Preliminary Trajectories in Dietary Behaviors during the COVID-19 Pandemic: A Public Health Call to Action to Face Obesity
Abstract
:1. Introduction
2. Methods
3. Results
3.1. Overview of Selected Studies
3.2. Single Foods or Food Groups
3.3. Junk Foods, Snacks, and Alcoholic Beverages
3.4. Body Weight Changes, Physical Activity Level, and Home-Cooking Habits
4. Discussion
Strengths and Limitations
5. Conclusions
Author Contributions
Funding
Conflicts of Interest
Abbreviations
COVID-19 | Coronavirus Disease 19 |
WHO | World Health Organization |
MEDLINE | Medical Literature Analysis and Retrieval System Online |
EPA | Eicosapentaenoic Acid |
DHA | Docosahexaenoic Acid |
PRISMA | Preferred Reporting Items for Systematic Reviews and Meta-Analyses |
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Strategy | Descriptors Used |
---|---|
# 1 | (diet[tiab]) OR (feeding[tiab])) OR (habits[tiab]) OR (dietary lifestyle[tiab]) OR (dietary habits[tiab]) OR (dietary [tiab]) OR (dietary pattern[tiab]) OR (dietary behavior[tiab]) OR (food[tiab]) OR (foods[tiab]) OR (food habits[tiab]) OR (nutritional habits[tiab]) OR (eating habits[tiab]) OR (eating[tiab]) |
# 2 | (change[tiab]) OR (changes[tiab]) OR (modifications[tiab]) OR (alterations[tiab]) OR (alteration[tiab]) OR (different[tiab]) OR (differences [tiab]) |
# 3 | (sars cov 2[tiab]) OR (covid 19[tiab]) OR (severe acute respiratory syndrome coronavirus 2[tiab]) |
# 4 | # 1 AND # 2 AND # 3 |
Study Details | |||||||
---|---|---|---|---|---|---|---|
Ref. | Authors, Year | Sample Size | Study Group | Study Design | Country | Method of Estimating Intake | Dietary Assessment Method |
[11] | Sidor et al., 2020 | 1097 | 18–71 years | Cross-sectional | Poland | Daily/weekly frequency | Online questionnaire |
[12] | Górnicka et al., 2020 | 2.381 | 18+ years | Cross-sectional | Poland | Daily/weekly frequency | Online questionnaire |
[13] | Ghosh et al., 2020 | 150 | Middle-aged adults | Longitudinal | India | Daily frequency | Phone interview |
[14] | Di Renzo et al., 2020 | 3533 | 12–86 years | Cross-sectional | Italy | Daily/weekly frequency | Online questionnaire Eating Habits and Lifestyle Changes in COVID19 lockdown (EHLC-COVID-19) |
[15] | Romeo-Arroyo et al., 2020 | 600 | 18–68 years | Cross-sectional | Spain | Weekly frequency | Online questionnaire |
[16] | Pellegrini et al., 2020 | 150 | 18–75 years | Cross-sectional | Italy | Daily/weekly frequency | Online questionnaire |
[17] | Wang et al., 2020 | 2289 | 18–81 years | Cross-sectional | China | Weekly frequency | Online questionnaire |
[18] | Rodríguez-Pérez et al., 2020 | 7514 | >18 years | Longitudinal | Spain | Daily/weekly frequency | Online questionnaire |
[19] | Pietrobelli et al., 2020 | 41 | 6–18 years | Longitudinal | Italy | Daily frequency | Phone interview |
[20] | Reyes-Olavarría et al., 2020 | 700 | 18–62 years | Cross-sectional | Chile | Daily/weekly frequency | Online questionnaire |
[21] | Ruiz-Roso et al., 2020 | 820 | 10–19 years | Longitudinal | Italy, Spain, Chile, Colombia, Brazil | Weekly frequency | Online questionnaire (National School Health Survey—PeNSE survey) |
[22] | Scarmozzino et al., 2020 | 1.929 | − | Cross-sectional | Italy | Weekly frequency | Online questionnaire |
Authors, Year [Ref.] | Body Weight Changes | Carbohydrate Sources | Overall Findings | |||||
---|---|---|---|---|---|---|---|---|
Gain | Loss | None | Sugary Food | Fruit | Vegetables | Cereals | ||
Ghosh et al., 2020 [13] | 19% | 33% | 48% | 7% reported 25–50% more sugar intake | 20% reported 25–50% more fruits intake | 9% increased servings/day (3 or more) | 21% increased cereals intake (rice, grains) | Increased carbohydrate, snacking and fruit intake, and home cooked meals |
Ruiz-Roso et al., 2020 [21] | - | 47.4% increased sweet foods intake (>4/week) versus 40.6% pre-COVID-19. Ditto for sugar beverages (23.8% against 22.7%) | 58.6% increase (>4/week) versus 53.9% pre-COVID-19 | 70.8% increase (>4/week) versus 66.2% pre-COVID-19 | - | Increased pulses, fruit, and vegetables intake, and home cooked meals. Higher sweet food intake. The overall diet quality did not improve. | ||
Rodríguez-Pérez et al., 2020 [18] | 12% | - | 47% | Up to 21% decreased daily sweet beverages intake | Up to 18% increased daily intake | Up to 19% increased daily intake | - | Higher intake of fruits, vegetables, and pulses and lower intake of red meat, alcohol, and fried foods. |
Pietrobelli et al., 2020 [19] | - | Increase of sugary drinks (0.40 ± 0.90 to 0.90 ± 1.16 servings/day) | Increased (1.16 ± 0.74 to 1.39 ± 0.70 servings/day) | Increased (1.34 ± 0.74 to 1.27 ± 0.69 servings/day) | - | No changes in reported vegetables intake. Fruit intake increased. Potato chip, red meat, and sugary drink intakes increased significantly. | ||
Sidor et al., 2020 [11] | 29.9% | 18.6% | - | One-third consumed at least once or more/day | One-third did not consume fresh vegetables and fruits on a daily basis | One-third did not consume fresh vegetables and fruits on a daily basis | The majority (64.2%) consumed grains once or more/day | One-third of people surveyed did not consume fresh vegetables and fruits on a daily basis, while the same proportion admitted to consuming sweets at least once every day. Obese people surveyed tended to eat vegetables, fruits, and pulses less frequently, and salty foods, meat, and dairy more often. |
Di Renzo et al., 2020 [14] | 48.6% | 13.9% | 37.4% | 43% increased homemade sweets | 37.4% increase | 37.4% increase | Up to 40% increased (homemade pizza, fresh bread, cereals) | Increased homemade foods (e.g., sweets, pizza and bread), cereals, and pulses, and decreased fresh fish, packaged sweets and baked products, delivery foods and alcohol intake |
Romeo-Arroyo et al., 2020 [15] | - | Over 50% increased sweets intake | 35% increase | 30% increase | Increase of cereals (20%), pasta/rice (39%), and bread (36%) consumption | Increased baking, fruits, and vegetables intake | ||
Scarmozzino et al., 2020 [22] | 19.5% | - | 50.7% | 42.5% increased chocolate, cakes, and ice creams | 21.2% increase | 21.2% increase | - | Increased consumption of fresh fruit and vegetables. Decreased alcohol consumption |
Górnicka et al., 2020 [12] | - | 39.9% increased homemade pastries intake, 8.4% decreased sugar-sweetened beverages, and 5% decreased energy drink intake | 20.1% decreased servings/day consumption | Almost 19% decreased servings/day consumption | 16.3% increased whole grain products intake | Highly increased consumption of homemade pastries. Increased consumption of eggs, pulses, and cereals, as well as alcohol. Decreased fish, fruit, and vegetable intake. | ||
Reyes-Olavarría et al., 2020 [20] | 32% | 17% | 51% | - | 30.9% increased daily intake | 30.9% Increased daily intake | - | Increased fruit and vegetables consumption, and home cooked meals. Higher junk and fried foods intake. The overall diet quality did not improve. |
Pellegrini et al., 2020 [16] | Self-reported weight and BMI significantly increased by 1.51 kg | 72% reported equal or greater sweets consumption than pre-COVID-19 | 81% reported equal or greater consumption than pre-COVID-19 | 81% reported equal or greater consumption of cereals than pre-COVID-19 | Increased frequency of overall food intake. More sweets and snacks consumption. | |||
Wang et al., 2020 [17] | - | 30% reported consuming more vegetables and fruit, especially women | Increased consumption (250–400 g/day), especially men | Higher intake of fruits, vegetables, and cereals. Increased snacking frequency. |
Authors, Year [Ref.] | Junk/Fast Foods | Dressing Fat | Protein Sources | Snacks | Alcohol | Home Cooking |
---|---|---|---|---|---|---|
Ghosh et al., 2020 [13] | - | 5% increased overall fat intake (ghee, butter) | 3% increased overall protein intake (eggs, fish, meat, pulses, soybean) | 23% increase snacking frequency (>4/day) | 8% decreased daily intake by 25–50% versus 3% of increase | Widespread (97%) |
Ruiz-Roso et al., 2020 [21] | Up to 18.5% increase (>4/week) | - | 23.6% increased pulses intake (>4/week) against 22.8% before | - | ||
Rodríguez-Pérez et al., 2020 [18] | Up to 34% lower fast foods and processed meat weekly intake | 4% increase of olive oil daily intake | Up to 75% and 7% increase in weekly fish and pulses intake. Almost 2% decreased daily meat intake. | 37.6% increased snacking frequency | 57.3% decreased weekly intake. | 45.7% increase |
Pietrobelli et al., 2020 [19] | Increased potato chips intake (0.07 ± 0.24 to 0.61 ± 0.83 serving/day) | - | Increased daily red meat consumption (from 1.80 ± 1.53 to 3.46 ± 2.45) | - | ||
Sidor et al., 2020 [11] | Higher frequency | - | Dairy, meat, and pulses were consumed by the majority quite often during the week | Up to 60% increase | 14.6% increase | 62.3% increase |
Di Renzo et al., 2020 [14] | 29.8% decrease | - | Up to 15% increased eggs, meat, and pulses. Decreased fresh fish consumption -22% | - | 13% decreased wine and beer consumption | - |
Romeo-Arroyo et al., 2020 [15] | - | 30% increase of eggs, 39% increase of milk and dairy products, and 33% decrease of fish intake | - | 27% decreased alcoholic beverages | Widespread (between 4 and 6 on a 7-point scale of agreement) | |
Scarmozzino et al., 2020 [22] | - | 23.5% increased frequency | 36.8% decreased wine, beer, and liquors consumption | - | ||
Górnicka et al., 2020 [12] | 36.6% decrease | - | Increased low-fat meat and/or eggs (15.7%), pulses (13.9%), and milk and dairy products (20.8%) intake. Decreased fish and seafood (17%), and processed meat (17.7%) intake. | 19.7% decreased salty snacks | 18.1% increase | 48% increase |
Reyes-Olavarría et al., 2020 [20] | Increased junk and fried foods intake (1–2 times/week) | - | About 25% consumed red and white meat more than 3 times/week. 75.1% and 83.7% consumed fish and pulses 1–2 times/week. | - | 30% declared a daily consumption of alcohol | 59.6% increase |
Pellegrini et al., 2020 [16] | - | 81% reported equal or greater consumption of overall protein sources than pre-COVID-19 | 60.6% reported equal or greater snacking frequency | - | ||
Wang et al., 2020 [17] | - | Meats, dairy products, and eggs fulfilled the recommendation of the dietary guidelines for Chinese residents | About 30% reported an increased snacking frequency | - |
Ref. | Authors, Year | Physical Activity Level | Study Design |
---|---|---|---|
[11] | Sidor et al., 2020 | - | Cross-sectional |
[12] | Górnicka et al., 2020 | 43% decreased | Cross-sectional |
[13] | Ghosh et al., 2020 | 42% decreased | Longitudinal |
[14] | Di Renzo et al., 2020 | No significant difference between the percentage of people that did not train before (37.7%) or during (37.4%) the COVID-19 lockdown. However, a higher frequency of training during the emergency was found when compared to the previous period. | Cross-sectional |
[15] | Romeo-Arroyo et al., 2020 | - | Cross-sectional |
[16] | Pellegrini et al., 2020 | 79.3% did not do any physical activity or reduced their physical activity level compared to pre-COVID-19 | Cross-sectional |
[17] | Wang et al., 2020 | More than 50% decreased | Cross-sectional |
[18] | Rodríguez-Pérez et al., 2020 | 59.6% decreased | Longitudinal |
[19] | Pietrobelli et al., 2020 | Sports time decreased significantly by 2.30 ± 4.60 h/week | Longitudinal |
[20] | Reyes-Olavarría et al., 2020 | The highest percentage of subjects passed ≥6 h sitting or sedentary activities (54.4%) | Cross-sectional |
[21] | Ruiz-Roso et al., 2020 | - | Longitudinal |
[22] | Scarmozzino et al., 2020 | - | Cross-sectional |
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Share and Cite
Zupo, R.; Castellana, F.; Sardone, R.; Sila, A.; Giagulli, V.A.; Triggiani, V.; Cincione, R.I.; Giannelli, G.; De Pergola, G. Preliminary Trajectories in Dietary Behaviors during the COVID-19 Pandemic: A Public Health Call to Action to Face Obesity. Int. J. Environ. Res. Public Health 2020, 17, 7073. https://doi.org/10.3390/ijerph17197073
Zupo R, Castellana F, Sardone R, Sila A, Giagulli VA, Triggiani V, Cincione RI, Giannelli G, De Pergola G. Preliminary Trajectories in Dietary Behaviors during the COVID-19 Pandemic: A Public Health Call to Action to Face Obesity. International Journal of Environmental Research and Public Health. 2020; 17(19):7073. https://doi.org/10.3390/ijerph17197073
Chicago/Turabian StyleZupo, Roberta, Fabio Castellana, Rodolfo Sardone, Annamaria Sila, Vito Angelo Giagulli, Vincenzo Triggiani, Raffaele Ivan Cincione, Gianluigi Giannelli, and Giovanni De Pergola. 2020. "Preliminary Trajectories in Dietary Behaviors during the COVID-19 Pandemic: A Public Health Call to Action to Face Obesity" International Journal of Environmental Research and Public Health 17, no. 19: 7073. https://doi.org/10.3390/ijerph17197073
APA StyleZupo, R., Castellana, F., Sardone, R., Sila, A., Giagulli, V. A., Triggiani, V., Cincione, R. I., Giannelli, G., & De Pergola, G. (2020). Preliminary Trajectories in Dietary Behaviors during the COVID-19 Pandemic: A Public Health Call to Action to Face Obesity. International Journal of Environmental Research and Public Health, 17(19), 7073. https://doi.org/10.3390/ijerph17197073