Boston University, Neurophotonics Center, Department of Biomedical Engineering, Boston, Massachusett, United States.
Meta Platforms Inc., Reality Labs Research, Menlo Park, California, United States.
J Biomed Opt. 2022 Feb;27(8). doi: 10.1117/1.JBO.27.8.083009.
Diffuse correlation spectroscopy (DCS) is an optical technique that measures blood flow non-invasively and continuously. The time-domain (TD) variant of DCS, namely, TD-DCS has demonstrated a potential to improve brain depth sensitivity and to distinguish superficial from deeper blood flow by utilizing pulsed laser sources and a gating strategy to select photons with different pathlengths within the scattering tissue using a single source-detector separation. A quantitative tool to predict the performance of TD-DCS that can be compared with traditional continuous wave DCS (CW-DCS) currently does not exist but is crucial to provide guidance for the continued development and application of these DCS systems.
We aim to establish a model to simulate TD-DCS measurements from first principles, which enables analysis of the impact of measurement noise that can be utilized to quantify the performance for any particular TD-DCS system and measurement geometry.
We have integrated the Monte Carlo simulation describing photon scattering in biological tissue with the wave model that calculates the speckle intensity fluctuations due to tissue dynamics to simulate TD-DCS measurements from first principles.
Our model is capable of simulating photon counts received at the detector as a function of time for both CW-DCS and TD-DCS measurements. The effects of the laser coherence, instrument response function, detector gate delay, gate width, intrinsic noise arising from speckle statistics, and shot noise are incorporated in the model. We have demonstrated the ability of our model to simulate TD-DCS measurements under different conditions, and the use of our model to compare the performance of TD-DCS and CW-DCS under a few typical measurement conditions.
We have established a Monte Carlo-Wave model that is capable of simulating CW-DCS and TD-DCS measurements from first principles. In our exploration of the parameter space, we could not find realistic measurement conditions under which TD-DCS outperformed CW-DCS. However, the parameter space for the optimization of the contrast to noise ratio of TD-DCS is large and complex, so our results do not imply that TD-DCS cannot indeed outperform CW-DCS under different conditions. We made our code available publicly for others in the field to find use cases favorable to TD-DCS. TD-DCS also provides a promising way to measure deep brain tissue dynamics using a short source-detector separation, which will benefit the development of technologies including high density DCS systems and image reconstruction using a limited number of source-detector pairs.
漫射相关光谱(DCS)是一种非侵入性和连续测量血流的光学技术。DCS 的时域(TD)变体,即 TD-DCS,通过利用脉冲激光源和门控策略,已经证明具有提高大脑深度灵敏度的潜力,并通过使用单个源-探测器分离,在散射组织内选择具有不同光程的光子,从而将浅层和深层血流区分开来。目前还没有一种可以与传统连续波 DCS(CW-DCS)进行比较的定量工具来预测 TD-DCS 的性能,但这对于指导这些 DCS 系统的持续开发和应用至关重要。
我们旨在建立一个从第一性原理模拟 TD-DCS 测量的模型,该模型能够分析测量噪声的影响,从而能够量化任何特定 TD-DCS 系统和测量几何形状的性能。
我们已经将描述生物组织中光子散射的蒙特卡罗模拟与计算由于组织动力学而导致的散斑强度波动的波模型相结合,以从第一性原理模拟 TD-DCS 测量。
我们的模型能够模拟 CW-DCS 和 TD-DCS 测量中探测器接收到的光子计数随时间的变化。该模型包含激光相干性、仪器响应函数、探测器门延迟、门宽、散斑统计产生的固有噪声和散粒噪声的影响。我们已经证明了我们的模型能够模拟不同条件下的 TD-DCS 测量,并且可以使用我们的模型在几种典型测量条件下比较 TD-DCS 和 CW-DCS 的性能。
我们已经建立了一个能够从第一性原理模拟 CW-DCS 和 TD-DCS 测量的蒙特卡罗-波模型。在我们对参数空间的探索中,我们没有找到在现实测量条件下 TD-DCS 优于 CW-DCS 的情况。然而,优化 TD-DCS 信噪比的参数空间很大且复杂,因此我们的结果并不意味着在不同条件下 TD-DCS 确实不能优于 CW-DCS。我们将我们的代码公开提供给该领域的其他人,以寻找有利于 TD-DCS 的用例。TD-DCS 还为使用短源-探测器分离测量深部脑组织动力学提供了一种有前途的方法,这将有利于包括高密度 DCS 系统和使用有限数量的源-探测器对进行图像重建在内的技术的发展。