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http://dx.doi.org/10.5392/JKCA.2018.18.09.149

Analysis of Mortality Cause and Properties using Medical Big Data in Gangwon  

Jeong, Dae-hyun (강원연구원)
Kwon, O-young (강원연구원)
Koo, Young-duk (한국과학기술정보연구원)
Publication Information
Abstract
Due to the rapid development of medical information, vast amounts of medical data are accumulating, and such medical data is highly likely to be used as an important data for solving the aging population and the rapid rise in medical cost. Especially in Korea, there are resident registration numbers and computerized usage data for all citizens, so it can be superior to other countries in terms of medical infrastructure that can utilize big data. The purpose of this study was to analyze the factors affecting the mortality and death rate of Gangwon using the Big Data and the National Statistical Office data centered on Kangwon province. As a result of analysis, major variables related to the mortality rate of Gangwon were hospital infrastructure utilization rate, income level, aging population and population density. Therefore, inequalities due to income disparities and insufficient local medical infrastructures were affecting the local mortality rate, and policy support was needed to improve the local hospital infrastructure and income level. The results of this study were meaningful in that medical big data were used to analyze the deaths of people in Gangwon, and the causes of the deaths were analyzed through various social indicators and correlation analysis.
Keywords
Medical Big Data; Mortality Rate; Correlation Analysis;
Citations & Related Records
Times Cited By KSCI : 3  (Citation Analysis)
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