❓ Why CNN Models? Why ResNet-50 over DenseNet-121?

We chose CNN models as they have proven effective in medical image classification, especially where anatomical structures need to be spatially interpreted.

Among the tested architectures, ResNet-50 provided a good balance between model complexity, training time, and interpretability, which was critical for our Grad-CAM–based explainability.

Although DenseNet-121 showed slightly higher accuracy, ResNet-50 was chosen for final Grad-CAM visualization because:


❓No augmentation. Why?

We deliberately did not apply data augmentation in this experiment because:

In future work, domain-specific augmentation strategies could be explored—such as intensity variation or speckle simulation.


❓Why only Grad-CAM?

We used Grad-CAM because: