Abstract
Abstract
Breast cancer is a severe health issue that affects women all over the world, underscoring the need for reliable and effective screening techniques. The early detection, diagnosis, and treatment of breast cancer are made possible by computer-aided diagnostic (CAD) systems that rely on mammograms. This study introduces a unique deep-learning model that uses transfer learning to identify and categorize breast cancer automatically. Deep convolutional neural networks have been shown in several recent studies to diagnose breast cancer in mammograms with performance comparable to or even outperforming that of human experts. To extract attributes from the Mammographic Image Analysis Society (MIAS) dataset, the proposed model uses pre-trained convolutional neural network (CNN) architectures like ResNet50 and Visual Geometry Group networks (VGG)-16. This novel deep-learning model holds significant potential for enhancing the efficiency and accuracy of breast cancer detection and classification. A preprint has previously been published [1]
Publisher
Research Square Platform LLC
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