Motivation: Understanding the prognostic factors in breast cancer is crucial for improving clinical diagnosis and treatment. Goal(s): This study aims to evaluate the predictive value of multimodal MRI parameters for determining human epidermal growth factor receptor 2 (HER-2) status in breast cancer. Approach: A retrospective analysis was conducted using multimodal MRI techniques, including DCE-MRI, MUSE-IVIM, IDEAL-IQ, and MAGiC, on patients diagnosed with breast cancer. Quantitative parameters were extracted and analyzed. Results: Significant differences in MRI parameters between HER-2 positive and negative groups were found, with combined models showing high diagnostic performance (AUC=0.822) for predicting HER-2 expression. Impact: This study's findings could enhance non-invasive HER-2 status assessment in breast cancer, aiding clinicians in personalized treatment planning. It opens avenues for further research on multimodal MRI's role in predicting other molecular characteristics, improving diagnostic precision.
Feng et al. (Tue,) studied this question.
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