首页> 外文期刊>Journal of Microscopy >Classification of spatial textures in benign and cancerous glandular tissues by stereology and stochastic geometry using artificial neural networks
【24h】

Classification of spatial textures in benign and cancerous glandular tissues by stereology and stochastic geometry using artificial neural networks

机译:良性和癌性腺组织中空间纹理的分类和使用随机神经网络的随机几何

获取原文
获取原文并翻译 | 示例
       

摘要

Stereology and stochastic geometry can be used as auxiliary tools for diagnostic purposes in tumour pathology. Whether first-order parameters or stochastic-geometric functions are more important for the classification of the texture of biological tissues is not known. In the present study, volume and surface area per unit reference 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. The information provided by the latter functions was summarized by the total absolute areas between the estimated curves and their horizontal reference lines. These areas are considered as indicators of deviation of the tissue texture from a completely uncorrelated volume process and from the Boolean model with convex grains, respectively. We used both areas and the first-order parameters for the classification of cases using artificial neural networks (ANNs). Learning vector quantization and multilayer feedforward networks with backpropagation were applied as neural paradigms. Applications included distinction between mastopathy and mammary cancer (40 cases), between benign prostatic hyperplasia and prostatic cancer (70 cases) and between chronic pancreatitis and pancreatic cancer (60 cases). The same data sets were also classified with linear discriminant analysis. The stereological estimates in combination with ANNs or discriminant analysis provided high accuracy in the classification of individual cases. The question of which category of estimator is the most informative cannot be answered globally, but must be explored empirically for each specific data set. Using learning vector quantization, better results could often be obtained than by multilayer feedforward networks with backpropagation. [References: 46]
机译:立体学和随机几何可用作肿瘤病理学中诊断目的的辅助工具。对于生物组织的纹理分类,一阶参数或随机几何函数是否更重要尚不清楚。在本研究中,估计了腺组织的良性和恶性病变的三个病例系列中上皮的体积和表面积,单位参考体积的对相关函数和居中的二次接触密度函数。后一功能提供的信息通过估算曲线与其水平参考线之间的总绝对面积进行汇总。这些区域分别被认为是组织质地偏离完全不相关的体积过程和具有凸纹的布尔模型的偏离的指示。我们使用区域和一阶参数对人工神经网络(ANN)进行病例分类。学习矢量量化和带有反向传播的多层前馈网络被用作神经范式。应用包括区分乳腺病和乳癌(40例),良性前列腺增生和前列腺癌(70例)以及慢性胰腺炎和胰腺癌(60例)。相同的数据集也通过线性判别分析进行分类。结合ANN或判别分析的立体评估可对个别病例进行分类,因此具有很高的准确性。哪类估计量的信息量最多的问题无法整体回答,但必须针对每个特定数据集凭经验进行探讨。与采用反向传播的多层前馈网络相比,使用学习矢量量化通常可以得到更好的结果。 [参考:46]

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号