Title :
Data-Guided Brain Deformation Modeling: Evaluation of a 3-D Adjoint Inversion Method in Porcine Studies
Author :
Lunn, K.E. ; Paulsen, K.D. ; Fenghong Liu ; Kennedy, F.E. ; Hartov, A. ; Roberts, D.W.
Author_Institution :
Thayer Sch. of Eng., Hanover, NH
Abstract :
Biomechanical models of brain deformation are useful tools for estimating parenchymal shift that results during open cranial procedures. Intraoperative data is likely to improve model estimates, but incorporation of such data into the model is not trivial. This study tests the adjoint equations method (AEM) for data assimilation as a viable approach for integrating displacement data into a brain deformation model. AEM was applied to two porcine experiments. AEM-based estimates were compared both to measured displacement data [from computed tomography (CT) scans] and to model solutions obtained without the guidance of sparse data, which we term the best prior estimate (BPE). Additionally, the sensitivity of the AEM solution to inverse parameter selection was investigated. The results suggest that it is most important to estimate the size of the variance in the measurement error correctly, make the correlation length long and estimate displacement (over stress) boundary conditions. Application of AEM shows an average 33% improvement over BPE. This paper represents the first evidence of successful use of the AEM technique in three dimensions with experimental data validation. The guidelines established for selection of model parameters are starting points for further optimization of the method under clinical conditions
Keywords :
biomechanics; brain models; computerised tomography; deformation; measurement errors; optimisation; 3-D adjoint inversion method; adjoint equations method; best prior estimate; biomechanical models; computed tomography; correlation length; data-guided brain deformation modeling; displacement boundary conditions; inverse parameter selection; measurement error; open cranial procedures; optimization; parenchymal shift estimation; porcine; Brain modeling; Computed tomography; Cranial; Data assimilation; Deformable models; Displacement measurement; Equations; Measurement errors; Stress; Testing; Brain deformation model; brain shift; data assimilation; image-guided neurosurgery; Algorithms; Animals; Brain; Computer Simulation; Elasticity; Imaging, Three-Dimensional; Models, Biological; Physical Stimulation; Radiographic Image Interpretation, Computer-Assisted; Stress, Mechanical; Swine; Viscosity;
Journal_Title :
Biomedical Engineering, IEEE Transactions on
DOI :
10.1109/TBME.2006.881771