The analysis of microcirculation images has the potential to reveal early signs of life-threatening diseases like sepsis. Quantifying the capillary density and the capillary distribution in microcirculation images can be used as a biological marker to assist critically ill patients. The quantification of these biological markers is labor-intensive, time-consuming, and subject to interobserver variability. Several computer vision techniques with varying performance can be used to automate the analysis of these microcirculation images in light of the stated challenges. In this paper, we present a survey of over 50 research papers and present the most relevant and promising computer vision algorithms to automate the analysis of microcirculation images. Furthermore, we present a survey of the methods currently used by other researchers to automate the analysis of microcirculation images. This survey is of high clinical relevance because it acts as a guidebook of techniques for other researchers to develop their microcirculation analysis systems and algorithms.
翻译:对微环流图像的分析有可能暴露出诸如败血症等威胁生命的疾病的早期征兆。微环流图像中毛细密度和毛细分布的量化可用作生物标记,以帮助重病患者。这些生物标记的量化是劳力密集的、耗时的,并取决于观察者之间的变异性。可以使用几种不同性能的计算机视觉技术,根据所述挑战将这些微环流图像的分析自动化。本文介绍了对50多份研究论文的调查,并介绍了将微环流图像分析自动化的最相关和最有希望的计算机视觉算法。此外,我们还对其他研究人员目前用来将微环流图像分析自动化的方法进行了调查。这项调查具有很高的临床相关性,因为它为其他研究人员开发其微环流分析系统和算法提供了技术指南。