Abstract:Spatial and temporal features obtained from dynamic contrast-enhanced magnetic resonance imaging (DCE-MRI) are both used for the prediction of breast tumors. Previous studies mainly focused on the shallow spatiotemporal features, and the effectiveness of the deep spatiotemporal features is still unclear. To this end, a multiscale residual spatiotemporal model (MRSM) based on ResNet (2+1)D was proposed for breast tumor prediction. This study included 232 patients from Taizhou Central Hospital, with 85 benign cases and 147 malignant cases. The DCE-MRI data consisted of one precontrast image and eight postcontrast images.Compared with the original ResNet (2+1)D, MRSM method added a multiscale module and residual module. Specifically, the multi-scale module employed two independent dual-path spatial convolutions and dual-path temporal convolutions to effectively capture the spatio-temporal features of the breast tumor. The performance of the MRSM method was evaluated using the area under the receiver operating characteristic (ROC) curve (AUC). Compared to the ResNet (2+1)D method (AUC=0.974 0) or existing methods (The best AUC=0.960 8), this method achieved a higher AUC of 0.987 0.In conclusion, the MRSM method is an effective approach for accurate prediction of breast tumors.
张亮亮, 郑航, 刘家伟, 王朕朕, 毕科健. 基于多尺度残差时空模型的乳腺肿瘤预测[J]. 中国生物医学工程学报, 2026, 45(1): 38-46.
Zhang Liangliang, Zheng Hang, Liu Jiawei, Wang Zhenzhen, Bi Kejian. Breast Tumor Prediction Based on Multiscale Residual Spatiotemporal Model. Chinese Journal of Biomedical Engineering, 2026, 45(1): 38-46.
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