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NTIS 바로가기한국방사선학회 논문지 = Journal of the Korean Society of Radiology, v.14 no.3, 2020년, pp.211 - 220
남기복 (건양대학교 방사선학과) , 조정효 (건양대학교 방사선학과) , 이승완 (건양대학교 방사선학과) , 김번영 (건양대학교 의과학과) , 임도빈 (건양대학교 의과학과) , 이다혜 (건양대학교 방사선학과)
High-quality computed tomography (CT) images enable precise lesion detection and accurate diagnosis. A lot of studies have been performed to improve CT image quality while reducing radiation dose. Recently, deep learning-based techniques for improving CT image quality have been developed and show su...
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