Ultra-Processed Food Consumption and Obesity in Korean Adults

Article information

Diabetes Metab J. 2023;47(4):547-558
Publication date (electronic) : 2023 April 26
doi : https://doi.org/10.4093/dmj.2022.0026
1Department of Preventive Medicine, Yonsei University College of Medicine, Seoul, Korea
2Department of Endocrinology and Metabolism, Ajou University School of Medicine, Suwon, Korea
Corresponding author: Hyeon Chang Kim https://orcid.org/0000-0001-7867-1240 Department of Preventive Medicine, Yonsei University College of Medicine, 50-1 Yonseiro, Seodaemun-gu, Seoul 03722, Korea E-mail: hckim@yuhs.ac
Received 2022 January 24; Accepted 2022 April 27.

Abstract

Background

This study aimed to investigate the association between consumption of ultra-processed foods (UPF) and obesity in Korean adults.

Methods

We included the Cardiovascular and Metabolic Diseases Etiology Research Center cohort study baseline data of adults aged 30 to 64 years who completed a validated food frequency questionnaire. UPF was defined using the NOVA food classification. Multivariable linear and logistic regression analyses were performed to assess the association of dietary energy contribution of UPF with obesity indicators (body mass index [BMI], obesity, waist circumference [WC], and abdominal obesity).

Results

Consumption of UPF accounted for 17.9% of total energy intake and obesity and abdominal obesity prevalence was 35.4% and 30.2%, respectively. Compared with those in the lowest quartile of UPF consumption, adults in the highest quartile had greater BMI (β=0.36; 95% confidence interval [CI], 0.15 to 0.56), WC (β=1.03; 95% CI, 0.46 to 1.60), higher odds of having obesity (odds ratio [OR], 1.24; 95% CI, 1.07 to 1.45), and abdominal obesity (OR, 1.34; 95% CI, 1.14 to 1.57), after adjusting for sociodemographic characteristics, health-related behaviors, and family history of diseases. Dose-response associations between UPF consumption and obesity indicators were consistently found (all P trend <0.01). However, the strength of association was halved for all obesity indicators after further adjustments for total energy intake and overall diet quality score, and the trend toward association for obesity and WC disappeared.

Conclusion

Our finding supports the evidence that consumption of UPF is positively associated with obesity among Korean adults.

GRAPHICAL ABSTRACT

INTRODUCTION

Obesity is a major public health burden worldwide. In 2005, two in five adults worldwide were overweight or obese [1]. High body mass index (BMI) is an important risk factor for diabetes, hypertension, cardiovascular disease, cancer, and premature death [2,3]. Despite ongoing efforts to prevent or treat obesity, there has been a continuously rising prevalence of obesity among adults and children both in developed and developing countries [1,4-6]. It is projected that 57.8% of the world’s adult population will be either overweight or obese by 2030 [1].

Basically, obesity reflects energy imbalance wherein consumption exceeds expenditure; however, diverse factors are involved in the etiology of obesity, including genetic, biological, individual, and social factors [2]. Recently, there have been dramatic changes in the global food system [7,8] and the shifts in the food environment have substantially increased opportunities to purchase or consume highly processed foods [9-11]. These foods are typically high energy-dense, poor in nutrient content (high in sugars and fat, and low in dietary fiber), are easily consumed anytime and anywhere, leading to an excess energy intake [12,13]. The consumption of ultra-processed foods (UPFs) has been indicated as an emerging risk factor affecting human health [14,15]. Growing evidence suggests that higher household availability or consumption of UPF is associated with obesity and abdominal obesity [16-26]. However, mostly, these results were of studies conducted among European and American countries, where relatively high UPF is consumed [16,18,20-26]. Little is known regarding whether the consumption of UPF is associated with obesity among populations in Asian countries who consume relatively low levels of UPF.

According to our recent study, Koreans’ consumption of about one-fourth of the total energy from UPF in 2016 to 2018 [27] was lower than those for other countries, with UPF accounting for half of the total energy intake [16,28-30]. However, the past decade revealed a distinctive increase in UPF consumption in all subgroups regardless of sex, age, and economic status, among Koreans [27]. The food environment and sociodemographic structure (e.g., income, urbanization, household composition) have continuously changed and individual preference has changed towards the pursuit for convenience and taste [7,8,10]. In consideration of these findings, the proportion of UPF in the Korean diet is likely to increase. Thus, it seems necessary to provide evidence on the impact of the consumption of these foods on health.

This study aimed to investigate the association between consumption of UPF and obesity in Korean adults using a cross-sectional analysis of the Cardiovascular and Metabolic Diseases Etiology Research Center (CMERC) cohort study baseline data.

METHODS

Data source and population

This study used the baseline data from the CMERC cohort study, designed to identify new risk factors of cardiovascular and metabolic diseases and provide evidence for prevention strategies. The CMERC cohort study comprised healthy adults aged 30 to 64 years who were free of cardiovascular diseases and living in the capital area including Seoul in Korea. Cohort enrollment and baseline survey was completed during 2013 to 2018 at two research clinics. Baseline survey collected a vast amount of information on sociodemographic factors, medical history, health-related behaviors, mental health, social network and support, body size and composition, blood pressure, electrocardiogram, carotid ultrasonography, and biochemical indicators (blood and urine, among others). The CMERC cohort study protocol and procedure were reviewed and approved by the Institutional Review Boards of Severance Hospital, Yonsei University Health System, Seoul, Korea (approval No. 4-2013-0661) and Ajou University Hospital, Suwon, Korea (approval No. AJIRB-BMR-SUR-13-272). Each participant provided written informed consent before the baseline survey. Further details are described elsewhere [31,32].

Of the 8,097 adults who completed the baseline survey, we excluded 854 adults without dietary information (dietary assessment was excluded initially in the CMERC cohort study) and 349 with extreme dietary energy intake (males, <800 or >4,000; females, <500 or >3,500 kcal/day). Finally, 6,894 adults were included in this study.

Dietary assessment and ultra-processed food consumption

Dietary intake was assessed using a 112-item semi-quantitative food frequency questionnaire (FFQ) that was developed for Korean adults’ usual dietary assessment in the Korea National Health and Nutrition Examination Survey (KNHANES) [33]. Participants were asked to respond how often and how much, on average, they consumed each food item listed in the FFQ during the previous year. The frequency response section had nine categories (ranging from never to three times/day) and portion size had three to four categories (small, 0.5; medium, 1.0; and large, 1.5 or 2.0). Dietary intake was calculated using participants’ responses on the frequency and portion size and the nutrient content for each item. As previously evaluated [34], the FFQ presented acceptable reproducibility for nutrients and foods (average γ=0.54 and 0.57, respectively) and modest validity for nutrients (average γ=0.40). We collected dietary data and estimated participants’ usual intake following the guidelines applied in the KNHANES [35].

UPF were defined on the basis of the NOVA (not an acronym) food classification system [12,13], which classifies foods into four groups: (1) unprocessed or minimally processed foods (here, ‘minimally processed’ means processed but only to make unprocessed food suitable for consumption, cooking, or storage, such as cutting, drying, and grinding); (2) processed culinary ingredients (substances derived from group 1 foods, such as sugar, salt, fat and oils; usually used as seasoning when cooking group 1 foods); (3) processed foods (which are industrial products made by adding group 2 foods to group 1 foods to improve the durability and sensory qualities of group 1); and (4) UPF that are industrially formulated from food-driven substances and various cosmetic additives, with little or any whole food, using highly sophisticated processes. For corn, for example, corn powder, corn oil, canned corn, and popcorn or corn chips are classified as group 1, 2, 3, and UPF, respectively.

By applying the NOVA system, we classified 23 out of all FFQ items as UPF and calculated the contribution of UPF to the total energy intake (%TE). In this study, the following items were classified as UPF: ramyeon; loaf bread; bun with red bean paste (or cream) filling; cakes and pies; pizza; hamburger and sandwich; cereals; ham; Korean sausage (sundae); fish paste; milk (including plain milk and sugared milk drinks); yoghurt (liquid type, including plain and sugared yoghurt); yoghurt (curd type, including plain and sugared yoghurt); soybean milk; coffee (with added sugar or cream); carbonated beverages; fruit juice; rice drink; snacks; cookies and crackers; chocolates; ice creams; and distilled liquor (soju).

Anthropometric measurement and definition of obesity and abdominal obesity

Height and weight were measured to the nearest 0.1 cm and 0.1 kg using a stadiometer and scale, respectively. BMI was calculated as body weight (kg) divided by height squared (m2). Waist circumference (WC) was measured to the nearest 0.1 cm at the midpoint between the lower point of the rib cage and the upper point of the iliac crest during exhalation, using a plastic measuring tape. All participants fasted for at least 8 hours and wore a lightweight gown during the examination process. Obesity was defined as BMI ≥25.0 kg/m2 and abdominal obesity as WC ≥90 cm (males) and ≥85 cm (females) using the cutoffs recommended for Asians [36].

Assessment of other variables

Sociodemographic factors included sex, age, economic status, and marital status. Subjective economic status, surveyed using a multiple-choice question, was categorized into three groups (high, middle, and low). Marital status was categorized as married and unmarried (single, divorced, widowed). Health-related behaviors included smoking, drinking, and physical activity. Smoking status was categorized into nonsmoker, ex-smoker, and current smoker. Alcohol drinking was categorized into non-drinker, ex-drinker, and current drinker. Physical activity was assessed using the Korean version of International Physical Activity short form [37]. This study included sitting time (hours/day) as an index of physical inactivity. Each participant was also asked to report whether their parents and/or siblings were diagnosed with or died from hypertension, myocardial infarction, stroke, or diabetes. We defined the presence of family history of cardiovascular and metabolic diseases if their parents or siblings’ diagnosis or death history was reported.

To investigate an independent association of UPF consumption with obesity after additionally adjusting for overall diet quality, we also evaluated participants’ overall diet quality based on the Korean Healthy Eating Index (KHEI) that was developed to estimate overall diet quality of Korean adults [38]. The KHEI has 14 components covering adequate consumption (breakfast; mixed grains; total fruits; fresh fruits; total vegetables; vegetables excluding kimchi and pickled vegetables; meat, fish, eggs, and beans; milk and milk products), moderate consumption (saturated fatty acid; sodium; sweets and beverages), and balanced diet (carbohydrates; total fat; total energy). Each component scored 0 to 5 (or 10), and total score ranged from 0 to 100, with higher score implying higher quality diet. Using the food and nutrients’ dietary intakes assessed by the FFQ, we assigned points for the 13 KHEI components. The FFQ excluded breakfast frequency, but daily meal frequency was included as an additional question. Thus, participants reporting that they had two meals a day or less was considered skipping breakfast. More details on the KHEI are described elsewhere [38,39].

Statistical analysis

We first divided the study population into quartiles using the sex-specific distribution of dietary energy contribution of UPF (% TE) as follows: <13.9%, 13.9%–<21.2%, 21.2%–<28.4%, and ≥28.4% in male; and <9.0%, 9.0%–14.5%, 14.5%–21.2%, and ≥21.2% in female, respectively.

Participant sociodemographic characteristics, health-related behaviors, family history of diseases, and obesity indicators are presented as number (%) and mean±standard deviation. Differences in these characteristics across the sex-specific quartiles of dietary energy contribution of UPF were evaluated by chi-square test and analysis of variance (ANOVA). We also presented the mean intakes of total energy and nutrients and KHEI score across UPF consumption quartiles, and we evaluated differences in the mean dietary intakes across the quartiles, using ANOVA.

Linear and logistic regression analyses were performed to assess association of dietary energy contribution of UPF with obesity indicators. UPF consumption, the explanatory variable, was modelled both as a categorical (quartiles) and continuous variable (per 10% TE increase). Obesity indicators, the outcome variables, were modelled as BMI (kg/m2), WC (cm), obesity, and abdominal obesity. In both linear and logistic regression analyses, we built four multivariable models: model 1 was adjusted for sex, age, and research center; model 2 was adjusted for model 1 plus economic status, marital status, smoking drinking, sitting time, and family history of diseases; model 3 was adjusted for model 2 plus total energy intake; model 4 was adjusted for model 3 plus KHEI score. Odds ratios (OR) and 95% confidence intervals were calculated. Linear trend across quartiles of UPF consumption was tested by treating the quartile as an ordinal continuous variable. We also performed an exploratory subgroup analysis by sex, age group (30–49 and 50–64 years), and overall diet quality (low and high, using the participant median KHEI), using multivariable adjusted model 2. Data analyses were performed using SAS version 9.4 software (SAS institute, Cary, NC, USA) and P<0.05 was considered significant.

RESULTS

Participant characteristics

Table 1 shows the participant characteristics according to sexspecific quartiles of dietary energy contribution of UPF. The mean age of the 6,894 participants was 51.7 years (female, 65.5%). UPF accounted for 17.9% of the total energy intake (range, 6.7% to 31.1% in the lowest and highest quartile, respectively). Participants in the highest quartile were significantly younger than their lowest quartile counterparts (47.9 years vs. 54.7 years); and significantly more likely to be in the low economic status group (24.4% vs. 20.5%); unmarried (16.0% vs. 11.3%); current smoker (22.3% vs. 5.9%); current drinker (78.4% vs. 64.3%); and have longer sitting time (6.4 hours vs. 5.9 hours), respectively (all P<0.001). The highest quartile group had higher intakes of total energy and fat but lower intake of dietary fiber, vitamin A, thiamin, and vitamin C than their counterparts (all P<0.001). Their KHEI score was also lower than that of their lowest quartile counterparts (68.8 vs. 73.4, P<0.001). Regarding obesity, the mean BMI and WC were 24.1 kg/m2 and 82.3 cm, and the prevalence of obesity and abdominal obesity were 35.4% and 30.2%, respectively. There were no significant differences in the means and distribution of obesity indicators by quartiles of UPF consumption.

Participant characteristics according to sex-specific quartiles of dietary energy contribution of ultra-processed food (n=6,894)

Associations between dietary energy contribution of UPF and obesity

Table 2 shows the results of associations of UPF consumption with obesity indicators. UPF consumption was associated with higher BMI and WC and higher odds of having obesity and abdominal obesity. In the multivariable analyses adjusted for sociodemographic characteristics, health-related behaviors, and family history of diseases (model 2), the highest quartile group of UPF consumption had 0.36 kg/m2 higher BMI, 1.03 cm higher WC, and 24% and 34% higher odds of having obesity and abdominal obesity, respectively, with dose-response associations (all P trend <0.01). Similar associations were observed when UPF consumption was treated as a continuous variable. Each 10%-point increase in dietary energy contribution of UPF was associated with 0.13 kg/m2 higher BMI, 0.39 cm higher WC, and 7% and 11% higher odds of having obesity and abdominal obesity, respectively. However, the magnitude of positive associations between UPF consumption and obesity indicators was substantially attenuated after adjusting for total energy intake and KHEI score and statistical significance was lost in some analyses (model 3 and 4).

Associations between dietary energy contribution of ultra-processed food and obesity (n=6,894)

Associations between dietary energy contribution of UPF and obesity by sex, age, and overall diet quality

Table 3 shows the results of subgroup analyses by sex, age group, and overall diet quality on the associations between UPF consumption and obesity indicators, after adjustment for sociodemographic characteristics, health-related behaviors, and family history of diseases. In both males and females, significant dose-response relations were found for all the obesity indicators (all P trend <0.05), except for obesity in males (P trend=0.120). For males and females, a 10%-increase in UPF consumption was associated with higher BMI (both 0.15 kg/m2) and WC (0.55 and 0.37 cm, respectively), and higher odds of having obesity (only in females, OR, 1.11) and abdominal obesity (OR, 1.13 in males; OR, 1.11 in females). Such positive associations of UPF consumption with obesity indicators were found in both age groups (30–49 and 50–64 years), but were slightly stronger among those aged 30 to 49 years than those aged 50 to 64 years. For example, the BMI per 10%-increase in UPF consumption was 0.16 kg/m2 higher in those aged 30 to 49 years than 0.13 kg/m2 in those aged 50 to 64 years. In subgroup analyses by overall dietary quality, each 10%-increase of UPF consumption among those with low dietary quality had a 0.14 kg/m2 higher BMI and 0.48 cm higher WC, 10% and 13% higher odds of having obesity and abdominal obesity. However, such associations were attenuated or disappeared in the high-quality diet group.

Associations between dietary energy contribution of ultra-processed food and obesity, stratified by sex, age, and overall diet quality (n=6,894)

DISCUSSION

This cross-sectional analysis of the CMERC cohort study baseline data showed that higher consumption of UPF was associated with higher BMI and WC and higher odds of having obesity and abdominal obesity among Koreans after adjusting for sociodemographic characteristics, health-related behaviors, and family history of diseases. The strength of the association between UPF consumption and each obesity indicator was similar regardless of sex and age group, but there was a subtle difference in subgroup analysis by overall diet quality. The positive association of UPF consumption with each obesity indicator was more clearly observed in those with low quality diet. Furthermore, the association with each obesity indicator was attenuated after further adjustments for total energy intake and overall diet quality score, in addition to sociodemographic characteristics, health-related behaviors, and family history of diseases. Our findings, indicating that higher consumption of UPF was associated with higher obesity indicators, are in line with those of previous studies. An ecological study using nationally representative data from 19 European countries showed that household availability of UPF is positively associated with prevalence of obesity among adults [18]. Another study that analyzed associations between ultra-processed products sales per capita and population-level BMI trajectories across 80 countries found that increases in ultra-processed products volume sales per capita are positively associated with adult BMI trajectories [40]. Similar associations were also found in other studies using individual dietary assessment data [17,19-26]. A cross-sectional study of the Unite States adults aged 20 to 64 years participating in the 2005 to 2014 National Health and Nutrition Examination Survey demonstrated that those in the highest quintile of energy contribution of UPF for total energy (≥74.2%) had 1.61 kg/m2 higher BMI, 4.07 cm greater WC, 1.48 times higher odds of having obesity (BMI ≥25.0 kg/m2), and 1.62 times higher odds of abdominal obesity, compared with those in the lowest quintile (≤36.5%), after adjusting for sex, age, race, education, income, marriage, smoking, and physical activity [20]. Another study of Brazilians with relatively low dietary energy contribution of UPF found similar results of significantly higher BMI and WC (0.80 kg/m2 and 1.71 cm, respectively), and greater chances of having obesity (BMI ≥30.0 kg/m2; OR, 1.41) and abdominal obesity (OR, 1.41), when those in the lowest quartile (<16%) were compared with adults in the highest quartile of UPF consumption (>29%), independent of sex, age, race, income, smoking, physical activity, and comorbidities [19]. Evidence of the detrimental effects of UPF on obesity indicators were further strengthened by cohort studies [22,24-26] and clinical trials [41]. Higher consumption of UPF was strongly associated with increased weight gain and showed higher risks of overweight and obesity [22,24-26]. Some cohort studies investigated whether these associations with obesity indicators were independent of other dietary factors of obesity (e.g., dietary intake of total energy, dietary fiber, ω-3 fatty acid, fruit and vegetable, and overall diet quality) [22,24,26]. They showed that the associations remained unchanged even after further adjusting for other dietary factors. The adverse impact of UPF on obesity was also found in a 2-week crossover randomized clinical trial of healthy adults [41]. In this trial, participants’ energy intake was higher, and their body weight and body fat mass increased during the ultra-processed diet but decreased during the unprocessed diet.

The strength of the associations between UPF consumption and obesity was smaller than those observed in the United States, Canadian, and Australian adults [20,21,23]. This can be partially explained by that the UPF consumption in our study has a lower and narrow distribution, compared to those in the previous studies. In addition, in our study, the associations between UPF consumption and obesity were attenuated after adjusting for total energy intake and overall dietary quality. Total energy intake and overall dietary quality may, at least partially, medicate the association between UPF consumption and obesity.

The mechanisms explaining the association between UPF consumption and obesity are not fully elucidated, but it may be partly understood by their obesogenic nutritional features, physical and structural characteristics, food additives, and packaging materials. As widely known, the design of UPF as industrial products, are focused on profitability, convenience, and high palatability, and they are made from derived food and additive substances, with none or little whole food [12,13]. Thus, these foods generally have poor nutritional value, are high in energy, refined carbohydrate, added sugars, total fat and saturated fat, and low in dietary fiber, minerals, and vitamins [12,42]. Consumption of these foods is associated with excess caloric intake, poor dietary intakes, as well as a low diet quality [39,41,43]. Furthermore, UPF themselves may contribute to overeating; that is, foods that are easily consumed anywhere and at any time, and that may alter the consumers’ eating behavior, promote inattentive eating, thereby leading to overconsumption [44]. Furthermore, chronic consumption of foods high in refined sugars and fat causes changes in the brain’s reward pathway, leading to food addiction and overeating [45]. Moreover, through industrial processing, including moisture removal and heating, these foods undergo physical and structural changes (i.e., reduced total volume and softened textured). Therefore, these changes may lead to rapid eating rate, which interrupts the mechanisms controlling satiety, inducing excess caloric intake [44]. A recent review suggested that dietary exposure of food additives (e.g., flavor, sweetener, emulsifier, stabilizer, thickener, preservative) can increase glucose intolerance, and alter the gut microbiota, resulting in increased weight gain and increased risk of metabolic syndrome [46]. Another review demonstrated that food contaminants which are leached out from food packaging materials (e.g., phthalates, bisphenol-A) might disrupt the hormonal control regarding hunger and satiety, alter individual’s dietary intake, and thus lead to weight gain and fat storage [47].

The present study has several strengths. Most previous studies which examined the association between UPF consumption and obesity assessed dietary intake using 24-hour recall [17,20,21,23,24] or used food purchase or sales data as a proxy indicator of food consumption [18,40]. The dietary exposures measured in those studies may not represent individuals’ usual consumption of UPF, with the possibility of biased result. However, the present study collected dietary information using a validated FFQ [34] which is generally recommended for long-term diet assessment [48], and thus could investigate the association of the usual consumption of UPF with obesity. Moreover, some previous studies used estimates of obesity prevalence from national surveys [18], or defined obesity using national BMI estimates derived from population-based studies [40], or partially used self-reported height and weight [21]. However, we used anthropometric values measured by a standardized method, and the stadiometers and scales used during the entire study period at the two research clinics were calibrated regularly according to a standardized protocol [32]. Third, we identified UPF among FFQ items, according to the NOVA food classification. The NOVA classification system had been widely applied in the research of highly processed foods [12,13]. Finally, in most epidemiologic studies [17,18,20, 21,23,25], potential confounders were considered when examining the association of UPF and obesity, but no independent association was determined for other dietary factors known to be associated with obesity. Our study could examine whether the associations between UPF consumption and obesity persisted after further adjustment for total energy and overall dietary quality, and also provide the subgroup analysis results by sex, age groups, and overall diet quality.

Nevertheless, several limitations must be considered. As a cross-sectional study, our findings cannot support the causal relationship between UPF consumption and obesity indicators. Next, although the FFQ used is acceptable to assess usual dietary intake, it was not designed to classify foods based on the food processing status. Based on the Food and Agriculture Organization of the United Nations guidelines [49], diverse information such as ingredient list, preparation methods (for foods prepared at home or outside-the home), as well as brand and product name (for foods produced in industrial settings) are needed, in order to classify foods by the nature, extent, and purpose of food processing. Open-ended dietary assessment such as the 24-hour recall have been suggested as the most appropriate method to obtain information on food processing. However, the CMERC cohort study assessed dietary intake using FFQ, and thus UPF was identified by applying the NOVA classification to each food item description in the FFQ. Therefore, the present study cannot rule out the possibility of misclassification in assessing UPF consumption. In addition, self-reported dietary data are subject to misreporting from social desirability bias. This tendency is more frequently observed for foods considered unhealthy and in individuals with obesity [21], which would result in attenuation of the association of UPF consumption with obesity indicators among our population. Finally, although we considered diverse confounders, the potential of residual confounding exists.

In summary, our findings add to the growing evidence indicating that a higher consumption of UPF is associated with higher BMI and WC as well as higher odds of having obesity and abdominal obesity after adjusting for potential confounders, with a dose-response relationship. When additionally adjusting for dietary factors, such associations were attenuated. These findings show that even in a population with relatively low consumption of UPF, the consumption of UPF is associated with obesity. Currently, the UPF types are diverse, with increasing sales and transition towards more highly processed diets observed worldwide [7,8,11,27,28], although with variations across regions and countries. Further studies are needed to better understand the underlying mechanisms of UPF consumption and health outcomes as well as the impact of UPF on various health outcomes. Furthermore, strategies and actions to reduce UPF consumption and enhance the consumption of less processed foods should be considered.

Notes

CONFLICTS OF INTEREST

Dae Jung Kim has been associate editor of the Diabetes & Metabolism Journal since 2022. Hyeon Chang Kim has been statistical advisor of the Diabetes & Metabolism Journal since 2021. They were not involved in the review process of this article. Otherwise, there was no conflict of interest.

AUTHOR CONTRIBUTIONS

Conception or design: J.S.S., H.C.K.

Acquisition, analysis, or interpretation of data: J.S.S., K.H.H., D.J.K., H.C.K.

Drafting the work or revising: J.S.S., H.C.K.

Final approval of the manuscript: J.S.S., K.H.H., D.J.K., H.C.K.

FUNDING

This work was supported by Basic Science Research Program through the National Research Foundation of Korea (NRF) funded by the Ministry of Education (NRF-2020R1I1A1-A01064904) and the Basic Research Program via the National Research Foundation of Korea funded by MSIT (NRF-2019R1-A4A1028155). The funders had no role in study design, data collection and analysis, decision to publish, or preparation of the manuscript.

Acknowledgements

None

References

1. Kelly T, Yang W, Chen CS, Reynolds K, He J. Global burden of obesity in 2005 and projections to 2030. Int J Obes (Lond) 2008;32:1431–7.
2. Williams EP, Mesidor M, Winters K, Dubbert PM, Wyatt SB. Overweight and obesity: prevalence, consequences, and causes of a growing public health problem. Curr Obes Rep 2015;4:363–70.
3. Kim DS, Scherer PE. Obesity, diabetes, and increased cancer progression. Diabetes Metab J 2021;45:799–812.
4. GBD 2015 Obesity Collaborators, Afshin A, Forouzanfar MH, Reitsma MB, Sur P, Estep K, et al. Health effects of overweight and obesity in 195 countries over 25 years. N Engl J Med 2017;377:13–27.
5. Kim Y, Nho SJ, Woo G, Kim H, Park S, Kim Y, et al. Trends in the prevalence and management of major metabolic risk factors for chronic disease over 20 years: findings from the 1998-2018 Korea National Health and Nutrition Examination Survey. Epidemiol Health 2021;43e2021028.
6. Ng M, Fleming T, Robinson M, Thomson B, Graetz N, Margono C, et al. Global, regional, and national prevalence of overweight and obesity in children and adults during 1980-2013: a systematic analysis for the Global Burden of Disease Study 2013. Lancet 2014;384:766–81.
7. Baker P, Friel S. Food systems transformations, ultra-processed food markets and the nutrition transition in Asia. Global Health 2016;12:80.
8. Baker P, Machado P, Santos T, Sievert K, Backholer K, Hadjikakou M, et al. Ultra-processed foods and the nutrition transition: global, regional and national trends, food systems transformations and political economy drivers. Obes Rev 2020;21e13126.
9. James P, Seward MW, James O’Malley A, Subramanian SV, Block JP. Changes in the food environment over time: examining 40 years of data in the Framingham Heart Study. Int J Behav Nutr Phys Act 2017;14:84.
10. Kim S: Changes in food consumption in Korea. Available from: https://ap.fftc.org.tw/article/1355 (updated 2018 Nov 14).
11. Monteiro CA, Moubarac JC, Cannon G, Ng SW, Popkin B. Ultra-processed products are becoming dominant in the global food system. Obes Rev 2013;14 Suppl 2:21–8.
12. Monteiro CA, Cannon G, Levy RB, Moubarac JC, Louzada ML, Rauber F, et al. Ultra-processed foods: what they are and how to identify them. Public Health Nutr 2019;22:936–41.
13. Monteiro CA, Cannon G, Moubarac JC, Levy RB, Louzada ML, Jaime PC. The UN decade of nutrition, the NOVA food classification and the trouble with ultra-processing. Public Health Nutr 2018;21:5–17.
14. Elizabeth L, Machado P, Zinocker M, Baker P, Lawrence M. Ultra-processed foods and health outcomes: a narrative review. Nutrients 2020;12:1955.
15. Lawrence MA, Baker PI. Ultra-processed food and adverse health outcomes. BMJ 2019;365:l2289.
16. Adams J, White M. Characterisation of UK diets according to degree of food processing and associations with socio-demographics and obesity: cross-sectional analysis of UK National Diet and Nutrition Survey (2008-12). Int J Behav Nutr Phys Act 2015;12:160.
17. Sung H, Park JM, Oh SU, Ha K, Joung H. Consumption of ultra-processed foods increases the likelihood of having obesity in Korean women. Nutrients 2021;13:698.
18. Monteiro CA, Moubarac JC, Levy RB, Canella DS, Louzada ML, Cannon G. Household availability of ultra-processed foods and obesity in nineteen European countries. Public Health Nutr 2018;21:18–26.
19. Silva FM, Giatti L, de Figueiredo RC, Molina MD, de Oliveira Cardoso L, Duncan BB, et al. Consumption of ultra-processed food and obesity: cross sectional results from the Brazilian Longitudinal Study of Adult Health (ELSA-Brasil) cohort (2008-2010). Public Health Nutr 2018;21:2271–9.
20. Juul F, Martinez-Steele E, Parekh N, Monteiro CA, Chang VW. Ultra-processed food consumption and excess weight among US adults. Br J Nutr 2018;120:90–100.
21. Nardocci M, Polsky JY, Moubarac JC. Consumption of ultraprocessed foods is associated with obesity, diabetes and hypertension in Canadian adults. Can J Public Health 2021;112:421–9.
22. Sandoval-Insausti H, Jimenez-Onsurbe M, Donat-Vargas C, Rey-Garcia J, Banegas JR, Rodriguez-Artalejo F, et al. Ultraprocessed food consumption is associated with abdominal obesity: a prospective cohort study in older adults. Nutrients 2020;12:2368.
23. Machado PP, Steele EM, Levy RB, da Costa Louzada ML, Rangan A, Woods J, et al. Ultra-processed food consumption and obesity in the Australian adult population. Nutr Diabetes 2020;10:39.
24. Beslay M, Srour B, Mejean C, Alles B, Fiolet T, Debras C, et al. Ultra-processed food intake in association with BMI change and risk of overweight and obesity: a prospective analysis of the French NutriNet-Sante cohort. PLoS Med 2020;17e1003256.
25. Rauber F, Chang K, Vamos EP, da Costa Louzada ML, Monteiro CA, Millett C, et al. Ultra-processed food consumption and risk of obesity: a prospective cohort study of UK Biobank. Eur J Nutr 2021;60:2169–80.
26. Mendonça RD, Pimenta AM, Gea A, de la Fuente-Arrillaga C, Martinez-Gonzalez MA, Lopes AC, et al. Ultraprocessed food consumption and risk of overweight and obesity: the University of Navarra Follow-Up (SUN) cohort study. Am J Clin Nutr 2016;104:1433–40.
27. Shim JS, Shim SY, Cha HJ, Kim J, Kim HC. Socioeconomic characteristics and trends in the consumption of ultra-processed foods in Korea from 2010 to 2018. Nutrients 2021;13:1120.
28. Moubarac JC, Batal M, Martins AP, Claro R, Levy RB, Cannon G, et al. Processed and ultra-processed food products: consumption trends in Canada from 1938 to 2011. Can J Diet Pract Res 2014;75:15–21.
29. Martinez Steele E, Juul F, Neri D, Rauber F, Monteiro CA. Dietary share of ultra-processed foods and metabolic syndrome in the US adult population. Prev Med 2019;125:40–8.
30. Slimani N, Deharveng G, Southgate DA, Biessy C, Chajes V, van Bakel MM, et al. Contribution of highly industrially processed foods to the nutrient intakes and patterns of middle-aged populations in the European Prospective Investigation into Cancer and Nutrition study. Eur J Clin Nutr 2009;63 Suppl 4:S206–25.
31. Shim JS, Song BM, Lee JH, Lee SW, Park JH, Choi DP, et al. Cohort profile: the Cardiovascular and Metabolic Diseases Etiology Research Center cohort in Korea. Yonsei Med J 2019;60:804–10.
32. Shim JS, Song BM, Lee JH, Lee SW, Park JH, Choi DP, et al. Cardiovascular and Metabolic Diseases Etiology Research Center (CMERC) cohort: study protocol and results of the first 3 years of enrollment. Epidemiol Health 2017;39e2017016.
33. Yun SH, Shim JS, Kweon S, Oh K. Development of a food frequency questionnaire for the Korea National Health and Nutrition Examination Survey: data from the fourth Korea National Health and Nutrition Examination Survey (KNHANES IV). Korean J Nutr 2013;46:186–96.
34. Kim DW, Song S, Lee JE, Oh K, Shim J, Kweon S, et al. Reproducibility and validity of an FFQ developed for the Korea National Health and Nutrition Examination Survey (KNHANES). Public Health Nutr 2015;18:1369–77.
35. Ministry of Health and Welfare, ; Korea Centers for Disease Control and Prevention. Guidelines for nutrition survey: Korea National Health and Nutrition Examination Survey 6th (2013-2015) Cheongju: KCDC; 2015.
36. Korean Society for the Study of Obesity. Quick reference guideline 2020 Seoul: Committee of Clinical Guidelines, Korean Society for the Study of Obesity; 2020.
37. Chun MY. Validity and reliability of Korean version of international physical activity questionnaire short form in the elderly. Korean J Fam Med 2012;33:144–51.
38. Yun S, Oh K. Development and status of Korean Healthy Eating Index for adults based on the Korea National Health and Nutrition Examination Survey. Public Health Wkly Rep 2018;11:1764–72.
39. Shim JS, Shim SY, Cha HJ, Kim J, Kim HC. Association between ultra-processed food consumption and dietary intake and diet quality in Korean adults. J Acad Nutr Diet 2022;122:583–94.
40. Vandevijvere S, Jaacks LM, Monteiro CA, Moubarac JC, Girling-Butcher M, Lee AC, et al. Global trends in ultraprocessed food and drink product sales and their association with adult body mass index trajectories. Obes Rev 2019;20 Suppl 2:10–9.
41. Hall KD, Ayuketah A, Brychta R, Cai H, Cassimatis T, Chen KY, et al. Ultra-processed diets cause excess calorie intake and weight gain: an inpatient randomized controlled trial of ad libitum food intake. Cell Metab 2019;30:67–77.
42. Spiteri SA, Olstad DL, Woods JL. Nutritional quality of new food products released into the Australian retail food market in 2015: is the food industry part of the solution? BMC Public Health 2018;18:222.
43. Rauber F, Louzada ML, Martinez Steele E, Rezende LF, Millett C, Monteiro CA, et al. Ultra-processed foods and excessive free sugar intake in the UK: a nationally representative cross-sectional study. BMJ Open 2019;9e027546.
44. Poti JM, Braga B, Qin B. Ultra-processed food intake and obesity: what really matters for health-processing or nutrient content? Curr Obes Rep 2017;6:420–31.
45. Carter A, Hendrikse J, Lee N, Yucel M, Verdejo-Garcia A, Andrews ZB, et al. The neurobiology of “food addiction” and its implications for obesity treatment and policy. Annu Rev Nutr 2016;36:105–28.
46. Paula Neto HA, Ausina P, Gomez LS, Leandro JG, Zancan P, Sola-Penna M. Effects of food additives on immune cells as contributors to body weight gain and immune-mediated metabolic dysregulation. Front Immunol 2017;8:1478.
47. Di Ciaula A, Portincasa P. Diet and contaminants: driving the rise to obesity epidemics? Curr Med Chem 2019;26:3471–82.
48. Shim JS, Oh K, Kim HC. Dietary assessment methods in epidemiologic studies. Epidemiol Health 2014;36e2014009.
49. Food and Agriculture Organization of the United Nations (FAO). Guidelines on the collection of information on food processing through food consumption surveys Rome: FAO; 2015.

Article information Continued

Table 1.

Participant characteristics according to sex-specific quartiles of dietary energy contribution of ultra-processed food (n=6,894)

Characteristic Total Sex-specific quartiles of UPF consumption, % Tea
P valueb
Quartile 1 Quartile 2 Quartile 3 Quartile 4
Number 6,894 1,724 1,730 1,717 1,723
Female sex 4,523 (65.6) 1,130 (65.6) 1,136 (65.7) 1,128 (65.7) 1,129 (65.5) -
Age, yr 51.7±5.6 54.7±6.8 53.0±8.0 51.0±8.6 47.9±9.3 <0.001
 30–49 2,317 (33.6) 315 (18.3) 473 (27.3) 649 (37.8) 880 (51.1) <0.001
 50–64 4,577 (66.4) 1,409 (81.7) 1,257 (72.6) 1,068 (62.2) 843 (48.9)
Economic status
 High 2,361 (34.3) 609 (35.3) 660 (38.2) 575 (33.5) 517 (30.0) <0.001
 Middle 3,120 (45.3) 762 (44.2) 756 (43.7) 816 (47.5) 786 (45.6)
 Low 1,413 (20.5) 353 (20.5) 314 (18.2) 326 (19.0) 420 (24.4)
Marital status
 Married 6,019 (87.3) 1,529 (88.7) 1,551 (89.6) 1,491 (86.8) 1,448 (84.0) <0.001
 Unmarried 875 (12.7) 195 (11.3) 179 (10.4) 226 (13.2) 275 (16.0)
Smoking
 Non-smoker 4,796 (69.6) 1,289 (74.8) 1,248 (72.1) 1,194 (69.5) 1,065 (61.8) <0.001
 Ex-smoker 1,239 (18.0) 333 (19.3) 342 (19.8) 291 (17.0) 273 (15.8)
 Current smoker 859 (12.5) 102 (5.9) 140 (8.1) 232 (13.5) 385 (22.3)
Drinking
 Non-drinker 1,669 (24.2) 528 (30.6) 446 (25.8) 378 (22.0) 317 (18.4) <0.001
 Ex-drinker 260 (3.8) 88 (5.1) 66 (3.8) 50 (2.9) 56 (3.2)
 Current drinker 4,965 (72.0) 1,108 (64.3) 1,218 (70.4) 1,289 (75.1) 1,350 (78.4)
Sitting time, hr/day 6.1±3.2 5.9±3.0 5.9±3.0 6.2±3.3 6.4±3.4 0.001
Family history of diseasesc 4,128 (59.9) 1,039 (60.3) 1,033 (59.7) 1,027 (59.8) 1,029 (59.7) 0.985
BMI, kg/m2 24.1±3.0 24.0±2.8 24.1±3.0 24.2±.1 24.1±3.2 0.312
Obesityd 2,444 (35.4) 583 (33.8) 615 (35.6) 618 (36.0) 628 (36.4) 0.393
Waist circumference, cm 82.3±9.1 82.4±8.5 82.4±9.1 82.5±9.0 82.1±9.6 0.584
Abdominal obesitye 2,085 (30.2) 488 (28.3) 544 (31.4) 544 (31.7) 509 (29.5) 0.096
UPF consumption, %TE 17.9±10.2 6.7±3.2 13.7±3.3 20.0±4.0 31.1±7.7 <0.001
Total energy, kcal/day 2,176±640 1,968±558 2,184±612 2,259±665 2,293±667 <0.001
Carbohydrate, % TE 69.4±7.0 71.4±6.9 69.2±6.7 68.7±6.9 68.4±7.1 <0.001
Protein, % TE 13.3±2.2 13.2±2.2 13.6±2.1 13.4±2.2 12.9±2.3 <0.001
Fat, % TE 17.3±5.3 15.5±5.2 17.2±5.0 17.9±5.1 18.7±5.2 <0.001
SFA, % TE 4.7±1.6 3.8±1.3 4.5±1.3 5.0±1.5 5.6±1.7 <0.001
Cholesterol, mgq 269.3±156.7 226.7±156.4 274.4±155.6 289.2±159.7 287±146.7 <0.001
Dietary fiber, g/day 25.1±9.7 26.1±10.1 26.9±10 25.5±9.4 21.9±8.4 <0.001
Calcium, mg/day 539.2±214.9 458.8±195.8 547.1±208.8 575.4±216.2 575.6±216.9 <0.001
Potassium, mg/day 3,352±1,189 3,243±1,238 3,491±1,234 3,458±1,185 3,214±1,066 <0.001
Sodium, mg/day 3,531±1,584 3,236±1,544 3,653±1,588 3,742±1,662 3,495±1,491 <0.001
Vitamin A, µgRAE 713.5±342.5 690.9±354.2 759.2±361.3 737.7±332.6 666.3±312.1 <0.001
Thiamin, mg/day 2.0±0.6 2.0±0.6 2.1±0.6 2.1±0.6 1.9±0.6 <0.001
Riboflavin, mg/day 1.4±0.6 1.2±0.5 1.4±0.6 1.5±0.6 1.5±0.6 <0.001
Vitamin C, mg/day 153.3±88.2 166.5±97 164.7±88.7 152.9±83.8 129.0±76.8 <0.001
KHEI score (0–100) 72.8±11.2 73.4±10.2 75.5±9.9 73.7±10.9 68.8±12.4 <0.001
 Adequacy (0–55) 38.0±9.6 37.4±9.1 39.9±9.2 39.0±9.7 35.8±10.1 <0.001
 Moderation (0–30) 24.8±4.6 26.8±3.3 25.5±3.9 24.4±4.6 22.6±5.4 <0.001
 Balance (0–15) 10.0±3.7 9.2±4.0 10.1±3.6 10.3±3.5 10.5±3.5 <0.001

Values are presented as number (%) or mean±standard deviation.

UPF, ultra-processed food; TE, total energy intake; BMI, body mass index; SFA, saturated fatty acid; KHEI, Korean Healthy Eating Index.

a

The sex-specific cutoffs of UPF consumption (% TE) were 13.9%, 21.2%, and 28.4% in male and 9.0%, 14.5%, and 21.2% in female,

b

P values for chi-square test or analysis of variance,

c

Defined as their parents and/or siblings’ diagnosis with or death from hypertension, myocardial infarction, stroke, or diabetes,

d

Defined as a BMI ≥25.0 kg/m2,

e

Defined as a waist circumference ≥90 cm for male and ≥85 cm for female, respectively.

Table 2.

Associations between dietary energy contribution of ultra-processed food and obesity (n=6,894)

Variable Sex-specific quartiles of UPF consumption, % TEa
Per UPF consumption, 10% TE
Quartile 1 Quartile 2 Quartile 3 Quartile 4 P trendb β or OR P valuec
BMI, kg/m2
 Model 1 0 0.15 (–0.05 to 0.35) 0.34 (0.14 to 0.54) 0.36 (0.16 to 0.57) <0.001 0.14 (0.07 to 0.22) <0.001
 Model 2 0 0.17 (–0.02 to 0.37) 0.35 (0.15 to 0.55) 0.36 (0.15 to 0.56) <0.001 0.13 (0.05 to 0.21) <0.001
 Model 3 0 0.11 (–0.09 to 0.31) 0.27 (0.07 to 0.47) 0.27 (0.07 to 0.48) 0.004 0.10 (0.02 to 0.18) 0.009
 Model 4 0 0.13 (–0.06 to 0.33) 0.26 (0.06 to 0.46) 0.18 (–0.03 to 0.39) 0.048 0.05 (–0.02 to 0.13) 0.180
Obesityd
 Model 1 1 1.12 (0.97 to 1.29) 1.18 (1.02 to 1.36) 1.26 (1.08 to 1.46) 0.002 1.08 (1.03 to 1.14) 0.004
 Model 2 1 1.13 (0.98 to 1.30) 1.18 (1.02 to 1.36) 1.24 (1.07 to 1.45) 0.005 1.07 (1.02 to 1.14) 0.012
 Model 3 1 1.08 (0.94 to 1.26) 1.12 (0.97 to 1.30) 1.18 (1.01 to 1.38) 0.032 1.06 (1.00 to 1.12) 0.058
 Model 4 1 1.10 (0.95 to 1.27) 1.11 (0.96 to 1.29) 1.11 (0.95 to 1.30) 0.186 1.02 (0.97 to 1.08) 0.434
Waist circumference, cm
 Model 1 0 0.43 (–0.11 to 0.96) 0.96 (0.42 to 1.50) 1.18 (0.62 to 1.73) <0.001 0.47 (0.27 to 0.68) <0.001
 Model 2 0 0.46 (–0.08 to 0.99) 0.92 (0.38 to 1.46) 1.03 (0.46 to 1.60) <0.001 0.39 (0.18 to 0.60) <0.001
 Model 3 0 0.28 (–0.26 to 0.81) 0.69 (0.14 to 1.24) 0.79 (0.22 to 1.36) 0.002 0.31 (0.10 to 0.52) 0.004
 Model 4 0 0.36 (–0.18 to 0.89) 0.66 (0.11 to 1.20) 0.48 (–0.09 to 1.06) 0.056 0.15 (–0.07 to 0.36) 0.179
Abdominal obesitye
 Model 1 1 1.25 (1.08 to 1.45) 1.37 (1.18 to 1.59) 1.38 (1.18 to 1.61) <0.001 1.12 (1.06 to 1.19) <0.001
 Model 2 1 1.27 (1.09 to 1.47) 1.36 (1.17 to 1.59) 1.34 (1.14 to 1.57) <0.001 1.11 (1.04 to 1.17) <0.001
 Model 3 1 1.23 (1.06 to 1.43) 1.31 (1.12 to 1.53) 1.28 (1.09 to 1.51) 0.002 1.09 (1.03 to 1.16) 0.004
 Model 4 1 1.25 (1.07 to 1.45) 1.30 (1.11 to 1.51) 1.18 (1.00 to 1.38) 0.040 1.04 (0.98 to 1.11) 0.165

Values are presented as β or OR (95% confidence interval). Model 1: adjusted for sex, age, and research center; Model 2: adjusted for Model 1 plus economic status, marital status, smoking, drinking, sitting time, family history of diseases; Model 3: adjusted for Model 2 plus total energy intake; Model 4: adjusted for Model 3 plus Korean Healthy Eating Index.

UPF, ultra-processed food; TE, total energy intake; OR, odds ratio; BMI, body mass index.

a

The sex-specific cutoffs of UPF consumption (% TE) were 13.9%, 21.2%, and 28.4% in male and 9.0%, 14.5%, and 21.2% for female,

b

P for the linear trends by quartiles of sex-specific quartiles of UPF consumption (% TE),

c

Odds ratio for a 10 % increase in UPF consumption (% TE),

d

Defined as a BMI ≥25.0 kg/m2,

e

Defined as a waist circumference ≥90 cm for male and ≥85 cm for female, respectively.

Table 3.

Associations between dietary energy contribution of ultra-processed food and obesity, stratified by sex, age, and overall diet quality (n=6,894)

Variable Mean±SD or n (%) Sex-specific quartiles of UPF consumption, % TEa
Per UPF consumption, 10% TE
Quartile 1 Quartile 2 Quartile 3 Quartile 4 P trendb β or OR P valuec
Male sex
 BMI, kg/m2 25.1±2.8 0 0.39 (0.06 to 0.71) 0.18 (–0.15 to 0.51) 0.52 (0.18 to 0.87) 0.014 0.15 (0.03 to 0.26) 0.011
 Obesityd 1,174 (49.5) 1 1.26 (1.00 to 1.58) 1.04 (0.82 to 1.32) 1.31 (1.02 to 1.67) 0.120 1.06 (0.98 to 1.15) 0.176
 Waist circumference, cm 87.7±7.8 0 0.92 (0.04 to 1.80) 0.72 (–0.19 to 1.62) 1.57 (0.63 to 2.51) 0.003 0.55 (0.24 to 0.87) <0.001
 Abdominal obesitye 900 (38.0) 1 1.35 (1.06 to 1.72) 1.29 (1.00 to 1.65) 1.45 (1.12 to 1.88) 0.010 1.13 (1.04 to 1.23) 0.004
Female sex
 BMI, kg/m2 23.6±3.0 0 0.07 (–0.18 to 0.31) 0.46 (0.21 to 0.71) 0.36 (0.10 to 0.62) <0.001 0.15 (0.05 to 0.25) 0.004
 Obesity 1,270 (28.1) 1 1.05 (0.87 to 1.27) 1.30 (1.08 to 1.57) 1.26 (1.03 to 1.54) 0.004 1.11 (1.03 to 1.20) 0.009
 Waist circumference, cm 79.5±8.4 0 0.24 (–0.42 to 0.90) 1.10 (0.43 to 1.78) 1.03 (0.32 to 1.73) <0.001 0.37 (0.10 to 0.64) 0.008
 Abdominal obesity 1,185 (26.2) 1 1.22 (1.01 to 1.48) 1.44 (1.19 to 1.75) 1.34 (1.09 to 1.66) 0.001 1.11 (1.02 to 1.20) 0.013
30–49 years
 BMI, kg/m2 23.9±3.3 0 0.19 (–0.26 to 0.63) 0.47 (0.05 to 0.90) 0.52 (0.10 to 0.94) 0.007 0.16 (0.03 to 0.30) 0.014
 Obesity 788 (34.0) 1 1.11 (0.80 to 1.53) 1.30 (0.96 to 1.76) 1.39 (1.03 to 1.87) 0.016 1.10 (1.00 to 1.21) 0.038
 Waist circumference, cm 80.9±9.6 0 0.19 (–1.00 to 1.34) 0.85 (–0.25 to 1.96) 1.16 (0.08 to 2.24) 0.011 0.44 (0.10 to 0.78) 0.011
 Abdominal obesity 570 (24.6) 1 1.09 (0.77 to 1.55) 1.17 (0.84 to 1.63) 1.30 (0.94 to 1.79) 0.082 1.12 (1.01 to 1.23) 0.027
50–64 years
 BMI, kg/m2 24.2±2.9 0 0.19 (–0.03 to 0.40) 0.31 (0.08 to 0.54) 0.34 (0.09 to 0.59) 0.002 0.13 (0.04 to 0.22) 0.007
 Obesity 1,656 (36.2) 1 1.14 (0.97 to 1.34) 1.15 (0.97 to 1.36) 1.21 (1.01 to 1.46) 0.040 1.07 (1.00 to 1.15) 0.064
 Waist circumference, cm 83.1±8.7 0 0.58 (–0.01 to 1.18) 1.00 (0.36 to 1.62) 1.00 (0.31 to 1.68) <0.001 0.38 (0.12 to 0.64) 0.004
 Abdominal obesity 1,515 (33.1) 1 1.32 (1.11 to 1.56) 1.46 (1.22 to 1.74) 1.32 (1.08 to 1.60) <0.001 1.10 (1.03 to 1.18) 0.008
Low diet qualityf
 BMI, kg/m2 24.4±3.2 0 0.25 (–0.06 to 0.56) 0.31 (0.00 to 0.61) 0.46 (0.16 to 0.76) 0.003 0.14 (0.04 to 0.24) 0.006
 Obesity 1,355 (39.2) 1 1.25 (1.01 to 1.55) 1.28 (1.04 to 1.58) 1.42 (1.16 to 1.75) 0.001 1.10 (1.03 to 1.18) 0.007
 Waist circumference, cm 84.5±9.4 0 0.47 (–0.36 to 1.30) 0.64 (–0.17 to 1.46) 1.24 (0.44 to 2.05) 0.003 0.48 (0.20 to 0.75) <0.001
 Abdominal obesity 1,161 (33.6) 1 1.22 (0.98 to 1.52) 1.23 (0.99 to 1.52) 1.40 (1.14 to 1.74) 0.003 1.13 (1.05 to 1.21) 0.001
High diet quality
 BMI, kg/m2 23.8±2.9 0 0.13 (–0.12 to 0.38) 0.40 (0.14 to 0.67) 0.18 (–0.11 to 0.48) 0.040 0.10 (–0.02 to 0.23) 0.096
 Obesity 1,089 (31.6) 1 1.03 (0.84 to 1.26) 1.10 (0.89 to 1.36) 1.05 (0.83 to 1.32) 0.520 1.03 (0.94 to 1.14) 0.053
 Waist circumference, cm 81.2±8.6 0 0.54 (–0.15 to 1.24) 1.24 (0.51 to 1.96) 0.57 (–0.24 to 1.38) 0.029 0.18 (–0.16 to 0.52) 0.303
 Abdominal obesity 924 (26.8) 1 1.36 (1.10 to 1.68) 1.56 (1.26 to 1.95) 1.15 (0.89 to 1.48) 0.051 1.04 (0.94 to 1.15) 0.435

Values are presented as β or OR (95% confidence interval). All analyses adjusted for sex (not in sex-stratified analyses), age, research center, economic status, marital status, smoking, drinking, sitting time, family history of diseases.

SD, standard deviation; UPF, ultra-processed food; TE, total energy intake; OR, odds ratio; BMI, body mass index.

a

The sex-specific cutoffs of UPF consumption (% TE) were 13.9%, 21.2%, and 28.4% in male and 9.0%, 14.5%, and 21.2% for female,

b

P for the linear trends by quartiles of sex-specific quartiles of UPF consumption (% TE),

c

Odds ratio for a 10 % increase in UPF consumption (% TE),

d

Defined as a BMI ≥25.0 kg/m2,

e

Defined as a waist circumference ≥90 cm for male and ≥85 cm for female, respectively,

f

Using the median point of Korean Healthy Eating Index (KHEI) of the study participants, <74.3 KHEI was defined as low diet quality and ≥74.3 KHEI as high diet quality.