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NTIS 바로가기Journal of biomedical engineering research : the official journal of the Korean Society of Medical & Biological Engineering, v.43 no.5, 2022년, pp.353 - 360
박준하 (가천대학교 보건과학대학 의용생체공학과) , 김영재 (가천대학교 보건과학대학 의용생체공학과) , 우주현 (가천대길병원 이비인후과) , 김광기 (가천대학교 보건과학대학 의용생체공학과)
Laryngeal disease harms quality of life, and laryngoscopy is critical in identifying causative lesions. This study extracts and analyzes using radiomics quantitative features from the lesion in laryngoscopy images and will fit and validate a classifier for finding meaningful features. Searching the ...
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