Title :
Anatomically Guided Registration for Multimodal Images
Author :
Datar, Manasi ; Gopalakrishnan, Girish ; Ranjan, Sohan ; Mullick, Rakesh
Author_Institution :
Imaging Technol., GE Global Res., Bangalore
Abstract :
With an increase in full-body scans and longitudinal acquisitions to track disease progression, it becomes significant to find correspondence between multiple images. One example would be the monitoring size/location of tumors using PET images during chemotherapy to determine treatment progression. While there is a need to go beyond a single parametric transform to recover misalignments, pure deformable solutions become complex, time-consuming and unnecessary at times. Simple anatomically guided approach for whole body image registration offers enhanced alignment of large coverage inter-scan studies. In this experiment, we provide anatomy specific transformations to capture their independent motions. This solution is characterized by an automatic segmentation of regions in the image, followed by a custom registration and volume stitching. We have tested this algorithm on phantom images as well as clinical longitudinal datasets. We were successful in proving that decoupling transformations improves the overall registration quality.
Keywords :
biomedical imaging; image segmentation; monitoring; tumours; PET images; anatomically guided registration; anatomy specific transformations; chemotherapy; disease progression tracking; full-body scans; image segmentation; medical imaging; multimodal images; treatment progression; tumors monitoring; Anatomy; Computed tomography; Diseases; Head; Image motion analysis; Joints; Mutual information; Neoplasms; Optical imaging; Pathology;
Conference_Titel :
Applied Imagery and Pattern Recognition Workshop, 2006. AIPR 2006. 35th IEEE
Conference_Location :
Washington, DC
Print_ISBN :
0-7695-2739-6
Electronic_ISBN :
1550-5219
DOI :
10.1109/AIPR.2006.14