正常口腔黏膜亚上皮结缔组织细胞的自动表征:贝叶斯方法

M. Muthu Rama Krishnan, P. Shah, M. Ghosh, M. Pal, C. Chakraborty, R. Paul, J. Chatterjee, A. Ray
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引用次数: 16

摘要

本文的目的是开发一个基于贝叶斯分类器的自动细胞分类系统,然后使用颜色反卷积和特征提取进行分割,用于从组织学图像中表征各种类型的亚上皮结缔组织(SECT)细胞。在口腔黏膜的组织学切片中,SECT层主要由炎症细胞、成纤维细胞和内皮细胞三种类型的细胞组成;其中只有前两种在口腔黏膜癌前病变中起重要作用。为了区分炎症细胞和成纤维细胞,提取了一组数学特征,即面积、周长、偏心率、紧致度、泽尼克矩和傅里叶描述子,然后使用颜色反卷积方法进行细胞分割。对这些特征进行了统计分析,以表明其在细胞鉴别中的意义。然后,基于定义的特征空间实现贝叶斯分类器,用于表征炎症细胞和成纤维细胞,以观察健康状态下的细胞分布。该系统的总体分类准确率为97.19%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated characterization of sub-epithelial connective tissue cells of normal oral mucosa: Bayesian approach
The objective of this paper is to develop an automated cell classification system based on Bayesian classifier followed by segmentation using color deconvolution and feature extraction for characterizing various types of sub-epithelial connective tissue (SECT) cells from histological images. In the histological sections of oral mucosa, SECT layer mainly consists of three types of cells - inflammatory, fibroblast and endothelial cells; out of which only first two play significant role pertaining to precancerous changes in oral mucosa. In order to discriminate inflammatory and fibroblast cells, a set of mathematical features viz., area, perimeter, eccentricity, compactness, Zernike moments and Fourier descriptors are extracted followed by cell segmentation using color deconvolution method. The features are statiatically analysed to show its significance in cell discrimination. Thereafter, Bayesian classifier is implemented based on the defined feature space for characterizing inflammatory and fibroblast cells in order to observe the cell distribution in healthy state. The performance of this proposed system is evaluated with 97.19% overall classification accuracy.
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