MRANet: A Modified Residual Attention Networks for Lung and Colon Cancer Classification
Journal:
arXiv
Published Date:
Dec 23, 2024
Abstract
Lung and colon cancers are predominant contributors to cancer mortality.
Early and accurate diagnosis is crucial for effective treatment. By utilizing
imaging technology in different image detection, learning models have shown
promise in automating cancer classification from histopathological images. This
includes the histopathological diagnosis, an important factor in cancer type
identification. This research focuses on creating a high-efficiency
deep-learning model for identifying lung and colon cancer from
histopathological images. We proposed a novel approach based on a modified
residual attention network architecture. The model was trained on a dataset of
25,000 high-resolution histopathological images across several classes. Our
proposed model achieved an exceptional accuracy of 99.30%, 96.63%, and 97.56%
for two, three, and five classes, respectively; those are outperforming other
state-of-the-art architectures. This study presents a highly accurate deep
learning model for lung and colon cancer classification. The superior
performance of our proposed model addresses a critical need in medical AI
applications.