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2021, 01, v.35 32-36
人工智能与医学影像学的应用发展
基金项目(Foundation): 国家自然科学基金委专项项目(L1924064)
邮箱(Email): nervegu@ntu.edu.cn;
DOI: 10.19767/j.cnki.32-1412.2021.01.009
摘要:

人工智能在科技创新的推动下高速发展,人工智能与医学影像学相结合不仅改变了影像诊断模式,更参与影像工作流程的每个方面,极大地提高该领域的诊疗水平,提高工作效率。本文通过文献检索与分析,从人工智能及其发展、人工智能在医学影像中的应用及人工智能在医学影像领域中的挑战等方面进行了论述。

Abstract:

Artificial intelligence maintains rapid development under the push of technological innovation. The combination of artificial intelligence and medical imaging not only changes the diagnostic mode of medical imaging, but also improves the level of diagnosis and treatment as well as work efficiency through the entire working process in this area.This manuscript reviews the development of artificial intelligence, the applications and challenges of artificial intelligence in medical imaging by literature retrieval and analysis.

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基本信息:

DOI:10.19767/j.cnki.32-1412.2021.01.009

中图分类号:TP18;R445

引用信息:

[1]张愉,徐来,房梦雅,等.人工智能与医学影像学的应用发展[J].交通医学,2021,35(01):32-36.DOI:10.19767/j.cnki.32-1412.2021.01.009.

基金信息:

国家自然科学基金委专项项目(L1924064)

引用

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