Impact of Media Reports and Environmental Pollution on Health and Health Expenditure Efficiency
Abstract
:1. Introduction
2. Literature Review and Research Hypotheses
3. Research Method
3.1. The Meta Undesirable Two-Stage EBM DEA Model
3.2. Fixed Assets, Labor, Energy Consumption, GDP, Health Expenditure, Media, Birth Rate, and Respiratory Diseases Efficiencies
4. Empirical Study
4.1. Data Sources and Description
Data and Variables
- Labor input: Employees; this study used the number of employed people in each city at the end of each year; unit: person.
- Energy consumption was calculated from the total energy consumption in each city; unit: 100 million Tonnes.
- Fixed assets: the capital stock in each city was calculated using the fixed assets investment in each city; unit: 100 million CNY.
- Carbon dioxide: CO2, a common greenhouse gas;
- AQI: the air quality index, which is a measured concentration of the pollutants such as PM2.5, PM10, sulfur dioxide (SO2), and nitrogen.
- Health expenditure: the total amount of health care invested in each place. Since this study is unable to obtain medical input for different diseases, the study can only use the total amount of medical input and conduct research based on the efficiency changes in each region;
- Media reports: media reports can reduce the incidence of public diseases and improve the public’s physical and mental health. The media reports collected in this study are from the People’s Daily Online, Xinhuanet, and Sina Weibo of the People’s Daily, Beijing News, Caixin.com, China Youth Daily, and China News Weekly. These media are official Chinese state-owned media, and the reliability of the report is strong. Related air pollution news data were collected from the Xinhuanet media official website using the search string “province + air pollution.” Statistics were calculated in units of (years), with the number of statistics being the total amount in the year. The official news websites were selected because of the amount of news published and their wide influence.
- Respiratory Diseases: referring to the prevalence of respiratory diseases. In order to examine the effects of medical health inputs on diseases in various regions, only respiratory disease data can be collected, and data on specific respiratory diseases cannot be obtained. Therefore, in this study, the respiratory disease rate was used to measure the adverse effects of air pollutants and the effects of health management, mainly because a large amount of literature research has been proved. Some researchers had found that respiratory disease is significantly affected by air pollutants as PM10 (small dust particles). In some model specifications, ozone, another measure of pollution, is also found to affect respiratory illness. Furong et al. [70] studied data from 2009 to 2015 in Hefei, China, and showed that air pollution can significantly increase the mortality of respiratory diseases and lung cancer. Among them, the mortality rate of lung cancer is significantly correlated with SO2. Karimi et al. [71] collected the data of mortality and hospitalization rates for cardiovascular and respiratory diseases associated with air pollution from January 1980 to January 2018 in the PubMed, EMBASE, and Web of Science databases. The research used systematic review and meta-analysis to explore the relationship between air pollution, cardiovascular, respiratory mortality, and hospitalization rates. The results showed that air pollutants (O3, PM2.5, PM10, NO2, NOx, SO2, and CO) were associated with increased mortality and hospitalization rates, but PM2.5 and PM10 were more strongly affected.
- Birth rate: this study used the infant birth rate as the second output indicator for medical input. Carré [72] explored that air pollution, especially PM2.5, PM10, and NO2, had significant effects on female fertility and infant birth rate.
4.2. Basic Statistical Analysis
4.3. Overall Efficiency Analysis
4.4. Efficiency Analysis of the Production and Health Treatment Stages
4.5. Efficiency Analysis of the Indicators in the 31 Cities from 2013 to 2016
4.6. Technology Gap Ratio and the Two-Stage Technology Gap Ratio in Each City
Technology Gap between the Production Stage and the Health Management Stage in Each City
5. Conclusions and Policy Recommendations
- Guangzhou, Lhasa, and Shanghai had overall efficiencies of 1. Beijing’s overall efficiency score was only 1 in 2013 but was lower in other years, and the other 20 cities had four-year efficiency scores between 0.5 and 0.8; therefore, most cities needed efficiency improvements.
- Guangzhou, Lhasa, and Shanghai had annual efficiencies of 1 in the production stage, and Fuzhou, Guangzhou, Haikou, Lhasa Nanning, and Shanghai had annual efficiencies of 1 in the treatment stage. Overall, 15 cities had higher efficiencies in the production stage than in the treatment stage, and 12 cities had higher efficiencies in the treatment stage than in the production stage. Chongqing, Guiyang, Kunming, Lanzhou, Shijiazhuang, Taiyuan, Xining, and Yinchuan had four-year production stage efficiencies below 0.6, with the poorest being Shijiazhuang, with a four-year efficiency of around 0.4. Chengdu and Tianjin had the poorest treatment efficiencies; however, in general, the treatment stage and production stage efficiencies were similar.
- Guangzhou, Lhasa and Shanghai had fixed assets efficiencies of 1 in all four years, but 11 cities had four-year fixed assets efficiencies of only about 0.6, with Tianjin, which had a four-year efficiency of below 0.45, requiring the most improvement. Guangzhou, Lhasa, Nanning, and Shanghai had energy consumption efficiencies of 1 in all four years, nine cities had efficiencies higher than 0.8, and the lowest efficiency was in Taiyuan, at below 0.2. Guangzhou, Lhasa, and Shanghai had labor efficiencies of 1, and only seven other cities had labor efficiencies below 0.7 in most years.
- Fuzhou, Guangzhou, Haikou, Lhasa, Nanning, and Shanghai had carbon dioxide emissions efficiencies of 1 in all four production stage years, but the other 25 cities had carbon dioxide emissions efficiencies of less than 0.4 in all four years, of which Taiyuan had the lowest, at less than 0.2. Only Beijing had an AQI efficiency of 1 in all four years, and Chongqing, Fuzhou, Guangzhou, Haikou, Kunming, Lhasa, Nanjing, Nanning, Shanghai, and Urumqi had two- or three-year efficiencies of 1, with the other years being higher than 0.9. However, in most cities, the AQI efficiencies had large fluctuations, with eight cities fluctuating upward. Even though only three cities achieved GDP efficiencies, the efficiencies were relatively good in most cities, at close to 0.8.
- Fuzhou, Guangzhou, Haikou, Lhasa, Nanning, and Shanghai had media report efficiencies of 1 in all four years, and the efficiencies in 17 cities ranged from 0.5 to 0.9 in most years. However, Lanzhou and Xining’s highest annual efficiencies were only about 0.4. The media report efficiencies fluctuated significantly, and many cities experienced large declines, with the largest being in Beijing.
- Fuzhou, Guangzhou, Haikou, Lhasa, Nanning, and Shanghai had four-year health expenditure efficiencies of 1. However, Tianjin had the worst performance, with its health expenditure efficiency in three-years being below 0.2. The health expenditure efficiencies in the other cities fluctuated significantly, and many cities experienced large declines, with the largest being in Beijing. The urban birth rate efficiency improvements were small; however, Chengdu, Harbin, Shijiazhuang, and Tianjin had the lowest four-year efficiencies at above 0.7.
- The respiratory disease efficiencies required in most cities needed significant improvements, and the efficiency differences between the cities was wide. Fuzhou, Guangzhou, Haikou, Lhasa, Nanning, and Shanghai had four-year respiratory disease efficiencies of 1. Chengdu and Tianjin had low efficiencies of around 0.6 in most years. Nine cities had four-year efficiency fluctuations or declines, and the other 17 cities had upward fluctuations or continuous upward trends. Overall, the respiratory disease efficiencies improved.
- The media reports efficiency has a high correlation with respiratory diseases, AQI, and CO2 efficiency.
- Guangzhou, Lhasa, and Shanghai had technology frontiers of 1, but Chengdu, Chongqing, Nanchang, Shijiazhuang, and Taiyuan had large technology gaps. Changsha, Chengdu, Chongqing, Fuzhou, Hangzhou, Hefei, Jinan, Kunming, Nanjing, Shenyang, Wuhan, Urumqi, and Zhengzhou had rising technology frontiers, but the technology frontiers in the other 15 cities fell.
- Fuzhou, Guangzhou, Guiyang, Haikou, Lhasa, Nanjing, and Shanghai had treatment stage technology frontiers of 1. However, Harbin, Hohhot, Jinan, Nanchang, Shenyang, and Zhengzhou had backward technology frontiers. Beijing and Shijiazhuang had sustained fluctuating technology frontiers, and the technology frontiers in the other 23 cities all rose, indicating that the technological differences in the treatment stage shrank. Also, we found that high-income cities are higher technology gap than upper middle–income cities.
- As there were obvious differences between the cities, cooperation between regions should be actively promoted. The technology gap of high-income countries is higher than that of upper middle–income countries. So, high-income cities have technological advantages and rich experience in air pollution and health management. High-income cities can use advanced technologies for air pollution treatment by combining regional characteristics, economic and social development levels, geographical characteristics of cities, and meteorological conditions.
- Industrial structure and energy structure adjustments need to be more rapidly implemented to improve the production and environmental efficiencies in the Beijing-Tianjin region. The Beijing-centered Beijing-Tianjin region had lower production and treatment stage efficiencies than the Pearl River Delta area with Guangzhou at the center and the Yangtze River Delta area with Shanghai at the center. Therefore, the energy consumption, fixed assets investment, human resource input, and environmental efficiencies need to be improved in Beijing. The economic and energy structures in the Beijing-Tianjin region are closely related, and the economic growth in the region has relied heavily on coal for its energy production. Therefore, there needs to be a greater focus on energy structure adjustments and clean energy and clean coal–use technological developments to replace coal and maintain production. Developing and maintaining normal economic and social development is also an important treatment measure.
- The media is an important “link” and “bridge” for the dissemination of health information. It plays an irreplaceable role in reporting health knowledge, changing health concepts, and promoting healthy behavior. The media has strengthened coverage of air pollution, energy conservation and emission reduction, green development, and environmental protection in terms of content and channels. By continuously improving the scientific and professional reporting of the media, this can guide the public to rationally think about and interpret information and improve the accumulation of public health knowledge. On the other hand, it eliminates public fears and threats of air pollution and promotes public health awareness. Therefore, it is important to enhance the strategy of media coverage. In order to increase the effect of media reporting on public health, media organizations need to constantly improve and strengthen reporting strategies. The media needs to strengthen reports on air pollution, energy conservation, green development, and environmental protection in terms of content, channels, and forms of communication and needs to improve the science and professionalism of the reporting that guides the public to think about and interpret information rationally.
- Drawing on the advanced health management efficiency in the Pearl River Delta and the Yangtze River Delta, the government can enhance the health management efficiency in the Beijing-Tianjin region. Health management investment in the Beijing-Tianjin region needs to continue to increase in line with economic growth and social development. The Beijing-Tianjin region still needs to strengthen its overall management, improve governance, and design more effective systems to improve health management efficiency.
- The governance in the middle-income cities needs to adopt strategies and measures appropriate to the regional characteristics. Middle-income cities in the west, such as Lanzhou, Xining, and Yinchuan, need to strengthen their industrial and energy structure adjustments. The news reporting efficiencies in these cities also need significant improvement. Therefore, systems need to be developed that are more suitable to the energy, economic, social, environmental and news reporting characteristics in these cities.
- To improve their production efficiency and environmental efficiencies, middle-income cities in the midwest and some individual middle-income cities in the East (Changsha, Chengdu, Chongqing, Fuzhou, Hangzhou, Hefei, Jinan, Kunming, Nanjing, Shenyang, Wuhan, Urumqi, and Zhengzhou) need to learn from the advanced technologies in cities such as Guangzhou and Shanghai.
- Middle-income cities in the northeast and some central cities (Harbin, Hohhot, Jinan, Nanchang, Shenyang, and Zhengzhou) need to improve their news report and health governance efficiencies. Therefore, these cities could learn from the governance measures adopted in other cities to improve the effectiveness of their news reports to increase the environmental awareness of their residents.
Author Contributions
Funding
Conflicts of Interest
References
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NO | DMU | 2013 | 2014 | 2015 | 2016 |
---|---|---|---|---|---|
1 | Beijing | 1 | 0.920417 | 0.733929 | 0.781173 |
2 | Changchun | 0.780636 | 0.744334 | 0.626083 | 0.693914 |
3 | Changsha | 0.613127 | 0.83919 | 0.813482 | 0.888706 |
4 | Chengdu | 0.495873 | 0.569804 | 0.518157 | 0.491098 |
5 | Chongqing | 0.692683 | 0.700274 | 0.67162 | 0.709513 |
6 | Fuzhou | 0.976286 | 0.786121 | 0.945944 | 0.93785 |
7 | Guangzhou | 1 | 1 | 1 | 1 |
8 | Guiyang | 0.625708 | 0.615078 | 0.556014 | 0.619227 |
9 | Harbin | 0.667707 | 0.625093 | 0.548797 | 0.612453 |
10 | Haikou | 0.965631 | 0.816178 | 0.944715 | 0.912714 |
11 | Hangzhou | 0.599453 | 0.680341 | 0.589847 | 0.711524 |
12 | Hefei | 0.603771 | 0.578212 | 0.718987 | 0.948708 |
13 | Huhehot | 0.771201 | 0.783619 | 0.675695 | 0.761003 |
14 | Jinan | 0.576035 | 0.578343 | 0.582106 | 1 |
15 | Kunming | 0.651187 | 0.616113 | 0.667184 | 0.652977 |
16 | Lanzhou | 0.691725 | 0.647571 | 0.520495 | 0.657953 |
17 | Lhasa | 1 | 1 | 1 | 1 |
18 | Nanchang | 0.747725 | 0.751731 | 0.684811 | 0.678634 |
19 | Nanjing | 0.626384 | 0.771059 | 0.660945 | 0.752753 |
20 | Nanning | 1 | 1 | 1 | 0.963501 |
21 | Shanghai | 1 | 1 | 1 | 1 |
22 | Shenyang | 0.57641 | 0.653371 | 0.471707 | 0.872131 |
23 | Shijiazhuang | 0.481009 | 0.478092 | 0.462524 | 0.439574 |
24 | Taiyuan | 0.61132 | 0.568609 | 0.558776 | 0.617309 |
25 | Tianjin | 0.63171 | 0.624746 | 0.580419 | 0.618667 |
26 | Wuhan | 0.969384 | 0.743701 | 0.737345 | 0.701077 |
27 | Urumqi | 0.957401 | 0.944612 | 0.680446 | 0.97296 |
28 | Xian | 0.675965 | 0.826735 | 0.598937 | 0.652698 |
29 | Xining | 0.606469 | 0.610215 | 0.544589 | 0.570594 |
30 | Yinchuan | 0.768444 | 0.738936 | 0.658954 | 0.732169 |
31 | Zhengzhou | 0.755548 | 0.76361 | 0.791239 | 0.605025 |
NO. | DMU | 2013 S-1 | 2013 S-2 | 2014 S-1 | 2014 S-2 | 2015 S-1 | 2015 S-2 | 2016 S-1 | 2016 S-2 |
---|---|---|---|---|---|---|---|---|---|
1 | Beijing | 1 | 1 | 0.9841 | 0.859717 | 1 | 0.523655 | 0.967305 | 0.620516 |
2 | Changchun | 0.784014 | 0.777225 | 0.810363 | 0.683197 | 0.867712 | 0.440007 | 0.666735 | 0.722244 |
3 | Changsha | 0.867294 | 0.422157 | 0.854909 | 0.823818 | 0.847923 | 0.780553 | 0.862052 | 0.915606 |
4 | Chengdu | 0.631859 | 0.381234 | 0.599879 | 0.540916 | 0.666245 | 0.393688 | 0.588109 | 0.404624 |
5 | Chongqing | 0.57216 | 0.833457 | 0.577451 | 0.842549 | 0.577227 | 0.778049 | 0.58374 | 0.854677 |
6 | Fuzhou | 0.953513 | 1 | 0.612554 | 1 | 0.896525 | 1 | 0.882006 | 1 |
7 | Guangzhou | 1 | 1 | 1 | 1 | 1 | 1 | 1 | 1 |
8 | Guiyang | 0.430391 | 0.881465 | 0.464297 | 0.800737 | 0.48783 | 0.631223 | 0.496444 | 0.762751 |
9 | Harbin | 0.843138 | 0.523092 | 0.820257 | 0.468745 | 0.911042 | 0.304295 | 0.60593 | 0.619029 |
10 | Haikou | 0.932073 | 1 | 0.662616 | 1 | 0.894992 | 1 | 0.839084 | 1 |
11 | Hangzhou | 0.828935 | 0.421705 | 0.819238 | 0.561614 | 0.830777 | 0.405179 | 0.857406 | 0.588141 |
12 | Hefei | 0.750495 | 0.479733 | 0.748732 | 0.439018 | 0.734275 | 0.703888 | 0.901489 | 1 |
13 | Huhehot | 0.794014 | 0.749271 | 0.79885 | 0.768767 | 0.784616 | 0.579296 | 0.767966 | 0.754124 |
14 | Jinan | 0.69103 | 0.474712 | 0.681966 | 0.48622 | 0.648869 | 0.520022 | 1 | 1 |
15 | Kunming | 0.447209 | 0.924271 | 0.450665 | 0.824437 | 0.506021 | 0.870361 | 0.495605 | 0.849659 |
16 | Lanzhou | 0.512725 | 0.92661 | 0.437378 | 0.935135 | 0.448104 | 0.600829 | 0.457415 | 0.93038 |
17 | Lhasa | 1 | 1 | 1 | 1 | 1 | 1 | 1 | 1 |
18 | Nanchang | 0.849399 | 0.655427 | 0.83084 | 0.678777 | 0.794252 | 0.5873 | 0.662679 | 0.695209 |
19 | Nanjing | 0.865647 | 0.443562 | 0.822589 | 0.72271 | 0.880772 | 0.487604 | 0.918836 | 0.614334 |
20 | Nanning | 1 | 1 | 1 | 1 | 1 | 1 | 0.928314 | 1 |
21 | Shanghai | 1 | 1 | 1 | 1 | 1 | 1 | 1 | 1 |
22 | Shenyang | 0.677385 | 0.487561 | 0.668757 | 0.638463 | 0.651262 | 0.328558 | 1 | 0.761222 |
23 | Shijiazhuang | 0.420644 | 0.546837 | 0.420201 | 0.541625 | 0.381233 | 0.554448 | 0.388758 | 0.494223 |
24 | Taiyuan | 0.497082 | 0.745665 | 0.485602 | 0.6623 | 0.48296 | 0.64264 | 0.496031 | 0.76024 |
25 | Tianjin | 0.79577 | 0.49495 | 0.788973 | 0.489891 | 0.777944 | 0.420716 | 0.830746 | 0.451418 |
26 | Wuhan | 0.939486 | 1 | 0.759276 | 0.728561 | 0.760506 | 0.714807 | 0.806428 | 0.608009 |
27 | Urumqi | 0.91658 | 1 | 0.892165 | 1 | 0.594624 | 0.778365 | 0.947314 | 1 |
28 | Xian | 0.625065 | 0.730118 | 0.680201 | 1 | 0.615122 | 0.582851 | 0.559771 | 0.758082 |
29 | Xining | 0.497994 | 0.733845 | 0.4237 | 0.855227 | 0.420998 | 0.69296 | 0.443779 | 0.726317 |
30 | Yinchuan | 0.610989 | 0.961078 | 0.566618 | 0.954052 | 0.557347 | 0.775328 | 0.570696 | 0.932932 |
31 | Zhengzhou | 0.878029 | 0.645468 | 0.905744 | 0.638679 | 0.973174 | 0.63835 | 0.726674 | 0.497766 |
Total | Production Stage | Treatment Stage | |
---|---|---|---|
2013 | 0.0590* | 0.0064** | 0.0094** |
2014 | 0.2711 | 0.2083 | 0.2275 |
2015 | 0.0590* | 0.0086** | 0.0030** |
2016 | 0.0569* | 0.2264 | 0.1763 |
No. | DMU | 2013–2016 Average Labor | 2013–2016 Average Asset | 2013–2016 Average Energy Consumption |
---|---|---|---|---|
1 | Beijing | 0.9383 | 0.9780 | 0.9956 |
2 | Changchun | 0.8428 | 0.6555 | 0.8828 |
3 | Changsha | 0.9419 | 0.5077 | 0.6611 |
4 | Chengdu | 0.7700 | 0.6418 | 0.7700 |
5 | Chongqing | 0.5457 | 0.4480 | 0.7471 |
6 | Fuzhou | 0.9217 | 0.6527 | 0.9419 |
7 | Guangzhou | 1.0000 | 1.0000 | 1.0000 |
8 | Guiyang | 0.6463 | 0.5036 | 0.5556 |
9 | Harbin | 0.7143 | 0.6105 | 0.8928 |
10 | Haikou | 0.7574 | 0.9182 | 0.9447 |
11 | Hangzhou | 0.9201 | 0.6535 | 0.7757 |
12 | Hefei | 0.8974 | 0.5208 | 0.8974 |
13 | Huhehot | 0.8923 | 0.7088 | 0.6350 |
14 | Jinan | 0.8601 | 0.8368 | 0.6553 |
15 | Kunming | 0.6486 | 0.5393 | 0.6027 |
16 | Lanzhou | 0.6441 | 0.6225 | 0.3322 |
17 | Lhasa | 1.0000 | 1.0000 | 1.0000 |
18 | Nanchang | 0.8860 | 0.5537 | 0.8860 |
19 | Nanjing | 0.9455 | 0.5825 | 0.7513 |
20 | Nanning | 0.9069 | 0.8994 | 1.0000 |
21 | Shanghai | 1.0000 | 1.0000 | 1.0000 |
22 | Shenyang | 0.8612 | 0.5788 | 0.7322 |
23 | Shijiazhuang | 0.5828 | 0.5092 | 0.3962 |
24 | Taiyuan | 0.6742 | 0.6651 | 0.1782 |
25 | Tianjin | 0.9061 | 0.4395 | 0.6792 |
26 | Wuhan | 0.9094 | 0.5740 | 0.7818 |
27 | Urumqi | 0.8964 | 0.9026 | 0.8934 |
28 | Xian | 0.7718 | 0.5276 | 0.7718 |
29 | Xining | 0.6272 | 0.6054 | 0.3283 |
30 | Yinchuan | 0.7506 | 0.5442 | 0.3119 |
31 | Zhengzhou | 0.8945 | 0.6344 | 0.9369 |
No. | DMU | 2013–2016 Average GDP | 2013–2016 Average CO2 | 2013–2016 Average AQI (Air Quality Index) |
---|---|---|---|---|
1 | Beijing | 0.9957 | 0.9935 | 0.9978 |
2 | Changchun | 0.9075 | 0.8822 | 0.6527 |
3 | Changsha | 0.9480 | 0.6615 | 0.8828 |
4 | Chengdu | 0.8428 | 0.7701 | 0.8041 |
5 | Chongqing | 0.8321 | 0.7445 | 0.9934 |
6 | Fuzhou | 0.7726 | 1.0000 | 0.9952 |
7 | Guangzhou | 1.0000 | 1.0000 | 0.9958 |
8 | Guiyang | 0.7931 | 0.5915 | 0.7348 |
9 | Harbin | 0.9182 | 0.8930 | 0.5992 |
10 | Haikou | 0.7959 | 0.9998 | 0.9938 |
11 | Hangzhou | 0.9312 | 0.7762 | 0.8889 |
12 | Hefei | 0.8563 | 0.8985 | 0.7460 |
13 | Huhehot | 0.9115 | 0.6353 | 0.5633 |
14 | Jinan | 0.8982 | 0.6545 | 0.7602 |
15 | Kunming | 0.7939 | 0.6027 | 0.9736 |
16 | Lanzhou | 0.7924 | 0.3301 | 0.5271 |
17 | Lhasa | 1.0000 | 0.9994 | 0.9957 |
18 | Nanchang | 0.9094 | 0.8865 | 0.8332 |
19 | Nanjing | 0.9513 | 0.7524 | 0.9186 |
20 | Nanning | 0.9617 | 0.9998 | 0.9961 |
21 | Shanghai | 1.0000 | 1.0000 | 0.9968 |
22 | Shenyang | 0.8988 | 0.7322 | 0.7841 |
23 | Shijiazhuang | 0.7727 | 0.4518 | 0.6126 |
24 | Taiyuan | 0.8028 | 0.1786 | 0.4634 |
25 | Tianjin | 0.9212 | 0.6792 | 0.7933 |
26 | Wuhan | 0.9254 | 0.7935 | 0.7364 |
27 | Urumqi | 0.8867 | 0.9183 | 0.8364 |
28 | Xian | 0.8440 | 0.8120 | 0.6197 |
29 | Xining | 0.7868 | 0.3272 | 0.5541 |
30 | Yinchuan | 0.8338 | 0.3122 | 0.5175 |
31 | Zhengzhou | 0.9481 | 0.9358 | 0.7081 |
No. | DMU | 2013–2016 Average Media | 2013–2016 Average Health Expenditure | 2013–2016 Average Birth Rate | 2013–2016 Average Respiratory Diseases |
---|---|---|---|---|---|
1 | Beijing | 0.3643 | 0.551 | 0.90675 | 0.87775 |
2 | Changchun | 0.7965 | 0.4625 | 0.86225 | 0.7965 |
3 | Changsha | 0.6610 | 0.839 | 0.89275 | 0.839 |
4 | Chengdu | 0.6050 | 0.46 | 0.7805 | 0.605 |
5 | Chongqing | 0.9125 | 0.69775 | 0.9255 | 0.9125 |
6 | Fuzhou | 1.0000 | 1 | 1 | 1 |
7 | Guangzhou | 1.0000 | 1 | 1 | 1 |
8 | Guiyang | 0.8618 | 0.73475 | 0.90075 | 0.8715 |
9 | Harbin | 0.6468 | 0.46575 | 0.7975 | 0.64675 |
10 | Haikou | 1.0000 | 1 | 1 | 1 |
11 | Hangzhou | 0.5170 | 0.66425 | 0.801 | 0.66425 |
12 | Hefei | 0.6230 | 0.76225 | 0.86475 | 0.77825 |
13 | Huhehot | 0.8313 | 0.706 | 0.878 | 0.83475 |
14 | Jinan | 0.4268 | 0.74375 | 0.85425 | 0.761 |
15 | Kunming | 0.9415 | 0.551 | 0.948 | 0.9415 |
16 | Lanzhou | 0.3515 | 0.73225 | 0.9575 | 0.9385 |
17 | Lhasa | 1.0000 | 1 | 1 | 1 |
18 | Nanchang | 0.5108 | 0.53225 | 0.865 | 0.81325 |
19 | Nanjing | 0.5690 | 0.71575 | 0.82675 | 0.72425 |
20 | Nanning | 1.0000 | 1 | 1 | 1 |
21 | Shanghai | 1.0000 | 1 | 1 | 1 |
22 | Shenyang | 0.7003 | 0.63925 | 0.80625 | 0.64475 |
23 | Shijiazhuang | 0.4755 | 0.624 | 0.81675 | 0.7095 |
24 | Taiyuan | 0.5468 | 0.64575 | 0.882 | 0.84375 |
25 | Tianjin | 0.5703 | 0.2585 | 0.79575 | 0.65425 |
26 | Wuhan | 0.8633 | 0.71775 | 0.90075 | 0.86325 |
27 | Urumqi | 0.7778 | 0.97575 | 0.97975 | 0.97575 |
28 | Xian | 0.8383 | 0.613 | 0.90575 | 0.87175 |
29 | Xining | 0.3163 | 0.8015 | 0.90575 | 0.88175 |
30 | Yinchuan | 0.3618 | 0.9675 | 0.975 | 0.97025 |
31 | Zhengzhou | 0.3415 | 0.404 | 0.8515 | 0.785 |
CO2 | AQI | Respiratory Diseases | |
---|---|---|---|
2013Media | 0.5861 | 0.4072 | 0.5932 |
2014Media | 0.4275 | 0.3387 | 0.4252 |
2015Media | 0.4384 | 0.6535 | 0.5751 |
2016Media | 0.5631 | 0.5619 | 0.3697 |
NO | DMU | 2013 | 2014 | 2015 | 2016 |
---|---|---|---|---|---|
1 | Beijing | 1 | 0.920417 | 0.951156 | 0.905517 |
2 | Changchun | 0.799766 | 0.865208 | 0.626083 | 0.765738 |
3 | Changsha | 0.688145 | 0.876117 | 0.813482 | 0.888706 |
4 | Chengdu | 0.649096 | 0.66255 | 0.777481 | 0.7262 |
5 | Chongqing | 0.692683 | 0.700274 | 0.67162 | 0.709513 |
6 | Fuzhou | 0.976286 | 0.998914 | 1.001418 | 0.986605 |
7 | Guangzhou | 1 | 1 | 1 | 1 |
8 | Guiyang | 0.804812 | 0.789525 | 0.765699 | 0.783652 |
9 | Harbin | 0.78929 | 0.742931 | 0.661526 | 0.771179 |
10 | Haikou | 0.965631 | 0.891907 | 0.9715 | 0.934996 |
11 | Hangzhou | 0.892932 | 0.894409 | 0.914981 | 0.9587 |
12 | Hefei | 0.895494 | 0.881029 | 0.776732 | 0.948708 |
13 | Huhehot | 0.771201 | 0.783619 | 0.675695 | 0.761003 |
14 | Jinan | 0.845658 | 0.839612 | 0.801471 | 1 |
15 | Kunming | 0.742354 | 0.754756 | 0.790251 | 0.779946 |
16 | Lanzhou | 0.846304 | 0.818117 | 0.772737 | 0.777249 |
17 | Lhasa | 1 | 1 | 1 | 1 |
18 | Nanchang | 0.747725 | 0.751731 | 0.697362 | 0.703055 |
19 | Nanjing | 0.843292 | 0.887507 | 0.926665 | 0.952523 |
20 | Nanning | 1 | 1 | 1 | 0.963501 |
21 | Shanghai | 1 | 1 | 1 | 1 |
22 | Shenyang | 0.77126 | 0.724574 | 0.755926 | 0.872131 |
23 | Shijiazhuang | 0.76481 | 0.769609 | 0.718522 | 0.731075 |
24 | Taiyuan | 0.766194 | 0.758631 | 0.75676 | 0.718906 |
25 | Tianjin | 0.866574 | 0.975213 | 0.943439 | 0.952695 |
26 | Wuhan | 0.980431 | 0.955047 | 0.970918 | 0.997056 |
27 | Urumqi | 0.957401 | 0.944612 | 0.680446 | 0.97296 |
28 | Xian | 0.821765 | 0.875207 | 0.809363 | 0.767682 |
29 | Xining | 0.890846 | 0.81891 | 0.821108 | 0.801893 |
30 | Yinchuan | 0.831326 | 0.817149 | 0.794892 | 0.789536 |
31 | Zhengzhou | 0.755548 | 0.76361 | 0.791239 | 0.901562 |
NO | DMU | 2013 S1 | 2013 S2 | 2014 S1 | 2014 S2 | 2015 S1 | 2015 S2 | 2016 S1 | 2016 S2 |
---|---|---|---|---|---|---|---|---|---|
1 | Beijing | 1 | 1 | 0.9841 | 0.859717 | 1 | 0.894374 | 0.977258 | 0.829966 |
2 | Changchun | 0.784014 | 0.816048 | 0.810363 | 0.924697 | 0.867712 | 0.440007 | 0.666735 | 0.880661 |
3 | Changsha | 0.879721 | 0.524584 | 0.932426 | 0.823818 | 0.847923 | 0.780553 | 0.862052 | 0.915606 |
4 | Chengdu | 0.631859 | 0.655117 | 0.599879 | 0.730815 | 0.666245 | 0.924537 | 0.588109 | 0.917548 |
5 | Chongqing | 0.57216 | 0.833457 | 0.577451 | 0.842549 | 0.577227 | 0.778049 | 0.58374 | 0.854677 |
6 | Fuzhou | 0.953513 | 1 | 0.997512 | 1 | 1.002561 | 1 | 0.974467 | 1 |
7 | Guangzhou | 1 | 1 | 1 | 1 | 1 | 1 | 1 | 1 |
8 | Guiyang | 0.633033 | 0.994539 | 0.596955 | 1.026177 | 0.579653 | 1.010953 | 0.597173 | 1.01622 |
9 | Harbin | 0.853814 | 0.722546 | 0.820257 | 0.661141 | 0.915633 | 0.440075 | 0.608234 | 0.98388 |
10 | Haikou | 0.932073 | 1 | 0.791953 | 1 | 0.945958 | 1 | 0.880062 | 1 |
11 | Hangzhou | 1.007733 | 0.777175 | 0.970302 | 0.819937 | 0.970346 | 0.849596 | 0.961007 | 0.956052 |
12 | Hefei | 0.805091 | 1.00597 | 0.79557 | 0.985432 | 0.734275 | 0.823614 | 0.901489 | 1 |
13 | Huhehot | 0.794014 | 0.749271 | 0.79885 | 0.768767 | 0.784616 | 0.579296 | 0.767966 | 0.754124 |
14 | Jinan | 0.980467 | 0.721654 | 0.910867 | 0.768498 | 0.91115 | 0.701844 | 1 | 1 |
15 | Kunming | 0.548987 | 0.978743 | 0.570825 | 0.977019 | 0.626686 | 0.985638 | 0.608274 | 0.987527 |
16 | Lanzhou | 0.703492 | 1.011085 | 0.605101 | 1.079956 | 0.604982 | 0.983986 | 0.568089 | 1.046075 |
17 | Lhasa | 1 | 1 | 1 | 1 | 1 | 1 | 1 | 1 |
18 | Nanchang | 0.849399 | 0.655427 | 0.83084 | 0.678777 | 0.823516 | 0.5873 | 0.710809 | 0.695209 |
19 | Nanjing | 0.999461 | 0.698904 | 0.987955 | 0.797774 | 0.972082 | 0.876073 | 0.970163 | 0.935064 |
20 | Nanning | 1 | 1 | 1 | 1 | 1 | 1 | 0.928314 | 1 |
21 | Shanghai | 1 | 1 | 1 | 1 | 1 | 1 | 1 | 1 |
22 | Shenyang | 0.835419 | 0.70751 | 0.823663 | 0.638463 | 0.796233 | 0.70001 | 1 | 0.761222 |
23 | Shijiazhuang | 0.605896 | 0.962323 | 0.620055 | 0.953419 | 0.566882 | 0.901437 | 0.560729 | 0.952653 |
24 | Taiyuan | 0.58826 | 0.989451 | 0.556767 | 1.031572 | 0.576715 | 0.988437 | 0.518786 | 0.985778 |
25 | Tianjin | 0.986385 | 0.752208 | 1.000127 | 0.948332 | 1.013662 | 0.860202 | 1.045958 | 0.854936 |
26 | Wuhan | 0.961032 | 1 | 0.929586 | 0.981111 | 1.00099 | 0.941638 | 0.99833 | 0.995729 |
27 | Urumqi | 0.91658 | 1 | 0.892165 | 1 | 0.594624 | 0.778365 | 0.947314 | 1 |
28 | Xian | 0.72997 | 0.924013 | 0.762626 | 1 | 0.681047 | 0.97043 | 0.614017 | 0.957543 |
29 | Xining | 0.805349 | 0.979803 | 0.650721 | 1.007062 | 0.668876 | 0.991888 | 0.627061 | 1.015135 |
30 | Yinchuan | 0.697177 | 0.985967 | 0.635244 | 1.040927 | 0.633286 | 0.993166 | 0.621991 | 0.995286 |
31 | Zhengzhou | 0.878029 | 0.645468 | 0.905744 | 0.638679 | 0.973174 | 0.63835 | 0.990239 | 0.811945 |
Total | Production Stage | Treatment Stage | |
---|---|---|---|
2013 | 0.0238** | 0.0016** | 0.0010** |
2014 | 0.0787* | 0.0453** | 0.0929* |
2015 | 0.0344** | 0.0006** | 0.0003** |
2016 | 0.0169** | 0.0065** | 0.0199** |
© 2019 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
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Li, Y.; Chiu, Y.-H.; Chen, H.; Lin, T.-Y. Impact of Media Reports and Environmental Pollution on Health and Health Expenditure Efficiency. Healthcare 2019, 7, 144. https://doi.org/10.3390/healthcare7040144
Li Y, Chiu Y-H, Chen H, Lin T-Y. Impact of Media Reports and Environmental Pollution on Health and Health Expenditure Efficiency. Healthcare. 2019; 7(4):144. https://doi.org/10.3390/healthcare7040144
Chicago/Turabian StyleLi, Ying, Yung-Ho Chiu, Huaming Chen, and Tai-Yu Lin. 2019. "Impact of Media Reports and Environmental Pollution on Health and Health Expenditure Efficiency" Healthcare 7, no. 4: 144. https://doi.org/10.3390/healthcare7040144
APA StyleLi, Y., Chiu, Y. -H., Chen, H., & Lin, T. -Y. (2019). Impact of Media Reports and Environmental Pollution on Health and Health Expenditure Efficiency. Healthcare, 7(4), 144. https://doi.org/10.3390/healthcare7040144