2023
DOI: 10.3390/app13158758
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Spatial Attention Mechanism and Cascade Feature Extraction in a U-Net Model for Enhancing Breast Tumor Segmentation

Abstract: In the field of medical imaging, the accurate segmentation of breast tumors is a critical task for the diagnosis and treatment of breast cancer. To address the challenges posed by fuzzy boundaries, vague tumor shapes, variation in tumor size, and illumination variation, we propose a new approach that combines a U-Net model with a spatial attention mechanism. Our method utilizes a cascade feature extraction technique to enhance the subtle features of breast tumors, thereby improving segmentation accuracy. In ad… Show more

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Cited by 10 publications
(1 citation statement)
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“…This integration enables a more precise spatial aggregation of contextual information, resulting in improved accuracy. Cross-fusion channel attention (CAS-UNet) (You et al, 2023) introduces a method for segmenting blood vessels in the retina that relies on an attention mechanism. The method makes three modifications to the U-Net architecture: first, it replaces the original convolutional block with an enhanced attention block; second, it incorporates an additional AG to the skip-connection layer for spatial enhancement; and third, it employs the SoftPool pooling method to minimize information loss.…”
Section: Related Workmentioning
confidence: 99%
“…This integration enables a more precise spatial aggregation of contextual information, resulting in improved accuracy. Cross-fusion channel attention (CAS-UNet) (You et al, 2023) introduces a method for segmenting blood vessels in the retina that relies on an attention mechanism. The method makes three modifications to the U-Net architecture: first, it replaces the original convolutional block with an enhanced attention block; second, it incorporates an additional AG to the skip-connection layer for spatial enhancement; and third, it employs the SoftPool pooling method to minimize information loss.…”
Section: Related Workmentioning
confidence: 99%