Linköping University, Department of Biomedical Engineering, Linköping, Sweden.
Perimed AB, Stockholm, Sweden.
J Biomed Opt. 2019 Jan;24(1):1-11. doi: 10.1117/1.JBO.24.1.016001.
Laser speckle contrast imaging (LSCI) enables video rate imaging of blood flow. However, its relation to tissue blood perfusion is nonlinear and depends strongly on exposure time. By contrast, the perfusion estimate from the slower laser Doppler flowmetry (LDF) technique has a relationship to blood perfusion that is better understood. Multiexposure LSCI (MELSCI) enables a perfusion estimate closer to the actual perfusion than that using a single exposure time. We present and evaluate a method that utilizes contrasts from seven exposure times between 1 and 64 ms to calculate a perfusion estimate that resembles the perfusion estimate from LDF. The method is based on artificial neural networks (ANN) for fast and accurate processing of MELSCI contrasts to perfusion. The networks are trained using modeling of Doppler histograms and speckle contrasts from tissue models. The importance of accounting for noise is demonstrated. Results show that by using ANN, MELSCI data can be processed to LDF perfusion with high accuracy, with a correlation coefficient R = 1.000 for noise-free data, R = 0.993 when a moderate degree of noise is present, and R = 0.995 for in vivo data from an occlusion-release experiment.
激光散斑对比成像(LSCI)可实现血流的视频速率成像。然而,它与组织血流灌注的关系是非线性的,并且强烈依赖于曝光时间。相比之下,较慢的激光多普勒流量测量(LDF)技术的灌注估计与血液灌注的关系更为明确。多次曝光 LSCI(MELSCI)可以实现比单次曝光时间更接近实际灌注的灌注估计。我们提出并评估了一种利用 1 到 64ms 之间的七个曝光时间的对比度来计算类似于 LDF 的灌注估计的方法。该方法基于人工神经网络(ANN),用于快速准确地处理 MELSCI 对比度到灌注。网络使用组织模型的多普勒直方图和散斑对比度建模进行训练。演示了考虑噪声的重要性。结果表明,通过使用 ANN,可以以高精度将 MELSCI 数据处理为 LDF 灌注,无噪声数据的相关系数 R=1.000,存在中度噪声时 R=0.993,以及存在中度噪声时 R=0.995。从闭塞释放实验的体内数据。