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High disaccharide intake associates with atherogenic lipoprotein profile

Published online by Cambridge University Press:  20 October 2011

Emily Sonestedt*
Affiliation:
Department of Clinical Sciences – Malmö, Lund University, SE-205 02Malmö, Sweden
Elisabet Wirfält
Affiliation:
Department of Clinical Sciences – Malmö, Lund University, SE-205 02Malmö, Sweden
Peter Wallström
Affiliation:
Department of Clinical Sciences – Malmö, Lund University, SE-205 02Malmö, Sweden
Bo Gullberg
Affiliation:
Department of Clinical Sciences – Malmö, Lund University, SE-205 02Malmö, Sweden
Isabel Drake
Affiliation:
Department of Clinical Sciences – Malmö, Lund University, SE-205 02Malmö, Sweden
Joanna Hlebowicz
Affiliation:
Department of Clinical Sciences – Malmö, Lund University, SE-205 02Malmö, Sweden
Gunilla Nordin Fredrikson
Affiliation:
Department of Clinical Sciences – Malmö, Lund University, SE-205 02Malmö, Sweden
Bo Hedblad
Affiliation:
Department of Clinical Sciences – Malmö, Lund University, SE-205 02Malmö, Sweden
Jan Nilsson
Affiliation:
Department of Clinical Sciences – Malmö, Lund University, SE-205 02Malmö, Sweden
Ronald M. Krauss
Affiliation:
Children's Hospital Oakland Research Institute, Oakland, CA94609, USA
Marju Orho-Melander
Affiliation:
Department of Clinical Sciences – Malmö, Lund University, SE-205 02Malmö, Sweden
*
*Corresponding author: E. Sonestedt, fax +46 40 39 13 22, email [email protected]
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Abstract

Increased plasma concentrations of small LDL particles denote an atherogenic lipoprotein phenotype (ALP) that is correlated with increased circulating TAG and reduced HDL-cholesterol. Principal component analyses of subfraction concentrations have previously been used in the Swedish population-based Malmö Diet and Cancer (MDC) cohort to identify three independent components, one pattern representing the ALP. The aim of the present study was to examine the associations between macronutrient intakes and the principal component representing the ALP. We examined 4301 healthy subjects (46–68 years old, 60 % women) at baseline in the MDC cohort. Dietary data were collected using a modified diet history method. Plasma lipoprotein subfractions were measured using a high-resolution ion mobility method. The principal component corresponding to the ALP was significantly associated with a higher intake of disaccharides, and inversely related to protein and alcohol consumption (P < 0·001 for all). The present findings indicate that the ALP may be improved by a low intake of disaccharides, and moderate intakes of protein and alcohol.

Type
Full Papers
Copyright
Copyright © The Authors 2011

The majority of prospective epidemiological studies have shown that plasma levels of lipids and lipoproteins predict CVD(1). However, there is considerable heterogeneity among lipoproteins in terms of size and density(Reference Krauss and Burke2), and some studies have indicated that specific lipoprotein subfractions are more predictive of CVD than others(Reference Ip, Lichtenstein and Chung3). For example, small and medium LDL particles showed strong positive associations with CVD, whereas concentrations of large LDL particles were not significantly associated with CVD in the Malmö Diet and Cancer (MDC) study(Reference Musunuru, Orho-Melander and Caulfield4). However, it is unclear whether measurement of the total number of LDL particles or the concentration of specific subfractions is more predictive of CVD(Reference Krauss5). The atherogenic lipoprotein phenotype (ALP), which comprises a higher proportion of small LDL particles, reduced HDL-cholesterol (HDL-C) and increased TAG, is associated with substantially higher CVD risk(Reference Musunuru, Orho-Melander and Caulfield4, Reference Austin, King and Vranizan6). By using a principal component analysis, a data-driven unsupervised statistical procedure designed to capture independent clusters of lipoprotein subfractions that can reflect the underlying mechanistic pathways, we have earlier in the MDC cohort demonstrated that one of the components closely matching the ALP was associated with 22 % increased risk for CVD per standard deviation(Reference Musunuru, Orho-Melander and Caulfield4).

Numerous studies have examined the effect of short-term diet interventions on LDL-cholesterol (LDL-C) and HDL-C concentrations. For example, high intakes of saturated fat increase LDL-C(Reference Sacks and Katan7, Reference Kris-Etherton and Yu8); however, saturated fat seems to be mainly associated with the large, less atherogenic, LDL particles(Reference Dreon, Fernstrom and Campos9, Reference Campos, Blijlevens and McNamara10). On the other hand, there are indications that carbohydrates, particularly simple sugars and starches, are major determinants of small LDL particle concentrations(Reference Siri and Krauss11). The overall aim of the present study was to examine the association between dietary macronutrient intakes and lipoprotein subfractions in an observational setting. Since there are strong correlations among various lipoprotein subfractions(Reference Musunuru, Orho-Melander and Caulfield4), we specifically examined dietary factors associated with the lipoprotein pattern corresponding to the ALP.

Subjects and methods

Subjects and data collection

The MDC study is a prospective population-based cohort (n 30 447) with baseline examinations conducted between 1991 and 1996. Women born between 1923 and 1950 and men born between 1923 and 1945 and living in Malmö were invited to participate. The examination included was as follows: assessment of dietary habits using a modified diet history method; assessment of socio-economic, demographic and lifestyle factors; medication and diet supplement use; previous and current diseases using an extensive self-administered questionnaire. Medication use was also reported during seven consecutive days. Leisure-time physical activity was obtained from a list of different physical activities in the questionnaire (eighteen items) that were adapted from the Minnesota Leisure Time Physical Activity Instrument(Reference Taylor, Jacobs and Schucker12). The subjects were asked to estimate the number of minutes per week, and for each of the four seasons, they spent performing eighteen different physical activities. The duration of each activity was multiplied by an intensity factor, creating a leisure-time physical activity score. The ability of the physical activity questionnaire to rank individuals was examined among 369 subjects against an accelerometer. Spearman's correlation coefficients between the two methods were 0·35 in men and 0·24 in women(Reference Li, Aronsson and Hedblad13). Nurses conducted anthropometric measurements, measured blood pressure and collected blood (non-fasting samples). Weight was measured to the nearest 0·1 kg by trained project staff members using a balance beam scale, with subjects wearing light clothing and no shoes; height was measured with a fixed stadiometer calibrated in centimetres. BMI was defined as the weight (kg) divided by the square of height (m2).

Between 1991 and 1994, 6103 subjects were randomly selected from the cohort to participate in a cardiovascular subcohort where additional examinations of cardiovascular risk factors were performed, including fasting lipid levels according to the standard procedures. Fasting plasma samples were obtained from 5540 subjects and stored at − 80°C. Of these individuals, 4751 had information for all lipoprotein subfractions. After excluding individuals using lipid-lowering therapy (n 116), those with a history of myocardial infarction or stroke identified through local and national registries (n 99), those with a history of diabetes (self-reported diagnosis or use of diabetes medication) (n 131) and those without dietary data (n 130), 4301 subjects remained and constituted the study sample of the present study. The MDC study was conducted according to the guidelines laid down in the Declaration of Helsinki and were approved by the ethics committee at Lund University. Written informed consent was obtained from all participants.

Dietary data

The modified diet history method specifically designed for the MDC study(Reference Callmer, Riboli and Saracci14) is a combination of the following: (1) a 7 d food diary that collected information on cooked lunches and dinner meals, cold beverages, and diet supplements and (2) a 168-item dietary questionnaire covering foods regularly consumed during the past year. The subjects estimated frequencies of food intake, and usual portion sizes were assessed using a booklet of photographic aids. During a 1 h interview, the subjects were asked questions about food choices, food preparation practices and portion sizes of the foods collected in the food diary (using a more extensive book of photos). The interviewer also checked the food diary and dietary questionnaire for overlapping information, as well as for very high reported intakes. The average daily intake of foods was calculated based on the information available in the food diary (and interview) and the questionnaire. The average daily food intake was converted to nutrient intake data using the MDC food and nutrition database specifically developed for the MDC study and originating from PC KOST2-93 of the Swedish National Food Administration, Uppsala, Sweden.

The dietary variables (both from diet and supplements) examined in the present study were as follows: total energy (kJ/d; including energy from fat, carbohydrates, protein, alcohol and dietary fibre); percentage of energy (E%; from non-alcohol and non-fibre energy intake) from fat, protein, carbohydrates, monosaccharides, disaccharides, complex carbohydrates, SFA, MUFA, PUFA, n-3 PUFA and n-6 PUFA; fibre density (g/1000 kJ); cholesterol intake (mg/1000 kJ); alcohol intake (energy percentage from total energy intake). Complex carbohydrates were calculated from total carbohydrate intake minus monosaccharides and disaccharides; n-3 PUFA were calculated as the sum of α-linolenic, eicosapentaenoic, docosahexaenoic and docosapentaenoic acid; n-6 PUFA were calculated as the sum of linoleic and arachidonic acid. The relative validity of the dietary method has been presented earlier(Reference Riboli, Elmstahl and Saracci15) and was examined among 105 women and 101 men; 18 d of weighed food records (3 d every second month) collected over 1 year was used as the reference method. In summary, energy-adjusted Pearson's correlations were in the range of 0·53–0·80, except for PUFA among men with a correlation of 0·26.

We identified individuals who potentially reported non-adequate energy intake by comparing the individually estimated physical activity level (total energy expenditure divided by BMR), with energy intake divided by BMR. This procedure has been described in detail elsewhere(Reference Mattisson, Wirfalt and Aronsson16). Total energy expenditure was calculated from self-reported information on physical activity at work, leisure-time physical activity, household work, estimated sleeping hours, self care and passive time; BMR was calculated from age, weight and height as recommended by the WHO(17). Non-adequate energy reporters were defined as those with a ratio of reported energy intake to BMR outside the 95 % confidence limits of the calculated physical activity level(Reference Black18).

Ion mobility measurement of lipoprotein subfractions

An ion mobility method was used to directly quantify the full spectrum of lipoprotein subfraction particles, from the small, dense HDL particles to the large, buoyant VLDL particles, in archived baseline plasma samples. This method uses an ion separation/particle detector system that separates ions by size and which can count lipoprotein particles over a wide range of sizes. A full description of this technique has been published elsewhere(Reference Caulfield, Li and Lee19, Reference Caulfield, Li and Lee20). For the present analyses, HDL particles were divided into small (7·7–10·5 nm) and large (10·6–14·5 nm) subfractions. LDL particles were divided into very small (18·0–20·8 nm), small (20·9–21·4 nm), medium (21·5–22·0 nm) and large (22·1–23·3 nm) subfractions. Intermediate-density lipoprotein particles were divided into small (23·4–25·0 nm) and large (25·1–29·6 nm) subfractions. VLDL particles were divided into small (29·7–33·5 nm), medium (33·6–42·4 nm) and large (42·5–52·0 nm) subfractions. Particle diameter of the major LDL peak was also determined.

Statistical analyses

All statistical analyses were performed using the Statistics Package for Social Sciences (version 16.0; SPSS, Chicago, IL, USA). Dietary factors and lipoprotein subfractions were transformed logarithmically to normalise the distributions. Partial correlations between dietary factors, conventional lipid measures (LDL-C, HDL-C and TAG) and lipoprotein subfractions were computed. Sex-specific analyses were performed due to known large differences in subfraction levels between men and women(Reference Williams, Vranizan and Krauss21). In the multivariate model, we adjusted for age, total energy intake, smoking (yes/no), leisure-time physical activity (sex-specific quartiles) and BMI. Correlations with P < 0·01 were considered significant.

We used principal component analysis to capture independent clusters of lipoprotein subfractions; the calculation has been described in detail earlier(Reference Musunuru, Orho-Melander and Caulfield4). The principal component vectors were used to calculate values for each individual from the sum of weighted terms for each lipoprotein or lipid, with each term being the product of the vector-derived weighting and the particle concentrations minus subfraction mean, divided by the standard deviation from the subfraction. The principal component (PC) corresponding to the ALP, PC2, was divided into sex-specific quartiles. ANOVA was used to test mean differences in dietary intakes. In the multivariate model, we adjusted for age, sex, total energy intake, smoking habits, leisure-time physical activity and BMI. All analyses were repeated excluding potential misreporters, i.e. individuals who were classified as non-adequate energy reporters.

Results

Participant characteristics for males and females are shown in Table 1. Tables 2, 3 and Tables S1 and S2 (supplementary material for this article can be found at http://www.journals.cambridge.org/bjn) show the correlations between each dietary factor and the specific lipoprotein subfractions in men and women after adjusting for age, energy intake, BMI, smoking and leisure-time physical activity.

Table 1 Participant characteristics of men and women in the Malmö Diet and Cancer-cardiovascular subcohort

(Mean values and standard deviations)

LDL-C, LDL-cholesterol; HDL-C, HDL-cholesterol; IDL-L, large intermediate-density lipoprotein; IDL-S, small intermediate-density lipoprotein; LDL-L, large LDL; LDL-M, medium LDL; LDL-S, small LDL; LDL-VS, very small LDL; HDL-L, large HDL; HDL-S, small HDL; E%, percentage of energy.

Table 2 Partial correlations between dietary factors, conventional lipid measures and lipoprotein subfractions among men in the Malmö Diet and Cancer-cardiovascular subcohort

HDL-C, HDL-cholesterol; LDL-C, LDL-cholesterol; LDL-VS, very small LDL; LDL-S, small LDL; LDL-M, medium LDL; LDL-L, large LDL.

* P < 0·01.

Adjusted for age, energy, BMI, smoking (yes/no) and leisure-time physical activity (sex-specific quartiles).

Dietary variables are expressed as percentage of energy from non-alcohol and non-fibre energy intake (protein, fat and carbohydrate), g/1000 kJ (fibre), mg/1000 kJ (cholesterol) or percentage of energy from total energy intake (alcohol).

Table 3 Partial correlations between dietary factors, conventional lipid measures and lipoprotein subfractions among women in the Malmö Diet and Cancer-cardiovascular subcohort

HDL-C, HDL-cholesterol; LDL-C, LDL-cholesterol; LDL-VS, very small LDL; LDL-S, small LDL; LDL-M, medium LDL; LDL-L, large LDL.

* P < 0·01.

Adjusted for age, energy, BMI, smoking (yes/no) and leisure-time physical activity (sex-specific quartiles).

Dietary variables are expressed as percentage of energy from non-alcohol and non-fibre energy intake (protein, fat and carbohydrate), g/1000 kJ (fibre), mg/1000 kJ (cholesterol) or percentage of energy from total energy intake (alcohol).

Concerning LDL, a positive correlation was observed between fat intake and LDL-C in men (Table 2). Total fat, saturated and n-3 polyunsaturated fat intake were significantly positively correlated with large LDL particles, but not with other LDL fractions. Carbohydrate intake was negatively associated with large LDL particle concentrations, but no significant correlations were observed for other LDL fractions, although a tendency of positive correlation was observed between intake of disaccharides and small (r 0·04, P = 0·10) and medium LDL particle concentrations (r 0·05, P = 0·05). In addition, fibre density was inversely correlated with very small, small and medium LDL particles in men (Table 2). In women, neither LDL-C nor any of the LDL subfractions were significantly correlated with fat or carbohydrate intakes. However, we observed a positive association between LDL particle peak diameter and fat intake (especially SFA and MUFA) and an inverse association with disaccharide intake (Table 3).

For HDL, we observed similar results for men and women. Fat intake (particularly SFA, MUFA and n-3 PUFA) was positively correlated with HDL-C, while disaccharide intake was negatively correlated with HDL-C. The other carbohydrates (monosaccharides and complex carbohydrates) showed no significant correlation with HDL-C. While alcohol was positively correlated with both HDL-C, and small and large HDL particles among men, we observed a positive correlation only with HDL-C and large HDL particles among women. The correlation coefficients were almost identical when excluding suspected non-adequate reporters of energy or in models without adjusting for BMI and leisure-time physical activity (data not shown).

By using principal component analysis, we have earlier identified three independent components that explained 76 % of the variance among the subfractions(Reference Musunuru, Orho-Melander and Caulfield4). The first component (PC1), with LDL and VLDL subfractions as the strongest contributors and marginal association with CVD risk(Reference Musunuru, Orho-Melander and Caulfield4), showed no clear association with dietary factors between sexes (see Table S1 of the supplementary material, available online at http://www.journals.cambridge.org/bjn). The third component (PC3), with HDL as the strongest contributor and significantly associated with decreased CVD risk only among men(Reference Musunuru, Orho-Melander and Caulfield4), was associated with a lower intake of disaccharides in both men and women. In addition, PC3 was associated with significantly higher protein and alcohol intake among men (see Table S1 of the supplementary material, available online at http://www.journals.cambridge.org/bjn).

The PC corresponding to the ALP (PC2) in sex-specific quartiles is shown in Table 4. This pattern was characterised by higher concentrations of very small, small and medium LDL particles, and TAG, and lower concentration of HDL particles. On average, BMI was higher among those in the highest quartile compared with those in the lowest quartile (26·8 v. 24·6 kg/m2; P for trend < 0·001). PC2 was significantly inversely associated with intakes of fat (39·2 v. 38·6 E% for the lowest and highest quartiles, respectively; P for trend = 0·01), protein (16·0 v. 15·5 E%; P < 0·001), cholesterol (37·8 v. 36·5 mg/1000 kJ; P for trend = 0·002) and alcohol (3·9 v. 2·9 E%; P for trend < 0·001), but positively associated with intake of disaccharides (12·1 v. 13·1 E%; P for trend < 0·001). To identify those dietary factors that show independent association with the ALP, we adjusted for protein, disaccharides or alcohol intake. The association with fat was no longer significant when adjusted for disaccharide intakes (P = 0·93), and the association with cholesterol became attenuated when taking protein (P = 0·08) or disaccharide intake (P = 0·07) into account. The associations between PC2 and protein, disaccharide, and alcohol intake remained significant even after these adjustments. Associations were similar for men and women with significant differences across quartiles of the ALP pattern for protein, disaccharides and alcohol observed for both sexes.

Table 4 Characteristics* and dietary composition (mean or frequency) according to the atherogenic lipoprotein phenotype (ALP) pattern among men and women in the Malmö Diet and Cancer-cardiovascular subcohort

LDL-C, LDL-cholesterol; HDL-C, HDL-cholesterol; HDL-S, small HDL; HDL-L, large HDL; LDL-VS, very small LDL; LDL-S, small LDL; LDL-M, medium LDL; LDL-L, large LDL; IDL-S, small intermediate-density lipoprotein; IDL-L, large intermediate-density lipoprotein; E%, percentage of energy.

* Adjusted for age and sex.

Adjusted for age, sex, total energy intake, smoking habits, leisure-time physical activity (sex-specific quartiles) and BMI.

The ALP pattern was divided into sex-specific quartiles and then combined.

Discussion

In the present large Swedish cohort study, subjects with a lipoprotein pattern corresponding to the ALP had higher intakes of disaccharides and lower intakes of protein and alcohol. Moreover, the present results show that in men, fat intake was positively correlated with large LDL particles, but not with other LDL fractions, and that a high fat intake was associated with an on average greater LDL particle size in women.

Overall, we observed low correlations between dietary variables and lipoprotein subfractions (r < 0·19). The strongest correlation was observed for alcohol intake and HDL-C. This is in line with established dose-dependent effects of alcohol on HDL-C that have consistently been observed in both experimental and observational studies(Reference Rimm, Williams and Fosher22). Both lipoprotein subfraction concentrations and the self-reported dietary intakes are prone to measurement errors. The ion mobility method for measuring lipoprotein subfraction concentrations is unique in its capability of directly determining concentrations of the full spectrum of lipoprotein particles, from small HDL to large VLDL, as a function of their particle size(Reference Caulfield, Li and Lee19, Reference Otvos, Rudel and McConnell23); however, lipoprotein concentrations were based on a single blood sample. The correlation between self-reported dietary intakes and blood measurements seems to depend on the type of dietary assessment method used and its quality(Reference Bingham, Luben and Welch24). Bingham et al. (Reference Bingham, Luben and Welch24) compared dietary intakes from different diet methods with biomarkers, including LDL-C and HDL-C, and observed a lower correlation with the FFQ than with food records. However, timing of blood samples and diet assessment is critical if the biomarker is sensitive to recent intake(Reference Willett25). In the MDC study, median time between diet assessment and the collection of fasting blood samples was 0·7 years (with a maximum of 2·9 years). Although diet history methods are proposed to reflect usual diet, we would expect the correlations to be higher if the time of diet assessment and blood samples were nearer in time. The concentrations of lipoproteins clearly differ between sexes, as well as the dietary intake levels, but the relative validity and reproducibility of diet data was generally higher for women compared with men(Reference Riboli, Elmstahl and Saracci15, Reference Elmstahl, Gullberg and Riboli26).

By using a principal component analysis, a data-driven unsupervised statistical procedure designed to capture independent clusters of lipoprotein subfractions, we have earlier demonstrated in the present cohort that one of the components (PC2) closely matching the ALP was associated with a 22 (95 % CI 8, 36) % increased risk for CVD per standard deviation(Reference Musunuru, Orho-Melander and Caulfield4). Although the diet method did not permit determination of the usage of sweeteners in cakes, candies and some beverages, or the varying amounts of sugars in jam, marmalade and desserts, compared with the other examined macronutrients, we found a relatively strong association between disaccharide intake and the atherogenic lipoprotein profile (12·1 and 13·1 E% in the lowest v. highest quartile of the ALP; P for trend < 0·001). Sucrose, composed of half fructose and half glucose, is the main disaccharide in the Swedish diet(Reference Becker and Pearson27), and probably the main source of fructose in Sweden. Fructose has been shown to have an adverse effect on the lipoprotein profile(Reference Stanhope, Schwarz and Keim28). For example, an experimental study by Stanhope et al. (Reference Stanhope, Schwarz and Keim28) that compared diets with 25 % of energy from fructose or glucose during 8 weeks demonstrated that only fructose increased small LDL particle concentrations. We also observed a significant inverse association between protein intakes and the ALP. This is in line with the results from several weight-loss intervention trials where high-protein diets compared with low-protein diets generated better lipoprotein patterns despite similar weight loss(Reference Lasker, Evans and Layman29, Reference Farnsworth, Luscombe and Noakes30).

Previous analyses in the MDC cohort showed highly significant associations between small/medium LDL particles and CVD, whereas large LDL particles showed no relationship with CVD risk(Reference Musunuru, Orho-Melander and Caulfield4). These findings are consistent with the results of other large prospective cohort studies(Reference Rosenson, Otvos and Freedman31Reference Kuller, Arnold and Tracy36). The convincing evidence that increased saturated fat consumption raises LDL-C levels(Reference Mensink and Katan37) has contributed to the conclusion that diets high in saturated fat are atherogenic. However, direct evidence for the contribution of saturated fat per se to CVD risk is inconclusive(Reference Siri-Tarino, Sun and Hu38). The present findings indicating that dietary saturated fat selectively increases the levels of large, more cholesterol-enriched LDL particles are in line with earlier observations(Reference Dreon, Fernstrom and Campos9). For example, in the context of a carbohydrate-reduced diet (26 % of the energy from carbohydrates), the increased level of LDL-C induced by higher v. lower dairy fat intake was primarily due to an increase in large, buoyant LDL particles with no increase in small, dense LDL particles(Reference Krauss, Blanche and Rawlings39). However, it has to be kept in mind that the impacts of different fat types are difficult to separate as they are found in the same foods. For example, intakes of saturated and monounsaturated fats are highly correlated in the MDC cohort.

Trans-fatty acids, i.e. unsaturated fatty acids with at least one double bond in the trans configuration, are known to increase LDL-C concentrations(Reference Mozaffarian, Aro and Willett40), and one limitation of the present study is that we have no information on intake of trans-fatty acids. The major part of trans-fatty acids are 18 : 1 and thus here included in the group of MUFA. By grouping them together, the putative beneficial effects of MUFA on lipid levels previously observed(Reference Sacks and Katan7) can be expected to be counteracted by the harmful effect of trans-fatty acids.

We could not confirm the hypothesis that simple carbohydrates would be the main determinants of small LDL particle concentrations, although the negative association between disaccharides and LDL peak size indicates a shift to smaller LDL particles with a high intake of disaccharides. Carbohydrates, in particular sugars and rapidly metabolised starches, promote both increased hepatic secretion and reduced peripheral clearance of large, TAG-rich lipoproteins that are thought to generate small, dense LDL particles(Reference Krauss41). In the present study, complex carbohydrate intake showed no adverse association with lipoprotein concentrations. In addition, fibre intake was associated with lower levels of small/medium LDL particles in men, which is interesting as intake of soluble fibre, for example β-glucans, is known to decrease LDL-C levels(Reference Brown, Rosner and Willett42). Small LDL particle concentration was not associated with large differences in dietary intakes in the present study. This is in contrast to another cross-sectional study comprising seventy-seven sedentary but healthy men where for example PUFA and fibre intakes (estimated using 3-d dietary records) correlated negatively and cholesterol intake positively with small, but not with large, LDL particles(Reference Williams, Krauss and Kindel-Joyce43).

Both genetic and environmental factors are involved in the development of dyslipidaemia. However, studies examining the interaction between diet and specific genetic variants on lipids and lipoprotein subfraction levels are limited, with most of them only focusing on a small number of genes(Reference Krauss41, Reference Wu, Bowman and Welch44). Recent genome-wide association studies have identified numerous gene regions contributing to dyslipidaemia and the risk of CVD(Reference Kathiresan, Willer and Peloso45Reference Kathiresan, Melander and Guiducci47). The major challenge and opportunity in the future is to utilise such genetic information and their interactions with dietary factors to further understand predisposition to atherogenic dyslipidaemia and ultimately to CVD risk.

In conclusion, the present study shows that a diet limited in disaccharides and with a moderate alcohol and protein intake is associated with a less atherogenic lipoprotein profile. In order to fully understand the observed associations, examination of food groups and food patterns is needed. The use of a so-called dietary portfolio (i.e. food with plant sterols, soluble fibres, soya protein, and almonds) has been particularly successful in lowering cholesterol levels, including small LDL particles(Reference Jenkins, Kendall and Faulkner48, Reference Lamarche, Desroches and Jenkins49), and points towards a focus on foods instead of nutrients. In addition, it is important to directly examine the influence of these dietary factors on the risk of diseases, such as CVD, because the dietary influence on disease development is more complex than simply affecting blood lipids.

Acknowledgements

The present study was supported by the Lund University Diabetes Center (LUDC), the Swedish Medical Research Council, the Swedish Heart and Lung Foundation, the Region Skåne, the Malmö University Hospital, the Albert Påhlsson Research Foundation and the Crafoord foundation. The authors' responsibilities were as follows: E. S. conducted the statistical analysis and wrote the manuscript; B. G. assisted with the statistical analyses; all authors contributed to the analytic design, data interpretation, revision of the manuscript and final approval of the manuscript. R. M. K. is co-inventor on a licensed patent for ion mobility analysis of lipoproteins. None of the other authors had any conflict of interest.

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Figure 0

Table 1 Participant characteristics of men and women in the Malmö Diet and Cancer-cardiovascular subcohort(Mean values and standard deviations)

Figure 1

Table 2 Partial correlations† between dietary factors‡, conventional lipid measures and lipoprotein subfractions among men in the Malmö Diet and Cancer-cardiovascular subcohort

Figure 2

Table 3 Partial correlations† between dietary factors‡, conventional lipid measures and lipoprotein subfractions among women in the Malmö Diet and Cancer-cardiovascular subcohort

Figure 3

Table 4 Characteristics* and dietary composition† (mean or frequency) according to the atherogenic lipoprotein phenotype (ALP) pattern among men and women in the Malmö Diet and Cancer-cardiovascular subcohort

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