|本期目录/Table of Contents|

[1]刘雨柔,南岩东,王在强,等.人工智能在肺结节CT检测和诊断中的研究进展[J].中华肺部疾病杂志,2021,(06):833-836.[doi:10.3877/cma.j.issn.1674-6902.2021.06.037]
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人工智能在肺结节CT检测和诊断中的研究进展(PDF)

《中华肺部疾病杂志》[ISSN:1006-6977/CN:61-1281/TN]

卷:
期数:
2021年06期
页码:
833-836
栏目:
综述
出版日期:
2021-12-20

文章信息/Info

Title:
-
作者:
刘雨柔南岩东王在强金发光
710038 西安,空军军医大学第二附属医院呼吸与危重症医学科
Author(s):
-
关键词:
肺结节 人工智能 深度学习
Keywords:
-
分类号:
R563
DOI:
10.3877/cma.j.issn.1674-6902.2021.06.037
摘要:
-
Abstract:
-

参考文献/References:

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备注/Memo

备注/Memo:
基金项目: 陕西省重点研发项目(2019SF-009)
通信作者: 金发光, Email: jinfag@fmmu.edu.cn
更新日期/Last Update: 2021-12-20