DocumentCode :
787358
Title :
In vivo quantification of retraction deformation modeling for updated image-guidance during neurosurgery
Author :
Platenik, Leah A. ; Miga, Michael I. ; Roberts, David W. ; Lunn, Karen E. ; Kennedy, Francis E. ; Hartov, Alex ; Paulsen, Keith D.
Author_Institution :
Thayer Sch. of Eng., Dartmouth Coll., Hanover, NH, USA
Volume :
49
Issue :
8
fYear :
2002
Firstpage :
823
Lastpage :
835
Abstract :
The use of coregistered preoperative anatomical scans to provide navigational information in the operating room has greatly benefited the field of neurosurgery. Nonetheless, it has been widely acknowledged that significant errors between the operating field and the preoperative images are generated as surgery progresses. Quantification of tissue shift can be accomplished with volumetric intraoperative imaging; however, more functional, lower cost alternative solutions to this challenge are desirable. We are developing the strategy of exploiting a computational model driven by sparse data obtained from intraoperative ultrasound and cortical surface tracking to warp preoperative images to reflect the current state of the operating field. This paper presents an initial quantification of the predictive capability of the current model to computationally capture tissue deformation during retraction in the porcine brain. Performance validation is achieved through comparisons of displacement and pressure predictions to experimental measurements obtained from computed tomographic images and pressure sensor recordings. Group results are based upon a generalized set of boundary conditions for four subjects that, on average, account for at least 75% of tissue motion generated during interhemispheric retraction. Individualized boundary conditions can improve the degree of data-model match by 10% or more but warrant further study. Overall, the level of quantitative agreement achieved in these experiments is encouraging for updating preoperative images to reflect tissue deformation resulting from retraction, especially since model improvements are likely as a result of the intraoperative constraints that can be applied through sparse data collection.
Keywords :
biomedical MRI; brain models; computerised tomography; image registration; medical image processing; mesh generation; surgery; 3-D biphasic computational prescription; MRI; brain deformation; computed tomographic images; coregistered preoperative anatomical scans; cortical surface tracking; field registration; image warping; in vivo quantification; intraoperative ultrasound; mesh generation; navigational information; neurosurgery; porcine brain; predictive capability; pressure sensor recordings; retraction deformation modeling; sparse data; subsurface deformation model; tissue shift; updated image-guidance; Boundary conditions; Computational modeling; Cost function; Deformable models; Image generation; In vivo; Navigation; Neurosurgery; Surgery; Ultrasonic imaging; Animals; Brain; Computer Simulation; Diagnostic Imaging; Elasticity; Finite Element Analysis; Intraoperative Period; Magnetic Resonance Imaging; Models, Biological; Monitoring, Intraoperative; Motion; Pressure; Reproducibility of Results; Rheology; Sensitivity and Specificity; Stereotaxic Techniques; Stress, Mechanical; Surgical Equipment; Swine; Tomography, X-Ray Computed;
fLanguage :
English
Journal_Title :
Biomedical Engineering, IEEE Transactions on
Publisher :
ieee
ISSN :
0018-9294
Type :
jour
DOI :
10.1109/TBME.2002.800760
Filename :
1019446
Link To Document :
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