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A novel line detection method in space-time images for microvascular blood flow analysis in sublingual microcirculatory videos

机译:时空图像中线检测的新方法用于舌下微循环视频中微血管血流分析

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Recent evidence suggests that quantitative assessment of microcirculatory dysfunction may indicate certain disease states [1, 2, 3]. Relevant microcirculatory hemodynamic parameters include total vessel density, density of perfused vessels, proportion of perfused vessels, and perfusion heterogeneity index. In one non-invasive, clinical approach, a handheld video microscope placed under the tongue records images of blood flow in small (<; 20μm) and medium (approximately 20-100μm) diameter vessels. Hemodynamic parameters are computed from measurements of vessel geometry and blood flow rates. Current technology is limited by poor dynamic range, low resolution, poor image stability, and pressure artifacts. Video images are analyzed quantitatively and semi-quantitatively by trained image analysts using a time-consuming, semi-automated techniques for vessel segmentation, and blood flow measurements. Space-time images are generated for quantitative velocity estimation. We propose a novel line detection method to automatically estimate the orientation of red blood cell (RBC) or plasma gap traces in space-time images. Velocities of RBCs can then be calculated based on the estimated orientation. The proposed automated method for velocity estimation was implemented for 80 vessels and compared with visual estimation of reference slope in space-time diagrams by a trained image analyst. Finally, the proposed method is compared with a Hough transform based velocity estimation method.
机译:最近的证据表明,对微循环功能障碍的定量评估可能表明某些疾病状态[1、2、3]。相关的微循环血流动力学参数包括总血管密度,灌注血管密度,灌注血管比例和灌注异质性指数。在一种非侵入性的临床方法中,放置在舌头下方的手持式视频显微镜记录了小(<;20μm)和中(大约20-100μm)直径血管中的血流图像。血流动力学参数是根据血管几何形状和血流速度的测量值计算得出的。当前技术受到动态范围差,分辨率低,图像稳定性差和压力伪影的限制。通过训练有素的图像分析人员使用耗时的半自动技术进行血管分割和血流测量,可以对视频图像进行定量和半定量分析。生成时空图像以进行定量速度估计。我们提出一种新的线检测方法,以自动估计时空图像中的红细胞(RBC)或血浆间隙痕迹的方向。然后,可以基于估计的方向来计算RBC的速度。拟议的自动化速度估算方法已针对80艘船舶实施,并与受过训练的图像分析员在时空图中的目测参考坡度进行了视觉估算。最后,将该方法与基于霍夫变换的速度估计方法进行了比较。

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