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Research progress of MRI based radiomics in differentiating high-grade gliomas from solitary brain metastases
LÜ Jianbo  QI Xin  CHEN Zhigeng  SHA Lin 

Cite this article as: Lü JB, Qi X, Chen ZG, et al. Research progress of MRI based radiomics in differentiating high-grade gliomas from solitary brain metastases[J]. Chin J Magn Reson Imaging, 2021, 12(6): 108-110. DOI:10.12015/issn.1674-8034.2021.06.022.


[Abstract] High grade gliomas and solitary brain metastases are two common intracranial tumors, which can not be accurately distinguished by magnetic resonance imaging alone. Radiomics can reflect the heterogeneity of tumor lesions by extracting high-throughput features from multi-mode imaging, which can provide a new method for the differentiation of the two. This paper reviews the research on the identification of high grade gliomas and solitary brain metastases by the combination of radiomics and magnetic resonance imaging, and discusses the challenges and opportunities faced by the research of radiomics.
[Keywords] radiomics;magnetic resonance imaging;high grade gliomas;solitary brain metastases

LÜ Jianbo   QI Xin   CHEN Zhigeng   SHA Lin*  

Department of Radiology, the Second Affiliated Hospital of Dalian Medical University, Dalian 116011, China

Sha L, E-mail: drshalin@163.com

Conflicts of interest   None.

Received  2020-11-17
Accepted  2021-01-27
DOI: 10.12015/issn.1674-8034.2021.06.022
Cite this article as: Lü JB, Qi X, Chen ZG, et al. Research progress of MRI based radiomics in differentiating high-grade gliomas from solitary brain metastases[J]. Chin J Magn Reson Imaging, 2021, 12(6): 108-110. DOI:10.12015/issn.1674-8034.2021.06.022.

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