Use of Frequency Analysis of Exposure of Hazards by Occupations: Findings from the Third and Fourth Korean Working Conditions Survey
Soon-Chan Kwon
Soonchunhyang Med Sci. 2019;25(1):37-45.   Published online 2019 Jun 30     DOI:
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