Neighborhood Built Environments, Walking, and Self-Rated Health among Low-Income Older Adults in St. Paul, Minnesota
Abstract
:1. Introduction
2. Methods
2.1. Sampling and Data Collection Procedure
2.2. Measures and Instruments
2.2.1. Sociodemographic Characteristics
2.2.2. Physical Limitations
2.2.3. Objective Neighborhood Built Environments
2.2.4. Perceived Neighborhood Built Environments
2.2.5. Walking Behaviors
2.2.6. Self-Rated Health
2.3. Data Analysis
3. Results
3.1. Sample Characteristics
3.2. Walking Outcome Models
3.2.1. Walking Choice (No Sedentary Behavior)
3.2.2. Walking Three or More Days per Week (Light-Intensity Physical Activity)
3.2.3. Walking 150 Minutes or More per Week (Enough Physical Activity)
3.3. Self-Rated Health
4. Discussion
5. Conclusions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A
All (N = 130) | Accessibility to Destinations | Safety, Comfort, and Convenience | Physical and Social Disorder | Cronbach’s Alpha | |
---|---|---|---|---|---|
In my neighborhood, it is easy for me to walk from home to | |||||
Places for grocery shopping | 2.95 ± 1.80 | 0.767 | 0.878 | ||
Places where you can buy snacks or drinks such as convenience stores or food vendors | 3.35 ± 1.62 | 0.773 | |||
Restaurants or coffee shops | 3.06 ± 1.65 | 0.728 | |||
Retail stores such as clothing, beauty shops, or others | 2.55 ± 1.72 | 0.764 | |||
Public institutions such as the post office, police station, or courthouse | 2.12 ± 1.42 | 0.664 | |||
Health related facilities such as hospitals, clinics, or pharmacies | 2.57 ± 1.59 | 0.694 | |||
Community center, libraries, or banks | 2.99 ± 1.64 | 0.565 | |||
My preferred religious institution such as a church, temple, or mosque | 2.84 ± 1.65 | 0.429 | |||
Recreational facilities such as museums, auditoriums, concert halls, or theaters | 1.96 ± 1.33 | 0.535 | |||
In my neighborhood, | |||||
There is enough lighting | 3.50 ± 1.43 | 0.379 | 0.748 | ||
There are continuous sidewalks on most of the streets | 3.93 ± 1.37 | 0.584 | |||
Sidewalks are well-maintained (even, with no or few cracks) | 3.46 ± 1.45 | 0.492 | |||
There are benches or other places to rest along the streets | 2.72 ± 1.55 | 0.557 | |||
There are enough trees along most of the streets | 3.46 ± 1.48 | 0.603 | |||
There are many people walking | 3.39 ± 1.23 | 0.568 | |||
It is safe to walk during the day | 3.98 ± 1.28 | 0.627 | |||
There are many buildings that are attractive and well-maintained | 3.32 ± 1.42 | 0.539 | |||
There are stray dogs, gangs, or strangers | 2.42 ± 1.47 | 0.452 | 0.697 | ||
There are many abandoned houses, vacant lots, or graffiti on buildings or walls | 2.29 ± 1.41 | 0.717 | |||
There are abandoned cars, litter, trash, or broken windows | 2.04 ± 1.36 | 0.806 | |||
Sum of Squared loadings | 4.176 | 2.591 | 1.698 | ||
Proportion Var | 0.209 | 0.130 | 0.085 | ||
Cumulative Var | 0.209 | 0.338 | 0.423 |
Kendall’s Rank Correlation | Accessibility to Destinations | Safety, Comfort, and Convenience | Physical and Social Disorder | Traffic Accidents within 400 m RB | Traffic Accidents within 800 m RB |
---|---|---|---|---|---|
Walk Score | 0.158 * | −0.072 | 0.152 | 0.894 *** | 0.621 *** |
Traffic Accidents within 400 m RB | 0.207 *** | −0.105 | 0.116 | 1.000 | 0.793 *** |
Traffic Accidents within 800 m RB | 0.251 *** | −0.191 *** | 0.047 | 0.793 *** | 1.000 |
Model Comparison | Deviance (p-Value) | ||
---|---|---|---|
Walking Choice a | Walking 3+ Days b | Walking 150+ Min. c | |
Perception Model vs. Walk Score Model | 9.846 ** | 18.101 *** | 5.319 † |
Perception Model vs. Traffic Accidents within 400 m RB Model | 9.824 ** | 18.019 *** | 4.862 * |
Perception Model vs. Traffic Accidents within 800 m RB Model | 16.140 *** | 26.914 *** | 10.831 ** |
N = 130 | Walking Choice | Walking 3+ Days | Walking 150+ Min. | ||||||
---|---|---|---|---|---|---|---|---|---|
Coefficient (95% CI) | Coefficient (95% CI) | Coefficient (95% CI) | |||||||
Walk Score | Traffic Accidents within 400 m RB | Traffic Accidents within 800 m RB | Walk Score | Traffic Accidents within 400 m RB | Traffic Accidents within 800 m RB | Walk Score | Traffic Accidents within 400 m RB | Traffic Accidents within 800 m RB | |
Sociodemographic Characteristics | |||||||||
Intercept | 3.289 *** (1.803, 5.356) | 2.989 *** (1.542, 5.022) | 2.708 ** (1.185, 4.777) | 0.557 * (0.014, 1.131) | 0.241 (−0.290, 0.780) | 0.325 † (−0.226, 0.889) | −0.756 * (−1.446, −0.112) | −0.895 ** (−1.603, −0.246) | −0.976 ** (−1.713, −0.303) |
Age (70–79) | - | - | - | - | - | - | −0.707 † (−1.544, 0.077) | −0.694 † (−1.527, 0.087) | −0.715 † (−1.587, 0.104) |
Age (80+) | - | - | - | - | - | - | −0.796 * (−1.567, −0.065) | −0.781 * (−1.548, −0.051) | −0.860 * (−1.670, −0.101) |
Sex (Female) | −1.941 * (−3.920, −0.503) | −1.944 * (−3.923, −0.507) | −1.945 * (−3.998, −0.412) | - | - | - | - | - | - |
Race (Others) | 0.958 † (−0.132, 2.128) | 0.957 † (−0.133, 2.128) | 1.822 * (0.468, 3.402) | - | - | - | - | - | - |
Education (Some College or Higher) | - | - | - | 0.741 † (−0.065, 1.589) | 0.743 † (−0.063, 1.590) | 0.7496 † (−0.080, 1.619) | 1.005 * (0.142, 1.916) | 0.991 * (0.131, 1.898) | 1.073 * (0.178, 2.031) |
Car Ownership (Yes) | - | - | - | - | - | - | −1.251 * (−2.265, −0.317) | −1.226 * (−2.233, −0.295) | −1.049 * (−2.081, −0.086) |
Physical Limitations | |||||||||
Mobility Aid Use (Yes) | −2.388 ** (−4.105, −0.865) | −2.3973 ** (−4.109, −0.881) | −2.417 ** (−4.136, −0.904) | −1.673 * (−3.359, −0.223) | −1.694 * (−3.378, −0.240) | −1.7261 * (−3.459, −0.225) | −2.183 † (−5.273, −0.181) | −2.130 † (−5.219, −0.139) | −2.136 † (−5.221, −0.124) |
Objective Neighborhood Built Envioronments (Neighborhood Heterogeneity) | |||||||||
Walk Score (Somewhat Walkable) | −1.187 ** (−2.159, −0.342) | - | - | −1.227 *** (−1.957, −0.564) | - | - | −0.835 * (−1.609, −0.116) | - | - |
(Very Walkable) | −0.795 (−2.395, 0.413) | - | - | −0.851 † (−1.812, 0.007) | - | - | −0.151 (−1.031, 0.748) | - | - |
Traffic Accidents within 400 m RB (High) | - | −1.2162 ** (−2.086, −0.441) | - | - | −1.269 *** (−1.936, −0.662) | - | - | −0.731 * (−1.435, −0.079) | - |
Traffic Accidents within 800 m RB (Medium) | - | - | −2.012 *** (−3.305, −0.909) | - | - | −1.8567 *** (−2.747, −1.067) | - | - | −0.950 * (−1.833, −0.123) |
(High) | - | - | −0.587 (−1.792, 0.451) | - | - | −0.8031 * (−1.630, −0.047) | - | - | −1.067 * (−1.939, −0.255) |
Perceived Neighborhood Built Environments | |||||||||
Accessibility to Destinations | - | - | - | 0.690 ** (0.257, 1.165) | 0.686 ** (0.254, 1.161) | 0.9442 *** (0.450, 1.508) | 0.896 *** (0.396, 1.467) | 0.905 *** (0.407, 1.474) | 1.060 *** (0.515, 1.701) |
Safety, Comfort, and Convenience | 0.684 ** (0.182, 1.227) | 0.6856 ** (0.186, 1.228) | 0.593 * (0.050, 1.171) | - | - | - | 0.444 † (−0.006, 0.924) | 0.430† (−0.016, 0.908) | 0.451 † (−0.030, 0.968) |
Physical and Social Disorder | - | - | - | - | - | - | −0.465 † (−0.984, 0.008) | −0.479 † (−0.994, −0.012) | −0.599 * (−1.163, −0.095) |
AIC | 111.64 | 109.66 | 105.34 | 159.03 | 157.11 | 150.22 | 154.08 | 152.53 | 148.56 |
BIC | 131.71 | 126.87 | 125.42 | 176.24 | 171.45 | 167.42 | 185.62 | 181.21 | 180.11 |
pseudo R2 (McFadden) | 0.265 | 0.265 | 0.312 | 0.157 | 0.159 | 0.207 | 0.206 | 0.204 | 0.239 |
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All (N = 130) | Male (N = 34) | Female (N = 96) | p-Value | |
---|---|---|---|---|
Sociodemographic Characteristics | ||||
Age | 0.427 | |||
60–69 | 45 (34.6%) | 11 (32.4%) | 34 (35.4%) | |
70–79 | 46 (35.4%) | 15 (44.1%) | 31 (32.3%) | |
80 or Above | 39 (30.0%) | 8 (23.5%) | 31 (32.3%) | |
Race | 0.278 | |||
White | 62 (47.7%) | 13 (38.2%) | 49 (51.0%) | |
Others | 68 (52.3%) | 21 (61.8%) | 47 (49.0%) | |
Education | 0.522 | |||
High School or Less | 73 (56.2%) | 17 (50.0%) | 56 (58.3%) | |
Some College or Higher | 57 (43.8%) | 17 (50.0%) | 40 (41.7%) | |
Households | 0.237 | |||
Living with Someone Else | 14 (10.8%) | 6 (17.6%) | 8 (8.3%) | |
Alone | 116 (89.2%) | 28 (82.4%) | 88 (91.7%) | |
Car Ownership | 1.000 | |||
No | 86 (66.2%) | 22 (64.7%) | 64 (66.7%) | |
Yes | 44 (33.8%) | 12 (35.3%) | 32 (33.3%) | |
Physical Limitations | ||||
Mobility Aids Use | 0.727 | |||
No | 119 (91.5%) | 32 (94.1%) | 87 (90.6%) | |
Yes | 11 (8.5%) | 2 (5.9%) | 9 (9.4%) | |
Objective Neighborhood Built Environments (Spatial Heterogeneity) | ||||
Walk Score | 0.308 | |||
Car-dependent | 44 (33.8%) | 8 (23.5%) | 36 (37.5%) | |
Somewhat Walkable | 24 (18.5%) | 8 (23.5%) | 16 (16.7%) | |
Very Walkable | 62 (47.7%) | 18 (52.9%) | 44 (45.8%) | |
Traffic Accidents within 400 m RB | 0.680 | |||
Low/None | 68 (52.3%) | 16 (47.1%) | 52 (54.2%) | |
High | 62 (47.7%) | 18 (52.9%) | 44 (45.8%) | |
Traffic Accidents within 800 m RB | 0.366 | |||
Low/None | 48 (36.9%) | 10 (29.4%) | 38 (39.6%) | |
Medium | 38 (29.2%) | 13 (38.2%) | 25 (26.0%) | |
High | 44 (33.8%) | 11 (32.4%) | 33 (34.4%) | |
Perceived Neighborhood Built Environments (Average of Summed Scores) | ||||
Accessibility to Destinations | 2.7 ± 1.1 | 2.9 ± 1.0 | 2.7 ± 1.2 | 0.399 |
Safety, Comfort, and Convenience | 3.0 ± 0.8 | 3.0 ± 0.7 | 3.0 ± 0.8 | 0.623 |
Physical and Social Disorder | 2.2 ± 1.1 | 2.3 ± 1.0 | 2.2 ± 1.2 | 0.609 |
Dependent Variables | ||||
Walking Choice | 0.025 | |||
No Walking | 27 (20.8%) | 2 (5.9%) | 25 (26.0%) | |
Walking | 103 (79.2%) | 32 (94.1%) | 71 (74.0%) | |
Walking 3+ Days | 0.392 | |||
Less than 3 Days | 52 (40.0%) | 11 (32.4%) | 41 (42.7%) | |
3 Days or More | 78 (60.0%) | 23 (67.6%) | 55 (57.3%) | |
Walking 150+ Minutes | 0.207 | |||
<150 min | 86 (66.2%) | 19 (55.9%) | 67 (69.8%) | |
≥150 min | 44 (33.8%) | 15 (44.1%) | 29 (30.2%) | |
Self-rated Health | 1.000 | |||
Very Poor/Poor | 72 (55.4%) | 19 (55.9%) | 53 (55.2%) | |
Average/Good | 58 (44.6%) | 15 (44.1%) | 43 (44.8%) |
N = 130 | Walking Choice | Walking 3+ Days | Walking 150+ Min. |
---|---|---|---|
Coefficient (95% CI) | Coefficient (95% CI) | Coefficient (95% CI) | |
Sociodemographic Characteristics | |||
Intercept | 2.708 ** (1.185, 4.777) | 0.325 † (−0.226, 0.889) | −0.976 ** (−1.713, −0.303) |
Age (70–79) | - | - | −0.715 † (−1.587, 0.104) |
Age (80+) | - | - | −0.860 * (−1.670, −0.101) |
Sex (Female) | −1.945 * (−3.998, −0.412) | - | - |
Race (Others) | 1.822 * (0.468, 3.402) | - | - |
Education (Some College or Higher) | - | 0.7496 † (−0.080, 1.619) | 1.073 * (0.178, 2.031) |
Car Ownership (Yes) | - | - | −1.049 * (−2.081, −0.086) |
Physical Limitations | |||
Mobility Aid Use (Yes) | −2.417 ** (−4.136, −0.904) | −1.7261 * (−3.459, −0.225) | −2.136 † (−5.221, −0.124) |
Objective Neighborhood Built Environments | |||
Traffic Accidents within 800 m RB (Medium) | −2.012 *** (−3.305, −0.909) | −1.8567 *** (−2.747, −1.067) | −0.950 * (−1.833, −0.123) |
Traffic Accidents within 800 m RB (High) | −0.587 (−1.792, 0.451) | −0.8031 * (−1.630, −0.047) | −1.067 * (−1.939, −0.255) |
Perceived Neighborhood Built Environments | |||
Accessibility to Destinations | - | 0.9442 *** (0.450, 1.508) | 1.060 *** (0.515, 1.701) |
Safety, Comfort, and Convenience | 0.593 * (0.050, 1.171) | - | 0.451 † (−0.030, 0.968) |
Physical and Social Disorder | - | - | −0.599 * (−1.163, −0.095) |
AIC | 105.34 | 150.22 | 148.56 |
BIC | 125.42 | 167.42 | 180.11 |
pseudo R2 (McFadden) | 0.312 | 0.207 | 0.239 |
N = 130 | Coefficient (95% CI) | Coefficient (95% CI) | Coefficient (95% CI) |
---|---|---|---|
Sociodemographic Characteristics | |||
Intercept | −1.318 ** (−2.374, −0.376) | −1.270 *** (−2.054, −0.562) | −0.325 (−0.811, 0.151) |
Age (70–79) | 0.535 (−0.116, 1.209) | 0.561 † (−0.098, 1.242) | 0.723 * (0.047, 1.434) |
Age (80+) | 0.6541 † (−0.000, 1.342) | 0.675 † (0.004, 1.383) | 0.789 * (0.105, 1.518) |
Car Ownership (Yes) | 0.804 † (−0.006, 1.646) | 0.851 * (0.026, 1.710) | 1.007 * (0.161, 1.899) |
Perceived Neighborhood Built Environments | |||
Safety, Comfort, and Convenience | 0.376 † (–0.015, 0.790) | 0.435 * (0.036, 0.858) | 0.426 * (0.028, 0.847) |
Walking Outcomes | |||
Walking Choice | 1.043 * (0.056, 2.122) | - | - |
Walking 3+ days | - | 1.240 ** (0.447, 2.083) | - |
Walking 150+ minutes | - | - | 1.008 ** (0.414, 1.643) |
AIC | 172.77 | 167.46 | 165.72 |
BIC | 189.97 | 184.67 | 182.92 |
pseudo R2 (McFadden) | 0.100 | 0.130 | 0.140 |
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Yun, H.Y. Neighborhood Built Environments, Walking, and Self-Rated Health among Low-Income Older Adults in St. Paul, Minnesota. Sustainability 2021, 13, 3501. https://doi.org/10.3390/su13063501
Yun HY. Neighborhood Built Environments, Walking, and Self-Rated Health among Low-Income Older Adults in St. Paul, Minnesota. Sustainability. 2021; 13(6):3501. https://doi.org/10.3390/su13063501
Chicago/Turabian StyleYun, Hae Young. 2021. "Neighborhood Built Environments, Walking, and Self-Rated Health among Low-Income Older Adults in St. Paul, Minnesota" Sustainability 13, no. 6: 3501. https://doi.org/10.3390/su13063501
APA StyleYun, H. Y. (2021). Neighborhood Built Environments, Walking, and Self-Rated Health among Low-Income Older Adults in St. Paul, Minnesota. Sustainability, 13(6), 3501. https://doi.org/10.3390/su13063501