LV-GAN: A deep learning approach for limited-view optoacoustic imaging based on hybrid datasets

Tong Lu, Tingting Chen, Feng Gao, Biao Sun, Vasilis Ntziachristos, Jiao Li

Research output: Contribution to journalArticlepeer-review

29 Scopus citations

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.

Original languageEnglish
Article numbere202000325
JournalJournal of Biophotonics
Volume14
Issue number2
DOIs
StatePublished - Feb 2021

Keywords

  • biomedical applications
  • deep learning
  • high quality
  • limited-view
  • optoacoustic imaging

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