Objective: Precise segmentation of breast ultrasound images is essential for early breast cancer screening. Convolutional neural networks (CNNs) have made great progress in lesion segmentation in breast ultrasound ima...
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Objective: Precise segmentation of breast ultrasound images is essential for early breast cancer screening. Convolutional neural networks (CNNs) have made great progress in lesion segmentation in breast ultrasound images. These methods still have three limitations: (1) They lack the ability to model global information;(2) The importance of interaction between different scale features is not sufficiently emphasized;(3) The abilities of feature fusion and lesion region correction in the decoding process are ignored. Methods: Considering the above problems, we propose a Multi-level feature interaction and dual-Dimension adaptive reinforcement network (MFAR-Net). Our design is as follows: (1) Introduce transformer as a global context-aided encoding branch (GCA) to establish long-term dependencies;(2) The multi-level feature interaction (MFI) module uses the feature interaction of different receptive fields to capture detailed information and alleviate the influence of grid;(3) dual-dimension adaptive reinforcement (DAR) enhances and corrects the original features in both spatial and channel dimension, providing a reliable premise for subsequent supplementary detailed information. Main results: Extensive experiments results on four public ultrasound datasets show that the proposed MFAR-Net outperforms other state-of-the-art (SOTA) methods. Furthermore, compared with the suboptimal method, we significantly improve the Dice metrics by 2.68% on the BUSImalignant datasets, showing strong competitiveness. Significance: (1) The segmentation accuracy of breast lesions is further improved under the premise of a small number of parameters;(2) The ability to adapt to other ultrasonic images is maintained, and our network has strong robustness and good generalization performance.
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