| Literature DB >> 29181430 |
Jianing Wang1, Yuan Liu1, Jack H Noble1, Benoit M Dawant1.
Abstract
Medical image registration establishes a correspondence between images of biological structures, and it is at the core of many applications. Commonly used deformable image registration methods depend on a good preregistration initialization. We develop a learning-based method to automatically find a set of robust landmarks in three-dimensional MR image volumes of the head. These landmarks are then used to compute a thin plate spline-based initialization transformation. The process involves two steps: (1) identifying a set of landmarks that can be reliably localized in the images and (2) selecting among them the subset that leads to a good initial transformation. To validate our method, we use it to initialize five well-established deformable registration algorithms that are subsequently used to register an atlas to MR images of the head. We compare our proposed initialization method with a standard approach that involves estimating an affine transformation with an intensity-based approach. We show that for all five registration algorithms the final registration results are statistically better when they are initialized with the method that we propose than when a standard approach is used. The technique that we propose is generic and could be used to initialize nonrigid registration algorithms for other applications.Keywords: image preregistration initialization; landmark selection; random sample consensus; regression forest
Year: 2017 PMID: 29181430 PMCID: PMC5685808 DOI: 10.1117/1.JMI.4.4.044005
Source DB: PubMed Journal: J Med Imaging (Bellingham) ISSN: 2329-4302