EAI4CC: deciphering lung and colon cancer categorization within a federated learning framework harnessing the power of explainable artificial intelligence
Abstract
Advances between medical imaging and artificial intelligence (AI) have led to improvements
in cancer diagnosis and classification. This paper provides a new framework
called Explainable AI for cancer categorization (EAI4CC), which has been developed
to define lung and colorectal cancer classification in an integrated manner,
addressing privacy concerns by enabling collaborative model training using Federated
Learning. In this study, EAI4CC used convolutional neural networks (CNNs)
such as VGG 16, VGG19, ResNet50, DenseNet121 and Vision Transformer to analyze
histopathological images from lung and colon tissue. In Federated Learning architecture
it ensures data privacy while enabling model training on dispersed dataset.
Furthermore, state-of-the-art artificial intelligence (XAI) presentation techniques are
used. In particular gradient-weighted class activation mapping (GradCAM) combined
with EAI4CC to elucidate the decision-making process of the model. The
evaluation system shows good performance in important evaluation measures such
as accuracy, precision, specificity, sensitivity, and F1 score. More importantly, it
enhances model interpretation capabilities, explaining each prediction. This gives
doctors clarity and confidence in AI-assisted diagnosis. Interpretable and reliable
methods allow AI technologies to be responsibly integrated into the critical cancer
research workflow to demonstrate the performance of model measures. In summary,
this breakthrough sets a standard to establish a framework for AI to achieve more
accurate, transparent, and equitable clinical decision-making.