Automated least-squares calibration of the coregistration parameters for a micro PET-CT system

A previously developed method derives co-registration parameters from PET and CT images of a four-point-source calibration phantom by manually adjusting the offsets and orientation of the CT image to achieve alignment with the PET image in a graphic viewer. This manual process is tedious and can be inaccurate, especially when rotational offsets exist. An automated segmentation method has been developed, based on thresholding and application of constraints on the sizes of point sources in the images. After point sources are identified on PET and CT images, co-registration is performed using an analytic rigid-body registration algorithm which is based on singular value decomposition and minimization of the co-registration error. The co-registration parameters thus derived can then be applied to co-register other PET and CT images from the same system. Twenty PET-CT images of the calibration phantom at various locations and/or orientations were obtained on a Siemens Inveon® Multi-Modality scanner. We tested the use of from 1 to 10 data sets to derive the co-registration parameters, and found that the co-registration accuracy improves with increasing number of data sets until it stabilizes. Co-registration of PET-CT images with an accuracy of 0.33±0.11 mm has been achieved by this method on the Inveon Multi-Modality scanner.

[1]  Keh-Shih Chuang,et al.  A three-dimensional registration method for automated fusion of micro PET-CT-SPECT whole-body images , 2005, IEEE Transactions on Medical Imaging.

[2]  J. Mountz,et al.  A reference system for neuroanatomical localization on functional reconstructed cerebral images. , 1989, Journal of computer assisted tomography.

[3]  Olivier D. Faugeras,et al.  A 3-D Recognition and Positioning Algorithm Using Geometrical Matching Between Primitive Surfaces , 1983, IJCAI.

[4]  L. Feldkamp,et al.  Practical cone-beam algorithm , 1984 .

[5]  David W Townsend,et al.  PET/CT today and tomorrow. , 2004, Journal of nuclear medicine : official publication, Society of Nuclear Medicine.

[6]  Patrick L Chow,et al.  Attenuation correction for small animal PET tomographs , 2005, Physics in medicine and biology.

[7]  Guy Marchal,et al.  Multimodality image registration by maximization of mutual information , 1997, IEEE Transactions on Medical Imaging.

[8]  D. Hill,et al.  Medical image registration , 2001, Physics in medicine and biology.

[9]  C. Wilson,et al.  Multimodality imaging of brain structures for stereotactic surgery. , 1990, Radiology.

[10]  Michel Defrise,et al.  Exact and approximate rebinning algorithms for 3-D PET data , 1997, IEEE Transactions on Medical Imaging.

[11]  K. S. Arun,et al.  Least-Squares Fitting of Two 3-D Point Sets , 1987, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[12]  J. Links,et al.  Program for PET image alignment: effects on calculated differences in cerebral metabolic rates for glucose. , 1990, Journal of nuclear medicine : official publication, Society of Nuclear Medicine.