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Advances in artificial intelligence of cardiovascular imaging
LI Rui  ZHAO Shihua 

Cite this article as: Li R, Zhao SH. Advances in artificial intelligence of cardiovascular imaging. Chin J Magn Reson Imaging, 2019, 10(7): 551-555. DOI:10.12015/issn.1674-8034.2019.07.014.


[Abstract] Cardiovascular disease is the first cause of death in China, accompanied with increasing incidence year by year. In recent years, with the rapid development of artificial intelligence, how to better integrate artificial intelligence with cardiovascular imaging, and subsequently participate in the diagnosis and treatment of cardiovascular diseases is the key point and hotspots of future research. This paper will review the application and development of artificial intelligence in cardiovascular imaging.
[Keywords] artificial intelligence;cardiovascular imaging

LI Rui Department of Magnetic Resonance Imaging, Fuwai Hospital, Chinese Academy of Medical Sciences, Beijing 100037, China; Department of Radiology, Affiliated Hospital of North Sichuan Medical College/Sichuan Key Laboratory of Medical Imaging, Nanchong 637000, China

ZHAO Shihua* Department of Magnetic Resonance Imaging, Fuwai Hospital, Chinese Academy of Medical Sciences, Beijing 100037, China

*Corresponding to: Zhao SH, E-mail: cjrzhaoshihua2009@163.com

Conflicts of interest   None.

ACKNOWLEDGMENTS  National Natural Science Foundation Priority International Cooperation Projects No. 81620108015 National Natural Science Foundation Youth Fund No. 81801674
Received  2019-01-02
Accepted  2019-05-27
DOI: 10.12015/issn.1674-8034.2019.07.014
Cite this article as: Li R, Zhao SH. Advances in artificial intelligence of cardiovascular imaging. Chin J Magn Reson Imaging, 2019, 10(7): 551-555. DOI:10.12015/issn.1674-8034.2019.07.014.

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