Volume Analysis, eXplainability and Interpretability, Volume-AXI, is an explainability approach for classification of bone and teeth structural defects in CBCT scans gray-level images. We propose to develop interpretable AI algorithms to visualize diagnostic features in dental and craniofacial conditions. This work is built on neural network models in Python, specifically using the MONAI framework,
The first clinical application of Volume-AXI is related to dentistry, aiming to identify the position of tooth impaction and damage to adjacente structures.
Data Preparation and Pre-processing
Model Development and Training: Explore and select appropriate neural network architectures (e.g., CNNs, U-Nets) for image classification and feature visualization.
Explainability and Visualization Techniques: Implement methods to make AI decisions transparent and understandable such as Grad-CAM.
Validation and Testing
Documentation and Training: Create comprehensive documentation and user guides explaining the functionality and benefits of the AI tools.
Next step: