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NTIS 바로가기한국방사선학회 논문지 = Journal of the Korean Society of Radiology, v.16 no.1, 2022년, pp.25 - 34
김성민 (건양대학교 방사선학과) , 이승완 (건양대학교 방사선학과)
Brain computed tomography (CT) is useful for brain lesion diagnosis, such as brain hemorrhage, due to non-invasive methodology, 3-dimensional image provision, low radiation dose. However, there has been numerous misdiagnosis owing to a lack of radiologist and heavy workload. Recently, object detecti...
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