Opt Lett. 2023 Jun 1;48(11):2913-2916. doi: 10.1364/OL.489480.
Transmissive laser speckle imaging (LSI) is useful for monitoring large field-of-view (FOV) blood flow in thick tissues. However, after longer transmissions, the contrast of the transmitted speckle images is more likely to be blurred by multiple scattering, resulting in decreased accuracy and spatial resolution of deep vessels. This study proposes a deep-learning-based strategy for high spatiotemporal resolution three-dimensional (3D) reconstruction from a single transilluminated laser speckle contrast image, providing more structural and functional details without multifocus two-dimensional (2D) imaging or 3D optical imaging with point/line scanning. Based on the correlation transfer equation, a large training dataset is generated by convolving vessel masks with depth-dependent point spread functions (PSF). The UNet and ResNet are used for deblurring and depth estimation. The blood flow in the reconstructed 3D vessels is estimated by a depth-dependent contrast model. The proposed method is evaluated with simulated data and phantom experiments, achieving high-fidelity structural reconstruction with a depth-independent estimation of blood flow. This fast 3D blood flow imaging technique is suitable for real-time monitoring of thick tissue and the diagnosis of vascular diseases.
透射式激光散斑成像(LSI)可用于监测厚组织中的大视场(FOV)血流。然而,经过较长时间的传输后,多次散射更有可能使透射散斑图像的对比度变得模糊,从而降低深层血管的准确性和空间分辨率。本研究提出了一种基于深度学习的策略,可从单个透射激光散斑对比度图像中进行高时空分辨率的三维(3D)重建,在不进行多焦点二维(2D)成像或使用点/线扫描的 3D 光学成像的情况下,提供更多的结构和功能细节。基于相关传递方程,通过与深度相关的点扩散函数(PSF)卷积生成大的训练数据集。使用 UNet 和 ResNet 进行去模糊和深度估计。通过深度相关的对比度模型来估计重建 3D 血管中的血流。该方法在模拟数据和体模实验中进行了评估,实现了具有血流深度独立估计的高保真结构重建。这种快速的 3D 血流成像技术适用于厚组织的实时监测和血管疾病的诊断。