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Correlation analysis among parameters of IVIM-DWI model, prognostic factors and molecular subtypes of breast cancer |
MA Dejing1, LU Feng2, ZHANG Hu1, DONG Jingmin1, MA Mimi1 |
1 Department of Imaging, Binzhou Medical University Hospital, Binzhou 256603, P.R. China; 2 Department of Pulmonary and Critical Care medicine,Binzhou Medical University Hospital |
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Abstract Objective To explore the correlation analysis among the parameters of IVIM-DWI model and the prognostic factors and molecular subtypes of breast cancer. Methods The DCE-MRI and IVIM-DWI data of 152 patients with breast cancer were retrospective analyzed, the parameters of IVIM-DWI (f value, D value and D* value) and the expression of prognostic factors (ER, PR, HER-2, Ki-67) were used to analyze the correlation among IVIM-DWI parameters and prognostic factors. The molecular subtypes of the lesions were determined by the immunohistochemical Results and then the correlations between the IVIM-DWI parameters and molecular subtypes were analyzed. Results There was no significant difference of D value, D*value and f value between the ER positive and negative groups. The D value was negatively correlated with the expression of PR, HER-2 receptors and Ki-67. The D* value was positive correlated with the expression of HER-2. The D value of the Luminal A type group was significantly higher than that of the other groups; The D value of the triple negative breast cancer was the lowest among of them, there was significant difference of Luminal A type and HER overexpression, however, there was no significant difference between the triple negative breast cancer and the Luminal B type. D* value and f value had no significant difference among the molecular subtypes. Conclusion The D value had some correlation with PR, HER-2 receptors and Ki-67 expression. And the D value might have a potential value in distinguishing different molecular subtypes of breast cancer.
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Received: 19 March 2019
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