| Literature DB >> 33747672 |
Yaqiong Chai1,2, Botian Xu1, Kangning Zhang3, Natasha Lepore1,2, John Wood1,4.
Abstract
Magnetic resonance imaging (MRI) images acquired as multislice two-dimensional (2D) images present challenges when reformatted in orthogonal planes due to sparser sampling in the through-plane direction. Restoring the "missing" through-plane slices, or regions of an MRI image damaged by acquisition artifacts can be modeled as an image imputation task. In this work, we consider the damaged image data or missing through-plane slices as image masks and proposed an edge-guided generative adversarial network to restore brain MRI images. Inspired by the procedure of image inpainting, our proposed method decouples image repair into two stages: edge connection and contrast completion, both of which used general adversarial networks (GAN). We trained and tested on a dataset from the Human Connectome Project to test the application of our method for thick slice imputation, while we tested the artifact correction on clinical data and simulated datasets. Our Edge-Guided GAN had superior PSNR, SSIM, conspicuity and signal texture compared to traditional imputation tools, the Context Encoder and the Densely Connected Super Resolution Network with GAN (DCSRN-GAN). The proposed network may improve utilization of clinical 2D scans for 3D atlas generation and big-data comparative studies of brain morphometry.Entities:
Keywords: artifact correction; edge; generative adversarial network; image restoration; imputation; magnetic resonance imaging
Year: 2020 PMID: 33747672 PMCID: PMC7977797 DOI: 10.1109/access.2020.2992204
Source DB: PubMed Journal: IEEE Access ISSN: 2169-3536 Impact factor: 3.367