Research Progress of MRI Radiomics in Diagnosis, Treatment and Prognosis of Cervical Cancer
DOI:
https://doi.org/10.54097/j9twkd93Keywords:
Cervical Cancer, Magnetic Resonanceimagin, RadiomicsAbstract
cervical cancer (CC) is one of the most common gynecological malignancies. Early diagnosis can improve the prognosis of patients. Magnetic resonanceimagin (MRI) can clearly show the size and location of tumor lesions and the relationship with adjacent tissues, and has high sensitivity and specificity. It is an important evaluation method for the diagnosis, staging and prognosis of CC. Relative to traditional MRI images, radiomics is analyzed by extracting a large number of features from the image images, which can be used to analyze the image, it has been gradually used in CC lymph node metastasis, parauterine invasion, vascular invasion, tumor staging and prognosis. Therefore, this article reviews the research progress of MRI-based radiomics in the diagnosis, treatment and prognosis of CC.
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