Hostname: page-component-76fb5796d-skm99 Total loading time: 0 Render date: 2024-04-27T17:01:48.165Z Has data issue: false hasContentIssue false

Consumption of foods with the highest nutritional quality, and the lowest greenhouse gas emissions and price, differs between socio-economic groups in the UK population

Published online by Cambridge University Press:  31 October 2023

Magaly Aceves-Martins*
Affiliation:
The Rowett Institute, University of Aberdeen, Foresterhill, Aberdeen AB25 2ZD, UK
Ruth L Bates
Affiliation:
The Rowett Institute, University of Aberdeen, Foresterhill, Aberdeen AB25 2ZD, UK
Leone CA Craig
Affiliation:
Institute of Applied Health Sciences, University of Aberdeen, Aberdeen, UK
Neil Chalmers
Affiliation:
The Rowett Institute, University of Aberdeen, Foresterhill, Aberdeen AB25 2ZD, UK
Graham Horgan
Affiliation:
Biomathematics & Statistics Scotland, Rowett Institute, Aberdeen, UK
Bram Boskamp
Affiliation:
Biomathematics & Statistics Scotland, The King’s Buildings, Edinburgh, UK
Baukje de Roos
Affiliation:
The Rowett Institute, University of Aberdeen, Foresterhill, Aberdeen AB25 2ZD, UK
*
*Corresponding author: Email magaly.aceves@abdn.ac.uk
Rights & Permissions [Opens in a new window]

Abstract

Objective:

To establish a baseline understanding of whether consuming food with the highest nutritional quality, lowest greenhouse gas emissions (GHGE) and cost differs between different UK demographic and socio-economic population groups.

Design:

Multiple linear regression models were fitted to evaluate the relationship between predictor socio-demographic variables in this study (i.e. sex, ethnic group, age, BMI and level of deprivation) and the response variables (i.e. consumption of items considered most nutritious, with a low GHGE and price, as a proportion of total items consumed).

Setting:

The UK.

Participants:

1374 adult (18–65 years) participants from the National Diet and Nutrition Survey latest waves 9–11 (2016–2017 and 2018–2019).

Results:

Based on the total energy consumption in a day, the average diet-based GHGE was significantly higher for participants with a higher BMI. Non-white and most deprived participants spent significantly (P < 0·001) less money per total energy consumption. Participants with a BMI between 18·6 and 39·9 kg/m2 and those living in the least deprived areas consumed a significantly (P < 0·001) higher amount of those items considered the most nutritious, with the lowest GHGE and cost per 100 kcal.

Conclusions:

Consumption of food with the highest nutritional quality, lowest GHGE and cost in the UK varies among those with different socio-demographic characteristics, especially the deprivation level of participants. Our analysis endorses the consideration of environmental sustainability and affordability, in addition to the consideration of nutritional quality from a health perspective, to make current dietary guidelines more encompassing and equitable.

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

The food supply chain is one of the main contributors to greenhouse gas emissions (GHGE), which are currently driving global climate change(Reference Foley, Ramankutty and Brauman1). Rising urbanisation and higher consumption of animal-based products have contributed to increases in GHGE in recent years – it has been estimated that emissions from the food supply chain currently contribute 21–37 % of total GHGE(Reference Shukla, Skeg and Calvo Buendia2,Reference Tilman and Clark3) . Several high-level working groups have highlighted the importance of reducing meat consumption and other animal-origin products to reduce GHGE(Reference Shukla, Skeg and Calvo Buendia2,Reference Willett, Rockström and Loken4,Reference Perignon, Masset and Ferrari5) . Dietary recommendations proposed to reduce GHGE, such as increasing the consumption of plant-origin products and decreasing animal-origin products, also align with current nutritional recommendations developed to reduce mortality(Reference Jafari, Hezaveh and Jalilpiran6Reference Kim, Caulfield and Rebholz8) and the prevalence of major non-communicable diseases, such as cancer or CVD(Reference Jafari, Hezaveh and Jalilpiran6,Reference Alsaffar9,10) .

It may be challenging for consumers to achieve a dietary pattern that is both healthy and environmentally sustainable as this would involve a cultural and societal shift, mainly in high-income countries where diets and taste preferences are primarily based on animal products(Reference Macdiarmid, Cerroni and Kalentakis11,Reference Sanchez-Sabate and Sabaté12) . Moreover, ‘sustainability’ is a complex and comprehensive concept that includes multiple outcomes of environmental and economic impact(Reference Alsaffar9). For instance, environmental sustainability comprises variables such as GHGE, land use, water use and ecotoxicity(Reference Shukla, Skeg and Calvo Buendia2). However, economic affordability is also essential when adopting healthier and sustainable dietary choices(Reference Perignon, Masset and Ferrari5,Reference Jones, Tong and Monsivais13,Reference Pechey and Monsivais14) . Therefore, affordability is a crucial determinant of food choice and a central contributor to socio-economic inequalities when considering the healthiness of food and drink choices(Reference Sanchez-Sabate and Sabaté12,Reference Pechey and Monsivais14) .

Evidence from high-income countries suggests that dietary choices are influenced by socio-demographic or anthropometric characteristics such as age, sex, education, living situation, marital status or BMI(Reference Patel, Alicandro and Bertuccio15,Reference Schliemann, Woodside and Geaney16) . For example, less-educated individuals and those on lower incomes had lower Dietary Approaches to Stop Hypertension scores in the UK, mainly driven by a lower intake of fruit, vegetables, whole grains, nuts, legumes and seeds(Reference Patel, Alicandro and La Vecchia17). Another UK study found that less-educated individuals and those on lower incomes consumed less fruit and vegetables, with the importance of costs for fruit and vegetables being a significantly stronger factor for food choice in this group than for those on higher incomes and with higher education levels(Reference Mackenbach, Brage and Forouhi18). Previously, a framework was developed to quantify actual diet records for health, affordability and environmental sustainability considering UK food purchase survey data(Reference Wrieden, Halligan and Goffe19). However, such studies have yet to simultaneously consider nutritional quality, environmental impact and cost when addressing the food choices and dietary behaviours of UK participants. Therefore, this study aimed to establish a baseline understanding of whether the current consumption of food items with the highest nutritional quality, lowest GHGE and lowest cost differs between different UK demographic and socio-economic population groups.

Methods

Data

We analysed data from the UK National Diet and Nutrition Survey (NDNS) latest waves 9–11, which comprise data gathered between 2016–2017 and 2018–2019(20). The NDNS is an annual rolling cross-sectional survey carried out across the UK on behalf of former Public Health England and the Food Standards Agency. This survey collects data from a UK representative sample, including food consumption, nutrient intake and nutritional status. Respondents completed a daily food diary for four consecutive days, including weekends and weekdays. Only the records of those participants who completed 3 or 4 d were included in this analysis. We excluded those with implausible energy intakes below 500 or above 5000 kcal/d(Reference Banna, McCrory and Fialkowski21).

A computer-assisted personal interview collected information on socio-demographic variables, lifestyle factors, dietary habits and height and weight measurements. Only adult participants (18–65 years old) were considered in our analysis. We used socio-demographic data on age, sex, ethnicity and Index of Multiple Deprivation (IMD). The original variable included for ethnicity five ethnic groups, that is, white, mixed ethnic group, black or black British, Asian or Asian British, and any other group. Since most of the survey population was white (89·9 %), the data were aggregated into two categories: white and non-white individuals. We used the IMD as a proxy of socio-economic status in our analysis, which is the official measure of relative deprivation for small areas in the UK. IMD combines information from seven domains (income, employment, education, health, crime, housing and living environment) to produce an overall measure of deprivation. It generates individual estimations based on household-level weighted data calibrated to household population estimates by region and quintiles. Values were equivalised across different countries in the UK by quintiles to indicate the most deprived (IMD 1) and the least deprived (IMD 5) areas.

As part of the NDNS dataset, BMI was calculated as weight (kg) divided by height squared (m2) and was categorised as underweight (<18·5 kg/m2), normal weight (18·5–24·9 kg/m2), overweight (25–29·9 kg/m2), obesity (30·0–39·9 kg/m2) and severe obesity (≥40 kg/m2).

We used an in-house expanded version of the NDNS nutrient databank (2018–2019, available upon request), which includes compositional data but also nutrient profiles, GHGE and cost for nearly 6000 commonly consumed foods and drinks(20,Reference Aceves-Martins, Bates and Craig22,Reference Aceves-Martins, Bates and Craig23) , to identify the food items and food groups with the highest nutritional quality, lowest GHGE and lowest cost. We categorised each item according to their Eatwell Guide food group(24). Also, we assessed nutritional quality by calculating the Nutrient-Rich Food Index 8.3 (NRF8.3)(Reference Drewnowski25Reference Fulgoni, Keast and Drewnowski27) per 100 kcal of the food or drink item; the higher the scores, the better the nutritional quality.

In addition, we identified GHGE values for 153 individual foods and dishes, expressed as gCO2-equivalents (CO2e), from open-access sources(Reference Bates, Chambers and Craig28), where possible, from studies using complete cradle-to-grave life cycle analysis(Reference Muralikrishna, Manickam, Muralikrishna and Manickam29) following the international PAS 2050 standard(30). For all other food and drink items in the NDNS nutrient databank, three nutrition scientists discussed and imputed reasonable substitute data based on the products’ food type, food group and compositional similarity. Each product’s costs (in GBP) were retrieved up to October 2021 (retail prices were used without adjusting for inflation) using the Shelf Scraper search engine(Reference Cracknell31)(no longer available, but https://www.trolley.co.uk/ may be used instead). Considering that Shelf Scraper did not consider prices at discounters like LIDL or ALDI, the lowest price among leading UK supermarkets (Tesco, ASDA, Sainsbury’s and Morrison’s) was used. For GHGE and cost, data were retrieved for 100 g of product and then estimated per 100 kcal basis.

Calculation of score

Following the method described by Masset et al. (Reference Masset, Soler and Vieux32), a combined score based on nutritional quality, GHGE and cost for each food or drink in the nutrient databank was developed based on the overall medians for each indicator(Reference Aceves-Martins, Bates and Craig22,Reference Aceves-Martins, Bates and Craig23) . The scoring system ranged from 0 to 3, with each food and/or drink scoring 1 point if the NRF8.3 index score was above the median, 1 point if its GHGE were under the median and 1 point if its cost was under the median. Those items with the highest score (i.e. 3) represented the food items with the highest nutritional quality and lowest GHGE and price per 100 kcal(Reference Aceves-Martins, Bates and Craig22,Reference Aceves-Martins, Bates and Craig23) . This score was estimated for all the items included in the NDNS nutrient databank, regardless of the Eatwell food group they were grouped in.

Analysis

Overall, demographic, socio-economic and BMI variables were tabulated and presented as counts and percentages. Differences among categorical variables were tested using Chi-square tests, and significance was established at a P-value of <0·05. Analysis was done based on each individual’s consumption expressed as total kcal/per day. We then calculated total NRF8.3, GHGE and cost based on each individual’s consumption. These values were averaged per day per person and compared between socio-demographic categories. Statistical differences were tested through one-way ANOVA, and significance was established at a P-value of <0·05. In addition, the indicators NRF8.3, GHGE and cost were plotted against consumption (total kcal/d) and analysed for each food group to estimate the contribution of each indicator to the total kcal consumed in a day.

Multiple linear regression models were fitted to evaluate the relationship between predictor socio-demographic variables in this study (i.e. sex, ethnic group, age, BMI and IMD) and the response variable (i.e. consumption of items considered the most nutritious, with a low GHGE and price, as a proportion of total items consumed). The significance of each socio-demographic variable and the response variable were tested to fit the model through simple linear regression models. Also, linearity and residual distributions were visually assessed, and collinearity (through tolerance level to ensure variables were not closely related) was evaluated before modelling the regressions. Finally, F-statistics were used to test the significance of each term included in the regression models.

To further assess the differences in total NRF8.3, GHGE and cost per kcal consumed per day, we quantified the individual and between-person variation attributable to different Eatwell Guideline Food Groups. To do so, the variance of NRF8.3, GHGE and cost per kcal consumed per day was calculated. Then, the original values of each item were replaced with the mean of its respective Eatwell food group, and the variances were recalculated. Afterwards, the percentage of variation between the two variances was estimated, and the resultant percentage was attributed to the variation in the Eatwell food group. Next, a t-test was used to evaluate the statistical significance between the individual v. mean values for NRF8.3, GHGE and cost. In addition, an ANOVA test was used to estimate the statistical significance between the individual and mean values for NRF8.3, GHGE and cost across IMD categories.

Data were visualised through Tableau, and analysis was performed in R software using the libraries ‘dplyr’, ‘psych’ and ‘pastecs’ (for descriptive statistics), and regression models were done using the ‘lessR’ library.

Results

Table 1 summarises the main socio-demographic characteristics of the study population, which included 1374 participants and excluded eighty-six participants based on implausible energy intakes. As expected, the average daily energy intake was significantly lower in females than males. Consequently, diet-based NRF8.3, GHGE and cost per day were significantly lower in females than in males (P < 0·001) (Table 2). The average diet-based GHGE among the participants differed significantly between body weight categories, with the highest GHGE recorded for those participants with a BMI higher than 25 kg/m2. Based on the daily energy consumption, the average food and drink intake cost was significantly lower in the non-white compared with white UK participants (P < 0·001). Additionally, the average cost of daily food and drink intake differed significantly (P < 0·001) across IMD categories, with the most deprived participants (IMD categories 1 and 2) spending less per total energy consumed in a day (Table 2).

Table 1 Demographic characteristics of the study population

* BMI data are available only for 1281 participants in the UK sample.

IMD – Index of Multiple Deprivation is the official measure of relative deprivation for small areas in the UK, 1 being the most and 5 being the least deprived. The participants’ proportions differed significantly (P < 0·05) according to their sex and ethnicity.

Table 2 Average energy intake, NRF8.3, GHGE and cost of food and drink consumption per day

The statistical significance was defined as:

* 0·01.

Those items with the highest score (i.e. 3) represented the food items with the highest nutritional quality and lowest GHGE and price/100 kcal.

** 0·001.

*** <0·001.

Data represent the mean (sd).

Data of eighty-six participants were removed since the average energy consumption/d was lower than 500 kcal or higher than 5000 kcal.

The total analysis sample consisted of 1374 participants.

Total NRF8.3, GHGE and cost values are based on total daily energy consumption.

IMD – Index of Multiple Deprivation is the official measure of relative deprivation for small areas in the UK, 1 being the most and 5 being the least deprived.

IMD was standardised across countries of the UK; BMI was estimated as weight (kg) divided by height squared (m2), and it was categorised as underweight (<18·5 kg/m2), normal weight (18·5–24·9 kg/m2), overweight (25–29·9 kg/m2), obesity (30·0–39·9 kg/m2) and severe obesity (≥40 kg/m2).

Sex and ethnicity significance were evaluated with a t-test, and the rest of the variables was analysed with one-way ANOVA within demographic categories.

In total, 577 (out of 4910) food items scored 3 in our analysis (e.g. representing foods with the highest nutritional quality, lowest GHGE and lowest cost per 100 kcal). A list with the distribution of these items according to the Eatwell Guide and some examples can be consulted in Aceves-Martins et al.(Reference Aceves-Martins, Bates and Craig22). The total amount of items scoring 3 (representing foods with the highest nutritional quality, lowest GHGE and lowest cost per 100 kcal) that were consumed in a day was significantly (P < 0·01) different between BMI categories, with the lowest number being consumed in those having a BMI between ≤18·5 kg/m2. Also, the total number of food items scoring a 3 (representing foods with the highest nutritional quality, lowest GHGE and lowest cost per 100 kcal) was significantly (P < 0·001) different between IMD categories, with those living in the least deprived areas, for example, IMD categories 3, 4 or 5, consuming a higher proportion of these products (Table 2).

The average kcal consumed per day and total NRF8.3, GHGE and cost per total kcal consumed in a day for each of the Eatwell Guide food groups and across IMD categories are presented in Fig. 1. The highest proportion of the kcals consumed in a day came from the Eatwell food group dairy and alternatives, followed by potatoes, bread, rice, pasta and other starchy carbohydrates and then from fruit and vegetables. As a result, we observed higher values for nutritional quality and GHGE in these food groups.

Fig. 1 The average kcal consumed per day and total NRF8.3, GHGE and cost per total kcal consumed in a day, for each of the Eatwell Guide food groups across IMD categories. Food groups fruits and vegetables; potatoes, bread, pasta, rice and other starchy carbohydrates; beans, pulses, fish, eggs, meat and other proteins; dairy and alternatives; oils and spreads; drinks; miscellaneous items that should be eaten less often and in small amounts. Kcal, kilocalories; NRF8.3, Nutrient-Rich Food Index 8.3; GHGE, greenhouse gas emissions expressed as gCO2-equivalents (CO2e); GBP, Great British Pound; IMD, Index of Multiple Deprivation with IMD 1 being the most deprived and IMD 5 being the least deprived areas

Only sex, ethnicity and IMD were suitable (i.e. significant at simple linear regressions) to include in the multiple linear regression model. These socio-demographic variables were significantly related to the total number of items scoring 3 in a day (Table 3). Of these, only sex and IMD indicated a unique significant variance, with the total number of items scoring 3 consumed in a day (P = 0·007 and P = 0·003, respectively), even when controlling for other variables. Overall, collectively sex, ethnicity and IMD could explain a small but significant variability (1·4 %, adjusted R 2 = 0·14, P-value<0·0001) in the total number of food items scoring a 3, having the highest nutritional quality and lowest GHGE and cost consumed in a day. Furthermore, when analysing each indicator (i.e. NRF 8.3, GHGE and cost) separately, we found that sex, ethnicity and IMD also explained a small but significant variability for each indicator (Appendix 1, see online Supplemental Tables (a–d)).

Table 3 Multiple linear regression model to evaluate the relationship between sex, ethnicity and IMD and consumption of food products with the highest nutritional quality and the lowest GHGE and price

The statistical significance was defined as: P-value < 0·01; P-value < 0·001; P-value < 0.0001.

Model fit: SD of the average number of items scoring 3: 0·58179863; SD of residuals: 0·57655339 for 1367 df; 95 % range of residual variation: 2·26205060 = 2 * (1·962 × 0·57655339); R 2: 0·016; adjusted R 2: 0·014; F-statistic: 7·509; P-value: 0·001.

We observed significant (P < 0·001) between-person variation in individual v. median values for NRF8.3, GHGE and cost across all Eatwell Guide food groups. The variation for the three indicators was noticeably higher in the fruits and vegetables food group and lowest in the dairy and alternative food group. Between-person variation in individual v. median values for NRF8.3, GHGE and cost also differed significantly across IMD categories for each food group (Table 4).

Table 4 NRF8.3, GHGE and cost between-person variation attributable to different food groups and IMD

NRF8.3, Nutrient-Rich Food Index 8.3; GHGE, greenhouse gas emissions expressed as gCO2-equivalents (CO2e); GBP: Great British Pound; IMD, Index of Multiple Deprivation, with IMD 1 being the most deprived and IMD 5 being the least deprived areas.

The statistically significant difference in the total variability was

* 0·01 compared with the original values.

** 0·001.

*** <0·001.

Data from eighty-six participants were removed since the average daily energy consumption was lower than 500 kcal or higher than 5000 kcal.

The total analysis sample comprised 1374 participants.

Discussion

This study aimed to establish a baseline understanding of whether the UK’s current consumption of food items with the highest nutritional quality, lowest GHGE and lowest cost varies among those with different socio-demographic characteristics. Based on the total energy consumption in a day, the highest food-related GHGE was recorded for participants with a BMI higher than 25 kg/m2. We also found that the average cost of daily energy intake was significantly lower in non-white compared with white UK participants. Moreover, the most deprived participants (IMD categories 1 and 2) spent significantly less money per total energy consumed per day than the least deprived participants, and those living in the least deprived areas (IMD categories 3, 4 or 5) consumed more products considered the most nutritious, environmentally friendly and cheap. Overall, sex, ethnicity and IMD explained a small but significant variability in the total number of foods consumed considered to be the most nutritious, with the lowest GHGE and cost. Furthermore, we found significant between-person variation in NRF8.3, GHGE and cost of food groups across IMD categories, with the highest variation recorded for the food group of fruits and vegetables and the lowest variation recorded for the food group diary and alternatives.

Several studies have reported differences and inequalities in dietary patterns across socio-economic groups in the UK(Reference Patel, Alicandro and Bertuccio15,Reference Patel, Alicandro and La Vecchia17,Reference Mackenbach, Brage and Forouhi18,Reference Maguire and Monsivais33,Reference Yau, Adams and Monsivais34) , establishing that income levels, deprivation or education are associated with specific dietary consumption patterns(Reference Jones, Tong and Monsivais13,Reference Mackenbach, Brage and Forouhi18,Reference Reynolds, Horgan and Whybrow35,Reference Scott, Sutherland and Taylor36) . Overall, most studies agree that those with low socio-economic status, less education and no employment or lower employment qualifications struggle to achieve patterns that conform with healthy dietary guidelines(Reference Jones, Tong and Monsivais13,Reference Mackenbach, Brage and Forouhi18,Reference Reynolds, Horgan and Whybrow35,Reference Scott, Sutherland and Taylor36) . Similarly, our results showed that those most deprived consumed significantly fewer food items with the highest nutritional quality and lowest GHGE and cost. We also found that non-white participants, and those living in the most deprived areas, spent less per daily energy consumed than white participants or those living in areas with a low level of deprivation. Thus, our food-based analysis aligns with previous food or diet-based studies that have reported that adherence to healthier diets is associated with higher dietary costs in the UK(Reference Wrieden, Halligan and Goffe19,Reference Yau, Adams and Monsivais34,Reference Monsivais, Scarborough and Lloyd37,Reference Tong, Imamura and Monsivais38) . However, such adherence can vary according to socio-economic status, sex, age, work type and ethnicity(Reference Yau, Adams and Monsivais34,Reference Monsivais, Scarborough and Lloyd37,Reference Tong, Imamura and Monsivais38) .

We found that overall sex, ethnicity and the level of deprivation explained a small but significant variability in the total number of foods consumed considered the most nutritious, with the lowest GHGE and cost, with only sex and the level of deprivation indicating a unique variance. Unlike most current dietary analyses that report diet differences across socio-demographic and economic characteristics(Reference Sanchez-Sabate and Sabaté12,Reference Mackenbach, Brage and Forouhi18,Reference Yau, Adams and Monsivais34,Reference Monsivais, Scarborough and Lloyd37,Reference Tong, Imamura and Monsivais38) , we simultaneously consider three relevant indicators (i.e. nutritional quality, GHGE and cost) within the same metric. A previous study led by Masset et al. (Reference Masset, Soler and Vieux32) conducted a similar analysis in a French population study and also found differences between females and males regarding the consumption of the most sustainable items, as we did. However, this was the only characteristics of the participants that were included in that analysis. Considering the major global public health (i.e. obesity) and environmental (i.e. climate change) challenges we face, simultaneously considering such indicators is imperative to achieve healthier and more sustainable dietary choices across all populations, regardless of socio-demographic characteristics. A recent study(Reference Reynolds, Horgan and Whybrow35) modelled the dietary changes required to shift patterns that meet dietary recommendations towards a healthier, more sustainable (lower GHGE) and affordable diet across different income groups. This study(Reference Reynolds, Horgan and Whybrow35) concluded that changing dietary patterns could be achieved within current household food budgets by altering the amounts of specific foods consumed (e.g. increasing fruit, vegetables and starchy foods, while reducing animal products and high-fat/high-sugar foods) rather than eliminating foods.

From a consumer’s perspective, distinguishing healthy, sustainable and fair food prices based on individual food products instead of whole diets could promote better shopping choices(Reference Masset, Soler and Vieux32,Reference Rose, Willits-Smith and Heller39) . Our analysis estimated between-participant variation for each indicator (i.e. nutritional quality, GHGE and cost). As a result, we observed significant between-person variation in individual v. median values for NRF8.3, GHGE and cost across all food groups, which differed significantly between IMD categories. This highlights the opportunities for personalised approaches to optimise the intake of healthier, greener and more affordable products, where simple substitutions within food subgroups or ‘food swaps’ could effectively improve the nutritional adequacy of the diets(Reference Verger, Holmes and Huneau40Reference Strid, Hallström and Sonesson42).

Although we found significant between-participant variation in NRF8.3, GHGE and/or cost between food groups, this was notably higher for the fruits and vegetables food group. This high between-participant variation in fruit and vegetable intake might reflect the considerable variation in nutritional quality, environmental markers and cost in this food group, especially when considering the difference in the amounts consumed per individual. Previous UK studies(Reference Patel, Alicandro and Bertuccio15,Reference Patel, Alicandro and La Vecchia17,Reference Mackenbach, Brage and Forouhi18,Reference Maguire and Monsivais33,Reference Yau, Adams and Monsivais34) have reported that the most disadvantaged populations struggle to achieve the recommended amount of five fruits and vegetables per day, mainly linked to affordability. Fruits and vegetables are pivotal for a healthy and sustainable diet(24). Unfortunately, with the information from NDNS, it is impossible to estimate the proportion of imported or locally grown and cultivated foods. However, the UK’s average consumption of fruits and vegetables is less than 300 g/d(Reference Frankowska, Jeswani and Azapagic43). Furthermore, only 7 % of the fruits we consume are produced in the UK, with the rest being imported, primarily (70 %) from outside of Europe, implying an environmental impact(Reference Frankowska, Jeswani and Azapagic43) and affecting the cost.

We analysed data based on the energy consumed (kcal/d) per participant rather than the weight consumed (g). Therefore, the NRF used in our analysis was estimated per kcal. However, some studies have analysed data per serving size(Reference Drewnowski25) or 100 g(Reference Drewnowski and Fulgoni26). When considering the nutritional quality estimated through NRF, it has been acknowledged that foods that benefited the most from the 100-kcal calculation were low-energy-dense such as vegetables. On the other hand, foods that benefited more from the 100-g calculation were energy-dense foods such as nuts and seeds or fortified cereals. Indeed, different studies have highlighted that the metric used to measure nutritional quality, environmental impact or cost of food items can affect which foods are considered more nutritious, environmentally friendly and cheaper(Reference Drewnowski25,Reference Drewnowski and Fulgoni26,Reference Carlson and Frazão44) .

Some strengths of our work include simultaneously considering relevant nutritional quality indicators, GHGE as an essential marker of environmental sustainability and the cost of an extensive range of UK food items and applying these to dietary records from the NDNS data, which provides high-quality dietary intake data in a UK nationally representative sample. However, there are some limitations linked to the use of these data. For instance, the NDNS survey relies on self-reported food intake, which might not be accurate because of participants’ (un)conscious misreporting, as per BMI categories(Reference Gibson, Charrondiere and Bell45,Reference Wehling and Lusher46) . In fact, we observed a lower energy intake for the highest BMI category, which may show under-reporting of food intake, a well-known issue, especially in those with obesity(Reference Connor47). Consequently, this would have affected this group’s NRF8.3, GHGE and cost results. Second, the survey includes mainly white participants, thereby overlooking the dietary patterns of ethnic minorities. Third, although it considered participants from all deprivation levels, highly vulnerable participants (i.e. homeless or migrants who are not English speakers) were least likely to be included in this survey(Reference Maguire and Monsivais33,Reference Choudhury, Hussain and Parsons48) . Also, although IMD is a comprehensive index, it is based on the postcode of participants. By using this index, some of the granularity of the data related to different socio-economic factors might be missed. Moreover, although IMD was standardised for this study’s analysis, this index is slightly different across the UK. Fourth, because of the fluctuation of food prices and data collected in 2021, we limited our analysis to the NDNS latest waves (2016–2017 and 2018–2019), omitting previous valuable data. In addition, by using the prices retrieved in 2021, we realise that data on food costs may only partially align with those when the survey was conducted. Still, the current picture might be different considering the most recent cost of living crisis with a clear rising food cost. Finally, we used GHGE as an environmental marker. Although GHGE strongly correlates with water eutrophication and air acidification(Reference Masset, Soler and Vieux32), this might not reflect other relevant environmental indicators in food products, such as water blueprint(Reference Vanham and Bidoglio49) or ecosystem biodiversity losses(50). Hence, future research needs to consider integrating other environmental impact measurements, such as land or water use, into one metric for environmental sustainability.

Public health policies and dietary guidelines should consider the impact of dietary choices in terms of nutritional quality and environmental and economic impact. Here, we provide evidence that the UK’s consumption of food items with the highest nutritional quality, lowest GHGE and lowest cost varies among those with different socio-demographic characteristics, especially the deprivation level of participants. Moreover, this analysis provides new opportunities to identify ‘food swaps’ that allow individuals to make their diets healthier and greener while not compromising on price. Such dietary improvement through ‘food swaps’ should also consider the level of processing as well as the composition of foods (e.g. to reduce discretionary foods consumption). Future research needs to consider equity regarding how achievable dietary guidelines are and how affordability and accessibility are crucial for consumption. As shown by the results presented in our analysis, special attention needs to be paid to those living in the most deprived areas, as they might struggle more to meet such guidelines. This is key to improving health outcomes across populations and achieving the climate change targets to prevent global warming.

Financial support

This research was funded by the Scottish Government’s Rural and Environment Science and Analytical Services Division (RESAS) and responsive opportunity funding from the Scottish Environment, Food and Agriculture Research Institutes (SEFARI).

Conflicts of interest

The authors have no conflict of interest.

Authorship

M.A.-M. and B.D.R. planned the research question and designed the study. All the authors were involved in collecting the relevant data used in the analysis of this study. In addition, all the authors contributed to writing the article.

Ethics of human subject participation

This study was based on NDNS database secondary data analysis and other publicly available data, and no ethical approval was needed.

Supplementary material

For supplementary material accompanying this paper visit https://doi.org/10.1017/S1368980023002355

References

Foley, JA, Ramankutty, N, Brauman, KA et al. (2011) Solutions for a cultivated planet. Nature 478, 337342.Google Scholar
Shukla, PR, Skeg, J, Calvo Buendia, E et al. (2019) Climate Change and Land: An IPCC Special Report on Climate Change, Desertification, Land Degradation, Sustainable Land Management, Food Security, and Greenhouse Gas Fluxes in Terrestrial Ecosystems. https://www.ipcc.ch/site/assets/uploads/2019/11/SRCCL-Full-Report-Compiled-191128.pdf (accessed April 2023).Google Scholar
Tilman, D & Clark, M (2014) Global diets link environmental sustainability and human health. Nature 515, 518522.Google Scholar
Willett, W, Rockström, J, Loken, B et al. (2019) Food in the Anthropocene: the EAT–Lancet Commission on healthy diets from sustainable food systems. Lancet 393, 447492.Google Scholar
Perignon, M, Masset, G, Ferrari, G et al. (2016) How low can dietary greenhouse gas emissions be reduced without impairing nutritional adequacy, affordability and acceptability of the diet? A modelling study to guide sustainable food choices. Public Health Nutr 19, 26622674.CrossRefGoogle Scholar
Jafari, S, Hezaveh, E, Jalilpiran, Y et al. (2021) Plant-based diets and risk of disease mortality: a systematic review and meta-analysis of cohort studies. Crit Rev Food Sci Nutr 62, 77607772.Google Scholar
Kim, H, Caulfield, LE, Garcia-Larsen, V et al. (2019) Plant-based diets are associated with a lower risk of incident cardiovascular disease, cardiovascular disease mortality, and all-cause mortality in a general population of middle-aged adults. J Am Heart Assoc 8, e012865.Google Scholar
Kim, H, Caulfield, LE & Rebholz, CM (2018) Healthy plant-based diets are associated with lower risk of all-cause mortality in US adults. J Nutr 148, 624631.Google Scholar
Alsaffar, AA (2016) Sustainable diets: the interaction between food industry, nutrition, health and the environment. Food Sci Technol Int 22, 102111.Google Scholar
World Cancer Research Fund International (2018) Diet, Nutrition, Physical Activity and Cancer: A Global Perspective: A Summary of the Third Expert Report. Washington, DC: World Cancer Research Fund International.Google Scholar
Macdiarmid, JI, Cerroni, S, Kalentakis, D et al. (2021) How important is healthiness, carbon footprint and meat content when purchasing a ready meal? Evidence from a non-hypothetical discrete choice experiment. J Cleaner Prod 282, 124510.Google Scholar
Sanchez-Sabate, R & Sabaté, J (2019) Consumer attitudes towards environmental concerns of meat consumption: a systematic review. Int J Environ Res Public Health 16, 1220.Google Scholar
Jones, NRV, Tong, TYN & Monsivais, P (2018) Meeting UK dietary recommendations is associated with higher estimated consumer food costs: an analysis using the national diet and nutrition survey and consumer expenditure data, 2008–2012. Public Health Nutr 21, 948956.CrossRefGoogle ScholarPubMed
Pechey, R & Monsivais, P (2016) Socioeconomic inequalities in the healthiness of food choices: exploring the contributions of food expenditures. Prev Med 88, 203209.Google Scholar
Patel, L, Alicandro, G, Bertuccio, P et al. (2021) Educational inequality in the dietary approach to stop hypertension diet in the UK: evaluating the mediating role of income. Br J Nutr 126, 18971903.Google Scholar
Schliemann, D, Woodside, JV, Geaney, F et al. (2019) Do socio-demographic and anthropometric characteristics predict food choice motives in an Irish working population? Br J Nutr 122, 111119.Google Scholar
Patel, L, Alicandro, G & La Vecchia, C (2020) Dietary approaches to stop hypertension (DASH) diet and associated socio-economic inequalities in the UK. Br J Nutr 124, 10761085.Google Scholar
Mackenbach, JD, Brage, S, Forouhi, NG et al. (2015) Does the importance of dietary costs for fruit and vegetable intake vary by socioeconomic position? Br J Nutr 114, 14641470.Google Scholar
Wrieden, W, Halligan, J, Goffe, L et al. (2019) Sustainable diets in the UK—developing a systematic framework to assess the environmental impact, cost and nutritional quality of household food purchases. Sustainability 11, 4974.Google Scholar
National Institute of Health Research Biomedical Research Centre (NIHR BRC), Anthropometry and Physical Activity Group, University of Cambridge et al. (2021) National Diet and Nutrition Survey Years 1–11, 2008–2019, 18th ed. Manchester, UK: UD Service.Google Scholar
Banna, JC, McCrory, MA, Fialkowski, MK et al. (2017) Examining plausibility of self-reported energy intake data: considerations for method selection. Front Nutr 4, 45.Google Scholar
Aceves-Martins, M, Bates, RL, Craig, LCA et al. (2022) Food-level analysis to identify dietary choices with the highest nutritional quality and lowest greenhouse gas emissions and price. Front Nutr 9, 851826.Google Scholar
Aceves-Martins, M, Bates, RL, Craig, LCA et al. (2022) Nutritional quality, environmental impact and cost of ultra-processed foods: a UK food-based analysis. Int J Environ Res Public Health 19, 3191.Google Scholar
Drewnowski, A (2010) The nutrient rich foods index helps to identify healthy, affordable foods. Am J Clin Nutr 91, 1095S1101S.CrossRefGoogle ScholarPubMed
Drewnowski, A & Fulgoni, VL III (2014) Nutrient density: principles and evaluation tools. Am J Clin Nutr 99, 1223S1228S.Google Scholar
Fulgoni, VL III, Keast, DR & Drewnowski, A (2009) Development and validation of the nutrient-rich foods index: a tool to measure nutritional quality of foods. J Nutr 139, 15491554.Google Scholar
Bates, RL, Chambers, NG & Craig, LCA (2019) Greenhouse gas emissions of UK diets. Proc Nutr Soc 78, E65.Google Scholar
Muralikrishna, IV & Manickam, V (2017) Chapter five – life cycle assessment. In Environmental Management, pp. 5775 [Muralikrishna, IV and Manickam, V, editors]. Boston: Butterworth-Heinemann.Google Scholar
Publicly Available Specification (2008) Specification for the assessment of the life cycle greenhouse gas emissions of goods and services. Bsi Br Stand Isbn 978, 580.Google Scholar
Cracknell, J (2021) ShelfScraper. https://shelfscraper.herokuapp.com/ (accessed April 2023).Google Scholar
Masset, G, Soler, L-G, Vieux, F et al. (2014) Identifying sustainable foods: the relationship between environmental impact, nutritional quality, and prices of foods representative of the French diet. J Acad Nutr Diet 114, 862869.Google Scholar
Maguire, ER & Monsivais, P (2015) Socio-economic dietary inequalities in UK adults: an updated picture of key food groups and nutrients from national surveillance data. Br J Nutr 113, 181189.Google Scholar
Yau, A, Adams, J & Monsivais, P (2019) Time trends in adherence to UK dietary recommendations and associated sociodemographic inequalities, 1986–2012: a repeated cross-sectional analysis. Eur J Clin Nutr 73, 9971005.Google Scholar
Reynolds, CJ, Horgan, GW, Whybrow, S et al. (2019) Healthy and sustainable diets that meet greenhouse gas emission reduction targets and are affordable for different income groups in the UK. Public Health Nutr 22, 15031517.Google Scholar
Scott, C, Sutherland, J & Taylor, A (2019) Affordability of the UK’s Eatwell Guide. London: The Food Foundation.Google Scholar
Monsivais, P, Scarborough, P, Lloyd, T et al. (2015) Greater accordance with the dietary approaches to stop hypertension dietary pattern is associated with lower diet-related greenhouse gas production but higher dietary costs in the United Kingdom. Am J Clin Nutr 102, 138145.CrossRefGoogle ScholarPubMed
Tong, TYN, Imamura, F, Monsivais, P et al. (2018) Dietary cost associated with adherence to the Mediterranean diet, and its variation by socio-economic factors in the UK Fenland Study. Br J Nutr 119, 685694.Google Scholar
Rose, D, Willits-Smith, AM & Heller, MC (2022) Single-item substitutions can substantially reduce the carbon and water scarcity footprints of US diets. Am J Clin Nutr 115, 378387.Google Scholar
Verger, EO, Holmes, BA, Huneau, JF et al. (2014) Simple changes within dietary subgroups can rapidly improve the nutrient adequacy of the diet of French adults. J Nutr 144, 929936.Google Scholar
Wrieden, WL & Levy, LB (2016) ‘Change4Life Smart Swaps’: quasi-experimental evaluation of a natural experiment. Public Health Nutr 19, 23882392.Google Scholar
Strid, A, Hallström, E, Sonesson, U et al. (2021) Sustainability indicators for foods benefiting climate and health. Sustainability 13, 3621.Google Scholar
Frankowska, A, Jeswani, HK & Azapagic, A (2019) Life cycle environmental impacts of fruits consumption in the UK. J Environ Manage 248, 109111.Google Scholar
Carlson, A & Frazão, E (2012) Are Healthy Foods Really More Expensive? It Depends on How You Measure the Price. It Depends on How You Measure the Price (May 1, 2012). Washington, DC: USDA-ERS Economic Information Bulletin.Google Scholar
Gibson, RS, Charrondiere, UR & Bell, W (2017) Measurement errors in dietary assessment using self-reported 24-h recalls in low-income countries and strategies for their prevention. Adv Nutr 8, 980991.Google Scholar
Wehling, H & Lusher, J (2019) People with a body mass index ⩾30 under-report their dietary intake: a systematic review. J Health Psychol 24, 20422059.Google Scholar
Connor, S (2020) Underreporting of dietary intake: key issues for weight management clinicians. Curr Cardiovasc Risk Rep 14, 16.Google Scholar
Choudhury, Y, Hussain, I, Parsons, S et al. (2012) Methodological challenges and approaches to improving response rates in population surveys in areas of extreme deprivation. Prim Health Care Res Dev 13, 211218.Google Scholar
Vanham, D & Bidoglio, G (2013) A review on the indicator water footprint for the EU28. Ecol Indic 26, 6175.Google Scholar
FAO (2005) Building on Gender, Agrobiodiversity and Local Knowledge – A Training Manual. Rome: FAO.Google Scholar
Figure 0

Table 1 Demographic characteristics of the study population

Figure 1

Table 2 Average energy intake, NRF8.3, GHGE and cost of food and drink consumption per day

Figure 2

Fig. 1 The average kcal consumed per day and total NRF8.3, GHGE and cost per total kcal consumed in a day, for each of the Eatwell Guide food groups across IMD categories. Food groups fruits and vegetables; potatoes, bread, pasta, rice and other starchy carbohydrates; beans, pulses, fish, eggs, meat and other proteins; dairy and alternatives; oils and spreads; drinks; miscellaneous items that should be eaten less often and in small amounts. Kcal, kilocalories; NRF8.3, Nutrient-Rich Food Index 8.3; GHGE, greenhouse gas emissions expressed as gCO2-equivalents (CO2e); GBP, Great British Pound; IMD, Index of Multiple Deprivation with IMD 1 being the most deprived and IMD 5 being the least deprived areas

Figure 3

Table 3 Multiple linear regression model to evaluate the relationship between sex, ethnicity and IMD and consumption of food products with the highest nutritional quality and the lowest GHGE and price

Figure 4

Table 4 NRF8.3, GHGE and cost between-person variation attributable to different food groups and IMD

Supplementary material: File

Aceves-Martins et al. supplementary material
Download undefined(File)
File 17.6 KB