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Automated classification of cells in sub-epithelial connective tissue of oral sub-mucous fibrosis-An SVM based approach

机译:口腔粘膜下纤维化的上皮下结缔组织中细胞的自动分类-基于SVM的方法

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摘要

Quantitative evaluation of histopathological features is not only vital for precise characterization of any precancerous condition but also crucial in developing automated computer aided diagnostic system. In this study segmentation and classification of sub-epithelial connective tissue (SECT) cells except endothelial cells in oral mucosa of normal and OSF conditions has been reported. Segmentation has been carried out using multi-level thresholding and subsequently the cell population has been classified using support vector machine (SVM) based classifier. Moreover, the geometric features used here have been observed to be statistically significant, which enhance the statistical learning potential and classification accuracy of the classifier. Automated classification of SECT cells characterizes this precancerous condition very precisely in a quantitative manner and unveils the opportunity to understand OSF related changes in cell population having definite geometric properties. The paper presents an automated classification method for understanding the deviation of normal structural profile of oral mucosa during precancerous changes.
机译:组织病理学特征的定量评估不仅对任何癌前病变的精确表征至关重要,而且对开发自动化计算机辅助诊断系统也至关重要。在这项研究中,已经报道了正常和OSF条件下口腔黏膜中除内皮细胞外的上皮下结缔组织(SECT)细胞的分割和分类。分割已使用多级阈值进行,随后已使用基于支持向量机(SVM)的分类器对细胞群体进行了分类。此外,已观察到此处使用的几何特征具有统计意义,这增强了分类器的统计学习潜力和分类准确性。 SECT细胞的自动分类非常准确地以定量方式表征了这种癌前状态,并揭示了了解具有明确几何特性的细胞群体中OSF相关变化的机会。本文提出了一种自动分类方法,用于了解癌前病变期间口腔黏膜正常结构轮廓的偏差。

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