Medizinische Universität Graz - Research portal

Logo MUG Resarch Portal

Selected Publication:

SHR Neuro Cancer Cardio Lipid Metab Microb

Schicho, K; Figl, M; Seemann, R; Ewers, R; Lambrecht, JT; Wagner, A; Watzinger, F; Baumann, A; Kainberger, F; Fruehwald, J; Klug, C.
Accuracy of treatment planning based on stereolithography in computer assisted surgery.
Med Phys. 2006; 33(9): 3408-3417. Doi: 10.1118/1.2242014
Web of Science PubMed FullText FullText_MUG

 

Leading authors Med Uni Graz
Schicho Kurt
Altmetrics:

Dimensions Citations:

Plum Analytics:

Scite (citation analytics):

Abstract:
Three-dimensional stereolithographic models (SL models), made of solid acrylic resin derived from computed-tomography (CT) data, are an established tool for preoperative treatment planning in numerous fields of medicine. An innovative approach, combining stereolithography with computer-assisted point-to-point navigation, can support the precise surgical realization of a plan that has been defined on an SL model preoperatively. The essential prerequisites for the application of such an approach are: (1) The accuracy of the SL models (including accuracy of the CT scan and correspondence of the model with the patient's anatomy) and (2) the registration method used for the transfer of the plan from the SL model to the patient (i.e., whether the applied registration markers can be added to the SL model corresponding to the markers at the patient with an accuracy that keeps the "cumulative error" at the end of the chain of errors, in the order of the accuracy of contemporary navigation systems). In this study, we focus on these two topics: By applying image-matching techniques, we fuse the original CT data of the patient with the corresponding CT data of the scanned SL model, and measure the deviations of defined parameter (e.g., distances between anatomical points). To evaluate the registration method used for the planning transfer, we apply a point-merge algorithm, using four marker points that should be located at exactly corresponding positions at the patient and at connective bars that are added to the surface of the SL model. Again, deviations at defined anatomical structures are measured and analyzed statistically. Our results prove sufficient correspondence of the two data sets and accuracy of the registration method for routine clinical application. The evaluation of the SL model accuracy revealed an arithmetic mean of the relative deviations from 0.8% to 5.4%, with an overall mean deviation of 2.2%. Mean deviations of the investigated anatomical structures ranged from 0.8 mm to 3.2 mm. An overall mean (comprising all structures) of 2.5 mm was found. The fiducial registration error of the point-merge algorithm ranged from 1.0 mm to 1.4 mm. The evaluated chain of errors showed a mean deviation of 2.5 mm. This study verifies that preoperative planning on SL models and intraoperative transfer of this plan with computer assisted navigation is a suitable and sufficiently reliable method for clinical applications.
Find related publications in this database (using NLM MeSH Indexing)
Algorithms -
Craniotomy - methods
Humans -
Imaging, Three-Dimensional - methods
Photogrammetry - methods
Preoperative Care - methods
Radiographic Image Enhancement - methods
Radiographic Image Interpretation, Computer-Assisted - methods
Reproducibility of Results -
Sensitivity and Specificity -
Skull - radiography Skull - surgery
Subtraction Technique -
Surgery, Computer-Assisted - methods
Tomography, X-Ray Computed - methods

Find related publications in this database (Keywords)
computer assisted surgery
registration
accuracy of 3-dimensional stereolithography
treatment planning
© Med Uni GrazImprint