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Opportunities and challenges of cerebrovascular imaging: Achievements and prospects over the past decade in China
HU Bin  SHI Zhao  ZHANG Longjiang 

Cite this article as: Hu B, Shi Z, Zhang LJ. Opportunities and challenges of cerebrovascular imaging: Achievements and prospects over the past decade in China[J]. Chin J Magn Reson Imaging, 2022, 13(10): 53-60. DOI:10.12015/issn.1674-8034.2022.10.007.


[Abstract] Cerebrovascular disease is a critical health problem in China due to its high incidence, long duration, and high morbidity and mortality. With the rapid iteration of medical equipment and imaging techniques, radiology has played an important role in the precise diagnosis, treatment, risk stratification, and prognosis assessment of cerebrovascular disease. It has already played an indispensable role in clinical work of cerebrovascular disease. In recent years, early detection and treatment of cerebrovascular diseases have gradually become the health consensus of the whole society, and cerebrovascular imaging technology is moving towards a more standardized, optimized, and convenient direction for strategy configuration. Meanwhile, the introduction of advanced data processing technology of cerebrovascular disease provides more information about the structure and function of cerebrovascular disease and improves the comprehensive evaluation of cerebrovascular disease. In the past decade, in the face of the wave of continuous innovation of new technologies, China's neuroradiologists have been promoting the diagnosis, treatment, prevention, and scientific research of cerebrovascular diseases towards a more precise and scientific direction. Further research on cerebrovascular imaging based on clinical scientific issues will further enhance China radiology's influence in the world.
[Keywords] cerebrovascular disease;stroke;computed tomography angiography;magnetic resonance angiography;precise diagnosis and treatment;risk stratification;quantified diagnosis;hemodynamic;radiomics;artificial intelligence

HU Bin   SHI Zhao   ZHANG Longjiang*  

Department of Diagnostic Radiology, Jinling Hospital, Medical School of Nanjing University/General Hospital of Eastern Theater Command, Nanjing 210002, China

Zhang LJ, E-mail: kevinzhlj@163.com

Conflicts of interest   None.

ACKNOWLEDGMENTS National Natural Science Foundation of China (No. 81830057, 82230068, 82102155).
Received  2022-08-16
Accepted  2022-10-14
DOI: 10.12015/issn.1674-8034.2022.10.007
Cite this article as: Hu B, Shi Z, Zhang LJ. Opportunities and challenges of cerebrovascular imaging: Achievements and prospects over the past decade in China[J]. Chin J Magn Reson Imaging, 2022, 13(10): 53-60. DOI:10.12015/issn.1674-8034.2022.10.007.

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