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首页> 外文期刊>Journal of Theoretical Biology >Discriminatory ability of fractal and grey level co-occurrence matrix methods in structural analysis of hippocampus layers
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Discriminatory ability of fractal and grey level co-occurrence matrix methods in structural analysis of hippocampus layers

机译:分形和灰度共现矩阵方法在海马层结构分析中的判别能力

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Fractal and grey level co-occurrence matrix (GLCM) analysis represent two mathematical computer-assisted algorithms that are today thought to be able to accurately detect and quantify changes in tissue architecture during various physiological and pathological processes. However, despite their numerous applications in histology and pathology, their sensitivity, specificity and validity regarding evaluation of brain tissue remain unclear. In this article we present the results indicating that certain parameters of fractal and GLCM analysis have high discriminatory ability in distinguishing two morphologically similar regions of rat hippocampus: stratum lacunosum-moleculare and stratum radiatum. Fractal and GLCM algorithms were performed on a total of 240 thionine-stained hippocampus micrographs of 12 male Wistar albino rats. 120 digital micrographs represented stratum lacunosum-moleculare, and another 120 stratum radiatum. For each image, 7 parameters were calculated: fractal dimension, lacunarity, GLCM angular second moment, GLCM contrast, inverse difference moment, GLCM correlation, and GLCM variance. GLCM variance (VAR) resulted in the largest area under the Receiver operating characteristic (ROC) curve of 0.96, demonstrating an outstanding discriminatory power in analysis of stratum lacunosum-moleculare (average VAR equaled 478.1 +/- 179.8) and stratum radiatum (average VAR of 145.9 +/- 59.2, p <0.0001). For the criterion VAR <= 227.5, sensitivity and specificity were 90% and 86.7%, respectively. GLCM correlation as a parameter also produced large area under the ROC curve of 0.95. Our results are in accordance with the findings of our previous study regarding brain white mass fractal and textural analysis. GLCM algorithm as an image analysis method has potentially high applicability in structural analysis of brain tissue cytoarcitecture. (C) 2015 Elsevier Ltd. All rights reserved.
机译:分形和灰度共现矩阵(GLCM)分析代表了两种数学计算机辅助算法,如今被认为能够精确检测和量化各种生理和病理过程中组织结构的变化。然而,尽管它们在组织学和病理学中有许多应用,但是它们在评估脑组织方面的敏感性,特异性和有效性仍然不清楚。在本文中,我们提供的结果表明,分形和GLCM分析的某些参数在区分大鼠海马体的两个形态相似的区域中具有很高的判别能力:紫胶层和放射状层。分形和GLCM算法在12只雄性Wistar白化病大鼠的共240张硫氨酸染色的海马显微照片上进行。 120幅数字显微照片代表了层状紫胶分子,以及另外120幅放射状的层。对于每个图像,计算了7个参数:分形维数,腔隙度,GLCM角秒矩,GLCM对比度,反差矩,GLCM相关性和GLCM方差。 GLCM方差(VAR)导致接收器工作特征(ROC)曲线下的最大面积为0.96,这表明在分析层积分子(平均VAR等于478.1 +/- 179.8)和层半径(平均VAR)时具有出色的区分能力145.9 +/- 59.2,p <0.0001)。对于标准VAR <= 227.5,敏感性和特异性分别为90%和86.7%。在0.95的ROC曲线下,GLCM相关性作为参数也会产生较大的面积。我们的结果与我们先前关于脑白质分形和纹理分析的研究结果一致。 GLCM算法作为图像分析方法在脑组织细胞结构的结构分析中具有潜在的高适用性。 (C)2015 Elsevier Ltd.保留所有权利。

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