Health Impacts of the Built and Social Environments, and Travel Behavior: The Case of the Sunshine State
Abstract
:1. Introduction
1.1. The Role of Travel Behavior and Physical Activity in Health
1.2. The Role of Built and Social Environments in Health
1.2.1. Built Environment and Health
1.2.2. Social Environment and Health
1.3. Gaps in Research and the Study Contributions
2. Materials and Methods
2.1. Study Area and Data
2.2. Health Outcome Models: Model Framework
2.3. Health Outcome Models: Dependent Variables
- Overweight or obese;
- Diabetes;
- Asthma;
- General health; and
2.4. Health Outcome Models: Independent Variables
2.5. Health Outcome Models: Analytical Methods and Model Specification
- Employment status (1: individual is employed, 0: otherwise);
- College education (1: individual has a college degree, 0: otherwise); and
- Children (number of children under 18 years of age in individual’s household).
3. Results and Discussion
- Individual- and household-level characteristics;
- Built environment attributes of the residential area at different spatial levels (i.e., county and metropolitan area);
- Social environment attributes of the residential area at different spatial levels (i.e., county and metropolitan area); and
- Travel behavior attributes (i.e., active travel, private vehicle travel, public transit travel, telecommuting, and teleshopping) of the residential area at different spatial levels (i.e., county and metropolitan area).
- Section 3.1, Section 3.2, Section 3.3, Section 3.4 and Section 3.5 elaborate on the results of the health outcome models and also discuss them in the context of previous findings.
3.1. Person-Level Variables (Individual and Household Attributes): Findings
3.2. Built Environment Variables: Findings
3.2.1. Density
3.2.2. Diversity of Land Use
3.2.3. Design of Street Network
3.2.4. Distance to Transit
3.2.5. Destination Accessibility
Regional Accessibility to Employment
Local Accessibility to Amenities
Access to Healthy/Unhealthy Food Outlets
Access to Parks
Access to Healthcare Providers
3.2.6. Other Built Environment Attributes
Ambient Air Pollution Levels
Mobility Levels
3.3. Social Environment Variables: Findings
3.3.1. Sociodemographic Attributes
3.3.2. Socioeconomic Attributes
3.3.3. Crime-Related Attributes
3.4. Travel Behavior Variables: Findings
3.4.1. Active Travel
3.4.2. Private Vehicle Travel
3.4.3. Public Transit Travel
3.4.4. Telecommuting
3.4.5. Teleshopping
3.5. Endogeneity and Reverse Causality between Health Outcomes and Physical Activity
4. Conclusions
4.1. Research Findings
4.2. Research Contributions
4.3. Policy Implications
- Increase walkability and pedestrian friendliness of the street network;
- Increase connectivity of the street network (to support active travel);
- Facilitate access to healthy food outlets;
- Facilitate access to parks, green spaces, and recreational facilities;
- Facilitate access to clinical healthcare;
- Limit the number of fast food restaurants; and
- Lower ambient air pollution levels.
- Increase compactness (in terms of intersection density and street connectivity);
- Increase access to transit (e.g., shorter distance to transit stops);
- Lower roadway congestion levels and commute durations.
- Increase the size and strength of the economy (e.g., a higher GRP); and
- Lower violent crime rates.
4.4. Study Limitations and Future Research
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Model Variables | Mean | Std. Dev. | Data Source |
---|---|---|---|
Dependent Variables (Individual-level Health Outcomes) | |||
Overweight or obese (individual had a BMI ≥ 25—1: yes, 0: no) | 0.63 | 0.48 | BRFSS 1 |
Diabetes (individual was diagnosed with diabetes—1: yes, 0: no) | 0.14 | 0.34 | BRFSS 1 |
Asthma (individual was diagnosed with asthma—1: yes, 0: no) | 0.12 | 0.32 | BRFSS 1 |
Good general health (individual reported a “good or better” health status—1: yes, 0: no) | 0.78 | 0.41 | BRFSS 1 |
CDC physical activity (individual participated in 150 min of physical activity/week per CDC guidelines—1: yes, 0: no) | 0.62 | 0.49 | BRFSS 1 |
Independent Variables | |||
Individual and Household Attributes | |||
Age (individual’s age in years) | 58.98 | 16.27 | BRFSS 1 |
Race (individual’s race:—1: white, 0: otherwise) | 0.82 | 0.38 | BRFSS 1 |
Gender (individual’s gender:—1: male, 0: female) | 0.38 | 0.49 | BRFSS 1 |
Employment status (individual was employed—1: yes, 0: no) | 0.42 | 0.49 | BRFSS 1 |
College education (individual had a college degree—1: yes, 0: no) | 0.61 | 0.48 | BRFSS 1 |
Physical activity minutes (individual’s total minutes of moderate physical activity per week) 2 | 58.79 | 82.21 | BRFSS 1 |
Fruit and vegetable consumption (individual’s fruit and vegetable servings per day) | 3.96 | 3.04 | BRFSS 1 |
Smoking status (1: everyday smoker, 2: someday smoker, 3: former smoker, 4: non-smoker) | 3.23 | 1.09 | BRFSS 1 |
Drinking status (total number of alcoholic beverages consumed per month) | 11.92 | 41.34 | BRFSS 1 |
Household’s income category 3 | 3.48 | 1.44 | BRFSS 1 |
Number of children in household (number of children under 18 years of age in individual’s household) | 0.42 | 0.92 | BRFSS 1 |
Built Environment Attributes | |||
County Level | |||
Mean activity density [average (employment + housing units)/acre)] | 3.41 | 2.99 | SLD 4 |
Mean entropy (average 5-tier employment entropy) | 0.54 | 0.07 | SLD 4 |
Mean intersection density [average (automobile-oriented intersections/mi2)] | 0.72 | 0.55 | SLD 4 |
Mean local transit accessibility [average (distance to the nearest transit stop in meters)] | 735.45 | 69.64 | SLD 4 |
Mean temporal automobile accessibility (average number of jobs within a 45 min automobile commute) | 44,173 | 46,063 | SLD 4 |
Mean temporal transit accessibility (average number of jobs within a 45 min transit commute) | 1488 | 1666 | SLD 4 |
Density of fast food restaurants 5 (number of fast food restaurants/10,000 population) | 1.97 | 0.63 | POI 6 and ACS 7 |
Access to parks (percentage of population living within half-mile of park features) (%) | 20.54 | 15.21 | CHSI 7 |
Primary care physician rate (primary care providers per 100,000 population) | 68.10 | 31.11 | CHR&R 7 |
Access to healthy food outlets 8 (percentage of zip codes with healthy food outlets) (%) | 47.68 | 11.21 | CHR&R 7 |
Ambient air pollution (annual number of unhealthy air quality days due to ozone and fine particulate matter) | 7.23 | 4.89 | CHR&R 7 |
Mean Walk Score (dimensionless) | 11.23 | 18.94 | Walk Score® |
Metropolitan Area Level | |||
Mean activity density [average (employment + housing units)/acre)] | 4.39 | 2.40 | SLD 4 |
Mean entropy (average 5-tier employment entropy) | 0.56 | 0.05 | SLD 4 |
Mean intersection density [average (automobile-oriented intersections/mi2)] | 0.88 | 0.42 | SLD 4 |
Mean local transit accessibility [average (distance to the nearest transit stop in meters)] | 669.51 | 46.33 | SLD 4 |
Mean temporal automobile accessibility (average number of jobs within a 45 min automobile commute) | 53,611 | 40,868 | SLD 4 |
Mean temporal transit accessibility (average number of jobs within a 45 min transit commute) | 1,703 | 1,450 | SLD 4 |
Mean roadway congestion index (dimensionless) | 0.98 | 0.18 | UMI 7 |
Social Environment Attributes | |||
County Level | |||
Median age (years) | 39.19 | 4.85 | ACS 7 |
Median annual household income (dollars) | 43,842 | 6292 | ACS 7 |
Percentage of white population (%) | 76.70 | 7.59 | ACS 7 |
Percentage of telecommutable jobs 9 (%) | 56.40 | 5.82 | CEDDS 10 |
Metropolitan Area Level | |||
Average percentage of low-wage workers (workers earning ≤ $1250/month) (%) | 27.44 | 1.93 | SLD 4 |
Average percentage of households with no cars (%) | 6.43 | 1.19 | SLD 4 |
Average gross regional product (GRP) (in millions of 2004 U.S. dollars) | 49,829 | 63,022 | CEDDS 10 |
Average crime rate (annual violent crimes/100,000 population) | 700.83 | 363.17 | UCR and CHR&R 7 |
Travel Behavior Attributes | |||
County Level | |||
Active travel (i.e., walking and bicycling) mode share (%) | 8.10 | 2.38 | ACS 7 |
Private vehicle travel mode share (%) | 87.16 | 3.60 | ACS 7 |
Public transit travel mode share (%) | 1.21 | 0.79 | ACS 7 |
Average frequency of telecommuting events per month | 4.05 | 2.03 | NHTS 11 |
Average percentage of household members with telecommuting option (%) | 11.46 | 4.83 | NHTS 11 |
Average number of online purchases per month | 1.80 | 0.37 | NHTS 11 |
Average number of monthly deliveries related to online purchases | 3.00 | 0.48 | NHTS 11 |
Metropolitan Area Level | |||
Average walking and bicycling density [average (number of walking and bicycling trips in CBG/CBG area in acres)] | 0.0024 | 0.0016 | NHTS 11 and SLD 4 |
Annual public transportation passenger-miles (millions) | 129.14 | 262.00 | UMI 7 |
Average commuter stress index | 1.18 | 0.064 | UMI 7 |
Number of Observations (i.e., BRFSS Respondents) = 9427 Number of Counties = 51; Number of Metropolitan Areas = 23 |
Dependent Variables | Overweight or Obese | Asthma Diagnosis | Diabetes Diagnosis | Good General Health | CDC Physical Activity | |
---|---|---|---|---|---|---|
Independent Variables | ||||||
Person-Level (Individual and Household) Attributes | ||||||
Age (years) | 0.002257 * | 0.0058397 *** | 0.0045403 *** | −0.004757 *** | −0.0113326 *** | |
Race (1: white, 0: otherwise) | −0.1855208 *** | NS | −0.0860503 ** | 0.2192878 *** | 0.2454019 *** | |
Gender (1: male, 0: female) | NS | NS | −0.1197435 *** | NS | 0.2160422 *** | |
Physical activity minutes (per week) 1 | −0.0105765 *** | −0.0119303 *** | −0.0124975 *** | 0.001614 *** | — | |
Fruits and vegetables (servings per day) | −0.019859 ** | −0.0141154 *** | −0.014526 *** | 0.0319202 *** | 0.0898337 *** | |
Smoking status (base: nonsmoker) | ||||||
everyday smoker | −0.265297 *** | 0.1402861 *** | −0.1300801 *** | −0.3827534 *** | NS | |
someday smoker | −0.240904 *** | 0.2390436 *** | −0.1716818 *** | −0.388848 *** | −0.1425182 * | |
former smoker | NS | 0.0975375 *** | NS | −0.2126278 *** | NS | |
Drinking status (alcoholic beverages per month) | — | — | 0.0006407 * | — | — | |
Household income (base: <$15,000) | ||||||
$15,000 to less than $25,000 | NS | NS | NS | 0.3398008 *** | 0.1562742 *** | |
$25,000 to less than $35,000 | NS | NS | NS | 0.5259056 *** | 0.1643225 *** | |
$35,000 to less than $50,000 | NS | NS | NS | 0.7404188 *** | 0.2960195 *** | |
$50,000 or more | NS | −0.2009064 * | NS | 1.044106 *** | 0.383828 *** | |
Employment status (1: employed, 0: no) 2 | NA | NA | NA | 0.4421719 *** | NS | |
College education (1: yes, 0: no) 2 | NA | NA | NA | 0.1382413 *** | 0.0963694 ** | |
Children (number of children in household) 2 | NA | NA | NA | 0.0511261 ** | NS | |
Built Environment Attributes | ||||||
County Level | ||||||
Mean activity density 3 | 0.0774713 *** | −0.0908846 ** | 0.0496282 *** | −0.126384 ** | 0.0915875 ** | |
Mean entropy 3 | −0.5076122 *** | 0.7426236 *** | 0.2912284 ** | NS | 0.5677244 *** | |
Mean intersection density 3 | NS | NS | NS | 0.3569469 *** | −0.0922825 ** | |
Mean local transit accessibility | NS | −0.0013313 * | NS | −0.0024025 ** | 0.0026825 *** | |
Mean temporal automobile accessibility 3 | NS | 0.0509068 * | NS | NS | −0.1099844 ** | |
Mean temporal transit accessibility 3 | −0.0190041 *** | 0.0167732 *** | −0.0121438 *** | NS | NS | |
Density of fast food restaurants | 0.095305 *** | 0.1475638 *** | 0.1039651 *** | −0.1124666 *** | −0.0771437 *** | |
Access to parks | −0.0026208 * | 0.0056172 *** | −0.002919 *** | NS | 0.0088919 *** | |
Primary care physician rate | −0.0015728 ** | NS | NS | 0.00129 * | NS | |
Access to healthy food outlets | −0.0028061 * | −0.0054182 *** | −0.0037962 *** | 0.005718 *** | 0.0077523 *** | |
Ambient air pollution | — | 0.0040683* | — | −0.0428995 *** | — | |
Mean Walk Score | −0.0027107 *** | −0.0025144 ** | −0.0020266 *** | 0.0063055 *** | NS | |
Metropolitan Area Level | ||||||
Mean activity density 3 | NS | −0.2119958 *** | 0.1914216 ** | NS | NS | |
Mean entropy 3 | NS | 0.8071199 *** | 0.2790995 * | 1.445422 *** | 1.040943 *** | |
Mean intersection density 3 | 0.2101968 ** | 0.1859524* | 0.1503409 ** | 0.3920485 ** | NS | |
Mean local transit accessibility | 0.0014559 ** | NS | 0.000788 ** | NS | NS | |
Mean temporal automobile accessibility 3 | 0.2972497 *** | 0.2766411 *** | 0.1759324 ** | −0.4232195 ** | NS | |
Mean temporal transit accessibility 3 | NS | 0.0411097 *** | −0.0243627 * | 0.0784013 *** | 0.0830311 *** | |
Mean roadway congestion index | NS | NS | NS | −0.8122739 ** | −0.5009632 * | |
Social Environment Attributes | ||||||
County Level | ||||||
Median age | NS | 0.0277286 *** | 0.0134414 * | −0.0583641 *** | −0.0476338 *** | |
Median annual household income | NS | NS | NS | NS | NS | |
Percentage of white population | NS | NS | NS | 0.0261994 *** | 0.0127899 *** | |
Percentage of telecommutable jobs | NS | NS | NS | NS | NS | |
Metropolitan Area Level | ||||||
Average percentage of low-wage workers | NS | NS | NS | −0.104597 *** | −0.0800193 *** | |
Average percentage of households with no cars | NS | NS | NS | −0.1048387 * | NS | |
Average gross regional product (GRP) 3 | −0.1058054 ** | −0.0756389 * | NS | 0.2993636 *** | NS | |
Average crime rate | 0.0003399 *** | −0.0005537 *** | 0.000346 *** | −0.000874 *** | −0.0004294 ** | |
Travel Behavior Attributes | ||||||
County Level | ||||||
Active travel mode share | −0.0075641 ** | NS | NS | 0.0054944 * | NS | |
Private vehicle travel mode share | NS | 0.0139775 *** | 0.0118146 *** | NS | NS | |
Public transit travel mode share | −0.0597685 *** | 0.0788665 *** | −0.053574 *** | −0.0703956 ** | 0.0996205 *** | |
Average frequency of telecommuting events per month | NS | −0.0100291 * | 0.0089899 * | −0.0282205 * | −0.0165912 * | |
Average percentage of household members with telecommuting option | NS | −0.0081331 * | NS | NS | −0.0069587 * | |
Average number of online purchases per month | 0.1019967 ** | −0.0466664 * | NS | −0.4156456 *** | NS | |
Average number of monthly deliveries related to online purchases | NS | NS | 0.1015846 ** | NS | −0.252159 *** | |
Metropolitan Area Level | ||||||
Average walking and bicycling density 3 | NS | NS | −0.0414568 * | 0.1916424 * | NS | |
Annual public transportation passenger-miles 3 | NS | 0.1228535 *** | −0.0897097 ** | −0.2888749 *** | NS | |
Average commuter stress index | NS | NS | NS | −4.742522 *** | NS | |
Other Model Factors | ||||||
Wald test of exogeneity [(corr = 0): χ2 (1)] for IV probit model | 10.12 *** | 11.02 *** | 7.49 *** | see Table footer “4” | see Table footer “5” | |
Amemiya-Lee-Newey minimum χ2 test for the equivalent model estimated using the twostep method (test of overidentifying restrictions [61]) | 0.241 p−val. = 0.887 | 1.619 p−val. = 0.445 | 1.787 p−val. = 0.409 | NA | NA | |
Model | IV binary probit | IV binary probit | IV binary probit | Binary probit 4 | Binary probit 5 | |
Log pseudolikelihood | −44672.516 | −43961.596 | −43214.583 | −3026.1687 | −4415.5681 |
Dependent Variables | Overweight or Obese | Asthma Diagnosis | Diabetes Diagnosis | Good General Health | CDC Physical Activity | |
---|---|---|---|---|---|---|
Independent Variables | ||||||
Person-level (Individual and Household) Attributes | ||||||
Age (years) | NS | 0.0016064 *** | 0.0031978 *** | −0.0011288 *** | −0.0039874 *** | |
Race (1: white, 0: otherwise) | −0.0879356 *** | NS | −0.0734162 *** | 0.0520407 *** | 0.0863445 *** | |
Gender (1: male, 0: female) | 0.168422 *** | −0.0461154 *** | NS | NS | 0.0760143 *** | |
Physical activity minutes (per week) 1 | −0.0001527* | −0.0000951 ** | −0.0001283 ** | 0.000383 *** | — | |
Fruits and vegetables (servings per day) | −0.0053932* | NS | NS | 0.0075752 *** | 0.0316079 *** | |
Smoking status (base: nonsmoker) | ||||||
everyday smoker | −0.0973157 *** | NS | NS | −0.0908339 *** | NS | |
someday smoker | −0.063421 *** | 0.0408043 ** | NS | −0.0922802 *** | −0.0501449 * | |
former smoker | 0.0303125* | 0.0411301 *** | 0.0276464 *** | −0.0504602 *** | NS | |
Drinking status (alcoholic beverages per month) | — | — | 0.0011031 *** | — | — | |
Household income (base: < $15,000) | ||||||
$15,000 to less than $25,000 | NS | −0.0672238 *** | NS | 0.1129422 *** | 0.058242 *** | |
$25,000 to less than $35,000 | NS | −0.0863357 *** | NS | 0.1670949 *** | 0.061196 *** | |
$35,000 to less than $50,000 | NS | −0.1015195 *** | NS | 0.2212181 *** | 0.1086166 *** | |
$50,000 or more | NS | −0.1237543 *** | −0.0652509 *** | 0.2818209 *** | 0.1390636 *** | |
Employment status (1: employed, 0: no) 2 | NA | NA | NA | 0.1049349 *** | NS | |
College education (1: yes, 0: no) 2 | NA | NA | NA | 0.032807 *** | 0.0339075 ** | |
Children (number of children in household) 2 | NA | NA | NA | 0.0121331 ** | NS | |
Built Environment Attributes | ||||||
County Level | ||||||
Mean activity density 3 | 0.0176133 * | −0.0381007 *** | NS | −0.0299931 ** | 0.032225 ** | |
Mean entropy 3 | −0.1795927 * | 0.2355872 *** | 0.2121117 *** | NS | 0.1997535 *** | |
Mean intersection density 3 | NS | 0.0487475 *** | NS | 0.0847095 *** | −0.0324695 ** | |
Mean local transit accessibility | 0.0003067 * | −0.0006379 *** | 0.0003539 ** | −0.0005702 ** | 0.0009438 *** | |
Mean temporal automobile accessibility 3 | 0.0360363 * | NS | 0.0223294 ** | NS | −0.0386979 ** | |
Mean temporal transit accessibility 3 | −0.0035077 *** | 0.0026601 * | NS | NS | NS | |
Density of fast food restaurants | 0.0001297 ** | 0.0199601 ** | 0.0131376 * | −0.0266902 *** | −0.027143 *** | |
Access to parks | NS | 0.0019291 *** | −0.0014158 * | NS | 0.0031286 *** | |
Primary care physician rate | −0.0009547 ** | NS | NS | 0.0003062 * | NS | |
Access to healthy food outlets | NS | −0.0009925 *** | −0.0012867 * | 0.001357 *** | 0.0027277 *** | |
Ambient air pollution | — | 0.0020361 * | — | −0.0101808 *** | — | |
Mean Walk Score | −0.000044 ** | −0.0005676 * | NS | 0.0014964 *** | NS | |
Metropolitan Area Level | ||||||
Mean activity density 3 | 0.1444978 ** | NS | NS | NS | NS | |
Mean entropy 3 | NS | 0.2336963 *** | 0.1106682 * | 0.3430231 *** | 0.3662552 *** | |
Mean intersection density 3 | NS | 0.0413187 * | 0.0443029 * | 0.0930397 ** | NS | |
Mean local transit accessibility | 0.0003777* | −0.0007915 *** | 0.0003052* | NS | NS | |
Mean temporal automobile accessibility 3 | NS | NS | NS | −0.1004371 ** | NS | |
Mean temporal transit accessibility 3 | −0.0213517 ** | NS | NS | 0.0186059 *** | 0.0292144 *** | |
Mean roadway congestion index | 0.2272241 * | 0.1200605 ** | NS | −0.1927663 ** | −0.1762636* | |
Social Environment Attributes | ||||||
County Level | ||||||
Median age | NS | 0.0048621 * | NS | −0.0138508 *** | −0.0167599 *** | |
Median annual household income | NS | −0.00000216 *** | −0.00000224 ** | NS | NS | |
Percentage of white population | NS | 0.0020337 * | NS | 0.0062176 *** | 0.0045001 *** | |
Percentage of telecommutable jobs | NS | NS | NS | NS | NS | |
Metropolitan Area Level | ||||||
Average percentage of low-wage workers | 0.0144142 ** | NS | NS | −0.0248226 *** | −0.0281547 *** | |
Average percentage of households with no cars | NS | NS | NS | −0.02488* | NS | |
Average gross regional product (GRP) 3 | −0.0442002 ** | −0.016817 * | NS | 0.071044 *** | NS | |
Average crime rate | NS | −0.0000583 * | NS | −0.0002074 *** | −0.0001511 ** | |
Travel Behavior Attributes | ||||||
County Level | ||||||
Active travel mode share | −0.0015181 ** | NS | NS | .0013039* | NS | |
Private vehicle travel mode share | NS | 0.002202 * | NS | NS | NS | |
Public transit travel mode share | −0.0041469 ** | 0.0183288 *** | −0.0126945 ** | −0.0167061 ** | 0.0350514 *** | |
Average frequency of telecommuting events per month | 0.0062141 * | −0.0011821 * | NS | −0.0066972 * | −0.0058376 * | |
Average percentage of household members with telecommuting option | NS | −0.0030147 ** | NS | NS | −0.0024484 * | |
Average number of online purchases per month | 0.0633425 ** | −0.0261397 * | NS | −0.0986397 *** | NS | |
Average number of monthly deliveries related to online purchases | 0.0714118 ** | NS | NS | NS | −0.088722 *** | |
Metropolitan Area Level | ||||||
Average walking and bicycling density 3 | NS | −0.027676 ** | −0.0109178 * | 0.04548* | NS | |
Annual public transportation passenger-miles 3 | −0.0492583 * | NS | −0.0081668 * | −0.0685549 *** | NS | |
Average commuter stress index | 0.7558689 * | NS | NS | −1.125481 *** | NS | |
Model | IV binary probit | IV binary probit | IV binary probit | Binary probit 4 | Binary probit 5 |
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Mahmoudi, J.; Zhang, L. Health Impacts of the Built and Social Environments, and Travel Behavior: The Case of the Sunshine State. Int. J. Environ. Res. Public Health 2022, 19, 9102. https://doi.org/10.3390/ijerph19159102
Mahmoudi J, Zhang L. Health Impacts of the Built and Social Environments, and Travel Behavior: The Case of the Sunshine State. International Journal of Environmental Research and Public Health. 2022; 19(15):9102. https://doi.org/10.3390/ijerph19159102
Chicago/Turabian StyleMahmoudi, Jina, and Lei Zhang. 2022. "Health Impacts of the Built and Social Environments, and Travel Behavior: The Case of the Sunshine State" International Journal of Environmental Research and Public Health 19, no. 15: 9102. https://doi.org/10.3390/ijerph19159102
APA StyleMahmoudi, J., & Zhang, L. (2022). Health Impacts of the Built and Social Environments, and Travel Behavior: The Case of the Sunshine State. International Journal of Environmental Research and Public Health, 19(15), 9102. https://doi.org/10.3390/ijerph19159102