| Literature DB >> 29062159 |
Jinpeng Zhang1, Lichi Zhang1,2, Lei Xiang1, Yeqin Shao3, Guorong Wu2, Xiaodong Zhou4, Dinggang Shen2,5, Qian Wang1.
Abstract
It is fundamentally important to fuse the brain atlas from magnetic resonance (MR) images for many imaging-based studies. Most existing works focus on fusing the atlases from high-quality MR images. However, for low-quality diagnostic images (i.e., with high inter-slice thickness), the problem of atlas fusion has not been addressed yet. In this paper, we intend to fuse the brain atlas from the high-thickness diagnostic MR images that are prevalent for clinical routines. The main idea of our works is to extend the conventional groupwise registration by incorporating a novel super-resolution strategy. The contribution of the proposed super-resolution framework is two-fold. First, each high-thickness subject image is reconstructed to be isotropic by the patch-based sparsity learning. Then, the reconstructed isotropic image is enhanced for better quality through the random-forest-based regression model. In this way, the images obtained by the super-resolution strategy can be fused together by applying the groupwise registration method to construct the required atlas. Our experiments have shown that the proposed framework can effectively solve the problem of atlas fusion from the low-quality brain MR images.Entities:
Keywords: Brain atlas; groupwise registration; image enhancement; random forest regression; sparsity learning; super-resolution
Year: 2016 PMID: 29062159 PMCID: PMC5650249 DOI: 10.1016/j.patcog.2016.09.019
Source DB: PubMed Journal: Pattern Recognit ISSN: 0031-3203 Impact factor: 7.740