| Literature DB >> 27163322 |
Jianping Huang1,2, Lihui Wang3, Chunyu Chu1, Yanli Zhang1, Wanyu Liu1,2, Yuemin Zhu1,2.
Abstract
Diffusion tensor magnetic resonance (DTMR) imaging and diffusion tensor imaging (DTI) have been widely used to probe noninvasively biological tissue structures. However, DTI suffers from long acquisition times, which limit its practical and clinical applications. This paper proposes a new Compressed Sensing (CS) reconstruction method that employs joint sparsity and rank deficiency to reconstruct cardiac DTMR images from undersampled k-space data. Diffusion-weighted images acquired in different diffusion directions were firstly stacked as columns to form the matrix. The matrix was row sparse in the transform domain and had a low rank. These two properties were then incorporated into the CS reconstruction framework. The underlying constrained optimization problem was finally solved by the first-order fast method. Experiments were carried out on both simulation and real human cardiac DTMR images. The results demonstrated that the proposed approach had lower reconstruction errors for DTI indices, including fractional anisotropy (FA) and mean diffusivities (MD), compared to the existing CS-DTMR image reconstruction techniques.Entities:
Keywords: Diffusion tensor imaging; compressed sensing; low rank; sparsity constraint
Mesh:
Year: 2016 PMID: 27163322 DOI: 10.3233/THC-161186
Source DB: PubMed Journal: Technol Health Care ISSN: 0928-7329 Impact factor: 1.285