Title :
Model-Based Tomographic Reconstruction of Objects Containing Known Components
Author :
Stayman, J.W. ; Otake, Y. ; Prince, J.L. ; Khanna, A.J. ; Siewerdsen, J.H.
Author_Institution :
Dept. of Biomed. Eng., Johns Hopkins Univ., Baltimore, MD, USA
Abstract :
The likelihood of finding manufactured components (surgical tools, implants, etc.) within a tomographic field-of-view has been steadily increasing. One reason is the aging population and proliferation of prosthetic devices, such that more people undergoing diagnostic imaging have existing implants, particularly hip and knee implants. Another reason is that use of intraoperative imaging (e.g., cone-beam CT) for surgical guidance is increasing, wherein surgical tools and devices such as screws and plates are placed within or near to the target anatomy. When these components contain metal, the reconstructed volumes are likely to contain severe artifacts that adversely affect the image quality in tissues both near and far from the component. Because physical models of such components exist, there is a unique opportunity to integrate this knowledge into the reconstruction algorithm to reduce these artifacts. We present a model-based penalized-likelihood estimation approach that explicitly incorporates known information about component geometry and composition. The approach uses an alternating maximization method that jointly estimates the anatomy and the position and pose of each of the known components. We demonstrate that the proposed method can produce nearly artifact-free images even near the boundary of a metal implant in simulated vertebral pedicle screw reconstructions and even under conditions of substantial photon starvation. The simultaneous estimation of device pose also provides quantitative information on device placement that could be valuable to quality assurance and verification of treatment delivery.
Keywords :
biological tissues; biomedical equipment; computerised tomography; image reconstruction; maximum likelihood estimation; medical image processing; metals; optimisation; prosthetics; surgery; artifact-free images; cone-beam computerised tomography; diagnostic imaging; hip implants; image quality; intraoperative imaging; knee implants; maximization method; metal; model-based penalized-likelihood estimation approach; model-based tomographic object reconstruction; plates; prosthetic devices; quality assurance; simulated vertebral pedicle screw reconstructions; substantial photon starvation; surgical guidance; surgical tools; tissues; tomographic feld-of-view; treatment delivery verification; volume reconstruction; Image reconstruction; Implants; Interpolation; Kernel; Metals; Solid modeling; Vectors; CT reconstruction; implant imaging; metal artifact reduction; penalized-likelihood estimation; Algorithms; Artifacts; Bone Screws; Computer Simulation; Models, Theoretical; Phantoms, Imaging; Radiographic Image Enhancement; Surgery, Computer-Assisted; Tomography, X-Ray Computed;
Journal_Title :
Medical Imaging, IEEE Transactions on
DOI :
10.1109/TMI.2012.2199763