• Chinese Journal of Lasers
  • Vol. 50, Issue 21, 2107107 (2023)
Tieni Li1, Dongyuan Liu1, Pengrui Zhang1, Zhiyong Li1, and Feng Gao1、2、*
Author Affiliations
  • 1College of Precision Instruments and Optoelectronics Engineering, Tianjin University, Tianjin 300072, China
  • 2Tianjin Key Laboratory of Biomedical Detecting Techniques and Instruments, Tianjin 300072,China
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    DOI: 10.3788/CJL230734 Cite this Article Set citation alerts
    Tieni Li, Dongyuan Liu, Pengrui Zhang, Zhiyong Li, Feng Gao. Deep Convolutional Encoder‑Decoder Neural Network Approach for Functional Near Infrared Spectroscopic Imaging[J]. Chinese Journal of Lasers, 2023, 50(21): 2107107 Copy Citation Text show less
    Setup of training dataset. (a) Two-layer brain-emulating model; (b) task-related HbO and HbR concentration change curves and the absorption perturbation in CC layer when θT=1; (c) time courses of the absorption perturbation induced by the physiological interferences in SS layer when θI=1
    Fig. 1. Setup of training dataset. (a) Two-layer brain-emulating model; (b) task-related HbO and HbR concentration change curves and the absorption perturbation in CC layer when θT=1; (c) time courses of the absorption perturbation induced by the physiological interferences in SS layer when θI=1
    DCNN model structure
    Fig. 2. DCNN model structure
    Simulation results of DCNN under weak interference. (a) A comparison of reconstructed absorption efficiency perturbation images in CC-layer; (b) quantitative evaluation of reconstruction
    Fig. 3. Simulation results of DCNN under weak interference. (a) A comparison of reconstructed absorption efficiency perturbation images in CC-layer; (b) quantitative evaluation of reconstruction
    Simulation results of DCNN under strong interference
    Fig. 4. Simulation results of DCNN under strong interference
    Reconstructed images of double targets
    Fig. 5. Reconstructed images of double targets
    Setup of phantom experiments. (a) Structural representation of the polyformaldehyde phantom; (b) picture of the polyformaldehyde phantom
    Fig. 6. Setup of phantom experiments. (a) Structural representation of the polyformaldehyde phantom; (b) picture of the polyformaldehyde phantom
    Phantom experimental results
    Fig. 7. Phantom experimental results
    3D-DCNN model structure
    Fig. 8. 3D-DCNN model structure
    Simulation results of 3D-DCNN. (a) A comparison of absorption coefficient perturbation images in CC layer reconstructed at the selected time points; (b) quantitative estimation comparison of reconstruction results at the selected time points; (c) time-courses of average absorption coefficient perturbation in the deep activated region
    Fig. 9. Simulation results of 3D-DCNN. (a) A comparison of absorption coefficient perturbation images in CC layer reconstructed at the selected time points; (b) quantitative estimation comparison of reconstruction results at the selected time points; (c) time-courses of average absorption coefficient perturbation in the deep activated region
    Tieni Li, Dongyuan Liu, Pengrui Zhang, Zhiyong Li, Feng Gao. Deep Convolutional Encoder‑Decoder Neural Network Approach for Functional Near Infrared Spectroscopic Imaging[J]. Chinese Journal of Lasers, 2023, 50(21): 2107107
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