Snekhalatha U, Anburajan M, Sowmiya V, Venkatraman B, Menaka M
Department of Biomedical Engineering, SRM University, Chennai, India.
Department of Biomedical Engineering, SRM University, Chennai, India
Proc Inst Mech Eng H. 2015 Apr;229(4):319-31. doi: 10.1177/0954411915580809.
The aim of the study was (1) to perform an automated segmentation of hot spot regions of the hand from thermograph using the k-means algorithm and (2) to test the potential of features extracted from the hand thermograph and its measured skin temperature indices in the evaluation of rheumatoid arthritis. Thermal image analysis based on skin temperature measurement, heat distribution index and thermographic index was analyzed in rheumatoid arthritis patients and controls. The k-means algorithm was used for image segmentation, and features were extracted from the segmented output image using the gray-level co-occurrence matrix method. In metacarpo-phalangeal, proximal inter-phalangeal and distal inter-phalangeal regions, the calculated percentage difference in the mean values of skin temperatures was found to be higher in rheumatoid arthritis patients (5.3%, 4.9% and 4.8% in MCP3, PIP3 and DIP3 joints, respectively) as compared to the normal group. k-Means algorithm applied in the thermal imaging provided better segmentation results in evaluating the disease. In the total population studied, the measured mean average skin temperature of the MCP3 joint was highly correlated with most of the extracted features of the hand. In the total population studied, the statistical feature extracted parameters correlated significantly with skin surface temperature measurements and measured temperature indices. Hence, the developed computer-aided diagnostic tool using MATLAB could be used as a reliable method in diagnosing and analyzing the arthritis in hand thermal images.
(1)使用k均值算法对手部热成像图中的热点区域进行自动分割;(2)测试从手部热成像图及其测量的皮肤温度指数中提取的特征在类风湿关节炎评估中的潜力。对类风湿关节炎患者和对照组进行了基于皮肤温度测量、热分布指数和热成像指数的热图像分析。使用k均值算法进行图像分割,并使用灰度共生矩阵法从分割后的输出图像中提取特征。在掌指关节、近端指间关节和远端指间关节区域,发现类风湿关节炎患者皮肤温度平均值的计算百分比差异高于正常组(MCP3、PIP3和DIP3关节分别为5.3%、4.9%和4.8%)。应用于热成像的k均值算法在评估疾病方面提供了更好的分割结果。在所研究的总体人群中,MCP3关节测量的平均皮肤温度与手部提取的大多数特征高度相关。在所研究的总体人群中,提取的统计特征参数与皮肤表面温度测量和测量的温度指数显著相关。因此,使用MATLAB开发的计算机辅助诊断工具可作为诊断和分析手部热图像中关节炎的可靠方法。