| Literature DB >> 27816859 |
Min Chen1, Aaron Carass2, Amod Jog3, Junghoon Lee4, Snehashis Roy5, Jerry L Prince6.
Abstract
Multi-modal deformable registration is important for many medical image analysis tasks such as atlas alignment, image fusion, and distortion correction. Whereas a conventional method would register images with different modalities using modality independent features or information theoretic metrics such as mutual information, this paper presents a new framework that addresses the problem using a two-channel registration algorithm capable of using mono-modal similarity measures such as sum of squared differences or cross-correlation. To make it possible to use these same-modality measures, image synthesis is used to create proxy images for the opposite modality as well as intensity-normalized images from each of the two available images. The new deformable registration framework was evaluated by performing intra-subject deformation recovery, intra-subject boundary alignment, and inter-subject label transfer experiments using multi-contrast magnetic resonance brain imaging data. Three different multi-channel registration algorithms were evaluated, revealing that the framework is robust to the multi-channel deformable registration algorithm that is used. With a single exception, all results demonstrated improvements when compared against single channel registrations using the same algorithm with mutual information.Entities:
Keywords: Brain imaging; Image processing; Image synthesis; Multi-channel image registration; Multi-contrast magnetic resonance imaging; Multi-modal image registration; Multi-modal imaging
Mesh:
Year: 2016 PMID: 27816859 PMCID: PMC5239759 DOI: 10.1016/j.media.2016.10.005
Source DB: PubMed Journal: Med Image Anal ISSN: 1361-8415 Impact factor: 8.545