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http://dx.doi.org/10.15683/kosdi.2020.09.30.513

Identifying Regional Characteristics Faxtors Affecting the Number of Tuberculosis Death - The Comparative Analysis between Urban and Rural areas -  

Yoon, Sanghoon (Safety Research Division, National Disaster Management Research Institute)
Park, Keunoh (Center for Disaster & Safety Research, Chungnam Institute)
Publication Information
Journal of the Society of Disaster Information / v.16, no.3, 2020 , pp. 513-525 More about this Journal
Abstract
Purpose: The purpose of this study is to analyze the characteristics of local factors affecting number of tuberculosis death by urban and rural areas. Method: The Partial Least Square(PLS) Regression analysis was used to solve the problem of multicollinearity and number of samples. Result: As a result of analysis, The number of tuberculosis deaths in urban and rural areas is about three times as large. As a result of analysis about Regional Characteristics Factor, In general, children, elderly people, and economically vulnerable populations are more likely to be exposed to tuberculosis. In differential results, it shows that environmental factors such as ultrafine dust and sulfur dioxide have a significant impact on the number of tuberculosis deaths in urban areas and social factors such as depression experience rate in rural areas. Conclusion: The Tuberculosis prevention and management policies that reflect the characteristics of urban and rural areas are needed in the future.
Keywords
Number of Tuberculosis Deaths; Regional Characteristics Factor; PLS (Partial Least Square) Regression Analysis; Importance; Infectious disease;
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Times Cited By KSCI : 2  (Citation Analysis)
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