Using curve-fitting of curvilinear features for assessing registration of clinical neuropathology with in vivo MRI.

Med Image Comput Comput Assist Interv

Medical Image Computing, University of Kent, Canterbury CT2 7PD, United Kingdom.

Published: December 2008

Traditional neuropathological examination provides information about neurological disease or injury of a patient at a high-resolution level. Correlating this type of post mortem diagnosis with in vivo image data of the same patient acquired by non-invasive tomographic scans greatly complements the interpretation of any disease or injury. We present the validation of a registration method for correlating macroscopic pathological images with MR images of the same patient. This also allows for 3-D mapping of the distribution of pathological changes throughout the brain. As the validation deals with datasets of widely differing sampling, we propose a method using smooth curvilinear anatomical features in the brain which allows interpolation between wide-spaced samples. Curvilinear features are common anatomically, and if selected carefully have the potential to allow determination of the accuracy of co-registration across large areas of a volume of interest.

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Source
http://dx.doi.org/10.1007/978-3-540-85990-1_126DOI Listing

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