4.4 Article

A generative adversarial network for artifact removal in photoacoustic computed tomography with a linear-array transducer

期刊

EXPERIMENTAL BIOLOGY AND MEDICINE
卷 245, 期 7, 页码 597-605

出版社

SAGE PUBLICATIONS LTD
DOI: 10.1177/1535370220914285

关键词

Photoacoustic imaging; deep learning; artifact removal; generative adversarial network; bioimaging; photoacoustic computed tomography

资金

  1. National Institute of Health [1R01EB028143, R01 NS111039, R21 EB027304, R43 CA243822, R43 CA239830, R44 HL138185]
  2. Duke MEDx Basic Science Grant
  3. Duke Center for Genomic and Computational Biology Faculty Research Grant
  4. Duke Institute of Brain Science Incubator Award
  5. American Heart Association Collaborative Sciences Award [18CSA34080277]

向作者/读者索取更多资源

With balanced spatial resolution, penetration depth, and imaging speed, photoacoustic computed tomography (PACT) is promising for clinical translation such as in breast cancer screening, functional brain imaging, and surgical guidance. Typically using a linear ultrasound (US) transducer array, PACT has great flexibility for hand-held applications. However, the linear US transducer array has a limited detection angle range and frequency bandwidth, resulting in limited-view and limited-bandwidth artifacts in the reconstructed PACT images. These artifacts significantly reduce the imaging quality. To address these issues, existing solutions often have to pay the price of system complexity, cost, and/or imaging speed. Here, we propose a deep-learning-based method that explores the Wasserstein generative adversarial network with gradient penalty (WGAN-GP) to reduce the limited-view and limited-bandwidth artifacts in PACT. Compared with existing reconstruction and convolutional neural network approach, our model has shown improvement in imaging quality and resolution. Our results on simulation, phantom, and in vivo data have collectively demonstrated the feasibility of applying WGAN-GP to improve PACT's image quality without any modification to the current imaging set-up. Impact statement This study has the following main impacts. It offers a promising solution for removing limited-view and limited-bandwidth artifact in PACT using a linear-array transducer and conventional image reconstruction, which have long hindered its clinical translation. Our solution shows unprecedented artifact removal ability for in vivo image, which may enable important applications such as imaging tumor angiogenesis and hypoxia. The study reports, for the first time, the use of an advanced deep-learning model based on stabilized generative adversarial network. Our results have demonstrated its superiority over other state-of-the-art deep-learning methods.

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