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Learning soft tissue deformation from incremental simulations.

Authors :
Lampen N
Kim D
Xu X
Fang X
Lee J
Kuang T
Deng HH
Liebschner MAK
Gateno J
Yan P
Source :
Medical physics [Med Phys] 2024 Dec 06. Date of Electronic Publication: 2024 Dec 06.
Publication Year :
2024
Publisher :
Ahead of Print

Abstract

Background: Surgical planning for orthognathic procedures demands swift and accurate biomechanical modeling of facial soft tissues. Efficient simulations are vital in the clinical pipeline, as surgeons may iterate through multiple plans. Biomechanical simulations typically use the finite element method (FEM). Prior works divide FEM simulations into increments to enhance convergence and accuracy. However, this practice elongates simulation time, thereby impeding clinical integration. To accelerate simulations, deep learning (DL) models have been explored. Yet, previous efforts either perform simulations in a single step or neglect the temporal aspects in incremental simulations.<br />Purpose: This study investigates the use of spatiotemporal incremental modeling for biomechanics simulations of facial soft tissue.<br />Methods: We implement the method using a graph neural network. Our method synergizes spatial features with temporal aggregation using DL networks trained on incremental FEM simulations from 17 subjects that underwent orthognathic surgery.<br />Results: Our proposed spatiotemporal incremental method achieved a mean accuracy of 0.37 mm with a mean computation time of 1.52 s. In comparison, a spatial-only incremental method yielded a mean accuracy of 0.44 mm and a mean computation time of 1.60 s, while a spatial-only single-step method yielded a mean accuracy of 0.41 mm and a mean computation time of 0.05 s.<br />Conclusions: Statistical analysis demonstrated that the spatiotemporal incremental method reduced mean errors compared to the spatial-only incremental method, emphasizing the importance of incorporating temporal information in incremental simulations. Overall, we successfully implemented spatiotemporal incremental learning tailored to simulate soft tissue deformation while substantially reducing simulation time compared to FEM.<br /> (© 2024 American Association of Physicists in Medicine.)

Details

Language :
English
ISSN :
2473-4209
Database :
MEDLINE
Journal :
Medical physics
Publication Type :
Academic Journal
Accession number :
39642013
Full Text :
https://doi.org/10.1002/mp.17554