首页> 外文期刊>International Journal of Pattern Recognition and Artificial Intelligence >CLASSIFICATION OF BINARY SPATIAL TEXTURES USING STOCHASTIC GEOMETRY, NONLINEAR DETERMINISTIC ANALYSIS AND ARTIFICIAL NEURAL NETWORKS
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CLASSIFICATION OF BINARY SPATIAL TEXTURES USING STOCHASTIC GEOMETRY, NONLINEAR DETERMINISTIC ANALYSIS AND ARTIFICIAL NEURAL NETWORKS

机译:基于随机几何,非线性确定性分析和人工神经网络的二元空间纹理分类

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摘要

Stereology and stochastic geometry can be used as auxiliary tools for diagnostic purposes in tumour pathology. The role of first-order parameters and stochastic梘eometric functions for the classification of the texture of biological tissues has been investigated recently. The volume fraction and surface area per unit volume, the pair correlation function and the centred quadratic contact density function of epithelium were estimated in three case series of benign and malignant lesions of glandular tissues. This approach was further extended by applying the Laslett test, i.e. a point process statistic computed after transformation of the convex tangent points of sectioned random sets from planar images. This method has not yet been applied to histological images so far. Also the nonlinear deterministic approach to tissue texture was applied by estimating the correlation dimension as a function of embedding dimension. We used the stochastic-geometric functions, the first-order parameters and the correlation dimensions for the classification of cases using various algorithms. Learning vector quantization was applied as neural paradigm. Applications included distinction between mastopathy and mammary cancer, between benign prostatic hyperplasia and prostatic cancer, and between chronic pancreatitis and pancreatic cancer. The same data sets were also classified with discriminant analysis and support vector machines. The stereological estimates provided high accuracy in the classification of individual cases. The question: which category of estimator is the most informative, cannot be answered globally, but must be explored empirically for each specific data set. The results obtained by the three algorithms were similar.
机译:立体学和随机几何体可以用作辅助工具,用于肿瘤病理学中的诊断目的。最近已经研究了一阶参数和随机计量功能在生物组织质地分类中的作用。在腺组织的良性和恶性病变的三个病例系列中,估计了上皮的体积分数和表面积,对相关函数和居中二次接触密度函数。通过应用Laslett检验进一步扩展了该方法,即在从平面图像中对已划分的随机集的凸切点进行转换之后计算出的点过程统计量。到目前为止,该方法尚未应用于组织学图像。还通过估计相关维数作为嵌入维数的函数,对组织纹理进行了非线性确定性方法。我们使用随机几何函数,一阶参数和相关维度使用各种算法对案件进行分类。学习向量量化被用作神经范式。应用包括区分乳腺病和乳腺癌,良性前列腺增生和前列腺癌以及慢性胰腺炎和胰腺癌。还使用判别分析和支持向量机对相同的数据集进行分类。立体评估提供了对个别病例进行分类的高精度。问题:估计量的哪一类信息最丰富,无法整体回答,但必须针对每个特定数据集凭经验进行探索。三种算法获得的结果相似。

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