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COMPUTER-BASED AUTOMATED CLASSIFICATION OF PAP SMEAR TESTS USING NEURAL AND FUZZY CLASSIFIERS

机译:基于神经和模糊分类器的巴氏涂片试验基于计算机的自动分类

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摘要

A hierarchical process for automatic classification of Pap smear samples is described and the results are shown. In the preprocessing stage, an edge detection technique is applied to extract contours of cells as well as the nucleus of all cells in sample. In preprocessing stage, we compare the performance of two recently proposed nonlinear filters with a morphological filter used in our technique here. Then, a set of ten features, extracted from each cell, is used to form the feature space. In the next stage, the standard "The Bethesda System" (TBS) rules are translated into fuzzy rules and are used to classify the Pap smear test into "normal" or "abnormal" classes based on the extracted features. In the third stage, a feedforward neural network is applied to the samples for which fuzzy classifier yielded unclear binary classification. The technique mimics the real world practice of cytotechnologist and pathologist in classification of Pap samples, and results to high classification accuracy.
机译:描述了巴氏涂片样本自动分类的分层过程,并显示了结果。在预处理阶段,应用边缘检测技术来提取细胞轮廓以及样品中所有细胞的细胞核。在预处理阶段,我们将两个最近提出的非线性滤波器的性能与我们的技术中使用的形态滤波器进行比较。然后,将从每个像元中提取的十个特征集用于形成特征空间。在下一阶段,将标准“贝塞斯达系统”(TBS)规则转换为模糊规则,并根据提取的特征将巴氏涂片检查分为“正常”或“异常”类别。在第三阶段,将前馈神经网络应用于模糊分类器产生不清楚的二进制分类的样本。该技术模仿了细胞技术人员和病理学家在Pap样品分类中的实际操作,并且具有很高的分类精度。

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