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Microvascular blood flow estimation in sublingual microcirculation videos based on a principal curve tracing algorithm

机译:基于主曲线跟踪算法的舌下微循环视频微血管血流估计

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Microcirculatory perfusion is an important metric for diagnosing pathological conditions in patients. Capillary density and red blood cell (RBC) velocity provide a measure of tissue perfusion. Estimating RBC velocity is a challenging problem due to noisy video sequences, low contrast between the vessels and the background, and thousands of RBCs moving rapidly through video sequences. Typically, physicians manually trace small blood vessels and visually estimate RBC velocities. The task is labor intensive, tedious, and time-consuming. In this paper, we present a novel application of a principal curve tracing algorithm to automatically track RBCs across video frames and estimate their velocity based on the displacements of RBCs between two consecutive frames. The proposed method is implemented in one sublingual microcirculation video of a healthy subject.
机译:微循环灌注是诊断患者病理状况的重要指标。毛细密度和红细胞(RBC)速度提供了组织灌注的量度。由于嘈杂的视频序列,血管和背景之间的低对比度,估计RBC速度是一个具有挑战性的问题,并且数千个通过视频序列快速移动的RBC。通常,医生手动追踪小型血管和视觉估计的RBC速度。任务是劳动密集,乏味,耗时的耗时。在本文中,我们介绍了主曲线跟踪算法的新颖应用于在视频帧中自动跟踪RBC,并基于两个连续帧之间的RBC位移来估计它们的速度。所提出的方法是在一个健康受试者的一个舌下微循环视频中实现的。

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