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http://dx.doi.org/10.15207/JKCS.2022.13.01.141

Artificial Intelligence Application Cases and Considerations in Digital Healthcare  

Park, Minseo (Department of Data Science, Seoul Women'sUniversity)
Publication Information
Journal of the Korea Convergence Society / v.13, no.1, 2022 , pp. 141-147 More about this Journal
Abstract
In a broad sense, the definition of digital health care is an industrial area that manages personal health and diseases through the convergence of the health care industry and ICT. In a narrow sense, various medical technologies are used to manage medical services to improve patient health. This paper aims to provide design guidelines so that artificial intelligence technology can be applied stably and efficiently to more diverse digital health care fields in the future by introducing use cases of artificial intelligence and machine learning techniques applied in the digital health care field. For this purpose, in this thesis, the medical field and the daily life field are divided and examined. The two regions have different data characteristics. By further subdividing the two areas, we looked at the use cases of artificial intelligence algorithms according to data characteristics and problem definitions and characteristics. Through this, we will increase our understanding of artificial intelligence technologies used in the digital health care field and examine the possibility of using various artificial intelligence technologies.
Keywords
Artificial Intelligence; Machine Learning; Digital Healthcare; Prognosis; Diagnosis; Treatment; Clinical Workflow;
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Times Cited By KSCI : 6  (Citation Analysis)
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