| Literature DB >> 33098215 |
Tong Lu1, Tingting Chen1, Feng Gao1,2, Biao Sun3, Vasilis Ntziachristos4,5, Jiao Li1,2.
Abstract
The optoacoustic imaging (OAI) methods are rapidly evolving for resolving optical contrast in medical imaging applications. In practice, measurement strategies are commonly implemented under limited-view conditions due to oversized image objectives or system design limitations. Data acquired by limited-view detection may impart artifacts and distortions in reconstructed optoacoustic (OA) images. We propose a hybrid data-driven deep learning approach based on generative adversarial network (GAN), termed as LV-GAN, to efficiently recover high quality images from limited-view OA images. Trained on both simulation and experiment data, LV-GAN is found capable of achieving high recovery accuracy even under limited detection angles less than 60° . The feasibility of LV-GAN for artifact removal in biological applications was validated by ex vivo experiments based on two different OAI systems, suggesting high potential of a ubiquitous use of LV-GAN to optimize image quality or system design for different scanners and application scenarios.Entities:
Keywords: biomedical applications; deep learning; high quality; limited-view; optoacoustic imaging
Mesh:
Year: 2020 PMID: 33098215 DOI: 10.1002/jbio.202000325
Source DB: PubMed Journal: J Biophotonics ISSN: 1864-063X Impact factor: 3.207