This retrospective study explored the value of texture
analysis in predicting the stage, differentiation and Ki-67 status of pretreatment
advanced cervical cancer. Multi-class radiomics feature extraction was
performed on the maximum enhancement (ME) and maximum relative enhancement
(MRE) maps from DCE-MRI. A prediction model using a machine
learning-XGB classifier showed the mean
sensitivities of predicting FIGOⅡb-Ⅲa, poor differentiation and high Ki-67 status were 0.767,
0.963 and 0.967; specificities were 0.958, 0.361 and 0.694 , and AUCs were
0.910, 0.920 and 0.840 respectively. DCE-MRI textural parameters have potential
as non-invasive imaging biomarkers in predicting histopathology in advanced
cervical cancer.
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