TL;DR
CapillaryNet is an automated system that rapidly and accurately quantifies skin capillary density and red blood cell velocity from handheld microscopy videos, enabling clinical microvascular analysis.
Contribution
It introduces a fully automated, fast, and accurate system combining computer vision and neural networks for capillary analysis, including novel parameters like hematocrit and flow heterogeneity.
Findings
Achieves over 93% accuracy in capillary detection.
Detects capillaries at approximately 0.9 seconds per frame.
Enables clinical analysis of microcirculation in various diseases.
Abstract
Capillaries are the smallest vessels in the body responsible for delivering oxygen and nutrients to surrounding cells. Various life-threatening diseases are known to alter the density of healthy capillaries and the flow velocity of erythrocytes within the capillaries. In previous studies, capillary density and flow velocity were manually assessed by trained specialists. However, manual analysis of a standard 20-second microvascular video requires 20 minutes on average and necessitates extensive training. Thus, manual analysis has been reported to hinder the application of microvascular microscopy in a clinical environment. To address this problem, this paper presents a fully automated state-of-the-art system to quantify skin nutritive capillary density and red blood cell velocity captured by handheld-based microscopy videos. The proposed method combines the speed of traditional computer…
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