2023
DOI: 10.1038/s41598-023-48553-z
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Lesion detection in women breast’s dynamic contrast-enhanced magnetic resonance imaging using deep learning

Sudarshan Saikia,
Tapas Si,
Darpan Deb
et al.

Abstract: Breast cancer is one of the most common cancers in women and the second foremost cause of cancer death in women after lung cancer. Recent technological advances in breast cancer treatment offer hope to millions of women in the world. Segmentation of the breast’s Dynamic Contrast-Enhanced Magnetic Resonance Imaging (DCE-MRI) is one of the necessary tasks in the diagnosis and detection of breast cancer. Currently, a popular deep learning model, U-Net is extensively used in biomedical image segmentation. This art… Show more

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Cited by 2 publications
(1 citation statement)
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“…Nuclei U-Net11, EG-TransUNet, FRUNet, GA-Unet, Sharp U-Net [31], [32], [33], [25], [26] Breast U-Net11, EG-TransUNet, ResUNet, Dense UNet, DUNet, Attention U-Net, UNet++, MultiResUNet, RAUNet, Inception U-Net and U-Net GAN, ELU-Net [31], [34], [32], [30] Skin MAAU, Residual Attention U-Net, Sharp U-Net, MOLD-Net [35], [36], [26], [21] Heart and veins U-Net, SAB-Net [28], [17] Polyp EG-TransUNet, SAB-Net, Sharp U-Net [32], [17], [26] Gland FRUNet, Spatial-Channel Attention U-Net [33], [37] Priscilla Benedetti et al Sudarshan Saikia et al [34] introduced an empirical study for the segmentation of breast cancer using variations. The authors conclude that ResUNet has the best score, followed by base U-Net, MulitiResUNet, and Attention U-Net.…”
Section: Category U-net Architectures Papersmentioning
confidence: 99%
“…Nuclei U-Net11, EG-TransUNet, FRUNet, GA-Unet, Sharp U-Net [31], [32], [33], [25], [26] Breast U-Net11, EG-TransUNet, ResUNet, Dense UNet, DUNet, Attention U-Net, UNet++, MultiResUNet, RAUNet, Inception U-Net and U-Net GAN, ELU-Net [31], [34], [32], [30] Skin MAAU, Residual Attention U-Net, Sharp U-Net, MOLD-Net [35], [36], [26], [21] Heart and veins U-Net, SAB-Net [28], [17] Polyp EG-TransUNet, SAB-Net, Sharp U-Net [32], [17], [26] Gland FRUNet, Spatial-Channel Attention U-Net [33], [37] Priscilla Benedetti et al Sudarshan Saikia et al [34] introduced an empirical study for the segmentation of breast cancer using variations. The authors conclude that ResUNet has the best score, followed by base U-Net, MulitiResUNet, and Attention U-Net.…”
Section: Category U-net Architectures Papersmentioning
confidence: 99%