Frontiers in Bioengineering and Biotechnology (Dec 2022)

Advances of deep learning in electrical impedance tomography image reconstruction

  • Tao Zhang,
  • Tao Zhang,
  • Tao Zhang,
  • Xiang Tian,
  • Xiang Tian,
  • XueChao Liu,
  • XueChao Liu,
  • JianAn Ye,
  • JianAn Ye,
  • Feng Fu,
  • Feng Fu,
  • XueTao Shi,
  • XueTao Shi,
  • RuiGang Liu,
  • RuiGang Liu,
  • CanHua Xu,
  • CanHua Xu

DOI
https://doi.org/10.3389/fbioe.2022.1019531
Journal volume & issue
Vol. 10

Abstract

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Electrical impedance tomography (EIT) has been widely used in biomedical research because of its advantages of real-time imaging and nature of being non-invasive and radiation-free. Additionally, it can reconstruct the distribution or changes in electrical properties in the sensing area. Recently, with the significant advancements in the use of deep learning in intelligent medical imaging, EIT image reconstruction based on deep learning has received considerable attention. This study introduces the basic principles of EIT and summarizes the application progress of deep learning in EIT image reconstruction with regards to three aspects: a single network reconstruction, deep learning combined with traditional algorithm reconstruction, and multiple network hybrid reconstruction. In future, optimizing the datasets may be the main challenge in applying deep learning for EIT image reconstruction. Adopting a better network structure, focusing on the joint reconstruction of EIT and traditional algorithms, and using multimodal deep learning-based EIT may be the solution to existing problems. In general, deep learning offers a fresh approach for improving the performance of EIT image reconstruction and could be the foundation for building an intelligent integrated EIT diagnostic system in the future.

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