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Revolutionizing Cancer Diagnosis with Deep Learning: A Case Study Using U-Net | IEEE Conference Publication | IEEE Xplore

Revolutionizing Cancer Diagnosis with Deep Learning: A Case Study Using U-Net


Abstract:

The U-Net architecture is a convolutional neural network model that is well-known for its skills in biomedical image segmentation. This study investigates the revolutiona...Show More

Abstract:

The U-Net architecture is a convolutional neural network model that is well-known for its skills in biomedical image segmentation. This study investigates the revolutionary potential that the U-Net architecture presents in the context of cancer diagnosis. We guarantee that the input is of high quality by using sophisticated preprocessing methods, which we do by constructing a robust \mathbf{U}-Net-based system that is specifically designed for the segmentation and classification of tumour regions in medical imaging data. An exhaustive examination that makes use of criteria such as the Dice similarity coefficient, precision, recall, and F 1 score indicates that our model performs substantially better than conventional techniques when it comes to identifying and distinguishing malignant tissues. Case studies that cover a wide range of cancer types provide further validation of the flexibility and practical application of the system. These studies also highlight the significant influence that deep learning has on increasing diagnosis accuracy, lowering the risk of human error, and overall patient outcomes in the field of cancer treatment.
Date of Conference: 18-20 September 2024
Date Added to IEEE Xplore: 15 January 2025
ISBN Information:
Conference Location: Greater Noida, India

References

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