Computer Engineering and Applications ›› 2024, Vol. 60 ›› Issue (5): 47-61.DOI: 10.3778/j.issn.1002-8331.2304-0112
• Research Hotspots and Reviews • Previous Articles Next Articles
Abudukelimu Halidanmu, FENG Ke, SHI Yaqing, Abudukelimu Nihemaiti, Abulizi Abudukelimu
Online:
2024-03-01
Published:
2024-03-01
哈里旦木·阿布都克里木,冯珂,史亚庆,尼合买提·阿布都克力木,阿布都克力木·阿布力孜
Abudukelimu Halidanmu, FENG Ke, SHI Yaqing, Abudukelimu Nihemaiti, Abulizi Abudukelimu. Review of Applications of Deep Learning in Fracture Diagnosis[J]. Computer Engineering and Applications, 2024, 60(5): 47-61.
哈里旦木·阿布都克里木, 冯珂, 史亚庆, 尼合买提·阿布都克力木, 阿布都克力木·阿布力孜. 深度学习在骨折诊断中的应用综述[J]. 计算机工程与应用, 2024, 60(5): 47-61.
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