dc.description.abstract | Breast cancer is a prevalent and potentially life-threatening disease that affects a
significant number of people globally. Timely detection and accurate diagnosis are crucial
in improving treatment outcomes and reducing mortality rates associated with this
condition. Histopathology, a well-established diagnostic method, has been widely used for
detection and determining breast cancer stage. However, the traditional manual process of
histopathological analysis is labor-intensive and prone to human errors. To address these
challenges, this study proposes a novel approach utilizing convolutional neural network
(CNN) methods to classify breast cancer from histopathological images of lymph node
sections. By leveraging the power of transfer learning, a pre-trained DenseNet architecture
is employed and fine-tuned to achieve the best possible results. The developed model is
then deployed in a web-based application, enabling pathologists to access and utilize it
conveniently, benefiting from its simplicity and rapid performance. | en_US |