Back to
Projects List
Third molar extraction classification
Key Investigators
- Roberto Veraldi (Magna Graecia University of Catanzaro, Italy)
- Amerigo Giudice (Magna Graecia University of Catanzaro, Italy)
- Paolo Zaffino (Magna Graecia University of Catanzaro, Italy)
- Maria Francesca Spadea (Karlsruhe Institute of Technology, Germany)
Presenter location: In-person
Project Description
The classification of third molar extraction is a key factor in oral surgery. Developing a deep learning model to classify the difficulty score of extraction would be useful for surgeons and dentists.
This project aims to create a Slicer module that allows clinicians to obtain an extraction-difficulty grade by providing just the patient CT.
Objective
To expose an already developed deep learning classifier in Slicer.
Approach and Plan
- Identification of optimal classification parameters
- Expose weights into Slicer
- Generate extension
Progress and Next Steps
Done during this week:
- Obtained pth file with the model for deep learning classification.
- Implemented module extention in Slicer.
- Tested if the same label obtained in testing was the same that appeared in output in Slicer.
Future steps:
- Integrating weight files for the specific classification (maybe giving to the clinicians the possibility to download locally the right weights for their specific tasks).
- Specify what label score means.
- Other modifications for a general usage of the extention.
Illustrations
Background and References
- GitHub Project Page: https://github.com/robsver/3DSlicerClassificator
- Classification score table for third molar extraction: Juodzbalys, Gintaras, and Povilas Daugela. “Mandibular third molar impaction: review of literature and a proposal of a classification.” Journal of oral & maxillofacial research 4.2 (2013).