Photoacoustics (Mar 2022)

Full-view in vivo skin and blood vessels profile segmentation in photoacoustic imaging based on deep learning

  • Cao Duong Ly,
  • Van Tu Nguyen,
  • Tan Hung Vo,
  • Sudip Mondal,
  • Sumin Park,
  • Jaeyeop Choi,
  • Thi Thu Ha Vu,
  • Chang-Seok Kim,
  • Junghwan Oh

Journal volume & issue
Vol. 25
p. 100310

Abstract

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Photoacoustic (PA) microscopy allows imaging of the soft biological tissue based on optical absorption contrast and spatial ultrasound resolution. One of the major applications of PA imaging is its characterization of microvasculature. However, the strong PA signal from skin layer overshadowed the subcutaneous blood vessels leading to indirectly reconstruct the PA images in human study. Addressing the present situation, we examined a deep learning (DL) automatic algorithm to achieve high-resolution and high-contrast segmentation for widening PA imaging applications. In this research, we propose a DL model based on modified U-Net for extracting the relationship features between amplitudes of the generated PA signal from skin and underlying vessels. This study illustrates the broader potential of hybrid complex network as an automatic segmentation tool for the in vivo PA imaging. With DL-infused solution, our result outperforms the previous studies with achieved real-time semantic segmentation on large-size high-resolution PA images.

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