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Adherence to the Swedish dietary guidelines and the impact on mortality and climate in a population-based cohort study

Published online by Cambridge University Press:  03 July 2023

Anna Strid
Affiliation:
Department of Internal Medicine and Clinical Nutrition, The Sahlgrenska Academy, University of Gothenburg, SE-405 30 Gothenburg, Sweden
Elinor Hallström
Affiliation:
Department of Agriculture and Food, Research Institutes of Sweden (RISE), Lund, Sweden
Anna Karin Lindroos
Affiliation:
Department of Internal Medicine and Clinical Nutrition, The Sahlgrenska Academy, University of Gothenburg, SE-405 30 Gothenburg, Sweden Department of Risk and Benefit Assessment, Swedish Food Agency, Uppsala, Sweden
Bernt Lindahl
Affiliation:
Sustainable Health, Department of Public Health and Clinical Medicine, Umeå University, Umeå, Sweden
Ingegerd Johansson
Affiliation:
Department of Odontology, Umeå University, Umeå, Sweden
Anna Winkvist*
Affiliation:
Department of Internal Medicine and Clinical Nutrition, The Sahlgrenska Academy, University of Gothenburg, SE-405 30 Gothenburg, Sweden Sustainable Health, Department of Public Health and Clinical Medicine, Umeå University, Umeå, Sweden
*
*Corresponding author: Email anna.winkvist@nutrition.gu.se
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Abstract

Objective:

To assess the associations between adherence to the Swedish dietary guidelines and all-cause mortality (i.e. assessing the index’ ability to predict health outcomes), as well as levels of dietary greenhouse gas emissions (GHGEs).

Design:

A longitudinal study 1990–2016 within the population-based cohort Västerbotten Intervention Programme. Dietary data were based on FFQs. Diet quality was assessed by the Swedish Healthy Eating Index for Adults 2015 (SHEIA15), based on the 2015 Swedish dietary guidelines. Dietary GHGEs were estimated from life cycle assessment data including emissions from farm to industry gate. Hazard ratios (HR) and 95 % CI of all-cause mortality were evaluated with Cox proportional hazards regression, and differences in median GHGEs were tested between quintiles of SHEIA15 score using the Kruskal–Wallis one-way ANOVA test.

Setting:

Northern Sweden.

Participants:

In total, 49 124 women and 47 651 men, aged 35–65 years.

Results:

Median follow-up times were 16·0 years for women and 14·7 years for men, during which time 3074 women and 4212 men died. A consistent trend of lower all-cause mortality HR for both sexes with higher SHEIA15 scores was demonstrated. For women, the all-cause mortality HR was 0·81 ((95 % CI 0·71, 0·92); P = 0·001) and for men 0·90 ((95 % CI 0·81, 0·996); P = 0·041) between the quintile with the highest SHEIA15 score compared with the quintile with the lowest SHEIA15 score. A consistent trend of lower estimated dietary GHGEs among both sexes with higher SHEIA15 scores was also found.

Conclusions:

Adherence to Swedish dietary guidelines, estimated by SHEIA15, seems to promote longevity and reduce dietary climate impact.

Type
Research Paper
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution and reproduction, provided the original article is properly cited.
Copyright
© The Author(s), 2023. Published by Cambridge University Press on behalf of The Nutrition Society

A large part of the noncommunicable disease burden in the world is related to poor dietary habits(1). This implies that improvements in public health through lifestyle changes are possible and necessary. To aid the prevention of chronic diseases and the promotion of public health by healthy diets, over 100 countries in the world have developed national food-based dietary guidelines (FBDGs)(2). These FBDGs build on existing scientific evidence with an adaptation to the dietary habits, nutritional status, food culture and food availability of the specific country(2). Several countries have also recognised the opportunity and responsibility to incorporate further aspects of sustainability in their FBDGs(3), and in 2019, FAO and WHO published guiding principles to support and encourage this undertaking(4). One of the first countries integrating environmental aspects in their FBDGs, in addition to nutritional and public health aspects, was Sweden in 2015(5). This was facilitated by the Swedish Food Agency, publisher of the Swedish FBDGs, having responsibility of both public health and environmental objectives.

To enable assessments of adherence to the FBDGs in a specific population, indices assessing different aspects of dietary intake are proposed as useful tools in epidemiologic research(Reference Guerrero and Pérez-Rodríguez6,Reference Ocké7) . However, a large number of diet quality indices exist in the literature, and the choices made in regard to the development of these indices, such as food items or nutrients included, cut-off values used and scoring method have been deemed subjective and arbitrary(Reference Waijers, Feskens and Ocké8). Hence, these diet quality indices need to be validated(Reference Ocké7).

To assess the adherence to the 2015 Swedish FBDGs, including both health and environmental aspects, Moraeus et al. developed a diet quality index in 2020(Reference Moraeus, Lindroos and Warensjö Lemming9). However, the suggested diet quality index has not yet been validated to assure the ability to predict health and environmental outcomes. Hence, there were two objectives of the current study. The first objective was to assess the association between the proposed diet quality index developed to estimate adherence to the 2015 Swedish FBDGs, the Swedish Healthy Eating Index for Adults 2015 (SHEIA15), and all-cause mortality, thus assessing the index’ ability to predict health outcomes. The second objective was to investigate the differences in greenhouse gas emissions (GHGEs) from diets of participants with increasing adherence to the 2015 Swedish FBDGs, according to SHEIA15, to learn if there are possible gains in climate of following the 2015 Swedish FBDGs.

Subjects and methods

Study design and study participants

The Västerbotten Intervention Programme (VIP) is a population-based prospective cohort study in northern Sweden, where inhabitants in Västerbotten are invited to their regular health care centre for health check-ups(Reference Norberg, Wall and Boman10). The baseline study visits include standardised assessments of anthropometrics, measurement of blood pressure (after a 5-min rest), drawing of blood samples (after a ≥ 4-h fast) and an extensive questionnaire on diet, lifestyle and socio-economic factors. More information on the study design of VIP can be found in Norberg et al.(Reference Norberg, Wall and Boman10). For the present study, VIP participants undergoing their baseline visit between 1990 and 2016 were included. During that time period, 107 484 subjects contributed to 158 484 observations. Only one observation per subject was included in the analyses. To ensure reliable data, the following exclusion criteria were employed: (i) if the reporting of food intake was incomplete (≥ 10 % missing intake data and/or missing portion size recording); (ii) a height < 130 cm or > 210 cm; (iii) a body weight < 35 kg; (iv) a BMI < 15 kg/m2 or data missing; (v) age < 35 or > 65 years and (vi) food intake levels < 1st or > 99th percentiles(Reference Schofield11). Figure 1 presents a flow chart from inclusion of participants in VIP during the period of 1990–2016, to the final study group in the current study.

Fig. 1 Flow chart from inclusion of participants in the Västerbotten Intervention Programme with their baseline study visit 1990–2016, to the final study group in the current study. Participants in the final study group in the current study are presented as non-cases and cases of all-cause mortality separated by gender.

Dietary assessment

Self-reported dietary data were provided by 49 124 women and 47 651 men on their baseline visit using a semi-quantitative retrospective FFQ that referred to the intake of both single food items and food groups the previous twelve months. During the study period (1990–2016), two versions of the FFQ have been used. Before 1996, eighty-four questions on food intake were included, and after 1996, the FFQ was reduced to sixty-four questions by merging similar foods from the earlier version and removing more uncommon foods(Reference Hörnell, Winkvist and Hallmans12). Approximately 28 % of the participants in the current study answered the longer FFQ version and 72 % answered the shorter version. Intakes reported by the two different FFQs have been harmonised. Estimation of portion sizes was either aided by four pictures of increasing portion sizes of protein sources (fish and/or meat), staple foods (pasta, rice and/or potato) and vegetables, or by fixed sizes (e.g. fruit), or age and gender-specific portion sizes(Reference Norberg, Wall and Boman10). Ten repeated 24-h recalls in 195 of the study participants was performed to validate the longer FFQ version(Reference Johansson, Hallmans and Wikman13).

Estimation of nutrient density of diets

Daily energy intake and nutrient intake levels were estimated with data from the national food composition database at the Swedish Food Agency (https://soknaringsinnehall.livsmedelsverket.se/). The reported food intake referred to prepared food when relevant. Estimation of intake of added sugars was based on unpublished data informed by the Swedish Food Agency, calculated according to a method comprising ten steps by Wanselius et al.(Reference Wanselius, Axelsson and Moraeus14). Energy adjustment of nutrient intakes was performed to 2000 kcal per day for women and 2500 kcal per day for men, to correct for expected underreporting of dietary intake and to enable assessment of quality of the diet rather than quantity of the diet. We have previously estimated the underreporting among the VIP participants to be 47 % for women and 44 % for men, respectively, as judged by a food intake level (reported energy intake divided by estimated BMR) below 1·2(Reference Johansson, Wikman and Ahrén15).

Diet quality was assessed by SHEIA15, which was originally developed for adolescents by Moraeus et al.(Reference Moraeus, Lindroos and Warensjö Lemming9), with calculations adapted from Knudsen et al.(Reference Knudsen, Fagt and Trolle16). SHEIA15 is based on the Nordic Nutrition Recommendations from 2012 (NNR 2012) and the most recent Swedish dietary guidelines from 2015(5,17) . SHEIA15 includes nine components, of which six are positive components (vegetables and fruit, seafood, whole grains, dietary fibre, MUFA, and PUFA) and three are negative components (SFA, red and processed meat, and added sugar). SHEIA15 is built by calculating the ratio of the reported intake and the recommended intake of each component. Recommended intakes for women and men and information on the calculation of each component are displayed in Table 1. By calculating ratios, all intakes are considered. Ratio values above 1 and below 0 are recoded to 1 and 0. The scores of the individual components are summed to a total score with a minimum of zero and a maximum of nine, where nine indicates the highest adherence to the 2015 Swedish FBDGs.

Table 1 Components of the Swedish Healthy Eating Index for Adults 2015 (SHEIA15), associated recommended intakes and calculation of the SHEIA15 score

E%, percent of total energy.

The table is adapted from Moraeus et al.(Reference Moraeus, Lindroos and Warensjö Lemming9)

* Based on the Swedish food-based dietary guidelines from 2015.

Based on the Nordic Nutrition Recommendations 2012.

§ Based on Becker W, Busk L, Mattisson I et al. (2012) Råd om fullkorn 2009 – bakgrund och vetenskapligt underlag. (Guidelines about wholegrains 2009 – background and scientific basis) (in Swedish). NFA report no. 102 012. Uppsala.

** Based on 2–3 times per week with a portion size of 125 g.

Estimation of dietary GHGE

A more detailed description of the estimation of dietary GHGEs of all participants in VIP during the years 1990–2016 can be found elsewhere(Reference Strid, Johansson and Bianchi18). In brief, life cycle assessment data from the Research Institutes of Sweden Food and Climate Database was used to estimate GHGEs. GHGEs were expressed as kg carbon dioxide equivalents (CO2e) per kg edible food product(19,20) and referred to prepared food when relevant. GHGEs included were from farm to industry gate. The daily dietary GHGEs was adjusted for energy intake for all study participants and is expressed as kg CO2e per 2000 kcal for women and kg CO2e per 2500 kcal for men.

Non-dietary variables

The baseline standardised health screening and the questionnaire on lifestyle and socio-economic factors provided all information on non-dietary variables, and a more extensive description can be found in Norberg et al.(Reference Norberg, Wall and Boman10). Importantly, the weight and height of the participants were measured in standardised methods, and BMI was calculated (kg/m2). BMI was further classified into underweight (< 18·5), normal weight (18·5–25·0), overweight (> 25·0–30·0) and obese (> 30·0). The validated Cambridge Index of Physical Activity was used to assess physical activity(Reference Peters, Brage and Westgate21), which was separated into (i) inactive, (ii) moderately inactive, (iii) moderately active and (iv) active, based on both working hours and leisure time. Level of education was separated into three categories: (i) basic level of 9 years of school; (ii) high school and (iii) university. Smoking status was separated into three categories; (i) currently smoking; (ii) have smoked and (iii) not smoking.

Assessment of all-cause mortality

All-cause mortality data was attained by linking the VIP participants using personal identification numbers to the ‘Cause of death’ registers at the National Board of Health and Welfare in Sweden (https://www.socialstyrelsen.se/statistik-och-data/register/). Here, all causes of death in Sweden are included.

Data processing and statistical analyses

The participants were separated into quintiles of SHEIA15 score, ranked within age groups at baseline (35–44 years, 45–54 years and 55–65 years) within each gender. Quintile one had the lowest SHEIA15 score, and hence the lowest adherence to the 2015 Swedish FBDGs, and quintile five had the highest SHEIA15 score, and hence the highest adherence to the 2015 Swedish FBDGs. All analyses were stratified on gender.

Multivariable Cox proportional hazards regression was used to evaluate the association between adherence to the 2015 Swedish FBDGs, assessed by SHEIA15, and all-cause mortality. Hazard ratios (HR) and 95 % CI of all-cause mortality between the reference group quintile one and quintiles two to five were estimated. The follow-up time, i.e. the months between the baseline study visit (1990–2016) and death (cases) or end of the study period (31 December 2016) (non-cases), was used as the measurement of time in the Cox analyses. Age and age squared were included as potential confounders in the basic model. The purposeful selection method for model building(Reference Bursac, Gauss and Williams22), also called the Bursac method, was performed to test for potential confounders and thus to select covariates for the multivariable Cox regression analysis. All covariates that were indicated as potential confounders by the Bursac method overall for either women or men were included in the final adjusted model. Hence, in the adjusted models, age, age squared, BMI, educational level, physical activity, smoking status and year of study participation were included as potential confounders. The proportional hazards assumption was assured for the fully adjusted model.

To evaluate the differences in dietary GHGEs of participants with increasing adherence to the 2015 Swedish FBDGs, i.e. increasing SHEIA15 score, the non-parametric Kruskal–Wallis one-way ANOVA test was performed on the quintiles of SHEIA15. Pairwise comparisons of dietary GHGEs between all quintiles were tested with the Dunn post hoc test, and the significance values were adjusted by the Bonferroni correction for multiple tests. The non-parametric Jonckheere Trend test was further performed to test for a trend between the SHEIA15 quintiles and dietary GHGEs.

Sensitivity analyses were performed to assess whether the associations seen in the Cox analyses and the Kruskal–Wallis one-way ANOVA tests were driven by a single component of the SHEIA15 score. This was done by excluding the components of the SHEIA15 one at a time. The Cox analyses were performed on the continuous scale of SHEIA15 and analyses of median GHGE were performed between quintile one and quintile five with the Mann–Whitney U test.

Descriptive statistics were used to define differences in baseline characteristics between non-cases and all-cause mortality cases (Table 2), as well as between the quintiles of SHEIA15 score (online Supplementary Tables 12). Descriptive statistics were also used to define differences between the quintiles of SHEIA15 score in the reported food intakes and estimated nutrient intake of the nine components of the SHEIA15 (online Supplementary Tables 34).

Table 2 Baseline characteristics of participating women and men (n 96 775) in the population-based prospective cohort Västerbotten Intervention Programme between 1990 and 2016, separated by non-cases and all-cause mortality cases during follow-up

The table is adapted from Strid et al(Reference Johansson, Wikman and Ahrén15).

* Adjusted for age and year of study participation.

For statistical analyses, SPSS version 28.0.1.1 (IBM SPSS Statistics) was used. The significance level was set at P < 0·05, unless otherwise stated. The median value and the first and third quartiles values are used to present non-normally distributed variables, and the mean value and sd are used to present normally distributed variables.

Results

Study participants

During 1990–2016, 54 620 women and 52 864 men participated in VIP, and of those participants 49 124 women and 47 651 men were included in the current study (Fig. 1). Median follow-up times were 16·0 years for women and 14·7 years for men, during which time 3074 women and 4212 men died, respectively. Approximately 36 % of the women and 27 % of the men reported an educational level up to and including university among the non-cases, and the corresponding figures for the cases were 15 % for the women and 14 % for the men. Further, almost 20 % of the women and 18 % of the men among the non-cases reported that they were currently smoking at baseline, and the corresponding figures for the cases were 34 % for the women and 31 % for the men (Table 2).

SHEIA15 and all-cause mortality

Statistically significantly lower all-cause mortality hazards were found for women in all quintiles of SHEIA15 score compared with quintile one, with a range from the highest quintile (HR 0·81 (95 % CI 0·71, 0·91); P = 0·001) to the second lowest quintile (HR 0·86 (95 % CI 0·78, 0·95); P = 0·004) (Table 3). Statistically significantly lower all-cause mortality hazards were also found for men in quintiles five (HR 0·90 (95 % CI 0·81, 0·996); P = 0·041), four (HR 0·88 (95 % CI 0·80, 0·97); P = 0·009) and two (HR 0·90 (95 % CI 0·82, 0·98); P = 0·019) of SHEIA15 score, compared with quintile one (Table 3). In sensitivity analyses where the components of SHEIA15 were excluded one at a time, the results were robust, indicating that no single component of SHEIA15 was more important than the others (Table 4).

Table 3 Hazard ratios (HR) and 95 % CI for all-cause mortality of women (n 49 124) and men (n 47 651) classified into quintiles according to their diet quality estimated by SHEIA15*

* The women and men were participants in the population-based Västerbotten Intervention Programme during the period 1990–2016. HR, 95 % CI and P values estimated by the Cox proportional hazards regression. Diet quality is estimated by the Swedish Healthy Eating Index for Adults (SHEIA15), which is based on the adherence to the Swedish dietary guidelines from 2015. Ranking into quintiles was adjusted by age groups (35–44 years, 45–54 years and 55–65 years). Quintile 1 is the lowest quintile and Quintile 5 the highest quintile. The SHEIA15 score has been energy adjusted to 2000 kcal for women and 2500 kcal for men.

Basic model is adjusted for age and age squared.

Adjusted model is adjusted for age, age squared, BMI, physical activity, educational level, smoking status and year of participation.

Table 4 Hazard ratios (HR) and 95 % CI for all-cause mortality of women and men with their diet quality estimated by SHEIA15 and the effect of the exclusion of components from the index*

* The women and men were participants in the population-based Västerbotten Intervention Programme during the period 1990–2016. HR, 95 % CI and P values estimated by the Cox proportional hazards regression. Diet quality is estimated by the Swedish Healthy Eating Index for Adults (SHEIA15), which is based on the adherence to the Swedish dietary guidelines from 2015 and includes nine components. The SHEIA15 score has been energy adjusted to 2000 kcal for women and 2500 kcal for men. The model is adjusted for age, age squared, BMI, physical activity, educational level, smoking status and year of participation.

SHEIA15 and GHGEs

Statistically significantly lower estimated dietary GHGEs were found for both women and men with an increasing SHEIA15 score (P < 0·001); medians ranging between 2·9–3·2 kg CO2e/2000 kcal and day for women and 3·4–4·1 kg CO2e/2500 kcal and day for men. All pairwise comparisons of differences in dietary GHGEs between all quintiles were also highly significant (P < 0·001), except for quintile four compared with quintile five for the women (P = 0·061) (Table 5). The trend tests between the SHEIA15 quintiles and dietary GHGEs were also highly significant (P < 0·001). In sensitivity analyses where the components of the SHEIA15 were excluded one at a time, analyses of differences in median GHGEs between quintile one and quintile five of SHEIA15 score were shown to be robust, except for when the component red and processed meat was excluded from the index (Table 6). Here, the median GHGEs for quintile one was slightly higher and the median GHGEs for quintile five was lower when red and processed meat was excluded from the index compared to when included, especially for the men where differences between quintile one and quintile five in dietary GHGEs now were non-significant (P = 0·073) (Table 6).

Table 5 Median dietary GHGEs for women (n 49 124) and men (n 47 651) classified into quintiles according to their diet quality estimated by SHEIA15*

Abbreviations: GHGEs, greenhouse gas emissions; CO2e, carbon dioxide equivalents.

* The women and men were participants in the population-based Västerbotten Intervention Programme during the period 1990–2016. Values are medians and 1st; 3rd quartiles. Diet quality is estimated by the Swedish Healthy Eating Index for Adults 2015 (SHEIA15), which is based on the adherence to the Swedish dietary guidelines from 2015. Ranking into quintiles was adjusted by age groups (35–44 years, 45–54 years and 55–65 years). Quintile 1 is the lowest quintile and Quintile 5 the highest quintile. The dietary GHGEs include emissions from farm to industry gate and have been energy adjusted to 2000 kcal for women and 2500 kcal for men.

Differences between quintiles were tested using the non-parametric Kruskal–Wallis one-way ANOVA test. Pairwise comparisons of differences in GHGEs between all quintiles were P < 0·001, except for quintile 3 compared with quintile 4 for the women (P = 0·061), tested with the Dunn post hoc test with significance values adjusted by the Bonferroni correction for multiple tests. The trend between the SHEIA15 quintiles and dietary GHGEs was P < 0·001, tested with the non-parametric Jonckheere Trend test.

Table 6 Median dietary GHGEs for women and men classified into quintiles according to their diet quality estimated by SHEIA15 and the effect of the exclusion of components from the index *

Abbreviations: GHGEs, greenhouse gas emissions; CO2e, carbon dioxide equivalents.

* The women and men were participants in the population-based Västerbotten Intervention Programme during the period 1990–2016. Values are medians and 1st; 3rd quartiles. Diet quality is estimated by the Swedish Healthy Eating Index for Adults (SHEIA15), which is based on the adherence to the Swedish dietary guidelines from 2015 and includes nine components. The SHEIA15 score and dietary GHGEs have been energy adjusted to 2000 kcal for women and 2500 kcal for men. Ranking into quintiles was adjusted by age groups (35–44 years, 45–54 years and 55–65 years). Quintile 1 is the lowest quintile, and Quintile 5 is the highest quintile. The dietary GHGEs include emissions from farm to industry gate.

Differences between quintile one and quintile 5 were tested using the non-parametric Mann–Whitney U test.

Discussion

We had two aims with the current study. First, we aimed to assess the association between the proposed diet quality index SHEIA15, which was developed to estimate adherence to the 2015 Swedish FBDGs, and all-cause mortality, thus assessing the index’ ability to predict health outcomes. Second, we aimed to investigate the differences in dietary GHGEs of participants with increasing adherence to the 2015 Swedish FBDGs, according to SHEIA15, to learn if a higher adherence to the FBDGs is associated with lower dietary GHGEs. Importantly, we found a consistent trend of lower all-cause mortality HR for both women and men with higher SHEIA15 scores. We also found a consistent trend of lower estimated dietary GHGEs among women and men with higher SHEIA15 scores.

These consistent trends of lower all-cause mortality HR with increasing SHEIA15 scores suggest that SHEIA15 is a suitable index to assess diet quality among Swedish adults. Adherence to the 2015 Swedish FBDGs and association with all-cause mortality were simultaneously captured, suggesting that following the 2015 Swedish FBDGs is related to longevity. SHEIA15 has previously been proposed as an index to identify healthy dietary patterns and as a tool to capture overall diet quality among Swedish adolescents(Reference Moraeus, Lindroos and Warensjö Lemming9). The previous study by Moraeus et al. indicated that a higher SHEIA15 score was associated with significantly higher intakes of positive diet components, such as vegetables, wholegrains, fish, fibre and PUFA, and significantly lower intakes of negative diet components, such as added sugar, SFA and red and processed meat(Reference Moraeus, Lindroos and Warensjö Lemming9). Other diet quality indices assessing adherence to Swedish FBDGs have been developed previously and the indices’ associations with health outcomes have been assessed. In 2011, a diet quality index based on the 2005 Swedish Nutrition Recommendations and Swedish dietary guidelines called DQI-SNR was developed by Drake et al.(Reference Drake, Gullberg and Ericson23). The DQI-SNR is based on the six components SFA, PUFA, seafood, dietary fibre, fruit and vegetables and sucrose(Reference Drake, Gullberg and Ericson23). A higher index score was shown to be inversely associated with all-cause mortality and incidence of cardiovascular events among men, and with incidence of cardiovascular events among women, within the population-based Malmö Diet and Cancer cohort(Reference Drake, Gullberg and Sonestedt24,Reference Hlebowicz, Drake and Gullberg25) . In 2022, a diet quality index further building on the DQI-SNR but based on five components of the 2015 Swedish FBDGs (dietary fibre, fish, fruit and vegetables, added sugar and red and processed meat), called the Swedish Dietary Guidelines Score (SDGS), was shown to be inversely associated with stroke HR within the Malmö Diet and Cancer cohort(Reference González-Padilla, Tao and Sánchez-Villegas26). Hence, adherence to Swedish FBDGs seems to be related to positive health outcomes. Nevertheless, only the endpoint all-cause mortality was included in the Cox analyses in the current study, and associations with endpoints that are specifically dietary-related could thus be further assessed to ensure that SHEIA15 is a suitable indicator for healthy dietary patterns.

Increasing SHEIA15 scores were further associated with consistent trends of lower dietary GHGEs among both women and men in the current study, indicating that a higher adherence to the 2015 Swedish FBDGs is beneficial not only for longevity but also for climate sustainability. Similar results to ours were found in a population-based Dutch cohort study from 2017, investigating the associations between adherence to the 2015 Dutch dietary guidelines, estimated by the Dutch Healthy Diet index 2015 (DHD15-index), and dietary GHGEs, dietary land use and also all-cause mortality HR(Reference Biesbroek, Verschuren and Boer27). A higher adherence to the 2015 Dutch dietary guidelines was found to be associated with lower dietary GHGEs, less land use and also lower mortality HR among both women and men(Reference Biesbroek, Verschuren and Boer27). Nevertheless, sensitivity analyses in the current study suggested that the indicated association between higher SHEIA15 score and lower dietary GHGEs was mostly driven by the component red and processed meat, since indicated differences in dietary GHGEs between quintiles one and five of SHEIA15 score were neutralised when this component was excluded. This result is not surprising since the dietary-related GHGEs are considerably higher for the food group red and processed meat compared with all other food groups(28), and it also indicates the importance of the dietary guideline to decrease the consumption of red and processed meat in reducing dietary GHGEs. Still, GHGEs are only one environmental consequence of food production and consumption. The 2015 Swedish FBDGs are developed to encompass several environmental impacts(29), and our analyses of associations between SHEIA15 and dietary GHGEs need to be repeated also with other environmental impacts to ensure that there are no detrimental trade-offs. Since FBDGs are directed towards the general population, other important aspects to facilitate following the guidelines include affordability and acceptability.

The primary strength of the current study is that the data used come from the large population-based cohort VIP, encompassing reliable data on all-cause mortality as well as standardised and validated methods of assessments of dietary intake and other lifestyle factors. Limitations of the current study include that solely baseline dietary data were used in the analyses, and eventual dietary or lifestyle changes during the follow-up time have not been considered. Further, misreporting is a problem with all self-reported dietary data, and even though energy adjustments were performed to partly adjust for this, indicated diet-health associations could have been attenuated. The range in SHEIA15 scores was narrow in our sample, especially among women. However, many composite scores and indexes share this property of having a narrow theoretical range. Even so, because SHEIA15 is constructed as the sum of several ratios, an unlimited number of values within the range are possible. Importantly, significant associations with all-cause mortality and dietary GHGEs were detected. However, it would be interesting to evaluate our identified associations in populations with a broader range of SHEIA15. Also, uncertainties in life cycle assessment GHGE data exist, impacting the estimation of dietary GHGEs of the study participants(Reference Hallström, Bajzelj and Håkansson30). Furthermore, although potential confounders have been adjusted for, residual confounding effects are still possible. Lastly, the current study is an observational study and no causal relationship between dietary patterns and mortality can hence be confirmed.

Conclusion

A higher adherence to Swedish food-based dietary guidelines, estimated by the diet quality index SHEIA15, was associated with lower all-cause mortality hazards as well as lower estimated dietary GHGEs among women and men in a Swedish population. SHEIA15 is thus suggested as a predictor of both all-cause mortality and dietary GHGEs, indicating that a higher adherence to dietary guidelines is beneficial for both longevity and climate sustainability.

Supplementary material

For supplementary material accompanying this paper visit https://doi.org/10.1017/S1368980023001295

Acknowledgements

The authors acknowledge the teams at Västerbotten County Council for collecting data and organising the Västerbotten Intervention Programme and the personnel at the Department of Biobank Research, Umeå University for data maintenance and administrative support. The authors also thank the personnel at the Research Institutes of Sweden for collecting and managing the life-cycle assessment data.

Authorship

A.W., A.S., E.H. and AK.L. designed the research. I.J. and B.L. provided data from the Västerbotten Intervention Programme. I.J. created the diet database in the Västerbotten Intervention Programme. A.S. performed the statistical analyses and analysed the data under supervision from A.W. A.S. wrote the paper and had primary responsibility for the final content. All authors reviewed and approved the final version of the manuscript.

Financial support

The Northern Sweden Diet Database was supported by the Swedish Research Council for Health, Working Life and Welfare and the Swedish Research Council. The current project was supported by grants from the Swedish Research Council for Environment, Agricultural Sciences and Spatial Planning (Formas, grant no. FR-2019/0007). The funders had no role in the design, analysis or writing of this article.

Conflict of interest

There are no conflicts of interest.

Ethics of human subject participation

This study was conducted according to the guidelines laid down in the Declaration of Helsinki, and all procedures involving research study participants were approved by the Research Ethics Committee of Umeå University, Sweden, in 1984, for the original study and by the Swedish Ethical Review Authority in 2019 (dnr 2019–01314) for the current study. Written informed consent was obtained from all participants.

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Figure 0

Fig. 1 Flow chart from inclusion of participants in the Västerbotten Intervention Programme with their baseline study visit 1990–2016, to the final study group in the current study. Participants in the final study group in the current study are presented as non-cases and cases of all-cause mortality separated by gender.

Figure 1

Table 1 Components of the Swedish Healthy Eating Index for Adults 2015 (SHEIA15), associated recommended intakes and calculation of the SHEIA15 score

Figure 2

Table 2 Baseline characteristics of participating women and men (n 96 775) in the population-based prospective cohort Västerbotten Intervention Programme between 1990 and 2016, separated by non-cases and all-cause mortality cases during follow-up

Figure 3

Table 3 Hazard ratios (HR) and 95 % CI for all-cause mortality of women (n 49 124) and men (n 47 651) classified into quintiles according to their diet quality estimated by SHEIA15*

Figure 4

Table 4 Hazard ratios (HR) and 95 % CI for all-cause mortality of women and men with their diet quality estimated by SHEIA15 and the effect of the exclusion of components from the index*

Figure 5

Table 5 Median dietary GHGEs for women (n 49 124) and men (n 47 651) classified into quintiles according to their diet quality estimated by SHEIA15*

Figure 6

Table 6 Median dietary GHGEs for women and men classified into quintiles according to their diet quality estimated by SHEIA15 and the effect of the exclusion of components from the index*

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