Pantic Igor, Dacic Sanja, Brkic Predrag, Lavrnja Irena, Pantic Senka, Jovanovic Tomislav, Pekovic Sanja
1Institute of Medical Physiology,School of Medicine,University of Belgrade,Visegradska 26/II,11129,Belgrade,Serbia.
2Institute of Physiology and Biochemistry, Faculty of Biology,University of Belgrade,Studentski trg 3,11000,Belgrade,Serbia.
Microsc Microanal. 2014 Oct;20(5):1373-81. doi: 10.1017/S1431927614012811. Epub 2014 Jun 26.
This aim of this study was to assess the discriminatory value of fractal and grey level co-occurrence matrix (GLCM) analysis methods in standard microscopy analysis of two histologically similar brain white mass regions that have different nerve fiber orientation. A total of 160 digital micrographs of thionine-stained rat brain white mass were acquired using a Pro-MicroScan DEM-200 instrument. Eighty micrographs from the anterior corpus callosum and eighty from the anterior cingulum areas of the brain were analyzed. The micrographs were evaluated using the National Institutes of Health ImageJ software and its plugins. For each micrograph, seven parameters were calculated: angular second moment, inverse difference moment, GLCM contrast, GLCM correlation, GLCM variance, fractal dimension, and lacunarity. Using the Receiver operating characteristic analysis, the highest discriminatory value was determined for inverse difference moment (IDM) (area under the receiver operating characteristic (ROC) curve equaled 0.925, and for the criterion IDM≤0.610 the sensitivity and specificity were 82.5 and 87.5%, respectively). Most of the other parameters also showed good sensitivity and specificity. The results indicate that GLCM and fractal analysis methods, when applied together in brain histology analysis, are highly capable of discriminating white mass structures that have different axonal orientation.
本研究的目的是评估分形分析和灰度共生矩阵(GLCM)分析方法在标准显微镜分析中对两个组织学上相似但神经纤维取向不同的脑白质区域的鉴别价值。使用Pro-MicroScan DEM-200仪器采集了160张硫堇染色大鼠脑白质的数字显微照片。对来自大脑胼胝体前部的80张显微照片和来自前扣带区域的80张显微照片进行了分析。使用美国国立卫生研究院的ImageJ软件及其插件对显微照片进行评估。对于每张显微照片,计算了七个参数:角二阶矩、逆差矩、GLCM对比度、GLCM相关性、GLCM方差、分形维数和空隙率。使用受试者工作特征分析,确定逆差矩(IDM)具有最高的鉴别价值(受试者工作特征(ROC)曲线下面积等于0.925,对于IDM≤0.610的标准,敏感性和特异性分别为82.5%和87.5%)。大多数其他参数也显示出良好的敏感性和特异性。结果表明,GLCM和分形分析方法在脑组织学分析中联合应用时,能够高度鉴别具有不同轴突取向的白质结构。