PURPOSE
To reduce the experience dependence during the orthognathic surgical planning that involves virtually simulating the corrective procedure for jaw deformities.
METHODS
We introduce a geometric deep learning framework for generating reference facial bone shape models for objective guidance in surgical planning. First, we propose a surface deformation network to warp a patient's deformed bone to a set of normal bones for generating a dictionary of patient-specific normal bony shapes. Subsequently, sparse representation learning is employed to estimate a reference shape model based on the dictionary.
RESULTS
We evaluated our method on a clinical dataset containing 24 patients, and compared it with a state-of-the-art method that relies on landmark-based sparse representation. Our method yields significantly higher accuracy than the competing method for estimating normal jaws, and maintains the midfaces of patients' facial bones as well as the conventional way.
CONCLUSIONS
Experimental results indicate that our method generates accurate shape models that meet clinical standards.