Social and Built Environments Related to Cognitive Function of Older Adults: A Multi-Level Analysis Study in Taiwan
Abstract
:1. Introduction
1.1. Theoretcial Explanation
1.2. Cognitive Function and Individual Factors
1.3. Cognitive Function and Environmental Factors
2. Materials and Methods
2.1. Data and Sample
2.2. Ethical Consideration
2.3. Measures
2.3.1. Dependent Variable
2.3.2. Independent Variables: Individual-Level
2.3.3. Independent Variables: City-Level
- City indicators from the governmental open data
- 2.
- Age-friendly city indicators
2.4. Analysis
3. Results
4. Discussion
4.1. City Factors and Cognitive Function
4.2. Individual Factors and Cognitive Function
4.3. Limitations
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Variable | N | Mean (SD) or % |
---|---|---|
Sex | ||
Male | 677 | 49.9% |
Female | 679 | 50.1% |
Age | 1356 | 73.43 (0.49) |
Age 65–69 | 464 | 34.2% |
Age 70–74 | 355 | 26.2% |
Age 75–79 | 268 | 19.8% |
Age 80+ | 269 | 19.% |
Education | ||
Illiterate | 175 | 12.9% |
Informal or elementary school | 634 | 46.9% |
Primary high school | 170 | 12.5% |
Senior high school | 177 | 13.1% |
College or university and above | 199 | 14.7% |
Marital status | ||
No spouse | 442 | 32.6% |
Having spouse | 913 | 67.4% |
Work | ||
No | 1077 | 79.4% |
Yes | 279 | 20.6% |
Monthly Income | 1272 | 3.63 (2.21) |
<NT 10,000 | 479 | 37.7% |
NT 10,000–19,999 | 485 | 3.1% |
NT 20,000–49,999 | 208 | 16.4% |
NT 50,000+ | 100 | 7.9% |
Financial satisfaction | ||
Very difficult | 119 | 9.0% |
Difficult | 308 | 23.3% |
Just make | 726 | 55.0% |
Abundant | 168 | 12.7% |
Smoking | ||
Non-smoker | 919 | 70.0% |
Ex-smoker | 280 | 21.3% |
Current smoker | 114 | 8.7% |
Drinking alcohol | ||
Non-drinker | 757 | 55.8% |
Social drinker | 418 | 30.8% |
Frequent drinker | 181 | 13.3% |
Dietary pattern # | ||
Low protein and high vegetable | 964 | 72.6% |
High protein and high calories | 247 | 18.6% |
Low vegetable/fruits and high cookies/sweet drinks | 117 | 8.8% |
Physical activity IPAQ | ||
Low | 1287 | 94.9% |
Moderate | 53 | 3.9% |
High | 16 | 1.2% |
Self-rated health (3~15) | 1227 | 8.10 (2.19) |
Disease numbers | 1356 | 2.53 (1.93) |
Physical function (9~27) | 1216 | 22.06 (4.78) |
Negative emotion (6~33) | 1196 | 13.94 (3.92) |
Positive emotion (3~18) | 1187 | 12.02 (4.27) |
MMSE score (0~30) | 1327 | 23.18 (8.02) |
Impaired (score ≤ 24) | 530 | 39.9% |
Intact (score ≥ 25) | 797 | 60.1% |
City indicators | Mean | SD |
---|---|---|
Population density (persons square kilometre) (2013–2015) | 1616.95 | 2342.40 |
Elderly percentage (2013–2015) | 12.96 | 2.06 |
PM10 (2013–2015) | 48.14 | 12.79 |
Medical professionals/10000 persons (2013–2015) | 94.19 | 33.94 |
Hospital beds/10000 persons (2013–2015) | 73.78 | 25.96 |
Crime rate (2013–2015) | 1195.01 | 249.11 |
Low income percentage (2013–2015) | 1.68 | 1.11 |
Median disposable income (NT dollars) (2013–2015) | 762,998.90 | 160,455.10 |
Unemployment rate (2013–2015) | 3.95 | 0.09 |
Public library/100 thousand population density | 4.81 | 9.11 |
High education population percent (college/university+) | 28.3 | 6.51 |
Household income Gini coefficients (2013–2015) | 0.33 | 0.03 |
Barrier-free sidewalk percentage (2016) | 0.61 | 0.22 |
Barrier-free entrance of public building percentage (2016) | 91.65 | 22.14 |
Barrier-free pathway outside residence (2016) | 23.22 | 17.04 |
Bus stop satisfaction (2016) | 91.29 | 8.42 |
Barrier-free parking percentage (2016) | 2.24 | 1.37 |
Barrier-free bus percentage (2016) | 57.49 | 30.16 |
Bus accessibility percentage (2016) | 72.14 | 18.77 |
Housing affordability percentage (2016) | 73.72 | 9.03 |
Safety in the community percentage (2016) | 95.88 | 3.02 |
Elderly abuse person-times/100 persons (2016) | 0.20 | 0.05 |
Non-poverty rate (2016) | 39.52 | 12.35 |
Social activity participation rate (2016) | 12.98 | 5.87 |
Lifelong learning rate (2016) | 7.96 | 3.46 |
Leisure and exercise participation rate (2016) | 6.56 | 4.08 |
Voting rate (2016) | 89.69 | 10.90 |
Volunteer participation rate (2016) | 10.86 | 4.36 |
Internet use rate (2016) | 14.27 | 8.62 |
Community care center density/10,000 persons (2016) | 0.52 | 1.43 |
Use rate of health check-up for older people (2016) | 63.58 | 16.84 |
Greenland for leisure area per 10,000 persons (hectare) (2017) | 6.13 | 3.83 |
Variables | Cognitive Function | Population Density | Low Income Rate | Median Income | Income Gini | Safety of Community | Elderly Abuse | Barrier-Free Sidewalk | Higher Education Rate |
---|---|---|---|---|---|---|---|---|---|
Cognitive function | 1 | ||||||||
Population density | 0.079 ** | 1 | |||||||
Low-income rate | −0.062 * | −0.140 ** | 1 | ||||||
Median income | 0.082 ** | 0.737 ** | −0.459 ** | 1 | |||||
Income Gini | −0.061 * | −0.451 ** | 0.504 ** | −0.631 ** | 1 | ||||
Safety of community | 0.097 ** | 0.472 ** | −0.373 ** | 0.413 ** | −0.421 ** | 1 | |||
Elderly abuse | −0.063 * | −0.373 ** | 0.220 ** | −0.377 ** | 0.284 ** | −0.468 ** | 1 | ||
Barrier-free sidewalk | 0.065 * | 0.430 ** | 0.075 ** | 0.431 ** | −0.130 ** | 0.173 ** | −0.477 ** | 1 | |
High education rate | 0.096 ** | 0.810 ** | −0.332 ** | 0.944 ** | −0.509 ** | 0.462 ** | −0.423 ** | 0.538 ** | 1 |
Variable | Model 0 | Model 1 | Model 2 | Model 3 |
---|---|---|---|---|
Fixed Effects: Individual-level indicators | ||||
Intercept | 25.398 (0.273) *** | 15.076 (1.280) *** | 12.116 (8.910) | 10.478 (6.061) |
Age 65–69 | 1.791 (0.356) *** | 1.820 (0.354) *** | ||
Age 70–74 | 1.634 (0.359) *** | 1.680 (0.358) *** | ||
Age 75–79 | 1.440 (0.372) *** | 1.479 (0.371) *** | ||
Sex (Male) | 0.372 (0.310) | 0.361 (0.310) | ||
Marital status (no spouse) | −0.482 (0.263) | −0.479 (0.262) | ||
Education (ordinal 1–5) | 1.317 (0.106) *** | 1.298 (0.106) *** | ||
Financial satisfaction | 0.328 (0.157)* | 0.346 (0.157) * | ||
Smoking (non-smoker) | −0.183 (0.471) | −0.185 (0.469) | ||
Smoking (Ex-smoker) | 0.228 (0.467) | 0.217 (0.466) | ||
Drinking alcohol (Non-drinker) | 0.275 (0.377) | 0.160 (0.377) | ||
Drinking alcohol (Social drinker) | 0.218 (0.362) | 0.127 (0.362) | ||
Dietary pattern (High protein and high calories) | −0.226 (0.297) | −0.240 (0.297) | ||
Dietary pattern (low vegetable/fruits and high cookies/drinks) | 0.540 (0.395) | 0.513 (0.394) | ||
Physical activity (low) | −0.247 (0.497) | −0.225 (0.497) | ||
Self-rated health | −0.130 (0.063) * | −0.125 (0.063) * | ||
Disease numbers | 0.139 (0.062) * | 0.144 (0.062) * | ||
Physical function | 0.203 (0.031) *** | 0.200 (0.031) *** | ||
Negative emotion | −0.003 (0.033) | 0.001 (0.033) | ||
Positive emotion | 0.053 (0.032) | 0.053 (0.032) | ||
Fixed Effects: City-level indicators | ||||
Population density # | 0.017 (0.010) | 0.002 (0.007) | ||
Low income percent | −0.641 (0.205) ** | −0.544 (0.136) ** | ||
Average household income Gini | 7.330 (9.498) | 3.663 (6.366) | ||
Safety in the community | 0.109 (0.079) | 0.038 (0.053) | ||
Barrier-free sidewalk | 1.355 (1.050) | 0.947 (0.698) | ||
Elderly abuse rate | 1.875 (4.581) | 0.353 (3.064) | ||
Random effect | ||||
Residual | 19.534 (0.850) | 13.111 (0.576) | 19.534 (0.850) | 13.107 (0.576) |
Intercept (city) | 1.117 (0.478) | 0.360 (0.198) | 0.304 (0.259) | 0.044 (0.112) |
Goodness of fit | -−2RLL = 6273.540 | −2RLL = 5850.326 | −2RLL = 6252.405 | −2RLL = 5835.054 |
AIC = 6277.540 | AIC = 5854.326 | AIC = 6256.405 | AIC = 5850.965 | |
BIC = 6287.499 | BIC = 5864.249 | BIC = 6266.352 | BIC = 5848.965 |
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Hsu, H.-C.; Bai, C.-H. Social and Built Environments Related to Cognitive Function of Older Adults: A Multi-Level Analysis Study in Taiwan. Int. J. Environ. Res. Public Health 2021, 18, 2820. https://doi.org/10.3390/ijerph18062820
Hsu H-C, Bai C-H. Social and Built Environments Related to Cognitive Function of Older Adults: A Multi-Level Analysis Study in Taiwan. International Journal of Environmental Research and Public Health. 2021; 18(6):2820. https://doi.org/10.3390/ijerph18062820
Chicago/Turabian StyleHsu, Hui-Chuan, and Chyi-Huey Bai. 2021. "Social and Built Environments Related to Cognitive Function of Older Adults: A Multi-Level Analysis Study in Taiwan" International Journal of Environmental Research and Public Health 18, no. 6: 2820. https://doi.org/10.3390/ijerph18062820
APA StyleHsu, H. -C., & Bai, C. -H. (2021). Social and Built Environments Related to Cognitive Function of Older Adults: A Multi-Level Analysis Study in Taiwan. International Journal of Environmental Research and Public Health, 18(6), 2820. https://doi.org/10.3390/ijerph18062820