| Literature DB >> 36078362 |
Yifeng Wang1,2, Ken Sun3, Li Li1,2,4, Yalin Lei1,2, Sanmang Wu1,2, Yong Jiang1,2, Yanling Xi5, Fang Wang1,2, Yanfang Cui6.
Abstract
Due to the fast growth of China's economy, urban atmospheric pollution has become a serious problem affecting the public's physical and mental health. The '2 + 26' cities, as the Jing-Jin-Ji atmospheric pollution transmission channel, has attracted widespread concern. There were several previous studies on the economic loss of public health caused by PM2.5 pollution in '2 + 26' cities. To assess the economic loss caused by PM2.5 on human health in '2 + 26' cities, this paper used the exposure-response model, the health effect loss model and willingness to pay method to obtain the economic loss from PM2.5 pollution with the latest available data in 2020. It was concluded that, in 2020, the economic loss of '2 + 26' cities from PM2.5 was spatially distributed low in the east and high in the west. In addition, it was larger in the southern and northern part, which was smaller in the middle of the region. Based on the conclusions, policy recommendations were put forward.Entities:
Keywords: PM2.5; exposure-response model; health effect; willingness to pay; ‘2 + 26’ cities
Mesh:
Substances:
Year: 2022 PMID: 36078362 PMCID: PMC9518564 DOI: 10.3390/ijerph191710647
Source DB: PubMed Journal: Int J Environ Res Public Health ISSN: 1660-4601 Impact factor: 4.614
Research review.
| Authors | Year | Work | |
|---|---|---|---|
| 1 | Wong et al. | 2001 [ | Utilized the Poisson Regression model and assessed the relationship between the hospital acceptance rates everyday and the representative concentrations of pollutants in Hong Kong and London. |
| 2 | Xu et al. | 2014 [ | Established an assessment system on health risk using the epidemiological method and adjusted the heat environment and eliminated health risks of PM10 by controlling the intensity of the urban heat island effect. |
| 3 | Xie et al. | 2014 [ | Used the Poisson Regression model and the estimating method of environmental value to evaluate the risk of acute health damage to high-concentration PM2.5 exposure in Beijing’s residents. |
| 4 | Etchie et al. | 2017 [ | Assessed the health and economic loss of Nagpur region. The study utilized a life-table approach to calculate the number of premature deaths and disability-adjusted life years associated with the five health effect terminals associated with PM2.5 exposure. |
| 5 | Han | 2019 [ | Comprehensively evaluated the health benefits from M10 and PM2.5 pollution in Zhengzhou from 2014 to 2016. |
| 6 | Zeng et al. | 2019 [ | Used spatial interpolation and Ben-map tools to figure out the health loss in China from air pollution, especially PM2.5 in 2017, which spatially analyzed the health economic loss at a city scale. |
| 7 | Yao et al. | 2020 [ | Calculated the health loss from PM2.5 with the log-linear model along with the exposure-response function. |
| 8 | Zhang and Cao | 2022 [ | Evaluated the policy effects of air pollution control using a double-difference model (DID). |
Figure 1Roadmap.
Figure 2Average PM2.5 concentration of ‘2 + 26’ cities in 2020 (μg/m3). (Data source: China Environmental Monitoring Station, 2020).
The coefficients of the PM2.5 exposure-response relationship and the baseline incidence at different health terminals.
| Healthy Terminal | β (%) | E Value (‰) | |
|---|---|---|---|
| Death | Total mortality | 0.40 (0.19, 0.62) | 0.0161644 |
| Respiratory disease mortality | 1.43 (0.85, 2.01) | 0.0017025 | |
| Cardiovascular mortality | 0.53 (0.15, 0.9) | 0.007523 | |
| Hospitalization | Respiratory diseases | 1.09 (0, 2.21) | 0.0350411 |
| Cardiovascular diseases | 0.68 (0.43, 0.93) | 0.0270904 | |
| Outpatient | Pediatrics (0–14 years old) | 0.56 (0.2, 0.9) | 0.4191781 |
| Internal medicine (at least 15 years old) | 0.49 (0.27, 0.7) | 1.1261644 | |
| Sick | Acute bronchi | 7.90 (2.7, 13) | 0.1041096 |
| Asthma | 2.10 (1.45, 2.74) | 0.1536986 | |
Source: Kan et al. [20]; Xie et al. [21].
Figure 3Unit economic loss of each health terminal in ‘2 + 26’ cities.
Figure 4‘2 + 26’ urban public health effect terminal loss values (ten thousand cases).
Figure 5Normalized economic loss of three kinds of health effect terminals in 2020.
Figure 6Economic loss of ‘2 + 26’ cities in 2020.