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Original Articles

Who is susceptible to perceive higher smog-induced health risk? Comparative analysis between physical and mental health dimensions

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Pages 459-482 | Received 02 Jul 2018, Accepted 23 Aug 2018, Published online: 27 Dec 2018
 

Abstract

Smog pollution can significantly affect the health of skilled workers. This paper explores the concept, structure and characteristics of smog-induced health risk perception. Based on face-to-face interviews with 30 skilled workers in a smog pollution area of China and quantitative analysis, we determined the dimensions of smog-induced health risk perception. The different effects of demographic variables on the dimensions of smog-induced health risk perception were investigated through 715 questionnaires distributed to skilled workers living in areas polluted by smog. The results showed that smog-induced health risk perception is a two-dimensional concept. We found that 86.3% of skilled workers perceived that physical health risk level was higher than mental health risk level. One-third of the population in most groups perceived higher degree of physical health risk than that of mental health risk, but the difference between physical and mental health risk for them was small. Moreover, skilled workers with a high level of smog-induced health risk perception were distributed mainly in groups of long employment duration, older skilled workers and skilled workers living in areas severely polluted by smog. Based on our results, we propose practical suggestions to help government, enterprises and skilled workers improve physical and mental health of skilled workers.

Acknowledgements

This work was financially supported by the National Natural Science Foundation of China Project (grant Nos. 71603255, 71673271); the Major Project of the National Social Science Foundation of China Project (grant No. 16ZDA056); sponsored by Qing Lan Project of Jiangsu Province (2018); “13th Five Year” brand discipline specialty building project of China University of Mining and Technology (2017); “13th Five Year” Brand Discipline Construction Funding Project of China University of Mining and Technology (2017); Fundamental Research Funds for the Central Universities (grant No. 2017WB16); Think Tank of Green Safety Management and Policy Science (2018 “Double First-Class” Initiative Project for Cultural Evolution and Creation of CUMT 2018WHCC03).

Funding

This work was financially supported by the National Natural Science Foundation of China Project (Grant Nos. 71603255, 71673271); the Major Project of the National Social Science Foundation of China Project (Grant No. 16ZDA056); sponsored by Qing Lan Project of Jiangsu Province (2018); “13th Five Year” brand discipline specialty building project of China University of Mining and Technology (2017); “13th Five Year” Brand Discipline Construction Funding Project of China University of Mining and Technology (2017); Fundamental Research Funds for the Central Universities (Grant No. 2017WB16); Fundamental Research Funds for the Central Universities (Grant No. 2017XKZD12); the 333 Project of Training High-level Talents of Jiangsu Province (2016); the China Ministry of Education Humanities and Social Science Project (Grant No. 14YJC630092); the Education Humanities and Social Science Project of Jiangsu Province (Grant No. 14ZHC002) and the program of innovation team supported by China University of Mining and Technology (Grant No. 2015ZY003).

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