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A combined high-sugar and high-saturated-fat dietary pattern is associated with more depressive symptoms in a multi-ethnic population: the HELIUS (Healthy Life in an Urban Setting) study

Published online by Cambridge University Press:  20 July 2017

Esther Vermeulen*
Affiliation:
Department of Public Health, Academic Medical Centre, University of Amsterdam, Amsterdam Public Health Research Institute, Meibergdreef 9, 1105 AZ Amsterdam, The Netherlands
Karien Stronks
Affiliation:
Department of Public Health, Academic Medical Centre, University of Amsterdam, Amsterdam Public Health Research Institute, Meibergdreef 9, 1105 AZ Amsterdam, The Netherlands
Marieke B Snijder
Affiliation:
Department of Public Health, Academic Medical Centre, University of Amsterdam, Amsterdam Public Health Research Institute, Meibergdreef 9, 1105 AZ Amsterdam, The Netherlands Department of Clinical Epidemiology, Biostatistics and Bioinformatics, Academic Medical Centre, University of Amsterdam, Amsterdam, The Netherlands
Aart H Schene
Affiliation:
Program for Mood Disorders, Department of Psychiatry, Academic Medical Centre, University of Amsterdam, Amsterdam, The Netherlands Department of Psychiatry, Radboud University Medical Centre, Nijmegen, The Netherlands Donders Institute for Brain, Cognition and Behaviour, Radboud University Nijmegen, Nijmegen, The Netherlands
Anja Lok
Affiliation:
Program for Mood Disorders, Department of Psychiatry, Academic Medical Centre, University of Amsterdam, Amsterdam, The Netherlands
Jeanne H de Vries
Affiliation:
Division of Human Nutrition, Wageningen University, Wageningen, The Netherlands
Marjolein Visser
Affiliation:
Department of Health Sciences, Faculty of Earth & Life Sciences, Vrije Universiteit Amsterdam, Amsterdam Public Health Research Institute, The Netherlands Department of Nutrition and Dietetics, Internal Medicine, VU University Medical Centre, Amsterdam Public Health Research Institute, Amsterdam, The Netherlands
Ingeborg A Brouwer
Affiliation:
Department of Health Sciences, Faculty of Earth & Life Sciences, Vrije Universiteit Amsterdam, Amsterdam Public Health Research Institute, The Netherlands
Mary Nicolaou
Affiliation:
Department of Public Health, Academic Medical Centre, University of Amsterdam, Amsterdam Public Health Research Institute, Meibergdreef 9, 1105 AZ Amsterdam, The Netherlands
*
*Corresponding author: Email e.vermeulen@amc.uva.nl
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Abstract

Objective

To identify a high-sugar (HS) dietary pattern, a high-saturated-fat (HF) dietary pattern and a combined high-sugar and high-saturated-fat (HSHF) dietary pattern and to explore if these dietary patterns are associated with depressive symptoms.

Design

We used data from the HELIUS (Healthy Life in an Urban Setting) study and included 4969 individuals aged 18–70 years. Diet was assessed using four ethnic-specific FFQ. Dietary patterns were derived using reduced rank regression with mono- and disaccharides, saturated fat and total fat as response variables. The nine-item Patient Health Questionnaire (PHQ-9) was used to assess depressive symptoms by using continuous scores and depressed mood (identified using the cut-off point: PHQ-9 sum score ≥10).

Setting

The Netherlands.

Results

Three dietary patterns were identified; an HSHF dietary pattern (including chocolates, red meat, added sugars, high-fat dairy products, fried foods, creamy sauces), an HS dietary pattern (including sugar-sweetened beverages, added sugars, fruit (juices)) and an HF dietary pattern (including high-fat dairy products, butter). When comparing extreme quartiles, consumption of an HSHF dietary pattern was associated with more depressive symptoms (Q1 v. Q4: β=0·18, 95 % CI 0·07, 0·30, P=0·001) and with higher odds of depressed mood (Q1 v. Q4: OR=2·36, 95 % CI 1·19, 4·66, P=0·014). No associations were found between consumption of the remaining dietary patterns and depressive symptoms.

Conclusions

Higher consumption of an HSHF dietary pattern is associated with more depressive symptoms and with depressed mood. Our findings reinforce the idea that the focus should be on dietary patterns that are high in both sugar and saturated fat.

Type
Research Papers
Copyright
Copyright © The Authors 2017 

Depression is a mental disorder that is pervasive in the world and a major contributor to the global burden of disease( Reference Marcus, Yasamy and van Ommeren 1 ). In the Netherlands, ethnic minority groups have a higher depression prevalence compared with the Dutch host population, with the highest prevalence among Turkish and Moroccan ethnic groups( Reference Verweij and Houben-van Harten 2 , Reference Ikram, Snijder and Fassaert 3 ). Because depression has a negative impact on people’s functioning and is often recurrent or chronic, prevention of depression is a high priority in public health globally.

There is a growing body of evidence that diet may contribute to preventing depressive symptoms( Reference Martinez-Gonzalez and Sanchez-Villegas 4 , Reference Sanchez-Villegas and Martinez-Gonzalez 5 ). Healthy dietary patterns, including foods that are high in fibre (such as vegetables, fruits and whole grains), may be associated with lower depressive symptoms( Reference Jacka, O’Neil and Opie 6 Reference Miki, Eguchi and Kurotani 8 ). In contrast, unhealthy Western dietary patterns are implicated to be associated with depressive symptoms, although the evidence is equivocal( Reference Akbaraly, Brunner and Ferrie 9 Reference Rienks, Dobson and Mishra 14 ). This could be due to differences in the use of dietary measurements or food group classification. Furthermore, there are differences in the measurement of depressive symptoms as some studies used self-reported scales (e.g. CES-D (Center for Epidemiologic Studies Depression Scale), PHQ-9 (nine-item Patient Health Questionnaire), GHQ (General Health Questionnaire)) whereas other studies used a clinical diagnosis for depression. Therefore, more studies are needed to allow a robust interpretation of the results( Reference Lai, Hiles and Bisquera 7 ). Foods that are characteristic of a Western dietary pattern have high levels of refined carbohydrates and saturated fat. In a study by Sanchez-Villegas et al. a positive association was found between the intake of saturated fat and depressive symptoms( Reference Sanchez-Villegas, Verberne and De Irala 15 ). Four other studies investigating the intake of sugar in relation to depressive symptoms, by studying sugar-sweetened beverages( Reference Westover and Marangell 16 ), high-energy sweet foods( Reference Jeffery, Linde and Simon 17 ) and the glycaemic index( Reference Mwamburi, Liebson and Folstein 18 , Reference Gangwisch, Hale and Garcia 19 ) and depressive symptoms, found a significant positive association( Reference Westover and Marangell 16 Reference Gangwisch, Hale and Garcia 19 ). However, translating these findings to dietary advice is not straightforward. Restriction of one macronutrient implies an increased intake of another macronutrient to maintain energy balance, potentially leading to exacerbation of risk. For example, recent research revealed that substituting saturated fat by refined carbohydrates (as was done in recent decades in response to dietary guidelines limiting fat intake) showed no improvement or even worsening of the risk of CVD( Reference Siri-Tarino, Chiu and Bergeron 20 , Reference Jakobsen, Dethlefsen and Joensen 21 ). Because CVD and depression share common underlying mechanisms, such as increased production of pro-inflammatory cytokines and endothelial dysfunction( Reference Poole, Dickens and Steptoe 22 , Reference Valkanova and Ebmeier 23 ), it is of interest to further investigate the relative contribution of saturated fat and refined carbohydrates (specifically sugar) in overall dietary patterns to the risk of depressive symptoms.

One way to investigate this issue is by performing reduced rank regression (RRR) as this method derives overall dietary patterns and allows the investigation of the independent contributions of specific nutrients in these dietary patterns. The advantage of RRR is that it accounts for total dietary intake of the study participants and the derived dietary pattern is closely related to the outcome measure due to inclusion of intermediate response variables( Reference Ambrosini, Emmett and Northstone 24 Reference Weikert and Schulze 26 ).

The objective of our study was to identify a high-sugar (HS) dietary pattern, a high-saturated-fat (HF) dietary pattern and a combined high-sugar and high-saturated-fat (HSHF) dietary pattern and to explore if these dietary patterns are associated with depressive symptoms in a multi-ethnic Western population. In this population, heterogeneity is present due to differences in nutritional intake across ethnic groups, with ethnic minority populations consuming more high-sugar snacks but generally having a lower intake of saturated fat compared with the Dutch ethnic group( Reference Brussaard, van Erp-Baart and Brants 27 Reference Dijkshoorn, Nierkens and Nicolaou 29 ). Consequently, we can capture the more extreme intakes of various dietary patterns, thereby being able to differentiate between our exposure: dietary patterns with diverse macronutrient compositions.

Materials and methods

Participants and design

The HELIUS (Healthy Life in an Urban Setting) study is a large, multi-ethnic cohort study which aims to unravel the causes of the unequal burden of disease and included Surinamese, Turkish, Moroccan and Dutch ethnic groups living in Amsterdam, the Netherlands( Reference Stronks, Snijder and Peters 30 ). Participants, aged 18–70 years, were randomly recruited, stratified by ethnicity, through the municipality registry of Amsterdam. Ethnicity was defined according to the country of birth of the participant as well as that of his/her parents( Reference Simon 31 ). We accounted for South-Asian Surinamese and African Surinamese separately due to differences in characteristics, which were classified according to self-reported ethnic origin. Data were collected by questionnaire (either self-administered or by a trained ethnically matched interviewer) and a physical examination, which was conducted by trained research staff (research assistants and nurses) according to standardized protocols, at one of the local research sites of HELIUS( Reference Stronks, Snijder and Peters 30 ). Baseline data collection took place from 2011 until 2015 among nearly 25 000 participants, and was carried out by the Academic Medical Centre and the Public Health Service of Amsterdam. The current study is a sub-sample of the HELIUS study and included 5188 participants who completed an additional ethnic-specific FFQ( Reference Dekker, Snijder and Beukers 32 ). Participants were excluded when no data were available on depressive symptoms (n 26) or on demographics (n 193). All study protocols were approved by the Academic Medical Centre Ethical Review Board, and all participants provided written informed consent.

Depressive symptoms assessment

Depressive symptoms were assessed using the PHQ-9, a self-administered questionnaire that is used to estimate depressive symptoms over the previous two weeks and consists of nine items( Reference Kroenke, Spitzer and Williams 33 ). Response categories of the nine items vary from never (coded as ‘0’) to nearly every day (coded as ‘3’) with a total sum score ranging from 0 to 27. When only one of the nine items was missing, we imputed the mean of the other eight items. Within the HELIUS study population, the PHQ-9 was found to be measurement invariant regarding ethnicity and could therefore be validly used to compare depressive symptoms across ethnic groups (root-mean-squared error of approximation=0·983, comparative fit index=0·054; H Galenkamp, K Stronks, MB Snijder et al., unpublished results). We used the continuous PHQ-9 sum score as an outcome measure, hereafter referred to as ‘depressive symptoms’, as well as a dichotomous outcome variable (PHQ-9 sum score ≥10), hereafter referred to as ‘depressed mood’. This specific cut-off point has been previously validated( Reference Manea, Gilbody and McMillan 34 , Reference Wittkampf, Naeije and Schene 35 ) and showed a sensitivity and specificity of 0·88 in primary-care patients( Reference Kroenke, Spitzer and Williams 33 ).

Dietary intake assessment

Four ethnic-specific FFQ, for Dutch, Surinamese, Turkish and Moroccan ethnic groups, were used to collect usual dietary intake information and were specially developed for the HELIUS study using an existing Dutch FFQ( Reference Beukers, Dekker and de Boer 36 ). Each FFQ included questions on the portion size and frequency of approximately 200 food items eaten during the past month. For each FFQ, a nutrient database was constructed based on the Dutch Food Composition Table 2014( 37 ). Data on ethnic-specific foods were based on information from food packaging, international food composition data, data from recipe calculations and chemically analysed at Wageningen University by taking multiple samples of each food which were mixed for analysis; these samples were based on brand and different sale locations( Reference Beukers, Dekker and de Boer 36 ). We used a single FFQ for the South-Asian Surinamese and African Surinamese group because of similarities in commonly eaten foods( Reference van Dam and Nicolau 38 ).

Dietary pattern analysis

RRR is a statistical method that identifies patterns in a set of predictor variables (food groups) that explain the maximum variation in another set of variables known as response variables (nutrients or biomarkers), which are hypothesized to be intermediates between the food groups and a health outcome( Reference Hoffmann, Schulze and Schienkiewitz 25 ). The mathematical foundations and technique of RRR are quite similar to principal component analysis. The major difference between RRR and principal component analysis is that the latter aims to explain the maximum variation in the food groups whereas RRR aims to explain the maximum variation in the intermediate response variables( Reference Weikert and Schulze 26 ). RRR starts from a linear function of the selected nutrients, called response scores, that will then be projected on to the space of the food groups to produce a factor score that is a linear function of the food groups. These factor scores (dietary pattern scores) were used for further analyses. As response variables, the nutrients mono- and disaccharides (g/d), saturated fatty acids (g/d) and total fatty acids (g/d) were used. All response variables were log-transformed because they were not normally distributed. As predictor variables, forty-six food groups (of which eight were ethnic-specific food groups) were composed based on nutrient profile, specific culinary use and, where relevant, ethnicity. For example, avocado was included as separate ethnic-specific group because it was assessed only in the Surinamese FFQ and the nutrient content of avocado (especially the fat content) is different compared with the foods that are included in the vegetables group. An overview of the composed food groups can be found in the online supplementary material, Supplemental Table 1. Dietary pattern scores were treated as continuous scores and as quartiles in all regression models. Higher scores and increasing quartiles reflect higher intakes of the food groups that are characteristic for the dietary patterns. Detailed information on the RRR procedure and the SAS code PLS is given elsewhere( Reference Hoffmann, Schulze and Schienkiewitz 25 ).

Measurement of covariates

The following covariates were considered as potential confounders: age (years), sex, ethnicity (Dutch, South-Asian Surinamese, African Surinamese, Turkish and Moroccan), marital status (married/registered partnership or living together, unmarried, divorced/separated or widowed), employment status (employed, not part of labour force (students, retirees, housewives/househusbands), unemployed (seeking work or incapacitated)), Dutch norm of physical activity (30 min of moderate exercise at least 5 d/week (yes or no)), smoking status (current smoker, never smoker, former smoker), energy intake (based on FFQ data in kJ/d), BMI based on measured height and weight (kg/m2), prevalent CVD according to the ROSE questionnaire (yes or no), self-reported hypertension (a reply of ‘yes’ to the question: ‘Has a doctor or other health worker ever diagnosed you with hypertension?’ Individuals were classified as having hypertension according to the WHO diagnostic criteria: systolic blood pressure ≥140 mmHg/diastolic blood pressure ≥90 mmHg or use of blood pressure-lowering medication (yes or no)) and self-reported type 2 diabetes mellitus (a reply of ‘yes’ to the question: ‘Has a doctor or other health worker ever diagnosed you with diabetes?’ Individuals were classified as having diabetes mellitus type 2 according to the WHO diagnostic criteria: fasting blood glucose ≥7 mmol/l and/or use of glucose-lowering medication (yes or no)).

Statistical analysis

Descriptive analyses were performed to get more insight into the baseline characteristics of the study population by using percentages for categorical variables and means and standard deviations for continuous variables. Multivariable linear regression models were applied to examine the cross-sectional association of continuous scores and quartiles of the HS dietary pattern, the HF dietary pattern and the HSHF dietary pattern with log-transformed depressive symptom sum scores as a continuous outcome measure. Additionally, logistic regression models were used to investigate the association between continuous scores and quartiles of all three dietary patterns and depressed mood as a dichotomous outcome (PHQ-9 sum score ≥10; P<0·05 was considered as being statistically significant). Depressive symptom scores were log-transformed sum scores +1, because the sum score was skewed to the right with a minimum of 0. To check whether the diet–depression relationship was similar among ethnic groups and sex, the interaction between ethnicity and diet and between sex and diet was tested and was found to be significant for ethnicity and diet (P<0·05). We chose to perform the regression analyses for the whole population including the interaction term of ethnicity × dietary pattern score, thereby maintaining the power of the sample size. Potential confounders (covariates that are listed previously) were included in the analyses when they changed the association between the dietary pattern score and depressive symptoms significantly (P<0·05). Model 1 was adjusted for age, sex, ethnicity × dietary pattern score and ethnicity; model 2 was additionally adjusted for marital status, employment status, physical activity and energy intake; and in model 3 we additionally adjusted for BMI, CVD and diabetes. Smoking status and hypertension were not included in the final models because they did not change the diet–depression relationship significantly. Additionally, alcohol intake was not considered separately, as it was included as a predictor variable in the RRR analyses. To facilitate interpretations of the findings we back-transformed the β coefficients using the following equation: (e β – 1).

In sensitivity analyses, we excluded participants with extreme energy intakes (n 749) by using cut-off points according to Goldberg et al.( Reference Goldberg, Black and Jebb 39 , Reference Black 40 ). We applied this method because it takes account of the cut-off points on an individual level rather than on a population level. As the between-subject variation in physical activity and energy intake is known to be high, applying the Goldberg cut-off may reduce bias( Reference Black 40 ). Under-reporters were participants with an energy intake<(BMR×physical activity level (PAL)) with PAL at a value of ≤0·87 and over-reporters were participants with an energy intake>BMR×PAL, with PAL>2·75. Furthermore, for the HS dietary pattern we further adjusted for dietary fibre intake and the healthier foods (fruit, low-fat dairy products) that were characteristic for the HS dietary pattern. Finally, we repeated RRR two times: first, we aimed to identify an HS dietary pattern by including mono- and disaccharides as single response variable; and second, we aimed to identify an HF dietary pattern by including saturated fatty acids as single response variable. By performing these additional dietary pattern analyses, we wanted to get more insight into whether it is possible to disentangle the effects of separate macronutrients into dietary patterns. The dietary pattern analyses were conducted in the statistical software package SAS version 9.4 and remaining statistical analyses were carried out using IBM SPSS Statistics version 21.

Results

Baseline characteristics of the study population

In total, we included 4969 participants with complete data for analyses. Baseline characteristics are presented in Table 1. The mean BMI was 26·7 kg/m2 and the mean energy intake was 9243 kJ/d for the study population. On average, the study participants consumed 105 g mono- and disaccharides/d and 27 g saturated fat/d. Finally, the mean depressive symptoms score was 5.

Table 1 Baseline characteristics of the study population in the HELIUS (Healthy Life in an Urban Setting) study, Amsterdam, the Netherlands, 2011–2015

HSHF dietary pattern, combined high-sugar and high-saturated-fat; HS, high-sugar; HF, high-saturated-fat; PHQ-9, nine-item Patient Health Questionnaire.

* Higher dietary pattern scores indicate higher consumption of the food groups that are characteristic for the dietary patterns.

A higher PHQ-9 score means higher depressive symptoms.

Depressed mood is defined as PHQ-9 sum score ≥10.

Dietary pattern analysis

By using RRR, three dietary patterns were extracted. The first factor represented a dietary pattern that was positively associated with all three response variables and was labelled as ‘HSHF dietary pattern’ (high loadings of chocolates, sweets and pastries, red meat, added sugars, high-fat dairy products, fried foods, creamy sauces). The second factor represented a dietary pattern that was positively associated with mono- and disaccharides and negatively associated with saturated fatty acids and total fatty acids, and was labelled as ‘HS dietary pattern’ (high loadings of sugar-sweetened beverages, added sugars, fruit, fruit juices and very low loadings of red meat). The third dietary pattern was positively associated with saturated fatty acids and negatively associated with mono- and disaccharides and total fatty acids, being represented by high loadings of butter and high-fat dairy products and by very low loadings of vegetable oils, nuts and seeds, peanut butter and vegetables. This dietary pattern was labelled as ‘HF dietary pattern’ (Table 2). The explained variation in the response variables was highest for the HSHF dietary pattern (60 %), but was lower in the HS dietary pattern (11 %) and very low in the HF dietary pattern (1 %).

Table 2 Food groupsFootnote * with their corresponding factor loadings derived by reduced rank regression with the percentage explained variation and correlation coefficients in the HELIUS (Healthy Life in an Urban Setting) study, Amsterdam, the Netherlands, 2011–2015

HSHF dietary pattern, combined high-sugar and high-saturated-fat; HS, high-sugar; HF, high-saturated-fat.

* The presented food groups with absolute factor loadings of ≥0·20 were interpreted as being characteristic for the dietary patterns.

Linear regression analysis between dietary pattern scores and depressive symptoms

Higher scores on the HSHF dietary pattern were significantly associated with higher depressive symptoms. Due to logarithmic transformation of the PHQ-9 scale score, regression coefficients should be interpreted as follows: in model 3 (fully adjusted model), one-unit increase of the continuous dietary pattern score was related to an increase of 8 % on the PHQ-9 score. When comparing extreme quartiles, an increase of 18 % on the PHQ-9 scores was observed (Table 3). No statistically significant association was observed between continuous scores or when comparing extreme quartiles of the HS dietary pattern or the HF dietary pattern and depressive symptoms in the fully adjusted models (Table 3).

Table 3 Regression coefficients and 95 % CI for the association between the continuous dietary pattern scores and depressive symptoms sum score in the HELIUS (Healthy Life in an Urban Setting) study, Amsterdam, the Netherlands, 2011–2015

HSHF dietary pattern, combined high-sugar and high-saturated-fat; HS, high-sugar; HF, high-saturated-fat.

Model 1: adjusted for ethnicity, ethnicity×dietary pattern score, age and gender.

Model 2: adjusted for model 1 and for marital status, employment status, physical activity and energy intake.

Model 3: adjusted for model 2 and for CVD, diabetes and BMI.

* Regression coefficients are log-transformed.

Logistic regression analysis between dietary pattern scores and depressed mood

We present the association between quartiles and continuous scores of dietary patterns with depressed mood (PHQ-9 sum score ≥10) in Table 4. When we compared extreme quartiles, the HSHF dietary pattern was associated with a 2·36 higher odds of depressed mood. When using continuous dietary pattern scores, one-unit increase of the HSHF dietary pattern was associated with a 1·54 higher odds of depressed mood. Again, no statistically significant association was observed between the HS dietary pattern or the HF dietary pattern and depressed mood after full adjustment for confounders (Table 4).

Table 4 Odds ratios and 95 % CI for the association between the continuous dietary pattern scores and depressed moodFootnote * in the HELIUS (Healthy Life in an Urban Setting) study, Amsterdam, the Netherlands, 2011–2015

HSHF dietary pattern, combined high-sugar and high-saturated-fat; HS, high-sugar; HF, high-saturated-fat; PHQ-9, nine-item Patient Health Questionnaire.

Model 1: adjusted for ethnicity, ethnicity×dietary pattern score, age and gender.

Model 2: adjusted for model 1 and for marital status, employment status, physical activity and energy intake.

Model 3: adjusted for model 2 and for CVD, diabetes and BMI.

* Depressed mood is defined as PHQ-9 sum score ≥10.

Sensitivity analysis

In sensitivity analyses, 749 participants were considered as having extreme energy intakes and were therefore excluded from the analyses. Associations became slightly weaker between the continuous scores of the HSHF dietary pattern and depressive symptoms in all models, but no significant changes were observed (fully adjusted model: β=0·07, 95 % CI 0·01, 0·12, P=0·014). Additionally, after full adjustment for confounders, no major changes were observed in the HS dietary pattern (β=−0·01, 95 % CI −0·06, 0·04, P=0·749) and the HF dietary pattern (β=−0·02, 95 % CI −0·07, 0·02, P=0·749). Finally, we compared extreme quartiles and no changes were observed in the results between any of the dietary patterns and depressive symptoms (data not shown). When we repeated the analyses without extreme energy intakes for depressed mood, again no differences were observed in the continuous scores as well as quartiles in any of the dietary patterns (data not shown).

Furthermore, since the HS dietary pattern revealed high loadings of low-fat dairy products and fruit (high in dietary fibre), we additionally adjusted for fibre intake (g/d) due to its possible protective effect on depressive symptoms( Reference Miki, Eguchi and Kurotani 8 ). Further adjustments were made by including fruit (g/d) and low-fat dairy products (g/d) as confounders. After adjustment for fibre and low-fat dairy intake, no changes were observed in the association, whereas after additional adjustment for fruit intake, the association between the HS dietary pattern and depressive symptoms became positive, but significance was not reached (data not shown).

Finally, RRR analyses were repeated two times by first including mono- and disaccharides as the single response variable (67 % of the variation was explained by mono- and disaccharides) and this dietary pattern was represented by high intakes of sugar-sweetened beverages, natural fruit juices, added sugars, chocolates, sweets and pastries, low- and high-fat dairy products, fruit and savoury snacks. Second, we included saturated fatty acids as the single response variable and a dietary pattern high in red meat, chocolates, sweets and pastries, high-fat dairy products, butter, pasta, potatoes and fast foods was identified (71 % of the variation was explained by saturated fatty acids). Overall, both dietary patterns resembled high intakes of food groups that were both high in sugar and saturated fat and were therefore similar to the HSHF dietary pattern from our main analyses. In other words, we were not able to obtain a dietary pattern that distinguished between sugar and saturated fat when including a single response variable.

Discussion

In the present study, we investigated whether consuming an HS dietary pattern, an HF dietary pattern or an HSHF dietary pattern was associated with depressive symptoms among a multi-ethnic population living in Amsterdam, the Netherlands. We found that consumption of the HSHF dietary pattern was associated with significantly higher depressive symptoms and depressed mood. In contrast, no significant associations were found between consumption of either the HS dietary pattern or the HF dietary pattern and depressive symptoms or depressed mood.

Our findings suggest that a dietary pattern containing high-sugar and high-saturated-fat foods increases depressive symptoms. A plausible mechanism for this increase in depressive symptoms is that an HSHF dietary pattern, which is close to a Western dietary pattern, might be related to higher inflammatory levels in the body and CHD, which in turn are both indicated to increase depressive symptoms( Reference Akbaraly, Brunner and Ferrie 9 , Reference Le Port, Gueguen and Kesse-Guyot 10 , Reference Valkanova and Ebmeier 23 , Reference Lopez-Garcia, Schulze and Fung 41 ). To our knowledge, the present study is the first that has (i) analysed a combined high-sugar and high-saturated-fat dietary pattern that was identified by RRR and (ii) evaluated the separate effect of sugar and saturated fat in one study in relation to depressive symptoms and depressed mood in a multi-ethnic population.

Previous studies investigated Western dietary patterns that were high in both sugar and saturated fat in relation to depressive symptoms, of which three studies found a significant positive relationship between a Western dietary pattern and depressive symptoms( Reference Akbaraly, Brunner and Ferrie 9 Reference Jacka, Pasco and Mykletun 11 ), whereas three other studies observed a positive relationship between a Western dietary pattern and depressive symptoms, although not statistically significant( Reference Jacka and Berk 12 Reference Rienks, Dobson and Mishra 14 ). These differences in findings may be explained by differences in the measurement of dietary intake and depressive symptoms( Reference Lai, Hiles and Bisquera 7 ).

By using RRR, we were able to obtain dietary patterns that distinguished between high-sugar and high-saturated-fat food groups; however, we found no association between either the HS dietary pattern or the HF dietary pattern and depressive symptoms or depressed mood. Both these dietary patterns included a restricted number of foods and one may argue whether these food groups reflect a dietary pattern. Furthermore, both dietary patterns explained a small variation of the total food intake (explained variation of the HS dietary pattern was 11 % while the explained variation of the HF dietary pattern was only 1 %), although the explained variation of 11 % is quite common while the first factor usually explains the highest amount of variation in the response variables compared with the remaining extracted factors( Reference Weikert and Schulze 26 ). Our findings reflect that it is impractical to distinguish the contribution of individual macronutrients to the association between diet and health because most foods, especially processed foods, are often high in sugar as well as in saturated fat. This was confirmed in our sensitivity analysis in which we conducted RRR using only mono- and disaccharides as the response variable and afterwards only saturated fatty acids as the response variable. In both cases we identified a dietary pattern with food groups that are high in both sugar and saturated fat. Furthermore, extreme energy intake did not seem to explain the association between dietary patterns and depressive symptoms since no substantial changes were observed for the association between any of the dietary patterns and depressive symptoms after we excluded participants with extreme energy intakes.

Due to differences in macronutrient intakes across ethnic groups in the Netherlands (Surinamese consume more sugar whereas Dutch consume more foods that are high in both sugar and saturated fat)( Reference Brussaard, van Erp-Baart and Brants 27 , Reference van Dam and Nicolau 38 , Reference Palsma, Van Dam and Stronks 42 , 43 ), heterogeneity is present. The high variety of dietary intakes in these ethnic groups can be an advantage because with this heterogeneity we can capture the more extreme intakes of various diets. Thereby we were able to differentiate between dietary patterns with diverse macronutrient compositions. This could be considered a strength of our study. Using RRR to derive dietary patterns could be considered another strength of the study. By using RRR, we were able to investigate the independent contributions of different nutrients in overall dietary patterns that are closely related to our outcome measure and which are representative for our study population.

Several limitations need to be acknowledged as well. Due to the cross-sectional design of the current study, no causal inferences can be made and reverse causation cannot be ruled out. More specifically, it might be that participants who are depressed eat more unhealthy foods that are both high in sugar and saturated fat, so depression may cause unhealthy eating and not the other way around( Reference Sanchez-Villegas and Martinez-Gonzalez 5 ). Furthermore, FFQ are memory-based self-report questionnaires. People tend to under-report unhealthy food items which in turn may lead to lower observed energy intakes. Thereby, the observed association is likely to be underestimated. Another limitation is that we did not use a clinical diagnosis of depression but the subjective PHQ-9 questionnaire. A previous study observed a sensitivity of 88 % (when using a cut-off point of ≥10)( Reference Kroenke, Spitzer and Williams 33 ), which indicates that 12 % of depression cases may go undetected. However, the PHQ-9 has shown to be a valid screening instrument to measure depressive symptoms previously in different ethnic populations( Reference Manea, Gilbody and McMillan 34 , Reference Wittkampf, Naeije and Schene 35 , Reference Baas, Cramer and Koeter 44 ).

Implications of findings

Based on these results, it can be indicated that the consumption of high-sugar and high-saturated-fat foods (as part of the HSHF dietary pattern) should be replaced by more nutrient-dense foods such as wholegrain products, fatty fish, fruit and vegetables, to lower depressive symptoms. The high levels of antioxidants (fruit and vegetables), fibre (whole grains) and n-3 fatty acids (fatty fish) in these foods may lower oxidative stress levels as well as inflammation, which in turn may decrease depression( Reference Lopez-Garcia, Schulze and Fung 41 , Reference Sarandol, Sarandol and Eker 45 ). Thereby a healthy dietary pattern could act as a health promotor in relation to depressive symptoms. Although these recommendations are the same for all ethnic groups, the intake of ethnic-specific foods, as part of the dietary patterns, may differ among ethnic groups and should be taken into account in dietary guidelines.

Conclusion

In this multi-ethnic population, higher consumption of a HSHF dietary pattern (high loadings of chocolates, sweets and pastries, red meat, added sugars, high-fat dairy products, fried foods, creamy sauces) was associated with higher depressive symptoms and depressed mood, whereas no association was found for either the HS dietary pattern or the HF dietary pattern. Above all, our findings reinforce the idea that it is not attainable to disentangle the effects of single macronutrients in studying diet and disease relationships. Therefore, no clear conclusions can be drawn concerning the independent contribution of an HS dietary pattern or an HF dietary pattern in relation to depressive symptoms. Additionally, it is important for future studies to focus on overall dietary patterns containing foods that are high in both sugar as well as saturated fat, instead of focusing on separate macronutrients. However, the results need to be interpreted with caution due to the cross-sectional nature of the study and therefore longitudinal studies and experimental trials are needed to confirm these results.

Acknowledgements

Acknowledgements: The authors are most grateful to the participants of the HELIUS study and the management team, research nurses, interviewers, research assistants and other staff who have taken part in gathering the data for this study. Financial support: The HELIUS study is conducted by the Academic Medical Center Amsterdam and the Public Health Service of Amsterdam. Both organizations provided core support for HELIUS. The HELIUS study is also funded by the Dutch Heart Foundation, the Netherlands Organization for Health Research and Development (ZonMw), the European Union (FP7) and the European Fund for the Integration of non-EU immigrants (EIF). This work was additionally supported by the EU FP7 MooDFOOD Project ‘Multi-country cOllaborative project on the rOle of Diet, FOod-related behaviour, and Obesity in the prevention of Depression’ (grant number 613598). The funders had no role in the design, analysis or writing of this article. Conflict of interest: None. Authorship: The authors’ responsibilities were as follows. E.V.: analytic design, data analysis, manuscript preparation and had primary responsibility for final content; M.N.: analytic design, interpretation of the results and critical review of the manuscript; K.S., M.V. and I.A.B.: interpretation of the results and critical review of the manuscript; M.B.S., A.H.S., A.L. and J.H.d.V.: critical review of the manuscript. All authors have read and approved the final manuscript. Ethics of human subject participation: All study protocols were approved by the Academic Medical Centre Ethical Review Board, and all participants provided written informed consent.

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Figure 0

Table 1 Baseline characteristics of the study population in the HELIUS (Healthy Life in an Urban Setting) study, Amsterdam, the Netherlands, 2011–2015

Figure 1

Table 2 Food groups* with their corresponding factor loadings derived by reduced rank regression with the percentage explained variation and correlation coefficients in the HELIUS (Healthy Life in an Urban Setting) study, Amsterdam, the Netherlands, 2011–2015

Figure 2

Table 3 Regression coefficients and 95 % CI for the association between the continuous dietary pattern scores and depressive symptoms sum score in the HELIUS (Healthy Life in an Urban Setting) study, Amsterdam, the Netherlands, 2011–2015

Figure 3

Table 4 Odds ratios and 95 % CI for the association between the continuous dietary pattern scores and depressed mood* in the HELIUS (Healthy Life in an Urban Setting) study, Amsterdam, the Netherlands, 2011–2015

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