a total of 64 % of subjects fell into the 0–7 score range, 62 % of them being female. Nearly 10 % of both men and women presented the healthiest diet (scores 0–3), while 1·9 % of women and 1·5 % of men showed the poorest diet (scores 12–14).

Fig. 1 Distribution of subjects (- - -⧫- - -, men; —▪—, women) according to score of the Mediterranean Diet Quality Index (M-DQI) among a population-based random sample (n 621) derived from the Catalan Nutrition Survey, Spain

The mean M-DQI score was 6·6 (sd 2·3), showing non-significant differences between both genders (Table 8). The percentage of adherence to the MD was 53 %. According to age and for both genders, the older the subjects, the better M-DQI they had. The percentage of adherence to the MD was 45 %, 51 %, 57 % and 60 % for subjects aged ≤30 years, 31–50 years, 51–65 years and >65 years, respectively. Subjects who had elevated BMI showed a higher M-DQI score than subjects with normal values, while subjects with elevated SBP/DBP presented a higher adherence to the MD. Non-smokers presented a higher adherence to the MD than did smokers. Moreover, rheumatoid arthritic patients had lower values of the M-DQI than non-rheumatoid arthritic subjects. No other significant differences were found for the remaining clinical characteristics considered in the analyses.

Table 8 Mediterranean Diet Quality Index (M-DQI) scores according to sex and age among a representative sample (n 621) from Catalonia, north-east Spain

WHR, waist:hip ratio; HDL-C, HDL cholesterol; SBP, systolic blood pressure; DBP, diastolic blood pressure.

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

P value for linear trend according to age (two-factor ANOVA).

P value among groups within every clinical characteristic (one-way ANOVA).

§BMI ≥ 25 kg/m2.

||WHR > 1·00 in men; WHR > 0·90 in women.

¶Involved in the International Diabetes Federation definition of the metabolic syndrome (2005), with the exception of smokers.

††HDL-C < 1·0 mmol/l in men; HDL-C < 1·3 mmol/l in women.

‡‡TAG ≥ 1.7 mmol/l.

§§Fasting plasma glucose > 5.6 mmol/l or previously diagnosed type 2 diabetes.

||||SBP/DBP ≥ 130/85 mmHg or treatment of previously diagnosed hypertension.

¶¶Only those pathologies pertaining to more than 15 % of the Catalan sample were considered.

Discussion

The assessment of the quality of the MD in a coastal region from north-east Spain was evaluated by applying the M-DQI. The regular progression of the variables incorporated into the M-DQI across the scores, as well as their high and significant correlation coefficients, gave a coherent set of results. Moreover, we also examined the intake of other food groups of interest. Cheese, dairy products and pastries were considered because they were the main contributors to SFA intake in the Catalan diet(Reference Bondia-Pons, Serra-Majem, Castellote and López-Sabater47). This contribution justifies the significant positive correlation of cheese and pastries with the M-DQI. On the contrary, the lack of significance found in the correlation with dairy products could be explained by the fact that the negative effect of whole-fat milk and yoghurts on the M-DQI counteracted the positive effect of reduced-fat milk and yoghurt products. Pulses were also considered because the recent DAFNE (DAta Food Networking) databank study included pulses as a characteristic food group of the MD(Reference Naska, Fouskakis and Oikonomou48), which may explain their negative correlation with the M-DQI. Alcoholic beverages neither progressed across the M-DQI categories nor correlated with the M-DQI. However, when alcohol sources were considered, subjects with a poor diet showed a significantly lower amount of red wine intake than subjects with a good diet. Besides, red wine intake correlated negatively with M-DQI. This reflects that drinking red wine is an integrated part of the MD.

The correlations of dietary energy and fat intake with diet indices were not always significant(Reference Kant20). Consistent with the findings of others, our results showed that energy intake did not correlate with M-DQI, and correlation with macronutrients and micronutrients indicates healthful intakes for lower scores of the M-DQI(Reference Newby, Hu and Rimm29, Reference Satalic, Baric, Keser and Maric38). For example, carotenoids, folic acid and vitamin C are regarded as micronutrients associated with healthful foods such as F&V, giving rise to negative correlation coefficients with the M-DQI. Conversely, vitamin B12 is associated with less healthful foods such as meat and dairy products, which is the reason for the positive correlation observed with the M-DQI. The correlation coefficients were similar to or even higher than other reported values(Reference Newby, Hu and Rimm29, Reference Satalic, Baric, Keser and Maric38).

With all this in mind, the components that were and were not included in the index showed that the M-DQI was successful in providing an overall assessment of food habits in Catalonia according to the MDP. Moreover, this adequacy was supported by the validation using biomarkers of nutrition intake. Biomarkers of protective foods correlated directly with a higher adherence to the MDP, while biomarkers of less healthful foods correlated inversely with a higher MDP adherence.

Palmitic and stearic acids have been associated with increased risk of CHD(Reference Hu, Manson and Willett49). As expected, participants with a lower MDP adherence had significantly higher plasma concentrations of stearic acid. Although palmitic acid was inversely related to the M-DQI, this finding agrees with the fact that a low-fat diet leads to a significant increase in palmitic acid incorporated in plasma phospholipids(Reference Raatz, Bibus, Thomas and Kris-Etherton50). Neuhouser et al. also reported this tendency for both saturated FA(Reference Neuhouser, Patterson, King, Horner and Lampe30).

The fact that olive oil is the largest contributor of total fat (70 %) among the Catalan population(Reference Bondia-Pons, Serra-Majem, Castellote and López-Sabater47) and 92 % of the MUFA present in foods is oleic acid (60–80 % of oleic acid intake coming from olive oil(Reference Pérez-Jimenez, López-Miranda and Mata51)) could be an explanation for its increasing content observed in our study across the M-DQI categories. Fish and nut intakes, for which beneficial effects on human health have been reported(Reference Harris, Miller, Tighe, Davidson and Schaefer52Reference Marangoni, Colombo, Martiello, Poli, Paoletti and Galli54), are also characteristic of the Catalan population and could explain the increasing EPA, DHA and α-linolenic acid contents throughout the M-DQI categories.

Both EPA and DHA presented significant negative correlations with the M-DQI. Similar to our findings, Gerber et al. found a significant correlation between the DQI adapted for the French Mediterranean diet and marine FA(Reference Gerber, Scali, Michaud, Durand, Astre, Dallongeville and Romon25). Conversely, Neuhouser et al. found no associations of EPA and DHA with the DQI(Reference Neuhouser, Patterson, King, Horner and Lampe30). The variations in fish consumption patterns between subjects in Mediterranean regions and subjects in a Western region are likely to explain these observed differences.

Because both n-6 and n-3 PUFA are associated with a lower risk of CHD(Reference Wijendran and Hayes55), the ratio is only weakly related to CHD risk(Reference Wijendran and Hayes55, Reference Griffin56). Nevertheless, it is generally accepted that the ratio of n-6 to n-3 in Western diets (20–30:1) is less than optimal and should be improved to approach recommendations (4–5:1)(Reference Gebauer, Psota, Harris and Kris-Etherton57). As expected, the present study showed a gradual decrease of the n-6:n-3 ratio in participants with a better adherence to the MD. However, although the n-6:n-3 ratio of the subjects with a better adherence to the MD is lower than that of Western diets, it is still far from the recommendations.

In the present study, we also analysed the M-DQI in relation to clinical biomarkers. A significant inverse association was found between MDP adherence and TC and LDL-C levels, but not HDL-C. These findings are in agreement with Newby et al. and Panagiotakos et al., who found that TC was negatively correlated with the DQI revised and the MD score, respectively(Reference Newby, Hu and Rimm29, Reference Panagiotakos, Pitsavos and Stefanadis35); and with Álvarez-León et al., who found no association between MD scores and HDL-C in a Canarian population(Reference Álvarez-León, Henríquez and Serra-Majem34). Furthermore, although Sofi et al. observed no influence of adherence to the MD on blood lipid levels, the addition of lifestyle habits to the MD score resulted in a significant association between scores and TC, LDL-C and TAG(Reference Sofi, Gori, Marcucci, Innocenti, Dini, Genise, Abbate, Surrenti and Casini36). However, in several other studies opposite results have been found(Reference Gerber, Scali, Michaud, Durand, Astre, Dallongeville and Romon25, Reference Kant and Graubard31Reference Bach-Faig, Geleva, Carrasco, Ribas-Barba and Serra-Majem33). These differences could be due to different dietary patterns among populations as well as to the different indices used. For example, Kant and Graubard found different results when three different indices were applied to the same population(Reference Kant and Graubard31).

Consistent with our findings, several studies found that adherence to dietary patterns was inversely associated with BP(Reference Kant and Graubard31, Reference Pitsavos, Panagiotakos and Tzima32, Reference Álvarez-León, Henríquez and Serra-Majem34, Reference Panagiotakos, Pitsavos and Stefanadis35), but not with TAG(Reference Newby, Hu and Rimm29, Reference Kant and Graubard31, Reference Bach-Faig, Geleva, Carrasco, Ribas-Barba and Serra-Majem33, Reference Álvarez-León, Henríquez and Serra-Majem34) or glucose(Reference Pitsavos, Panagiotakos and Tzima32, Reference Sofi, Gori, Marcucci, Innocenti, Dini, Genise, Abbate, Surrenti and Casini36). The strong correlation between the M-DQI and BP could be due to the variables included in the M-DQI, which approximate those of an ‘ideal’ dietary pattern to reduce BP(Reference Sacks, Obarzanek and Windhauser58).

No consistent associations have been identified between dietary patterns and BMI, discrepancies being attributable to differences in control of confounders or in the dietary assessment methods(Reference Togo, Osler, Sorensen and Heitmann59). Thus, several studies have reported that adherence to the MD is inversely associated with BMI(Reference Panagiotakos, Chrysohoou, Pitsavos and Stefanadis8, Reference Kant and Graubard31, Reference Pitsavos, Panagiotakos and Tzima32, Reference Panagiotakos, Pitsavos and Stefanadis35, Reference Schröder, Marrugat, Vila, Covas and Elosua60), while others have found no association(Reference Sofi, Gori, Marcucci, Innocenti, Dini, Genise, Abbate, Surrenti and Casini36, Reference Satalic, Baric, Keser and Maric38, Reference Trichopoulou, Naska, Orfanos and Trichopoulos61, Reference Rossi, Negri and Bosetti62). In the present study, subjects with a normal BMI presented a higher adherence to the MDP than those being overweight or obese. However, BMI did not differ significantly across the M-DQI categories. This fact could be due to the cross-sectional nature of the study. Thus, obese subjects could be following physicians’ advice of increasing their adherence to a healthy dietary pattern. Moreover, obese people tend to under-report energy intake and overestimate the intake of healthy foods, resulting in lower scores. The large proportion of overweight and obese participants in our study could lead to an underestimation of the association between BMI and M-DQI.

The Catalan sample presented a mean M-DQI score of 6·6 (sd 2·3) and 53 % adherence to the MDP, which is at the borderline value of classification for good adherence to the MD (score ≤7, adherence ≥50 %)(Reference Gerber, Scali, Michaud, Durand, Astre, Dallongeville and Romon25). Our results suggest that although the current Catalan population still follows the MDP, it is being lost, mainly in the younger generations. This trend has also been reported in other Mediterranean regions(Reference Tur, Romaguera and Pons44, Reference Serra-Majem, Trichopoulou, Ngo de la Cruz, Cervera, García Alvarez, La Vecchia, Lemtouni and Trichopoulos63Reference Baldini, Pasqui, Bordoni and Maranesi65). Taking into account that childhood obesity is unfortunately one of the pandemics of the 21st century(Reference Malecka-Tendera and Mazur66), young age groups of the population should be a priority target for nutrition interventions to prevent obesity and diet-related diseases.

The fact that hypertensive and rheumatoid arthritic patients showed M-DQI values lower than non-hypertensive and non-rheumatoid arthritic subjects could also be explained by the cross-sectional design of the study. So, patients may have adopted a healthier diet, as has been observed in previous studies(Reference Tur, Romaguera and Pons44). For example, in the Catalan sample, patients suffering from these pathologies showed a significantly higher intake of olive oil than the rest of the subjects.

The main limitation of our study is its cross-sectional nature. Therefore, we cannot establish causal relationships but only generate hypotheses for the associations between diseases and biomarkers. Because of the large proportion of overweight and obese participants, under-reporting of energy intake and overestimated intake of ‘healthy’ foods may give rise to lower scores. Moreover, not all components of the M-DQI (i.e. F&V or cereals) are represented by our intake biomarkers.

However, the current investigation also has several strengths. First, we used a validated FFQ previously applied to other Spanish populations(Reference Martin-Moreno, Boyle, Gorgojo, Maisonneuve, Fernandez-Rodriguez, Salvini and Willett42Reference Tur, Romaguera and Pons44). Second, we employed an elevated number of biomarkers to confirm data obtained from the FFQ, because they are independent of participant’s memory and social factors.

In conclusion, the M-DQI has been demonstrated a suitable tool for measuring adequately the diet quality of the Catalan population since it correlates with intake of several macro- and micronutrients, and is supported by the regular progression of nutritional biomarkers across the scores. Recent data have shown reduced CVD risk factors(Reference Vincent-Baudry, Defoort and Gerber67Reference Alonso, Beunza, Delgado-Rodríguez, Martinez and Martínez-González69), mortality(Reference Trichopoulou2) and prevalence of obesity(Reference Panagiotakos, Chrysohoou, Pitsavos and Stefanadis8) in people adhering to a MD. Consistent with these findings, significant associations between the M-DQI and some biomarkers of disease have been found, revealing that this index may have potential applications for clinical purposes as a predictor of groups at risk. The study also indicates that although the Catalan population still follows the traditional MD habits, they are disappearing, especially among young subjects, who appear to be a group at risk and the primary target for promotion of the MDP.

Acknowledgements

The study was supported by Mercadona SA and is part of the studies carried out by the Xarxa Temàtica en Nutrició (Generalitat de Catalunya) and the Centre Català de la Nutrició de Institut d’Estudis Catalans in relation to the Health Survey of Catalonia, ESCA 2002–2003. The research reported in the article was not funded by any of the listed funding bodies. There are no conflicts of interest. I.B.-P. and J.M.-P. contributed equally and share first authorship of the paper. All of the authors (I.B.-P., J.M.-P., L.S.-M., A.I.C., A.M. and M.C.L.-S.) contributed in the design, analysis and interpretation of data of the manuscript. The authors are grateful to the Public Health Division of the Department of Health of the Autonomous Government of Catalonia for providing the blood samples for the study. Special thanks to Mr Lindsey Moshell for the manuscript correction; and to the Spanish Ministry of Education for their PhD grant to I.B.-P.

References

1.Serra-Majem, L, Ngo de la Cruz, J, Ribas, L & Tur, JA (2003) Olive oil and the Mediterranean diet: beyond the rhetoric. Eur J Clin Nutr 57, Suppl. 1, S2S7.CrossRefGoogle ScholarPubMed
2.Trichopoulou, A (2004) Traditional Mediterranean diet and longevity in the elderly: a review. Public Health Nutr 7, 943947.CrossRefGoogle ScholarPubMed
3.Sanchez-Villegas, A, Bes-Rastrollo, M, Martinez-Gonzalez, MA & Serra-Majem, L (2006) Adherence to a Mediterranean dietary pattern and weight gain in a follow-up study: the SUN cohort. Int J Obes (Lond) 30, 350358.CrossRefGoogle Scholar
4.Estruch, R, Martínez-González, MA, Corella, D et al. (2006) Effects of a Mediterranean-style diet on cardiovascular risk factors: a randomized trial. Ann Intern Med 145, 111.CrossRefGoogle ScholarPubMed
5.Bondia-Pons, I, Schröder, H, Covas, MI, Castellote, AI, Kaikkonen, J, Poulsen, HE, Gaddi, AV, Machowetz, A, Kiesewetter, H & López-Sabater, MC (2007) A moderate consumption of olive oil in European healthy men reduced the systolic blood pressure in non-Mediterranean participants. J Nutr 137, 8487.CrossRefGoogle ScholarPubMed
6.Trichopoulou, A & Dilis, V (2007) Olive oil and longevity. Mol Nutr Food Res 51, 12751278.CrossRefGoogle ScholarPubMed
7.Fitó, M, Guxens, M, Corella, D et al. (2007) Effect of a traditional Mediterranean diet on lipoprotein oxidation: a randomized controlled trial. Arch Intern Med 167, 11951203.CrossRefGoogle ScholarPubMed
8.Panagiotakos, DB, Chrysohoou, C, Pitsavos, C & Stefanadis, C (2006) Association between the prevalence of obesity and adherence to the Mediterranean diet: the ATTICA study. Nutrition 22, 449456.CrossRefGoogle Scholar
9.Dai J. Miller, AH, Bremner, JD et al. (2008) Adherence to the Mediterranean diet is inversely associated with circulating interleukin-6 among middle-aged men: a twin study. Circulation 117, 169175.Google Scholar
10.Giugliano, D, Ceriello, A & Esposito, K (2008) Are there specific treatments for the metabolic syndrome? Am J Clin Nutr 87, 811.CrossRefGoogle ScholarPubMed
11.Knoops, KT, de Groot, LC, Fidanza, F, Alberti-Fidanza, A, Kromhout, D & van Staveren, W (2006) Comparison of three different dietary scores in relation to 10-year mortality in elderly European subjects: the HALE project. Eur J Clin Nutr 60, 746755.CrossRefGoogle ScholarPubMed
12.Harriss, LR, English, DR, Powles, J, Giles, GG, Tonkin, AM, Hodge, AM, Brazionis, L & O’Dea, K (2007) Dietary patterns and cardiovascular mortality in the Melbourne Collaborative Cohort Study. Am J Clin Nutr 86, 221229.CrossRefGoogle ScholarPubMed
13.Mitrou, PN, Kipnis, V, Thiébaut, AC et al. (2007) Mediterranean dietary pattern and prediction of all-cause mortality in a US population: results from the NIH–AARP Diet and Health Study. Arch Intern Med 167, 24612468.CrossRefGoogle Scholar
14.Serra-Majem, L, Roman, B & Estruch, R (2006) Scientific evidences of interventions using the Mediterranean diet: a systematic review. Nutr Rev 64, 2 Pt 2, S27S47.CrossRefGoogle ScholarPubMed
15.Lairon, D (2007) Intervention studies on Mediterranean diet and cardiovascular risk. Mol Nutr Food Res 51, 12091214.CrossRefGoogle ScholarPubMed
16.Willett, WC, Sacks, F, Trichopoulou, A, Drescher, G, Ferro-Luzzi, A, Helsing, E & Trichopoulos, D (1995) Mediterranean diet pyramid: a cultural model for healthy eating. Am J Clin Nutr 61, Suppl. 6, S1402S1406.CrossRefGoogle ScholarPubMed
17.Garcia-Closas, R, Berenguer, A & González, CA (2006) Changes in food supply in Mediterranean countries from 1961 to 2001. Public Health Nutr 9, 5360.CrossRefGoogle ScholarPubMed
18.Balanza, R, García-Lorda, P, Pérez-Rodrigo, C, Aranceta, J, Bonet, MB & Salas-Salvadó, J (2007) Trends in food availability determined by the Food and Agriculture Organization’s food balance sheets in Mediterranean Europe in comparison with other European areas. Public Health Nutr 10, 168176.CrossRefGoogle ScholarPubMed
19.Chen, Q & Marques-Vidal, P (2007) Trends in food availability in Portugal in 1966–2003: comparison with other Mediterranean countries. Eur J Nutr 46, 418427.CrossRefGoogle ScholarPubMed
20.Kant, AK (2004) Dietary patterns and health outcomes. J Am Diet Assoc 104, 615635.CrossRefGoogle ScholarPubMed
21.Trichopoulos, D & Lagiou, P (2004) Mediterranean diet and overall mortality differences in the European Union. Public Health Nutr 7, 949951.CrossRefGoogle ScholarPubMed
22.Bach, A, Serra-Majem, L, Carrasco, JL, Roman, B, Ngo, J, Bertomeu, I & Obrador, B (2006) The use of indexes evaluating the adherence to the Mediterranean diet in epidemiological studies: a review. Public Health Nutr 9, 132146.CrossRefGoogle Scholar
23.Waijers, PM, Feskens, EJ & Ocké, MC (2007) A critical review of predefined diet quality scores. Br J Nutr 97, 219231.CrossRefGoogle ScholarPubMed
24.Arvaniti, F & Panagiotakos, DB (2008) Healthy indexes in public health practice and research: a review. Crit Rev Food Sci Nutr 48, 317327.CrossRefGoogle ScholarPubMed
25.Gerber, MJ, Scali, JD, Michaud, A, Durand, MD, Astre, CM, Dallongeville, J & Romon, MM (2000) Profiles of a healthful diet and its relationship to biomarkers in a population sample from Mediterranean southern France. J Am Diet Assoc 100, 11641171.CrossRefGoogle Scholar
26.Patterson, RE, Haines, PS & Popkin, BM (1994) Diet Quality Index: capturing a multidimensional behaviour. J Am Diet Assoc 94, 5764.CrossRefGoogle Scholar
27.Bingham, SA (2002) Biomarkers in nutritional epidemiology. Public Health Nutr 5, 821827.CrossRefGoogle ScholarPubMed
28.Hann, CS, Rock, CL, King, I & Drewnowski, A (2001) Validation of Healthy Eating Index with use of plasma biomarkers in a clinical sample of women. Am J Clin Nutr 74, 479486.CrossRefGoogle Scholar
29.Newby, PK, Hu, FB, Rimm, EB et al. (2003) Reproducibility and validity of the Diet Quality Index Revised as assessed by use of a food-frequency questionnaire. Am J Clin Nutr 78, 941949.CrossRefGoogle ScholarPubMed
30.Neuhouser, ML, Patterson, RE, King, IB, Horner, NK & Lampe, JW (2003) Selected nutritional biomarkers predict diet quality. Public Health Nutr 6, 703709.CrossRefGoogle ScholarPubMed
31.Kant, AK & Graubard, BI (2005) A comparison of three dietary pattern indexes for predicting biomarkers of diet and disease. J Am Coll Nutr 24, 294303.CrossRefGoogle ScholarPubMed
32.Pitsavos, C, Panagiotakos, DB, Tzima, N et al. (2005) Adherence to the Mediterranean diet is associated with total antioxidant capacity in healthy adults: the ATTICA study. Am J Clin Nutr 82, 694699.CrossRefGoogle Scholar
33.Bach-Faig, A, Geleva, D, Carrasco, JL, Ribas-Barba, L & Serra-Majem, L (2006) Evaluating associations between Mediterranean diet adherence indexes and biomarkers of diet and disease. Public Health Nutr 9, 11101117.CrossRefGoogle ScholarPubMed
34.Álvarez-León, EE, Henríquez, P & Serra-Majem, L (2006) Mediterranean diet and metabolic syndrome: a cross-sectional study in the Canary Islands. Public Health Nutr 9, 10891098.CrossRefGoogle ScholarPubMed
35.Panagiotakos, DB, Pitsavos, C & Stefanadis, C (2006) Dietary patterns: a Mediterranean diet score and its relation to clinical and biological markers of cardiovascular disease risk. Nutr Metab Cardiovasc Dis 16, 559568.CrossRefGoogle ScholarPubMed
36.Sofi, F, Gori, AM, Marcucci, R, Innocenti, G, Dini, C, Genise, S, Abbate, R, Surrenti, C & Casini, A (2007) Adherence to a healthful life attenuates lipid parameters among a healthy Italian population. Nutr Metab Cardiovasc Dis 17, 642648.CrossRefGoogle ScholarPubMed
37.Scali, J, Richard, A & Gerber, M (2001) Diet profiles in a population sample from Mediterranean southern France. Public Health Nutr 4, 173182.CrossRefGoogle Scholar
38.Satalic, Z, Baric, IC, Keser, I & Maric, B (2004) Evaluation of diet quality with the Mediterranean dietary quality index in university students. Int J Food Sci Nutr 55, 589597.CrossRefGoogle ScholarPubMed
39.Juncà, S, Guillén, M, Aragay, JM, Brugulat, P, Castell, C, Séculi, E, Medina, A & Tresserras, R (2003) Methodological aspects in the evaluation of health and risk-reduction objectives of Health Plan for Catalonia for the year 2000. Med Clin (Barc) 121, Suppl. 1, 1019.Google Scholar
40.Goldberg, GR, Black, AE, Jebb, SA, Cole, TJ, Murgatroyd, PR, Coward, WA & Prentice, AM (1991) Critical evaluation of energy intake data using fundamental principles of energy physiology: 1. Derivation of cut-off limits to identify under-recording. Eur J Clin Nutr 45, 569581.Google ScholarPubMed
41.Alberti, KG, Zimmet, P & Shaw, J (2005) The metabolic syndrome: a new worldwide definition. Lancet 366, 10591062.CrossRefGoogle ScholarPubMed
42.Martin-Moreno, JM, Boyle, P, Gorgojo, L, Maisonneuve, P, Fernandez-Rodriguez, JC, Salvini, S & Willett, WC (1993) Development and validation of a food frequency questionnaire in Spain. Int J Epidemiol 22, 512519.CrossRefGoogle ScholarPubMed
43.Serra-Majem, L, Armas-Navarro, A & Ribas-Barba, L, on behalf of the Research Group ENCA (1997–98) (1999) Nutritional Survey of Canary Islands: Dietary Habits and Food Consumption. Report no. 1. Santa Cruz de Tenerife: ENCA Research Group.Google Scholar
44.Tur, JA, Romaguera, D & Pons, A (2004) Adherence to the Mediterranean dietary pattern among the population of the Balearic Islands. Br J Nutr 92, 341346.CrossRefGoogle Scholar
45.Cervera, P (2006) Food Composition Tables of CESNID (The Centre for Superior Studies in Nutrition and Dietetics). Barcelona: McGraw-Hill.Google Scholar
46.Bondia-Pons, I, Castellote, AI & López-Sabater, MC (2004) Comparison of conventional and fast gas chromatography in human plasma fatty acid determination. J Chromatogr B Analyt Technol Biomed Life Sci 809, 339344.CrossRefGoogle ScholarPubMed
47.Bondia-Pons, I, Serra-Majem, L, Castellote, AI & López-Sabater, MC (2007) Identification of foods contributing to the dietary lipid profile of a Mediterranean population. Br J Nutr 98, 583592.CrossRefGoogle Scholar
48.Naska, A, Fouskakis, D, Oikonomou, E et al. (2006) Dietary patterns and their socio-demographic determinants in 10 European countries: data from the DAFNE databank. Eur J Clin Nutr 60, 181190.CrossRefGoogle ScholarPubMed
49.Hu, FB, Manson, JE & Willett, WC (2001) Types of dietary fat and coronary heart disease: a critical review. J Am Coll Nutr 20, 519.CrossRefGoogle ScholarPubMed
50.Raatz, SK, Bibus, D, Thomas, W & Kris-Etherton, P (1999) Total fat intake modifies fatty acid composition in humans. J Nutr 131, 231234.CrossRefGoogle Scholar
51.Pérez-Jimenez, F, López-Miranda, J & Mata, P (2002) Protective effect of dietary monounsaturated fat on arteriosclerosis: beyond cholesterol. Atherosclerosis 163, 385398.CrossRefGoogle ScholarPubMed
52.Harris, WS, Miller, M, Tighe, AP, Davidson, MH & Schaefer, EJ (2008) Omega-3 fatty acids and coronary heart disease risk: clinical and mechanistic perspectives. Atherosclerosis 197, 1224.CrossRefGoogle ScholarPubMed
53.Ros, E & Mataix, J (2006) Fatty acid composition of nuts – implications for cardiovascular health. Br J Nutr 96, Suppl. 2, S29S35.CrossRefGoogle ScholarPubMed
54.Marangoni, F, Colombo, C, Martiello, A, Poli, A, Paoletti, R & Galli, C (2007) Levels of the n-3 fatty acid eicosapentaenoic acid in addition to those of α linolenic acid are significantly raised in blood lipids by the intake of four walnuts a day in humans. Nutr Metab Cardiovasc Dis 17, 457461.CrossRefGoogle Scholar
55.Wijendran, V & Hayes, KC (2004) Dietary n-6 and n-3 fatty acid balance and cardiovascular health. Annu Rev Nutr 24, 597615.CrossRefGoogle ScholarPubMed
56.Griffin, BA (2008) How relevant is the ratio of dietary n-6 to n-3 polyunsaturated fatty acids to cardiovascular disease risk? Evidence from the OPTILIP study. Curr Opin Lipidol 19, 5762.CrossRefGoogle ScholarPubMed
57.Gebauer, SK, Psota, TL, Harris, WS & Kris-Etherton, PM (2006) n-3 Fatty acids dietary recommendations and food sources to achieve essentiality and cardiovascular benefits. Am J Clin Nutr 83, Suppl. 6, S1526S1535.CrossRefGoogle ScholarPubMed
58.Sacks, FM, Obarzanek, E, Windhauser, MM et al. (1995) Rationale and design of the Dietary Approaches to Stop Hypertension trial (DASH). A multicenter controlled-feeding study of dietary patterns to lower blood pressure. Ann Epidemiol 5, 108118.CrossRefGoogle Scholar
59.Togo, P, Osler, M, Sorensen, TI & Heitmann, BL (2001) Food intake patterns and body mass index in observational studies. Int J Obes Relat Metab Disord 25, 17411751.CrossRefGoogle ScholarPubMed
60.Schröder, H, Marrugat, J, Vila, J, Covas, MI & Elosua, R (2004) Adherence to the traditional Mediterranean diet is inversely associated with body mass index and obesity in a Spanish population. J Nutr 134, 33553361.CrossRefGoogle Scholar
61.Trichopoulou, A, Naska, A, Orfanos, P & Trichopoulos, D (2005) Mediterranean diet in relation to body mass index and waist-to-hip ratio: the Greek European Prospective Investigation into Cancer and Nutrition Study. Am J Clin Nutr 82, 935940.CrossRefGoogle ScholarPubMed
62.Rossi, M, Negri, E, Bosetti, C et al. (2008) Mediterranean diet in relation to body mass index and waist-to-hip ratio. Public Health Nutr 11, 214217.CrossRefGoogle ScholarPubMed
63.Serra-Majem, L, Trichopoulou, A, Ngo de la Cruz, J, Cervera, P, García Alvarez, A, La Vecchia, C, Lemtouni, A & Trichopoulos, D (2004) Does the definition of the Mediterranean diet need to be updated? Public Health Nutr 7, 927929.CrossRefGoogle ScholarPubMed
64.Kontogianni, MD, Vidra, N, Farmaki, AE et al. (2008) Adherence rates to the Mediterranean diet are low in a representative sample of Greek children and adolescents. J Nutr 138, 19511956.CrossRefGoogle Scholar
65.Baldini, M, Pasqui, F, Bordoni, A & Maranesi, M (2009) Is the Mediterranean lifestyle still a reality? Evaluation of food consumption and energy expenditure in Italian and Spanish university students. Public Health Nutr 12, 148155.CrossRefGoogle Scholar
66.Malecka-Tendera, E & Mazur, A (2006) Childhood obesity: a pandemic of the twenty-first century. Int J Obes (Lond) 30, Suppl. 2, S1S3.CrossRefGoogle ScholarPubMed
67.Vincent-Baudry, S, Defoort, C, Gerber, M et al. (2005) The Medi-RIVAGE study: reduction of cardiovascular disease risk factors after a 3-mo intervention with a Mediterranean-type diet or a low-fat diet. Am J Clin Nutr 82, 964971.CrossRefGoogle ScholarPubMed
68.Ambring, A, Johansson, M, Axelsen, M, Gan, L, Strandvik, B & Friberg, P (2006) Mediterranean-inspired diet lowers the ratio of serum phospholipid n-6 to n-3 fatty acids, the number of leukocytes and platelets, and vascular endothelial growth factor in healthy subjects. Am J Clin Nutr 83, 575581.CrossRefGoogle ScholarPubMed
69.Alonso, A, Beunza, JJ, Delgado-Rodríguez, M, Martinez, JA & Martínez-González, MA (2006) Low-fat dairy consumption and reduced risk of hypertension: the Seguimiento Universidad de Navarra (SUN) cohort. Am J Clin Nutr 82, 972979.CrossRefGoogle Scholar
Figure 0

Table 1 Construction of the Mediterranean Diet Quality Index (M-DQI) score and distribution of component sub-scores among a representative sample (n 621) from Catalonia, north-east Spain

Figure 1

Table 2 Prevalence (expressed as %) of anthropometric and clinical characteristics according to sex among a representative sample (n 621) from Catalonia, north-east Spain

Figure 2

Table 3 Intake values (adjusted by energy) across the Mediterranean Diet Quality Index (M-DQI) categories according to sex among a representative sample (n 621) from Catalonia, north-east Spain

Figure 3

Table 4 Intake values (adjusted by energy) across the Mediterranean Diet Quality Index (M-DQI) categories according to sex among a representative sample (n 621) from Catalonia, north-east Spain

Figure 4

Table 5 Daily intakes and correlation coefficients (r) with Mediterranean Dietary Quality Index (M-DQI) score according to dietetic parameters and biomarkers among a representative sample (n 621) from Catalonia, north-east Spain

Figure 5

Table 6 Plasma fatty acid levels (percentage of total fatty acids) across the Mediterranean Diet Quality Index (M-DQI) categories among a representative sample (n 621) from Catalonia, north-east Spain

Figure 6

Table 7 Clinical markers across the Mediterranean Diet Quality Index (M-DQI) categories according to sex among a representative sample (n 621) from Catalonia, north-east Spain

Figure 7

Fig. 1 Distribution of subjects (- - -⧫- - -, men; —▪—, women) according to score of the Mediterranean Diet Quality Index (M-DQI) among a population-based random sample (n 621) derived from the Catalan Nutrition Survey, Spain

Figure 8

Table 8 Mediterranean Diet Quality Index (M-DQI) scores according to sex and age among a representative sample (n 621) from Catalonia, north-east Spain