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Abstract #3621

Noninvasive Identification of Breast Cancer HER2 Status by Deep Learning on Multiparametric MRI Images

YANG YANG1, Zixin Luo2, Haoyu Pan2, Yuan Guo3, Wenjie Tang3, Xinhua Wei3, and Bingsheng Huang2
1suining central hospital, Suining, China, 2Shenzhen University Medical School, Shenzhen, China, 3Guangzhou First People’s Hospital, South China University of Technology, Guangzhou, China

Synopsis

Keywords: Diagnosis/Prediction, Breast, Multiparametric magnetic resonance imaging

Motivation: Multiparametric magnetic resonance imaging (mpMRI) offers valuable insights for predicting HER2 expression. However, when fusing mpMRI features, redundancy or wastage of information may impact model performance.

Goal(s): Our aim was to construct an effective deep learning model by incorporating the interrelated and complementary features of different MRI sequences.

Approach: Leveraging a contrastive learning approach, we aligned features across sequences and within each sequence separately to obtain sequence-shared and sequence-specific features. Subsequently, these two features were fused by utilizing an adaptive weighting scheme.

Results: When compared to widely used deep learning approaches, our method achieved the best AUC of 0.743.

Impact: The method explored the interrelated and complementary features of different MRI sequences, which outperformed widely used deep learning methods in terms of performance. This method was expected to have a positive impact on the accurate prediction of HER2 expression status.

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