Snekhalatha U, Muthubhairavi V, Anburajan M, Gupta Neelkanth
Department of Biomedical Engineering, Faculty of Engineering & Technology, SRM University, Kattankulathur, Chennai, 603203, Tamil Nadu, India.
SRM Research Institute, SRM University, Kattankulathur, Chennai, 603203, Tamil Nadu, India.
J Med Syst. 2016 Sep;40(9):197. doi: 10.1007/s10916-016-0552-z. Epub 2016 Jul 23.
The present study focuses on automatically to segment the blood flow pattern of color Doppler ultrasound in hand region of rheumatoid arthritis patients and to correlate the extracted the statistical features and color Doppler parameters with standard parameters. Thirty patients with rheumatoid arthritis (RA) and their total of 300 joints of both the hands, i.e., 240 MCP and 60 wrists were examined in this study. Ultrasound color Doppler of both the hands of all the patients was obtained. Automated segmentation of color Doppler image was performed using color enhancement scaling based segmentation algorithm. The region of interest is fixed in the MCP joints and wrist of the hand. Features were extracted from the defined ROI of the segmented output image. The color fraction was measured using Mimics software. The standard parameters such as HAQ score, DAS 28 score, and ESR was obtained for all the patients. The color fraction tends to be increased in wrist and MCP3 joints which indicate the increased blood flow pattern and color Doppler activity as part of inflammation in hand joints of RA. The ESR correlated significantly with the feature extracted parameters such as mean, standard deviation and entropy in MCP3, MCP4 joint and the wrist region. The developed automated color image segmentation algorithm provides a quantitative analysis for diagnosis and assessment of RA. The correlation study between the color Doppler parameters with the standard parameters provides moral significance in quantitative analysis of RA in MCP3 joint and the wrist region.
本研究的重点是自动分割类风湿性关节炎患者手部区域的彩色多普勒超声血流模式,并将提取的统计特征和彩色多普勒参数与标准参数进行关联。本研究对30例类风湿性关节炎(RA)患者及其双手共300个关节,即240个掌指关节(MCP)和60个腕关节进行了检查。获取了所有患者双手的超声彩色多普勒图像。使用基于颜色增强缩放的分割算法对彩色多普勒图像进行自动分割。感兴趣区域固定在手部的掌指关节和腕关节处。从分割输出图像的定义感兴趣区域中提取特征。使用Mimics软件测量颜色分数。为所有患者获取了如健康评估问卷(HAQ)评分、疾病活动评分28(DAS 28)和红细胞沉降率(ESR)等标准参数。在腕关节和MCP3关节中,颜色分数往往会增加,这表明作为RA手部关节炎症一部分的血流模式和彩色多普勒活动增加。ESR与在MCP3、MCP4关节和腕部区域提取的特征参数如均值、标准差和熵显著相关。所开发的自动彩色图像分割算法为RA的诊断和评估提供了定量分析。彩色多普勒参数与标准参数之间的相关性研究在MCP3关节和腕部区域RA的定量分析中具有重要意义。