Landmark Constrained Non-rigid Image Registration with Anisotropic Tolerances

The registration of medical images containing soft tissue like inner organs, muscles, fat , etc., is challenging due to complex deformations between different image acquisitions. Despite different approaches to get smooth transformations the number of feasible transformations is still huge and ambiguous local image contents may lead to unwanted results. The incorporation of additional user knowledge is a promising way to restrict the number of possible non-rigid transformations and to increase the probability to find a clinically reasonable solution. A small number of pre-operatively and interactively defined landmarks is a straight forward example for such expert knowledge. Typically, when vessels appear in the image data, a natural way is to determine landmarks as vessel branchings. Here, we present a generalization that allows also the usage of corresponding vessel segments. Therefor, we introduce a registration scheme that can handle anisotropic localization uncertainties. The contribution of this work is a consistent modeling of a combined intensity and landmark registration approach as an inequality constrained optimization problem. This guarantees that each reference landmark lies within an error ellipsoid around the corresponding template landmark at the end of the registration process. First results are presented for the registration of preoperative CT images to intra-operative 3D ultrasound data of the liver as an important issue in an intra-operative navigation system.

[1]  Thomas Lange,et al.  Matching CT and ultrasound data of the liver by landmark constrained image registration , 2009, Medical Imaging.

[2]  David J. Hawkes,et al.  Registration of freehand 3D ultrasound and magnetic resonance liver images , 2004, Medical Image Anal..

[3]  Thomas Lange,et al.  3D ultrasound-CT registration of the liver using combined landmark-intensity information , 2008, International Journal of Computer Assisted Radiology and Surgery.

[4]  Thomas Lange,et al.  Vessel-Based Non-Rigid Registration of MR/CT and 3D Ultrasound for Navigation in Liver Surgery , 2003, Computer aided surgery : official journal of the International Society for Computer Aided Surgery.

[5]  Karl Rohr,et al.  Hybrid physics-based elastic image registration using approximating splines , 2008, SPIE Medical Imaging.

[6]  Thomas Lange,et al.  Landmark Constrained Non-parametric Image Registration with Isotropic Tolerances , 2009, Bildverarbeitung für die Medizin.

[7]  Maxime Descoteaux,et al.  Validation of vessel-based registration for correction of brain shift , 2007, Medical Image Anal..

[8]  Nicholas Ayache,et al.  Rigid registration of 3-D ultrasound with MR images: a new approach combining intensity and gradient information , 2001, IEEE Transactions on Medical Imaging.

[9]  Thomas Lange,et al.  Image registration for CT and intra-operative ultrasound data of the liver , 2008, SPIE Medical Imaging.

[10]  Julien Jomier,et al.  Registration and Analysis of Vascular Images , 2003, International Journal of Computer Vision.

[11]  Hans Bock,et al.  Numerical Methods for Parameter Estimation in Nonlinear Differential Algebraic Equations , 2007 .

[12]  Jan Modersitzki,et al.  Numerical Methods for Image Registration , 2004 .

[13]  Thomas Lange,et al.  Feasibility of Navigated Resection of Liver Tumors Using Multiplanar Visualization of Intraoperative 3-dimensional Ultrasound Data , 2007, Annals of surgery.

[14]  Adriaan van den Bos Numerical Methods for Parameter Estimation , 2007 .

[15]  Jan Modersitzki,et al.  Combination of automatic non-rigid and landmark based registration: the best of both worlds , 2003, SPIE Medical Imaging.

[16]  Jürgen Weese,et al.  Landmark-based elastic registration using approximating thin-plate splines , 2001, IEEE Transactions on Medical Imaging.

[17]  Bernhard Preim,et al.  Analysis of vasculature for liver surgical planning , 2002, IEEE Transactions on Medical Imaging.

[18]  Nassir Navab,et al.  Automatic CT-ultrasound registration for diagnostic imaging and image-guided intervention , 2008, Medical Image Anal..

[19]  Thomas Lange,et al.  A Distance Measure for Non-Rigid Registration of Geometrical Models to Intensity Data , 2007 .