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0089/2024 - Chrononutrition, diet quality and perceived stress: resultstwo population-based studies in Brazil
Crononutrição, qualidade da dieta e estresse percebido: resultados de dois estudos de base populacional no Brasil

Autor:

• Micaela Rabelo Quadra - Quadra, M. R. - <micaelarquadra@gmail.com>
ORCID: https://orcid.org/0000-0002-6380-7720

Coautor(es):

• Antônio Augusto Schäfer - Schäfer, A.A - <antonioaschafer@ unesc.net>
ORCID: https://orcid.org/0000-0002-8834-0434

• Leonardo Pozza Santos - Santos, L.P. - <leonardo_pozza@yahoo.com.br>
ORCID: https://orcid.org/0000-0002-3993-3786

• Luana Meller Manosso - Manosso, L. M. - <lumanosso@hotmail.com>
ORCID: https://orcid.org/0000-0003-1987-1730

• Tamara Justin da Silva - Silva, T. J. - <tamarajustin99@gmail.com>
ORCID: https://orcid.org/0000-0002-5806-9567

• Elisabete Borges Maciel - Maciel, E. B. - <elisabeteb2303@gmail.com>
ORCID: https://orcid.org/0000-0002-9142-3265

• Fernanda Oliveira Meller - Meller, F.O - <fernandameller@unesc.net>
ORCID: https://orcid.org/0000-0002-1174-4721



Resumo:

Background: Chrononutrition and diet quality appear to influence stress, however, evidence on this relationship needs to be better elucidated. We aim to assess the association between chrononutrition, diet quality, and perceived stress in adultsSouthern Brazil amid the Covid-19 pandemic.
Methods: Population-based cross-sectional study conducted in two Brazilian cities, with individuals aged ?18 years. Chrononutrition (frequency and time of meal) and diet quality were the exposure, and perceived stress was the outcome. To assess the associations, Poisson regression was used to calculate crude and adjusted prevalence ratio and its 95% confidence intervals, with a significance level of 5%.
Results: 2,170 individuals were analyzed. 12.3% did not have breakfast, 27.5% had less than four meals per day, 30.4% presented poor diet quality, 14% referred irregular consumption of healthy foods, and 43.2% had regular consumption of unhealthy foods. Perceived stress was reported by 38.2% of the sample. Individuals who ate less than four meals per day, with poor diet quality, with regular consumption of unhealthy foods, and with irregular consumption of healthy foods were more likely to present perceived stress.
Conclusion: These results may contribute to the development of joint actions on nutrition and mental health.

Palavras-chave:

Eating; Diet Quality; Mental Health; Pandemics.

Abstract:

Introdução: Crononutrição e qualidade da dieta parecem influenciar o estresse, mas evidências precisam ser melhor elucidadas. O objetivo foi avaliar a associação entre crononutrição, qualidade da dieta e estresse percebido em adultos do Sul do Brasil na pandemia de Covid-19.
Métodos: Estudo transversal de base populacional conduzido em duas cidades brasileiras, com indivíduos com ≥18 anos. Crononutrição (frequência e horário das refeições) e qualidade da dieta foram as exposições, estresse percebido foi o desfecho. Para avaliar as associações utilizou-se regressão de Poisson para calcular a razão de prevalência bruta e ajustada e seus intervalos de confiança de 95%, com nível de significância de 5%.
Resultados: Foram analisados 2.170 indivíduos. 12,3% não tomavam café da manhã, 27,5% faziam <4 refeições por dia, 30,4% tinham pior qualidade da dieta, 14% consumiam irregularmente alimentos saudáveis e 43,2% consumiam regularmente alimentos não saudáveis. 38,2% tinha estresse percebido. Aqueles que faziam <4 refeições por dia, com pior qualidade da dieta, consumo regular de alimentos não saudáveis e consumo irregular de alimentos saudáveis tiveram maior probabilidade de apresentar estresse.
Conclusão: Os resultados poderão contribuir para o desenvolvimento de ações conjuntas em nutrição e saúde mental.


Keywords:

Alimentação; Qualidade da Dieta; Saúde mental; Pandemias.

Conteúdo:

INTRODUCTION
Stress can be defined as a non-specific response, derived from actions that affect the individual’s physical and psychological integrity. Stress is responsible for increasing the activity of the hypothalamic-pituitary-adrenal (HPA) axis and, consequently, the plasma cortisol levels1. During the Covid-19 pandemic, the occurrence of emotional disturbances, including stress, was commonly observed2. A study, with participants from 57 countries including Mexico, Argentina, Canada, the United Kingdom, Germany, the United States, China, and Brazil, recruited via social media, reported an average perceived stress score of 19.08. This score reflects a moderate level of stress3. In Brazil, another study found that 34.2% of participants had symptoms of post-traumatic stress during the Covid-19 pandemic4.
Multiple biological, environmental, social, and behavioral factors, including already-known factors, such as violence, abuse, family conflicts, trauma, anxiety, and depression, may influence stress5. Recently, the hypothesis that the circadian cycle and stress may share biological mechanisms has been explored6. The circadian cycle, one of the main regulators of the body, can affect various metabolic processes, including the energy balance of an individual. This regulation may be influenced by behavioral factors, such as dietary intake, for example7.
Chrononutrition is the area that aims to associate the study of nutrition and chronobiology, through the analysis of the influence of the feeding moment on the circadian cycle and health. Chrononutrition considers three main aspects: regularity of meals, food frequency, and mealtime8. Diet quality similarly influences brain functioning, cognitive functions, and mental health9,10. For instance, the consumption of ultra-processed foods, consistently associated with poor diet quality, has been correlated with an increase in depressive symptoms11.
Even before the Covid-19 pandemic, urbanization had already induced changes in eating patterns, impacting the regularity and frequency of meals8. Skipping breakfast has been associated with weight gain12, increasing the risk of cardiovascular diseases13. Conversely, a higher daily meal frequency appears linked to a lower prevalence of hypertension14, while a lower frequency of the population’s meals seems to increase this prevalence15. However, research on the association between chrononutrition and mental health is limited. Regarding diet quality, studies indicate a positive association between perceived stress and inadequate food consumption. Stressed individuals tend to have higher consumption of added sugar, saturated fats, processed meats, and nutritionally inadequate snacks16,17.
Evidence on the relationship and mechanisms by which diet and mental health interact needs to be better elucidated. In this way, studies assessing the association of different dietary variables with mental health, specifically stress, are extremely necessary nowadays9. Therefore, this study aimed to assess the association between chrononutrition, diet quality, and perceived stress in adults using data from population-based studies conducted amid the Covid-19 pandemic in Southern Brazil.

METHODS
Setting, study sample, and data collection
This is a cross-sectional population-based study with data from the project entitled “Mental Covid: impact of Covid-19 on the mental health of the population”, conducted in two Brazilian Southern cities: Criciúma (Santa Catarina state) and Rio Grande (Rio Grande do Sul state). Criciúma has approximately 217,311 inhabitants, a Human Development Index (HDI) of 0.788, a population density of 815.87 inhabitants per km2, and a literacy rate of 96,8%, with 59,9% of residents being adults and 15,7% being elderly18–20. Rio Grande has 211,965 inhabitants, an HDI of 0.744, a population density of 72.79 inhabitants per km2, and a literacy rate of 96,1%, with 55,5% of residents being adults and 19,8% being elderly18–20. This study was conducted amid the Covid-19 outbreak, between October 2020 and January 2021, with individuals aged 18 years or older who were living in the urban areas of both cities. Subjects who were physically or cognitively unable to complete the survey were excluded.
The sampling process was conducted in two stages, based on the 2010 Brazilian Demographic Census21. First, primary units (census tracts) were randomly selected. Then, secondary units (households) were randomly chosen from the previously selected census tracts. The total number of households was sampled proportionally to the sector size. In Criciúma, 60 census tracts were sampled, resulting in 15,765 households, 607 of them included in this study. In Rio Grande, 90 census tracts were sampled, resulting in 29,734 households, 900 of them included in the study. All adults living in the selected households were invited to participate in the study. If the residents were not present in the household, two interview attempts were made. If after three attempts, the residents were still not found, the next household on the right was selected.
The sample size calculation was performed with parameters including 80% power, a 95% confidence interval (95% CI), a 50% prevalence for the outcome, a sampling error of five percentage points, a design effect of 1.5, and a 20% increment to account for potential losses and refusals. Ultimately, each study required a sample size of 690 individuals.
Trained personnel were responsible for conducting face-to-face household interviews, who wore personal protective equipment during the fieldwork to avoid SARS-CoV-2 infection. A single, precoded, and standardized questionnaire was used. Data collection was performed using tablets and the RedCap® software. Each interview lasted 30 minutes on average.

Chrononutrition
Chrononutrition was assessed by two of its three aspects, frequency and mealtime, using the following variables: number of daily meals (frequency) and making breakfast (an indirect indicator of the time of the first meal)14,22. The individuals interviewed should answer “yes” or “no” for each of the six daily meals (breakfast, morning snack, lunch, afternoon snack, dinner, and evening snack). The variable number of daily meals was dichotomized into <4 and ?4 meals per day since the main daily meals are usually three (breakfast, lunch, and dinner). The idea of this categorization was to compare individuals who have consumed snacks between the main meals with those who have only eaten the main meals14.

Diet quality
Diet quality was evaluated by a frequency index of intake of healthy (legumes, vegetables, fruits, and milk) and unhealthy (soda and artificial juice, candies, and red meat) foods. To build it, the following questions were asked to the participants: “How many days a week do you usually eat…?”, followed by the foods: “at least one type of raw or cooked vegetable such as lettuce, tomato, cabbage, carrot, chayote, eggplant, zucchini (not including potatoes or cassava)”, “legumes such as beans, lentils, peas”, “fruit”, “milk (not including vegetable milk such as soy, almonds, chestnuts, rice)”, “soda or artificial juice”, “sweet foods, such as ice cream, chocolates, cakes, cookies or sweets”, and “red meat (beef, pork)”.
A score from 0 to 4 points was attributed according to the answer’s options for each question: “never”, “almost never”, “1 to 2 days a week”, “3 to 4 days a week”, “5 to 6 days a week” and “daily (including Saturday and Sunday)”. For healthy foods, the higher the frequency of intake the lower the score, varying from 0 (daily) to 4 (never or almost never). For unhealthy foods, the higher the intake the higher the score, also varying from 0 (never or almost never) to 4 (daily) (Supplementary Figure 1). The final score was the sum of the intake score of each food, varying from 0 (better quality) to 28 points (worst quality), a little different from the original score proposed by Francisco et al.23 (maximum of 32 points), as raw and cooked vegetables were evaluated using the same question. We then categorized the diet quality into tertiles. The 1st tertile corresponded to the best diet quality and the 3rd to the worst diet quality23,24.
Additionally, we assessed the regularity of consumption for both healthy and unhealthy diet markers, employing the same questions and categorizations as the diet quality score. The distinction lies in evaluating the frequency of food consumption. Individuals reporting the consumption of at least one food item from the healthy or unhealthy groups at least five times a week were categorized as having a regular consumption of the corresponding food markers. Conversely, those consuming at least one food item from these groups less than five times a week were categorized as having irregular consumption24.

Perceived stress
The perceived stress scale, previously validated for the Brazilian population25, was used to evaluate stress. It is a self-reported measure designed to deal with the degree to which situations in an individual’s life are appraised as stressful. It was developed as a 14-item scale that assessed the perception of stressful experiences over the previous month using a Likert-type scale from 0 to 4 corresponding to the answer options “never”, “almost never”, “sometimes”, “fairly often”, and “very often”. The total score consisted of the sum of points, ranging from 0 (lower stress) to 56 points (higher stress). We categorized the total score in quintiles and those individuals classified in the fourth or fifth quintile were considered stressed. This approach to classifying stress has already been used in other published studies26.

Sociodemographic characteristics, pandemic-related behavioral, and health variables
We also used socioeconomic and demographic characteristics as well as pandemic-related behaviors and health-related characteristics as covariables of our study. They are described in Chart 1.

Statistical analyses
Absolute and relative frequencies were used to describe the characteristics of the sample. Crude analysis of the association of chrononutrition, diet quality, and perceived stress with the covariables, was assessed using Fisher’s exact test with a significance level of 5%.
Fisher’s exact test was also used to assess the association of chronutrition and diet quality with perceived stress. To evaluate whether crude associations of chrononutrition and diet quality with stress were independent of possible confounders, adjusted Poisson regression models were used, presenting the p-value corresponding to the Wald test for heterogeneity. Regression results were reported as prevalence ratio (PR) with their corresponding 95% confidence intervals (CI). To identify the possible confounders, we used a level hierarchical model of analysis27. Level 1 (distal) included demographic characteristics: sex, skin color, and age; Level 2 included socioeconomic and demographic characteristics as well as job situation: wealth index, schooling, marital status, living alone, getting unemployed, started working from home; Level 3 (proximal) included pandemic-related behavioral as well as health-related characteristics: adherence to social distance, going to bars or restaurants, go out for physical activity, contact with someone infected, infodemic, tested positive for Covid-19, fear of Covid-19, presence of Covid-19 symptoms, using online tools to talk to friends and family, excess weight, physical activity, sleep duration and quality, depressive symptoms, feeling of sadness and food insecurity. Variables were selected using the backward method considering each hierarchical level, and those variables with p-value <0.20 remained in the final model (Supplementary Figure 1).
All analyses were performed in STATA version 12.1 using the svy prefix, which considers the complexity of the sampling process and the effect of the study design.

Ethical Aspects
This study was approved by the Research Ethics Committee of the Federal University of Rio Grande [protocol number 4.055.737]. Verbal informed consent was obtained from all subjects and was witnessed and formally recorded.

RESULTS
A total of 2,170 individuals were analyzed (response rate of 75%). Most of them were female (59.7%), self-reported white skin color (84.0%), and did not live alone (89.4%). About a quarter (26.1%) had university education, 31.2% were 60 years old or older, and 49.1% were married (Supplementary Table 1). Less than 10% became unemployed amid Covid-19 pandemic, while over 90% continued to work in person. More than 80% reported not going out for physical activity during this period. The prevalence of infodemic was 22.0% and of fear of Covid-19 was 19.1% (Supplementary Table 2). More than half presented excess weight (59.1%) and approximately a quarter were physically active (?150 minutes/per week) (24.7%). Concerning sleep characteristics, 9.6% reported poor or very poor sleep quality and 53.8% presented inadequate sleep duration. Felling of sadness and depressive symptoms were, respectively, observed in 16.1% and 13.0% of the interviewees (Supplementary Table 3).
Regarding chrononutrition, 12.3% of the individuals usually skipped breakfast and 27.5% had less than four meals a day (Supplementary Table 3). Younger (p<0.001) and single individuals (p=0.017), those who had Covid-19 symptoms (p=0.027), who did not use online tools to talk to friends and family (p=0.038), who practiced <150 minutes of physical activity per week (p=0.016), and had poor sleep quality (p=0.011), depressive symptoms (p<0.001) and sadness (p=0.002) presented higher frequency of skipping breakfast. Higher prevalence of having less than 4 meals a day was associated with being male (p=0.040), younger (p<0.001), single (p<0.001), non-white (p<0.001), having better education (p=0.001), not living alone (p=0.005) and not adhering to social distance (p=0.022), referring infodemic (p=0.003) and fear of Covid-19 (p=0.037), having gone to bars or restaurants amid the pandemic (p<0.001) and had contacted with someone infected (p<0.001), being with excess weight (p=0.006) and depressive symptoms (p<0.001) (Table 1).
Concerning diet quality, 30.4% had poor diet quality, 14% referred irregular consumption of markers of a healthy diet, and 43.2% had regular consumption of markers of an unhealthy diet (Supplementary Table 3). Higher prevalence of poor diet quality was found in individuals males (p<0.001), younger (p<0.001), non-white (p=0.047), single (p<0.001), with better education (p<0.001), who did not live alone (p=0.021), did not adhere to social distancing (p=0.036), went to bars or restaurants (p=0.005), had Covid-19 symptoms (p=0.025) and excess weight (p=0.009), practiced <150 minutes per week of physical activity (p=0.003) and referred poor sleep quality (p=0.001), depressive symptoms (p<0.001) and sadness (p<0.001). Regular consumption of unhealthy foods was more frequent in males (p=0.004), with lowest wealth index (p<0.001), who did not start working from home during the pandemic (p=0.044), did not adhere to social distancing (p=0.003), referred fear of Covid-19 (p=0.003), did not use online tools to talk to friends and family (p<0.001), had excess weight (p=0.010), poor sleep quality (p=0.001), depressive symptoms (p=0.024), sadness (p=0.020) and food insecurity (p=0.046). Younger (p<0.001) and single individuals (p<0.001), who became unemployed (p=0.040), had inadequate sleep duration (p=0.004), depressive symptoms (p=0.029), and food insecurity (p=0.003) presented higher prevalence of irregular consumption of healthy foods (Table 1).
Perceived stress was reported by 38.2% of the sample. Men (p<0.001), single (p<0.001), younger (p<0.001), and non-white individuals (p=0.027) presented a higher prevalence of stress. Individuals with poor wealth index (p<0.001), who have become unemployed (p<0.001), who had gone to bars or restaurants (p=0.002), who were afraid of Covid-19 (p<0.001), who had contact with someone infected by Covid-19 (p=0.008), and symptoms of the infection (p<0.001) also presented higher prevalence of stress. Moreover, a higher frequency of stress was present in those who did not report infodemic (p<0.001) and did not use online tools to talk to friends and family (p<0.001). Higher prevalence of stress was also related to the practice of <150 minutes per week of physical activity (p=0.038), with poor or very poor sleep quality (p<0.001) and inadequate sleep duration (p<0.001), the presence of depressive symptoms (p<0.001) and feelings of sadness (p<0.001), and with food insecurity (p<0.001) (Table 2).
Table 3 shows the association between chrononutrition, diet quality, and perceived stress. In the crude model, both aspects of chrononutrition were associated with perceived stress. Individuals who usually skipped breakfast and who ate less than four meals per day presented a higher prevalence of perceived stress. However, after adjustment for confounders, only the frequency remained associated. Individuals who reported eating less than four meals per day were 19% more likely to have perceived stress when compared to those who usually ate four or more meals a day (PR=1.19, CI95% 1.07;1.32).
The association between diet quality and perceived stress showed that, after adjustment for confounders, poor diet quality was associated with a higher prevalence of perceived stress (PR=1.25, CI95% 1.10;1.43). Regarding the association of food markers consumption with perceived stress, irregular consumption of healthy foods was associated with a higher prevalence of perceived stress (PR=1.25, CI95%1.09;1.44). In turn, regular consumption of unhealthy foods was associated with an increase of 13% in the prevalence of perceived stress (PR=1.13, CI95%1.02;1.25) (Table 3).

DISCUSSION
This study, which aimed to assess the association of chrononutrition and diet quality with perceived stress amid the Covid-19 pandemic, showed important findings. Less than four meals per day, irregular consumption of healthy foods, regular consumption of unhealthy foods, and poor diet quality increased the prevalence of perceived stress, independent of the variables included as potential confounders in the analysis model.
The relationship between dietary intake and mental health has been explored by other studies, in which poor diet quality was linked to worse mental health, although most papers consider depression as the outcome. Akbaraly et al. showed that women with higher scores on the Healthy Eating Index were less likely to have depressive symptoms when compared to women with lower scores30. Liu et al. observed that the intake of processed foods was positively associated with depression and perceived stress31. Research with data from low and middle-income countries showed that fruit intake was associated with lower odds of depression and anxiety, while vegetable intake was associated with lower risk of depression32.
Regarding perceived stress, a cross-sectional study observed that a higher intake of saturated fats and added sugars was associated with a higher stress score16. In the United Kingdom, lower adherence to a Mediterranean Diet was related to higher levels of stress in reproductive-age women17. Our results agree with the literature. Poor diet quality, including irregular consumption of healthy foods and regular consumption of unhealthy foods, was associated with a higher prevalence of perceived stress. Nonetheless, our study has the advantage of being carried out amid the Covid-19 pandemic. The Covid-19 pandemic, with its unpredictability and numerous changes in daily life, left the population vulnerable to mental health issues, including stress33. While data on dietary changes during this period show contradictions, there is evidence of an increase in the number of daily snacks and meals. This increase is often associated with poor nutrition quality, primarily as a coping strategy for the stressful environment of the pandemic28,29.
On the other hand, studies evaluating the association between chrononutrition and stress are almost unknown. An Italian study conducted with elderly adults evaluated the influence of time-restricted feeding on mental health. Aged-stratified analysis showed that individuals aged 70 and over, who had time-restricted feeding of 8 hours presented less mental distress than those without time-restrict feeding, but this association disappeared after controlling for having breakfast. Moreover, there was no association between time-restricted feeding and mental health after adjusting for confounding variables in the non-stratified analysis by age34.
Circadian circle and stress systems are related for being responsible for energy and metabolic regulation and are involved mainly by neural mechanisms. While stressful actions activate the HPA axis and release catecholamines and glucocorticoids, the circadian circle receives information from the external environment through clocks located in peripheral tissues. This external information sends signals to the circadian clock located in the central nervous system (CNS), regulating the metabolism. These signals can activate circadian clocks from the HPA axis, releasing glucocorticoids and creating a stress response. Diet and feeding behaviors are external influencers of the circadian circle, also known as zeitgebers 6,35.
Inadequate food intake and behavior can disrupt metabolic homeostasis. Nutritional inadequate meals (in composition and time) can disrupt the secretion of glucocorticoids such as cortisol, increasing it to superior levels from those normally indicated by the CNS36. Glucocorticoids, along with other hormones such as glucagon and ghrelin, are released during fasting status. As previously stated, its secretion is controlled by circadian clocks, including those existing in CNS, and is responsible for signaling the peripheral tissues indicating the feeding time36,37.
Glucocorticoids increase their levels right after fasting beginning38. This could be due to the activation of the HPA axis, especially in short periods of fasting37, once this status is seen as a stressful condition. In response, adrenocorticotrophin hormone is released to stimulate cortisol production, a stress hormone. During fasting, glucocorticoids act in favor of lipolysis, protein degradation, and glucose synthesis39. Therefore, is possible to hypothesize that less than four meals a day might be accompanied by longer periods of fasting, favoring the secretion of stress response mediators, such as glucocorticoids.
Regarding diet quality, it is important to establish that healthy dietary patterns are essential to prevent non-communicable chronic diseases40,41. These patterns are generally higher in plant-based foods, including fruits, vegetables, whole grains, legumes, seeds, and nuts, and lower in animal-based foods, processed meats, and ultra-processed, high-fat, and high-sugar foods40. Ultra-processed foods are industrially manufactured containing food additives and little or no whole foods. They usually have high amounts of trans fat and sugar, and low amounts of fiber, vitamins, and minerals42. Cross-sectional analysis of the Longitudinal Study of Adult Health Brazil pointed out that high ultra-processed food intake was associated with higher C-reactive protein (CRP) levels in women43.
Meals high in saturated fat can increase inflammatory markers, including CRP levels44, interleukin-6 (IL-6)45, tumor necrosis factor-alpha45, intercellular adhesion molecule-1 (ICAM-1)44,46, and vascular cell adhesion molecule-144. Also, meals high in saturated fat increase nuclear factor kappa B (NF?B) activation47. In line with this, palmitic acid (the most abundant saturated fatty acid in the Western diet) activates the proinflammatory response in microvascular endothelial cells, elevating the expression of IL-6, IL-8, ICAM-1, and toll-like receptor 248. This effect occurs, at least in part, by TLR4 - NF?B signaling pathway48. A high-fat meal intake also alters the expression of circadian clock-, inflammation-, and oxidative stress-related genes in human skeletal muscle49. A high-fat, high-carbohydrate meal raises endotoxin (lipopolysaccharide) levels postprandially and induces an inflammatory response in normal-weight men50.
On the other hand, healthy eating patterns are associated with lower circulating concentrations of inflammatory markers51,52. A study showed that two years of a Mediterranean-style diet, with daily consumption of whole grains, fruits, vegetables, nuts, and olive oil, reduced CRP, IL-6, and IL-18 compared to the control diet53. Also, the dietary intake alters the human gut microbiota54,55, with a Mediterranean diet and dietary components, such as fruits, vegetables, fiber, and polyphenols, positively modulating the gut microbiota, decreasing inflammation, and improving the gut barrier56,57.
Circadian rhythm disruption can lead to gut microbiota dysbiosis, with an increase in pathobionts and a decrease in beneficial bacteria, in addition to the disrupted gut barrier and blood-brain barrier58. The microbiota rhythms are regulated by diet and feeding time, which can alter both microbiota and gut activity, affecting host immune and metabolic function59. The disruption to microbiota homeostasis (dysbiosis) can alter innate and adaptive immunity, contributing to inflammation60. Also, the gut microbiota is essential for modulating brain functions61,62. Indeed, the microbiota can impact several neurological diseases, including stress and stress-related disorders63. Literature shows that host feeding rhythms synchronize with the microbiota to promote rhythms in intestinal innate immunity that anticipate exogenous microbial exposure64. A preclinical study evidenced that the microbiota coordinates with the circadian clock to generate rhythms in the expression of genes that govern lipid metabolism and absorption65.
It is important to highlight the methodological limitations of our study. The cross-sectional design does not allow establishing causality and temporality of associations, which increases the risk of reverse causality. Moreover, the assessment of perceived stress was through a screening tool and cannot be used as a diagnostic. However, the PSS instrument is widely used in population-based studies due to its easy application25,26. Finally, we were only able to evaluate two of the three chrononutrition aspects, once data on regularity of food was not available in the applied questionnaire.
As a strength, this is a population-based study conducted amid the Covid-19 pandemic with a sampling process conducted in two stages, representing an important epidemiological assessment. In addition, unlike most studies conducted during the pandemic, interviews take place face-to-face, at the participants’ households. Moreover, chrononutrition is a recent topic of study and there are few studies evaluating its association with stress in literature. Finally, surveys conducted during the pandemic have provided insights into how such an event can impact various aspects of people’s lives. This enables the planning of policies and actions targeted at the most affected individuals, and it also contributes to the accumulation of knowledge. This information will be valuable in addressing possible future pandemic events.
In conclusion, the study showed that less than four meals per day, poor diet quality, irregular consumption of healthy foods, and regular consumption of unhealthy foods were associated with a higher prevalence of stress in two Brazilian cities amid the Covid-19 pandemic. These findings demonstrated an important association between dietary aspects and stress, which can contribute to the development of joint actions on nutrition and mental health.

Funding: This work was supported by the Foundation to Support Research in the State of Rio Grande do Sul (FAPERGS, Brazil) [Edital nº 06/2020].

Declarations of interest: None.

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Quadra, M. R., Schäfer, A.A, Santos, L.P., Manosso, L. M., Silva, T. J., Maciel, E. B., Meller, F.O. Chrononutrition, diet quality and perceived stress: resultstwo population-based studies in Brazil. Cien Saude Colet [periódico na internet] (2024/mar). [Citado em 22/12/2024]. Está disponível em: http://cienciaesaudecoletiva.com.br/artigos/chrononutrition-diet-quality-and-perceived-stress-resultstwo-populationbased-studies-in-brazil/19137?id=19137&id=19137

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