2023
DOI: 10.3390/cancers15041343
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Development of Deep Learning with RDA U-Net Network for Bladder Cancer Segmentation

Abstract: In today’s high-order health examination, imaging examination accounts for a large proportion. Computed tomography (CT), which can detect the whole body, uses X-rays to penetrate the human body to obtain images. Its presentation is a high-resolution black-and-white image composed of gray scales. It is expected to assist doctors in making judgments through deep learning based on the image recognition technology of artificial intelligence. It used CT images to identify the bladder and lesions and then segmented … Show more

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Cited by 4 publications
(1 citation statement)
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“…The residual block differs from the convolution block in that it has an additional branch, which is constructed as identity mapping to simplify the learning process and alleviate the problem of gradient vanishing. Residual learning has already been proven to be effective and has been applied to many tasks related to medical images [44,45,59].…”
Section: Hierarchical Training Strategymentioning
confidence: 99%
“…The residual block differs from the convolution block in that it has an additional branch, which is constructed as identity mapping to simplify the learning process and alleviate the problem of gradient vanishing. Residual learning has already been proven to be effective and has been applied to many tasks related to medical images [44,45,59].…”
Section: Hierarchical Training Strategymentioning
confidence: 99%