We tried to construct MRI-based multiparametric model to predict triple negative (TN) subtype among invasive cancers presenting as masses using 165 lesions (including 26 TN subtype). Maximum slope (MS) and time to enhancement (TTE) from ultrafast (UF)-DCE MRI, apparent diffusion coefficient (ADC), signal to noise ratio on T2-WI, rim enhancement on different phases of the DCE MRI were examined with univariate and multivariate logistic regression analysis. The model using MS from UF-DCE MRI and rim enhancement from early phase of DCE MRI demonstrated the AUC of 0.74 in identifying TN subtype, indicating the MRI’s potential to identify TN subtype noninvasively.
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