Deep Learning and Computer Vision Techniques for Microcirculation
Analysis: A Review
- URL: http://arxiv.org/abs/2205.05493v1
- Date: Wed, 11 May 2022 13:34:01 GMT
- Title: Deep Learning and Computer Vision Techniques for Microcirculation
Analysis: A Review
- Authors: Maged Abdalla Helmy Mohamed Abdou, Trung Tuyen Truong, Eric Jul, Paulo
Ferreira
- Abstract summary: 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.
Several computer vision techniques with varying performance can be used to automate the analysis of these microcirculation images.
- Score: 0.688204255655161
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: 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.
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