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人工智能在脑卒中神经影像中的应用

韩小伟 李茗 张冰

韩小伟, 李茗, 张冰. 人工智能在脑卒中神经影像中的应用[J]. 协和医学杂志, 2021, 12(5): 749-754. doi: 10.12290/xhyxzz.2021-0491
引用本文: 韩小伟, 李茗, 张冰. 人工智能在脑卒中神经影像中的应用[J]. 协和医学杂志, 2021, 12(5): 749-754. doi: 10.12290/xhyxzz.2021-0491
HAN Xiaowei, LI Ming, ZHANG Bing. Application of Artificial Intelligence in Neuroimaging of Stroke[J]. Medical Journal of Peking Union Medical College Hospital, 2021, 12(5): 749-754. doi: 10.12290/xhyxzz.2021-0491
Citation: HAN Xiaowei, LI Ming, ZHANG Bing. Application of Artificial Intelligence in Neuroimaging of Stroke[J]. Medical Journal of Peking Union Medical College Hospital, 2021, 12(5): 749-754. doi: 10.12290/xhyxzz.2021-0491

人工智能在脑卒中神经影像中的应用

doi: 10.12290/xhyxzz.2021-0491
基金项目: 

国家自然科学基金 81720108022

国家自然科学基金 81971596

国家自然科学基金 81701672

江苏省人社厅“六大人才高峰项目”高层次人才 WSN-138

南京市医学科技发展资金 YKK16112

江苏省卫健委“科教强卫”工程医学重点人才 ZDRCA2016064

详细信息
    通讯作者:

    张冰  电话:025-83106666,E-mail:zhangbing_nanjing@nju.edu.cn

  • 中图分类号: R743; R-1

Application of Artificial Intelligence in Neuroimaging of Stroke

Funds: 

National Natural Science Foundation of China 81720108022

National Natural Science Foundation of China 81971596

National Natural Science Foundation of China 81701672

The Project of the "Sixth Peak of Talented People" WSN-138

Nanjing Medical Science and Technology Development Fund YKK16112

Key Medical Talents of the Jiangsu Province, the"13th Five-year"Health Promotion Project of the Jiangsu Province ZDRCA2016064

More Information
  • 摘要: 近年来,人工智能在计算机科学领域快速崛起。医学成像过程中产生了海量图像信息,因此非常适合采用人工智能技术进行相关数据处理。脑卒中患者神经影像在临床诊断、治疗及随访评估中非常关键,人工智能技术在基于脑卒中影像数据的处理和分析中发挥着越来越重要的作用。本文主要回顾人工智能技术在缺血性与出血性脑卒中神经影像应用中的研究进展,重点关注缺血性脑卒中的自动检测、责任脑区缺血状态判断及治疗评估,以及出血性脑卒中的智能诊断、量化分析及治疗评估;同时对基于脑卒中影像智能诊断系统的临床转化应用现状进行分析,探讨当前人工智能在脑卒中神经影像应用过程中存在的主要挑战,并对未来发展前景进行展望。
    作者贡献:韩小伟、李茗负责文献检索并撰写初稿;张冰负责选题构思及文章修订。
    利益冲突:
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出版历程
  • 收稿日期:  2021-06-23
  • 录用日期:  2021-07-29
  • 网络出版日期:  2021-08-19
  • 刊出日期:  2021-10-12

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