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NTIS 바로가기한국산업정보학회논문지 = Journal of the Korea Industrial Information Systems Research, v.25 no.6, 2020년, pp.33 - 45
이현식 (CHA Univ. Dept. of Integrated Medicine) , 이웅재 (Seoul Women's Univ. Dept. of Digital Media) , 정태경 (Sehan Univ. Dept. of Artificial Intelligence)
This paper aims to look at the perspective that the latest cutting-edge technologies are predicting individual diseases in the actual medical environment in a situation where various types of wearable devices are rapidly increasing and used in the healthcare domain. Through the process of collecting...
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