1. Background
The COVID-19 pandemic profoundly affected the global food supply chain, food accessibility, and dietary habits of individuals worldwide. The implementation of lockdowns and pandemic-related restrictions significantly altered food consumption patterns. While some studies reported a reduction in food consumption and the adoption of healthier eating practices during the COVID-19 lockdown, others revealed an increase in snacking, meal frequency, and unhealthy food choices [
1,
2,
3,
4,
5,
6,
7,
8,
9,
10,
11,
12]. These observations suggest that the lockdown had both positive and negative effects on dietary habits, which may have both immediate and long-term health implications [
13].
Age is also a crucial sociodemographic factor that influences the food behavior of individuals [
14]. People belonging to different age groups had varied food consumption patterns during the pandemic [
15]. Due to the natural decline in their immune system and the greater prevalence of underlying health conditions in some individuals within this group, older adults are generally at greater risk of severe health issues and death from COVID-19 [
16]. COVID-19 disproportionately impacts older adults; individuals aged 60 years and above, especially those over the age of 80 years, are at a significantly greater risk of severe outcomes and mortality. The above studies synthesized early data on the COVID-19 case fatality ratio (CFR) from China, Italy, and the United States, illustrating a stark age-related increase. The CFR is markedly lower in patients aged 40 years or younger—below 0.4% in both China and Italy and up to 3.3% in the United States. In stark contrast, for individuals aged 80 and above, the CFR increased to 14.8% in China, 20.2% in Italy, and 25.9% in the United States, underscoring the heightened vulnerability of older adults to severe outcomes [
17,
18,
19,
20]. Although several studies have examined the impact of COVID-19 on the health status of different age groups, there remains a significant gap in research on how dietary patterns have changed during the pandemic among individuals of different ages, especially middle-aged and older adults, who are more vulnerable than their younger counterparts.
The impact of the pandemic varied between women and men across different global regions. Several studies indicated that women faced more severe consequences from COVID-19 than men did in several aspects [
21,
22,
23]. For instance, women disproportionately experienced challenges in food security and nutrition, restricted access to healthcare, diminished economic opportunities, and increased gender-based violence. These factors likely contributed to heightened food insecurity among women [
24,
25]. Furthermore, during periods of stress, women commonly engage in emotional eating, consuming more food than men, and show a tendency to stockpile food from grocery stores [
26,
27]. Interestingly, after engaging in emotional eating, women are more likely than men to experience guilt [
28]. Studies on the snacking behavior of women during these challenging times have shown mixed results; some have reported increased snacking, potentially due to increased anxiety, while others have pointed to healthier eating habits compared with men [
26]. In addition, some evidence suggests a notable increase in women’s consumption of fruits and vegetables compared with men’s consumption during this period. The consumption of animal protein decreased among both men and women during the pandemic. This shift is likely linked to diminished incomes, the shutdown of meat-processing facilities causing an increase in meat prices, and widespread evidence of animal-borne virus transmission [
13,
29,
30]. Thus, it is crucial to monitor changes in people’s dietary habits after the onset of the COVID-19 pandemic due to gender disparities.
The gender-transformative framework for nutrition (GTFN) is a theoretical approach that recognizes how gender inequalities affect food security and nutritional outcomes [
31,
32,
33] and is associated with COVID-19 in various ways. For instance, during a pandemic, women may face additional challenges in accessing nutritious food due to economic and social factors [
24]. Therefore, interventions aimed at improving nutritional outcomes should consider sex-based barriers and inequalities and address the root causes that perpetuate these inequalities. Overall, the GTFN can provide a useful lens for understanding the sex-specific impacts of COVID-19 on nutrition and developing interventions that prioritize sex equity. Another possible theoretical framework for understanding the relationships among COVID-19, dietary changes, and age is the life course perspective (LCP). This framework emphasizes that an individual’s health behaviors and outcomes are influenced by multiple factors that occur over the course of life, including early life experiences, transitions and events, and cumulative advantages and disadvantages [
34]. The LCP could provide a useful framework for understanding the complex and dynamic interplay between age, COVID-19, and dietary changes.
Many studies on dietary habits during the COVID-19 pandemic predominantly focused on European populations and were conducted at the early stage of lockdowns [
3,
6,
9,
10,
12,
25]. Recognizing this gap, the current study aimed to provide a comprehensive understanding of the impact of the pandemic on dietary habits in the later stages, particularly in the United States. Unlike previous research, this study encompasses a detailed analysis of all MyPlate food items, which were notably absent in earlier studies.
MyPlate is a visual guide developed by the United States Department of Agriculture (USDA) to promote healthy eating habits. It divides a standard plate into five key food groups: vegetables, grains, protein, fruits, and dairy, reflecting the core components of a balanced diet [
35]. By exploring the eating patterns among individuals of various ages and sex demographics in the U.S., this research aims to highlight how these factors influenced dietary patterns after the onset of the COVID-19 pandemic. Understanding these dynamics is vital for developing targeted public health interventions, especially for vulnerable populations, as they navigate the unique nutritional challenges posed by the pandemic. This insight is essential for informing future nutritional guidelines and policies, ensuring that they are tailored to the needs of diverse groups during such global health crises. Given emerging evidence that dietary behaviors during health crises differ by demographic factors such as age and sex [
3,
13,
24,
26], this study aimed to investigate (1) how the COVID-19 pandemic influenced the consumption of MyPlate food groups and FSS items among adults aged 40 and older, (2) whether these dietary changes significantly differed by sex and age group, and (3) whether sex or age predicted a higher likelihood of becoming nutritionally vulnerable during the pandemic.
3. Results
This study sample included 42.6% male and 57.4% female participants. The age distribution primarily comprised individuals aged 61–80 years (58.8%), followed by those aged 40–60 years (38.5%), with a smaller portion aged 81–100 years (2.6%). The ethnic/racial breakdown included 73.5% White, 13.9% Black, 7.0% Asian, and 4.3% Hispanic participants. In terms of education, 51.6% held a college degree or higher, 31.9% had a college education, and 16.3% had less than a high school education. Regarding annual income, 37.7% reported earning less than USD 50,000, 32.7% earned between USD 50,000 and USD 99,999, and 25.5% earned more than USD 100,000 (
Table 1).
Based on the paired-samples t-tests, the mean DST scores for the consumption of fruits (female: mean percentage change (MPC): −4.71%; male: MPC = −3.58%), grains (female: MPC = −8.24%; male: MPC = −6.43%), lean protein (female: MPC = −1.35%; male: MPC = −1.47%), and dairy (female: MPC = −1.34%; male: MPC = −1.44%) significantly decreased for both sexes after the pandemic began. However, the mean FSS consumption score significantly increased in both men (3.96%) and women (3.41%), indicating healthier habits or decreased FSS consumption. Men showed a significant increase in vegetable consumption (0.93%), whereas there was no significant change in vegetable consumption among women after the onset of the COVID-19 pandemic. The only food group consumption status that did not significantly differ between the two sexes after the onset of the pandemic was processed meat. The largest reduction in consumption was associated with grain consumption by women (8.2%) compared with men (6.4%).
Based on the chi-square test, there were several sex differences in changes in food consumption during the COVID-19 pandemic. Compared with women, men reported increased consumption of four food groups: fruit (male = 19.5% vs. female = 17%), vegetables (male = 20.7% vs. female = 18.9%), dairy (male = 16% vs. female = 14.6%), and processed meat (male = 16.5% vs. female = 15.6%). The most significant decrease in consumption after the onset of the COVID-19 pandemic was observed in FSS intake by both men and women (39.9%), although there was no significant difference between the sexes. In contrast, the most considerable increase in consumption after the onset of the COVID-19 pandemic was related to FSS intake, with an increase of 23.6% in females and 22.7% in males.
Table 2 provides the details of the findings.
The mean scores for fruit and grain consumption significantly decreased in all three age groups compared with those before and during the pandemic. However, the mean FSS consumption score significantly increased across all the age groups during this period. There was a significant decrease in the mean lean protein consumption score of 2.6% for those aged 40–60 years, whereas there was no significant change in the other two age groups. In addition, there were significant decreases in the mean dairy consumption score of 2.1% and 0.8% in the 40–60- and 61–80-year age groups, respectively. The mean score for the consumption of processed meat significantly decreased only for the 61–80-year age group. Interestingly, vegetable consumption significantly decreased by 1.6% among participants aged 40–60 years, whereas it significantly increased by 1.3% and 4.3% among those aged 61–80 and 81–100 years, respectively. The largest percentage change before and during the pandemic was observed for grain consumption, with significant decreases of 7.9% and 6.2% among those aged 61–80 and 81–100 years, respectively (
Table 2).
Subsequent analysis revealed the distribution of different food consumptions across the three age groups, namely, “decreased consumption”, “no change”, and “increased consumption”. These results suggested a statistically significant association between age and food consumption.
After the onset of the COVID-19 pandemic, decreased consumption of fruits (“40–60” = 33.6% vs. “61–80” = 29.9% vs. “81–100” = 27.4%), grains (“40–60” = 32.7% vs. “61–80” = 31.9% vs. “81–100” = 30%), vegetables (“40–60” = 22.4% vs. “61–80” = 15.2% vs. “81–100” = 12.5%), and processed meat (“40–60” = 18.3% vs. “61–80” = 12.5% vs. “81–100” = 9.5%) was observed across age groups, with lower food consumption rates observed in older age groups. The greatest decrease in lean protein consumption was observed in the “40–60” age group (21%), while in the “61–80” and “81–100” age groups, the reduction in lean protein consumption was approximately 15.5%. In addition, the reductions in dairy consumption were as follows: 19.9% in the “61–80” age group, 17.9% in the “81–100” age group, and 14% in the “61–80” age group. The reduction in FSS was greater in comparison with that in the other food groups for all age groups. The “40–60” age group had a decrease in FSS consumption of 41.5%, while the “81–100” and “61–80” age groups had decreases of 41.1% and 38.1%, respectively, after the onset of the COVID-19 pandemic. In contrast, the greatest increase in consumption after the onset of the COVID-19 pandemic was associated with vegetable intake, with an increase of 25.5% in the “81–100” age group, followed by an increase in the FSS of 23.9% in the “40–61” age group (
Table 3).
The results of the binary logistic regression model are reported in
Table 4. The results revealed that sex (reference: female) was a significant independent predictor of lower consumption of dairy and processed meat after the onset of the COVID-19 pandemic. Males were approximately 30% more likely to reduce their consumption of dairy and processed meat after the onset of the COVID-19 pandemic than females (OR = 1.31, 95% confidence interval (CI) = 1.16–1.47,
p < 0.0001 for dairy) (OR = 1.29, 95% CI = 1.16–1.44,
p < 0.0001 for processed meat).
Age was a significant predictor of reduced fruit (p = 0.031), vegetable (p < 0.0001), lean protein (p < 0.0001), dairy (p < 0.0001), and processed meat (p < 0.0001) consumption after the onset of the COVID-19 pandemic. However, the results suggested that age and sex were not independent predictors of changes in grain consumption or FSS after the onset of the pandemic (p > 0.05). The following report lists the changes in food consumption due to COVID-19.
Processed meats: The “40–60” age group was 130.9% more likely to reduce processed meat consumption than the “81–100” age group (OR = 2.309, 95% CI: 1.444–3.692, p < 0.0001). There was no significant difference in processed meat consumption between the “61–80” and “81–100” age groups.
Vegetables: The likelihood of decreasing vegetable consumption in the “40–60” and “61–80” age groups was 96% and 25%, respectively. The difference was statistically significant for “40–60” vs. “81–100” (OR = 1.96, 95% CI = 1.32–2.91, p < 0.0001) but not for “61–80” vs. “81–100”. Additionally, compared with the “61–80” age group, the “40–60” age group was 57% more likely to reduce vegetable consumption after the onset of the COVID-19 pandemic.
Lean protein: The “40–60” age group was 33% more likely to reduce lean protein consumption than the “81–100” age group (OR = 1.33, 95% CI = 0.92–1.91, p = 0.0037). No significant differences were observed between the other age groups.
Dairy: the “40–60” age group was 11% more likely to reduce dairy consumption after the onset of the COVID-19 pandemic compared with the “81–100” age group (OR = 1.11, 95% CI = 0.78–1.57, p = 0.0239), while the “61–80” age group was 21% less likely to decrease dairy consumption than the “81–100” age group (OR = 0.784, 95% CI = 0.55–1.108, p = 0.0022).
Fruit: The “40–60” and “61–80” age groups were 18% and 5% more likely to have decreased fruit consumption, respectively, than the “81–100” age group after the onset of the COVID-19 pandemic. However, the CIs for both OR estimates include 1, indicating that the difference in the probability of decreased consumption of fruit after the onset of the COVID-19 pandemic between these age groups and the reference category (“81–100”) is not statistically significant at the 95% confidence level; in other words, the differences in odds were not sufficiently large to be considered clinically significant, and the OR estimates suggest that these differences may be due to chance.
The percentages of females and males in the “not at risk” group were approximately 7% and 6.7%, respectively, before the pandemic. After the onset of the COVID-19 pandemic, the percentage of females in this group decreased to 6.59%, whereas the percentage of males increased to 7.05%. In the “possible risk” group, before COVID-19, 37.25% of the participants were females and 35.79% were males; however, after the onset of the pandemic, these numbers decreased to 35.06% for females and 34.09% for males. Finally, in the “at risk” group, before COVID-19, 55.78% of the participants were females and 57.53% were males, and after the onset of the pandemic, these percentages increased to 58.35% for females and 58.86% for males.
Table 5 shows the distribution of participants in the three age groups and their sex based on their nutritional risk status before and after the onset of the pandemic. Risk status was categorized into three groups: “not at risk”, “possible risk”, and “at risk”. Before the pandemic, the percentage of participants in the “not at risk” category was highest in the “81–100” age group (8.33%) and lowest in the “40–60” age group (5.43%). After the onset of the pandemic, the percentage of participants in this category very slightly increased in the “40–60” age group and by 3% in the “81–100” age group.
For the “possible risk” category, 45.8% of individuals were in the “81–100” age group before the onset of the pandemic, followed by the “61–80” and “40–60” age groups (37.5% and 34.64%, respectively). After the onset of the pandemic, the percentage of individuals classified as at “possible risk” decreased in all age groups, with the greatest decrease observed in the “81–100” age group (4.9%).
Before the pandemic, the percentage of participants in the “at risk” category was highest in the “40–60” age group (59.9%) and lowest in the “81–100” age group (45.8%). After the onset of the pandemic, the percentage of participants in this category increased in all age groups, with the highest increase of 2.1% observed in the “61–80” age group.
Table 6 shows the mean (SD) percentage change (MPC) in DST scores before and after the pandemic, as well as the
p-values for the comparisons between the two time points stratified by sex and age. The mean percentage change before and after the onset of the COVID-19 pandemic was 1.78% for females and 1.76% for males, indicating that both male and female participants experienced a statistically significant decline in their nutritional risk status after the onset of the COVID-19 pandemic.
The MPC was 1.78% and 1.76% for the “40–60” and “61–80” age groups, respectively, indicating a slight overall improvement in nutritional risk status after the onset of the COVID-19 pandemic. The p-value for both age groups was <0.001, suggesting that the change was statistically significant. However, the MPC for the “81–100” age group was only 1.73%, which was slightly lower than that of the other age groups, and the p-value was not statistically significant (0.660), indicating that there was no significant change in nutritional risk in this age group after the onset of the COVID-19 pandemic.
The DST scores of the participants in the “40–60” and “61–80” age groups significantly decreased after the onset of the pandemic, with MPCs of 1.78% and 1.76% for the “40–60” and “61–80” age groups, respectively. However, the nutritional risk of the “81–100” age group did not significantly change after the onset of the COVID-19 pandemic.
Subsequent binary logistic regression analysis revealed that, based on nutritional risk, female sex was significantly associated with a higher probability of being classified as “nutritionally vulnerable” after the onset of the COVID-19 pandemic (OR = 1.17, 95% CI = 1.01–1.36, p = 0.0310). The OR for sex showed that compared with males, females had 17.3% greater odds of being classified as “nutritionally vulnerable” after the onset of the COVID-19 pandemic after controlling for the other variables in the model.
The results also showed that age had no statistically significant effect on the probability of being classified as “nutritionally vulnerable” after the onset of the COVID-19 pandemic. The ORs for age groups compared with the reference category (“81–100”) are both close to 1 and have wide CIs that include 1, indicating that the differences in the probability of being classified as “nutritionally vulnerable” among the age groups are not statistically significant (OR = 1.51, 95% CI = 0.88–2.598, p = 0.1126 for “40–60” vs. “81–100”) (OR = 1.43, 95% CI = 0.84–2.43, p = 0.2964 for “61–80” vs. “81–100”).
4. Discussion
The COVID-19 pandemic has profoundly affected many aspects of daily life, including dietary habits and nutritional intake. This study aimed to assess the changes in dietary habits among adults of different sex and age groups during the latter stage of the COVID-19 outbreak. Uniquely, we investigated (1) how consumption of MyPlate food items in conjunction with the FSS changed after the onset of the pandemic, (2) whether these changes differed by sex and age, and (3) whether sex and age predicted the likelihood of becoming nutritionally vulnerable. The findings of this study are important because they provide valuable insights regarding individuals who are at greater risk of pandemic-related nutritional variation. Furthermore, the findings highlight the food groups that require more attention during future health crises to avoid harm to vulnerable populations.
Sex differences played a role in shaping dietary changes during the COVID-19 pandemic. Based on the results of a binary logistic regression analysis, sex was identified as a significant predictor of a decrease in dairy and processed meat consumption during the COVID-19 pandemic among the different food groups studied. Specifically, males were 30% more likely to reduce their consumption of these food groups than females. A recent study showed that a moderate intake of dairy products may reduce the risk of COVID-19 by 37%, whereas a higher intake of low-fat dairy products may provide additional protection against the disease [
46]. This implies that while the benefits of dairy consumption during the COVID-19 pandemic are noteworthy, it is unknown whether sex differences have affected dairy consumption after the onset of the COVID-19 pandemic. Furthermore, despite a recent study showing that processed meat consumption did not significantly change during the COVID-19 pandemic [
45], when we divided the data by sex, we found that processed meat consumption increased more among females than males during the pandemic. This could be due to the affordability and availability of processed meat, as women are more likely to experience a negative change in economic status [
24,
25,
31]. However, further research is required to better understand the reasons for these sex-related differences in food consumption.
The COVID-19 pandemic resulted in a significant reduction in the consumption of various food groups, and this trend appeared to vary across age groups. This study found that, compared with individuals aged 81–100 years, those aged 40–60 years reported greater reductions in the consumption of processed meat (131%), vegetables (96%), lean protein (33%), and dairy (11%). These findings suggest that older adults may have maintained healthier dietary patterns during the pandemic, possibly due to increased health awareness and more cautious behavior in response to their heightened vulnerability to COVID-19. Given the elevated risk of severe illness and complications among older adults, they may have been more motivated to make health-promoting dietary choices to strengthen their immune systems and overall resilience. Additionally, this study revealed that individuals in the 61–80 age group were 21% less likely to decrease dairy consumption compared to those in the 81–100 age group. This may reflect a higher awareness in this age group of the role of dairy in maintaining bone health and preventing age-related conditions such as osteoporosis. Overall, these findings underscore the importance of understanding age-related differences in dietary behavior during public health crises and tailoring nutritional guidance accordingly.
In addition, the results suggest that female sex may be associated with a greater probability of being “nutritionally vulnerable” after the onset of the COVID-19 pandemic, and age is not a strong predictor of nutritional vulnerability. There may be sex differences in the impact of the pandemic on food security and access to healthy foods. According to recent research findings, compared with men, women tend to consume more food because of fear, anxiety, or boredom; prefer to eat more unhealthy foods; stockpile a greater amount of food; and frequently modify their shopping habits. Women are more likely to experience job loss or reduced working hours due to the pandemic, which could affect their ability to afford healthy foods [
25,
47,
48,
49]. Women are also more likely to be the primary caregivers of children or elderly relatives [
50], which could limit the time and resources available for them to obtain and prepare healthy meals. Thus, the changes in daily routines resulting from quarantine had a greater impact not only on women but also on the entire family, as women typically have more responsibility for making decisions about family food choices [
20]. The age groups that were not significantly associated with nutritional vulnerability may not be directly associated with the changes in food access, affordability, or food-related behaviors that may have led to nutritional vulnerability during the pandemic.
One major strength of this study was its large sample size, which enhanced the statistical power and precision of the results. While a large sample size does not automatically guarantee representativeness, the diverse demographic characteristics of the sample improve the generalizability of the findings. Additionally, the large sample size makes the ORs more dependable and reduces the likelihood that significant results are due to chance. However, we acknowledge that selection bias may still be a potential limitation despite this study’s size. The other strengths of this study include the consideration of all MyPlate food items in conjunction with the FSS consumption score, which provided a comprehensive assessment of dietary changes during the COVID-19 pandemic. The inclusion of data from diverse age groups and both sexes in this study provided more detailed insights into the variations in dietary habits that exist among different populations. Additionally, the findings provide valuable insights into the groups of individuals who are at greater risk of nutritional changes due to the COVID-19 pandemic, thus highlighting food groups that require more attention during future crises to avoid harm to vulnerable individuals. One limitation of this study was the use of self-reported data, which may be subject to recall and social desirability biases. The participants may have overreported their consumption of healthy foods and underreported their consumption of unhealthy foods, leading to an inaccurate portrayal of their dietary habits during the pandemic. Additionally, participants may have had difficulty accurately recalling their pre-pandemic dietary habits, making it challenging to compare changes in consumption patterns. Additionally, this study focused on changes in dietary habits during the later stages of the pandemic, and it is unclear how these changes may have evolved over time or how they may continue to change as the pandemic persists. Additionally, determinants of differences in food intake behavior, such as participants’ COVID-19 infection status or their social environment during the pandemic, could not be identified in this study. Future research should explore these potential influences to better understand the drivers of dietary changes during the pandemic. Finally, this study did not assess the long-term health implications of changes in dietary habits during the pandemic. Further research is needed to understand the potential consequences of these changes on health outcomes. Although age groups were categorized to reflect middle-aged, early senior, and advanced senior populations, we recognize that individuals within the ages of 61–80 may differ in lifestyle from older adults in the same group. Future studies could use narrower age ranges to better capture such differences.
Implications for Research and Practice
Although this study provides valuable insights into the changes in food consumption after the onset of the COVID-19 pandemic and how they vary by age and sex, there are several implications for future studies. A longitudinal study design can be used to track changes in dietary behavior over time, providing a more accurate understanding of nutritional patterns. More in-depth qualitative methods, including interviews and focus groups, should be employed to explore the reasons for these dietary changes. Cultural and socioeconomic differences in food consumption changes during pandemics can be studied to tailor interventions to specific populations. Future studies should examine the impact of changes in food consumption on health outcomes and explore the effectiveness of different behavioral interventions in promoting healthy food choices during pandemics.