Quantitative Nail Fold Capillary Blood Flow Using Capillaroscopy System and ImageJ Software in Healthy Individuals

Q3 Health Professions Frontiers in Biomedical Technologies Pub Date : 2022-12-31 DOI:10.18502/fbt.v10i1.11511
M. Pakbin, Sedigheh Marjaneh Hejazi, S. Najafizadeh
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引用次数: 1

Abstract

Purpose: Measuring the blood flow velocity in capillaries is a useful method for diagnosing many diseases. Despite increasing interest in nailfold capillaroscopy, objective measures of capillary structure and blood flow have been rarely studied. This study aimed to measure the blood flow velocity along the capillary central line using capillaroscopy system, and also ImageJ software used Scale-Invariant Feature Transform (SIFT) tracking algorithms and Kalman filter for image processing. Materials and Methods: The Red Blood Cells (RBCs) velocity in capillaries of finger nailfold was measured in 12 normal cases using a novel capillaroscopy system. The measurements of the velocity were performed at 12 points in nailfold regions by two observers separately. The image processing and automated measurement take 1-2 min per nailfold. FFmpeg software was used to convert the images format, and then the images were imported to ImageJ software and segmented. SIFT tracking algorithms and Kalman filter were used to filter noise and irregularities in the images. For reproducibility, the velocity distribution values obtained by the two performers, and Paired T-Test was used. The reliability of a measuring instrument or calculation method depends on the tools obtained using Cronbach's alpha. To assess the repeatability of the algorithm, the capillary velocity values were executed at different times with 24-hour intervals using a coefficient of variance method. Results: The calculated RBCs velocity was in the range of 0.05-0.16 mm/s. The results based on Cronbach's alpha analysis for reliability factor was 0.97, with a good correlation among the measurements, 0.85. The average velocity (along with standard deviation) for repeatability at three different times was obtained 0.1195 ± 0.0246, 0.0974 ± 0.0221, and 0.0962 ± 0.0202 mm/s, demonstrating that there was no statistically variation between these measurements (P-value > 0.05). The velocity results for the two observers were 0.811 ± 0.392 and 0.819 ± 0.325 mm/s, indicating a good reproducibility between them (P-value = 0.959). Conclusion: For the measurements of nailfold capillaries velocity, there was good/reasonable reliability, repeatability, and reproducibility. The results indicated a good accuracy of capillaroscopy system and ImageJ software with SIFT algorithm and Kalman filter, which can be used as an appropriate tool for determining the rate of nailfold blood flow velocity.
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应用毛细管镜系统和ImageJ软件定量测定健康人甲襞毛细血管血流
目的:测定毛细血管血流速度是诊断多种疾病的一种有效方法。尽管人们对甲襞毛细血管镜检查越来越感兴趣,但对毛细血管结构和血流的客观测量却很少进行研究。本研究利用毛细管镜系统测量毛细血管中心线血流速度,ImageJ软件采用Scale-Invariant Feature Transform (SIFT)跟踪算法和卡尔曼滤波对图像进行处理。材料与方法:采用一种新型的毛细管镜系统,对12例正常人的指甲襞毛细血管中的红细胞流速进行了测定。两名观测者分别在甲襞区域的12个点进行了速度测量。图像处理和自动测量每折甲1-2分钟。使用FFmpeg软件对图像进行格式转换,然后导入ImageJ软件进行分割。采用SIFT跟踪算法和卡尔曼滤波对图像中的噪声和不规则性进行滤波。为了再现性,采用两位表演者所得的速度分布值,并采用配对t检验。测量仪器或计算方法的可靠性取决于使用克朗巴赫alpha获得的工具。为了评估该算法的可重复性,采用方差系数法在24小时间隔的不同时间执行毛细管速度值。结果:计算得到的红细胞速度范围为0.05 ~ 0.16 mm/s。信度因子经Cronbach’s alpha分析结果为0.97,各测量值之间的相关系数为0.85。3个不同时间重复性的平均速度(及标准差)分别为0.1195±0.0246、0.0974±0.0221和0.0962±0.0202 mm/s,三者之间无统计学差异(p值> 0.05)。两种观察者的速度结果分别为0.811±0.392和0.819±0.325 mm/s,重复性好(p值= 0.959)。结论:甲襞毛细血管流速测量方法具有良好/合理的可靠性、重复性和再现性。结果表明,采用SIFT算法和卡尔曼滤波的毛细管镜系统和ImageJ软件具有良好的准确性,可作为测定甲襞血流速度的合适工具。
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来源期刊
Frontiers in Biomedical Technologies
Frontiers in Biomedical Technologies Health Professions-Medical Laboratory Technology
CiteScore
0.80
自引率
0.00%
发文量
34
审稿时长
12 weeks
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