Signal Processing Technologies LLC, Richmond, VA, USA.
BMC Med Imaging. 2012 Dec 21;12:37. doi: 10.1186/1471-2342-12-37.
Imaging of the human microcirculation in real-time has the potential to detect injuries and illnesses that disturb the microcirculation at earlier stages and may improve the efficacy of resuscitation. Despite advanced imaging techniques to monitor the microcirculation, there are currently no tools for the near real-time analysis of the videos produced by these imaging systems. An automated system tool that can extract microvasculature information and monitor changes in tissue perfusion quantitatively might be invaluable as a diagnostic and therapeutic endpoint for resuscitation.
The experimental algorithm automatically extracts microvascular network and quantitatively measures changes in the microcirculation. There are two main parts in the algorithm: video processing and vessel segmentation. Microcirculatory videos are first stabilized in a video processing step to remove motion artifacts. In the vessel segmentation process, the microvascular network is extracted using multiple level thresholding and pixel verification techniques. Threshold levels are selected using histogram information of a set of training video recordings. Pixel-by-pixel differences are calculated throughout the frames to identify active blood vessels and capillaries with flow.
Sublingual microcirculatory videos are recorded from anesthetized swine at baseline and during hemorrhage using a hand-held Side-stream Dark Field (SDF) imaging device to track changes in the microvasculature during hemorrhage. Automatically segmented vessels in the recordings are analyzed visually and the functional capillary density (FCD) values calculated by the algorithm are compared for both health baseline and hemorrhagic conditions. These results were compared to independently made FCD measurements using a well-known semi-automated method. Results of the fully automated algorithm demonstrated a significant decrease of FCD values. Similar, but more variable FCD values were calculated using a commercially available software program requiring manual editing.
An entirely automated system for analyzing microcirculation videos to reduce human interaction and computation time is developed. The algorithm successfully stabilizes video recordings, segments blood vessels, identifies vessels without flow and calculates FCD in a fully automated process. The automated process provides an equal or better separation between healthy and hemorrhagic FCD values compared to currently available semi-automatic techniques. The proposed method shows promise for the quantitative measurement of changes occurring in microcirculation during injury.
实时人体微循环成像有可能在更早阶段检测到干扰微循环的损伤和疾病,并可能提高复苏的疗效。尽管有先进的成像技术来监测微循环,但目前还没有用于实时分析这些成像系统产生的视频的工具。一种能够提取微血管信息并定量监测组织灌注变化的自动系统工具,作为复苏的诊断和治疗终点可能具有极高的价值。
实验算法自动提取微血管网络并定量测量微循环的变化。该算法有两个主要部分:视频处理和血管分割。在视频处理步骤中,首先稳定微循环视频以去除运动伪影。在血管分割过程中,使用多级阈值和像素验证技术提取微血管网络。使用一组训练视频记录的直方图信息选择阈值级别。通过逐像素计算帧间的差异来识别有血流的活跃血管和毛细血管。
使用手持式 Side-stream Dark Field(SDF)成像设备从麻醉猪的舌下记录微循环视频,以在出血期间跟踪微循环的变化。对记录中的自动分割血管进行视觉分析,并比较算法计算的功能毛细血管密度(FCD)值,以比较健康基线和出血状态。这些结果与使用知名半自动方法进行的独立 FCD 测量进行了比较。全自动算法的结果显示 FCD 值显著降低。使用需要手动编辑的商用软件程序计算出相似但更具变异性的 FCD 值。
开发了一种用于分析微循环视频的完全自动化系统,以减少人为交互和计算时间。该算法成功地稳定了视频记录,分割了血管,识别了无血流的血管,并在全自动过程中计算了 FCD。与现有的半自动技术相比,自动处理过程提供了更健康和出血 FCD 值之间的同等或更好的分离。该方法有望用于定量测量损伤过程中微循环的变化。