Measuring the Physical Activity of Seniors before and during COVID-19 Restrictions in the Czech Republic
Abstract
:1. Introduction
2. Materials and Methods
2.1. Participants
2.1.1. Data Filtering
2.1.2. Participant Statistics
2.2. Data Package
- The system has information about the battery; it knows when the device is put on the charger and when it is removed from it.
- The system monitors a “no motion alarm” in individual wear time (usually 7 am to 10 pm). If a device does not detect motion in a two-hour time window, then the caregiver will contact the user.
- The system monitors “long charging” in individual time (usually up to 8 am). If the battery device is over 98% and without motion, then the operator will contact the user.
- The system monitors “low battery” and “lost data”. Again, the caregiver will contact the user.
- There is regular training on the use of the equipment.
2.3. Statistical Analysis
2.4. Established Hypotheses
- Hypothesis 1 (H01). Participant PA in the pre-COVID period is the same as in the during-COVID period in general.
- Hypothesis 2 (H02). Male PA in the pre-COVID period is the same as in the during-COVID period in general.
- Hypothesis 3 (H03). Female PA in the pre-COVID period is the same as in the during-COVID period in general.
- Hypothesis 4 (H04). Participant physical activity in the pre-COVID period is the same as in the during-COVID period for every month.
- Hypothesis 5 (H05). The PA is the same for pre-COVID and during-COVID periods in a big city.
- Hypothesis 6 (H06). The PA of participants living in a small or big city is the same in the pre-COVID period.
- Hypothesis 7 (H07). The PA of participants living in a small or big city is the same in the during-COVID period.
- Hypothesis 8 (H08). For a participant living in a flat, is PA the same for a participant living in a house in the pre-COVID period.
- Hypothesis 9 (H09). For a participant living in a flat, is PA the same for a participant living in a house in the during-COVID period.
- Hypothesis 10 (H10). Physical activity in the pre-COVID and during-COVID periods is the same for a given age category.
- Hypothesis 11 (H11). BMI is correlated with average PA in the pre-COVID period.
- Hypothesis 12 (H12). BMI is correlated with average PA in the during-COVID period.
3. Results
3.1. Physical Activity in General
3.1.1. Physical Activity Evaluation
3.1.2. Physical Activity Calculation of the Rate of Decline
3.2. Physical Activity in Each Month
3.3. Physical Activity in Different City Size
3.4. Physical Activity in Different Households
3.5. Physical Activity in Different Age Groups
3.6. Correlation of BMI (Body Mass Index) with PAL
3.7. Variance of Physical Activity Values
4. Discussion
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A
Appendix A.1. Physical Activity Package
- Client ID {number}
- Activity level in a 10-min window in the period 1 March 2019 to 29 February 2020 {number}
- Activity level in a 10-min window in the period 1 March 2020 to 28 February 2021 {number}
Appendix A.2. Client Information Package
- Client ID {number}
- Gender {text}
- Year of birth {number}
- Postcode of residence {number}
- Mobility Status {normal, low, with help, wheelchair}
- Housing Status {apartment, house}
- Height {number}
- Weight {number}
Appendix A.3. Number of Population in the Cities
- District code {number}
- City code {number}
- Name of municipality {text}
- Population total, males, females {number}
- Average age total, males, females {number}
Appendix A.4. ZIP Code List
- City name {text}
- ZIP code {number}
- Post name {text}
- District code {number}
- District name {text}
Appendix B
Hypothesis | p-Value | p-Value for the First Group Normality Test | p-Value of the Second Group Normality Test | Test Type |
---|---|---|---|---|
H01 | 0.0000407 | 0.0558 (pre) | 0.4839 (during) | t-test |
H02 | 0.0351 | 0.092 (pre) | 0.2268 (during) | t-test |
H03 | 0.000279 | 0.0246 (pre) | 0.4113 (during) | Wilcox |
H05 | 0.0003187 | 0.0029 (pre) | 0.1223 (during) | Wilcox |
H06 | 0.9216 | 0.0029 (Big city) | 0.03804 (Small city) | Wilcox |
H07 | 0.9981 | 0.1223 (Big city) | 0.3249 (Small city) | t-test |
H08 | 0.5802 | 0.0218 (flat) | 0.132 (house) | Wilcox |
H09 | 0.9982 | 0.008 (flat) | 0.5 (house) | Wilcox |
H10 (<80) | 0.4713 | 0.3346 (pre) | 0.5 (during) | t-test |
H10 (80–85) | 0.00137 | 0.0682 (pre) | 0.0178 (during) | Wilcox |
H10 (86–90) | 0.0342 | 0.1599 (pre) | 0.5 (during) | t-test |
H10 (>90) | 0.2342 | 0.0499 (pre) | 0.5 (during) | Wilcox |
Month | p-Value | Normality Test Result Pre-COVID Group | Normality Test Result During-COVID Group | Test Type |
---|---|---|---|---|
January | 0.5143 | No | No | t-test |
February | 0.8778 | No | No | t-test |
March | 0.0272 | No | Yes | Wilcox |
April | 0.000166 | No | No | Wilcox |
May | 0.000221 | No | No | Wilcox |
June | 0.0014 | No | No | t-test |
July | 0.0124 | No | No | Wilcox |
August | 0.0051 | No | No | Wilcox |
September | 0.1718 | No | No | t-test |
October | 0.0683 | No | No | Wilcox |
November | 0.0011 | No | No | Wilcox |
December | 0.4095 | No | No | Wilcox |
Hypothesis | Mean | Std | Median | Interquartile | |||||
---|---|---|---|---|---|---|---|---|---|
Pre-COVID | During-COVID | Pre-COVID | During-COVID | Pre-COVID | During-COVID | Pre-COVID | During-COVID | ||
H01 | 8.8944 | 7.8846 | 12.0414 | 11.4569 | 6.3407 | 5.097 | 12.8576 | 11.3085 | |
H02 | 9.5937 | 8.4228 | 5.5547 | 5.0809 | 9.4685 | 7.3391 | 6.9067 | 6.7901 | |
H03 | 14.0388 | 12.4687 | 13.8464 | 13.5239 | 11.6287 | 9.5267 | 10.2819 | 10.1811 | |
H05 | 11.4504 | 10.33 | 6.4578 | 6.8865 | 10.3775 | 8.7298 | 9.0502 | 8.0299 | |
H06 + H07 | Big city | 11.4504 | 10.33 | 6.4578 | 6.8865 | 10.3775 | 8.7298 | 10.3775 | 8.0299 |
Small city | 15.006 | 13.0793 | 17.2835 | 16.5888 | 11.0594 | 8.8027 | 11.1257 | 10.2064 | |
H08 + H09 | Flat | 12.0011 | 10.5609 | 6.8931 | 7.1804 | 10.6546 | 8.6143 | 10.2723 | 9.6763 |
House | 11.0172 | 9.6469 | 5.8998 | 5.3178 | 10.8687 | 9.9616 | 5.7273 | 7.0575 | |
H10 (<80) | 12.21112 | 10.8139 | 16.7812 | 14.0844 | 8.4119 | 7.3049 | 7.9115 | 8.5652 | |
H10 (80–85) | 11.9232 | 9.6699 | 6.8988 | 6.5215 | 11.0594 | 8.7298 | 9.3082 | 8.0688 | |
H10 (86–90) | 15.1559 | 14.5726 | 15.2016 | 16.6061 | 12.7166 | 9.7711 | 8.6855 | 11.1537 | |
H10 (>90) | 11.6059 | 10.2137 | 6.6508 | 7.5455 | 10.4028 | 8.3309 | 9.9492 | 9.4134 |
Hypothesis | R-Value |
---|---|
H11 | 0.004 |
H12 | 0.121 |
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Group | Number | n (%) | |
---|---|---|---|
Gender | Male | 46 | 23 |
Female | 158 | 77 | |
Body | Weight ± SD | 79.54 ± 51.7 kg | |
Height ± SD | 175.50 ± 8 cm | ||
BMI ± SD | 25.80 ± 21.2 | ||
Population | Weight in Big city ± SD | 81.10 ± 68.3 kg | |
Weight in Small city ± SD | 72.33 ± 12.9 kg | ||
Age in Big city ± SD | 84.26 ± 7.4 | ||
Age in Small city ± SD | 84.31 ± 8.2 | ||
Male | Weight ± SD | 79.54 ± 11.1 kg | |
Height ± SD | 175.50 ± 6.4 cm | ||
BMI ± SD | 25.80 ± 3.2 | ||
Age ± SD | 84.80 ± 9.3 | ||
Female | Weight ± SD | 76.50 ± 58.4 kg | |
Height ± SD | 161.94 ± 5.5 cm | ||
BMI ± SD | 29.23 ± 24 | ||
Age ± SD | 84.22 ± 7.3 | ||
Mobility | No problems | 55 | 27 |
Small problems | 80 | 39 | |
With help | 43 | 21 | |
Wheelchair | 2 | 1 | |
Not defined | 24 | 12 | |
House | In house | 43 | 21 |
In flat | 98 | 48 | |
With family | 39 | 19 | |
Not defined | 24 | 12 | |
City size | Over than 100 k. (Big city) | 113 | 55 |
Less than 100 k. (Small city) | 91 | 45 | |
Age group | <80 | 44 | 22 |
80–85 | 49 | 24 | |
86–90 | 58 | 28 | |
>90 | 53 | 26 | |
Age | Average age | 84.55 | |
Max age | 101 | ||
Min age | 57 |
Status | Number | (Percentage) | Age ± SD | PA Difference |
---|---|---|---|---|
PA has declined | 118 | 58% | 85.11 ± 7.37 | 5.49% |
PA has increased | 86 | 42% | 83.98 ± 8.17 | 2.03% |
Month | Pre-COVID | During-COVID | ||
---|---|---|---|---|
M | F | M | F | |
April | 9.88 | 14.56 | 7.78 | 12.61 |
May | 10.69 | 13.98 | 6.87 | 11.58 |
Age Group (Years) | p-Value |
---|---|
<80 | 0.471 (α = 0.013) |
80–85 | 0.001 (α = 0.013) |
86–90 | 0.034 (α = 0.013) |
>90 | 0.234 (α = 0.013) |
Age Group (Years) | No Problems | Small Problems | With Help | Wheelchair | Not Defined |
---|---|---|---|---|---|
<80 | 18 | 12 | 6 | 1 | 7 |
80–85 | 15 | 38 | 9 | 1 | 2 |
86–90 | 13 | 20 | 13 | 0 | 11 |
>90 | 9 | 10 | 15 | 0 | 4 |
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Janovský, V.; Piorecký, M.; Včelák, J.; Mrissa, M. Measuring the Physical Activity of Seniors before and during COVID-19 Restrictions in the Czech Republic. Healthcare 2022, 10, 460. https://doi.org/10.3390/healthcare10030460
Janovský V, Piorecký M, Včelák J, Mrissa M. Measuring the Physical Activity of Seniors before and during COVID-19 Restrictions in the Czech Republic. Healthcare. 2022; 10(3):460. https://doi.org/10.3390/healthcare10030460
Chicago/Turabian StyleJanovský, Vít, Marek Piorecký, Jan Včelák, and Michael Mrissa. 2022. "Measuring the Physical Activity of Seniors before and during COVID-19 Restrictions in the Czech Republic" Healthcare 10, no. 3: 460. https://doi.org/10.3390/healthcare10030460
APA StyleJanovský, V., Piorecký, M., Včelák, J., & Mrissa, M. (2022). Measuring the Physical Activity of Seniors before and during COVID-19 Restrictions in the Czech Republic. Healthcare, 10(3), 460. https://doi.org/10.3390/healthcare10030460