Artificial Intelligences offer a wide range of applications. There is more and more research about its uses in the medical field and especially on patient images. The question of trustworthiness is on every mind, every time a prediction is given. For that reason, we propose to develop interpretable deep learning models for the automated classification of impacted maxillary canines and assessment of root resorption in adjacent teeth using Cone-Beam Computed Tomography (CBCT). Deep learning models based on Convolutional Neural Network (CNN) architectures were developed and evaluated for classifying impacted maxillary canine position and detecting root resorption. Gradient-weighted Class Activation Mapping (Grad-CAM) was integrated to generate visual explanations of the CNN predictions, enhancing interpretability and trustworthiness for clinical adoption.
We are using MONAI frameworks in this project.
Data Preparation and Pre-processing
Model Development and Training: Explore and select appropriate neural network architectures (e.g., ResNet, SENets) 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 Steps:
Class 1 predicted as a class 1. (right impacted canine)
The number of layers included change the precision of the focus on the tooth: