Physical Activity, Screen Time, and Emotional Well-Being during the 2019 Novel Coronavirus Outbreak in China
Abstract
1. Introduction
2. Materials and Methods
2.1. Study Population
2.2. Procedures
2.3. Statistical Analysis
3. Results
3.1. Survey Respondents
3.2. Physical Activity Impact
3.3. Screen Time Impact
3.4. Emotional Well-Being Impact
3.5. Correlations of Provincial Levels of Lifestyle and Emotional State with Proportion of Confirmed COVID-19 Cases in 31 Provinces of Mainland China
4. Discussion
5. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
Appendix
Province | Targeted Survey Sampling Number | Total Population Size |
---|---|---|
Guangdong | 600 ± 200 | Large sample |
Shandong | 600 ± 200 | Large sample |
Henan | 600 ± 200 | Large sample |
Sichuan | 600 ± 200 | Large sample |
Jiangsu | 600 ± 200 | Large sample |
Hebei | 600 ± 200 | Large sample |
Hunan | 600 ± 200 | Large sample |
Anhui | 600 ± 200 | Large sample |
Hubei | 600 ± 200 | Large sample |
Zhejiang | 600 ± 200 | Large sample |
Beijing | 600 ± 200 | Large sample |
Shanghai | 600 ± 200 | Large sample |
Guangxi | 350 ± 100 | Medium sample |
Yunnan | 350 ± 100 | Medium sample |
Jiangxi | 350 ± 100 | Medium sample |
Liaoning | 350 ± 100 | Medium sample |
Heilongjiang | 350 ± 100 | Medium sample |
Shananxi | 350 ± 100 | Medium sample |
Fujian | 350 ± 100 | Medium sample |
Shanxi | 350 ± 100 | Medium sample |
Guizhou | 350 ± 100 | Medium sample |
Chongqing | 200 ± 50 | Small sample |
Jilin | 200 ± 50 | Small sample |
Gansu | 200 ± 50 | Small sample |
Inner mongolia | 200 ± 50 | Small sample |
Xinjiang | 200 ± 50 | Small sample |
Tianjin | 200 ± 50 | Small sample |
Hainan | 150 ± 50 | Tiny sample |
Ningxia | 150 ± 50 | Tiny sample |
Qinghai | 150 ± 50 | Tiny sample |
Tibet | 150 ± 50 | Tiny sample |
Category | Criteria |
---|---|
Vigorous | meeting at least one of the following criteria (a) vigorous–intensity activity on at least 3 days achieving a minimum of at least 1500 MET–min/week OR (b) 7 or more days of any combination of walking, moderate–intensity or vigorous intensity activities achieving a minimum of at least 3000 MET–min/week |
Moderate | (a) 3 or more days of vigorous activity of at least 25 min per day OR (b) 5 or more days of moderate–intensity activity or walking of at least 30 min per day OR (c) 5 or more days of any combination of walking, moderate–intensity or vigorous intensity activities achieving a minimum of at least 600 MET–min/week. |
Light | Those individuals who not meet criteria for Categories 1 or 2 |
Men and Women | Men | Women | ||||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|
Total Sample Size | Number of Insufficient Physical Activity | The Prevalence of Insufficient Physical Activity % (95% CI) | Rank | Total Sample Size | Number of Insufficient Physical Activity | The Prevalence of Insufficient Physical Activity % (95% CI) | Rank | Total Sample Size | Number of Insufficient Physical Activity | The Prevalence of Insufficient Physical Activity % (95% CI) | Rank | |
Qinghai | 133 | 98 | 73.7% (66.2–81.2) | 1 | 60 | 44 | 73.3% (61.7–83.3) | 4 | 73 | 54 | 74.0% (64.4–83.6) | 1 |
Xinjiang | 137 | 95 | 69.3% (61.3–76.6) | 2 | 48 | 36 | 75.0% (60.4–85.4) | 2 | 89 | 59 | 66.3% (56.2–75.3) | 5 |
Jilin | 160 | 110 | 68.8% (61.3–75.6) | 3 | 87 | 66 | 75.9% (66.7–85.1) | 1 | 73 | 44 | 60.3% (49.3–71.2) | 17 |
Heilongjiang | 220 | 151 | 68.6% (62.7–74.5) | 4 | 77 | 52 | 67.5% (57.1–77.9) | 5 | 143 | 99 | 69.2% (61.5–76.2) | 3 |
Tibet | 91 | 61 | 67.0% (57.1–75.8) | 5 | 39 | 29 | 74.4% (59.0–87.2) | 3 | 52 | 32 | 61.5% (48.1–73.1) | 14 |
Guangxi | 330 | 219 | 66.4% (61.5–71.2) | 6 | 124 | 73 | 58.9% (50.0–67.7) | 11 | 146 | 206 | 70.9% (64.1–76.2) | 2 |
Chongqing | 178 | 115 | 64.6% (57.9–71.9) | 7 | 99 | 64 | 64.6% (54.5–73.7) | 6 | 79 | 51 | 64.6% (54.5–74.7) | 8 |
Jiangxi | 358 | 226 | 63.1% (57.8–68.2) | 8 | 161 | 97 | 60.2% (52.8–67.7) | 10 | 197 | 129 | 65.5% (58.9–72.1) | 7 |
Ningxia | 240 | 151 | 62.9% (56.3–69.2) | 9 | 119 | 68 | 57.1% (47.9–65.5) | 14 | 121 | 83 | 68.6% (60.3–76.9) | 4 |
Liaoning | 314 | 195 | 62.1% (56.7–67.2) | 10 | 120 | 67 | 55.8% (46.7–64.2) | 19 | 194 | 128 | 66.0% (59.3–72.7) | 6 |
Guizhou | 161 | 99 | 61.5% (53.4–68.3) | 11 | 81 | 49 | 60.5% (49.4–71.6) | 9 | 80 | 50 | 62.5% (51.3–72.5) | 12 |
Shandong | 952 | 584 | 61.3% (58.4–64.4) | 12 | 460 | 266 | 57.8% (53.5–62.2) | 13 | 492 | 318 | 64.6% (60.6–68.9) | 9 |
Henan | 685 | 416 | 60.7% (57.1–64.5) | 13 | 350 | 203 | 58.0% (52.3–62.9) | 12 | 335 | 213 | 63.6% (58.5–68.7) | 10 |
Zhejiang | 860 | 519 | 60.3% (57.2–63.7) | 14 | 349 | 195 | 55.9% (50.4–60.7) | 17 | 511 | 324 | 63.4% (59.3–67.7) | 11 |
Tianjin | 130 | 78 | 60.0% (51.5–68.5) | 15 | 53 | 30 | 56.6% (43.4–69.8) | 16 | 77 | 48 | 62.3% (51.9–74.0) | 13 |
Hunan | 544 | 326 | 59.9% (55.5–64.0) | 16 | 258 | 158 | 61.2% (55.4–67.1) | 8 | 286 | 168 | 58.7% (53.1–64.3) | 20 |
Shanxi | 290 | 169 | 58.3% (52.4–64.1) | 17 | 142 | 79 | 55.6 (47.2–64.1) | 20 | 148 | 90 | 60.8% (52.7–68.9) | 15 |
Hebei | 561 | 324 | 57.8% (53.8–61.5) | 18 | 258 | 140 | 54.3 (48.1–60.5) | 22 | 303 | 184 | 60.7% (55.1–66.3) | 16 |
Shananxi | 243 | 138 | 56.8% (49.8–63.0) | 19 | 120 | 68 | 56.7% (48.3–65.8) | 15 | 123 | 70 | 56.9% (48.8–65.9) | 21 |
Guangdong | 672 | 374 | 55.7% (51.9–59.5) | 20 | 314 | 161 | 51.3% (45.5–56.7) | 24 | 358 | 213 | 59.5% (54.7–64.8) | 18 |
Gansu | 178 | 99 | 55.6% (48.3–62.4) | 21 | 74 | 38 | 51.4% (39.2–62.2) | 23 | 104 | 61 | 58.7% (49.0–67.3) | 19 |
Jiangsu | 809 | 449 | 55.5% (52.2–58.7) | 22 | 354 | 198 | 55.9% (50.8–60.7) | 18 | 455 | 251 | 55.2% (50.3–59.3) | 23 |
Hubei | 361 | 198 | 54.8% (49.6–59.8) | 23 | 147 | 81 | 55.1% (46.9–62.6) | 21 | 214 | 117 | 54.7% (48.1–61.7) | 24 |
Inner Mongolia | 165 | 90 | 54.5% (47.3–61.8) | 24 | 80 | 49 | 61.3% (51.3–72.5) | 7 | 85 | 41 | 48.2% (37.6–58.8) | 31 |
Sichuan | 461 | 238 | 51.6% (47.1–56.0) | 25 | 219 | 101 | 46.1% (39.7–53.4) | 30 | 242 | 137 | 56.6% (50.4–62.8) | 22 |
Yunnan | 264 | 134 | 50.8% (45.1–56.4) | 26 | 162 | 82 | 50.6% (42.6–58.6) | 27 | 102 | 52 | 51.0% (41.2–59.8) | 28 |
Anhui | 629 | 316 | 50.2% (46.3–54.2) | 27 | 337 | 172 | 51.0% (45.4–57.0) | 25 | 292 | 144 | 49.3% (43.5–55.5) | 29 |
Shanghai | 957 | 480 | 50.2% (47.1–53.5) | 28 | 465 | 225 | 48.4% (44.3–53.5) | 28 | 492 | 255 | 51.8% (47.6–56.1) | 27 |
Fujian | 268 | 134 | 50.0% (44.0–56.0) | 29 | 123 | 57 | 46.3% (37.4–54.5) | 29 | 145 | 77 | 53.1% (44.8–60.7) | 26 |
Hainan | 139 | 69 | 49.6% (41.0–57.6) | 30 | 65 | 33 | 50.8% (38.5–63.1) | 26 | 74 | 36 | 48.6% (36.5–59.5) | 30 |
Beijing | 617 | 302 | 48.9% (45.1–52.7) | 31 | 288 | 125 | 43.4% (37.2–49.0) | 31 | 329 | 177 | 53.8% (48.3–59.3) | 25 |
China (total) | 12107 | 6957 | 57.5% (56.6–58.3) | 5633 | 3106 | 55.1% (53.9–56.6) | 6474 | 3851 | 59.5% (58.2–60.7) |
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Men | Women | Total | |
---|---|---|---|
Percentage n (%) | 5366 (46.5%) | 6474 (53.5%) | 12,107 (100%) |
Age (years) | |||
<20 | 464 (8.2%) | 390 (6.0%) | 854 (7.1%) |
20–24 | 1832 (32.5%) | 2064 (31.9%) | 3896 (32.2%) |
25–29 | 644 (11.4%) | 817 (12.6%) | 1461 (12.1%) |
30–34 | 568 (10.1%) | 860 (13.3%) | 1428 (11.8%) |
35–39 | 608 (10.8%) | 777 (12.0%) | 1385 (11.4%) |
40–44 | 570 (10.1%) | 658 (10.2%) | 1228 (10.1%) |
45–49 | 463 (8.2%) | 447 (6.9%) | 910 (7.5%) |
50–54 | 243 (4.3%) | 238 (3.7%) | 481 (4.0%) |
55–59 | 148 (2.6%) | 132 (2.0%) | 280 (2.3%) |
≥60 | 93 (1.7%) | 91 (1.4%) | 184 (1.5%) |
Urbanity | |||
Urban regions | 1751 (31.1%) | 1949 (30.1%) | 3700 (30.6%) |
Rural regions | 3882 (68.9%) | 4525 (69.9%) | 8407 (69.4%) |
Education | |||
Primary school or lower | 187 (3.3%) | 161 (2.5%) | 348 (2.9%) |
Middle school | 272 (4.8%) | 413 (6.4%) | 685 (5.7%) |
High school | 504 (8.9%) | 700 (10.8%) | 1204 (9.9%) |
College | 3260 (57.9%) | 3707 (57.2%) | 6963 (57.5%) |
Graduate | 1410 (25.0%) | 1497 (23.1%) | 2907 (24.0%) |
Occupation | |||
Full-time student | 2211 (39.3%) | 2249 (34.7%) | 4460 (36.8%) |
Labor | 458 (8.1%) | 504 (7.8%) | 962 (7.9%) |
Professional | 2280 (40.4%) | 2476 (38.2%) | 4756 (39.3%) |
Unemployed and freelance | 684 (12.1%) | 1245 (19.2%) | 1929 (15.9%) |
Vigorous | Moderate | Light | p for Difference * | |
---|---|---|---|---|
Sex | <0.0001 | |||
Men | 23.0% (21.9–24.2) | 21.9% (20.8–23.0) | 55.1% (53.8–56.4) | |
Women | 19.4% (18.4–20.3) | 21.2% (20.2–22.2) | 59.5% (58.2–60.7) | |
Age | <0.0001 | |||
<20 | 28.9% (25.8–32.0) | 20.7% (18.0–23.5) | 50.4% (47.0–53.7) | |
20–24 | 17.1% (15.9–18.4) | 18.7% (17.5–19.9) | 64.2% (62.7–65.8) | |
25–29 | 17.1% (15.0–19.1) | 19.4% (17.4–21.5) | 63.4% (61.0–65.9) | |
30–34 | 17.9% (15.8–19.7) | 22.1% (20.0–24.4) | 60.0% (57.6–62.5) | |
35–39 | 23.3% (21.1–25.7) | 22.2% (19.9–24.3) | 54.5% (51.8–57.0) | |
40–44 | 24.2% (21.7–26.6) | 23.9% (21.3–26.3) | 51.9% (49.2–54.8) | |
45–49 | 24.8% (22.1–27.6) | 27.8% (24.9–30.8) | 47.4% (44.2–50.4) | |
50–54 | 28.1% (23.9–32.2) | 24.5% (20.6–28.7) | 47.4% (42.8–52.0) | |
55–59 | 33.2% (27.9–38.9) | 25.7% (20.7–30.7) | 41.1% (35.4–46.8) | |
≥60 | 30.4% (23.9–37.0) | 28.3% (21.7–34.8) | 41.3% (34.2–48.9) | |
Urbanity | <0.0001 | |||
Urban | 20.5% (19.6–21.3) | 22.1% (21.2–23.0) | 57.5% (56.4–58.5) | |
Rural | 22.4% (21.1–23.8) | 20.1% (18.8–21.4) | 57.5% (55.9–59.1) |
PANAS Positive Affect | PANAS Negative Affect | |
---|---|---|
Total | ||
n = 12107 | 24.78 ± 6.88 | 19.34 ± 7.05 |
Sex | ||
Male (n = 5633) | 25.09 ± 7.06 | 19.04 ± 7.00 |
Female (n = 6474) | 24.51 ± 6.70 | 19.61 ± 7.08 |
p for difference | <0.0001 | <0.0001 |
Urbanity | ||
Urban (n = 8407) | 24.81 ± 6.85 | 19.46 ± 7.13 |
Rural (n = 3700) | 24.70 ± 6.95 | 19.08 ± 6.86 |
p for difference | 0.420 | 0.006 |
Age | ||
<20 (n = 854) | 26.26 ± 7.61 ab | 17.35 ± 6.68 ab |
20–24 (n = 3896) | 24.14 ± 7.17 | 19.69 ± 7.20 |
25–29 (n = 1461) | 24.21 ± 6.86 | 20.43 ± 7.20 |
30–34 (n = 1428) | 24.41 ± 6.66 | 19.86 ± 7.15 b |
35–39 (n = 1385) | 25.21 ± 6.38 ab | 19.93 ± 6.84 |
40–44 (n = 1228) | 25.52 ± 6.46 ab | 19.21 ± 6.98 ab |
45–49 (n = 910) | 25.05 ± 6.12 ab | 18.45 ± 6.42 ab |
50–54 (n = 481) | 25.35 ± 6.56 ab | 17.48 ± 6.15 ab |
55–59 (n = 280) | 25.90 ± 6.93 ab | 17.32 ± 6.47 ab |
≥60 (n = 184) | 25.97 ± 7.15 ab | 17.18 ± 7.46 ab |
p for difference | <0.0001 | <0.0001 |
Physical activity level | ||
Vigorous (n = 2548) | 27.54 ± 6.44 | 18.41 ± 6.49 |
Moderate (n = 2602) | 25.53 ± 6.37 * | 18.93 ± 6.51 * |
Light (n = 6957) | 23.48 ± 6.88 *# | 19.34 ± 7.39 *# |
p for difference | <0.0001 | <0.0001 |
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Qin, F.; Song, Y.; Nassis, G.P.; Zhao, L.; Dong, Y.; Zhao, C.; Feng, Y.; Zhao, J. Physical Activity, Screen Time, and Emotional Well-Being during the 2019 Novel Coronavirus Outbreak in China. Int. J. Environ. Res. Public Health 2020, 17, 5170. https://doi.org/10.3390/ijerph17145170
Qin F, Song Y, Nassis GP, Zhao L, Dong Y, Zhao C, Feng Y, Zhao J. Physical Activity, Screen Time, and Emotional Well-Being during the 2019 Novel Coronavirus Outbreak in China. International Journal of Environmental Research and Public Health. 2020; 17(14):5170. https://doi.org/10.3390/ijerph17145170
Chicago/Turabian StyleQin, Fei, Yiqing Song, George P Nassis, Lina Zhao, Yanan Dong, Cuicui Zhao, Yiwei Feng, and Jiexiu Zhao. 2020. "Physical Activity, Screen Time, and Emotional Well-Being during the 2019 Novel Coronavirus Outbreak in China" International Journal of Environmental Research and Public Health 17, no. 14: 5170. https://doi.org/10.3390/ijerph17145170
APA StyleQin, F., Song, Y., Nassis, G. P., Zhao, L., Dong, Y., Zhao, C., Feng, Y., & Zhao, J. (2020). Physical Activity, Screen Time, and Emotional Well-Being during the 2019 Novel Coronavirus Outbreak in China. International Journal of Environmental Research and Public Health, 17(14), 5170. https://doi.org/10.3390/ijerph17145170