| Literature DB >> 31174508 |
Lu Liang1, Peng Gong2,3, Na Cong2,3, Zhichao Li2,3, Yu Zhao2,3, Ying Chen2,3.
Abstract
BACKGROUND: To mitigate air pollution-related health risks and target interventions towards the populations bearing the greatest risks, the City Health Outlook (CHO) project aims to establish multi-scale, long-lasting, real-time urban environment and health monitoring networks. A major goal of CHO is to collect data of personal exposure to particulate air pollution through a full profile that consists of a matrix of activities and micro-environments. As the first paper of a series, this paper is targeted at illustrating the characteristics of the participants and examining the effects of different covariates on personal exposure at various air pollution exposure levels.Entities:
Keywords: Participatory GIS; Particulate matter; Personal exposure; Public health; Urbanization
Mesh:
Substances:
Year: 2019 PMID: 31174508 PMCID: PMC6555980 DOI: 10.1186/s12889-019-7022-8
Source DB: PubMed Journal: BMC Public Health ISSN: 1471-2458 Impact factor: 3.295
Fig. 1Portable environmental monitoring device TE-STR
Fig. 2City Health Outlook Project study protocol
Characteristics of the study population (% (N)) and the hypothesis of their effects on air pollution exposure
| Male | Female | Total | ||
|---|---|---|---|---|
| 50% (25) | 50% (25) | 100% (50) | ||
| SOCIODEMOGRAPHIC | ||||
| Age | Younger adults inhale more pollution than older people, as their activity intensity and metabolic rate is higher. And young people generally care less about self-protection. | |||
| ≤ 30 | 48% (12) | 76% (19) | 62% (31) | |
| > 30 | 52% (13) | 24% (6) | 38% (19) | |
| Education | Individuals who received a higher education have higher perceptions of air pollution and are more likely to take proper actions to limit personal exposure to ambient air pollution. | |||
| Bachelor’s degree or below | 60% (15) | 40% (10) | 50% (25) | |
| Post-graduate degree | 40% (10) | 60% (15) | 50% (25) | |
| Marital status | Single individuals tend to engage more in outdoor activities and spend more time on leisure activities than do married individuals, which put them at a higher risk of air pollution exposure. | |||
| Single | 48% (12) | 84% (21) | 66% (33) | |
| Married | 52% (13) | 16% (4) | 34% (17) | |
| Annual income, RMB | Low-income individuals are more susceptible to pollution threats because of the lack of self-protective equipment, longer-distance travel, and worse working and living environment. | |||
| Low-middle: < 150,000 | 32% (8) | 36% (9) | 34% (17) | |
| Middle-high class: > 150,000 | 68% (17) | 64% (16) | 66% (33) | |
| TRAVEL BEHAVIOR | ||||
| Commute time to work, hours | Longer duration commuters increase their exposure time to unfiltered air contaminants. | |||
| ≤ 1 | 60% (15) | 68% (17) | 64% (32) | |
| > 1 | 40% (10) | 32% (8) | 36% (18) | |
| Own vehicle, yes | 40% (10) | 20% (5) | 30% (15) | Individuals in vehicles are likely to be exposed to more pollution since a car in traffic takes in and trap pollution from the exhaust of vehicles in front of it. Pedestrians and cyclists have diluted pollutants due to better airflow. |
| LIVING CONDITION | ||||
| Days suffered from passive smoking for more than 15 mins per week | Individuals who are exposed to secondhand smoke are more likely to inhale more pollutants. | |||
| 0 | 72% (18) | 56% (14) | 64% (32) | |
| > 1 | 28% (7) | 44% (11) | 36% (18) | |
| Have ventilation system at home or office | 56% (14) | 40% (10) | 48% (24) | The air cleaning effect of ventilation system will lower the concentration of indoor air pollutants. |
| HEALTH STATUS | ||||
| Body mass index, kg/m2 | Overweight or obese adults breathe more air per day than an adult with a healthy weight, which makes them more vulnerable to air contaminants. | |||
| Normal (< 25) | 68% (17) | 84% (21) | 76% (38) | |
| Overweight / Obese(≥25) | 32% (8) | 16% (4) | 24% (12) | |
| Respiratory diseases | 12% (3) | 16% (4) | 14% (7) | Patients with respiratory diseases are more likely to be cautious about bad air quality days and tend to take more protections. |
Fig. 3Distribution of the 50 finalists’ primary home and working address in Beijing during our first campaign. Data sources: ring road, subway network, and Beijing district boundary data were obtained from OpenStreetMap
Statistic parameter and ANOVA tests of mean personal exposure for different groups
| Mean ± STD (μg/m3) | |||
|---|---|---|---|
| PM2.5 | PM10 | PM1 | |
| SOCIODEMOGRAPHIC | |||
| Gender | * | ||
| Female | 35.85 ± 56.28 | 41.25 ± 60.81 | 18.36 ± 29.07 |
| Male | 40.38 ± 55.45 | 46.73 ± 61.65 | 20.80 ± 25.70 |
| Age | *** | *** | *** |
| ≤30 | 38.55 ± 59.36 | 44.41 ± 64.42 | 19.72 ± 29.65 |
| > 30 | 37.65 ± 49.80 | 43.60 ± 55.94 | 19.48 ± 23.33 |
| Education | *** | *** | *** |
| Bachelor’s degree or below | 44.40 ± 66.40 | 51.12 ± 71.86 | 22.67 ± 32.76 |
| Post-graduate degree | 31.64 ± 40.96 | 36.65 ± 46.47 | 16.40 ± 19.70 |
| Marital status | |||
| Single | 38.93 ± 58.76 | 44.65 ± 63.72 | 19.94 ± 29.07 |
| Married | 36.98 ± 50.57 | 43.16 ± 56.92 | 19.10 ± 24.26 |
| Annual income, RMB | *** | *** | *** |
| Low-middle: < 150,000 | 43.64 ± 67.20 | 49.52 ± 71.36 | 22.58 ± 34.39 |
| Middle-high class: > 150,000 | 35.46 ± 48.97 | 41.36 ± 55.34 | 18.14 ± 22.93 |
| TRAVEL BEHAVIOR | |||
| Commute time to work, hours | *** | *** | ** |
| ≤ 1 | 36.58 ± 55.20 | 42.08 ± 60.14 | 18.96 ± 28.28 |
| > 1 | 41.14 ± 57.01 | 47.73 ± 63.19 | 20.83 ± 25.69 |
| Own vehicle | *** | *** | *** |
| yes | 33.34 ± 48.20 | 38.66 ± 54.79 | 16.77 ± 22.67 |
| no | 40.30 ± 58.78 | 46.44 ± 63.77 | 20.86 ± 29.11 |
| LIVING CONDITION | |||
| Days suffered from passive smoking for more than 15 mins per week | ** | *** | * |
| 0 | 37.06 ± 58.60 | 42.56 ± 63.38 | 19.11 ± 29.37 |
| > 1 | 40.25 ± 50.65 | 46.83 ± 57.34 | 20.56 ± 23.45 |
| Have ventilation system at home or office | *** | *** | *** |
| yes | 35.58 ± 57.05 | 40.80 ± 61.51 | 18.37 ± 30.03 |
| no | 40.47 ± 54.78 | 46.94 ± 60.99 | 20.71 ± 24.87 |
| HEALTH STATUS | |||
| Body mass index, kg/m2 | *** | *** | *** |
| Normal (< 25) | 35.40 ± 53.69 | 40.91 ± 58.87 | 18.16 ± 27.08 |
| Overweight / Obese(≥25) | 46.37 ± 61.14 | 53.38 ± 67.03 | 23.91 ± 27.86 |
| Respiratory diseases | * | ** | * |
| yes | 34.51 ± 46.60 | 39.67 ± 52.03 | 17.77 ± 21.18 |
| no | 38.21 ± 55.50 | 44.21 ± 61.03 | 19.67 ± 27.73 |
Note: * denotes significance level < 0.05; **significance level < 0.01; ***significance level < 0.001. The highest personal exposure concentration in each group was shaded in grey
Coefficient estimates of OLS and quantile regression at different quantiles
| OLS | Quantile | ||||
|---|---|---|---|---|---|
| 0.25 | 0.5 | 0.75 | 0.9 | ||
| Age | −2.65a | −1.70a | − 4.59a | −4.70a | −9.35a |
| Education | −1.72a | 0.85a | 1.19a | −0.43 | −6.90a |
| Income | −0.32 | −0.53 | 0 | −1.03a | −5.25a |
| Commute time | 4.54a | 0.05 | −0.91a | −1.78a | 2.03 |
| Vehicle | −15.99a | −6.51a | −15.79a | − 14.55a | −48.54a |
| Smoking | 7.93a | 1.70a | 2.22a | 5.70a | 17.56a |
| Ventilation | 0.87 | −0.30a | 2.13a | 1.04a | −4.52a |
| BMI | 8.36a | 4.15a | 12.75a | 8.83a | 36.17a |
| Respiratory | 5.35a | 1.33a | 4.06a | 4.20a | 27.87a |
Note: adenotes significantly different coefficient from zero at the 5% significance level
Fig. 4The effects of sociodemographic, travel behavior, living conditions, and health status on personal PM2.5 exposure. Each dot on the black lines represents quantile regression coefficients and grey shadings indicate 95% confidence intervals as a function of the quantile level. The red horizontal solid and dashed lines depict the OLS coefficient estimates and the associated 95% confidence intervals, respectively