Preliminary Results Comparing Thin Plate Splines with Finite Element Methods for Modeling
Brain Deformation during Neurosurgery using Intraoperative Ultrasound
Frisken, S. ✉; Luo, M.; Machado, I.; Unadkat, P.; Juvekar, P.; Bunevicius, A.; Toews, M.; Wells, M.; Miga, M. I.; Golby, A. J.
Brain shift compensation attempts to model the deformation of the brain which occurs
during the surgical removal of brain tumors to enable mapping of presurgical image
data into patient coordinates during surgery and thus improve the accuracy and utility
of neuro-navigation. We present preliminary results from clinical tumor resections
that compare two methods for modeling brain deformation, a simple thin plate spline
method that interpolates displacements and a more complex finite element method (FEM)
that models physical and geometric constraints of the brain and its material properties.
Both methods are driven by the same set of displacements at locations surrounding
the tumor. These displacements were derived from sets of corresponding matched features
that were automatically detected using the SIFT-Rank algorithm. The deformation accuracy
was tested using a set of manually identified landmarks. The FEM method requires significantly
more preprocessing than the spline method but both methods can be used to model deformations
in the operating room in reasonable time frames. Our preliminary results indicate
that the FEM deformation model significantly out-performs the spline-based approach
for predicting the deformation of manual landmarks While both methods compensate for
brain shift, this work suggests that models that incorporate biophysics and geometric
constraints may be more accurate.