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자료유형
학술저널
저자정보
박형득 (메드트로닉 코리아) 이상수 (메드트로닉코리아 대외협력부)
저널정보
한국보건의료기술평가학회 보건의료기술평가 보건의료기술평가 제3권 제1호
발행연도
2015.6
수록면
35 - 47 (13page)

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Objectives: An era of open and transparent information in Korean healthcare area is now underway. Health Insurance Review and Assessment Service has disclosed the National Patient Sample claims data since 2009 and National Health Insurance Service announced to disclose 9 year period cohort national health insurance claims database to healthcare stakeholders. Since Korea uses the fee-for-service scheme as basic payment system for all of medical treatments excepting for 7 common diseases which are run by Diagnosis Related Group, it is easy to identify the medical treatment practice and resource utility information for individual medical procedures. The use of SAS software is the generally accepted data analysis tool as the average data size of national health insurance claims data easily exceeds over 30 Giga Bytes. However, the data analysis using SAS is labor-intensive and time-consuming works and has a low accessibility due to its costly license fees. As the need to analyze the Healthcare Big Data faster and appropriately rises, demand for development of new data analysis tool is also significantly increasing. Methods: Open-source big data analysis program with the name of BigPy was developed using Py- thon which is a high-level object oriented programming language. BigPy’s design philosophy empha- sizes on code readability and reusability, and its syntax allows users to express concepts in fewer lines of code than would be possible in statistical software such as SAS or R. Results: Bigpy program is com- posed of a series of data analysis macro and functions. The functions in BigPy can easily read, trim, sort, and merge the healthcare big data with database format and convert large dataset to a Hierarchical Data Format Version 5 file. Conclusion: Healthcare stakeholders now have access to promising new value of knowledge that is called Big Data. The efforts on Big Data analysis can address problems related to variability in healthcare quality and consequently improve healthcare treatments. The development of open-source data analysis is a noteworthy and promising methodology to handle the healthcare big data in a rapid and a cost-effective way.

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