| Literature DB >> 35234065 |
Cinthia Rejane Corrêa1,2, Bruno Gonçalves Galdino da Costa3, Talissa Dezanetti2, Richard Emanuel Filipini2, Everson Araújo Nunes1,2.
Abstract
Background: The coronavirus disease (COVID-19) pandemic has promoted changes in lifestyle behaviors, such as food consumption, sleep, and physical activity (PA). Few longitudinal studies have investigated these changes in young adults. Aim: This study aimed to assess lifestyle behaviors before and during the COVID-19 pandemic in young adult males.Entities:
Keywords: COVID-19; food intake; lifestyle; physical activity; sleep
Year: 2022 PMID: 35234065 PMCID: PMC8891906 DOI: 10.1177/02601060221081653
Source DB: PubMed Journal: Nutr Health ISSN: 0260-1060
Figure 1.Measurements at baseline (before the COVID-19 pandemic) and follow-up / legend: FR: food records. NDSR: Nutrition Data System for Research. BIA: Bioelectrical impedance. PSQI: Pittsburgh Sleep Quality Index. IPAQ: International Physical Activity Questionnaire.
Sociodemographic variables of the study participants (n = 50).
| Variables | Mean ± SD/n (%) |
|---|---|
| Age (years) | 27.7 ± 4.2 |
| Education | |
| ≤11 years | 2 (4) |
| 12–17 years | 30 (60) |
| ≥18 years | 18 (36) |
| Occupation | |
| Student | 26 (52) |
| Employed | 7 (14) |
| Student and employed | 17 (34) |
| Marital status | |
| Single | 44 (88) |
| Married | 6 (12) |
| Monthly income (tertiles) | |
| <1500 BRL/m | 20 (40) |
| 1500–3500 BRL/m | 14 (28) |
| >3500 BRL/m | 16 (32) |
| Working remotely during follow-up | |
| Yes | 26 (52) |
| No | 24 (48) |
n: number of events; %: percentage; SD: standard deviation; BRL: Brazilian Reais.
Figure 2.Body mass and body mass index (BMI) changes from baseline to follow-up (a) body mass and (b) BMI changed from baseline to follow-up (* = p < 0 .05). (c) Delta body mass and BMI were calculated using the difference between follow-up and baseline. (d) Self-perception of body mass change at follow-up (n = 50).
Figure 3.Differences between food consumption between baseline and follow-up. (a) Differences in the intake of food groups (a) and beverages (b) between baseline and follow-up. (c) Self-perception of food consumption during follow-up (d) food consumption in front of the screen at baseline and follow-up. (n = 50).
Differences of nutrient and energy consumption indicators between baseline and follow-up (n = 22).
| Baseline | Follow-up | Difference | ||
|---|---|---|---|---|
| Mean ± SD | Mean ± SD | Mean (95%CI) | ||
| Energy intake (kcal:) | ||||
| Total | 2267.36 ± 468.3 | 2308.83 ± 633.45 | 41.47 (−220.61; 303.55) | 0.76 |
| Carbohydrates | 1104.42 ± 317.9 | 1163.33 ± 417.1 | 58.92 (−98.48; 216.31) | 0.471 |
| Protein | 360.57 ± 63.81 | 406.97 ± 106.49 | 46.4 (−5.32; 98.12) | 0.0932 |
| Total fat | 799.76 ± 145.5 | 679.91 ± 173.26 | −119.85 (−202.08; −37.63)a | 0.00944 |
| Nutrients: | ||||
| Carbohydrates (g) | 276.1 ± 79.48 | 290.83 ± 104.27 | 14.73 (−24.62; 54.08) | 0.471 |
| Total fat (g) | 88.86 ± 16.17 | 75.55 ± 19.25 | −13.32 (−22.45; −4.18)a | 0.00944 |
| Proteins (g) | 90.14 ± 15.95 | 101.74 ± 26.62 | 11.6 (−1.33; 24.53) | 0.0932 |
| Sodium (mg) | 3675.75 ± 615.54 | 2345.03 ± 1195.28 | −1330.72 (−1790.63; −870.82)a | 0.0000125 |
| Cholesterol (mg) | 325.85 ± 135.95 | 112.86 ± 1.68 | −212.99 (−269.8; −156.18)a | < 0.000001 |
| Total sugars (g) | 96.14 ± 33.79 | 31.02 ± 20.2 | −65.12 (−80.94; −49.29)a | < 0.000001 |
| Fibers (g) | 20.19 ± 8.38 | 15.63 ± 5.74 | −4.57 (−7.91; −1.22)a | 0.0142 |
SD: standard deviation; 95%CI: 95% confidence interval; Differences were tested with Multilevel Linear Regressions; aIndicate statistical significance at p < 0.05.
Differences of sleep and physical activity indicators between baseline and follow-up (n = 47).
| Baseline | Follow-up | Difference | ||
|---|---|---|---|---|
| Mean ± SD | Mean ± SD | Mean (95%CI) | ||
| Physical activity domains (METs/week) | ||||
| Total | 3608.89 ± 8518.54 | 3393.17 ± 4049.38 | 86.14 (−2174.13; 2346.41) | 0.940456 |
| Occupational | 2026.77 ± 8267.47 | 859.62 ± 2229.87 | −1168.1 (−1422.33; −913.83)a | < 0.001 |
| Active transportation | 700.00 ± 878.00 | 773.68 ± 2255.39 | 73.26 (−231.71; 378.23) | 0.628 |
| Domestic | 526.00 ± 688.94 | 920.85 ± 2096.85 | 394.04 (114.68; 673.39)a | 0.0057 |
| Leisure | 354.04 ± 349.13 | 851.66 ± 1417.42 | 499.91 (245.28; 754.53)a | 0.000119 |
| Physical activity volume (METs/week) | ||||
| Walking | 1535.06 ± 2889.77 | 1250.49 ± 2463.95 | −285.1 (−579.1; 8.82) | 0.33 |
| Moderate | 1289.36 ± 2361.59 | 1472.77 ± 2407.56 | 182.8 (−270.92; 636.53) | 0.524 |
| Vigorous | 784.68 ± 4187.75 | 682.55 ± 1328.31 | −102.1 (−1246.27; 1042.01) | 0.8611 |
| Sleep | ||||
| Latency (minutes/night) | 28.45 ± 28.30 | 31.09 ± 27.61 | 2.638 (−6.53; 11.8) | 0.575 |
| Duration (hours/night) | 6.46 ± 0.96 | 7.22 ± 1.16 | 0.7596 (0.41; 1.11)a | 0.000102 |
| Efficiency (%) | 89.35 ± 14.93 | 90.59 ± 12.19 | 1.238 (−3.85; 6.33) | 0.636 |
Legend: SD: standard deviation; MET: metabolic equivalent; 95%CI: 95% confidence interval; Differences for physical activity indicators were tested with Multilevel Generalized Linear Models for Gamma distributions; Differences for sleep indicators were tested with Multilevel Linear Regressions; aIndicate statistical significance at p < 0.05.